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Author SHA1 Message Date
lyken 858b4b9f3f
core/ndstrides: checkpoint 3 2024-08-09 12:03:10 +08:00
lyken 937b36dcfd
core/ndstrides: checkpoint 2 2024-08-08 14:58:26 +08:00
lyken bcd35544cc
core/ndstrides: refactoring builtin_fns 2024-08-07 17:31:47 +08:00
lyken 7afc9ff7fb
core/ndstrides: checkpoint 2024-08-07 15:13:53 +08:00
lyken 7c69015aaf
core/ndstrides: fix get_nth_element IRRT func name 2024-08-06 09:53:59 +08:00
lyken 5acba1c4ef
core/model: remove extra generic params 2024-08-06 09:53:59 +08:00
lyken 133e25de50
core/ndstrides: change get_llvm_type to new ndarray 2024-08-06 09:53:59 +08:00
lyken f9e360a3f4
core/model: add GEP .set and .get & refactor 2024-08-06 09:53:59 +08:00
lyken 79f66e8517
core/ndstrides: add basic ndarray IRRT functions 2024-08-06 09:53:59 +08:00
lyken 3886dffe68
core/ndstrides: add NDArray with strides definition 2024-08-06 09:53:59 +08:00
lyken 49ab9087d8
core: add error raising in IRRT & codegen IRRT CallFunction util 2024-08-06 09:53:59 +08:00
lyken cb2b7bec3e
core/irrt: add cstr_utils 2024-08-06 09:53:59 +08:00
lyken 40387b9a66
core/model: add and use CSlice and Exception 2024-08-06 09:53:59 +08:00
lyken 925685fb69
core/model: introduce codegen/model 2024-08-06 09:53:59 +08:00
lyken 65419194cb
core/irrt: introduce irrt testing
`cargo test -F test` would compile `nac3core/irrt/irrt_test.cpp`
targetted to the host machine (it gets to use `std`) and run the
test executable.
2024-08-06 09:53:59 +08:00
lyken a343bef2ad
core/irrt: split irrt.cpp into headers
To scale IRRT implementations
2024-08-06 09:53:59 +08:00
lyken 1617a61480
core/irrt: build.rs capture IR defined constants 2024-08-06 09:53:59 +08:00
lyken 99eaef4dbd
core/irrt: build.rs capture IR defined types 2024-08-06 09:53:59 +08:00
lyken 5016b95972
core/irrt: reformat 2024-08-06 09:53:59 +08:00
lyken 6139bec658
core: add .clang-format 2024-08-06 09:53:59 +08:00
lyken 051684c921
core/irrt: comment build.rs & move irrt to its own dir
To prepare for future IRRT implementations, and to also make cargo
only have to watch a single directory.
2024-08-06 09:53:59 +08:00
lyken 3a8c385e01 core/typecheck: fix missing ExprKind::Asterisk in fix_assignment_target_context 2024-08-05 19:30:48 +08:00
lyken 221de4d06a core/codegen: add missing comment 2024-08-05 19:30:48 +08:00
lyken fb9fe8edf2 core: reimplement assignment type inference and codegen
- distinguish between setitem and getitem
- allow starred assignment targets, but the assigned value would be a tuple
- allow both [...] and (...) to be target lists
2024-08-05 19:30:48 +08:00
lyken 894083c6a3 core/codegen: refactor gen_{for,comprehension} to match on iter type 2024-08-05 19:30:48 +08:00
Sébastien Bourdeauducq 669c6aca6b clean up and fix 32-bit demos 2024-08-05 19:04:25 +08:00
abdul124 63d2b49b09 core: remove np_linalg_matmul 2024-08-05 11:44:55 +08:00
abdul124 bf709889c4 standalone/demo: separate linalg functions from main workspace 2024-08-05 11:44:54 +08:00
abdul124 1c72698d02 core: add np_linalg_det and np_linalg_matrix_power functions 2024-07-31 18:02:54 +08:00
abdul124 54f883f0a5 core: implement np_dot using LLVM_IR 2024-07-31 15:53:51 +08:00
abdul124 4a6845dac6 standalone: add np.transpose and np.reshape functions 2024-07-31 13:23:07 +08:00
abdul124 00236f48bc core: add np.transpose and np.reshape functions 2024-07-31 13:23:07 +08:00
abdul124 a3e6bb2292 core/helper: add linalg section 2024-07-31 13:23:07 +08:00
abdul124 17171065b1 standalone: link linalg at runtime 2024-07-31 13:23:07 +08:00
abdul124 540b35ec84 standalone: move linalg functions to demo 2024-07-31 13:23:05 +08:00
abdul124 4bb00c52e3 core/builtin_fns: improve error reporting 2024-07-31 13:21:31 +08:00
abdul124 faf07527cb standalone: add runtime implementation for linalg functions 2024-07-31 13:21:28 +08:00
abdul124 d6a4d0a634 standalone: add linalg methods and tests 2024-07-29 16:48:06 +08:00
abdul124 2242c5af43 core: add linalg methods 2024-07-29 16:48:06 +08:00
David Mak 318a675ea6 standalone: Rename -m32 to -i386 2024-07-29 14:58:58 +08:00
David Mak 32e52ce198 standalone: Revert using uint32_t as slice length
Turns out list and str have always been size_t.
2024-07-29 14:58:29 +08:00
Sebastien Bourdeauducq 665ca8e32d cargo: update dependencies 2024-07-27 22:24:56 +08:00
Sebastien Bourdeauducq 12c12b1d80 flake: update nixpkgs 2024-07-27 22:22:20 +08:00
lyken 72972fa909 core/toplevel: add more numpy categories 2024-07-27 21:57:47 +08:00
lyken 142cd48594 core/toplevel: reorder PrimDef::details 2024-07-27 21:57:47 +08:00
lyken 8adfe781c5 core/toplevel: fix PrimDef method names 2024-07-27 21:57:47 +08:00
lyken 339b74161b core/toplevel: reorganize PrimDef 2024-07-27 21:57:47 +08:00
David Mak 8c5ba37d09 standalone: Add 32-bit execution tests to check_demo.sh 2024-07-26 13:35:40 +08:00
David Mak 05a8948ff2 core: Minor cleanup to use ListValue APIs 2024-07-26 13:35:40 +08:00
David Mak 6d171ec284 core: Add label name and hooks to gen_for functions 2024-07-26 13:35:40 +08:00
David Mak 0ba68f6657 core: Set target triple and datalayout for each module
Fixes an issue with inconsistent pointer sizes causing crashes.
2024-07-26 13:35:40 +08:00
David Mak 693b2a8863 core: Add support for 32-bit size_t on 64-bit targets 2024-07-26 13:35:40 +08:00
David Mak 5faeede0e5 Determine size_t using LLVM target machine 2024-07-26 13:35:38 +08:00
David Mak 266707df9d standalone: Add support for running 32-bit binaries 2024-07-26 13:32:38 +08:00
David Mak 3d3c258756 standalone: Remove support for --lli 2024-07-26 13:32:38 +08:00
David Mak ed1182cb24 standalone: Update format specifiers for exceptions
Use platform-agnostic identifiers instead.
2024-07-26 13:32:37 +08:00
David Mak fd025c1137 standalone: Use uint32_t for cslice length
Matching the expected type of string and list slices.
2024-07-26 13:32:21 +08:00
David Mak f139db9af9 meta: Update dependencies 2024-07-26 10:33:02 +08:00
lyken 44487b76ae standalone: interpret_demo.py remove duplicated section 2024-07-22 17:23:35 +08:00
lyken 1332f113e8 standalone: fix interpret_demo.py comments 2024-07-22 17:06:14 +08:00
Sébastien Bourdeauducq 7632d6f72a cargo: update dependencies 2024-07-21 11:00:25 +08:00
David Mak 4948395ca2 core/toplevel/type_annotation: Add handling for mismatching class def
Primitive types only contain fields in its Type and not its TopLevelDef.
This causes primitive object types to lack some fields.
2024-07-19 14:42:14 +08:00
David Mak 3db3061d99 artiq/symbol_resolver: Handle type of zero-length lists 2024-07-19 14:42:14 +08:00
David Mak 51c2175c80 core/codegen/stmt: Convert assertion values to i1 2024-07-19 14:42:14 +08:00
lyken 1a31a50b8a
standalone: fix __nac3_raise def in demo.c 2024-07-17 21:22:08 +08:00
lyken 6c10e3d056 core: cargo clippy 2024-07-12 21:18:53 +08:00
lyken 2dbc1ec659 cargo fmt 2024-07-12 21:16:38 +08:00
Sebastien Bourdeauducq c80378063a add np_argmin/argmax to interpret_demo environment 2024-07-12 13:27:52 +02:00
abdul124 513d30152b core: support raise exception short form 2024-07-12 18:58:34 +08:00
abdul124 45e9360c4d standalone: Add np_argmax and np_argmin tests 2024-07-12 18:19:56 +08:00
abdul124 2e01b77fc8 core: refactor np_max/np_min functions 2024-07-12 18:18:54 +08:00
abdul124 cea7cade51 core: add np_argmax/np_argmin functions 2024-07-12 18:18:28 +08:00
86 changed files with 10629 additions and 3165 deletions

3
.clang-format Normal file
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@ -0,0 +1,3 @@
BasedOnStyle: Google
IndentWidth: 4
ReflowComments: false

1
.gitignore vendored
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@ -1,3 +1,4 @@
__pycache__ __pycache__
/target /target
/nac3standalone/demo/linalg/target
nix/windows/msys2 nix/windows/msys2

98
Cargo.lock generated
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version = "0.9.4" version = "0.9.5"
source = "registry+https://github.com/rust-lang/crates.io-index" source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "49874b5167b65d7193b8aba1567f5c7d93d001cafc34600cee003eda787e483f" checksum = "0b928f33d975fc6ad9f86c8f283853ad26bdd5b10b7f1542aa2fa15e2289105a"
[[package]] [[package]]
name = "walkdir" name = "walkdir"
@ -1486,5 +1486,5 @@ checksum = "fa4f8080344d4671fb4e831a13ad1e68092748387dfc4f55e356242fae12ce3e"
dependencies = [ dependencies = [
"proc-macro2", "proc-macro2",
"quote", "quote",
"syn 2.0.70", "syn 2.0.72",
] ]

View File

@ -2,11 +2,11 @@
"nodes": { "nodes": {
"nixpkgs": { "nixpkgs": {
"locked": { "locked": {
"lastModified": 1720418205, "lastModified": 1721924956,
"narHash": "sha256-cPJoFPXU44GlhWg4pUk9oUPqurPlCFZ11ZQPk21GTPU=", "narHash": "sha256-Sb1jlyRO+N8jBXEX9Pg9Z1Qb8Bw9QyOgLDNMEpmjZ2M=",
"owner": "NixOS", "owner": "NixOS",
"repo": "nixpkgs", "repo": "nixpkgs",
"rev": "655a58a72a6601292512670343087c2d75d859c1", "rev": "5ad6a14c6bf098e98800b091668718c336effc95",
"type": "github" "type": "github"
}, },
"original": { "original": {

View File

@ -6,6 +6,7 @@
outputs = { self, nixpkgs }: outputs = { self, nixpkgs }:
let let
pkgs = import nixpkgs { system = "x86_64-linux"; }; pkgs = import nixpkgs { system = "x86_64-linux"; };
pkgs32 = import nixpkgs { system = "i686-linux"; };
in rec { in rec {
packages.x86_64-linux = rec { packages.x86_64-linux = rec {
llvm-nac3 = pkgs.callPackage ./nix/llvm {}; llvm-nac3 = pkgs.callPackage ./nix/llvm {};
@ -13,8 +14,25 @@
'' ''
mkdir -p $out/bin mkdir -p $out/bin
ln -s ${pkgs.llvmPackages_14.clang-unwrapped}/bin/clang $out/bin/clang-irrt ln -s ${pkgs.llvmPackages_14.clang-unwrapped}/bin/clang $out/bin/clang-irrt
ln -s ${pkgs.llvmPackages_14.clang}/bin/clang $out/bin/clang-irrt-test
ln -s ${pkgs.llvmPackages_14.llvm.out}/bin/llvm-as $out/bin/llvm-as-irrt ln -s ${pkgs.llvmPackages_14.llvm.out}/bin/llvm-as $out/bin/llvm-as-irrt
''; '';
demo-linalg-stub = pkgs.rustPlatform.buildRustPackage {
name = "demo-linalg-stub";
src = ./nac3standalone/demo/linalg;
cargoLock = {
lockFile = ./nac3standalone/demo/linalg/Cargo.lock;
};
doCheck = false;
};
demo-linalg-stub32 = pkgs32.rustPlatform.buildRustPackage {
name = "demo-linalg-stub32";
src = ./nac3standalone/demo/linalg;
cargoLock = {
lockFile = ./nac3standalone/demo/linalg/Cargo.lock;
};
doCheck = false;
};
nac3artiq = pkgs.python3Packages.toPythonModule ( nac3artiq = pkgs.python3Packages.toPythonModule (
pkgs.rustPlatform.buildRustPackage rec { pkgs.rustPlatform.buildRustPackage rec {
name = "nac3artiq"; name = "nac3artiq";
@ -23,8 +41,9 @@
cargoLock = { cargoLock = {
lockFile = ./Cargo.lock; lockFile = ./Cargo.lock;
}; };
cargoTestFlags = [ "--features" "test" ];
passthru.cargoLock = cargoLock; passthru.cargoLock = cargoLock;
nativeBuildInputs = [ pkgs.python3 pkgs.llvmPackages_14.clang llvm-tools-irrt pkgs.llvmPackages_14.llvm.out llvm-nac3 ]; nativeBuildInputs = [ pkgs.python3 (pkgs.wrapClangMulti pkgs.llvmPackages_14.clang) llvm-tools-irrt pkgs.llvmPackages_14.llvm.out llvm-nac3 ];
buildInputs = [ pkgs.python3 llvm-nac3 ]; buildInputs = [ pkgs.python3 llvm-nac3 ];
checkInputs = [ (pkgs.python3.withPackages(ps: [ ps.numpy ps.scipy ])) ]; checkInputs = [ (pkgs.python3.withPackages(ps: [ ps.numpy ps.scipy ])) ];
checkPhase = checkPhase =
@ -32,7 +51,9 @@
echo "Checking nac3standalone demos..." echo "Checking nac3standalone demos..."
pushd nac3standalone/demo pushd nac3standalone/demo
patchShebangs . patchShebangs .
./check_demos.sh export DEMO_LINALG_STUB=${demo-linalg-stub}/lib/liblinalg.a
export DEMO_LINALG_STUB32=${demo-linalg-stub32}/lib/liblinalg.a
./check_demos.sh -i686
popd popd
echo "Running Cargo tests..." echo "Running Cargo tests..."
cargoCheckHook cargoCheckHook
@ -149,7 +170,7 @@
buildInputs = with pkgs; [ buildInputs = with pkgs; [
# build dependencies # build dependencies
packages.x86_64-linux.llvm-nac3 packages.x86_64-linux.llvm-nac3
llvmPackages_14.clang llvmPackages_14.llvm.out # for running nac3standalone demos (pkgs.wrapClangMulti llvmPackages_14.clang) llvmPackages_14.llvm.out # for running nac3standalone demos
packages.x86_64-linux.llvm-tools-irrt packages.x86_64-linux.llvm-tools-irrt
cargo cargo
rustc rustc
@ -162,6 +183,11 @@
pre-commit pre-commit
rustfmt rustfmt
]; ];
shellHook =
''
export DEMO_LINALG_STUB=${packages.x86_64-linux.demo-linalg-stub}/lib/liblinalg.a
export DEMO_LINALG_STUB32=${packages.x86_64-linux.demo-linalg-stub32}/lib/liblinalg.a
'';
}; };
devShells.x86_64-linux.msys2 = pkgs.mkShell { devShells.x86_64-linux.msys2 = pkgs.mkShell {
name = "nac3-dev-shell-msys2"; name = "nac3-dev-shell-msys2";

View File

@ -0,0 +1,24 @@
from min_artiq import *
from numpy import int32
@nac3
class EmptyList:
core: KernelInvariant[Core]
def __init__(self):
self.core = Core()
@rpc
def get_empty(self) -> list[int32]:
return []
@kernel
def run(self):
a: list[int32] = self.get_empty()
if a != []:
raise ValueError
if __name__ == "__main__":
EmptyList().run()

View File

@ -24,6 +24,7 @@ use std::rc::Rc;
use std::sync::Arc; use std::sync::Arc;
use inkwell::{ use inkwell::{
context::Context,
memory_buffer::MemoryBuffer, memory_buffer::MemoryBuffer,
module::{Linkage, Module}, module::{Linkage, Module},
passes::PassBuilderOptions, passes::PassBuilderOptions,
@ -32,6 +33,7 @@ use inkwell::{
OptimizationLevel, OptimizationLevel,
}; };
use itertools::Itertools; use itertools::Itertools;
use nac3core::codegen::irrt::setup_irrt_exceptions;
use nac3core::codegen::{gen_func_impl, CodeGenLLVMOptions, CodeGenTargetMachineOptions}; use nac3core::codegen::{gen_func_impl, CodeGenLLVMOptions, CodeGenTargetMachineOptions};
use nac3core::toplevel::builtins::get_exn_constructor; use nac3core::toplevel::builtins::get_exn_constructor;
use nac3core::typecheck::typedef::{TypeEnum, Unifier, VarMap}; use nac3core::typecheck::typedef::{TypeEnum, Unifier, VarMap};
@ -497,6 +499,11 @@ impl Nac3 {
.register_top_level(synthesized.pop().unwrap(), Some(resolver.clone()), "", false) .register_top_level(synthesized.pop().unwrap(), Some(resolver.clone()), "", false)
.unwrap(); .unwrap();
// Process IRRT
let context = inkwell::context::Context::create();
let irrt = load_irrt(&context);
setup_irrt_exceptions(&context, &irrt, resolver.as_ref());
let fun_signature = let fun_signature =
FunSignature { args: vec![], ret: self.primitive.none, vars: VarMap::new() }; FunSignature { args: vec![], ret: self.primitive.none, vars: VarMap::new() };
let mut store = ConcreteTypeStore::new(); let mut store = ConcreteTypeStore::new();
@ -625,7 +632,9 @@ impl Nac3 {
let buffer = buffer.as_slice().into(); let buffer = buffer.as_slice().into();
membuffer.lock().push(buffer); membuffer.lock().push(buffer);
}))); })));
let size_t = if self.isa == Isa::Host { 64 } else { 32 }; let size_t = Context::create()
.ptr_sized_int_type(&self.get_llvm_target_machine().get_target_data(), None)
.get_bit_width();
let num_threads = if is_multithreaded() { 4 } else { 1 }; let num_threads = if is_multithreaded() { 4 } else { 1 };
let thread_names: Vec<String> = (0..num_threads).map(|_| "main".to_string()).collect(); let thread_names: Vec<String> = (0..num_threads).map(|_| "main".to_string()).collect();
let threads: Vec<_> = thread_names let threads: Vec<_> = thread_names
@ -644,6 +653,9 @@ impl Nac3 {
ArtiqCodeGenerator::new("attributes_writeback".to_string(), size_t, self.time_fns); ArtiqCodeGenerator::new("attributes_writeback".to_string(), size_t, self.time_fns);
let context = inkwell::context::Context::create(); let context = inkwell::context::Context::create();
let module = context.create_module("attributes_writeback"); let module = context.create_module("attributes_writeback");
let target_machine = self.llvm_options.create_target_machine().unwrap();
module.set_data_layout(&target_machine.get_target_data().get_data_layout());
module.set_triple(&target_machine.get_triple());
let builder = context.create_builder(); let builder = context.create_builder();
let (_, module, _) = gen_func_impl( let (_, module, _) = gen_func_impl(
&context, &context,
@ -662,7 +674,7 @@ impl Nac3 {
membuffer.lock().push(buffer); membuffer.lock().push(buffer);
}); });
let context = inkwell::context::Context::create(); // Link all modules into `main`.
let buffers = membuffers.lock(); let buffers = membuffers.lock();
let main = context let main = context
.create_module_from_ir(MemoryBuffer::create_from_memory_range(&buffers[0], "main")) .create_module_from_ir(MemoryBuffer::create_from_memory_range(&buffers[0], "main"))
@ -691,8 +703,7 @@ impl Nac3 {
) )
.unwrap(); .unwrap();
main.link_in_module(load_irrt(&context)) main.link_in_module(irrt).map_err(|err| CompileError::new_err(err.to_string()))?;
.map_err(|err| CompileError::new_err(err.to_string()))?;
let mut function_iter = main.get_first_function(); let mut function_iter = main.get_first_function();
while let Some(func) = function_iter { while let Some(func) = function_iter {

View File

@ -991,8 +991,15 @@ impl InnerResolver {
} }
_ => unreachable!("must be list"), _ => unreachable!("must be list"),
}; };
let ty = ctx.get_llvm_type(generator, elem_ty);
let size_t = generator.get_size_type(ctx.ctx); let size_t = generator.get_size_type(ctx.ctx);
let ty = if len == 0
&& matches!(&*ctx.unifier.get_ty_immutable(elem_ty), TypeEnum::TVar { .. })
{
// The default type for zero-length lists of unknown element type is size_t
size_t.into()
} else {
ctx.get_llvm_type(generator, elem_ty)
};
let arr_ty = ctx let arr_ty = ctx
.ctx .ctx
.struct_type(&[ty.ptr_type(AddressSpace::default()).into(), size_t.into()], false); .struct_type(&[ty.ptr_type(AddressSpace::default()).into(), size_t.into()], false);

View File

@ -1,3 +1,6 @@
[features]
test = []
[package] [package]
name = "nac3core" name = "nac3core"
version = "0.1.0" version = "0.1.0"

View File

@ -3,20 +3,34 @@ use std::{
env, env,
fs::File, fs::File,
io::Write, io::Write,
path::Path, path::{Path, PathBuf},
process::{Command, Stdio}, process::{Command, Stdio},
}; };
fn main() { const CMD_IRRT_CLANG: &str = "clang-irrt";
const FILE: &str = "src/codegen/irrt/irrt.cpp"; const CMD_IRRT_CLANG_TEST: &str = "clang-irrt-test";
const CMD_IRRT_LLVM_AS: &str = "llvm-as-irrt";
fn get_out_dir() -> PathBuf {
PathBuf::from(env::var("OUT_DIR").unwrap())
}
fn get_irrt_dir() -> &'static Path {
Path::new("irrt")
}
/// Compile `irrt.cpp` for use in `src/codegen`
fn compile_irrt_cpp() {
let out_dir = get_out_dir();
let irrt_dir = get_irrt_dir();
/* /*
* HACK: Sadly, clang doesn't let us emit generic LLVM bitcode. * HACK: Sadly, clang doesn't let us emit generic LLVM bitcode.
* Compiling for WASM32 and filtering the output with regex is the closest we can get. * Compiling for WASM32 and filtering the output with regex is the closest we can get.
*/ */
let irrt_cpp_path = irrt_dir.join("irrt.cpp");
let flags: &[&str] = &[ let flags: &[&str] = &[
"--target=wasm32", "--target=wasm32",
FILE,
"-x", "-x",
"c++", "c++",
"-fno-discard-value-names", "-fno-discard-value-names",
@ -33,13 +47,16 @@ fn main() {
"-Wextra", "-Wextra",
"-o", "-o",
"-", "-",
"-I",
irrt_dir.to_str().unwrap(),
irrt_cpp_path.to_str().unwrap(),
]; ];
println!("cargo:rerun-if-changed={FILE}"); // Tell Cargo to rerun if any file under `irrt_dir` (recursive) changes
let out_dir = env::var("OUT_DIR").unwrap(); println!("cargo:rerun-if-changed={}", irrt_dir.to_str().unwrap());
let out_path = Path::new(&out_dir);
let output = Command::new("clang-irrt") // Compile IRRT and capture the LLVM IR output
let output = Command::new(CMD_IRRT_CLANG)
.args(flags) .args(flags)
.output() .output()
.map(|o| { .map(|o| {
@ -52,7 +69,17 @@ fn main() {
let output = std::str::from_utf8(&output.stdout).unwrap().replace("\r\n", "\n"); let output = std::str::from_utf8(&output.stdout).unwrap().replace("\r\n", "\n");
let mut filtered_output = String::with_capacity(output.len()); let mut filtered_output = String::with_capacity(output.len());
let regex_filter = Regex::new(r"(?ms:^define.*?\}$)|(?m:^declare.*?$)").unwrap(); // Filter out irrelevant IR
//
// Regex:
// - `(?ms:^define.*?\}$)` captures LLVM `define` blocks
// - `(?m:^declare.*?$)` captures LLVM `declare` lines
// - `(?m:^%.+?=\s*type\s*\{.+?\}$)` captures LLVM `type` declarations
// - `(?m:^@.+?=.+$)` captures global constants
let regex_filter = Regex::new(
r"(?ms:^define.*?\}$)|(?m:^declare.*?$)|(?m:^%.+?=\s*type\s*\{.+?\}$)|(?m:^@.+?=.+$)",
)
.unwrap();
for f in regex_filter.captures_iter(&output) { for f in regex_filter.captures_iter(&output) {
assert_eq!(f.len(), 1); assert_eq!(f.len(), 1);
filtered_output.push_str(&f[0]); filtered_output.push_str(&f[0]);
@ -63,20 +90,71 @@ fn main() {
.unwrap() .unwrap()
.replace_all(&filtered_output, ""); .replace_all(&filtered_output, "");
println!("cargo:rerun-if-env-changed=DEBUG_DUMP_IRRT"); // For debugging
if env::var("DEBUG_DUMP_IRRT").is_ok() { // Doing `DEBUG_DUMP_IRRT=1 cargo build -p nac3core` dumps the LLVM IR generated
let mut file = File::create(out_path.join("irrt.ll")).unwrap(); const DEBUG_DUMP_IRRT: &str = "DEBUG_DUMP_IRRT";
println!("cargo:rerun-if-env-changed={DEBUG_DUMP_IRRT}");
if env::var(DEBUG_DUMP_IRRT).is_ok() {
let mut file = File::create(out_dir.join("irrt.ll")).unwrap();
file.write_all(output.as_bytes()).unwrap(); file.write_all(output.as_bytes()).unwrap();
let mut file = File::create(out_path.join("irrt-filtered.ll")).unwrap();
let mut file = File::create(out_dir.join("irrt-filtered.ll")).unwrap();
file.write_all(filtered_output.as_bytes()).unwrap(); file.write_all(filtered_output.as_bytes()).unwrap();
} }
let mut llvm_as = Command::new("llvm-as-irrt") // Assemble the emitted and filtered IR to .bc
// That .bc will be integrated into nac3core's codegen
let mut llvm_as = Command::new(CMD_IRRT_LLVM_AS)
.stdin(Stdio::piped()) .stdin(Stdio::piped())
.arg("-o") .arg("-o")
.arg(out_path.join("irrt.bc")) .arg(out_dir.join("irrt.bc"))
.spawn() .spawn()
.unwrap(); .unwrap();
llvm_as.stdin.as_mut().unwrap().write_all(filtered_output.as_bytes()).unwrap(); llvm_as.stdin.as_mut().unwrap().write_all(filtered_output.as_bytes()).unwrap();
assert!(llvm_as.wait().unwrap().success()); assert!(llvm_as.wait().unwrap().success());
} }
/// Compile `irrt_test.cpp` for testing
fn compile_irrt_test_cpp() {
let out_dir = get_out_dir();
let irrt_dir = get_irrt_dir();
let exe_path = out_dir.join("irrt_test.out"); // Output path of the compiled test executable
let irrt_test_cpp_path = irrt_dir.join("irrt_test.cpp");
let flags: &[&str] = &[
irrt_test_cpp_path.to_str().unwrap(),
"-x",
"c++",
"-I",
irrt_dir.to_str().unwrap(),
"-g",
"-fno-discard-value-names",
"-O0",
"-Wall",
"-Wextra",
"-Werror=return-type",
"-lm", // for `tgamma()`, `lgamma()`
"-o",
exe_path.to_str().unwrap(),
];
Command::new(CMD_IRRT_CLANG_TEST)
.args(flags)
.output()
.map(|o| {
assert!(o.status.success(), "{}", std::str::from_utf8(&o.stderr).unwrap());
o
})
.unwrap();
println!("cargo:rerun-if-changed={}", irrt_dir.to_str().unwrap());
}
fn main() {
compile_irrt_cpp();
// https://github.com/rust-lang/cargo/issues/2549
// `cargo test -F test` to also build `irrt_test.cpp
if cfg!(feature = "test") {
compile_irrt_test_cpp();
}
}

10
nac3core/irrt/irrt.cpp Normal file
View File

@ -0,0 +1,10 @@
#define IRRT_DEFINE_TYPEDEF_INTS
#include <irrt_everything.hpp>
/*
* All IRRT implementations.
*
* We don't have pre-compiled objects, so we are writing all implementations in
* headers and concatenate them with `#include` into one massive source file that
* contains all the IRRT stuff.
*/

View File

@ -1,27 +1,17 @@
using int8_t = _BitInt(8); #pragma once
using uint8_t = unsigned _BitInt(8);
using int32_t = _BitInt(32); #include <irrt/int_defs.hpp>
using uint32_t = unsigned _BitInt(32); #include <irrt/util.hpp>
using int64_t = _BitInt(64);
using uint64_t = unsigned _BitInt(64);
// NDArray indices are always `uint32_t`. // NDArray indices are always `uint32_t`.
using NDIndex = uint32_t; using NDIndexInt = uint32_t;
// The type of an index or a value describing the length of a range/slice is always `int32_t`. // The type of an index or a value describing the length of a
// range/slice is always `int32_t`.
using SliceIndex = int32_t; using SliceIndex = int32_t;
namespace { namespace {
template <typename T> // adapted from GNU Scientific Library:
const T& max(const T& a, const T& b) { // https://git.savannah.gnu.org/cgit/gsl.git/tree/sys/pow_int.c
return a > b ? a : b;
}
template <typename T>
const T& min(const T& a, const T& b) {
return a > b ? b : a;
}
// adapted from GNU Scientific Library: https://git.savannah.gnu.org/cgit/gsl.git/tree/sys/pow_int.c
// need to make sure `exp >= 0` before calling this function // need to make sure `exp >= 0` before calling this function
template <typename T> template <typename T>
T __nac3_int_exp_impl(T base, T exp) { T __nac3_int_exp_impl(T base, T exp) {
@ -38,12 +28,8 @@ T __nac3_int_exp_impl(T base, T exp) {
} }
template <typename SizeT> template <typename SizeT>
SizeT __nac3_ndarray_calc_size_impl( SizeT __nac3_ndarray_calc_size_impl(const SizeT* list_data, SizeT list_len,
const SizeT* list_data, SizeT begin_idx, SizeT end_idx) {
SizeT list_len,
SizeT begin_idx,
SizeT end_idx
) {
__builtin_assume(end_idx <= list_len); __builtin_assume(end_idx <= list_len);
SizeT num_elems = 1; SizeT num_elems = 1;
@ -56,12 +42,8 @@ SizeT __nac3_ndarray_calc_size_impl(
} }
template <typename SizeT> template <typename SizeT>
void __nac3_ndarray_calc_nd_indices_impl( void __nac3_ndarray_calc_nd_indices_impl(SizeT index, const SizeT* dims,
SizeT index, SizeT num_dims, NDIndexInt* idxs) {
const SizeT* dims,
SizeT num_dims,
NDIndex* idxs
) {
SizeT stride = 1; SizeT stride = 1;
for (SizeT dim = 0; dim < num_dims; dim++) { for (SizeT dim = 0; dim < num_dims; dim++) {
SizeT i = num_dims - dim - 1; SizeT i = num_dims - dim - 1;
@ -72,12 +54,9 @@ void __nac3_ndarray_calc_nd_indices_impl(
} }
template <typename SizeT> template <typename SizeT>
SizeT __nac3_ndarray_flatten_index_impl( SizeT __nac3_ndarray_flatten_index_impl(const SizeT* dims, SizeT num_dims,
const SizeT* dims, const NDIndexInt* indices,
SizeT num_dims, SizeT num_indices) {
const NDIndex* indices,
SizeT num_indices
) {
SizeT idx = 0; SizeT idx = 0;
SizeT stride = 1; SizeT stride = 1;
for (SizeT i = 0; i < num_dims; ++i) { for (SizeT i = 0; i < num_dims; ++i) {
@ -93,18 +72,17 @@ SizeT __nac3_ndarray_flatten_index_impl(
} }
template <typename SizeT> template <typename SizeT>
void __nac3_ndarray_calc_broadcast_impl( void __nac3_ndarray_calc_broadcast_impl(const SizeT* lhs_dims, SizeT lhs_ndims,
const SizeT* lhs_dims, const SizeT* rhs_dims, SizeT rhs_ndims,
SizeT lhs_ndims, SizeT* out_dims) {
const SizeT* rhs_dims,
SizeT rhs_ndims,
SizeT* out_dims
) {
SizeT max_ndims = lhs_ndims > rhs_ndims ? lhs_ndims : rhs_ndims; SizeT max_ndims = lhs_ndims > rhs_ndims ? lhs_ndims : rhs_ndims;
for (SizeT i = 0; i < max_ndims; ++i) { for (SizeT i = 0; i < max_ndims; ++i) {
const SizeT* lhs_dim_sz = i < lhs_ndims ? &lhs_dims[lhs_ndims - i - 1] : nullptr; const SizeT* lhs_dim_sz =
const SizeT* rhs_dim_sz = i < rhs_ndims ? &rhs_dims[rhs_ndims - i - 1] : nullptr; i < lhs_ndims ? &lhs_dims[lhs_ndims - i - 1] : nullptr;
const SizeT* rhs_dim_sz =
i < rhs_ndims ? &rhs_dims[rhs_ndims - i - 1] : nullptr;
SizeT* out_dim = &out_dims[max_ndims - i - 1]; SizeT* out_dim = &out_dims[max_ndims - i - 1];
if (lhs_dim_sz == nullptr) { if (lhs_dim_sz == nullptr) {
@ -124,12 +102,10 @@ void __nac3_ndarray_calc_broadcast_impl(
} }
template <typename SizeT> template <typename SizeT>
void __nac3_ndarray_calc_broadcast_idx_impl( void __nac3_ndarray_calc_broadcast_idx_impl(const SizeT* src_dims,
const SizeT* src_dims,
SizeT src_ndims, SizeT src_ndims,
const NDIndex* in_idx, const NDIndexInt* in_idx,
NDIndex* out_idx NDIndexInt* out_idx) {
) {
for (SizeT i = 0; i < src_ndims; ++i) { for (SizeT i = 0; i < src_ndims; ++i) {
SizeT src_i = src_ndims - i - 1; SizeT src_i = src_ndims - i - 1;
out_idx[src_i] = src_dims[src_i] == 1 ? 0 : in_idx[src_i]; out_idx[src_i] = src_dims[src_i] == 1 ? 0 : in_idx[src_i];
@ -139,14 +115,14 @@ void __nac3_ndarray_calc_broadcast_idx_impl(
extern "C" { extern "C" {
#define DEF_nac3_int_exp_(T) \ #define DEF_nac3_int_exp_(T) \
T __nac3_int_exp_##T(T base, T exp) {\ T __nac3_int_exp_##T(T base, T exp) { \
return __nac3_int_exp_impl(base, exp);\ return __nac3_int_exp_impl(base, exp); \
} }
DEF_nac3_int_exp_(int32_t) DEF_nac3_int_exp_(int32_t);
DEF_nac3_int_exp_(int64_t) DEF_nac3_int_exp_(int64_t);
DEF_nac3_int_exp_(uint32_t) DEF_nac3_int_exp_(uint32_t);
DEF_nac3_int_exp_(uint64_t) DEF_nac3_int_exp_(uint64_t);
SliceIndex __nac3_slice_index_bound(SliceIndex i, const SliceIndex len) { SliceIndex __nac3_slice_index_bound(SliceIndex i, const SliceIndex len) {
if (i < 0) { if (i < 0) {
@ -160,11 +136,8 @@ SliceIndex __nac3_slice_index_bound(SliceIndex i, const SliceIndex len) {
return i; return i;
} }
SliceIndex __nac3_range_slice_len( SliceIndex __nac3_range_slice_len(const SliceIndex start, const SliceIndex end,
const SliceIndex start, const SliceIndex step) {
const SliceIndex end,
const SliceIndex step
) {
SliceIndex diff = end - start; SliceIndex diff = end - start;
if (diff > 0 && step > 0) { if (diff > 0 && step > 0) {
return ((diff - 1) / step) + 1; return ((diff - 1) / step) + 1;
@ -180,62 +153,52 @@ SliceIndex __nac3_range_slice_len(
// - All the index must *not* be out-of-bound or negative, // - All the index must *not* be out-of-bound or negative,
// - The end index is *inclusive*, // - The end index is *inclusive*,
// - The length of src and dest slice size should already // - The length of src and dest slice size should already
// be checked: if dest.step == 1 then len(src) <= len(dest) else len(src) == len(dest) // be checked: if dest.step == 1 then len(src) <= len(dest) else
// len(src) == len(dest)
SliceIndex __nac3_list_slice_assign_var_size( SliceIndex __nac3_list_slice_assign_var_size(
SliceIndex dest_start, SliceIndex dest_start, SliceIndex dest_end, SliceIndex dest_step,
SliceIndex dest_end, uint8_t* dest_arr, SliceIndex dest_arr_len, SliceIndex src_start,
SliceIndex dest_step, SliceIndex src_end, SliceIndex src_step, uint8_t* src_arr,
uint8_t* dest_arr, SliceIndex src_arr_len, const SliceIndex size) {
SliceIndex dest_arr_len, /* if dest_arr_len == 0, do nothing since we do not support
SliceIndex src_start, * extending list
SliceIndex src_end, */
SliceIndex src_step,
uint8_t* src_arr,
SliceIndex src_arr_len,
const SliceIndex size
) {
/* if dest_arr_len == 0, do nothing since we do not support extending list */
if (dest_arr_len == 0) return dest_arr_len; if (dest_arr_len == 0) return dest_arr_len;
/* if both step is 1, memmove directly, handle the dropping of the list, and shrink size */ /* if both step is 1, memmove directly, handle the dropping of
* the list, and shrink size */
if (src_step == dest_step && dest_step == 1) { if (src_step == dest_step && dest_step == 1) {
const SliceIndex src_len = (src_end >= src_start) ? (src_end - src_start + 1) : 0; const SliceIndex src_len =
const SliceIndex dest_len = (dest_end >= dest_start) ? (dest_end - dest_start + 1) : 0; (src_end >= src_start) ? (src_end - src_start + 1) : 0;
const SliceIndex dest_len =
(dest_end >= dest_start) ? (dest_end - dest_start + 1) : 0;
if (src_len > 0) { if (src_len > 0) {
__builtin_memmove( __builtin_memmove(dest_arr + dest_start * size,
dest_arr + dest_start * size, src_arr + src_start * size, src_len * size);
src_arr + src_start * size,
src_len * size
);
} }
if (dest_len > 0) { if (dest_len > 0) {
/* dropping */ /* dropping */
__builtin_memmove( __builtin_memmove(dest_arr + (dest_start + src_len) * size,
dest_arr + (dest_start + src_len) * size,
dest_arr + (dest_end + 1) * size, dest_arr + (dest_end + 1) * size,
(dest_arr_len - dest_end - 1) * size (dest_arr_len - dest_end - 1) * size);
);
} }
/* shrink size */ /* shrink size */
return dest_arr_len - (dest_len - src_len); return dest_arr_len - (dest_len - src_len);
} }
/* if two range overlaps, need alloca */ /* if two range overlaps, need alloca */
uint8_t need_alloca = uint8_t need_alloca =
(dest_arr == src_arr) (dest_arr == src_arr) &&
&& !( !(max(dest_start, dest_end) < min(src_start, src_end) ||
max(dest_start, dest_end) < min(src_start, src_end) max(src_start, src_end) < min(dest_start, dest_end));
|| max(src_start, src_end) < min(dest_start, dest_end)
);
if (need_alloca) { if (need_alloca) {
uint8_t* tmp = reinterpret_cast<uint8_t *>(__builtin_alloca(src_arr_len * size)); uint8_t* tmp =
reinterpret_cast<uint8_t*>(__builtin_alloca(src_arr_len * size));
__builtin_memcpy(tmp, src_arr, src_arr_len * size); __builtin_memcpy(tmp, src_arr, src_arr_len * size);
src_arr = tmp; src_arr = tmp;
} }
SliceIndex src_ind = src_start; SliceIndex src_ind = src_start;
SliceIndex dest_ind = dest_start; SliceIndex dest_ind = dest_start;
for (; for (; (src_step > 0) ? (src_ind <= src_end) : (src_ind >= src_end);
(src_step > 0) ? (src_ind <= src_end) : (src_ind >= src_end); src_ind += src_step, dest_ind += dest_step) {
src_ind += src_step, dest_ind += dest_step
) {
/* for constant optimization */ /* for constant optimization */
if (size == 1) { if (size == 1) {
__builtin_memcpy(dest_arr + dest_ind, src_arr + src_ind, 1); __builtin_memcpy(dest_arr + dest_ind, src_arr + src_ind, 1);
@ -244,30 +207,26 @@ SliceIndex __nac3_list_slice_assign_var_size(
} else if (size == 8) { } else if (size == 8) {
__builtin_memcpy(dest_arr + dest_ind * 8, src_arr + src_ind * 8, 8); __builtin_memcpy(dest_arr + dest_ind * 8, src_arr + src_ind * 8, 8);
} else { } else {
/* memcpy for var size, cannot overlap after previous alloca */ /* memcpy for var size, cannot overlap after previous
__builtin_memcpy(dest_arr + dest_ind * size, src_arr + src_ind * size, size); * alloca */
__builtin_memcpy(dest_arr + dest_ind * size,
src_arr + src_ind * size, size);
} }
} }
/* only dest_step == 1 can we shrink the dest list. */ /* only dest_step == 1 can we shrink the dest list. */
/* size should be ensured prior to calling this function */ /* size should be ensured prior to calling this function */
if (dest_step == 1 && dest_end >= dest_start) { if (dest_step == 1 && dest_end >= dest_start) {
__builtin_memmove( __builtin_memmove(
dest_arr + dest_ind * size, dest_arr + dest_ind * size, dest_arr + (dest_end + 1) * size,
dest_arr + (dest_end + 1) * size, (dest_arr_len - dest_end - 1) * size + size + size + size);
(dest_arr_len - dest_end - 1) * size
);
return dest_arr_len - (dest_end - dest_ind) - 1; return dest_arr_len - (dest_end - dest_ind) - 1;
} }
return dest_arr_len; return dest_arr_len;
} }
int32_t __nac3_isinf(double x) { int32_t __nac3_isinf(double x) { return __builtin_isinf(x); }
return __builtin_isinf(x);
}
int32_t __nac3_isnan(double x) { int32_t __nac3_isnan(double x) { return __builtin_isnan(x); }
return __builtin_isnan(x);
}
double tgamma(double arg); double tgamma(double arg);
@ -320,95 +279,71 @@ double __nac3_j0(double x) {
return j0(x); return j0(x);
} }
uint32_t __nac3_ndarray_calc_size( uint32_t __nac3_ndarray_calc_size(const uint32_t* list_data, uint32_t list_len,
const uint32_t* list_data, uint32_t begin_idx, uint32_t end_idx) {
uint32_t list_len, return __nac3_ndarray_calc_size_impl(list_data, list_len, begin_idx,
uint32_t begin_idx, end_idx);
uint32_t end_idx
) {
return __nac3_ndarray_calc_size_impl(list_data, list_len, begin_idx, end_idx);
} }
uint64_t __nac3_ndarray_calc_size64( uint64_t __nac3_ndarray_calc_size64(const uint64_t* list_data,
const uint64_t* list_data, uint64_t list_len, uint64_t begin_idx,
uint64_t list_len, uint64_t end_idx) {
uint64_t begin_idx, return __nac3_ndarray_calc_size_impl(list_data, list_len, begin_idx,
uint64_t end_idx end_idx);
) {
return __nac3_ndarray_calc_size_impl(list_data, list_len, begin_idx, end_idx);
} }
void __nac3_ndarray_calc_nd_indices( void __nac3_ndarray_calc_nd_indices(uint32_t index, const uint32_t* dims,
uint32_t index, uint32_t num_dims, NDIndexInt* idxs) {
const uint32_t* dims,
uint32_t num_dims,
NDIndex* idxs
) {
__nac3_ndarray_calc_nd_indices_impl(index, dims, num_dims, idxs); __nac3_ndarray_calc_nd_indices_impl(index, dims, num_dims, idxs);
} }
void __nac3_ndarray_calc_nd_indices64( void __nac3_ndarray_calc_nd_indices64(uint64_t index, const uint64_t* dims,
uint64_t index, uint64_t num_dims, NDIndexInt* idxs) {
const uint64_t* dims,
uint64_t num_dims,
NDIndex* idxs
) {
__nac3_ndarray_calc_nd_indices_impl(index, dims, num_dims, idxs); __nac3_ndarray_calc_nd_indices_impl(index, dims, num_dims, idxs);
} }
uint32_t __nac3_ndarray_flatten_index( uint32_t __nac3_ndarray_flatten_index(const uint32_t* dims, uint32_t num_dims,
const uint32_t* dims, const NDIndexInt* indices,
uint32_t num_dims, uint32_t num_indices) {
const NDIndex* indices, return __nac3_ndarray_flatten_index_impl(dims, num_dims, indices,
uint32_t num_indices num_indices);
) {
return __nac3_ndarray_flatten_index_impl(dims, num_dims, indices, num_indices);
} }
uint64_t __nac3_ndarray_flatten_index64( uint64_t __nac3_ndarray_flatten_index64(const uint64_t* dims, uint64_t num_dims,
const uint64_t* dims, const NDIndexInt* indices,
uint64_t num_dims, uint64_t num_indices) {
const NDIndex* indices, return __nac3_ndarray_flatten_index_impl(dims, num_dims, indices,
uint64_t num_indices num_indices);
) {
return __nac3_ndarray_flatten_index_impl(dims, num_dims, indices, num_indices);
} }
void __nac3_ndarray_calc_broadcast( void __nac3_ndarray_calc_broadcast(const uint32_t* lhs_dims, uint32_t lhs_ndims,
const uint32_t* lhs_dims, const uint32_t* rhs_dims, uint32_t rhs_ndims,
uint32_t lhs_ndims, uint32_t* out_dims) {
const uint32_t* rhs_dims, return __nac3_ndarray_calc_broadcast_impl(lhs_dims, lhs_ndims, rhs_dims,
uint32_t rhs_ndims, rhs_ndims, out_dims);
uint32_t* out_dims
) {
return __nac3_ndarray_calc_broadcast_impl(lhs_dims, lhs_ndims, rhs_dims, rhs_ndims, out_dims);
} }
void __nac3_ndarray_calc_broadcast64( void __nac3_ndarray_calc_broadcast64(const uint64_t* lhs_dims,
const uint64_t* lhs_dims,
uint64_t lhs_ndims, uint64_t lhs_ndims,
const uint64_t* rhs_dims, const uint64_t* rhs_dims,
uint64_t rhs_ndims, uint64_t rhs_ndims, uint64_t* out_dims) {
uint64_t* out_dims return __nac3_ndarray_calc_broadcast_impl(lhs_dims, lhs_ndims, rhs_dims,
) { rhs_ndims, out_dims);
return __nac3_ndarray_calc_broadcast_impl(lhs_dims, lhs_ndims, rhs_dims, rhs_ndims, out_dims);
} }
void __nac3_ndarray_calc_broadcast_idx( void __nac3_ndarray_calc_broadcast_idx(const uint32_t* src_dims,
const uint32_t* src_dims,
uint32_t src_ndims, uint32_t src_ndims,
const NDIndex* in_idx, const NDIndexInt* in_idx,
NDIndex* out_idx NDIndexInt* out_idx) {
) { __nac3_ndarray_calc_broadcast_idx_impl(src_dims, src_ndims, in_idx,
__nac3_ndarray_calc_broadcast_idx_impl(src_dims, src_ndims, in_idx, out_idx); out_idx);
} }
void __nac3_ndarray_calc_broadcast_idx64( void __nac3_ndarray_calc_broadcast_idx64(const uint64_t* src_dims,
const uint64_t* src_dims,
uint64_t src_ndims, uint64_t src_ndims,
const NDIndex* in_idx, const NDIndexInt* in_idx,
NDIndex* out_idx NDIndexInt* out_idx) {
) { __nac3_ndarray_calc_broadcast_idx_impl(src_dims, src_ndims, in_idx,
__nac3_ndarray_calc_broadcast_idx_impl(src_dims, src_ndims, in_idx, out_idx); out_idx);
} }
} // extern "C" } // extern "C"

View File

@ -0,0 +1,9 @@
#pragma once
#include <irrt/int_defs.hpp>
template <typename SizeT>
struct CSlice {
uint8_t* base;
SizeT len;
};

View File

@ -0,0 +1,123 @@
#pragma once
#include <irrt/cslice.hpp>
#include <irrt/int_defs.hpp>
#include <irrt/util.hpp>
/**
* @brief The int type of ARTIQ exception IDs.
*
* It is always `int32_t`
*/
typedef int32_t ExceptionId;
/*
* A set of exceptions IRRT can use.
* Must be synchronized with `setup_irrt_exceptions` in `nac3core/src/codegen/irrt/mod.rs`.
* All exception IDs are initialized by `setup_irrt_exceptions`.
*/
#ifdef IRRT_TESTING
// If we are doing IRRT tests (i.e., running `cargo test -F test`), define them with a fake set of IDs.
ExceptionId EXN_INDEX_ERROR = 0;
ExceptionId EXN_VALUE_ERROR = 1;
ExceptionId EXN_ASSERTION_ERROR = 2;
ExceptionId EXN_RUNTIME_ERROR = 3;
ExceptionId EXN_TYPE_ERROR = 4;
#else
extern "C" {
ExceptionId EXN_INDEX_ERROR;
ExceptionId EXN_VALUE_ERROR;
ExceptionId EXN_ASSERTION_ERROR;
ExceptionId EXN_RUNTIME_ERROR;
ExceptionId EXN_TYPE_ERROR;
}
#endif
namespace {
/**
* @brief NAC3's Exception struct
*/
template <typename SizeT>
struct Exception {
ExceptionId id;
CSlice<SizeT> filename;
int32_t line;
int32_t column;
CSlice<SizeT> function;
CSlice<SizeT> msg;
int64_t params[3];
};
} // namespace
// Declare/Define `__nac3_raise`
#ifdef IRRT_TESTING
#include <cstdio>
void __nac3_raise(void* err) {
// TODO: Print the error content?
printf("__nac3_raise called. Exiting...\n");
exit(1);
}
#else
/**
* @brief Extern function to `__nac3_raise`
*
* The parameter `err` could be `Exception<int32_t>` or `Exception<int64_t>`. The caller
* must make sure to pass `Exception`s with the correct `SizeT` depending on the `size_t` of the runtime.
*/
extern "C" void __nac3_raise(void* err);
#endif
namespace {
const int64_t NO_PARAM = 0;
// Helper function to raise an exception with `__nac3_raise`
// Do not use this function directly. See `raise_exception`.
template <typename SizeT>
void _raise_exception_helper(ExceptionId id, const char* filename, int32_t line,
const char* function, const char* msg,
int64_t param0, int64_t param1, int64_t param2) {
Exception<SizeT> e = {
.id = id,
.filename = {.base = (uint8_t*)filename,
.len = (int32_t)cstr_utils::length(filename)},
.line = line,
.column = 0,
.function = {.base = (uint8_t*)function,
.len = (int32_t)cstr_utils::length(function)},
.msg = {.base = (uint8_t*)msg, .len = (int32_t)cstr_utils::length(msg)},
};
e.params[0] = param0;
e.params[1] = param1;
e.params[2] = param2;
__nac3_raise((void*)&e);
__builtin_unreachable();
}
/**
* @brief Raise an exception with location details (location in the IRRT source files).
* @param SizeT The runtime `size_t` type.
* @param id The ID of the exception to raise.
* @param msg A global constant C-string of the error message.
*
* `param0` and `param2` are optional format arguments of `msg`. They should be set to
* `NO_PARAM` to indicate they are unused.
*/
#define raise_exception(SizeT, id, msg, param0, param1, param2) \
_raise_exception_helper<SizeT>(id, __FILE__, __LINE__, __FUNCTION__, msg, \
param0, param1, param2)
/**
* @brief Throw a dummy error for testing.
*/
template <typename SizeT>
void throw_dummy_error() {
raise_exception(SizeT, EXN_RUNTIME_ERROR, "dummy error", NO_PARAM, NO_PARAM,
NO_PARAM);
}
} // namespace
extern "C" {
void __nac3_throw_dummy_error() { throw_dummy_error<int32_t>(); }
void __nac3_throw_dummy_error64() { throw_dummy_error<int64_t>(); }
}

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@ -0,0 +1,12 @@
#pragma once
// This is made toggleable since `irrt_test.cpp` itself would include
// headers that define these typedefs
#ifdef IRRT_DEFINE_TYPEDEF_INTS
using int8_t = _BitInt(8);
using uint8_t = unsigned _BitInt(8);
using int32_t = _BitInt(32);
using uint32_t = unsigned _BitInt(32);
using int64_t = _BitInt(64);
using uint64_t = unsigned _BitInt(64);
#endif

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@ -0,0 +1,297 @@
#pragma once
#include <irrt/exception.hpp>
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/def.hpp>
namespace {
namespace ndarray {
namespace basic {
namespace util {
/**
* @brief Asserts that `shape` does not contain negative dimensions.
*
* @param ndims Number of dimensions in `shape`
* @param shape The shape to check on
*/
template <typename SizeT>
void assert_shape_no_negative(SizeT ndims, const SizeT* shape) {
for (SizeT axis = 0; axis < ndims; axis++) {
if (shape[axis] < 0) {
raise_exception(SizeT, EXN_VALUE_ERROR,
"negative dimensions are not allowed; axis {0} "
"has dimension {1}",
axis, shape[axis], NO_PARAM);
}
}
}
/**
* @brief Returns the number of elements of an ndarray given its shape.
*
* @param ndims Number of dimensions in `shape`
* @param shape The shape of the ndarray
*/
template <typename SizeT>
SizeT calc_size_from_shape(SizeT ndims, const SizeT* shape) {
SizeT size = 1;
for (SizeT axis = 0; axis < ndims; axis++) size *= shape[axis];
return size;
}
/**
* @brief Compute the array indices of the `nth` (0-based) element of an ndarray given only its shape.
*
* @param ndims Number of elements in `shape` and `indices`
* @param shape The shape of the ndarray
* @param indices The returned indices indexing the ndarray with shape `shape`.
* @param nth The index of the element of interest.
*/
template <typename SizeT>
void set_indices_by_nth(SizeT ndims, const SizeT* shape, SizeT* indices,
SizeT nth) {
for (SizeT i = 0; i < ndims; i++) {
SizeT axis = ndims - i - 1;
SizeT dim = shape[axis];
indices[axis] = nth % dim;
nth /= dim;
}
}
} // namespace util
/**
* @brief Return the number of elements of an `ndarray`
*
* This function corresponds to `<an_ndarray>.size`
*/
template <typename SizeT>
SizeT size(const NDArray<SizeT>* ndarray) {
return util::calc_size_from_shape(ndarray->ndims, ndarray->shape);
}
/**
* @brief Return of the number of its content of an `ndarray`.
*
* This function corresponds to `<an_ndarray>.nbytes`.
*/
template <typename SizeT>
SizeT nbytes(const NDArray<SizeT>* ndarray) {
return size(ndarray) * ndarray->itemsize;
}
/**
* @brief Get the `len()` of an ndarray, and asserts that `ndarray` is a sized object.
*
* This function corresponds to `<an_ndarray>.__len__`.
*
* @param dst_length The returned result
*/
template <typename SizeT>
SizeT len(const NDArray<SizeT>* ndarray) {
// numpy prohibits `__len__` on unsized objects
if (ndarray->ndims == 0) {
raise_exception(SizeT, EXN_TYPE_ERROR, "len() of unsized object",
NO_PARAM, NO_PARAM, NO_PARAM);
} else {
return ndarray->shape[0];
}
}
/**
* @brief Return a boolean indicating if `ndarray` is (C-)contiguous.
*
* You may want to see: ndarray's rules for C-contiguity: https://github.com/numpy/numpy/blob/df256d0d2f3bc6833699529824781c58f9c6e697/numpy/core/src/multiarray/flagsobject.c#L95C1-L99C45
*/
template <typename SizeT>
bool is_c_contiguous(const NDArray<SizeT>* ndarray) {
// Other references:
// - tinynumpy's implementation: https://github.com/wadetb/tinynumpy/blob/0d23d22e07062ffab2afa287374c7b366eebdda1/tinynumpy/tinynumpy.py#L102
// - ndarray's flags["C_CONTIGUOUS"]: https://numpy.org/doc/stable/reference/generated/numpy.ndarray.flags.html#numpy.ndarray.flags
// - ndarray's rules for C-contiguity: https://github.com/numpy/numpy/blob/df256d0d2f3bc6833699529824781c58f9c6e697/numpy/core/src/multiarray/flagsobject.c#L95C1-L99C45
// From https://github.com/numpy/numpy/blob/df256d0d2f3bc6833699529824781c58f9c6e697/numpy/core/src/multiarray/flagsobject.c#L95C1-L99C45:
//
// The traditional rule is that for an array to be flagged as C contiguous,
// the following must hold:
//
// strides[-1] == itemsize
// strides[i] == shape[i+1] * strides[i + 1]
// [...]
// According to these rules, a 0- or 1-dimensional array is either both
// C- and F-contiguous, or neither; and an array with 2+ dimensions
// can be C- or F- contiguous, or neither, but not both. Though there
// there are exceptions for arrays with zero or one item, in the first
// case the check is relaxed up to and including the first dimension
// with shape[i] == 0. In the second case `strides == itemsize` will
// can be true for all dimensions and both flags are set.
if (ndarray->ndims == 0) {
return true;
}
if (ndarray->strides[ndarray->ndims - 1] != ndarray->itemsize) {
return false;
}
for (SizeT i = 1; i < ndarray->ndims; i++) {
SizeT axis_i = ndarray->ndims - i - 1;
if (ndarray->strides[axis_i] !=
ndarray->shape[axis_i + 1] + ndarray->strides[axis_i + 1]) {
return false;
}
}
return true;
}
/**
* @brief Return the pointer to the element indexed by `indices`.
*/
template <typename SizeT>
uint8_t* get_pelement_by_indices(const NDArray<SizeT>* ndarray,
const SizeT* indices) {
uint8_t* element = ndarray->data;
for (SizeT dim_i = 0; dim_i < ndarray->ndims; dim_i++)
element += indices[dim_i] * ndarray->strides[dim_i];
return element;
}
int counter = 0;
/**
* @brief Return the pointer to the nth (0-based) element in a flattened view of `ndarray`.
*
* This function does no bound check.
*/
template <typename SizeT>
uint8_t* get_nth_pelement(const NDArray<SizeT>* ndarray, SizeT nth) {
uint8_t* element = ndarray->data;
for (SizeT i = 0; i < ndarray->ndims; i++) {
SizeT axis = ndarray->ndims - i - 1;
SizeT dim = ndarray->shape[axis];
element += ndarray->strides[axis] * (nth % dim);
nth /= dim;
}
return element;
}
/**
* @brief Update the strides of an ndarray given an ndarray `shape`
* and assuming that the ndarray is fully c-contagious.
*
* You might want to read https://ajcr.net/stride-guide-part-1/.
*/
template <typename SizeT>
void set_strides_by_shape(NDArray<SizeT>* ndarray) {
SizeT stride_product = 1;
for (SizeT i = 0; i < ndarray->ndims; i++) {
int axis = ndarray->ndims - i - 1;
ndarray->strides[axis] = stride_product * ndarray->itemsize;
stride_product *= ndarray->shape[axis];
}
}
/**
* @brief Set an element in `ndarray`.
*
* @param pelement Pointer to the element in `ndarray` to be set.
* @param pvalue Pointer to the value `pelement` will be set to.
*/
template <typename SizeT>
void set_pelement_value(NDArray<SizeT>* ndarray, uint8_t* pelement,
const uint8_t* pvalue) {
__builtin_memcpy(pelement, pvalue, ndarray->itemsize);
}
/**
* @brief Copy data from one ndarray to another of the exact same size and itemsize.
*
* Both ndarrays will be viewed in their flatten views when copying the elements.
*/
template <typename SizeT>
void copy_data(const NDArray<SizeT>* src_ndarray, NDArray<SizeT>* dst_ndarray) {
// TODO: Make this faster with memcpy
__builtin_assume(src_ndarray->itemsize == dst_ndarray->itemsize);
for (SizeT i = 0; i < size(src_ndarray); i++) {
auto src_element = ndarray::basic::get_nth_pelement(src_ndarray, i);
auto dst_element = ndarray::basic::get_nth_pelement(dst_ndarray, i);
ndarray::basic::set_pelement_value(dst_ndarray, dst_element,
src_element);
}
}
} // namespace basic
} // namespace ndarray
} // namespace
extern "C" {
using namespace ndarray::basic;
void __nac3_ndarray_util_assert_shape_no_negative(int32_t ndims,
int32_t* shape) {
util::assert_shape_no_negative(ndims, shape);
}
void __nac3_ndarray_util_assert_shape_no_negative64(int64_t ndims,
int64_t* shape) {
util::assert_shape_no_negative(ndims, shape);
}
uint32_t __nac3_ndarray_size(NDArray<int32_t>* ndarray) {
return size(ndarray);
}
uint64_t __nac3_ndarray_size64(NDArray<int64_t>* ndarray) {
return size(ndarray);
}
uint32_t __nac3_ndarray_nbytes(NDArray<int32_t>* ndarray) {
return nbytes(ndarray);
}
uint64_t __nac3_ndarray_nbytes64(NDArray<int64_t>* ndarray) {
return nbytes(ndarray);
}
int32_t __nac3_ndarray_len(NDArray<int32_t>* ndarray) { return len(ndarray); }
int64_t __nac3_ndarray_len64(NDArray<int64_t>* ndarray) { return len(ndarray); }
bool __nac3_ndarray_is_c_contiguous(NDArray<int32_t>* ndarray) {
return is_c_contiguous(ndarray);
}
bool __nac3_ndarray_is_c_contiguous64(NDArray<int64_t>* ndarray) {
return is_c_contiguous(ndarray);
}
uint8_t* __nac3_ndarray_get_nth_pelement(const NDArray<int32_t>* ndarray,
int32_t nth) {
return get_nth_pelement(ndarray, nth);
}
uint8_t* __nac3_ndarray_get_nth_pelement64(const NDArray<int64_t>* ndarray,
int64_t nth) {
return get_nth_pelement(ndarray, nth);
}
void __nac3_ndarray_set_strides_by_shape(NDArray<int32_t>* ndarray) {
set_strides_by_shape(ndarray);
}
void __nac3_ndarray_set_strides_by_shape64(NDArray<int64_t>* ndarray) {
set_strides_by_shape(ndarray);
}
void __nac3_ndarray_copy_data(NDArray<int32_t>* src_ndarray,
NDArray<int32_t>* dst_ndarray) {
copy_data(src_ndarray, dst_ndarray);
}
void __nac3_ndarray_copy_data64(NDArray<int64_t>* src_ndarray,
NDArray<int64_t>* dst_ndarray) {
copy_data(src_ndarray, dst_ndarray);
}
}

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#pragma once
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/def.hpp>
#include <irrt/slice.hpp>
namespace {
template <typename SizeT>
struct ShapeEntry {
SizeT ndims;
SizeT* shape;
};
} // namespace
namespace {
namespace ndarray {
namespace broadcast {
namespace util {
/**
* @brief Return true if `src_shape` can broadcast to `dst_shape`.
*
* See https://numpy.org/doc/stable/user/basics.broadcasting.html
*/
template <typename SizeT>
bool can_broadcast_shape_to(SizeT target_ndims, const SizeT* target_shape,
SizeT src_ndims, const SizeT* src_shape) {
if (src_ndims > target_ndims) {
return false;
}
for (SizeT i = 0; i < src_ndims; i++) {
SizeT target_dim = target_shape[target_ndims - i - 1];
SizeT src_dim = src_shape[src_ndims - i - 1];
if (!(src_dim == 1 || target_dim == src_dim)) {
return false;
}
}
return true;
}
/**
* @brief Performs `np.broadcast_shapes`
*/
template <typename SizeT>
void broadcast_shapes(SizeT num_shapes, const ShapeEntry<SizeT>* shapes,
SizeT dst_ndims, SizeT* dst_shape) {
// `dst_ndims` must be `max([shape.ndims for shape in shapes])`, but the caller has to calculate it/provide it
// for this function since they should already know in order to allocate `dst_shape` in the first place.
// `dst_shape` must be pre-allocated.
// `dst_shape` does not have to be initialized
for (SizeT dst_axis = 0; dst_axis < dst_ndims; dst_axis++) {
dst_shape[dst_axis] = 1;
}
for (SizeT i = 0; i < num_shapes; i++) {
ShapeEntry<SizeT> entry = shapes[i];
for (SizeT j = 0; j < entry.ndims; j++) {
SizeT entry_axis = entry.ndims - j - 1;
SizeT dst_axis = dst_ndims - j - 1;
SizeT entry_dim = entry.shape[entry_axis];
SizeT dst_dim = dst_shape[dst_axis];
if (dst_dim == 1) {
dst_shape[dst_axis] = entry_dim;
} else if (entry_dim == 1 || entry_dim == dst_dim) {
// Do nothing
} else {
raise_exception(SizeT, EXN_VALUE_ERROR,
"shape mismatch: objects cannot be broadcast "
"to a single shape.",
NO_PARAM, NO_PARAM, NO_PARAM);
}
}
}
}
} // namespace util
/**
* @brief Perform `np.broadcast_to(<ndarray>, <target_shape>)` and appropriate assertions.
*
* This function attempts to broadcast `src_ndarray` to a new shape defined by `dst_ndarray.shape`,
* and return the result by modifying `dst_ndarray`.
*
* # Notes on `dst_ndarray`
* The caller is responsible for allocating space for the resulting ndarray.
* Here is what this function expects from `dst_ndarray` when called:
* - `dst_ndarray->data` does not have to be initialized.
* - `dst_ndarray->itemsize` does not have to be initialized.
* - `dst_ndarray->ndims` must be initialized, determining the length of `dst_ndarray->shape`
* - `dst_ndarray->shape` must be allocated, and must contain the desired target broadcast shape.
* - `dst_ndarray->strides` must be allocated, through it can contain uninitialized values.
* When this function call ends:
* - `dst_ndarray->data` is set to `src_ndarray->data` (`dst_ndarray` is just a view to `src_ndarray`)
* - `dst_ndarray->itemsize` is set to `src_ndarray->itemsize`
* - `dst_ndarray->ndims` is unchanged.
* - `dst_ndarray->shape` is unchanged.
* - `dst_ndarray->strides` is updated accordingly by how ndarray broadcast_to works.
*/
template <typename SizeT>
void broadcast_to(const NDArray<SizeT>* src_ndarray,
NDArray<SizeT>* dst_ndarray) {
if (!ndarray::broadcast::util::can_broadcast_shape_to(
dst_ndarray->ndims, dst_ndarray->shape, src_ndarray->ndims,
src_ndarray->shape)) {
raise_exception(SizeT, EXN_VALUE_ERROR,
"operands could not be broadcast together",
dst_ndarray->shape[0], src_ndarray->shape[0], NO_PARAM);
}
dst_ndarray->data = src_ndarray->data;
dst_ndarray->itemsize = src_ndarray->itemsize;
for (SizeT i = 0; i < dst_ndarray->ndims; i++) {
SizeT src_axis = src_ndarray->ndims - i - 1;
SizeT dst_axis = dst_ndarray->ndims - i - 1;
if (src_axis < 0 || (src_ndarray->shape[src_axis] == 1 &&
dst_ndarray->shape[dst_axis] != 1)) {
// Freeze the steps in-place
dst_ndarray->strides[dst_axis] = 0;
} else {
dst_ndarray->strides[dst_axis] = src_ndarray->strides[src_axis];
}
}
}
} // namespace broadcast
} // namespace ndarray
} // namespace
extern "C" {
using namespace ndarray::broadcast;
void __nac3_ndarray_broadcast_to(NDArray<int32_t>* src_ndarray,
NDArray<int32_t>* dst_ndarray) {
broadcast_to(src_ndarray, dst_ndarray);
}
void __nac3_ndarray_broadcast_to64(NDArray<int64_t>* src_ndarray,
NDArray<int64_t>* dst_ndarray) {
broadcast_to(src_ndarray, dst_ndarray);
}
void __nac3_ndarray_broadcast_shapes(int32_t num_shapes,
const ShapeEntry<int32_t>* shapes,
int32_t dst_ndims, int32_t* dst_shape) {
ndarray::broadcast::util::broadcast_shapes(num_shapes, shapes, dst_ndims,
dst_shape);
}
void __nac3_ndarray_broadcast_shapes64(int64_t num_shapes,
const ShapeEntry<int64_t>* shapes,
int64_t dst_ndims, int64_t* dst_shape) {
ndarray::broadcast::util::broadcast_shapes(num_shapes, shapes, dst_ndims,
dst_shape);
}
}

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#pragma once
namespace {
/**
* @brief The NDArray object
*
* The official numpy implementations: https://github.com/numpy/numpy/blob/735a477f0bc2b5b84d0e72d92f224bde78d4e069/doc/source/reference/c-api/types-and-structures.rst
*/
template <typename SizeT>
struct NDArray {
/**
* @brief The underlying data this `ndarray` is pointing to.
*
* Must be set to `nullptr` to indicate that this NDArray's `data` is uninitialized.
*/
uint8_t* data;
/**
* @brief The number of bytes of a single element in `data`.
*/
SizeT itemsize;
/**
* @brief The number of dimensions of this shape.
*/
SizeT ndims;
/**
* @brief The NDArray shape, with length equal to `ndims`.
*
* Note that it may contain 0.
*/
SizeT* shape;
/**
* @brief Array strides, with length equal to `ndims`
*
* The stride values are in units of bytes, not number of elements.
*
* Note that `strides` can have negative values.
*/
SizeT* strides;
};
} // namespace

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#pragma once
#include <irrt/exception.hpp>
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/basic.hpp>
#include <irrt/ndarray/def.hpp>
#include <irrt/slice.hpp>
namespace {
typedef uint8_t NDIndexType;
/**
* @brief A single element index
*
* See https://numpy.org/doc/stable/user/basics.indexing.html#single-element-indexing
*
* `data` points to a `SliceIndex`.
*/
const NDIndexType ND_INDEX_TYPE_SINGLE_ELEMENT = 0;
/**
* @brief A slice index
*
* See https://numpy.org/doc/stable/user/basics.indexing.html#slicing-and-striding
*
* `data` points to a `UserRange`.
*/
const NDIndexType ND_INDEX_TYPE_SLICE = 1;
/**
* @brief An index used in ndarray indexing
*/
struct NDIndex {
/**
* @brief Enum tag to specify the type of index.
*
* Please see comments of each enum constant.
*/
NDIndexType type;
/**
* @brief The accompanying data associated with `type`.
*
* Please see comments of each enum constant.
*/
uint8_t* data;
};
} // namespace
namespace {
namespace ndarray {
namespace indexing {
namespace util {
/**
* @brief Return the expected rank of the resulting ndarray
* created by indexing an ndarray of rank `ndims` using `indexes`.
*/
template <typename SizeT>
SizeT deduce_ndims_after_indexing(SizeT ndims, SizeT num_indexes,
const NDIndex* indexes) {
if (num_indexes > ndims) {
raise_exception(SizeT, EXN_INDEX_ERROR,
"too many indices for array: array is {0}-dimensional, "
"but {1} were indexed",
ndims, num_indexes, NO_PARAM);
}
for (SizeT i = 0; i < num_indexes; i++) {
if (indexes[i].type == ND_INDEX_TYPE_SINGLE_ELEMENT) {
// An index demotes the rank by 1
ndims--;
}
}
return ndims;
}
} // namespace util
/**
* @brief Perform ndarray "basic indexing" (https://numpy.org/doc/stable/user/basics.indexing.html#basic-indexing)
*
* This is function very similar to performing `dst_ndarray = src_ndarray[indexes]` in Python (where the variables
* can all be found in the parameter of this function).
*
* In other words, this function takes in an ndarray (`src_ndarray`), index it with `indexes`, and return the
* indexed array (by writing the result to `dst_ndarray`).
*
* This function also does proper assertions on `indexes`.
*
* # Notes on `dst_ndarray`
* The caller is responsible for allocating space for the resulting ndarray.
* Here is what this function expects from `dst_ndarray` when called:
* - `dst_ndarray->data` does not have to be initialized.
* - `dst_ndarray->itemsize` does not have to be initialized.
* - `dst_ndarray->ndims` must be initialized, and it must be equal to the expected `ndims` of the `dst_ndarray` after
* indexing `src_ndarray` with `indexes`.
* - `dst_ndarray->shape` must be allocated, through it can contain uninitialized values.
* - `dst_ndarray->strides` must be allocated, through it can contain uninitialized values.
* When this function call ends:
* - `dst_ndarray->data` is set to `src_ndarray->data` (`dst_ndarray` is just a view to `src_ndarray`)
* - `dst_ndarray->itemsize` is set to `src_ndarray->itemsize`
* - `dst_ndarray->ndims` is unchanged.
* - `dst_ndarray->shape` is updated according to how `src_ndarray` is indexed.
* - `dst_ndarray->strides` is updated accordingly by how ndarray indexing works.
*
* @param indexes Indexes to index `src_ndarray`, ordered in the same way you would write them in Python.
* @param src_ndarray The NDArray to be indexed.
* @param dst_ndarray The resulting NDArray after indexing. Further details in the comments above,
*/
template <typename SizeT>
void index(SizeT num_indexes, const NDIndex* indexes,
const NDArray<SizeT>* src_ndarray, NDArray<SizeT>* dst_ndarray) {
// Reference code: https://github.com/wadetb/tinynumpy/blob/0d23d22e07062ffab2afa287374c7b366eebdda1/tinynumpy/tinynumpy.py#L652
SizeT expected_dst_ndarray_ndims = util::deduce_ndims_after_indexing(
src_ndarray->ndims, num_indexes, indexes);
dst_ndarray->data = src_ndarray->data;
dst_ndarray->itemsize = src_ndarray->itemsize;
SizeT src_axis = 0;
SizeT dst_axis = 0;
for (SliceIndex i = 0; i < num_indexes; i++) {
const NDIndex* index = &indexes[i];
if (index->type == ND_INDEX_TYPE_SINGLE_ELEMENT) {
SliceIndex input = *((SliceIndex*)index->data);
SliceIndex k = slice::resolve_index_in_length(
src_ndarray->shape[src_axis], input);
if (k == slice::OUT_OF_BOUNDS) {
raise_exception(SizeT, EXN_INDEX_ERROR,
"index {0} is out of bounds for axis {1} "
"with size {2}",
input, src_axis, src_ndarray->shape[src_axis]);
}
dst_ndarray->data += k * src_ndarray->strides[src_axis];
src_axis++;
} else if (index->type == ND_INDEX_TYPE_SLICE) {
UserSlice* input = (UserSlice*)index->data;
Slice slice;
input->indices_checked<SizeT>(src_ndarray->shape[src_axis], &slice);
dst_ndarray->data +=
(SizeT)slice.start * src_ndarray->strides[src_axis];
dst_ndarray->strides[dst_axis] =
((SizeT)slice.step) * src_ndarray->strides[src_axis];
dst_ndarray->shape[dst_axis] = (SizeT)slice.len();
dst_axis++;
src_axis++;
} else {
__builtin_unreachable();
}
}
for (; dst_axis < dst_ndarray->ndims; dst_axis++, src_axis++) {
dst_ndarray->shape[dst_axis] = src_ndarray->shape[src_axis];
dst_ndarray->strides[dst_axis] = src_ndarray->strides[src_axis];
}
}
} // namespace indexing
} // namespace ndarray
} // namespace
extern "C" {
using namespace ndarray::indexing;
void __nac3_ndarray_index(int32_t num_indexes, NDIndex* indexes,
NDArray<int32_t>* src_ndarray,
NDArray<int32_t>* dst_ndarray) {
index(num_indexes, indexes, src_ndarray, dst_ndarray);
}
void __nac3_ndarray_index64(int64_t num_indexes, NDIndex* indexes,
NDArray<int64_t>* src_ndarray,
NDArray<int64_t>* dst_ndarray) {
index(num_indexes, indexes, src_ndarray, dst_ndarray);
}
}

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#pragma once
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/def.hpp>
namespace {
namespace ndarray {
namespace reshape {
namespace util {
/**
* @brief Perform assertions on and resolve unknown dimensions in `new_shape` in `np.reshape(<ndarray>, new_shape)`
*
* If `new_shape` indeed contains unknown dimensions (specified with `-1`, just like numpy), `new_shape` will be
* modified to contain the resolved dimension.
*
* To perform assertions on and resolve unknown dimensions in `new_shape`, we don't need the actual
* `<ndarray>` object itself, but only the `.size` of the `<ndarray>`.
*
* @param size The `.size` of `<ndarray>`
* @param new_ndims Number of elements in `new_shape`
* @param new_shape Target shape to reshape to
*/
template <typename SizeT>
void resolve_and_check_new_shape(SizeT size, SizeT new_ndims,
SizeT* new_shape) {
// Is there a -1 in `new_shape`?
bool neg1_exists = false;
// Location of -1, only initialized if `neg1_exists` is true
SizeT neg1_axis_i;
// The computed ndarray size of `new_shape`
SizeT new_size = 1;
for (SizeT axis_i = 0; axis_i < new_ndims; axis_i++) {
SizeT dim = new_shape[axis_i];
if (dim < 0) {
if (dim == -1) {
if (neg1_exists) {
// Multiple `-1` found. Throw an error.
raise_exception(SizeT, EXN_VALUE_ERROR,
"can only specify one unknown dimension",
NO_PARAM, NO_PARAM, NO_PARAM);
} else {
neg1_exists = true;
neg1_axis_i = axis_i;
}
} else {
// TODO: What? In `np.reshape` any negative dimensions is
// treated like its `-1`.
//
// Try running `np.zeros((3, 4)).reshape((-999, 2))`
//
// It is not documented by numpy.
// Throw an error for now...
raise_exception(
SizeT, EXN_VALUE_ERROR,
"Found non -1 negative dimension {0} on axis {1}", dim,
axis_i, NO_PARAM);
}
} else {
new_size *= dim;
}
}
bool can_reshape;
if (neg1_exists) {
// Let `x` be the unknown dimension
// solve `x * <new_size> = <size>`
if (new_size == 0 && size == 0) {
// `x` has infinitely many solutions
can_reshape = false;
} else if (new_size == 0 && size != 0) {
// `x` has no solutions
can_reshape = false;
} else if (size % new_size != 0) {
// `x` has no integer solutions
can_reshape = false;
} else {
can_reshape = true;
new_shape[neg1_axis_i] = size / new_size; // Resolve dimension
}
} else {
can_reshape = (new_size == size);
}
if (!can_reshape) {
raise_exception(SizeT, EXN_VALUE_ERROR,
"cannot reshape array of size {0} into given shape",
size, NO_PARAM, NO_PARAM);
}
}
} // namespace util
} // namespace reshape
} // namespace ndarray
} // namespace
extern "C" {
void __nac3_ndarray_resolve_and_check_new_shape(int32_t size, int32_t new_ndims,
int32_t* new_shape) {
ndarray::reshape::util::resolve_and_check_new_shape(size, new_ndims,
new_shape);
}
void __nac3_ndarray_resolve_and_check_new_shape64(int64_t size,
int64_t new_ndims,
int64_t* new_shape) {
ndarray::reshape::util::resolve_and_check_new_shape(size, new_ndims,
new_shape);
}
}

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#pragma once
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/def.hpp>
#include <irrt/slice.hpp>
/*
* Notes on `np.transpose(<array>, <axes>)`
*
* TODO: `axes`, if specified, can actually contain negative indices,
* but it is not documented in numpy.
*
* Supporting it for now.
*/
namespace {
namespace ndarray {
namespace transpose {
namespace util {
/**
* @brief Do assertions on `<axes>` in `np.transpose(<array>, <axes>)`.
*
* Note that `np.transpose`'s `<axe>` argument is optional. If the argument
* is specified but the user, use this function to do assertions on it.
*
* @param ndims The number of dimensions of `<array>`
* @param num_axes Number of elements in `<axes>` as specified by the user.
* This should be equal to `ndims`. If not, a "ValueError: axes don't match array" is thrown.
* @param axes The user specified `<axes>`.
*/
template <typename SizeT>
void assert_transpose_axes(SizeT ndims, SizeT num_axes, const SizeT* axes) {
if (ndims != num_axes) {
raise_exception(SizeT, EXN_VALUE_ERROR, "axes don't match array",
NO_PARAM, NO_PARAM, NO_PARAM);
}
// TODO: Optimize this
bool* axe_specified = (bool*)__builtin_alloca(sizeof(bool) * ndims);
for (SizeT i = 0; i < ndims; i++) axe_specified[i] = false;
for (SizeT i = 0; i < ndims; i++) {
SizeT axis = slice::resolve_index_in_length(ndims, axes[i]);
if (axis == slice::OUT_OF_BOUNDS) {
// TODO: numpy actually throws a `numpy.exceptions.AxisError`
raise_exception(
SizeT, EXN_VALUE_ERROR,
"axis {0} is out of bounds for array of dimension {1}", axis,
ndims, NO_PARAM);
}
if (axe_specified[axis]) {
raise_exception(SizeT, EXN_VALUE_ERROR,
"repeated axis in transpose", NO_PARAM, NO_PARAM,
NO_PARAM);
}
axe_specified[axis] = true;
}
}
} // namespace util
/**
* @brief Create a transpose view of `src_ndarray` and perform proper assertions.
*
* This function is very similar to doing `dst_ndarray = np.transpose(src_ndarray, <axes>)`.
* If `<axes>` is supposed to be `None`, caller can pass in a `nullptr` to `<axes>`.
*
* The transpose view created is returned by modifying `dst_ndarray`.
*
* The caller is responsible for setting up `dst_ndarray` before calling this function.
* Here is what this function expects from `dst_ndarray` when called:
* - `dst_ndarray->data` does not have to be initialized.
* - `dst_ndarray->itemsize` does not have to be initialized.
* - `dst_ndarray->ndims` must be initialized, must be equal to `src_ndarray->ndims`.
* - `dst_ndarray->shape` must be allocated, through it can contain uninitialized values.
* - `dst_ndarray->strides` must be allocated, through it can contain uninitialized values.
* When this function call ends:
* - `dst_ndarray->data` is set to `src_ndarray->data` (`dst_ndarray` is just a view to `src_ndarray`)
* - `dst_ndarray->itemsize` is set to `src_ndarray->itemsize`
* - `dst_ndarray->ndims` is unchanged
* - `dst_ndarray->shape` is updated according to how `np.transpose` works
* - `dst_ndarray->strides` is updated according to how `np.transpose` works
*
* @param src_ndarray The NDArray to build a transpose view on
* @param dst_ndarray The resulting NDArray after transpose. Further details in the comments above,
* @param num_axes Number of elements in axes, can be undefined if `axes` is nullptr.
* @param axes Axes permutation. Set it to `nullptr` if `<axes>` is `None`.
*/
template <typename SizeT>
void transpose(const NDArray<SizeT>* src_ndarray, NDArray<SizeT>* dst_ndarray,
SizeT num_axes, const SizeT* axes) {
__builtin_assume(src_ndarray->ndims == dst_ndarray->ndims);
const auto ndims = src_ndarray->ndims;
if (axes != nullptr) util::assert_transpose_axes(ndims, num_axes, axes);
dst_ndarray->data = src_ndarray->data;
dst_ndarray->itemsize = src_ndarray->itemsize;
// Check out https://ajcr.net/stride-guide-part-2/ to see how `np.transpose` works behind the scenes.
if (axes == nullptr) {
// `np.transpose(<array>, axes=None)`
/*
* Minor note: `np.transpose(<array>, axes=None)` is equivalent to
* `np.transpose(<array>, axes=[N-1, N-2, ..., 0])` - basically it
* is reversing the order of strides and shape.
*
* This is a fast implementation to handle this special (but very common) case.
*/
for (SizeT axis = 0; axis < ndims; axis++) {
dst_ndarray->shape[axis] = src_ndarray->shape[ndims - axis - 1];
dst_ndarray->strides[axis] = src_ndarray->strides[ndims - axis - 1];
}
} else {
// `np.transpose(<array>, <axes>)`
// Permute strides and shape according to `axes`, while resolving negative indices in `axes`
for (SizeT axis = 0; axis < ndims; axis++) {
// `i` cannot be OUT_OF_BOUNDS because of assertions
SizeT i = slice::resolve_index_in_length(ndims, axes[axis]);
dst_ndarray->shape[axis] = src_ndarray->shape[i];
dst_ndarray->strides[axis] = src_ndarray->strides[i];
}
}
}
} // namespace transpose
} // namespace ndarray
} // namespace
extern "C" {
using namespace ndarray::transpose;
void __nac3_ndarray_transpose(const NDArray<int32_t>* src_ndarray,
NDArray<int32_t>* dst_ndarray, int32_t num_axes,
const int32_t* axes) {
transpose(src_ndarray, dst_ndarray, num_axes, axes);
}
void __nac3_ndarray_transpose64(const NDArray<int64_t>* src_ndarray,
NDArray<int64_t>* dst_ndarray, int64_t num_axes,
const int64_t* axes) {
transpose(src_ndarray, dst_ndarray, num_axes, axes);
}
}

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#pragma once
#include <irrt/int_defs.hpp>
#include <irrt/slice.hpp>
#include <irrt/util.hpp>
#include "exception.hpp"
// The type of an index or a value describing the length of a
// range/slice is always `int32_t`.
using SliceIndex = int32_t;
namespace {
/**
* @brief A Python-like slice with resolved indices.
*
* "Resolved indices" means that `start` and `stop` must be positive and are
* bound to a known length.
*/
struct Slice {
SliceIndex start;
SliceIndex stop;
SliceIndex step;
/**
* @brief Calculate and return the length / the number of the slice.
*
* If this were a Python range, this function would be `len(range(start, stop, step))`.
*/
SliceIndex len() {
SliceIndex diff = stop - start;
if (diff > 0 && step > 0) {
return ((diff - 1) / step) + 1;
} else if (diff < 0 && step < 0) {
return ((diff + 1) / step) + 1;
} else {
return 0;
}
}
};
namespace slice {
/**
* @brief Resolve a slice index under a given length like Python indexing.
*
* In Python, if you have a `list` of length 100, `list[-1]` resolves to
* `list[99]`, so `resolve_index_in_length_clamped(100, -1)` returns `99`.
*
* If `length` is 0, 0 is returned for any value of `index`.
*
* If `index` is out of bounds, clamps the returned value between `0` and
* `length - 1` (inclusive).
*
*/
SliceIndex resolve_index_in_length_clamped(SliceIndex length,
SliceIndex index) {
if (index < 0) {
return max<SliceIndex>(length + index, 0);
} else {
return min<SliceIndex>(length, index);
}
}
const SliceIndex OUT_OF_BOUNDS = -1;
/**
* @brief Like `resolve_index_in_length_clamped`, but returns `OUT_OF_BOUNDS`
* if `index` is out of bounds.
*/
SliceIndex resolve_index_in_length(SliceIndex length, SliceIndex index) {
SliceIndex resolved = index < 0 ? length + index : index;
if (0 <= resolved && resolved < length) {
return resolved;
} else {
return OUT_OF_BOUNDS;
}
}
} // namespace slice
/**
* @brief A Python-like slice with **unresolved** indices.
*/
struct UserSlice {
bool start_defined;
SliceIndex start;
bool stop_defined;
SliceIndex stop;
bool step_defined;
SliceIndex step;
UserSlice() { this->reset(); }
void reset() {
this->start_defined = false;
this->stop_defined = false;
this->step_defined = false;
}
void set_start(SliceIndex start) {
this->start_defined = true;
this->start = start;
}
void set_stop(SliceIndex stop) {
this->stop_defined = true;
this->stop = stop;
}
void set_step(SliceIndex step) {
this->step_defined = true;
this->step = step;
}
/**
* @brief Resolve this slice.
*
* In Python, this would be `slice(start, stop, step).indices(length)`.
*
* @return A `Slice` with the resolved indices.
*/
Slice indices(SliceIndex length) {
Slice result;
result.step = step_defined ? step : 1;
bool step_is_negative = result.step < 0;
if (start_defined) {
result.start =
slice::resolve_index_in_length_clamped(length, start);
} else {
result.start = step_is_negative ? length - 1 : 0;
}
if (stop_defined) {
result.stop = slice::resolve_index_in_length_clamped(length, stop);
} else {
result.stop = step_is_negative ? -1 : length;
}
return result;
}
/**
* @brief Like `.indices()` but with assertions.
*/
template <typename SizeT>
void indices_checked(SliceIndex length, Slice* result) {
if (length < 0) {
raise_exception(SizeT, EXN_VALUE_ERROR,
"length should not be negative, got {0}", length,
NO_PARAM, NO_PARAM);
}
if (this->step_defined && this->step == 0) {
raise_exception(SizeT, EXN_VALUE_ERROR, "slice step cannot be zero",
NO_PARAM, NO_PARAM, NO_PARAM);
}
*result = this->indices(length);
}
};
} // namespace

101
nac3core/irrt/irrt/util.hpp Normal file
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#pragma once
namespace {
template <typename T>
const T& max(const T& a, const T& b) {
return a > b ? a : b;
}
template <typename T>
const T& min(const T& a, const T& b) {
return a > b ? b : a;
}
template <typename T>
bool arrays_match(int len, T* as, T* bs) {
for (int i = 0; i < len; i++) {
if (as[i] != bs[i]) return false;
}
return true;
}
namespace cstr_utils {
/**
* @brief Return true if `str` is empty.
*/
bool is_empty(const char* str) { return str[0] == '\0'; }
/**
* @brief Implementation of `strcmp()`
*/
int8_t compare(const char* a, const char* b) {
uint32_t i = 0;
while (true) {
if (a[i] < b[i]) {
return -1;
} else if (a[i] > b[i]) {
return 1;
} else {
if (a[i] == '\0') {
return 0;
} else {
i++;
}
}
}
}
/**
* @brief Return true two strings have the same content.
*/
int8_t equal(const char* a, const char* b) { return compare(a, b) == 0; }
/**
* @brief Implementation of `strlen()`.
*/
uint32_t length(const char* str) {
uint32_t length = 0;
while (*str != '\0') {
length++;
str++;
}
return length;
}
/**
* @brief Copy a null-terminated string to a buffer with limited size and guaranteed null-termination.
*
* `dst_max_size` must be greater than 0, otherwise this function has undefined behavior.
*
* This function attempts to copy everything from `src` from `dst`, and *always* null-terminates `dst`.
*
* If the size of `dst` is too small, the final byte (`dst[dst_max_size - 1]`) of `dst` will be set to
* the null terminator.
*
* @param src String to copy from.
* @param dst Buffer to copy string to.
* @param dst_max_size
* Number of bytes of this buffer, including the space needed for the null terminator.
* Must be greater than 0.
* @return If `dst` is too small to contain everything in `src`.
*/
bool copy(const char* src, char* dst, uint32_t dst_max_size) {
for (uint32_t i = 0; i < dst_max_size; i++) {
bool is_last = i + 1 == dst_max_size;
if (is_last && src[i] != '\0') {
dst[i] = '\0';
return false;
}
if (src[i] == '\0') {
dst[i] = '\0';
return true;
}
dst[i] = src[i];
}
__builtin_unreachable();
}
} // namespace cstr_utils
} // namespace

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#pragma once
#include <irrt/core.hpp>
#include <irrt/exception.hpp>
#include <irrt/int_defs.hpp>
#include <irrt/ndarray/basic.hpp>
#include <irrt/ndarray/broadcast.hpp>
#include <irrt/ndarray/def.hpp>
#include <irrt/ndarray/indexing.hpp>
#include <irrt/ndarray/reshape.hpp>
#include <irrt/ndarray/transpose.hpp>
#include <irrt/util.hpp>

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// This file will be compiled like a real C++ program,
// and we do have the luxury to use the standard libraries.
// That is if the nix flakes do not have issues... especially on msys2...
#include <cstdint>
#include <cstdio>
#include <cstdlib>
// Special macro to inform `#include <irrt/*>` that we are testing.
#define IRRT_TESTING
// Note that failure unit tests are not supported.
#include <test/test_core.hpp>
#include <test/test_ndarray_basic.hpp>
#include <test/test_ndarray_broadcast.hpp>
#include <test/test_ndarray_indexing.hpp>
int main() {
test::core::run();
test::ndarray_basic::run();
test::ndarray_indexing::run();
test::ndarray_broadcast::run();
return 0;
}

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#pragma once
#include <cstdint>
#include <cstdio>
#include <cstdlib>
#include <irrt_everything.hpp>
#include <test/util.hpp>
/*
Include this header for every test_*.cpp
*/

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#pragma once
#include <test/includes.hpp>
namespace test {
namespace core {
void test_int_exp() {
BEGIN_TEST();
assert_values_match(125L, __nac3_int_exp_impl<int64_t>(5, 3));
assert_values_match(3125L, __nac3_int_exp_impl<int64_t>(5, 5));
}
void run() { test_int_exp(); }
} // namespace core
} // namespace test

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#pragma once
#include <test/includes.hpp>
namespace test {
namespace ndarray_basic {
void test_calc_size_from_shape_normal() {
// Test shapes with normal values
BEGIN_TEST();
int64_t shape[4] = {2, 3, 5, 7};
assert_values_match(
210L, ndarray::basic::util::calc_size_from_shape<int64_t>(4, shape));
}
void test_calc_size_from_shape_has_zero() {
// Test shapes with 0 in them
BEGIN_TEST();
int64_t shape[4] = {2, 0, 5, 7};
assert_values_match(
0L, ndarray::basic::util::calc_size_from_shape<int64_t>(4, shape));
}
void run() {
test_calc_size_from_shape_normal();
test_calc_size_from_shape_has_zero();
}
} // namespace ndarray_basic
} // namespace test

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#pragma once
#include <test/includes.hpp>
namespace test {
namespace ndarray_broadcast {
void test_can_broadcast_shape() {
BEGIN_TEST();
assert_values_match(true,
ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){3}, 5, (int32_t[]){1, 1, 1, 1, 3}));
assert_values_match(false, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){3}, 2, (int32_t[]){3, 1}));
assert_values_match(true, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){3}, 1, (int32_t[]){3}));
assert_values_match(false, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){1}, 1, (int32_t[]){3}));
assert_values_match(true, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){1}, 1, (int32_t[]){1}));
assert_values_match(
true, ndarray::broadcast::util::can_broadcast_shape_to(
3, (int32_t[]){256, 256, 3}, 3, (int32_t[]){256, 1, 3}));
assert_values_match(true,
ndarray::broadcast::util::can_broadcast_shape_to(
3, (int32_t[]){256, 256, 3}, 1, (int32_t[]){3}));
assert_values_match(false,
ndarray::broadcast::util::can_broadcast_shape_to(
3, (int32_t[]){256, 256, 3}, 1, (int32_t[]){2}));
assert_values_match(true,
ndarray::broadcast::util::can_broadcast_shape_to(
3, (int32_t[]){256, 256, 3}, 1, (int32_t[]){1}));
// In cases when the shapes contain zero(es)
assert_values_match(true, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){0}, 1, (int32_t[]){1}));
assert_values_match(false, ndarray::broadcast::util::can_broadcast_shape_to(
1, (int32_t[]){0}, 1, (int32_t[]){2}));
assert_values_match(true,
ndarray::broadcast::util::can_broadcast_shape_to(
4, (int32_t[]){0, 4, 0, 0}, 1, (int32_t[]){1}));
assert_values_match(
true, ndarray::broadcast::util::can_broadcast_shape_to(
4, (int32_t[]){0, 4, 0, 0}, 4, (int32_t[]){1, 1, 1, 1}));
assert_values_match(
true, ndarray::broadcast::util::can_broadcast_shape_to(
4, (int32_t[]){0, 4, 0, 0}, 4, (int32_t[]){1, 4, 1, 1}));
assert_values_match(false, ndarray::broadcast::util::can_broadcast_shape_to(
2, (int32_t[]){4, 3}, 2, (int32_t[]){0, 3}));
assert_values_match(false, ndarray::broadcast::util::can_broadcast_shape_to(
2, (int32_t[]){4, 3}, 2, (int32_t[]){0, 0}));
}
void test_ndarray_broadcast() {
/*
# array = np.array([[19.9, 29.9, 39.9, 49.9]], dtype=np.float64)
# >>> [[19.9 29.9 39.9 49.9]]
#
# array = np.broadcast_to(array, (2, 3, 4))
# >>> [[[19.9 29.9 39.9 49.9]
# >>> [19.9 29.9 39.9 49.9]
# >>> [19.9 29.9 39.9 49.9]]
# >>> [[19.9 29.9 39.9 49.9]
# >>> [19.9 29.9 39.9 49.9]
# >>> [19.9 29.9 39.9 49.9]]]
#
# assery array.strides == (0, 0, 8)
*/
BEGIN_TEST();
double in_data[4] = {19.9, 29.9, 39.9, 49.9};
const int32_t in_ndims = 2;
int32_t in_shape[in_ndims] = {1, 4};
int32_t in_strides[in_ndims] = {};
NDArray<int32_t> ndarray = {.data = (uint8_t*)in_data,
.itemsize = sizeof(double),
.ndims = in_ndims,
.shape = in_shape,
.strides = in_strides};
ndarray::basic::set_strides_by_shape(&ndarray);
const int32_t dst_ndims = 3;
int32_t dst_shape[dst_ndims] = {2, 3, 4};
int32_t dst_strides[dst_ndims] = {};
NDArray<int32_t> dst_ndarray = {
.ndims = dst_ndims, .shape = dst_shape, .strides = dst_strides};
ndarray::broadcast::broadcast_to(&ndarray, &dst_ndarray);
assert_arrays_match(dst_ndims, ((int32_t[]){0, 0, 8}), dst_ndarray.strides);
assert_values_match(19.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 0, 0}))));
assert_values_match(29.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 0, 1}))));
assert_values_match(39.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 0, 2}))));
assert_values_match(49.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 0, 3}))));
assert_values_match(19.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 1, 0}))));
assert_values_match(29.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 1, 1}))));
assert_values_match(39.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 1, 2}))));
assert_values_match(49.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){0, 1, 3}))));
assert_values_match(49.9,
*((double*)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, ((int32_t[]){1, 2, 3}))));
}
void run() {
test_can_broadcast_shape();
test_ndarray_broadcast();
}
} // namespace ndarray_broadcast
} // namespace test

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#pragma once
#include <test/includes.hpp>
namespace test {
namespace ndarray_indexing {
void test_normal_1() {
/*
Reference Python code:
```python
ndarray = np.arange(12, dtype=np.float64).reshape((3, 4));
# array([[ 0., 1., 2., 3.],
# [ 4., 5., 6., 7.],
# [ 8., 9., 10., 11.]])
dst_ndarray = ndarray[-2:, 1::2]
# array([[ 5., 7.],
# [ 9., 11.]])
assert dst_ndarray.shape == (2, 2)
assert dst_ndarray.strides == (32, 16)
assert dst_ndarray[0, 0] == 5.0
assert dst_ndarray[0, 1] == 7.0
assert dst_ndarray[1, 0] == 9.0
assert dst_ndarray[1, 1] == 11.0
```
*/
BEGIN_TEST();
// Prepare src_ndarray
double src_data[12] = {0.0, 1.0, 2.0, 3.0, 4.0, 5.0,
6.0, 7.0, 8.0, 9.0, 10.0, 11.0};
int64_t src_itemsize = sizeof(double);
const int64_t src_ndims = 2;
int64_t src_shape[src_ndims] = {3, 4};
int64_t src_strides[src_ndims] = {};
NDArray<int64_t> src_ndarray = {.data = (uint8_t *)src_data,
.itemsize = src_itemsize,
.ndims = src_ndims,
.shape = src_shape,
.strides = src_strides};
ndarray::basic::set_strides_by_shape(&src_ndarray);
// Prepare dst_ndarray
const int64_t dst_ndims = 2;
int64_t dst_shape[dst_ndims] = {999, 999}; // Empty values
int64_t dst_strides[dst_ndims] = {999, 999}; // Empty values
NDArray<int64_t> dst_ndarray = {.data = nullptr,
.ndims = dst_ndims,
.shape = dst_shape,
.strides = dst_strides};
// Create the subscripts in `ndarray[-2::, 1::2]`
UserSlice subscript_1;
subscript_1.set_start(-2);
UserSlice subscript_2;
subscript_2.set_start(1);
subscript_2.set_step(2);
const int64_t num_indexes = 2;
NDIndex indexes[num_indexes] = {
{.type = ND_INDEX_TYPE_SLICE, .data = (uint8_t *)&subscript_1},
{.type = ND_INDEX_TYPE_SLICE, .data = (uint8_t *)&subscript_2}};
ndarray::indexing::index(num_indexes, indexes, &src_ndarray, &dst_ndarray);
int64_t expected_shape[dst_ndims] = {2, 2};
int64_t expected_strides[dst_ndims] = {32, 16};
assert_arrays_match(dst_ndims, expected_shape, dst_ndarray.shape);
assert_arrays_match(dst_ndims, expected_strides, dst_ndarray.strides);
// dst_ndarray[0, 0]
assert_values_match(5.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){0, 0})));
// dst_ndarray[0, 1]
assert_values_match(7.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){0, 1})));
// dst_ndarray[1, 0]
assert_values_match(9.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){1, 0})));
// dst_ndarray[1, 1]
assert_values_match(11.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){1, 1})));
}
void test_normal_2() {
/*
```python
ndarray = np.arange(12, dtype=np.float64).reshape((3, 4))
# array([[ 0., 1., 2., 3.],
# [ 4., 5., 6., 7.],
# [ 8., 9., 10., 11.]])
dst_ndarray = ndarray[2, ::-2]
# array([11., 9.])
assert dst_ndarray.shape == (2,)
assert dst_ndarray.strides == (-16,)
assert dst_ndarray[0] == 11.0
assert dst_ndarray[1] == 9.0
```
*/
BEGIN_TEST();
// Prepare src_ndarray
double src_data[12] = {0.0, 1.0, 2.0, 3.0, 4.0, 5.0,
6.0, 7.0, 8.0, 9.0, 10.0, 11.0};
int64_t src_itemsize = sizeof(double);
const int64_t src_ndims = 2;
int64_t src_shape[src_ndims] = {3, 4};
int64_t src_strides[src_ndims] = {};
NDArray<int64_t> src_ndarray = {.data = (uint8_t *)src_data,
.itemsize = src_itemsize,
.ndims = src_ndims,
.shape = src_shape,
.strides = src_strides};
ndarray::basic::set_strides_by_shape(&src_ndarray);
// Prepare dst_ndarray
const int64_t dst_ndims = 1;
int64_t dst_shape[dst_ndims] = {999}; // Empty values
int64_t dst_strides[dst_ndims] = {999}; // Empty values
NDArray<int64_t> dst_ndarray = {.data = nullptr,
.ndims = dst_ndims,
.shape = dst_shape,
.strides = dst_strides};
// Create the subscripts in `ndarray[2, ::-2]`
int64_t subscript_1 = 2;
UserSlice subscript_2;
subscript_2.set_step(-2);
const int64_t num_indexes = 2;
NDIndex indexes[num_indexes] = {
{.type = ND_INDEX_TYPE_SINGLE_ELEMENT, .data = (uint8_t *)&subscript_1},
{.type = ND_INDEX_TYPE_SLICE, .data = (uint8_t *)&subscript_2}};
ndarray::indexing::index(num_indexes, indexes, &src_ndarray, &dst_ndarray);
int64_t expected_shape[dst_ndims] = {2};
int64_t expected_strides[dst_ndims] = {-16};
assert_arrays_match(dst_ndims, expected_shape, dst_ndarray.shape);
assert_arrays_match(dst_ndims, expected_strides, dst_ndarray.strides);
assert_values_match(11.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){0})));
assert_values_match(9.0,
*((double *)ndarray::basic::get_pelement_by_indices(
&dst_ndarray, (int64_t[dst_ndims]){1})));
}
void run() {
test_normal_1();
test_normal_2();
}
} // namespace ndarray_indexing
} // namespace test

131
nac3core/irrt/test/util.hpp Normal file
View File

@ -0,0 +1,131 @@
#pragma once
#include <cstdio>
#include <cstdlib>
template <class T>
void print_value(const T& value);
template <>
void print_value(const bool& value) {
printf("%s", value ? "true" : "false");
}
template <>
void print_value(const int8_t& value) {
printf("%d", value);
}
template <>
void print_value(const int32_t& value) {
printf("%d", value);
}
template <>
void print_value(const int64_t& value) {
printf("%d", value);
}
template <>
void print_value(const uint8_t& value) {
printf("%u", value);
}
template <>
void print_value(const uint32_t& value) {
printf("%u", value);
}
template <>
void print_value(const uint64_t& value) {
printf("%d", value);
}
template <>
void print_value(const float& value) {
printf("%f", value);
}
template <>
void print_value(const double& value) {
printf("%f", value);
}
void __begin_test(const char* function_name, const char* file, int line) {
printf("######### Running %s @ %s:%d\n", function_name, file, line);
}
#define BEGIN_TEST() __begin_test(__FUNCTION__, __FILE__, __LINE__)
void test_fail() {
printf("[!] Test failed. Exiting with status code 1.\n");
exit(1);
}
template <typename T>
void debug_print_array(int len, const T* as) {
printf("[");
for (int i = 0; i < len; i++) {
if (i != 0) printf(", ");
print_value(as[i]);
}
printf("]");
}
void print_assertion_passed(const char* file, int line) {
printf("[*] Assertion passed on %s:%d\n", file, line);
}
void print_assertion_failed(const char* file, int line) {
printf("[!] Assertion failed on %s:%d\n", file, line);
}
void __assert_true(const char* file, int line, bool cond) {
if (cond) {
print_assertion_passed(file, line);
} else {
print_assertion_failed(file, line);
test_fail();
}
}
#define assert_true(cond) __assert_true(__FILE__, __LINE__, cond)
template <typename T>
void __assert_arrays_match(const char* file, int line, int len,
const T* expected, const T* got) {
if (arrays_match(len, expected, got)) {
print_assertion_passed(file, line);
} else {
print_assertion_failed(file, line);
printf("Expect = ");
debug_print_array(len, expected);
printf("\n");
printf(" Got = ");
debug_print_array(len, got);
printf("\n");
test_fail();
}
}
#define assert_arrays_match(len, expected, got) \
__assert_arrays_match(__FILE__, __LINE__, len, expected, got)
template <typename T>
void __assert_values_match(const char* file, int line, T expected, T got) {
if (expected == got) {
print_assertion_passed(file, line);
} else {
print_assertion_failed(file, line);
printf("Expect = ");
print_value(expected);
printf("\n");
printf(" Got = ");
print_value(got);
printf("\n");
test_fail();
}
}
#define assert_values_match(expected, got) \
__assert_values_match(__FILE__, __LINE__, expected, got)

File diff suppressed because it is too large Load Diff

View File

@ -1717,6 +1717,7 @@ impl<'ctx, Index: UntypedArrayLikeAccessor<'ctx>> ArrayLikeIndexer<'ctx, Index>
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(len, false), (len, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {

View File

@ -4,7 +4,7 @@ use crate::{
codegen::{ codegen::{
classes::{ classes::{
ArrayLikeIndexer, ArrayLikeValue, ListType, ListValue, NDArrayValue, ProxyType, ArrayLikeIndexer, ArrayLikeValue, ListType, ListValue, NDArrayValue, ProxyType,
ProxyValue, RangeValue, TypedArrayLikeAccessor, UntypedArrayLikeAccessor, ProxyValue, RangeValue, UntypedArrayLikeAccessor,
}, },
concrete_type::{ConcreteFuncArg, ConcreteTypeEnum, ConcreteTypeStore}, concrete_type::{ConcreteFuncArg, ConcreteTypeEnum, ConcreteTypeStore},
gen_in_range_check, get_llvm_abi_type, get_llvm_type, gen_in_range_check, get_llvm_abi_type, get_llvm_type,
@ -18,14 +18,11 @@ use crate::{
gen_for_callback_incrementing, gen_if_callback, gen_if_else_expr_callback, gen_raise, gen_for_callback_incrementing, gen_if_callback, gen_if_else_expr_callback, gen_raise,
gen_var, gen_var,
}, },
structure::ndarray::NDArrayObject,
CodeGenContext, CodeGenTask, CodeGenerator, CodeGenContext, CodeGenTask, CodeGenerator,
}, },
symbol_resolver::{SymbolValue, ValueEnum}, symbol_resolver::{SymbolValue, ValueEnum},
toplevel::{ toplevel::{helper::PrimDef, numpy::unpack_ndarray_var_tys, DefinitionId, TopLevelDef},
helper::PrimDef,
numpy::{make_ndarray_ty, unpack_ndarray_var_tys},
DefinitionId, TopLevelDef,
},
typecheck::{ typecheck::{
magic_methods::{Binop, BinopVariant, HasOpInfo}, magic_methods::{Binop, BinopVariant, HasOpInfo},
typedef::{FunSignature, FuncArg, Type, TypeEnum, TypeVarId, Unifier, VarMap}, typedef::{FunSignature, FuncArg, Type, TypeEnum, TypeVarId, Unifier, VarMap},
@ -43,6 +40,12 @@ use nac3parser::ast::{
Unaryop, Unaryop,
}; };
use super::structure::{cslice::CSlice, ndarray::indexing::util::gen_ndarray_subscript_ndindexes};
use super::{
model::*,
structure::exception::{Exception, ExceptionId},
};
pub fn get_subst_key( pub fn get_subst_key(
unifier: &mut Unifier, unifier: &mut Unifier,
obj: Option<Type>, obj: Option<Type>,
@ -281,24 +284,7 @@ impl<'ctx, 'a> CodeGenContext<'ctx, 'a> {
None None
} }
} }
Constant::Str(v) => { Constant::Str(s) => Some(self.gen_string(generator, s).value.into()),
assert!(self.unifier.unioned(ty, self.primitives.str));
if let Some(v) = self.const_strings.get(v) {
Some(*v)
} else {
let str_ptr = self
.builder
.build_global_string_ptr(v, "const")
.map(|v| v.as_pointer_value().into())
.unwrap();
let size = generator.get_size_type(self.ctx).const_int(v.len() as u64, false);
let ty = self.get_llvm_type(generator, self.primitives.str);
let val =
ty.into_struct_type().const_named_struct(&[str_ptr, size.into()]).into();
self.const_strings.insert(v.to_string(), val);
Some(val)
}
}
Constant::Ellipsis => { Constant::Ellipsis => {
let msg = self.gen_string(generator, "NotImplementedError"); let msg = self.gen_string(generator, "NotImplementedError");
@ -560,69 +546,70 @@ impl<'ctx, 'a> CodeGenContext<'ctx, 'a> {
} }
/// Helper function for generating a LLVM variable storing a [String]. /// Helper function for generating a LLVM variable storing a [String].
pub fn gen_string<G, S>(&mut self, generator: &mut G, s: S) -> BasicValueEnum<'ctx> pub fn gen_string<G>(&mut self, generator: &mut G, string: &str) -> Struct<'ctx, CSlice>
where where
G: CodeGenerator + ?Sized, G: CodeGenerator + ?Sized,
S: Into<String>,
{ {
self.gen_const(generator, &Constant::Str(s.into()), self.primitives.str).unwrap() self.const_strings.get(string).copied().unwrap_or_else(|| {
let sizet_model = IntModel(SizeT);
let pbyte_model = PtrModel(IntModel(Byte));
let cslice_model = StructModel(CSlice);
let base = self.builder.build_global_string_ptr(string, "constant_string").unwrap();
let base = pbyte_model.believe_value(base.as_pointer_value());
let len = sizet_model.constant(generator, self.ctx, string.len() as u64);
let cslice = cslice_model.create_const(generator, self.ctx, base, len);
self.const_strings.insert(string.to_owned(), cslice);
cslice
})
} }
pub fn raise_exn<G: CodeGenerator + ?Sized>( pub fn raise_exn<G: CodeGenerator + ?Sized>(
&mut self, &mut self,
generator: &mut G, generator: &mut G,
name: &str, name: &str,
msg: BasicValueEnum<'ctx>, msg: Struct<'ctx, CSlice>,
params: [Option<IntValue<'ctx>>; 3], params: [Option<Int<'ctx, Int64>>; 3],
loc: Location, loc: Location,
) { ) {
let zelf = if let Some(exception_val) = self.exception_val { let exn_model = StructModel(Exception);
exception_val let exn_id_model = IntModel(ExceptionId::default());
} else {
let ty = self.get_llvm_type(generator, self.primitives.exception).into_pointer_type(); let exn_id =
let zelf_ty: BasicTypeEnum = ty.get_element_type().into_struct_type().into(); exn_id_model.constant(generator, self.ctx, self.resolver.get_string_id(name) as u64);
let zelf = generator.gen_var_alloc(self, zelf_ty, Some("exn")).unwrap(); let exn = self.exception_val.unwrap_or_else(|| {
*self.exception_val.insert(zelf) let exn = exn_model.var_alloca(generator, self, Some("exn")).unwrap();
}; *self.exception_val.insert(exn)
let int32 = self.ctx.i32_type();
let zero = int32.const_zero();
unsafe {
let id_ptr = self.builder.build_in_bounds_gep(zelf, &[zero, zero], "exn.id").unwrap();
let id = self.resolver.get_string_id(name);
self.builder.build_store(id_ptr, int32.const_int(id as u64, false)).unwrap();
let ptr = self
.builder
.build_in_bounds_gep(zelf, &[zero, int32.const_int(5, false)], "exn.msg")
.unwrap();
self.builder.build_store(ptr, msg).unwrap();
let i64_zero = self.ctx.i64_type().const_zero();
for (i, attr_ind) in [6, 7, 8].iter().enumerate() {
let ptr = self
.builder
.build_in_bounds_gep(
zelf,
&[zero, int32.const_int(*attr_ind, false)],
"exn.param",
)
.unwrap();
let val = params[i].map_or(i64_zero, |v| {
self.builder.build_int_s_extend(v, self.ctx.i64_type(), "sext").unwrap()
}); });
self.builder.build_store(ptr, val).unwrap();
exn.set(self, |f| f.id, exn_id);
exn.set(self, |f| f.msg, msg);
for (i, param) in params.iter().enumerate() {
if let Some(param) = param {
exn.set(self, |f| f.params[i], *param);
} }
} }
gen_raise(generator, self, Some(&zelf.into()), loc);
gen_raise(generator, self, Some(exn), loc);
} }
pub fn make_assert<G: CodeGenerator + ?Sized>( pub fn make_assert<G: CodeGenerator + ?Sized>(
&mut self, &mut self,
generator: &mut G, generator: &mut G,
cond: IntValue<'ctx>, cond: IntValue<'ctx>, // IntType can have arbitrary bit width
err_name: &str, err_name: &str,
err_msg: &str, err_msg: &str,
params: [Option<IntValue<'ctx>>; 3], params: [Option<IntValue<'ctx>>; 3],
loc: Location, loc: Location,
) { ) {
let param_model = IntModel(Int64);
let params =
params.map(|p| p.map(|p| param_model.check_value(generator, self.ctx, p).unwrap()));
let err_msg = self.gen_string(generator, err_msg); let err_msg = self.gen_string(generator, err_msg);
self.make_assert_impl(generator, cond, err_name, err_msg, params, loc); self.make_assert_impl(generator, cond, err_name, err_msg, params, loc);
} }
@ -630,26 +617,36 @@ impl<'ctx, 'a> CodeGenContext<'ctx, 'a> {
pub fn make_assert_impl<G: CodeGenerator + ?Sized>( pub fn make_assert_impl<G: CodeGenerator + ?Sized>(
&mut self, &mut self,
generator: &mut G, generator: &mut G,
cond: IntValue<'ctx>, cond: IntValue<'ctx>, // IntType can have arbitrary bit width
err_name: &str, err_name: &str,
err_msg: BasicValueEnum<'ctx>, err_msg: Struct<'ctx, CSlice>,
params: [Option<IntValue<'ctx>>; 3], params: [Option<Int<'ctx, Int64>>; 3],
loc: Location, loc: Location,
) { ) {
let i1 = self.ctx.bool_type(); let bool_model = IntModel(Bool);
let i1_true = i1.const_all_ones();
// we assume that the condition is most probably true, so the normal path is the most // We assume that the condition is most probably true, so the normal path is the most
// probable path // probable path even if this assumption is violated, it does not matter as exception unwinding is.
// even if this assumption is violated, it does not matter as exception unwinding is let cond = call_expect(
// slow anyway... self,
let cond = call_expect(self, cond, i1_true, Some("expect")); generator.bool_to_i1(self, cond),
bool_model.const_true(generator, self.ctx).value,
Some("expect"),
);
let current_bb = self.builder.get_insert_block().unwrap(); let current_bb = self.builder.get_insert_block().unwrap();
let current_fun = current_bb.get_parent().unwrap(); let current_fun = current_bb.get_parent().unwrap();
let then_block = self.ctx.insert_basic_block_after(current_bb, "succ"); let then_block = self.ctx.insert_basic_block_after(current_bb, "succ");
let exn_block = self.ctx.append_basic_block(current_fun, "fail"); let exn_block = self.ctx.append_basic_block(current_fun, "fail");
self.builder.build_conditional_branch(cond, then_block, exn_block).unwrap(); self.builder.build_conditional_branch(cond, then_block, exn_block).unwrap();
// Inserting into `exn_block`
self.builder.position_at_end(exn_block); self.builder.position_at_end(exn_block);
self.raise_exn(generator, err_name, err_msg, params, loc); self.raise_exn(generator, err_name, err_msg, params, loc);
// Continuation
self.builder.position_at_end(then_block); self.builder.position_at_end(then_block);
} }
} }
@ -951,9 +948,9 @@ pub fn destructure_range<'ctx>(
/// Allocates a List structure with the given [type][ty] and [length]. The name of the resulting /// Allocates a List structure with the given [type][ty] and [length]. The name of the resulting
/// LLVM value is `{name}.addr`, or `list.addr` if [name] is not specified. /// LLVM value is `{name}.addr`, or `list.addr` if [name] is not specified.
/// ///
/// Setting `ty` to [`None`] implies that the list does not have a known element type, which is only /// Setting `ty` to [`None`] implies that the list is empty **and** does not have a known element
/// valid for empty lists. It is undefined behavior to generate a sized list with an unknown element /// type, and will therefore set the `list.data` type as `size_t*`. It is undefined behavior to
/// type. /// generate a sized list with an unknown element type.
pub fn allocate_list<'ctx, G: CodeGenerator + ?Sized>( pub fn allocate_list<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>, ctx: &mut CodeGenContext<'ctx, '_>,
@ -995,8 +992,10 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
ctx.builder.position_at_end(init_bb); ctx.builder.position_at_end(init_bb);
let Comprehension { target, iter, ifs, .. } = &generators[0]; let Comprehension { target, iter, ifs, .. } = &generators[0];
let iter_ty = iter.custom.unwrap();
let iter_val = if let Some(v) = generator.gen_expr(ctx, iter)? { let iter_val = if let Some(v) = generator.gen_expr(ctx, iter)? {
v.to_basic_value_enum(ctx, generator, iter.custom.unwrap())? v.to_basic_value_enum(ctx, generator, iter_ty)?
} else { } else {
for bb in [test_bb, body_bb, cont_bb] { for bb in [test_bb, body_bb, cont_bb] {
ctx.builder.position_at_end(bb); ctx.builder.position_at_end(bb);
@ -1014,11 +1013,12 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
ctx.builder.build_store(index, zero_size_t).unwrap(); ctx.builder.build_store(index, zero_size_t).unwrap();
let elem_ty = ctx.get_llvm_type(generator, elt.custom.unwrap()); let elem_ty = ctx.get_llvm_type(generator, elt.custom.unwrap());
let is_range = ctx.unifier.unioned(iter.custom.unwrap(), ctx.primitives.range);
let list; let list;
let list_content;
if is_range { match &*ctx.unifier.get_ty(iter_ty) {
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.range.obj_id(&ctx.unifier).unwrap() =>
{
let iter_val = RangeValue::from_ptr_val(iter_val.into_pointer_value(), Some("range")); let iter_val = RangeValue::from_ptr_val(iter_val.into_pointer_value(), Some("range"));
let (start, stop, step) = destructure_range(ctx, iter_val); let (start, stop, step) = destructure_range(ctx, iter_val);
let diff = ctx.builder.build_int_sub(stop, start, "diff").unwrap(); let diff = ctx.builder.build_int_sub(stop, start, "diff").unwrap();
@ -1026,7 +1026,8 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
// the length may be 1 more than the actual length if the division is exact, but the // the length may be 1 more than the actual length if the division is exact, but the
// length is a upper bound only anyway so it does not matter. // length is a upper bound only anyway so it does not matter.
let length = ctx.builder.build_int_signed_div(diff, step, "div").unwrap(); let length = ctx.builder.build_int_signed_div(diff, step, "div").unwrap();
let length = ctx.builder.build_int_add(length, int32.const_int(1, false), "add1").unwrap(); let length =
ctx.builder.build_int_add(length, int32.const_int(1, false), "add1").unwrap();
// in case length is non-positive // in case length is non-positive
let is_valid = let is_valid =
ctx.builder.build_int_compare(IntPredicate::SGT, length, zero_32, "check").unwrap(); ctx.builder.build_int_compare(IntPredicate::SGT, length, zero_32, "check").unwrap();
@ -1035,7 +1036,9 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
.builder .builder
.build_select( .build_select(
is_valid, is_valid,
ctx.builder.build_int_z_extend_or_bit_cast(length, size_t, "z_ext_len").unwrap(), ctx.builder
.build_int_z_extend_or_bit_cast(length, size_t, "z_ext_len")
.unwrap(),
zero_size_t, zero_size_t,
"listcomp.alloc_size", "listcomp.alloc_size",
) )
@ -1047,7 +1050,6 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
list_alloc_size.into_int_value(), list_alloc_size.into_int_value(),
Some("listcomp.addr"), Some("listcomp.addr"),
); );
list_content = list.data().base_ptr(ctx, generator);
let i = generator.gen_store_target(ctx, target, Some("i.addr"))?.unwrap(); let i = generator.gen_store_target(ctx, target, Some("i.addr"))?.unwrap();
ctx.builder ctx.builder
@ -1055,7 +1057,11 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
.unwrap(); .unwrap();
ctx.builder ctx.builder
.build_conditional_branch(gen_in_range_check(ctx, start, stop, step), test_bb, cont_bb) .build_conditional_branch(
gen_in_range_check(ctx, start, stop, step),
test_bb,
cont_bb,
)
.unwrap(); .unwrap();
ctx.builder.position_at_end(test_bb); ctx.builder.position_at_end(test_bb);
@ -1070,11 +1076,18 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
.unwrap(); .unwrap();
ctx.builder.build_store(i, tmp).unwrap(); ctx.builder.build_store(i, tmp).unwrap();
ctx.builder ctx.builder
.build_conditional_branch(gen_in_range_check(ctx, tmp, stop, step), body_bb, cont_bb) .build_conditional_branch(
gen_in_range_check(ctx, tmp, stop, step),
body_bb,
cont_bb,
)
.unwrap(); .unwrap();
ctx.builder.position_at_end(body_bb); ctx.builder.position_at_end(body_bb);
} else { }
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.list.obj_id(&ctx.unifier).unwrap() =>
{
let length = ctx let length = ctx
.build_gep_and_load( .build_gep_and_load(
iter_val.into_pointer_value(), iter_val.into_pointer_value(),
@ -1083,14 +1096,15 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
) )
.into_int_value(); .into_int_value();
list = allocate_list(generator, ctx, Some(elem_ty), length, Some("listcomp")); list = allocate_list(generator, ctx, Some(elem_ty), length, Some("listcomp"));
list_content = list.data().base_ptr(ctx, generator);
let counter = generator.gen_var_alloc(ctx, size_t.into(), Some("counter.addr"))?; let counter = generator.gen_var_alloc(ctx, size_t.into(), Some("counter.addr"))?;
// counter = -1 // counter = -1
ctx.builder.build_store(counter, size_t.const_int(u64::MAX, true)).unwrap(); ctx.builder.build_store(counter, size_t.const_all_ones()).unwrap();
ctx.builder.build_unconditional_branch(test_bb).unwrap(); ctx.builder.build_unconditional_branch(test_bb).unwrap();
ctx.builder.position_at_end(test_bb); ctx.builder.position_at_end(test_bb);
let tmp = ctx.builder.build_load(counter, "i").map(BasicValueEnum::into_int_value).unwrap(); let tmp =
ctx.builder.build_load(counter, "i").map(BasicValueEnum::into_int_value).unwrap();
let tmp = ctx.builder.build_int_add(tmp, size_t.const_int(1, false), "inc").unwrap(); let tmp = ctx.builder.build_int_add(tmp, size_t.const_int(1, false), "inc").unwrap();
ctx.builder.build_store(counter, tmp).unwrap(); ctx.builder.build_store(counter, tmp).unwrap();
let cmp = ctx.builder.build_int_compare(IntPredicate::SLT, tmp, length, "cmp").unwrap(); let cmp = ctx.builder.build_int_compare(IntPredicate::SLT, tmp, length, "cmp").unwrap();
@ -1105,7 +1119,14 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
) )
.into_pointer_value(); .into_pointer_value();
let val = ctx.build_gep_and_load(arr_ptr, &[tmp], Some("val")); let val = ctx.build_gep_and_load(arr_ptr, &[tmp], Some("val"));
generator.gen_assign(ctx, target, val.into())?; generator.gen_assign(ctx, target, val.into(), elt.custom.unwrap())?;
}
_ => {
panic!(
"unsupported list comprehension iterator type: {}",
ctx.unifier.stringify(iter_ty)
);
}
} }
// Emits the content of `cont_bb` // Emits the content of `cont_bb`
@ -1143,7 +1164,8 @@ pub fn gen_comprehension<'ctx, G: CodeGenerator>(
return Ok(None); return Ok(None);
}; };
let i = ctx.builder.build_load(index, "i").map(BasicValueEnum::into_int_value).unwrap(); let i = ctx.builder.build_load(index, "i").map(BasicValueEnum::into_int_value).unwrap();
let elem_ptr = unsafe { ctx.builder.build_gep(list_content, &[i], "elem_ptr") }.unwrap(); let elem_ptr =
unsafe { list.data().ptr_offset_unchecked(ctx, generator, &i, Some("elem_ptr")) };
let val = elem.to_basic_value_enum(ctx, generator, elt.custom.unwrap())?; let val = elem.to_basic_value_enum(ctx, generator, elt.custom.unwrap())?;
ctx.builder.build_store(elem_ptr, val).unwrap(); ctx.builder.build_store(elem_ptr, val).unwrap();
ctx.builder ctx.builder
@ -1226,6 +1248,7 @@ pub fn gen_binop_expr_with_values<'ctx, G: CodeGenerator>(
debug_assert!(ctx.unifier.unioned(elem_ty1, elem_ty2)); debug_assert!(ctx.unifier.unioned(elem_ty1, elem_ty2));
let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty1); let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty1);
let sizeof_elem = llvm_elem_ty.size_of().unwrap();
let lhs = ListValue::from_ptr_val(left_val.into_pointer_value(), llvm_usize, None); let lhs = ListValue::from_ptr_val(left_val.into_pointer_value(), llvm_usize, None);
let rhs = ListValue::from_ptr_val(right_val.into_pointer_value(), llvm_usize, None); let rhs = ListValue::from_ptr_val(right_val.into_pointer_value(), llvm_usize, None);
@ -1237,14 +1260,25 @@ pub fn gen_binop_expr_with_values<'ctx, G: CodeGenerator>(
let new_list = allocate_list(generator, ctx, Some(llvm_elem_ty), size, None); let new_list = allocate_list(generator, ctx, Some(llvm_elem_ty), size, None);
let lhs_len = ctx let lhs_size = ctx
.builder .builder
.build_int_mul(lhs.load_size(ctx, None), llvm_elem_ty.size_of().unwrap(), "") .build_int_z_extend_or_bit_cast(
lhs.load_size(ctx, None),
sizeof_elem.get_type(),
"",
)
.unwrap(); .unwrap();
let rhs_len = ctx let lhs_len = ctx.builder.build_int_mul(lhs_size, sizeof_elem, "").unwrap();
let rhs_size = ctx
.builder .builder
.build_int_mul(rhs.load_size(ctx, None), llvm_elem_ty.size_of().unwrap(), "") .build_int_z_extend_or_bit_cast(
rhs.load_size(ctx, None),
sizeof_elem.get_type(),
"",
)
.unwrap(); .unwrap();
let rhs_len = ctx.builder.build_int_mul(rhs_size, sizeof_elem, "").unwrap();
let list_ptr = new_list.data().base_ptr(ctx, generator); let list_ptr = new_list.data().base_ptr(ctx, generator);
call_memcpy_generic( call_memcpy_generic(
@ -1309,6 +1343,7 @@ pub fn gen_binop_expr_with_values<'ctx, G: CodeGenerator>(
let int_val = call_int_smax(ctx, int_val, llvm_usize.const_zero(), None); let int_val = call_int_smax(ctx, int_val, llvm_usize.const_zero(), None);
let elem_llvm_ty = ctx.get_llvm_type(generator, elem_ty); let elem_llvm_ty = ctx.get_llvm_type(generator, elem_ty);
let sizeof_elem = elem_llvm_ty.size_of().unwrap();
let new_list = allocate_list( let new_list = allocate_list(
generator, generator,
@ -1321,6 +1356,7 @@ pub fn gen_binop_expr_with_values<'ctx, G: CodeGenerator>(
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(int_val, false), (int_val, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {
@ -1332,15 +1368,18 @@ pub fn gen_binop_expr_with_values<'ctx, G: CodeGenerator>(
new_list.data().ptr_offset_unchecked(ctx, generator, &offset, None) new_list.data().ptr_offset_unchecked(ctx, generator, &offset, None)
}; };
let memcpy_sz = ctx let list_size = ctx
.builder .builder
.build_int_mul( .build_int_z_extend_or_bit_cast(
list_val.load_size(ctx, None), list_val.load_size(ctx, None),
elem_llvm_ty.size_of().unwrap(), sizeof_elem.get_type(),
"", "",
) )
.unwrap(); .unwrap();
let memcpy_sz =
ctx.builder.build_int_mul(list_size, sizeof_elem, "").unwrap();
call_memcpy_generic( call_memcpy_generic(
ctx, ctx,
ptr, ptr,
@ -1928,6 +1967,7 @@ pub fn gen_cmpop_expr_with_values<'ctx, G: CodeGenerator>(
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(left_val.load_size(ctx, None), false), (left_val.load_size(ctx, None), false),
|generator, ctx, hooks, i| { |generator, ctx, hooks, i| {
@ -2088,326 +2128,6 @@ pub fn gen_cmpop_expr<'ctx, G: CodeGenerator>(
) )
} }
/// Generates code for a subscript expression on an `ndarray`.
///
/// * `ty` - The `Type` of the `NDArray` elements.
/// * `ndims` - The `Type` of the `NDArray` number-of-dimensions `Literal`.
/// * `v` - The `NDArray` value.
/// * `slice` - The slice expression used to subscript into the `ndarray`.
fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ty: Type,
ndims: Type,
v: NDArrayValue<'ctx>,
slice: &Expr<Option<Type>>,
) -> Result<Option<ValueEnum<'ctx>>, String> {
let llvm_i1 = ctx.ctx.bool_type();
let llvm_i32 = ctx.ctx.i32_type();
let llvm_usize = generator.get_size_type(ctx.ctx);
let TypeEnum::TLiteral { values, .. } = &*ctx.unifier.get_ty_immutable(ndims) else {
unreachable!()
};
let ndims = values
.iter()
.map(|ndim| u64::try_from(ndim.clone()).map_err(|()| ndim.clone()))
.collect::<Result<Vec<_>, _>>()
.map_err(|val| {
format!(
"Expected non-negative literal for ndarray.ndims, got {}",
i128::try_from(val).unwrap()
)
})?;
assert!(!ndims.is_empty());
// The number of dimensions subscripted by the index expression.
// Slicing a ndarray will yield the same number of dimensions, whereas indexing into a
// dimension will remove a dimension.
let subscripted_dims = match &slice.node {
ExprKind::Tuple { elts, .. } => elts.iter().fold(0, |acc, value_subexpr| {
if let ExprKind::Slice { .. } = &value_subexpr.node {
acc
} else {
acc + 1
}
}),
ExprKind::Slice { .. } => 0,
_ => 1,
};
let ndarray_ndims_ty = ctx.unifier.get_fresh_literal(
ndims.iter().map(|v| SymbolValue::U64(v - subscripted_dims)).collect(),
None,
);
let ndarray_ty =
make_ndarray_ty(&mut ctx.unifier, &ctx.primitives, Some(ty), Some(ndarray_ndims_ty));
let llvm_pndarray_t = ctx.get_llvm_type(generator, ndarray_ty).into_pointer_type();
let llvm_ndarray_t = llvm_pndarray_t.get_element_type().into_struct_type();
let llvm_ndarray_data_t = ctx.get_llvm_type(generator, ty).as_basic_type_enum();
// Check that len is non-zero
let len = v.load_ndims(ctx);
ctx.make_assert(
generator,
ctx.builder.build_int_compare(IntPredicate::SGT, len, llvm_usize.const_zero(), "").unwrap(),
"0:IndexError",
"too many indices for array: array is {0}-dimensional but 1 were indexed",
[Some(len), None, None],
slice.location,
);
// Normalizes a possibly-negative index to its corresponding positive index
let normalize_index = |generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
index: IntValue<'ctx>,
dim: u64| {
gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(IntPredicate::SGE, index, index.get_type().const_zero(), "")
.unwrap())
},
|_, _| Ok(Some(index)),
|generator, ctx| {
let llvm_i32 = ctx.ctx.i32_type();
let len = unsafe {
v.dim_sizes().get_typed_unchecked(
ctx,
generator,
&llvm_usize.const_int(dim, true),
None,
)
};
let index = ctx
.builder
.build_int_add(
len,
ctx.builder.build_int_s_extend(index, llvm_usize, "").unwrap(),
"",
)
.unwrap();
Ok(Some(ctx.builder.build_int_truncate(index, llvm_i32, "").unwrap()))
},
)
.map(|v| v.map(BasicValueEnum::into_int_value))
};
// Converts a slice expression into a slice-range tuple
let expr_to_slice = |generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
node: &ExprKind<Option<Type>>,
dim: u64| {
match node {
ExprKind::Constant { value: Constant::Int(v), .. } => {
let Some(index) =
normalize_index(generator, ctx, llvm_i32.const_int(*v as u64, true), dim)?
else {
return Ok(None);
};
Ok(Some((index, index, llvm_i32.const_int(1, true))))
}
ExprKind::Slice { lower, upper, step } => {
let dim_sz = unsafe {
v.dim_sizes().get_typed_unchecked(
ctx,
generator,
&llvm_usize.const_int(dim, false),
None,
)
};
handle_slice_indices(lower, upper, step, ctx, generator, dim_sz)
}
_ => {
let Some(index) = generator.gen_expr(ctx, slice)? else { return Ok(None) };
let index = index
.to_basic_value_enum(ctx, generator, slice.custom.unwrap())?
.into_int_value();
let Some(index) = normalize_index(generator, ctx, index, dim)? else {
return Ok(None);
};
Ok(Some((index, index, llvm_i32.const_int(1, true))))
}
}
};
let make_indices_arr = |generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>|
-> Result<_, String> {
Ok(if let ExprKind::Tuple { elts, .. } = &slice.node {
let llvm_int_ty = ctx.get_llvm_type(generator, elts[0].custom.unwrap());
let index_addr = generator.gen_array_var_alloc(
ctx,
llvm_int_ty,
llvm_usize.const_int(elts.len() as u64, false),
None,
)?;
for (i, elt) in elts.iter().enumerate() {
let Some(index) = generator.gen_expr(ctx, elt)? else {
return Ok(None);
};
let index = index
.to_basic_value_enum(ctx, generator, elt.custom.unwrap())?
.into_int_value();
let Some(index) = normalize_index(generator, ctx, index, 0)? else {
return Ok(None);
};
let store_ptr = unsafe {
index_addr.ptr_offset_unchecked(
ctx,
generator,
&llvm_usize.const_int(i as u64, false),
None,
)
};
ctx.builder.build_store(store_ptr, index).unwrap();
}
Some(index_addr)
} else if let Some(index) = generator.gen_expr(ctx, slice)? {
let llvm_int_ty = ctx.get_llvm_type(generator, slice.custom.unwrap());
let index_addr = generator.gen_array_var_alloc(
ctx,
llvm_int_ty,
llvm_usize.const_int(1u64, false),
None,
)?;
let index =
index.to_basic_value_enum(ctx, generator, slice.custom.unwrap())?.into_int_value();
let Some(index) = normalize_index(generator, ctx, index, 0)? else { return Ok(None) };
let store_ptr = unsafe {
index_addr.ptr_offset_unchecked(ctx, generator, &llvm_usize.const_zero(), None)
};
ctx.builder.build_store(store_ptr, index).unwrap();
Some(index_addr)
} else {
None
})
};
Ok(Some(if ndims.len() == 1 && ndims[0] - subscripted_dims == 0 {
let Some(index_addr) = make_indices_arr(generator, ctx)? else { return Ok(None) };
v.data().get(ctx, generator, &index_addr, None).into()
} else {
match &slice.node {
ExprKind::Tuple { elts, .. } => {
let slices = elts
.iter()
.enumerate()
.map(|(dim, elt)| expr_to_slice(generator, ctx, &elt.node, dim as u64))
.take_while_inclusive(|slice| slice.as_ref().is_ok_and(Option::is_some))
.collect::<Result<Vec<_>, _>>()?;
if slices.len() < elts.len() {
return Ok(None);
}
let slices = slices.into_iter().map(Option::unwrap).collect_vec();
numpy::ndarray_sliced_copy(generator, ctx, ty, v, &slices)?.as_base_value().into()
}
ExprKind::Slice { .. } => {
let Some(slice) = expr_to_slice(generator, ctx, &slice.node, 0)? else {
return Ok(None);
};
numpy::ndarray_sliced_copy(generator, ctx, ty, v, &[slice])?.as_base_value().into()
}
_ => {
// Accessing an element from a multi-dimensional `ndarray`
let Some(index_addr) = make_indices_arr(generator, ctx)? else { return Ok(None) };
// Create a new array, remove the top dimension from the dimension-size-list, and copy the
// elements over
let subscripted_ndarray =
generator.gen_var_alloc(ctx, llvm_ndarray_t.into(), None)?;
let ndarray = NDArrayValue::from_ptr_val(subscripted_ndarray, llvm_usize, None);
let num_dims = v.load_ndims(ctx);
ndarray.store_ndims(
ctx,
generator,
ctx.builder
.build_int_sub(num_dims, llvm_usize.const_int(1, false), "")
.unwrap(),
);
let ndarray_num_dims = ndarray.load_ndims(ctx);
ndarray.create_dim_sizes(ctx, llvm_usize, ndarray_num_dims);
let ndarray_num_dims = ndarray.load_ndims(ctx);
let v_dims_src_ptr = unsafe {
v.dim_sizes().ptr_offset_unchecked(
ctx,
generator,
&llvm_usize.const_int(1, false),
None,
)
};
call_memcpy_generic(
ctx,
ndarray.dim_sizes().base_ptr(ctx, generator),
v_dims_src_ptr,
ctx.builder
.build_int_mul(ndarray_num_dims, llvm_usize.size_of(), "")
.map(Into::into)
.unwrap(),
llvm_i1.const_zero(),
);
let ndarray_num_elems = call_ndarray_calc_size(
generator,
ctx,
&ndarray.dim_sizes().as_slice_value(ctx, generator),
(None, None),
);
ndarray.create_data(ctx, llvm_ndarray_data_t, ndarray_num_elems);
let v_data_src_ptr = v.data().ptr_offset(ctx, generator, &index_addr, None);
call_memcpy_generic(
ctx,
ndarray.data().base_ptr(ctx, generator),
v_data_src_ptr,
ctx.builder
.build_int_mul(
ndarray_num_elems,
llvm_ndarray_data_t.size_of().unwrap(),
"",
)
.map(Into::into)
.unwrap(),
llvm_i1.const_zero(),
);
ndarray.as_base_value().into()
}
}
}))
}
/// See [`CodeGenerator::gen_expr`]. /// See [`CodeGenerator::gen_expr`].
pub fn gen_expr<'ctx, G: CodeGenerator>( pub fn gen_expr<'ctx, G: CodeGenerator>(
generator: &mut G, generator: &mut G,
@ -2457,7 +2177,29 @@ pub fn gen_expr<'ctx, G: CodeGenerator>(
Some((_, Some(static_value), _)) => ValueEnum::Static(static_value.clone()), Some((_, Some(static_value), _)) => ValueEnum::Static(static_value.clone()),
None => { None => {
let resolver = ctx.resolver.clone(); let resolver = ctx.resolver.clone();
resolver.get_symbol_value(*id, ctx).unwrap() if let Some(res) = resolver.get_symbol_value(*id, ctx) {
res
} else {
// Allow "raise Exception" short form
let def_id = resolver.get_identifier_def(*id).map_err(|e| {
format!("{} (at {})", e.iter().next().unwrap(), expr.location)
})?;
let def = ctx.top_level.definitions.read();
if let TopLevelDef::Class { constructor, .. } = *def[def_id.0].read() {
let TypeEnum::TFunc(signature) =
ctx.unifier.get_ty(constructor.unwrap()).as_ref().clone()
else {
return Err(format!(
"Failed to resolve symbol {} (at {})",
id, expr.location
));
};
return Ok(generator
.gen_call(ctx, None, (&signature, def_id), Vec::default())?
.map(Into::into));
}
return Err(format!("Failed to resolve symbol {} (at {})", id, expr.location));
}
} }
}, },
ExprKind::List { elts, .. } => { ExprKind::List { elts, .. } => {
@ -3025,18 +2767,20 @@ pub fn gen_expr<'ctx, G: CodeGenerator>(
v.data().get(ctx, generator, &index, None).into() v.data().get(ctx, generator, &index, None).into()
} }
} }
TypeEnum::TObj { obj_id, params, .. } if *obj_id == PrimDef::NDArray.id() => { TypeEnum::TObj { obj_id, .. } if *obj_id == PrimDef::NDArray.id() => {
let (ty, ndims) = params.iter().map(|(_, ty)| ty).collect_tuple().unwrap(); let Some(ndarray) = generator.gen_expr(ctx, value)? else {
let v = if let Some(v) = generator.gen_expr(ctx, value)? {
v.to_basic_value_enum(ctx, generator, value.custom.unwrap())?
.into_pointer_value()
} else {
return Ok(None); return Ok(None);
}; };
let v = NDArrayValue::from_ptr_val(v, usize, None);
return gen_ndarray_subscript_expr(generator, ctx, *ty, *ndims, v, slice); let ndarray_ty = value.custom.unwrap();
let ndarray = ndarray.to_basic_value_enum(ctx, generator, ndarray_ty)?;
let ndarray =
NDArrayObject::from_value_and_type(generator, ctx, ndarray, ndarray_ty);
let indexes = gen_ndarray_subscript_ndindexes(generator, ctx, slice)?;
let result = ndarray.index_or_scalar(generator, ctx, &indexes, "index_result");
let result = result.to_basic_value_enum();
return Ok(Some(ValueEnum::Dynamic(result)));
} }
TypeEnum::TTuple { .. } => { TypeEnum::TTuple { .. } => {
let index: u32 = let index: u32 =

View File

@ -130,3 +130,62 @@ pub fn call_ldexp<'ctx>(
.map(Either::unwrap_left) .map(Either::unwrap_left)
.unwrap() .unwrap()
} }
/// Macro to generate `np_linalg` and `sp_linalg` functions
/// The function takes as input `NDArray` and returns ()
///
/// Arguments:
/// * `$fn_name:ident`: The identifier of the rust function to be generated
/// * `$extern_fn:literal`: Name of underlying extern function
/// * (2/3/4): Number of `NDArray` that function takes as input
///
/// Note:
/// The operands and resulting `NDArray` are both passed as input to the funcion
/// It is the responsibility of caller to ensure that output `NDArray` is properly allocated on stack
/// The function changes the content of the output `NDArray` in-place
macro_rules! generate_linalg_extern_fn {
($fn_name:ident, $extern_fn:literal, 2) => {
generate_linalg_extern_fn!($fn_name, $extern_fn, mat1, mat2);
};
($fn_name:ident, $extern_fn:literal, 3) => {
generate_linalg_extern_fn!($fn_name, $extern_fn, mat1, mat2, mat3);
};
($fn_name:ident, $extern_fn:literal, 4) => {
generate_linalg_extern_fn!($fn_name, $extern_fn, mat1, mat2, mat3, mat4);
};
($fn_name:ident, $extern_fn:literal $(,$input_matrix:ident)*) => {
#[doc = concat!("Invokes the linalg `", stringify!($extern_fn), " function." )]
pub fn $fn_name<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>
$(,$input_matrix: BasicValueEnum<'ctx>)*,
name: Option<&str>,
){
const FN_NAME: &str = $extern_fn;
let extern_fn = ctx.module.get_function(FN_NAME).unwrap_or_else(|| {
let fn_type = ctx.ctx.void_type().fn_type(&[$($input_matrix.get_type().into()),*], false);
let func = ctx.module.add_function(FN_NAME, fn_type, None);
for attr in ["mustprogress", "nofree", "nounwind", "willreturn", "writeonly"] {
func.add_attribute(
AttributeLoc::Function,
ctx.ctx.create_enum_attribute(Attribute::get_named_enum_kind_id(attr), 0),
);
}
func
});
ctx.builder.build_call(extern_fn, &[$($input_matrix.into(),)*], name.unwrap_or_default()).unwrap();
}
};
}
generate_linalg_extern_fn!(call_np_linalg_cholesky, "np_linalg_cholesky", 2);
generate_linalg_extern_fn!(call_np_linalg_qr, "np_linalg_qr", 3);
generate_linalg_extern_fn!(call_np_linalg_svd, "np_linalg_svd", 4);
generate_linalg_extern_fn!(call_np_linalg_inv, "np_linalg_inv", 2);
generate_linalg_extern_fn!(call_np_linalg_pinv, "np_linalg_pinv", 2);
generate_linalg_extern_fn!(call_np_linalg_matrix_power, "np_linalg_matrix_power", 3);
generate_linalg_extern_fn!(call_np_linalg_det, "np_linalg_det", 2);
generate_linalg_extern_fn!(call_sp_linalg_lu, "sp_linalg_lu", 3);
generate_linalg_extern_fn!(call_sp_linalg_schur, "sp_linalg_schur", 3);
generate_linalg_extern_fn!(call_sp_linalg_hessenberg, "sp_linalg_hessenberg", 3);

View File

@ -123,11 +123,45 @@ pub trait CodeGenerator {
ctx: &mut CodeGenContext<'ctx, '_>, ctx: &mut CodeGenContext<'ctx, '_>,
target: &Expr<Option<Type>>, target: &Expr<Option<Type>>,
value: ValueEnum<'ctx>, value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String> ) -> Result<(), String>
where where
Self: Sized, Self: Sized,
{ {
gen_assign(self, ctx, target, value) gen_assign(self, ctx, target, value, value_ty)
}
/// Generate code for an assignment expression where LHS is a `"target_list"`.
///
/// See <https://docs.python.org/3/reference/simple_stmts.html#assignment-statements>.
fn gen_assign_target_list<'ctx>(
&mut self,
ctx: &mut CodeGenContext<'ctx, '_>,
targets: &Vec<Expr<Option<Type>>>,
value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String>
where
Self: Sized,
{
gen_assign_target_list(self, ctx, targets, value, value_ty)
}
/// Generate code for an item assignment.
///
/// i.e., `target[key] = value`
fn gen_setitem<'ctx>(
&mut self,
ctx: &mut CodeGenContext<'ctx, '_>,
target: &Expr<Option<Type>>,
key: &Expr<Option<Type>>,
value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String>
where
Self: Sized,
{
gen_setitem(self, ctx, target, key, value, value_ty)
} }
/// Generate code for a while expression. /// Generate code for a while expression.

View File

@ -1,5 +1,13 @@
use crate::symbol_resolver::SymbolResolver;
use crate::typecheck::typedef::Type; use crate::typecheck::typedef::Type;
mod test;
pub mod util;
use super::model::*;
use super::structure::ndarray::broadcast::ShapeEntry;
use super::structure::ndarray::indexing::NDIndex;
use super::structure::ndarray::NpArray;
use super::{ use super::{
classes::{ classes::{
ArrayLikeIndexer, ArrayLikeValue, ArraySliceValue, ListValue, NDArrayValue, ArrayLikeIndexer, ArrayLikeValue, ArraySliceValue, ListValue, NDArrayValue,
@ -9,6 +17,7 @@ use super::{
}; };
use crate::codegen::classes::TypedArrayLikeAccessor; use crate::codegen::classes::TypedArrayLikeAccessor;
use crate::codegen::stmt::gen_for_callback_incrementing; use crate::codegen::stmt::gen_for_callback_incrementing;
use inkwell::values::BasicValue;
use inkwell::{ use inkwell::{
attributes::{Attribute, AttributeLoc}, attributes::{Attribute, AttributeLoc},
context::Context, context::Context,
@ -20,6 +29,8 @@ use inkwell::{
}; };
use itertools::Either; use itertools::Either;
use nac3parser::ast::Expr; use nac3parser::ast::Expr;
use util::function::CallFunction;
use util::get_sizet_dependent_function_name;
#[must_use] #[must_use]
pub fn load_irrt(ctx: &Context) -> Module { pub fn load_irrt(ctx: &Context) -> Module {
@ -414,14 +425,27 @@ pub fn list_slice_assignment<'ctx, G: CodeGenerator + ?Sized>(
.unwrap(); .unwrap();
let cond_1 = ctx.builder.build_and(dest_step_eq_one, src_slt_dest, "slice_cond_1").unwrap(); let cond_1 = ctx.builder.build_and(dest_step_eq_one, src_slt_dest, "slice_cond_1").unwrap();
let cond = ctx.builder.build_or(src_eq_dest, cond_1, "slice_cond").unwrap(); let cond = ctx.builder.build_or(src_eq_dest, cond_1, "slice_cond").unwrap();
// TODO: Temporary fix. Rewrite `list_slice_assignment` later
// Exception params should have been i64
{
let param_model = IntModel(Int64);
let src_slice_len =
param_model.s_extend_or_bit_cast(generator, ctx, src_slice_len, "src_slice_len");
let dest_slice_len =
param_model.s_extend_or_bit_cast(generator, ctx, dest_slice_len, "dest_slice_len");
let dest_idx_2 = param_model.s_extend_or_bit_cast(generator, ctx, dest_idx.2, "dest_idx_2");
ctx.make_assert( ctx.make_assert(
generator, generator,
cond, cond,
"0:ValueError", "0:ValueError",
"attempt to assign sequence of size {0} to slice of size {1} with step size {2}", "attempt to assign sequence of size {0} to slice of size {1} with step size {2}",
[Some(src_slice_len), Some(dest_slice_len), Some(dest_idx.2)], [Some(src_slice_len.value), Some(dest_slice_len.value), Some(dest_idx_2.value)],
ctx.current_loc, ctx.current_loc,
); );
}
let new_len = { let new_len = {
let args = vec![ let args = vec![
@ -798,6 +822,7 @@ pub fn call_ndarray_calc_broadcast<'ctx, G: CodeGenerator + ?Sized>(
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(min_ndims, false), (min_ndims, false),
|generator, ctx, _, idx| { |generator, ctx, _, idx| {
@ -872,7 +897,7 @@ pub fn call_ndarray_calc_broadcast<'ctx, G: CodeGenerator + ?Sized>(
} }
/// Generates a call to `__nac3_ndarray_calc_broadcast_idx`. Returns an [`ArrayAllocaValue`] /// Generates a call to `__nac3_ndarray_calc_broadcast_idx`. Returns an [`ArrayAllocaValue`]
/// containing the indices used for accessing `array` corresponding to the index of the broadcasted /// containing the indices used for accessing `array` corresponding to the index of the broadcast
/// array `broadcast_idx`. /// array `broadcast_idx`.
pub fn call_ndarray_calc_broadcast_index< pub fn call_ndarray_calc_broadcast_index<
'ctx, 'ctx,
@ -927,3 +952,212 @@ pub fn call_ndarray_calc_broadcast_index<
Box::new(|_, v| v.into()), Box::new(|_, v| v.into()),
) )
} }
pub fn call_nac3_throw_dummy_error<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &CodeGenContext<'_, '_>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_throw_dummy_error");
CallFunction::begin(generator, ctx, &name).returning_void();
}
/// Initialize all global `EXN_*` exception IDs in IRRT with the [`SymbolResolver`].
pub fn setup_irrt_exceptions<'ctx>(
ctx: &'ctx Context,
module: &Module<'ctx>,
symbol_resolver: &dyn SymbolResolver,
) {
let exn_id_type = ctx.i32_type();
let errors = &[
("EXN_INDEX_ERROR", "0:IndexError"),
("EXN_VALUE_ERROR", "0:ValueError"),
("EXN_ASSERTION_ERROR", "0:AssertionError"),
("EXN_RUNTIME_ERROR", "0:RuntimeError"),
("EXN_TYPE_ERROR", "0:TypeError"),
];
for (irrt_name, symbol_name) in errors {
let exn_id = symbol_resolver.get_string_id(symbol_name);
let exn_id = exn_id_type.const_int(exn_id as u64, false).as_basic_value_enum();
let global = module.get_global(irrt_name).unwrap_or_else(|| {
panic!("Exception symbol name '{irrt_name}' should exist in the IRRT LLVM module")
});
global.set_initializer(&exn_id);
}
}
pub fn call_nac3_ndarray_util_assert_shape_no_negative<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ndims: Int<'ctx, SizeT>,
shape: Ptr<'ctx, IntModel<SizeT>>,
) {
let name = get_sizet_dependent_function_name(
generator,
ctx,
"__nac3_ndarray_util_assert_shape_no_negative",
);
CallFunction::begin(generator, ctx, &name)
.arg("ndims", ndims)
.arg("shape", shape)
.returning_void();
}
pub fn call_nac3_ndarray_size<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
pndarray: Ptr<'ctx, StructModel<NpArray>>,
) -> Int<'ctx, SizeT> {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_size");
CallFunction::begin(generator, ctx, &name).arg("ndarray", pndarray).returning_auto("size")
}
pub fn call_nac3_ndarray_nbytes<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
pndarray: Ptr<'ctx, StructModel<NpArray>>,
) -> Int<'ctx, SizeT> {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_nbytes");
CallFunction::begin(generator, ctx, &name).arg("ndarray", pndarray).returning_auto("nbytes")
}
pub fn call_nac3_ndarray_len<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
pndarray: Ptr<'ctx, StructModel<NpArray>>,
) -> Int<'ctx, SizeT> {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_len");
CallFunction::begin(generator, ctx, &name).arg("ndarray", pndarray).returning_auto("len")
}
pub fn call_nac3_ndarray_is_c_contiguous<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ndarray_ptr: Ptr<'ctx, StructModel<NpArray>>,
) -> Int<'ctx, Bool> {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_is_c_contiguous");
CallFunction::begin(generator, ctx, &name)
.arg("ndarray", ndarray_ptr)
.returning_auto("is_c_contiguous")
}
pub fn call_nac3_ndarray_get_nth_pelement<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
pndarray: Ptr<'ctx, StructModel<NpArray>>,
index: Int<'ctx, SizeT>,
) -> Ptr<'ctx, IntModel<Byte>> {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_get_nth_pelement");
CallFunction::begin(generator, ctx, &name)
.arg("ndarray", pndarray)
.arg("index", index)
.returning_auto("pelement")
}
pub fn call_nac3_ndarray_set_strides_by_shape<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
pdnarray: Ptr<'ctx, StructModel<NpArray>>,
) {
let name =
get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_set_strides_by_shape");
CallFunction::begin(generator, ctx, &name).arg("ndarray", pdnarray).returning_void();
}
pub fn call_nac3_ndarray_copy_data<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_ndarray: Ptr<'ctx, StructModel<NpArray>>,
dst_ndarray: Ptr<'ctx, StructModel<NpArray>>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_copy_data");
CallFunction::begin(generator, ctx, &name)
.arg("src_ndarray", src_ndarray)
.arg("dst_ndarray", dst_ndarray)
.returning_void();
}
pub fn call_nac3_ndarray_index<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
num_indexes: Int<'ctx, SizeT>,
indexes: Ptr<'ctx, StructModel<NDIndex>>,
src_ndarray: Ptr<'ctx, StructModel<NpArray>>,
dst_ndarray: Ptr<'ctx, StructModel<NpArray>>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_index");
CallFunction::begin(generator, ctx, &name)
.arg("num_indexes", num_indexes)
.arg("indexes", indexes)
.arg("src_ndarray", src_ndarray)
.arg("dst_ndarray", dst_ndarray)
.returning_void();
}
pub fn call_nac3_ndarray_broadcast_to<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_ndarray: Ptr<'ctx, StructModel<NpArray>>,
dst_ndarray: Ptr<'ctx, StructModel<NpArray>>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_broadcast_to");
CallFunction::begin(generator, ctx, &name)
.arg("src_ndarray", src_ndarray)
.arg("dst_ndarray", dst_ndarray)
.returning_void();
}
pub fn call_nac3_ndarray_broadcast_shapes<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
num_shape_entries: Int<'ctx, SizeT>,
shape_entries: Ptr<'ctx, StructModel<ShapeEntry>>,
dst_ndims: Int<'ctx, SizeT>,
dst_shape: Ptr<'ctx, IntModel<SizeT>>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_broadcast_shapes");
CallFunction::begin(generator, ctx, &name)
.arg("num_shapes", num_shape_entries)
.arg("shapes", shape_entries)
.arg("dst_ndims", dst_ndims)
.arg("dst_shape", dst_shape)
.returning_void();
}
pub fn call_nac3_ndarray_resolve_and_check_new_shape<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
size: Int<'ctx, SizeT>,
new_ndims: Int<'ctx, SizeT>,
new_shape: Ptr<'ctx, IntModel<SizeT>>,
) {
let name = get_sizet_dependent_function_name(
generator,
ctx,
"__nac3_ndarray_resolve_and_check_new_shape",
);
CallFunction::begin(generator, ctx, &name)
.arg("size", size)
.arg("new_ndims", new_ndims)
.arg("new_shape", new_shape)
.returning_void();
}
pub fn call_nac3_ndarray_transpose<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_ndarray: Ptr<'ctx, StructModel<NpArray>>,
dst_ndarray: Ptr<'ctx, StructModel<NpArray>>,
num_axes: Int<'ctx, SizeT>,
axes: Ptr<'ctx, IntModel<SizeT>>,
) {
let name = get_sizet_dependent_function_name(generator, ctx, "__nac3_ndarray_transpose");
CallFunction::begin(generator, ctx, &name)
.arg("src_ndarray", src_ndarray)
.arg("dst_ndarray", dst_ndarray)
.arg("num_axes", num_axes)
.arg("axes", axes)
.returning_void();
}

View File

@ -0,0 +1,26 @@
#[cfg(test)]
mod tests {
use std::{path::Path, process::Command};
#[test]
fn run_irrt_test() {
assert!(
cfg!(feature = "test"),
"Please do `cargo test -F test` to compile `irrt_test.out` and run test"
);
let irrt_test_out_path = Path::new(concat!(env!("OUT_DIR"), "/irrt_test.out"));
let output = Command::new(irrt_test_out_path.to_str().unwrap()).output().unwrap();
if !output.status.success() {
eprintln!("irrt_test failed with status {}:", output.status);
eprintln!("====== stdout ======");
eprintln!("{}", String::from_utf8(output.stdout).unwrap());
eprintln!("====== stderr ======");
eprintln!("{}", String::from_utf8(output.stderr).unwrap());
eprintln!("====================");
panic!("irrt_test failed");
}
}
}

View File

@ -0,0 +1,109 @@
use crate::codegen::{CodeGenContext, CodeGenerator};
// When [`TypeContext::size_type`] is 32-bits, the function name is "{fn_name}".
// When [`TypeContext::size_type`] is 64-bits, the function name is "{fn_name}64".
#[must_use]
pub fn get_sizet_dependent_function_name<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &CodeGenContext<'_, '_>,
name: &str,
) -> String {
let mut name = name.to_owned();
match generator.get_size_type(ctx.ctx).get_bit_width() {
32 => {}
64 => name.push_str("64"),
bit_width => {
panic!("Unsupported int type bit width {bit_width}, must be either 32-bits or 64-bits")
}
}
name
}
pub mod function {
use crate::codegen::{model::*, CodeGenContext, CodeGenerator};
use inkwell::{
types::{BasicMetadataTypeEnum, BasicType, FunctionType},
values::{AnyValue, BasicMetadataValueEnum, BasicValue, BasicValueEnum, CallSiteValue},
};
use itertools::Itertools;
#[derive(Debug, Clone, Copy)]
struct Arg<'ctx> {
ty: BasicMetadataTypeEnum<'ctx>,
val: BasicMetadataValueEnum<'ctx>,
}
/// Helper structure to reduce IRRT Inkwell function call boilerplate
pub struct CallFunction<'ctx, 'a, 'b, 'c, 'd, G: CodeGenerator + ?Sized> {
generator: &'d mut G,
ctx: &'b CodeGenContext<'ctx, 'a>,
/// Function name
name: &'c str,
/// Call arguments
args: Vec<Arg<'ctx>>,
}
impl<'ctx, 'a, 'b, 'c, 'd, G: CodeGenerator + ?Sized> CallFunction<'ctx, 'a, 'b, 'c, 'd, G> {
pub fn begin(
generator: &'d mut G,
ctx: &'b CodeGenContext<'ctx, 'a>,
name: &'c str,
) -> Self {
CallFunction { generator, ctx, name, args: Vec::new() }
}
/// Push a call argument to the function call.
///
/// The `_name` parameter is there for self-documentation purposes.
#[allow(clippy::needless_pass_by_value)]
#[must_use]
pub fn arg<M: Model<'ctx>>(mut self, _name: &str, arg: Instance<'ctx, M>) -> Self {
let arg = Arg {
ty: arg.model.get_type(self.generator, self.ctx.ctx).as_basic_type_enum().into(),
val: arg.value.as_basic_value_enum().into(),
};
self.args.push(arg);
self
}
/// Call the function and expect the function to return a value of type of `return_model`.
#[must_use]
pub fn returning<M: Model<'ctx>>(self, name: &str, return_model: M) -> Instance<'ctx, M> {
let ret_ty = return_model.get_type(self.generator, self.ctx.ctx);
let ret = self.get_function(|tys| ret_ty.fn_type(tys, false), name);
let ret = BasicValueEnum::try_from(ret.as_any_value_enum()).unwrap(); // Must work
let ret = return_model.check_value(self.generator, self.ctx.ctx, ret).unwrap(); // Must work
ret
}
/// Like [`CallFunction::returning_`] but `return_model` is automatically inferred.
#[must_use]
pub fn returning_auto<M: Model<'ctx> + Default>(self, name: &str) -> Instance<'ctx, M> {
self.returning(name, M::default())
}
/// Call the function and expect the function to return a void-type.
pub fn returning_void(self) {
let ret_ty = self.ctx.ctx.void_type();
let _ = self.get_function(|tys| ret_ty.fn_type(tys, false), "");
}
fn get_function<F>(&self, make_fn_type: F, return_value_name: &str) -> CallSiteValue<'ctx>
where
F: FnOnce(&[BasicMetadataTypeEnum<'ctx>]) -> FunctionType<'ctx>,
{
// Get the LLVM function, declare the function if it doesn't exist - it will be defined by other
// components of NAC3.
let func = self.ctx.module.get_function(self.name).unwrap_or_else(|| {
let tys = self.args.iter().map(|arg| arg.ty).collect_vec();
let fn_type = make_fn_type(&tys);
self.ctx.module.add_function(self.name, fn_type, None)
});
let vals = self.args.iter().map(|arg| arg.val).collect_vec();
self.ctx.builder.build_call(func, &vals, return_value_name).unwrap()
}
}
}

View File

@ -1,7 +1,7 @@
use crate::{ use crate::{
codegen::classes::{ListType, NDArrayType, ProxyType, RangeType}, codegen::classes::{ListType, ProxyType, RangeType},
symbol_resolver::{StaticValue, SymbolResolver}, symbol_resolver::{StaticValue, SymbolResolver},
toplevel::{helper::PrimDef, numpy::unpack_ndarray_var_tys, TopLevelContext, TopLevelDef}, toplevel::{helper::PrimDef, TopLevelContext, TopLevelDef},
typecheck::{ typecheck::{
type_inferencer::{CodeLocation, PrimitiveStore}, type_inferencer::{CodeLocation, PrimitiveStore},
typedef::{CallId, FuncArg, Type, TypeEnum, Unifier}, typedef::{CallId, FuncArg, Type, TypeEnum, Unifier},
@ -24,6 +24,7 @@ use inkwell::{
AddressSpace, IntPredicate, OptimizationLevel, AddressSpace, IntPredicate, OptimizationLevel,
}; };
use itertools::Itertools; use itertools::Itertools;
use model::*;
use nac3parser::ast::{Location, Stmt, StrRef}; use nac3parser::ast::{Location, Stmt, StrRef};
use parking_lot::{Condvar, Mutex}; use parking_lot::{Condvar, Mutex};
use std::collections::{HashMap, HashSet}; use std::collections::{HashMap, HashSet};
@ -32,6 +33,7 @@ use std::sync::{
Arc, Arc,
}; };
use std::thread; use std::thread;
use structure::{cslice::CSlice, exception::Exception, ndarray::NpArray};
pub mod builtin_fns; pub mod builtin_fns;
pub mod classes; pub mod classes;
@ -41,8 +43,11 @@ pub mod extern_fns;
mod generator; mod generator;
pub mod irrt; pub mod irrt;
pub mod llvm_intrinsics; pub mod llvm_intrinsics;
pub mod model;
pub mod numpy; pub mod numpy;
pub mod numpy_new;
pub mod stmt; pub mod stmt;
pub mod structure;
#[cfg(test)] #[cfg(test)]
mod test; mod test;
@ -68,6 +73,16 @@ pub struct CodeGenLLVMOptions {
pub target: CodeGenTargetMachineOptions, pub target: CodeGenTargetMachineOptions,
} }
impl CodeGenLLVMOptions {
/// Creates a [`TargetMachine`] using the target options specified by this struct.
///
/// See [`Target::create_target_machine`].
#[must_use]
pub fn create_target_machine(&self) -> Option<TargetMachine> {
self.target.create_target_machine(self.opt_level)
}
}
/// Additional options for code generation for the target machine. /// Additional options for code generation for the target machine.
#[derive(Clone, Debug, Eq, PartialEq)] #[derive(Clone, Debug, Eq, PartialEq)]
pub struct CodeGenTargetMachineOptions { pub struct CodeGenTargetMachineOptions {
@ -158,11 +173,11 @@ pub struct CodeGenContext<'ctx, 'a> {
pub registry: &'a WorkerRegistry, pub registry: &'a WorkerRegistry,
/// Cache for constant strings. /// Cache for constant strings.
pub const_strings: HashMap<String, BasicValueEnum<'ctx>>, pub const_strings: HashMap<String, Struct<'ctx, CSlice>>,
/// [`BasicBlock`] containing all `alloca` statements for the current function. /// [`BasicBlock`] containing all `alloca` statements for the current function.
pub init_bb: BasicBlock<'ctx>, pub init_bb: BasicBlock<'ctx>,
pub exception_val: Option<PointerValue<'ctx>>, pub exception_val: Option<Ptr<'ctx, StructModel<Exception>>>,
/// The header and exit basic blocks of a loop in this context. See /// The header and exit basic blocks of a loop in this context. See
/// <https://llvm.org/docs/LoopTerminology.html> for explanation of these terminology. /// <https://llvm.org/docs/LoopTerminology.html> for explanation of these terminology.
@ -338,6 +353,10 @@ impl WorkerRegistry {
let mut builder = context.create_builder(); let mut builder = context.create_builder();
let mut module = context.create_module(generator.get_name()); let mut module = context.create_module(generator.get_name());
let target_machine = self.llvm_options.create_target_machine().unwrap();
module.set_data_layout(&target_machine.get_target_data().get_data_layout());
module.set_triple(&target_machine.get_triple());
module.add_basic_value_flag( module.add_basic_value_flag(
"Debug Info Version", "Debug Info Version",
inkwell::module::FlagBehavior::Warning, inkwell::module::FlagBehavior::Warning,
@ -361,6 +380,10 @@ impl WorkerRegistry {
errors.insert(e); errors.insert(e);
// create a new empty module just to continue codegen and collect errors // create a new empty module just to continue codegen and collect errors
module = context.create_module(&format!("{}_recover", generator.get_name())); module = context.create_module(&format!("{}_recover", generator.get_name()));
let target_machine = self.llvm_options.create_target_machine().unwrap();
module.set_data_layout(&target_machine.get_target_data().get_data_layout());
module.set_triple(&target_machine.get_triple());
} }
} }
*self.task_count.lock() -= 1; *self.task_count.lock() -= 1;
@ -471,12 +494,8 @@ fn get_llvm_type<'ctx, G: CodeGenerator + ?Sized>(
} }
TObj { obj_id, .. } if *obj_id == PrimDef::NDArray.id() => { TObj { obj_id, .. } if *obj_id == PrimDef::NDArray.id() => {
let (dtype, _) = unpack_ndarray_var_tys(unifier, ty); let pndarray_model = PtrModel(StructModel(NpArray));
let element_type = get_llvm_type( pndarray_model.get_type(generator, ctx).as_basic_type_enum()
ctx, module, generator, unifier, top_level, type_cache, dtype,
);
NDArrayType::new(generator, ctx, element_type).as_base_type().into()
} }
_ => unreachable!( _ => unreachable!(
@ -646,43 +665,19 @@ pub fn gen_func_impl<
..primitives ..primitives
}; };
let mut type_cache: HashMap<_, _> = [ let cslice_model = StructModel(CSlice);
let pexn_model = PtrModel(StructModel(Exception));
let mut type_cache: HashMap<_, BasicTypeEnum<'ctx>> = [
(primitives.int32, context.i32_type().into()), (primitives.int32, context.i32_type().into()),
(primitives.int64, context.i64_type().into()), (primitives.int64, context.i64_type().into()),
(primitives.uint32, context.i32_type().into()), (primitives.uint32, context.i32_type().into()),
(primitives.uint64, context.i64_type().into()), (primitives.uint64, context.i64_type().into()),
(primitives.float, context.f64_type().into()), (primitives.float, context.f64_type().into()),
(primitives.bool, context.i8_type().into()), (primitives.bool, context.i8_type().into()),
(primitives.str, { (primitives.str, cslice_model.get_type(generator, context).into()),
let name = "str";
match module.get_struct_type(name) {
None => {
let str_type = context.opaque_struct_type("str");
let fields = [
context.i8_type().ptr_type(AddressSpace::default()).into(),
generator.get_size_type(context).into(),
];
str_type.set_body(&fields, false);
str_type.into()
}
Some(t) => t.as_basic_type_enum(),
}
}),
(primitives.range, RangeType::new(context).as_base_type().into()), (primitives.range, RangeType::new(context).as_base_type().into()),
(primitives.exception, { (primitives.exception, pexn_model.get_type(generator, context).into()),
let name = "Exception";
if let Some(t) = module.get_struct_type(name) {
t.ptr_type(AddressSpace::default()).as_basic_type_enum()
} else {
let exception = context.opaque_struct_type("Exception");
let int32 = context.i32_type().into();
let int64 = context.i64_type().into();
let str_ty = module.get_struct_type("str").unwrap().as_basic_type_enum();
let fields = [int32, str_ty, int32, int32, str_ty, str_ty, int64, int64, int64];
exception.set_body(&fields, false);
exception.ptr_type(AddressSpace::default()).as_basic_type_enum()
}
}),
] ]
.iter() .iter()
.copied() .copied()

View File

@ -0,0 +1,40 @@
use inkwell::{
context::Context,
types::{BasicType, BasicTypeEnum},
values::BasicValueEnum,
};
use crate::codegen::CodeGenerator;
use super::*;
#[derive(Debug, Clone, Copy)]
pub struct AnyModel<'ctx>(pub BasicTypeEnum<'ctx>);
pub type Anything<'ctx> = Instance<'ctx, AnyModel<'ctx>>;
impl<'ctx> Model<'ctx> for AnyModel<'ctx> {
type Value = BasicValueEnum<'ctx>;
type Type = BasicTypeEnum<'ctx>;
fn get_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
_ctx: &'ctx Context,
) -> Self::Type {
self.0
}
fn check_type<T: BasicType<'ctx>, G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
_ctx: &'ctx Context,
ty: T,
) -> Result<(), ModelError> {
let ty = ty.as_basic_type_enum();
if ty == self.0 {
Ok(())
} else {
Err(ModelError(format!("Expecting {}, but got {}", self.0, ty)))
}
}
}

View File

@ -0,0 +1,125 @@
use std::fmt;
use inkwell::{context::Context, types::*, values::*};
use super::*;
use crate::codegen::{CodeGenContext, CodeGenerator};
#[derive(Debug, Clone)]
pub struct ModelError(pub String);
impl ModelError {
pub(super) fn under_context(mut self, context: &str) -> Self {
self.0.push_str(" ... in ");
self.0.push_str(context);
self
}
}
pub trait Model<'ctx>: fmt::Debug + Clone + Copy {
type Value: BasicValue<'ctx> + TryFrom<BasicValueEnum<'ctx>>;
type Type: BasicType<'ctx>;
/// Return the [`BasicType`] of this model.
fn get_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Self::Type;
/// Check if a [`BasicType`] is the same type of this model.
fn check_type<T: BasicType<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
ty: T,
) -> Result<(), ModelError>;
/// Create an instance from a value with [`Instance::model`] being this model.
///
/// Caller must make sure the type of `value` and the type of this `model` are equivalent.
fn believe_value(&self, value: Self::Value) -> Instance<'ctx, Self> {
Instance { model: *self, value }
}
/// Check if a [`BasicValue`]'s type is equivalent to the type of this model.
/// Wrap it into an [`Instance`] if it is.
fn check_value<V: BasicValue<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
value: V,
) -> Result<Instance<'ctx, Self>, ModelError> {
let value = value.as_basic_value_enum();
self.check_type(generator, ctx, value.get_type())
.map_err(|err| err.under_context(format!("the value {value:?}").as_str()))?;
let Ok(value) = Self::Value::try_from(value) else {
unreachable!("check_type() has bad implementation")
};
Ok(self.believe_value(value))
}
// Allocate a value on the stack and return its pointer.
fn alloca<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
name: &str,
) -> Ptr<'ctx, Self> {
let pmodel = PtrModel(*self);
let p = ctx.builder.build_alloca(self.get_type(generator, ctx.ctx), name).unwrap();
pmodel.believe_value(p)
}
// Allocate an array on the stack and return its pointer.
fn array_alloca<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
len: IntValue<'ctx>,
name: &str,
) -> Ptr<'ctx, Self> {
let pmodel = PtrModel(*self);
let p =
ctx.builder.build_array_alloca(self.get_type(generator, ctx.ctx), len, name).unwrap();
pmodel.believe_value(p)
}
fn var_alloca<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
name: Option<&str>,
) -> Result<Ptr<'ctx, Self>, String> {
let pmodel = PtrModel(*self);
let ty = self.get_type(generator, ctx.ctx).as_basic_type_enum();
let p = generator.gen_var_alloc(ctx, ty, name)?;
Ok(pmodel.believe_value(p))
}
fn array_var_alloca<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
len: IntValue<'ctx>,
name: Option<&'ctx str>,
) -> Result<Ptr<'ctx, Self>, String> {
// TODO: Remove ArraySliceValue
let pmodel = PtrModel(*self);
let ty = self.get_type(generator, ctx.ctx).as_basic_type_enum();
let p = generator.gen_array_var_alloc(ctx, ty, len, name)?;
Ok(pmodel.believe_value(PointerValue::from(p)))
}
}
#[derive(Debug, Clone, Copy)]
pub struct Instance<'ctx, M: Model<'ctx>> {
/// The model of this instance.
pub model: M,
/// The value of this instance.
///
/// Caller must make sure the type of `value` and the type of this `model` are equivalent,
/// down to having the same [`IntType::get_bit_width`] in case of [`IntType`] for example.
pub value: M::Value,
}

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use std::fmt;
use inkwell::{context::Context, types::IntType, values::IntValue, IntPredicate};
use crate::codegen::{CodeGenContext, CodeGenerator};
use super::*;
pub trait IntKind<'ctx>: fmt::Debug + Clone + Copy {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx>;
}
#[derive(Debug, Clone, Copy, Default)]
pub struct Bool;
#[derive(Debug, Clone, Copy, Default)]
pub struct Byte;
#[derive(Debug, Clone, Copy, Default)]
pub struct Int32;
#[derive(Debug, Clone, Copy, Default)]
pub struct Int64;
#[derive(Debug, Clone, Copy, Default)]
pub struct SizeT;
impl<'ctx> IntKind<'ctx> for Bool {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx> {
ctx.bool_type()
}
}
impl<'ctx> IntKind<'ctx> for Byte {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx> {
ctx.i8_type()
}
}
impl<'ctx> IntKind<'ctx> for Int32 {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx> {
ctx.i32_type()
}
}
impl<'ctx> IntKind<'ctx> for Int64 {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx> {
ctx.i64_type()
}
}
impl<'ctx> IntKind<'ctx> for SizeT {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> IntType<'ctx> {
generator.get_size_type(ctx)
}
}
#[derive(Debug, Clone, Copy)]
pub struct AnyInt<'ctx>(pub IntType<'ctx>);
impl<'ctx> IntKind<'ctx> for AnyInt<'ctx> {
fn get_int_type<G: CodeGenerator + ?Sized>(
&self,
_generator: &mut G,
_ctx: &'ctx Context,
) -> IntType<'ctx> {
self.0
}
}
#[derive(Debug, Clone, Copy, Default)]
pub struct IntModel<N>(pub N);
pub type Int<'ctx, N> = Instance<'ctx, IntModel<N>>;
impl<'ctx, N: IntKind<'ctx>> Model<'ctx> for IntModel<N> {
type Value = IntValue<'ctx>;
type Type = IntType<'ctx>;
#[must_use]
fn get_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Self::Type {
self.0.get_int_type(generator, ctx)
}
fn check_type<T: inkwell::types::BasicType<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
ty: T,
) -> Result<(), ModelError> {
let ty = ty.as_basic_type_enum();
let Ok(ty) = IntType::try_from(ty) else {
return Err(ModelError(format!("Expecting IntType, but got {ty:?}")));
};
let exp_ty = self.0.get_int_type(generator, ctx);
if ty.get_bit_width() != exp_ty.get_bit_width() {
return Err(ModelError(format!(
"Expecting IntType to have {} bit(s), but got {} bit(s)",
exp_ty.get_bit_width(),
ty.get_bit_width()
)));
}
Ok(())
}
}
impl<'ctx, N: IntKind<'ctx>> IntModel<N> {
pub fn constant<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
value: u64,
) -> Int<'ctx, N> {
let value = self.get_type(generator, ctx).const_int(value, false);
self.believe_value(value)
}
pub fn const_0<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Int<'ctx, N> {
self.constant(generator, ctx, 0)
}
pub fn const_1<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Int<'ctx, N> {
self.constant(generator, ctx, 1)
}
pub fn s_extend_or_bit_cast<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
value: IntValue<'ctx>,
name: &str,
) -> Int<'ctx, N> {
let value = ctx
.builder
.build_int_s_extend_or_bit_cast(value, self.get_type(generator, ctx.ctx), name)
.unwrap();
self.believe_value(value)
}
pub fn truncate<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
value: IntValue<'ctx>,
name: &str,
) -> Int<'ctx, N> {
let value =
ctx.builder.build_int_truncate(value, self.get_type(generator, ctx.ctx), name).unwrap();
self.believe_value(value)
}
}
impl IntModel<Bool> {
#[must_use]
pub fn const_false<'ctx, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Int<'ctx, Bool> {
self.constant(generator, ctx, 0)
}
#[must_use]
pub fn const_true<'ctx, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Int<'ctx, Bool> {
self.constant(generator, ctx, 1)
}
}
impl<'ctx, N: IntKind<'ctx>> Int<'ctx, N> {
pub fn s_extend_or_bit_cast<NewN: IntKind<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
to_int_kind: NewN,
name: &str,
) -> Int<'ctx, NewN> {
IntModel(to_int_kind).s_extend_or_bit_cast(generator, ctx, self.value, name)
}
pub fn truncate<NewN: IntKind<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
to_int_kind: NewN,
name: &str,
) -> Int<'ctx, NewN> {
IntModel(to_int_kind).truncate(generator, ctx, self.value, name)
}
#[must_use]
pub fn add(
&self,
ctx: &CodeGenContext<'ctx, '_>,
other: Int<'ctx, N>,
name: &str,
) -> Int<'ctx, N> {
let value = ctx.builder.build_int_add(self.value, other.value, name).unwrap();
self.model.believe_value(value)
}
#[must_use]
pub fn sub(
&self,
ctx: &CodeGenContext<'ctx, '_>,
other: Int<'ctx, N>,
name: &str,
) -> Int<'ctx, N> {
let value = ctx.builder.build_int_sub(self.value, other.value, name).unwrap();
self.model.believe_value(value)
}
#[must_use]
pub fn mul(
&self,
ctx: &CodeGenContext<'ctx, '_>,
other: Int<'ctx, N>,
name: &str,
) -> Int<'ctx, N> {
let value = ctx.builder.build_int_mul(self.value, other.value, name).unwrap();
self.model.believe_value(value)
}
pub fn compare(
&self,
ctx: &CodeGenContext<'ctx, '_>,
op: IntPredicate,
other: Int<'ctx, N>,
name: &str,
) -> Int<'ctx, Bool> {
let bool_model = IntModel(Bool);
let value = ctx.builder.build_int_compare(op, self.value, other.value, name).unwrap();
bool_model.believe_value(value)
}
}

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mod any;
mod core;
mod int;
mod ptr;
mod structure;
pub mod util;
pub use any::*;
pub use core::*;
pub use int::*;
pub use ptr::*;
pub use structure::*;

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use inkwell::{
context::Context,
types::{BasicType, BasicTypeEnum, PointerType},
values::{IntValue, PointerValue},
AddressSpace,
};
use crate::codegen::{CodeGenContext, CodeGenerator};
use super::*;
#[derive(Debug, Clone, Copy, Default)]
pub struct PtrModel<Element>(pub Element);
pub type Ptr<'ctx, Element> = Instance<'ctx, PtrModel<Element>>;
impl<'ctx, Element: Model<'ctx>> Model<'ctx> for PtrModel<Element> {
type Value = PointerValue<'ctx>;
type Type = PointerType<'ctx>;
fn get_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Self::Type {
self.0.get_type(generator, ctx).ptr_type(AddressSpace::default())
}
fn check_type<T: BasicType<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
ty: T,
) -> Result<(), ModelError> {
let ty = ty.as_basic_type_enum();
let Ok(ty) = PointerType::try_from(ty) else {
return Err(ModelError(format!("Expecting PointerType, but got {ty:?}")));
};
let elem_ty = ty.get_element_type();
let Ok(elem_ty) = BasicTypeEnum::try_from(elem_ty) else {
return Err(ModelError(format!(
"Expecting pointer element type to be a BasicTypeEnum, but got {elem_ty:?}"
)));
};
// TODO: inkwell `get_element_type()` will be deprecated.
// Remove the check for `get_element_type()` when the time comes.
self.0
.check_type(generator, ctx, elem_ty)
.map_err(|err| err.under_context("a PointerType"))?;
Ok(())
}
}
impl<'ctx, Element: Model<'ctx>> PtrModel<Element> {
/// Return a ***constant*** nullptr.
pub fn nullptr<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Ptr<'ctx, Element> {
let ptr = self.get_type(generator, ctx).const_null();
self.believe_value(ptr)
}
/// Cast a pointer into this model with [`inkwell::builder::Builder::build_pointer_cast`]
pub fn pointer_cast<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
ptr: PointerValue<'ctx>,
name: &str,
) -> Ptr<'ctx, Element> {
let ptr =
ctx.builder.build_pointer_cast(ptr, self.get_type(generator, ctx.ctx), name).unwrap();
self.believe_value(ptr)
}
}
impl<'ctx, Element: Model<'ctx>> Ptr<'ctx, Element> {
/// Offset the pointer by [`inkwell::builder::Builder::build_in_bounds_gep`].
#[must_use]
pub fn offset<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
offset: IntValue<'ctx>,
name: &str,
) -> Ptr<'ctx, Element> {
let new_ptr =
unsafe { ctx.builder.build_in_bounds_gep(self.value, &[offset], name).unwrap() };
self.model.check_value(generator, ctx.ctx, new_ptr).unwrap()
}
// Load the `i`-th element (0-based) on the array with [`inkwell::builder::Builder::build_in_bounds_gep`].
pub fn ix<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
i: IntValue<'ctx>,
name: &str,
) -> Instance<'ctx, Element> {
self.offset(generator, ctx, i, name).load(generator, ctx, name)
}
/// Load the value with [`inkwell::builder::Builder::build_load`].
pub fn load<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
name: &str,
) -> Instance<'ctx, Element> {
let value = ctx.builder.build_load(self.value, name).unwrap();
self.model.0.check_value(generator, ctx.ctx, value).unwrap() // If unwrap() panics, there is a logic error.
}
/// Store a value with [`inkwell::builder::Builder::build_store`].
pub fn store(&self, ctx: &CodeGenContext<'ctx, '_>, value: Instance<'ctx, Element>) {
ctx.builder.build_store(self.value, value.value).unwrap();
}
/// Return a casted pointer of element type `NewElement` with [`inkwell::builder::Builder::build_pointer_cast`].
pub fn transmute<NewElement: Model<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
new_model: NewElement,
name: &str,
) -> Ptr<'ctx, NewElement> {
PtrModel(new_model).pointer_cast(generator, ctx, self.value, name)
}
/// Check if the pointer is null with [`inkwell::builder::Builder::build_is_null`].
pub fn is_null(&self, ctx: &CodeGenContext<'ctx, '_>, name: &str) -> Int<'ctx, Bool> {
let bool_model = IntModel(Bool);
let value = ctx.builder.build_is_null(self.value, name).unwrap();
bool_model.believe_value(value)
}
/// Check if the pointer is not null with [`inkwell::builder::Builder::build_is_not_null`].
pub fn is_not_null(&self, ctx: &CodeGenContext<'ctx, '_>, name: &str) -> Int<'ctx, Bool> {
let bool_model = IntModel(Bool);
let value = ctx.builder.build_is_not_null(self.value, name).unwrap();
bool_model.believe_value(value)
}
}

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use std::fmt;
use inkwell::{
context::Context,
types::{BasicType, BasicTypeEnum, StructType},
values::StructValue,
};
use crate::codegen::{CodeGenContext, CodeGenerator};
use super::*;
#[derive(Debug, Clone, Copy)]
pub struct GepField<M> {
pub gep_index: u64,
pub name: &'static str,
pub model: M,
}
pub trait FieldTraversal<'ctx> {
type Out<M>;
fn add<M: Model<'ctx>>(&mut self, name: &'static str, model: M) -> Self::Out<M>;
/// Like [`FieldTraversal::visit`] but [`Model`] is automatically inferred.
fn add_auto<M: Model<'ctx> + Default>(&mut self, name: &'static str) -> Self::Out<M> {
self.add(name, M::default())
}
}
pub struct GepFieldTraversal {
gep_index_counter: u64,
}
impl<'ctx> FieldTraversal<'ctx> for GepFieldTraversal {
type Out<M> = GepField<M>;
fn add<M: Model<'ctx>>(&mut self, name: &'static str, model: M) -> Self::Out<M> {
let gep_index = self.gep_index_counter;
self.gep_index_counter += 1;
Self::Out { gep_index, name, model }
}
}
struct TypeFieldTraversal<'ctx, 'a, G: CodeGenerator + ?Sized> {
generator: &'a mut G,
ctx: &'ctx Context,
field_types: Vec<BasicTypeEnum<'ctx>>,
}
impl<'ctx, 'a, G: CodeGenerator + ?Sized> FieldTraversal<'ctx> for TypeFieldTraversal<'ctx, 'a, G> {
type Out<M> = ();
fn add<M: Model<'ctx>>(&mut self, _name: &'static str, model: M) -> Self::Out<M> {
let t = model.get_type(self.generator, self.ctx).as_basic_type_enum();
self.field_types.push(t);
}
}
struct CheckTypeFieldTraversal<'ctx, 'a, G: CodeGenerator + ?Sized> {
generator: &'a mut G,
ctx: &'ctx Context,
index: u32,
scrutinee: StructType<'ctx>,
errors: Vec<ModelError>,
}
impl<'ctx, 'a, G: CodeGenerator + ?Sized> FieldTraversal<'ctx>
for CheckTypeFieldTraversal<'ctx, 'a, G>
{
type Out<M> = ();
fn add<M: Model<'ctx>>(&mut self, name: &'static str, model: M) -> Self::Out<M> {
let i = self.index;
self.index += 1;
if let Some(t) = self.scrutinee.get_field_type_at_index(i) {
if let Err(err) = model.check_type(self.generator, self.ctx, t) {
self.errors.push(err.under_context(format!("field #{i} '{name}'").as_str()));
}
} // Otherwise, it will be caught
}
}
pub trait StructKind<'ctx>: fmt::Debug + Clone + Copy {
type Fields<F: FieldTraversal<'ctx>>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F>;
fn fields(&self) -> Self::Fields<GepFieldTraversal> {
self.traverse_fields(&mut GepFieldTraversal { gep_index_counter: 0 })
}
fn get_struct_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> StructType<'ctx> {
let mut traversal = TypeFieldTraversal { generator, ctx, field_types: Vec::new() };
self.traverse_fields(&mut traversal);
ctx.struct_type(&traversal.field_types, false)
}
}
#[derive(Debug, Clone, Copy, Default)]
pub struct StructModel<S>(pub S);
pub type Struct<'ctx, S> = Instance<'ctx, StructModel<S>>;
impl<'ctx, S: StructKind<'ctx>> Model<'ctx> for StructModel<S> {
type Value = StructValue<'ctx>;
type Type = StructType<'ctx>;
fn get_type<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Self::Type {
self.0.get_struct_type(generator, ctx)
}
fn check_type<T: BasicType<'ctx>, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
ty: T,
) -> Result<(), ModelError> {
let ty = ty.as_basic_type_enum();
let Ok(ty) = StructType::try_from(ty) else {
return Err(ModelError(format!("Expecting StructType, but got {ty:?}")));
};
let mut traversal =
CheckTypeFieldTraversal { generator, ctx, index: 0, errors: Vec::new(), scrutinee: ty };
self.0.traverse_fields(&mut traversal);
let exp_num_fields = traversal.index;
let got_num_fields = u32::try_from(ty.get_field_types().len()).unwrap();
if exp_num_fields != got_num_fields {
return Err(ModelError(format!(
"Expecting StructType with {exp_num_fields} field(s), but got {got_num_fields}"
)));
}
if !traversal.errors.is_empty() {
return Err(traversal.errors[0].clone()); // TODO: Return other errors as well
}
Ok(())
}
}
impl<'ctx, S: StructKind<'ctx>> Ptr<'ctx, StructModel<S>> {
pub fn gep<M, GetField>(
&self,
ctx: &CodeGenContext<'ctx, '_>,
get_field: GetField,
) -> Ptr<'ctx, M>
where
M: Model<'ctx>,
GetField: FnOnce(S::Fields<GepFieldTraversal>) -> GepField<M>,
{
let field = get_field(self.model.0 .0.fields());
let llvm_i32 = ctx.ctx.i32_type(); // i64 would segfault
let ptr = unsafe {
ctx.builder
.build_in_bounds_gep(
self.value,
&[llvm_i32.const_zero(), llvm_i32.const_int(field.gep_index, false)],
field.name,
)
.unwrap()
};
let ptr_model = PtrModel(field.model);
ptr_model.believe_value(ptr)
}
/// Convenience function equivalent to `.gep(...).load(...)`.
pub fn get<M, GetField, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
get_field: GetField,
name: &str,
) -> Instance<'ctx, M>
where
M: Model<'ctx>,
GetField: FnOnce(S::Fields<GepFieldTraversal>) -> GepField<M>,
{
self.gep(ctx, get_field).load(generator, ctx, name)
}
/// Convenience function equivalent to `.gep(...).store(...)`.
pub fn set<M, GetField>(
&self,
ctx: &CodeGenContext<'ctx, '_>,
get_field: GetField,
value: Instance<'ctx, M>,
) where
M: Model<'ctx>,
GetField: FnOnce(S::Fields<GepFieldTraversal>) -> GepField<M>,
{
self.gep(ctx, get_field).store(ctx, value);
}
}

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use inkwell::{types::BasicType, values::IntValue};
/// `llvm.memcpy` but under the [`Model`] abstraction
use crate::codegen::{
llvm_intrinsics::call_memcpy_generic,
stmt::{gen_for_callback_incrementing, BreakContinueHooks},
CodeGenContext, CodeGenerator,
};
use super::*;
/// Convenience function.
///
/// Like [`call_memcpy_generic`] but with model abstractions and `is_volatile` set to `false`.
pub fn call_memcpy_model<'ctx, Item: Model<'ctx> + Default, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
dst_array: Ptr<'ctx, Item>,
src_array: Ptr<'ctx, Item>,
num_items: IntValue<'ctx>,
) {
let itemsize = Item::default().get_type(generator, ctx.ctx).size_of().unwrap();
let totalsize = ctx.builder.build_int_mul(itemsize, num_items, "totalsize").unwrap(); // TODO: Int types may not match.
let is_volatile = ctx.ctx.bool_type().const_zero();
call_memcpy_generic(ctx, dst_array.value, src_array.value, totalsize, is_volatile);
}
/// Like [`gen_for_callback_incrementing`] with [`Model`] abstractions.
/// The [`IntKind`] is automatically inferred.
pub fn gen_for_model_auto<'ctx, 'a, G, F, I>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
start: Int<'ctx, I>,
stop: Int<'ctx, I>,
step: Int<'ctx, I>,
body: F,
) -> Result<(), String>
where
G: CodeGenerator + ?Sized,
F: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks<'ctx>,
Int<'ctx, I>,
) -> Result<(), String>,
I: IntKind<'ctx> + Default,
{
let int_model = IntModel(I::default());
gen_for_callback_incrementing(
generator,
ctx,
None,
start.value,
(stop.value, false),
|g, ctx, hooks, i| {
let i = int_model.believe_value(i);
body(g, ctx, hooks, i)
},
step.value,
)
}
/// Like [`gen_if_callback`] with [`Model`] abstractions and without the `else` block.
pub fn gen_if_model<'ctx, 'a, G, ThenFn>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
cond: Int<'ctx, Bool>,
then: ThenFn,
) -> Result<(), String>
where
G: CodeGenerator + ?Sized,
ThenFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<(), String>,
{
let current_bb = ctx.builder.get_insert_block().unwrap();
let then_bb = ctx.ctx.insert_basic_block_after(current_bb, "if.then");
let end_bb = ctx.ctx.insert_basic_block_after(then_bb, "if.end");
// Inserting into `current_bb`.
ctx.builder.build_conditional_branch(cond.value, then_bb, end_bb).unwrap();
// Inserting into `then_bb`
ctx.builder.position_at_end(then_bb);
then(generator, ctx)?;
ctx.builder.build_unconditional_branch(end_bb).unwrap();
// Reposition to `end_bb` for continuation.
ctx.builder.position_at_end(end_bb);
Ok(())
}

View File

@ -26,12 +26,15 @@ use crate::{
typedef::{FunSignature, Type, TypeEnum}, typedef::{FunSignature, Type, TypeEnum},
}, },
}; };
use inkwell::types::{AnyTypeEnum, BasicTypeEnum, PointerType};
use inkwell::{ use inkwell::{
types::BasicType, types::BasicType,
values::{BasicValueEnum, IntValue, PointerValue}, values::{BasicValueEnum, IntValue, PointerValue},
AddressSpace, IntPredicate, OptimizationLevel, AddressSpace, IntPredicate, OptimizationLevel,
}; };
use inkwell::{
types::{AnyTypeEnum, BasicTypeEnum, PointerType},
values::BasicValue,
};
use nac3parser::ast::{Operator, StrRef}; use nac3parser::ast::{Operator, StrRef};
/// Creates an uninitialized `NDArray` instance. /// Creates an uninitialized `NDArray` instance.
@ -86,6 +89,7 @@ where
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(shape_len, false), (shape_len, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {
@ -131,6 +135,7 @@ where
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(shape_len, false), (shape_len, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {
@ -157,7 +162,7 @@ where
/// ///
/// * `elem_ty` - The element type of the `NDArray`. /// * `elem_ty` - The element type of the `NDArray`.
/// * `shape` - The shape of the `NDArray`, represented am array of [`IntValue`]s. /// * `shape` - The shape of the `NDArray`, represented am array of [`IntValue`]s.
fn create_ndarray_const_shape<'ctx, G: CodeGenerator + ?Sized>( pub fn create_ndarray_const_shape<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>, ctx: &mut CodeGenContext<'ctx, '_>,
elem_ty: Type, elem_ty: Type,
@ -252,7 +257,7 @@ fn ndarray_zero_value<'ctx, G: CodeGenerator + ?Sized>(
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.bool) { } else if ctx.unifier.unioned(elem_ty, ctx.primitives.bool) {
ctx.ctx.bool_type().const_zero().into() ctx.ctx.bool_type().const_zero().into()
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.str) { } else if ctx.unifier.unioned(elem_ty, ctx.primitives.str) {
ctx.gen_string(generator, "") ctx.gen_string(generator, "").value.into()
} else { } else {
unreachable!() unreachable!()
} }
@ -280,7 +285,7 @@ fn ndarray_one_value<'ctx, G: CodeGenerator + ?Sized>(
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.bool) { } else if ctx.unifier.unioned(elem_ty, ctx.primitives.bool) {
ctx.ctx.bool_type().const_int(1, false).into() ctx.ctx.bool_type().const_int(1, false).into()
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.str) { } else if ctx.unifier.unioned(elem_ty, ctx.primitives.str) {
ctx.gen_string(generator, "1") ctx.gen_string(generator, "1").value.into()
} else { } else {
unreachable!() unreachable!()
} }
@ -382,6 +387,7 @@ where
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_zero(), llvm_usize.const_zero(),
(ndarray_num_elems, false), (ndarray_num_elems, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {
@ -703,11 +709,12 @@ fn ndarray_from_ndlist_impl<'ctx, G: CodeGenerator + ?Sized>(
gen_for_range_callback( gen_for_range_callback(
generator, generator,
ctx, ctx,
None,
true, true,
|_, _| Ok(llvm_usize.const_zero()), |_, _| Ok(llvm_usize.const_zero()),
(|_, ctx| Ok(src_lst.load_size(ctx, None)), false), (|_, ctx| Ok(src_lst.load_size(ctx, None)), false),
|_, _| Ok(llvm_usize.const_int(1, false)), |_, _| Ok(llvm_usize.const_int(1, false)),
|generator, ctx, i| { |generator, ctx, _, i| {
let offset = ctx.builder.build_int_mul(stride, i, "").unwrap(); let offset = ctx.builder.build_int_mul(stride, i, "").unwrap();
let dst_ptr = let dst_ptr =
@ -943,11 +950,12 @@ fn call_ndarray_array_impl<'ctx, G: CodeGenerator + ?Sized>(
gen_for_range_callback( gen_for_range_callback(
generator, generator,
ctx, ctx,
None,
true, true,
|_, _| Ok(llvm_usize.const_zero()), |_, _| Ok(llvm_usize.const_zero()),
(|_, _| Ok(stop), false), (|_, _| Ok(stop), false),
|_, _| Ok(llvm_usize.const_int(1, false)), |_, _| Ok(llvm_usize.const_int(1, false)),
|generator, ctx, _| { |generator, ctx, _, _| {
let plist_plist_i8 = make_llvm_list(llvm_plist_i8.into()) let plist_plist_i8 = make_llvm_list(llvm_plist_i8.into())
.ptr_type(AddressSpace::default()); .ptr_type(AddressSpace::default());
@ -1086,13 +1094,17 @@ fn ndarray_sliced_copyto_impl<'ctx, G: CodeGenerator + ?Sized>(
// If there are no (remaining) slice expressions, memcpy the entire dimension // If there are no (remaining) slice expressions, memcpy the entire dimension
if slices.is_empty() { if slices.is_empty() {
let sizeof_elem = ctx.get_llvm_type(generator, elem_ty).size_of().unwrap();
let stride = call_ndarray_calc_size( let stride = call_ndarray_calc_size(
generator, generator,
ctx, ctx,
&src_arr.dim_sizes(), &src_arr.dim_sizes(),
(Some(llvm_usize.const_int(dim, false)), None), (Some(llvm_usize.const_int(dim, false)), None),
); );
let sizeof_elem = ctx.get_llvm_type(generator, elem_ty).size_of().unwrap(); let stride =
ctx.builder.build_int_z_extend_or_bit_cast(stride, sizeof_elem.get_type(), "").unwrap();
let cpy_len = ctx.builder.build_int_mul(stride, sizeof_elem, "").unwrap(); let cpy_len = ctx.builder.build_int_mul(stride, sizeof_elem, "").unwrap();
call_memcpy_generic(ctx, dst_slice_ptr, src_slice_ptr, cpy_len, llvm_i1.const_zero()); call_memcpy_generic(ctx, dst_slice_ptr, src_slice_ptr, cpy_len, llvm_i1.const_zero());
@ -1126,11 +1138,12 @@ fn ndarray_sliced_copyto_impl<'ctx, G: CodeGenerator + ?Sized>(
gen_for_range_callback( gen_for_range_callback(
generator, generator,
ctx, ctx,
None,
false, false,
|_, _| Ok(start), |_, _| Ok(start),
(|_, _| Ok(stop), true), (|_, _| Ok(stop), true),
|_, _| Ok(step), |_, _| Ok(step),
|generator, ctx, src_i| { |generator, ctx, _, src_i| {
// Calculate the offset of the active slice // Calculate the offset of the active slice
let src_data_offset = ctx.builder.build_int_mul(src_stride, src_i, "").unwrap(); let src_data_offset = ctx.builder.build_int_mul(src_stride, src_i, "").unwrap();
let dst_i = let dst_i =
@ -1243,6 +1256,7 @@ pub fn ndarray_sliced_copy<'ctx, G: CodeGenerator + ?Sized>(
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_usize.const_int(slices.len() as u64, false), llvm_usize.const_int(slices.len() as u64, false),
(this.load_ndims(ctx), false), (this.load_ndims(ctx), false),
|generator, ctx, _, idx| { |generator, ctx, _, idx| {
@ -1647,6 +1661,7 @@ pub fn ndarray_matmul_2d<'ctx, G: CodeGenerator>(
gen_for_callback_incrementing( gen_for_callback_incrementing(
generator, generator,
ctx, ctx,
None,
llvm_i32.const_zero(), llvm_i32.const_zero(),
(common_dim, false), (common_dim, false),
|generator, ctx, _, i| { |generator, ctx, _, i| {
@ -2014,3 +2029,493 @@ pub fn gen_ndarray_fill<'ctx>(
Ok(()) Ok(())
} }
/// Generates LLVM IR for `ndarray.transpose`.
pub fn ndarray_transpose<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
x1: (Type, BasicValueEnum<'ctx>),
) -> Result<BasicValueEnum<'ctx>, String> {
const FN_NAME: &str = "ndarray_transpose";
let (x1_ty, x1) = x1;
let llvm_usize = generator.get_size_type(ctx.ctx);
if let BasicValueEnum::PointerValue(n1) = x1 {
let (elem_ty, _) = unpack_ndarray_var_tys(&mut ctx.unifier, x1_ty);
let n1 = NDArrayValue::from_ptr_val(n1, llvm_usize, None);
let n_sz = call_ndarray_calc_size(generator, ctx, &n1.dim_sizes(), (None, None));
// Dimensions are reversed in the transposed array
let out = create_ndarray_dyn_shape(
generator,
ctx,
elem_ty,
&n1,
|_, ctx, n| Ok(n.load_ndims(ctx)),
|generator, ctx, n, idx| {
let new_idx = ctx.builder.build_int_sub(n.load_ndims(ctx), idx, "").unwrap();
let new_idx = ctx
.builder
.build_int_sub(new_idx, new_idx.get_type().const_int(1, false), "")
.unwrap();
unsafe { Ok(n.dim_sizes().get_typed_unchecked(ctx, generator, &new_idx, None)) }
},
)
.unwrap();
gen_for_callback_incrementing(
generator,
ctx,
None,
llvm_usize.const_zero(),
(n_sz, false),
|generator, ctx, _, idx| {
let elem = unsafe { n1.data().get_unchecked(ctx, generator, &idx, None) };
let new_idx = generator.gen_var_alloc(ctx, llvm_usize.into(), None)?;
let rem_idx = generator.gen_var_alloc(ctx, llvm_usize.into(), None)?;
ctx.builder.build_store(new_idx, llvm_usize.const_zero()).unwrap();
ctx.builder.build_store(rem_idx, idx).unwrap();
// Incrementally calculate the new index in the transposed array
// For each index, we first decompose it into the n-dims and use those to reconstruct the new index
// The formula used for indexing is:
// idx = dim_n * ( ... (dim2 * (dim0 * dim1) + dim1) + dim2 ... ) + dim_n
gen_for_callback_incrementing(
generator,
ctx,
None,
llvm_usize.const_zero(),
(n1.load_ndims(ctx), false),
|generator, ctx, _, ndim| {
let ndim_rev =
ctx.builder.build_int_sub(n1.load_ndims(ctx), ndim, "").unwrap();
let ndim_rev = ctx
.builder
.build_int_sub(ndim_rev, llvm_usize.const_int(1, false), "")
.unwrap();
let dim = unsafe {
n1.dim_sizes().get_typed_unchecked(ctx, generator, &ndim_rev, None)
};
let rem_idx_val =
ctx.builder.build_load(rem_idx, "").unwrap().into_int_value();
let new_idx_val =
ctx.builder.build_load(new_idx, "").unwrap().into_int_value();
let add_component =
ctx.builder.build_int_unsigned_rem(rem_idx_val, dim, "").unwrap();
let rem_idx_val =
ctx.builder.build_int_unsigned_div(rem_idx_val, dim, "").unwrap();
let new_idx_val = ctx.builder.build_int_mul(new_idx_val, dim, "").unwrap();
let new_idx_val =
ctx.builder.build_int_add(new_idx_val, add_component, "").unwrap();
ctx.builder.build_store(rem_idx, rem_idx_val).unwrap();
ctx.builder.build_store(new_idx, new_idx_val).unwrap();
Ok(())
},
llvm_usize.const_int(1, false),
)?;
let new_idx_val = ctx.builder.build_load(new_idx, "").unwrap().into_int_value();
unsafe { out.data().set_unchecked(ctx, generator, &new_idx_val, elem) };
Ok(())
},
llvm_usize.const_int(1, false),
)?;
Ok(out.as_base_value().into())
} else {
unreachable!(
"{FN_NAME}() not supported for '{}'",
format!("'{}'", ctx.unifier.stringify(x1_ty))
)
}
}
/// LLVM-typed implementation for generating the implementation for `ndarray.reshape`.
///
/// * `x1` - `NDArray` to reshape.
/// * `shape` - The `shape` parameter used to construct the new `NDArray`.
/// Just like numpy, the `shape` argument can be:
/// 1. A list of `int32`; e.g., `np.reshape(arr, [600, -1, 3])`
/// 2. A tuple of `int32`; e.g., `np.reshape(arr, (-1, 800, 3))`
/// 3. A scalar `int32`; e.g., `np.reshape(arr, 3)`
/// Note that unlike other generating functions, one of the dimesions in the shape can be negative
pub fn ndarray_reshape<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
x1: (Type, BasicValueEnum<'ctx>),
shape: (Type, BasicValueEnum<'ctx>),
) -> Result<BasicValueEnum<'ctx>, String> {
const FN_NAME: &str = "ndarray_reshape";
let (x1_ty, x1) = x1;
let (_, shape) = shape;
let llvm_usize = generator.get_size_type(ctx.ctx);
if let BasicValueEnum::PointerValue(n1) = x1 {
let (elem_ty, _) = unpack_ndarray_var_tys(&mut ctx.unifier, x1_ty);
let n1 = NDArrayValue::from_ptr_val(n1, llvm_usize, None);
let n_sz = call_ndarray_calc_size(generator, ctx, &n1.dim_sizes(), (None, None));
let acc = generator.gen_var_alloc(ctx, llvm_usize.into(), None)?;
let num_neg = generator.gen_var_alloc(ctx, llvm_usize.into(), None)?;
ctx.builder.build_store(acc, llvm_usize.const_int(1, false)).unwrap();
ctx.builder.build_store(num_neg, llvm_usize.const_zero()).unwrap();
let out = match shape {
BasicValueEnum::PointerValue(shape_list_ptr)
if ListValue::is_instance(shape_list_ptr, llvm_usize).is_ok() =>
{
// 1. A list of ints; e.g., `np.reshape(arr, [int64(600), int64(800, -1])`
let shape_list = ListValue::from_ptr_val(shape_list_ptr, llvm_usize, None);
// Check for -1 in dimensions
gen_for_callback_incrementing(
generator,
ctx,
None,
llvm_usize.const_zero(),
(shape_list.load_size(ctx, None), false),
|generator, ctx, _, idx| {
let ele =
shape_list.data().get(ctx, generator, &idx, None).into_int_value();
let ele = ctx.builder.build_int_s_extend(ele, llvm_usize, "").unwrap();
gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(
IntPredicate::SLT,
ele,
llvm_usize.const_zero(),
"",
)
.unwrap())
},
|_, ctx| -> Result<Option<IntValue>, String> {
let num_neg_value =
ctx.builder.build_load(num_neg, "").unwrap().into_int_value();
let num_neg_value = ctx
.builder
.build_int_add(
num_neg_value,
llvm_usize.const_int(1, false),
"",
)
.unwrap();
ctx.builder.build_store(num_neg, num_neg_value).unwrap();
Ok(None)
},
|_, ctx| {
let acc_value =
ctx.builder.build_load(acc, "").unwrap().into_int_value();
let acc_value =
ctx.builder.build_int_mul(acc_value, ele, "").unwrap();
ctx.builder.build_store(acc, acc_value).unwrap();
Ok(None)
},
)?;
Ok(())
},
llvm_usize.const_int(1, false),
)?;
let acc_val = ctx.builder.build_load(acc, "").unwrap().into_int_value();
let rem = ctx.builder.build_int_unsigned_div(n_sz, acc_val, "").unwrap();
// Generate the output shape by filling -1 with `rem`
create_ndarray_dyn_shape(
generator,
ctx,
elem_ty,
&shape_list,
|_, ctx, _| Ok(shape_list.load_size(ctx, None)),
|generator, ctx, shape_list, idx| {
let dim =
shape_list.data().get(ctx, generator, &idx, None).into_int_value();
let dim = ctx.builder.build_int_s_extend(dim, llvm_usize, "").unwrap();
Ok(gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(
IntPredicate::SLT,
dim,
llvm_usize.const_zero(),
"",
)
.unwrap())
},
|_, _| Ok(Some(rem)),
|_, _| Ok(Some(dim)),
)?
.unwrap()
.into_int_value())
},
)
}
BasicValueEnum::StructValue(shape_tuple) => {
// 2. A tuple of `int32`; e.g., `np.reshape(arr, (-1, 800, 3))`
let ndims = shape_tuple.get_type().count_fields();
// Check for -1 in dims
for dim_i in 0..ndims {
let dim = ctx
.builder
.build_extract_value(shape_tuple, dim_i, "")
.unwrap()
.into_int_value();
let dim = ctx.builder.build_int_s_extend(dim, llvm_usize, "").unwrap();
gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(
IntPredicate::SLT,
dim,
llvm_usize.const_zero(),
"",
)
.unwrap())
},
|_, ctx| -> Result<Option<IntValue>, String> {
let num_negs =
ctx.builder.build_load(num_neg, "").unwrap().into_int_value();
let num_negs = ctx
.builder
.build_int_add(num_negs, llvm_usize.const_int(1, false), "")
.unwrap();
ctx.builder.build_store(num_neg, num_negs).unwrap();
Ok(None)
},
|_, ctx| {
let acc_val = ctx.builder.build_load(acc, "").unwrap().into_int_value();
let acc_val = ctx.builder.build_int_mul(acc_val, dim, "").unwrap();
ctx.builder.build_store(acc, acc_val).unwrap();
Ok(None)
},
)?;
}
let acc_val = ctx.builder.build_load(acc, "").unwrap().into_int_value();
let rem = ctx.builder.build_int_unsigned_div(n_sz, acc_val, "").unwrap();
let mut shape = Vec::with_capacity(ndims as usize);
// Reconstruct shape filling negatives with rem
for dim_i in 0..ndims {
let dim = ctx
.builder
.build_extract_value(shape_tuple, dim_i, "")
.unwrap()
.into_int_value();
let dim = ctx.builder.build_int_s_extend(dim, llvm_usize, "").unwrap();
let dim = gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(
IntPredicate::SLT,
dim,
llvm_usize.const_zero(),
"",
)
.unwrap())
},
|_, _| Ok(Some(rem)),
|_, _| Ok(Some(dim)),
)?
.unwrap()
.into_int_value();
shape.push(dim);
}
create_ndarray_const_shape(generator, ctx, elem_ty, shape.as_slice())
}
BasicValueEnum::IntValue(shape_int) => {
// 3. A scalar `int32`; e.g., `np.reshape(arr, 3)`
let shape_int = gen_if_else_expr_callback(
generator,
ctx,
|_, ctx| {
Ok(ctx
.builder
.build_int_compare(
IntPredicate::SLT,
shape_int,
llvm_usize.const_zero(),
"",
)
.unwrap())
},
|_, _| Ok(Some(n_sz)),
|_, ctx| {
Ok(Some(ctx.builder.build_int_s_extend(shape_int, llvm_usize, "").unwrap()))
},
)?
.unwrap()
.into_int_value();
create_ndarray_const_shape(generator, ctx, elem_ty, &[shape_int])
}
_ => unreachable!(),
}
.unwrap();
// Only allow one dimension to be negative
let num_negs = ctx.builder.build_load(num_neg, "").unwrap().into_int_value();
ctx.make_assert(
generator,
ctx.builder
.build_int_compare(IntPredicate::ULT, num_negs, llvm_usize.const_int(2, false), "")
.unwrap(),
"0:ValueError",
"can only specify one unknown dimension",
[None, None, None],
ctx.current_loc,
);
// The new shape must be compatible with the old shape
let out_sz = call_ndarray_calc_size(generator, ctx, &out.dim_sizes(), (None, None));
ctx.make_assert(
generator,
ctx.builder.build_int_compare(IntPredicate::EQ, out_sz, n_sz, "").unwrap(),
"0:ValueError",
"cannot reshape array of size {0} into provided shape of size {1}",
[Some(n_sz), Some(out_sz), None],
ctx.current_loc,
);
gen_for_callback_incrementing(
generator,
ctx,
None,
llvm_usize.const_zero(),
(n_sz, false),
|generator, ctx, _, idx| {
let elem = unsafe { n1.data().get_unchecked(ctx, generator, &idx, None) };
unsafe { out.data().set_unchecked(ctx, generator, &idx, elem) };
Ok(())
},
llvm_usize.const_int(1, false),
)?;
Ok(out.as_base_value().into())
} else {
unreachable!(
"{FN_NAME}() not supported for '{}'",
format!("'{}'", ctx.unifier.stringify(x1_ty))
)
}
}
/// Generates LLVM IR for `ndarray.dot`.
/// Calculate inner product of two vectors or literals
/// For matrix multiplication use `np_matmul`
///
/// The input `NDArray` are flattened and treated as 1D
/// The operation is equivalent to `np.dot(arr1.ravel(), arr2.ravel())`
pub fn ndarray_dot<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
x1: (Type, BasicValueEnum<'ctx>),
x2: (Type, BasicValueEnum<'ctx>),
) -> Result<BasicValueEnum<'ctx>, String> {
const FN_NAME: &str = "ndarray_dot";
let (x1_ty, x1) = x1;
let (_, x2) = x2;
let llvm_usize = generator.get_size_type(ctx.ctx);
match (x1, x2) {
(BasicValueEnum::PointerValue(n1), BasicValueEnum::PointerValue(n2)) => {
let n1 = NDArrayValue::from_ptr_val(n1, llvm_usize, None);
let n2 = NDArrayValue::from_ptr_val(n2, llvm_usize, None);
let n1_sz = call_ndarray_calc_size(generator, ctx, &n1.dim_sizes(), (None, None));
let n2_sz = call_ndarray_calc_size(generator, ctx, &n1.dim_sizes(), (None, None));
ctx.make_assert(
generator,
ctx.builder.build_int_compare(IntPredicate::EQ, n1_sz, n2_sz, "").unwrap(),
"0:ValueError",
"shapes ({0}), ({1}) not aligned",
[Some(n1_sz), Some(n2_sz), None],
ctx.current_loc,
);
let identity =
unsafe { n1.data().get_unchecked(ctx, generator, &llvm_usize.const_zero(), None) };
let acc = ctx.builder.build_alloca(identity.get_type(), "").unwrap();
ctx.builder.build_store(acc, identity.get_type().const_zero()).unwrap();
gen_for_callback_incrementing(
generator,
ctx,
None,
llvm_usize.const_zero(),
(n1_sz, false),
|generator, ctx, _, idx| {
let elem1 = unsafe { n1.data().get_unchecked(ctx, generator, &idx, None) };
let elem2 = unsafe { n2.data().get_unchecked(ctx, generator, &idx, None) };
let product = match elem1 {
BasicValueEnum::IntValue(e1) => ctx
.builder
.build_int_mul(e1, elem2.into_int_value(), "")
.unwrap()
.as_basic_value_enum(),
BasicValueEnum::FloatValue(e1) => ctx
.builder
.build_float_mul(e1, elem2.into_float_value(), "")
.unwrap()
.as_basic_value_enum(),
_ => unreachable!(),
};
let acc_val = ctx.builder.build_load(acc, "").unwrap();
let acc_val = match acc_val {
BasicValueEnum::IntValue(e1) => ctx
.builder
.build_int_add(e1, product.into_int_value(), "")
.unwrap()
.as_basic_value_enum(),
BasicValueEnum::FloatValue(e1) => ctx
.builder
.build_float_add(e1, product.into_float_value(), "")
.unwrap()
.as_basic_value_enum(),
_ => unreachable!(),
};
ctx.builder.build_store(acc, acc_val).unwrap();
Ok(())
},
llvm_usize.const_int(1, false),
)?;
let acc_val = ctx.builder.build_load(acc, "").unwrap();
Ok(acc_val)
}
(BasicValueEnum::IntValue(e1), BasicValueEnum::IntValue(e2)) => {
Ok(ctx.builder.build_int_mul(e1, e2, "").unwrap().as_basic_value_enum())
}
(BasicValueEnum::FloatValue(e1), BasicValueEnum::FloatValue(e2)) => {
Ok(ctx.builder.build_float_mul(e1, e2, "").unwrap().as_basic_value_enum())
}
_ => unreachable!(
"{FN_NAME}() not supported for '{}'",
format!("'{}'", ctx.unifier.stringify(x1_ty))
),
}
}

View File

@ -0,0 +1,523 @@
// TODO: Replace numpy.rs
use inkwell::values::{BasicValue, BasicValueEnum};
use nac3parser::ast::StrRef;
use crate::{
codegen::{
irrt::{call_nac3_ndarray_resolve_and_check_new_shape, call_nac3_ndarray_transpose},
structure::{
ndarray::{
scalar::split_scalar_or_ndarray, shape_util::parse_numpy_int_sequence,
NDArrayObject,
},
tuple::TupleObject,
},
},
symbol_resolver::ValueEnum,
toplevel::{
numpy::{extract_ndims, unpack_ndarray_var_tys},
DefinitionId,
},
typecheck::typedef::{FunSignature, Type},
};
use super::{
irrt::call_nac3_ndarray_util_assert_shape_no_negative, model::*, CodeGenContext, CodeGenerator,
};
/// Get the zero value in `np.zeros()` of a `dtype`.
fn ndarray_zero_value<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
dtype: Type,
) -> BasicValueEnum<'ctx> {
if [ctx.primitives.int32, ctx.primitives.uint32]
.iter()
.any(|ty| ctx.unifier.unioned(dtype, *ty))
{
ctx.ctx.i32_type().const_zero().into()
} else if [ctx.primitives.int64, ctx.primitives.uint64]
.iter()
.any(|ty| ctx.unifier.unioned(dtype, *ty))
{
ctx.ctx.i64_type().const_zero().into()
} else if ctx.unifier.unioned(dtype, ctx.primitives.float) {
ctx.ctx.f64_type().const_zero().into()
} else if ctx.unifier.unioned(dtype, ctx.primitives.bool) {
ctx.ctx.bool_type().const_zero().into()
} else if ctx.unifier.unioned(dtype, ctx.primitives.str) {
ctx.gen_string(generator, "").value.into()
} else {
unreachable!()
}
}
/// Get the one value in `np.ones()` of a `dtype`.
fn ndarray_one_value<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
elem_ty: Type,
) -> BasicValueEnum<'ctx> {
if [ctx.primitives.int32, ctx.primitives.uint32]
.iter()
.any(|ty| ctx.unifier.unioned(elem_ty, *ty))
{
let is_signed = ctx.unifier.unioned(elem_ty, ctx.primitives.int32);
ctx.ctx.i32_type().const_int(1, is_signed).into()
} else if [ctx.primitives.int64, ctx.primitives.uint64]
.iter()
.any(|ty| ctx.unifier.unioned(elem_ty, *ty))
{
let is_signed = ctx.unifier.unioned(elem_ty, ctx.primitives.int64);
ctx.ctx.i64_type().const_int(1, is_signed).into()
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.float) {
ctx.ctx.f64_type().const_float(1.0).into()
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.bool) {
ctx.ctx.bool_type().const_int(1, false).into()
} else if ctx.unifier.unioned(elem_ty, ctx.primitives.str) {
ctx.gen_string(generator, "1").value.into()
} else {
unreachable!()
}
}
/// Helper function to create an ndarray with uninitialized values.
///
/// * `ndarray_ty` - The [`Type`] of the ndarray
/// * `shape` - The user input shape argument
/// * `shape_ty` - The [`Type`] of the shape argument
///
/// This function does data validation the `shape` input.
fn create_empty_ndarray<'ctx, G>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ndarray_ty: Type,
shape: BasicValueEnum<'ctx>,
shape_ty: Type,
) -> NDArrayObject<'ctx>
where
G: CodeGenerator + ?Sized,
{
let (_, shape) = parse_numpy_int_sequence(generator, ctx, shape, shape_ty);
let ndarray =
NDArrayObject::alloca_uninitialized_of_type(generator, ctx, ndarray_ty, "ndarray");
// Validate `shape`
let ndims = ndarray.get_ndims(generator, ctx.ctx);
call_nac3_ndarray_util_assert_shape_no_negative(generator, ctx, ndims, shape);
// Setup `ndarray` with `shape`
ndarray.copy_shape_from_array(generator, ctx, shape);
ndarray.create_data(generator, ctx); // `shape` has to be set
ndarray
}
/// Generates LLVM IR for `np.empty`.
pub fn gen_ndarray_empty<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse arguments
let shape_ty = fun.0.args[0].ty;
let shape = args[0].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Implementation
let ndarray_ty = fun.0.ret;
let ndarray = create_empty_ndarray(generator, ctx, ndarray_ty, shape, shape_ty);
Ok(ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.zero`.
pub fn gen_ndarray_zeros<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse arguments
let shape_ty = fun.0.args[0].ty;
let shape = args[0].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Implementation
let ndarray_ty = fun.0.ret;
let ndarray = create_empty_ndarray(generator, ctx, ndarray_ty, shape, shape_ty);
let fill_value = ndarray_zero_value(generator, ctx, ndarray.dtype);
ndarray.fill(generator, ctx, fill_value);
Ok(ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.ones`.
pub fn gen_ndarray_ones<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse arguments
let shape_ty = fun.0.args[0].ty;
let shape = args[0].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Implementation
let ndarray_ty = fun.0.ret;
let ndarray = create_empty_ndarray(generator, ctx, ndarray_ty, shape, shape_ty);
let fill_value = ndarray_zero_value(generator, ctx, ndarray.dtype);
ndarray.fill(generator, ctx, fill_value);
Ok(ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.full`.
pub fn gen_ndarray_full<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 2);
// Parse argument #1 shape
let shape_ty = fun.0.args[0].ty;
let shape = args[0].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Parse argument #2 fill_value
let fill_value_ty = fun.0.args[1].ty;
let fill_value = args[1].1.clone().to_basic_value_enum(ctx, generator, fill_value_ty)?;
// Implementation
let ndarray_ty = fun.0.ret;
let ndarray = create_empty_ndarray(generator, ctx, ndarray_ty, shape, shape_ty);
ndarray.fill(generator, ctx, fill_value);
Ok(ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.broadcast_to`.
pub fn gen_ndarray_broadcast_to<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 2);
// Parse argument #1 input
let input_ty = fun.0.args[0].ty;
let input = args[0].1.clone().to_basic_value_enum(ctx, generator, input_ty)?;
// Parse argument #2 shape
let shape_ty = fun.0.args[1].ty;
let shape = args[1].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Define models
let sizet_model = IntModel(SizeT);
// Extract broadcast_ndims, this is the only way to get the
// ndims of the ndarray result statically.
let (_, broadcast_ndims_ty) = unpack_ndarray_var_tys(&mut ctx.unifier, fun.0.ret);
let broadcast_ndims = extract_ndims(&ctx.unifier, broadcast_ndims_ty);
// Process `input`
let in_ndarray =
split_scalar_or_ndarray(generator, ctx, input, input_ty).as_ndarray(generator, ctx);
// Process `shape`
let (_, broadcast_shape) = parse_numpy_int_sequence(generator, ctx, shape, shape_ty);
// NOTE: shape.size should equal to `broadcasted_ndims`.
let broadcast_ndims_llvm = sizet_model.constant(generator, ctx.ctx, broadcast_ndims);
call_nac3_ndarray_util_assert_shape_no_negative(
generator,
ctx,
broadcast_ndims_llvm,
broadcast_shape,
);
// Create broadcast view
let broadcast_ndarray =
in_ndarray.broadcast_to(generator, ctx, broadcast_ndims, broadcast_shape);
Ok(broadcast_ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.reshape`.
pub fn gen_ndarray_reshape<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 2);
// Parse argument #1 input
let input_ty = fun.0.args[0].ty;
let input = args[0].1.clone().to_basic_value_enum(ctx, generator, input_ty)?;
// Parse argument #2 shape
let shape_ty = fun.0.args[1].ty;
let shape = args[1].1.clone().to_basic_value_enum(ctx, generator, shape_ty)?;
// Define models
let sizet_model = IntModel(SizeT);
// Extract reshaped_ndims
let (_, reshaped_ndims_ty) = unpack_ndarray_var_tys(&mut ctx.unifier, fun.0.ret);
let reshaped_ndims = extract_ndims(&ctx.unifier, reshaped_ndims_ty);
// Process `input`
let in_ndarray =
split_scalar_or_ndarray(generator, ctx, input, input_ty).as_ndarray(generator, ctx);
let in_size = in_ndarray.size(generator, ctx);
// Process the shape input from user and resolve negative indices.
// The resulting `new_shape`'s size should be equal to reshaped_ndims.
// This is ensured by the typechecker.
let (_, new_shape) = parse_numpy_int_sequence(generator, ctx, shape, shape_ty);
// Resolve unknown dimensions & validate `new_shape`.
let new_ndims = sizet_model.constant(generator, ctx.ctx, reshaped_ndims);
call_nac3_ndarray_resolve_and_check_new_shape(generator, ctx, in_size, new_ndims, new_shape);
// Reshape or copy
let reshaped_ndarray = in_ndarray.reshape_or_copy(generator, ctx, reshaped_ndims, new_shape);
Ok(reshaped_ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.arange`.
pub fn gen_ndarray_arange<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse argument #1 len
let input_ty = fun.0.args[0].ty;
let input = args[0].1.clone().to_basic_value_enum(ctx, generator, input_ty)?.into_int_value();
// Define models
let sizet_model = IntModel(SizeT);
// Process input
let input = sizet_model.s_extend_or_bit_cast(generator, ctx, input, "input_dim");
// Allocate the resulting ndarray
let ndarray = NDArrayObject::alloca_uninitialized(
generator,
ctx,
ctx.primitives.float,
1, // ndims = 1
"arange_ndarray",
);
// `ndarray.shape[0] = input`
let zero = sizet_model.const_0(generator, ctx.ctx);
ndarray
.value
.get(generator, ctx, |f| f.shape, "shape")
.offset(generator, ctx, zero.value, "dim")
.store(ctx, input);
// Create data and set elements
ndarray.create_data(generator, ctx);
ndarray.foreach_pointer(generator, ctx, |_generator, ctx, _hooks, i, pelement| {
let val =
ctx.builder.build_unsigned_int_to_float(i.value, ctx.ctx.f64_type(), "val").unwrap();
ctx.builder.build_store(pelement, val).unwrap();
Ok(())
})?;
Ok(ndarray.value.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.size`.
pub fn gen_ndarray_size<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
let ndarray_ty = fun.0.args[0].ty;
let ndarray = args[0].1.clone().to_basic_value_enum(ctx, generator, ndarray_ty)?;
let ndarray = NDArrayObject::from_value_and_type(generator, ctx, ndarray, ndarray_ty);
let size = ndarray.size(generator, ctx).truncate(generator, ctx, Int32, "size");
Ok(size.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.shape`.
pub fn gen_ndarray_shape<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse argument #1 ndarray
let ndarray_ty = fun.0.args[0].ty;
let ndarray = args[0].1.clone().to_basic_value_enum(ctx, generator, ndarray_ty)?;
// Define models
let sizet_model = IntModel(SizeT);
// Process ndarray
let ndarray = NDArrayObject::from_value_and_type(generator, ctx, ndarray, ndarray_ty);
let mut items = Vec::with_capacity(ndarray.ndims as usize);
for i in 0..ndarray.ndims {
let i = sizet_model.constant(generator, ctx.ctx, i);
let dim =
ndarray.value.get(generator, ctx, |f| f.shape, "").ix(generator, ctx, i.value, "dim");
let dim = dim.truncate(generator, ctx, Int32, "dim"); // TODO: keep using SizeT
items.push((dim.value.as_basic_value_enum(), ctx.primitives.int32));
}
let shape = TupleObject::create(generator, ctx, items, "shape");
Ok(shape.value.as_basic_value_enum())
}
/// Generates LLVM IR for `<ndarray>.strides`.
pub fn gen_ndarray_strides<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
// TODO: This function looks exactly like `gen_ndarray_shapes`, code duplication?
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse argument #1 ndarray
let ndarray_ty = fun.0.args[0].ty;
let ndarray = args[0].1.clone().to_basic_value_enum(ctx, generator, ndarray_ty)?;
// Define models
let sizet_model = IntModel(SizeT);
// Process ndarray
let ndarray = NDArrayObject::from_value_and_type(generator, ctx, ndarray, ndarray_ty);
let mut items = Vec::with_capacity(ndarray.ndims as usize);
for i in 0..ndarray.ndims {
let i = sizet_model.constant(generator, ctx.ctx, i);
let dim =
ndarray.value.get(generator, ctx, |f| f.strides, "").ix(generator, ctx, i.value, "dim");
let dim = dim.truncate(generator, ctx, Int32, "dim"); // TODO: keep using SizeT
items.push((dim.value.as_basic_value_enum(), ctx.primitives.int32));
}
let strides = TupleObject::create(generator, ctx, items, "strides");
Ok(strides.value.as_basic_value_enum())
}
/// Generates LLVM IR for `np.transpose`.
pub fn gen_ndarray_transpose<'ctx>(
ctx: &mut CodeGenContext<'ctx, '_>,
obj: &Option<(Type, ValueEnum<'ctx>)>,
fun: (&FunSignature, DefinitionId),
args: &[(Option<StrRef>, ValueEnum<'ctx>)],
generator: &mut dyn CodeGenerator,
) -> Result<BasicValueEnum<'ctx>, String> {
// TODO: The implementation will be changed once default values start working again.
// Read the comment on this function in BuiltinBuilder.
// TODO: Change axes values to `SizeT`
assert!(obj.is_none());
assert_eq!(args.len(), 1);
// Parse argument #1 ndarray
let ndarray_ty = fun.0.args[0].ty;
let ndarray = args[0].1.clone().to_basic_value_enum(ctx, generator, ndarray_ty)?;
// Define models
let sizet_model = IntModel(SizeT);
// Implementation
let ndarray = NDArrayObject::from_value_and_type(generator, ctx, ndarray, ndarray_ty);
let transposed_ndarray = NDArrayObject::alloca_uninitialized(
generator,
ctx,
ndarray.dtype,
ndarray.ndims,
"transposed_ndarray",
);
let has_axes = args.len() >= 2;
if has_axes {
// Parse argument #2 axes
let in_axes_ty = fun.0.args[1].ty;
let in_axes = args[1].1.clone().to_basic_value_enum(ctx, generator, in_axes_ty)?;
let (_, axes) = parse_numpy_int_sequence(generator, ctx, in_axes, in_axes_ty);
let num_axes = ndarray.get_ndims(generator, ctx.ctx);
call_nac3_ndarray_transpose(
generator,
ctx,
ndarray.value,
transposed_ndarray.value,
num_axes,
axes,
);
} else {
let num_axes = sizet_model.const_0(generator, ctx.ctx); // Placeholder value
let axes = PtrModel(sizet_model).nullptr(generator, ctx.ctx);
// See IRRT implementation for argument requirements when axes is None
call_nac3_ndarray_transpose(
generator,
ctx,
ndarray.value,
transposed_ndarray.value,
num_axes,
axes,
);
}
Ok(transposed_ndarray.value.value.as_basic_value_enum())
}

View File

@ -1,19 +1,25 @@
use super::model::*;
use super::structure::cslice::CSlice;
use super::{ use super::{
super::symbol_resolver::ValueEnum, super::symbol_resolver::ValueEnum,
expr::destructure_range, expr::destructure_range,
irrt::{handle_slice_indices, list_slice_assignment}, irrt::{handle_slice_indices, list_slice_assignment},
CodeGenContext, CodeGenerator, structure::exception::Exception,
CodeGenContext, CodeGenerator, Int32, IntModel, Ptr, StructModel,
}; };
use crate::codegen::structure::ndarray::indexing::util::gen_ndarray_subscript_ndindexes;
use crate::codegen::structure::ndarray::scalar::split_scalar_or_ndarray;
use crate::codegen::structure::ndarray::NDArrayObject;
use crate::{ use crate::{
codegen::{ codegen::{
classes::{ArrayLikeIndexer, ArraySliceValue, ListValue, RangeValue}, classes::{ArrayLikeIndexer, ArraySliceValue, ListValue, RangeValue},
expr::gen_binop_expr, expr::gen_binop_expr,
gen_in_range_check, gen_in_range_check,
}, },
toplevel::{helper::PrimDef, numpy::unpack_ndarray_var_tys, DefinitionId, TopLevelDef}, toplevel::{DefinitionId, TopLevelDef},
typecheck::{ typecheck::{
magic_methods::Binop, magic_methods::Binop,
typedef::{FunSignature, Type, TypeEnum}, typedef::{iter_type_vars, FunSignature, Type, TypeEnum},
}, },
}; };
use inkwell::{ use inkwell::{
@ -23,10 +29,10 @@ use inkwell::{
values::{BasicValue, BasicValueEnum, FunctionValue, IntValue, PointerValue}, values::{BasicValue, BasicValueEnum, FunctionValue, IntValue, PointerValue},
IntPredicate, IntPredicate,
}; };
use itertools::{izip, Itertools};
use nac3parser::ast::{ use nac3parser::ast::{
Constant, ExcepthandlerKind, Expr, ExprKind, Location, Stmt, StmtKind, StrRef, Constant, ExcepthandlerKind, Expr, ExprKind, Location, Stmt, StmtKind, StrRef,
}; };
use std::convert::TryFrom;
/// See [`CodeGenerator::gen_var_alloc`]. /// See [`CodeGenerator::gen_var_alloc`].
pub fn gen_var<'ctx>( pub fn gen_var<'ctx>(
@ -97,8 +103,6 @@ pub fn gen_store_target<'ctx, G: CodeGenerator>(
pattern: &Expr<Option<Type>>, pattern: &Expr<Option<Type>>,
name: Option<&str>, name: Option<&str>,
) -> Result<Option<PointerValue<'ctx>>, String> { ) -> Result<Option<PointerValue<'ctx>>, String> {
let llvm_usize = generator.get_size_type(ctx.ctx);
// very similar to gen_expr, but we don't do an extra load at the end // very similar to gen_expr, but we don't do an extra load at the end
// and we flatten nested tuples // and we flatten nested tuples
Ok(Some(match &pattern.node { Ok(Some(match &pattern.node {
@ -137,65 +141,6 @@ pub fn gen_store_target<'ctx, G: CodeGenerator>(
} }
.unwrap() .unwrap()
} }
ExprKind::Subscript { value, slice, .. } => {
match ctx.unifier.get_ty_immutable(value.custom.unwrap()).as_ref() {
TypeEnum::TObj { obj_id, .. } if *obj_id == PrimDef::List.id() => {
let v = generator
.gen_expr(ctx, value)?
.unwrap()
.to_basic_value_enum(ctx, generator, value.custom.unwrap())?
.into_pointer_value();
let v = ListValue::from_ptr_val(v, llvm_usize, None);
let len = v.load_size(ctx, Some("len"));
let raw_index = generator
.gen_expr(ctx, slice)?
.unwrap()
.to_basic_value_enum(ctx, generator, slice.custom.unwrap())?
.into_int_value();
let raw_index = ctx
.builder
.build_int_s_extend(raw_index, generator.get_size_type(ctx.ctx), "sext")
.unwrap();
// handle negative index
let is_negative = ctx
.builder
.build_int_compare(
IntPredicate::SLT,
raw_index,
generator.get_size_type(ctx.ctx).const_zero(),
"is_neg",
)
.unwrap();
let adjusted = ctx.builder.build_int_add(raw_index, len, "adjusted").unwrap();
let index = ctx
.builder
.build_select(is_negative, adjusted, raw_index, "index")
.map(BasicValueEnum::into_int_value)
.unwrap();
// unsigned less than is enough, because negative index after adjustment is
// bigger than the length (for unsigned cmp)
let bound_check = ctx
.builder
.build_int_compare(IntPredicate::ULT, index, len, "inbound")
.unwrap();
ctx.make_assert(
generator,
bound_check,
"0:IndexError",
"index {0} out of bounds 0:{1}",
[Some(raw_index), Some(len), None],
slice.location,
);
v.data().ptr_offset(ctx, generator, &index, name)
}
TypeEnum::TObj { obj_id, .. } if *obj_id == PrimDef::NDArray.id() => {
todo!()
}
_ => unreachable!(),
}
}
_ => unreachable!(), _ => unreachable!(),
})) }))
} }
@ -206,70 +151,20 @@ pub fn gen_assign<'ctx, G: CodeGenerator>(
ctx: &mut CodeGenContext<'ctx, '_>, ctx: &mut CodeGenContext<'ctx, '_>,
target: &Expr<Option<Type>>, target: &Expr<Option<Type>>,
value: ValueEnum<'ctx>, value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String> { ) -> Result<(), String> {
let llvm_usize = generator.get_size_type(ctx.ctx); // See https://docs.python.org/3/reference/simple_stmts.html#assignment-statements.
match &target.node { match &target.node {
ExprKind::Tuple { elts, .. } => { ExprKind::Subscript { value: target, slice: key, .. } => {
let BasicValueEnum::StructValue(v) = // Handle "slicing" or "subscription"
value.to_basic_value_enum(ctx, generator, target.custom.unwrap())? generator.gen_setitem(ctx, target, key, value, value_ty)?;
else {
unreachable!()
};
for (i, elt) in elts.iter().enumerate() {
let v = ctx
.builder
.build_extract_value(v, u32::try_from(i).unwrap(), "struct_elem")
.unwrap();
generator.gen_assign(ctx, elt, v.into())?;
} }
} ExprKind::Tuple { elts, .. } | ExprKind::List { elts, .. } => {
ExprKind::Subscript { value: ls, slice, .. } // Fold on `"[" [target_list] "]"` and `"(" [target_list] ")"`
if matches!(&slice.node, ExprKind::Slice { .. }) => generator.gen_assign_target_list(ctx, elts, value, value_ty)?;
{
let ExprKind::Slice { lower, upper, step } = &slice.node else { unreachable!() };
let ls = generator
.gen_expr(ctx, ls)?
.unwrap()
.to_basic_value_enum(ctx, generator, ls.custom.unwrap())?
.into_pointer_value();
let ls = ListValue::from_ptr_val(ls, llvm_usize, None);
let Some((start, end, step)) =
handle_slice_indices(lower, upper, step, ctx, generator, ls.load_size(ctx, None))?
else {
return Ok(());
};
let value = value
.to_basic_value_enum(ctx, generator, target.custom.unwrap())?
.into_pointer_value();
let value = ListValue::from_ptr_val(value, llvm_usize, None);
let ty = match &*ctx.unifier.get_ty_immutable(target.custom.unwrap()) {
TypeEnum::TObj { obj_id, params, .. } if *obj_id == PrimDef::List.id() => {
*params.iter().next().unwrap().1
}
TypeEnum::TObj { obj_id, .. } if *obj_id == PrimDef::NDArray.id() => {
unpack_ndarray_var_tys(&mut ctx.unifier, target.custom.unwrap()).0
}
_ => unreachable!(),
};
let ty = ctx.get_llvm_type(generator, ty);
let Some(src_ind) = handle_slice_indices(
&None,
&None,
&None,
ctx,
generator,
value.load_size(ctx, None),
)?
else {
return Ok(());
};
list_slice_assignment(generator, ctx, ty, ls, (start, end, step), value, src_ind);
} }
_ => { _ => {
// Handle attribute and direct variable assignments.
let name = if let ExprKind::Name { id, .. } = &target.node { let name = if let ExprKind::Name { id, .. } = &target.node {
format!("{id}.addr") format!("{id}.addr")
} else { } else {
@ -293,6 +188,269 @@ pub fn gen_assign<'ctx, G: CodeGenerator>(
Ok(()) Ok(())
} }
/// See [`CodeGenerator::gen_assign_target_list`].
pub fn gen_assign_target_list<'ctx, G: CodeGenerator>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
targets: &Vec<Expr<Option<Type>>>,
value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String> {
// Deconstruct the tuple `value`
let BasicValueEnum::StructValue(tuple) = value.to_basic_value_enum(ctx, generator, value_ty)?
else {
unreachable!()
};
// NOTE: Currently, RHS's type is forced to be a Tuple by the type inferencer.
let TypeEnum::TTuple { ty: tuple_tys } = &*ctx.unifier.get_ty(value_ty) else {
unreachable!();
};
assert_eq!(tuple.get_type().count_fields() as usize, tuple_tys.len());
let tuple = (0..tuple.get_type().count_fields())
.map(|i| ctx.builder.build_extract_value(tuple, i, "item").unwrap())
.collect_vec();
// Find the starred target if it exists.
let mut starred_target_index: Option<usize> = None; // Index of the "starred" target. If it exists, there may only be one.
for (i, target) in targets.iter().enumerate() {
if matches!(target.node, ExprKind::Starred { .. }) {
assert!(starred_target_index.is_none()); // The typechecker ensures this
starred_target_index = Some(i);
}
}
if let Some(starred_target_index) = starred_target_index {
assert!(tuple_tys.len() >= targets.len() - 1); // The typechecker ensures this
let a = starred_target_index; // Number of RHS values before the starred target
let b = tuple_tys.len() - (targets.len() - 1 - starred_target_index); // Number of RHS values after the starred target
// Thus `tuple[a..b]` is assigned to the starred target.
// Handle assignment before the starred target
for (target, val, val_ty) in
izip!(&targets[..starred_target_index], &tuple[..a], &tuple_tys[..a])
{
generator.gen_assign(ctx, target, ValueEnum::Dynamic(*val), *val_ty)?;
}
// Handle assignment to the starred target
if let ExprKind::Starred { value: target, .. } = &targets[starred_target_index].node {
let vals = &tuple[a..b];
let val_tys = &tuple_tys[a..b];
// Create a sub-tuple from `value` for the starred target.
let sub_tuple_ty = ctx
.ctx
.struct_type(&vals.iter().map(BasicValueEnum::get_type).collect_vec(), false);
let psub_tuple_val =
ctx.builder.build_alloca(sub_tuple_ty, "starred_target_value_ptr").unwrap();
for (i, val) in vals.iter().enumerate() {
let pitem = ctx
.builder
.build_struct_gep(psub_tuple_val, i as u32, "starred_target_value_item")
.unwrap();
ctx.builder.build_store(pitem, *val).unwrap();
}
let sub_tuple_val =
ctx.builder.build_load(psub_tuple_val, "starred_target_value").unwrap();
// Create the typechecker type of the sub-tuple
let sub_tuple_ty = ctx.unifier.add_ty(TypeEnum::TTuple { ty: val_tys.to_vec() });
// Now assign with that sub-tuple to the starred target.
generator.gen_assign(ctx, target, ValueEnum::Dynamic(sub_tuple_val), sub_tuple_ty)?;
} else {
unreachable!() // The typechecker ensures this
}
// Handle assignment after the starred target
for (target, val, val_ty) in
izip!(&targets[starred_target_index + 1..], &tuple[b..], &tuple_tys[b..])
{
generator.gen_assign(ctx, target, ValueEnum::Dynamic(*val), *val_ty)?;
}
} else {
assert_eq!(tuple_tys.len(), targets.len()); // The typechecker ensures this
for (target, val, val_ty) in izip!(targets, tuple, tuple_tys) {
generator.gen_assign(ctx, target, ValueEnum::Dynamic(val), *val_ty)?;
}
}
Ok(())
}
/// See [`CodeGenerator::gen_setitem`].
pub fn gen_setitem<'ctx, G: CodeGenerator>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
target: &Expr<Option<Type>>,
key: &Expr<Option<Type>>,
value: ValueEnum<'ctx>,
value_ty: Type,
) -> Result<(), String> {
let target_ty = target.custom.unwrap();
let key_ty = key.custom.unwrap();
match &*ctx.unifier.get_ty(target_ty) {
TypeEnum::TObj { obj_id, params: list_params, .. }
if *obj_id == ctx.primitives.list.obj_id(&ctx.unifier).unwrap() =>
{
// Handle list item assignment
let llvm_usize = generator.get_size_type(ctx.ctx);
let target_item_ty = iter_type_vars(list_params).next().unwrap().ty;
let target = generator
.gen_expr(ctx, target)?
.unwrap()
.to_basic_value_enum(ctx, generator, target_ty)?
.into_pointer_value();
let target = ListValue::from_ptr_val(target, llvm_usize, None);
if let ExprKind::Slice { .. } = &key.node {
// Handle assigning to a slice
let ExprKind::Slice { lower, upper, step } = &key.node else { unreachable!() };
let Some((start, end, step)) = handle_slice_indices(
lower,
upper,
step,
ctx,
generator,
target.load_size(ctx, None),
)?
else {
return Ok(());
};
let value =
value.to_basic_value_enum(ctx, generator, value_ty)?.into_pointer_value();
let value = ListValue::from_ptr_val(value, llvm_usize, None);
let target_item_ty = ctx.get_llvm_type(generator, target_item_ty);
let Some(src_ind) = handle_slice_indices(
&None,
&None,
&None,
ctx,
generator,
value.load_size(ctx, None),
)?
else {
return Ok(());
};
list_slice_assignment(
generator,
ctx,
target_item_ty,
target,
(start, end, step),
value,
src_ind,
);
} else {
// Handle assigning to an index
let len = target.load_size(ctx, Some("len"));
let index = generator
.gen_expr(ctx, key)?
.unwrap()
.to_basic_value_enum(ctx, generator, key_ty)?
.into_int_value();
let index = ctx
.builder
.build_int_s_extend(index, generator.get_size_type(ctx.ctx), "sext")
.unwrap();
// handle negative index
let is_negative = ctx
.builder
.build_int_compare(
IntPredicate::SLT,
index,
generator.get_size_type(ctx.ctx).const_zero(),
"is_neg",
)
.unwrap();
let adjusted = ctx.builder.build_int_add(index, len, "adjusted").unwrap();
let index = ctx
.builder
.build_select(is_negative, adjusted, index, "index")
.map(BasicValueEnum::into_int_value)
.unwrap();
// unsigned less than is enough, because negative index after adjustment is
// bigger than the length (for unsigned cmp)
let bound_check = ctx
.builder
.build_int_compare(IntPredicate::ULT, index, len, "inbound")
.unwrap();
ctx.make_assert(
generator,
bound_check,
"0:IndexError",
"index {0} out of bounds 0:{1}",
[Some(index), Some(len), None],
key.location,
);
// Write value to index on list
let item_ptr =
target.data().ptr_offset(ctx, generator, &index, Some("list_item_ptr"));
let value = value.to_basic_value_enum(ctx, generator, value_ty)?;
ctx.builder.build_store(item_ptr, value).unwrap();
}
}
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.ndarray.obj_id(&ctx.unifier).unwrap() =>
{
// Handle NDArray item assignment
// Process target
let target = generator
.gen_expr(ctx, target)?
.unwrap()
.to_basic_value_enum(ctx, generator, target_ty)?;
let target = NDArrayObject::from_value_and_type(generator, ctx, target, target_ty);
// Process key
let key = gen_ndarray_subscript_ndindexes(generator, ctx, key)?;
// Process value
let value = value.to_basic_value_enum(ctx, generator, value_ty)?;
/*
Reference code:
```python
target = target[key]
value = np.asarray(value)
shape = np.broadcast_shape((target, value))
target = np.broadcast_to(target, shape)
value = np.broadcast_to(value, shape)
...and finally copy 1-1 from value to target.
```
*/
let target = target.index(generator, ctx, &key, "assign_target_ndarray");
let value =
split_scalar_or_ndarray(generator, ctx, value, value_ty).as_ndarray(generator, ctx);
let broadcast_result = NDArrayObject::broadcast_all(generator, ctx, &[target, value]);
let target = broadcast_result.ndarrays[0];
let value = broadcast_result.ndarrays[1];
target.copy_data_from(generator, ctx, value);
}
_ => {
panic!("encountered unknown target type: {}", ctx.unifier.stringify(target_ty));
}
}
Ok(())
}
/// See [`CodeGenerator::gen_for`]. /// See [`CodeGenerator::gen_for`].
pub fn gen_for<G: CodeGenerator>( pub fn gen_for<G: CodeGenerator>(
generator: &mut G, generator: &mut G,
@ -315,9 +473,6 @@ pub fn gen_for<G: CodeGenerator>(
let orelse_bb = let orelse_bb =
if orelse.is_empty() { cont_bb } else { ctx.ctx.append_basic_block(current, "for.orelse") }; if orelse.is_empty() { cont_bb } else { ctx.ctx.append_basic_block(current, "for.orelse") };
// Whether the iterable is a range() expression
let is_iterable_range_expr = ctx.unifier.unioned(iter.custom.unwrap(), ctx.primitives.range);
// The BB containing the increment expression // The BB containing the increment expression
let incr_bb = ctx.ctx.append_basic_block(current, "for.incr"); let incr_bb = ctx.ctx.append_basic_block(current, "for.incr");
// The BB containing the loop condition check // The BB containing the loop condition check
@ -326,17 +481,23 @@ pub fn gen_for<G: CodeGenerator>(
// store loop bb information and restore it later // store loop bb information and restore it later
let loop_bb = ctx.loop_target.replace((incr_bb, cont_bb)); let loop_bb = ctx.loop_target.replace((incr_bb, cont_bb));
let iter_ty = iter.custom.unwrap();
let iter_val = if let Some(v) = generator.gen_expr(ctx, iter)? { let iter_val = if let Some(v) = generator.gen_expr(ctx, iter)? {
v.to_basic_value_enum(ctx, generator, iter.custom.unwrap())? v.to_basic_value_enum(ctx, generator, iter_ty)?
} else { } else {
return Ok(()); return Ok(());
}; };
if is_iterable_range_expr {
match &*ctx.unifier.get_ty(iter_ty) {
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.range.obj_id(&ctx.unifier).unwrap() =>
{
let iter_val = RangeValue::from_ptr_val(iter_val.into_pointer_value(), Some("range")); let iter_val = RangeValue::from_ptr_val(iter_val.into_pointer_value(), Some("range"));
// Internal variable for loop; Cannot be assigned // Internal variable for loop; Cannot be assigned
let i = generator.gen_var_alloc(ctx, int32.into(), Some("for.i.addr"))?; let i = generator.gen_var_alloc(ctx, int32.into(), Some("for.i.addr"))?;
// Variable declared in "target" expression of the loop; Can be reassigned *or* shadowed // Variable declared in "target" expression of the loop; Can be reassigned *or* shadowed
let Some(target_i) = generator.gen_store_target(ctx, target, Some("for.target.addr"))? let Some(target_i) =
generator.gen_store_target(ctx, target, Some("for.target.addr"))?
else { else {
unreachable!() unreachable!()
}; };
@ -345,8 +506,10 @@ pub fn gen_for<G: CodeGenerator>(
ctx.builder.build_store(i, start).unwrap(); ctx.builder.build_store(i, start).unwrap();
// Check "If step is zero, ValueError is raised." // Check "If step is zero, ValueError is raised."
let rangenez = let rangenez = ctx
ctx.builder.build_int_compare(IntPredicate::NE, step, int32.const_zero(), "").unwrap(); .builder
.build_int_compare(IntPredicate::NE, step, int32.const_zero(), "")
.unwrap();
ctx.make_assert( ctx.make_assert(
generator, generator,
rangenez, rangenez,
@ -363,7 +526,10 @@ pub fn gen_for<G: CodeGenerator>(
.build_conditional_branch( .build_conditional_branch(
gen_in_range_check( gen_in_range_check(
ctx, ctx,
ctx.builder.build_load(i, "").map(BasicValueEnum::into_int_value).unwrap(), ctx.builder
.build_load(i, "")
.map(BasicValueEnum::into_int_value)
.unwrap(),
stop, stop,
step, step,
), ),
@ -393,7 +559,10 @@ pub fn gen_for<G: CodeGenerator>(
) )
.unwrap(); .unwrap();
generator.gen_block(ctx, body.iter())?; generator.gen_block(ctx, body.iter())?;
} else { }
TypeEnum::TObj { obj_id, params: list_params, .. }
if *obj_id == ctx.primitives.list.obj_id(&ctx.unifier).unwrap() =>
{
let index_addr = generator.gen_var_alloc(ctx, size_t.into(), Some("for.index.addr"))?; let index_addr = generator.gen_var_alloc(ctx, size_t.into(), Some("for.index.addr"))?;
ctx.builder.build_store(index_addr, size_t.const_zero()).unwrap(); ctx.builder.build_store(index_addr, size_t.const_zero()).unwrap();
let len = ctx let len = ctx
@ -431,9 +600,14 @@ pub fn gen_for<G: CodeGenerator>(
.map(BasicValueEnum::into_int_value) .map(BasicValueEnum::into_int_value)
.unwrap(); .unwrap();
let val = ctx.build_gep_and_load(arr_ptr, &[index], Some("val")); let val = ctx.build_gep_and_load(arr_ptr, &[index], Some("val"));
generator.gen_assign(ctx, target, val.into())?; let val_ty = iter_type_vars(list_params).next().unwrap().ty;
generator.gen_assign(ctx, target, val.into(), val_ty)?;
generator.gen_block(ctx, body.iter())?; generator.gen_block(ctx, body.iter())?;
} }
_ => {
panic!("unsupported for loop iterator type: {}", ctx.unifier.stringify(iter_ty));
}
}
for (k, (_, _, counter)) in &var_assignment { for (k, (_, _, counter)) in &var_assignment {
let (_, static_val, counter2) = ctx.var_assignment.get_mut(k).unwrap(); let (_, static_val, counter2) = ctx.var_assignment.get_mut(k).unwrap();
@ -494,6 +668,7 @@ pub struct BreakContinueHooks<'ctx> {
pub fn gen_for_callback<'ctx, 'a, G, I, InitFn, CondFn, BodyFn, UpdateFn>( pub fn gen_for_callback<'ctx, 'a, G, I, InitFn, CondFn, BodyFn, UpdateFn>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>, ctx: &mut CodeGenContext<'ctx, 'a>,
label: Option<&str>,
init: InitFn, init: InitFn,
cond: CondFn, cond: CondFn,
body: BodyFn, body: BodyFn,
@ -504,18 +679,24 @@ where
I: Clone, I: Clone,
InitFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<I, String>, InitFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<I, String>,
CondFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, I) -> Result<IntValue<'ctx>, String>, CondFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, I) -> Result<IntValue<'ctx>, String>,
BodyFn: BodyFn: FnOnce(
FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, BreakContinueHooks, I) -> Result<(), String>, &mut G,
&mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks<'ctx>,
I,
) -> Result<(), String>,
UpdateFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, I) -> Result<(), String>, UpdateFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, I) -> Result<(), String>,
{ {
let label = label.unwrap_or("for");
let current_bb = ctx.builder.get_insert_block().unwrap(); let current_bb = ctx.builder.get_insert_block().unwrap();
let init_bb = ctx.ctx.insert_basic_block_after(current_bb, "for.init"); let init_bb = ctx.ctx.insert_basic_block_after(current_bb, &format!("{label}.init"));
// The BB containing the loop condition check // The BB containing the loop condition check
let cond_bb = ctx.ctx.insert_basic_block_after(init_bb, "for.cond"); let cond_bb = ctx.ctx.insert_basic_block_after(init_bb, &format!("{label}.cond"));
let body_bb = ctx.ctx.insert_basic_block_after(cond_bb, "for.body"); let body_bb = ctx.ctx.insert_basic_block_after(cond_bb, &format!("{label}.body"));
// The BB containing the increment expression // The BB containing the increment expression
let update_bb = ctx.ctx.insert_basic_block_after(body_bb, "for.update"); let update_bb = ctx.ctx.insert_basic_block_after(body_bb, &format!("{label}.update"));
let cont_bb = ctx.ctx.insert_basic_block_after(update_bb, "for.end"); let cont_bb = ctx.ctx.insert_basic_block_after(update_bb, &format!("{label}.end"));
// store loop bb information and restore it later // store loop bb information and restore it later
let loop_bb = ctx.loop_target.replace((update_bb, cont_bb)); let loop_bb = ctx.loop_target.replace((update_bb, cont_bb));
@ -572,6 +753,7 @@ where
pub fn gen_for_callback_incrementing<'ctx, 'a, G, BodyFn>( pub fn gen_for_callback_incrementing<'ctx, 'a, G, BodyFn>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>, ctx: &mut CodeGenContext<'ctx, 'a>,
label: Option<&str>,
init_val: IntValue<'ctx>, init_val: IntValue<'ctx>,
max_val: (IntValue<'ctx>, bool), max_val: (IntValue<'ctx>, bool),
body: BodyFn, body: BodyFn,
@ -582,7 +764,7 @@ where
BodyFn: FnOnce( BodyFn: FnOnce(
&mut G, &mut G,
&mut CodeGenContext<'ctx, 'a>, &mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks, BreakContinueHooks<'ctx>,
IntValue<'ctx>, IntValue<'ctx>,
) -> Result<(), String>, ) -> Result<(), String>,
{ {
@ -591,6 +773,7 @@ where
gen_for_callback( gen_for_callback(
generator, generator,
ctx, ctx,
label,
|generator, ctx| { |generator, ctx| {
let i_addr = generator.gen_var_alloc(ctx, init_val_t.into(), None)?; let i_addr = generator.gen_var_alloc(ctx, init_val_t.into(), None)?;
ctx.builder.build_store(i_addr, init_val).unwrap(); ctx.builder.build_store(i_addr, init_val).unwrap();
@ -642,9 +825,11 @@ where
/// - `step_fn`: A lambda of IR statements that retrieves the `step` value of the `range`-like /// - `step_fn`: A lambda of IR statements that retrieves the `step` value of the `range`-like
/// iterable. This value will be extended to the size of `start`. /// iterable. This value will be extended to the size of `start`.
/// - `body_fn`: A lambda of IR statements within the loop body. /// - `body_fn`: A lambda of IR statements within the loop body.
#[allow(clippy::too_many_arguments)]
pub fn gen_for_range_callback<'ctx, 'a, G, StartFn, StopFn, StepFn, BodyFn>( pub fn gen_for_range_callback<'ctx, 'a, G, StartFn, StopFn, StepFn, BodyFn>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>, ctx: &mut CodeGenContext<'ctx, 'a>,
label: Option<&str>,
is_unsigned: bool, is_unsigned: bool,
start_fn: StartFn, start_fn: StartFn,
(stop_fn, stop_inclusive): (StopFn, bool), (stop_fn, stop_inclusive): (StopFn, bool),
@ -656,13 +841,19 @@ where
StartFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>, StartFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>,
StopFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>, StopFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>,
StepFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>, StepFn: Fn(&mut G, &mut CodeGenContext<'ctx, 'a>) -> Result<IntValue<'ctx>, String>,
BodyFn: FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, IntValue<'ctx>) -> Result<(), String>, BodyFn: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks,
IntValue<'ctx>,
) -> Result<(), String>,
{ {
let init_val_t = start_fn(generator, ctx).map(IntValue::get_type).unwrap(); let init_val_t = start_fn(generator, ctx).map(IntValue::get_type).unwrap();
gen_for_callback( gen_for_callback(
generator, generator,
ctx, ctx,
label,
|generator, ctx| { |generator, ctx| {
let i_addr = generator.gen_var_alloc(ctx, init_val_t.into(), None)?; let i_addr = generator.gen_var_alloc(ctx, init_val_t.into(), None)?;
@ -720,10 +911,10 @@ where
Ok(cond) Ok(cond)
}, },
|generator, ctx, _, (i_addr, _)| { |generator, ctx, hooks, (i_addr, _)| {
let i = ctx.builder.build_load(i_addr, "").map(BasicValueEnum::into_int_value).unwrap(); let i = ctx.builder.build_load(i_addr, "").map(BasicValueEnum::into_int_value).unwrap();
body_fn(generator, ctx, i) body_fn(generator, ctx, hooks, i)
}, },
|generator, ctx, (i_addr, _)| { |generator, ctx, (i_addr, _)| {
let i = ctx.builder.build_load(i_addr, "").map(BasicValueEnum::into_int_value).unwrap(); let i = ctx.builder.build_load(i_addr, "").map(BasicValueEnum::into_int_value).unwrap();
@ -1113,47 +1304,36 @@ pub fn exn_constructor<'ctx>(
pub fn gen_raise<'ctx, G: CodeGenerator + ?Sized>( pub fn gen_raise<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G, generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>, ctx: &mut CodeGenContext<'ctx, '_>,
exception: Option<&BasicValueEnum<'ctx>>, exception: Option<Ptr<'ctx, StructModel<Exception>>>,
loc: Location, loc: Location,
) { ) {
if let Some(exception) = exception { if let Some(pexn) = exception {
unsafe { let i32_model = IntModel(Int32);
let int32 = ctx.ctx.i32_type(); let cslice_model = StructModel(CSlice);
let zero = int32.const_zero();
let exception = exception.into_pointer_value();
let file_ptr = ctx
.builder
.build_in_bounds_gep(exception, &[zero, int32.const_int(1, false)], "file_ptr")
.unwrap();
let filename = ctx.gen_string(generator, loc.file.0);
ctx.builder.build_store(file_ptr, filename).unwrap();
let row_ptr = ctx
.builder
.build_in_bounds_gep(exception, &[zero, int32.const_int(2, false)], "row_ptr")
.unwrap();
ctx.builder.build_store(row_ptr, int32.const_int(loc.row as u64, false)).unwrap();
let col_ptr = ctx
.builder
.build_in_bounds_gep(exception, &[zero, int32.const_int(3, false)], "col_ptr")
.unwrap();
ctx.builder.build_store(col_ptr, int32.const_int(loc.column as u64, false)).unwrap();
let current_fun = ctx.builder.get_insert_block().unwrap().get_parent().unwrap(); // Get and store filename
let fun_name = ctx.gen_string(generator, current_fun.get_name().to_str().unwrap()); let filename = loc.file.0;
let name_ptr = ctx let filename = ctx.gen_string(generator, &String::from(filename)).value;
.builder let filename = cslice_model.check_value(generator, ctx.ctx, filename).unwrap();
.build_in_bounds_gep(exception, &[zero, int32.const_int(4, false)], "name_ptr") pexn.set(ctx, |f| f.filename, filename);
.unwrap();
ctx.builder.build_store(name_ptr, fun_name).unwrap(); let row = i32_model.constant(generator, ctx.ctx, loc.row as u64);
} pexn.set(ctx, |f| f.line, row);
let column = i32_model.constant(generator, ctx.ctx, loc.column as u64);
pexn.set(ctx, |f| f.column, column);
let current_fn = ctx.builder.get_insert_block().unwrap().get_parent().unwrap();
let fn_name = ctx.gen_string(generator, current_fn.get_name().to_str().unwrap());
pexn.set(ctx, |f| f.function, fn_name);
let raise = get_builtins(generator, ctx, "__nac3_raise"); let raise = get_builtins(generator, ctx, "__nac3_raise");
let exception = *exception; ctx.build_call_or_invoke(raise, &[pexn.value.into()], "raise");
ctx.build_call_or_invoke(raise, &[exception], "raise");
} else { } else {
let resume = get_builtins(generator, ctx, "__nac3_resume"); let resume = get_builtins(generator, ctx, "__nac3_resume");
ctx.build_call_or_invoke(resume, &[], "resume"); ctx.build_call_or_invoke(resume, &[], "resume");
} }
ctx.builder.build_unreachable().unwrap(); ctx.builder.build_unreachable().unwrap();
} }
@ -1575,14 +1755,14 @@ pub fn gen_stmt<G: CodeGenerator>(
} }
StmtKind::AnnAssign { target, value, .. } => { StmtKind::AnnAssign { target, value, .. } => {
if let Some(value) = value { if let Some(value) = value {
let Some(value) = generator.gen_expr(ctx, value)? else { return Ok(()) }; let Some(value_enum) = generator.gen_expr(ctx, value)? else { return Ok(()) };
generator.gen_assign(ctx, target, value)?; generator.gen_assign(ctx, target, value_enum, value.custom.unwrap())?;
} }
} }
StmtKind::Assign { targets, value, .. } => { StmtKind::Assign { targets, value, .. } => {
let Some(value) = generator.gen_expr(ctx, value)? else { return Ok(()) }; let Some(value_enum) = generator.gen_expr(ctx, value)? else { return Ok(()) };
for target in targets { for target in targets {
generator.gen_assign(ctx, target, value.clone())?; generator.gen_assign(ctx, target, value_enum.clone(), value.custom.unwrap())?;
} }
} }
StmtKind::Continue { .. } => { StmtKind::Continue { .. } => {
@ -1596,15 +1776,16 @@ pub fn gen_stmt<G: CodeGenerator>(
StmtKind::For { .. } => generator.gen_for(ctx, stmt)?, StmtKind::For { .. } => generator.gen_for(ctx, stmt)?,
StmtKind::With { .. } => generator.gen_with(ctx, stmt)?, StmtKind::With { .. } => generator.gen_with(ctx, stmt)?,
StmtKind::AugAssign { target, op, value, .. } => { StmtKind::AugAssign { target, op, value, .. } => {
let value = gen_binop_expr( let value_enum = gen_binop_expr(
generator, generator,
ctx, ctx,
target, target,
Binop::aug_assign(*op), Binop::aug_assign(*op),
value, value,
stmt.location, stmt.location,
)?; )?
generator.gen_assign(ctx, target, value.unwrap())?; .unwrap();
generator.gen_assign(ctx, target, value_enum, value.custom.unwrap())?;
} }
StmtKind::Try { .. } => gen_try(generator, ctx, stmt)?, StmtKind::Try { .. } => gen_try(generator, ctx, stmt)?,
StmtKind::Raise { exc, .. } => { StmtKind::Raise { exc, .. } => {
@ -1614,30 +1795,41 @@ pub fn gen_stmt<G: CodeGenerator>(
} else { } else {
return Ok(()); return Ok(());
}; };
gen_raise(generator, ctx, Some(&exc), stmt.location);
let pexn_model = PtrModel(StructModel(Exception));
let exn = pexn_model.check_value(generator, ctx.ctx, exc).unwrap();
gen_raise(generator, ctx, Some(exn), stmt.location);
} else { } else {
gen_raise(generator, ctx, None, stmt.location); gen_raise(generator, ctx, None, stmt.location);
} }
} }
StmtKind::Assert { test, msg, .. } => { StmtKind::Assert { test, msg, .. } => {
let test = if let Some(v) = generator.gen_expr(ctx, test)? { let byte_model = IntModel(Byte);
v.to_basic_value_enum(ctx, generator, test.custom.unwrap())? let cslice_model = StructModel(CSlice);
} else {
let Some(test) = generator.gen_expr(ctx, test)? else {
return Ok(()); return Ok(());
}; };
let test = test.to_basic_value_enum(ctx, generator, ctx.primitives.bool)?;
let test = byte_model.check_value(generator, ctx.ctx, test).unwrap(); // Python `bool` is represented as `i8` in nac3core
// Check `msg`
let err_msg = match msg { let err_msg = match msg {
Some(msg) => { Some(msg) => {
if let Some(v) = generator.gen_expr(ctx, msg)? { let Some(msg) = generator.gen_expr(ctx, msg)? else {
v.to_basic_value_enum(ctx, generator, msg.custom.unwrap())?
} else {
return Ok(()); return Ok(());
} };
let msg = msg.to_basic_value_enum(ctx, generator, ctx.primitives.str)?;
cslice_model.check_value(generator, ctx.ctx, msg).unwrap()
} }
None => ctx.gen_string(generator, ""), None => ctx.gen_string(generator, ""),
}; };
ctx.make_assert_impl( ctx.make_assert_impl(
generator, generator,
test.into_int_value(), test.value,
"0:AssertionError", "0:AssertionError",
err_msg, err_msg,
[None, None, None], [None, None, None],

View File

@ -0,0 +1,45 @@
use inkwell::context::Context;
use crate::codegen::{model::*, CodeGenerator};
/// Fields of [`CSlice<'ctx>`].
pub struct CSliceFields<'ctx, F: FieldTraversal<'ctx>> {
/// Pointer to data.
pub base: F::Out<PtrModel<IntModel<Byte>>>,
/// Number of bytes of data.
pub len: F::Out<IntModel<SizeT>>,
}
/// See <https://crates.io/crates/cslice>.
///
/// Additionally, see <https://github.com/m-labs/artiq/blob/b0d2705c385f64b6e6711c1726cd9178f40b598e/artiq/firmware/libeh/eh_artiq.rs>)
/// for ARTIQ-specific notes.
#[derive(Debug, Clone, Copy, Default)]
pub struct CSlice;
impl<'ctx> StructKind<'ctx> for CSlice {
type Fields<F: FieldTraversal<'ctx>> = CSliceFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields { base: traversal.add_auto("base"), len: traversal.add_auto("len") }
}
}
impl StructModel<CSlice> {
/// Create a [`CSlice`].
///
/// `base` and `len` must be LLVM global constants.
pub fn create_const<'ctx, G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
base: Ptr<'ctx, IntModel<Byte>>,
len: Int<'ctx, SizeT>,
) -> Struct<'ctx, CSlice> {
let value = self
.0
.get_struct_type(generator, ctx)
.const_named_struct(&[base.value.into(), len.value.into()]);
self.believe_value(value)
}
}

View File

@ -0,0 +1,61 @@
use crate::codegen::model::*;
use super::cslice::CSlice;
/// The LLVM int type of an Exception ID.
pub type ExceptionId = Int32;
/// Fields of [`Exception<'ctx>`]
///
/// The definition came from `pub struct Exception<'a>` in
/// <https://github.com/m-labs/artiq/blob/master/artiq/firmware/libeh/eh_artiq.rs>.
pub struct ExceptionFields<'ctx, F: FieldTraversal<'ctx>> {
/// nac3core's ID of the exception
pub id: F::Out<IntModel<ExceptionId>>,
/// The name of the file this `Exception` was raised in.
pub filename: F::Out<StructModel<CSlice>>,
/// The line number in the file this `Exception` was raised in.
pub line: F::Out<IntModel<Int32>>,
/// The column number in the file this `Exception` was raised in.
pub column: F::Out<IntModel<Int32>>,
/// The name of the Python function this `Exception` was raised in.
pub function: F::Out<StructModel<CSlice>>,
/// The message of this Exception.
///
/// The message can optionally contain integer parameters `{0}`, `{1}`, and `{2}` in its string,
/// where they will be substituted by `params[0]`, `params[1]`, and `params[2]` respectively (as `int64_t`s).
/// Here is an example:
///
/// ```ignore
/// "Index {0} is out of bounds! List only has {1} element(s)."
/// ```
///
/// In this case, `params[0]` and `params[1]` must be specified, and `params[2]` is ***unused***.
/// Having only 3 parameters is a constraint in ARTIQ.
pub msg: F::Out<StructModel<CSlice>>,
pub params: [F::Out<IntModel<Int64>>; 3],
}
/// nac3core & ARTIQ's Exception
#[derive(Debug, Clone, Copy, Default)]
pub struct Exception;
impl<'ctx> StructKind<'ctx> for Exception {
type Fields<F: FieldTraversal<'ctx>> = ExceptionFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields {
id: traversal.add_auto("id"),
filename: traversal.add_auto("filename"),
line: traversal.add_auto("line"),
column: traversal.add_auto("column"),
function: traversal.add_auto("function"),
msg: traversal.add_auto("msg"),
params: [
traversal.add_auto("params[0]"),
traversal.add_auto("params[1]"),
traversal.add_auto("params[2]"),
],
}
}
}

View File

@ -0,0 +1,70 @@
use inkwell::values::BasicValue;
use crate::{
codegen::{model::*, CodeGenContext, CodeGenerator},
typecheck::typedef::{iter_type_vars, Type, TypeEnum},
};
/// Fields of [`List`]
pub struct ListFields<'ctx, F: FieldTraversal<'ctx>, Item: Model<'ctx>, Size: IntKind<'ctx>> {
/// Array pointer to content
pub items: F::Out<PtrModel<Item>>,
/// Number of items in the array
pub len: F::Out<IntModel<Size>>,
}
/// A list in NAC3.
#[derive(Debug, Clone, Copy, Default)]
pub struct List<Item, Len> {
/// Model of the list items
pub item: Item,
/// Model of type of integer storing the number of items on the list
pub len: Len,
}
impl<'ctx, Item: Model<'ctx>, Size: IntKind<'ctx>> StructKind<'ctx> for List<Item, Size> {
type Fields<F: FieldTraversal<'ctx>> = ListFields<'ctx, F, Item, Size>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields {
items: traversal.add("data", PtrModel(self.item)),
len: traversal.add("len", IntModel(self.len)),
}
}
}
/// A NAC3 Python List object.
pub struct ListObject<'ctx> {
/// Typechecker type of the list items
pub item_type: Type,
pub value: Ptr<'ctx, StructModel<List<AnyModel<'ctx>, SizeT>>>,
}
impl<'ctx> ListObject<'ctx> {
/// Create a [`ListObject`] from an LLVM value and its typechecker [`Type`].
pub fn from_value_and_type<V: BasicValue<'ctx>, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
list_val: V,
list_type: Type,
) -> Self {
// Check typechecker type and extract `item_type`
let item_type = match &*ctx.unifier.get_ty(list_type) {
TypeEnum::TObj { obj_id, params, .. }
if *obj_id == ctx.primitives.list.obj_id(&ctx.unifier).unwrap() =>
{
iter_type_vars(params).next().unwrap().ty // Extract `item_type`
}
_ => {
panic!("Expecting type to be a list, but got {}", ctx.unifier.stringify(list_type))
}
};
let item_model = AnyModel(ctx.get_llvm_type(generator, item_type));
let plist_model = PtrModel(StructModel(List { item: item_model, len: SizeT }));
// Create object
let value = plist_model.check_value(generator, ctx.ctx, list_val).unwrap();
ListObject { item_type, value }
}
}

View File

@ -0,0 +1,5 @@
pub mod cslice;
pub mod exception;
pub mod list;
pub mod ndarray;
pub mod tuple;

View File

@ -0,0 +1,134 @@
use itertools::Itertools;
use crate::{
codegen::{
irrt::{call_nac3_ndarray_broadcast_shapes, call_nac3_ndarray_broadcast_to},
model::*,
CodeGenContext, CodeGenerator,
},
typecheck::numpy::get_broadcast_all_ndims,
};
use super::NDArrayObject;
/// Fields of [`ShapeEntry`]
pub struct ShapeEntryFields<'ctx, F: FieldTraversal<'ctx>> {
pub ndims: F::Out<IntModel<SizeT>>,
pub shape: F::Out<PtrModel<IntModel<SizeT>>>,
}
/// An IRRT structure used in broadcasting.
#[derive(Debug, Clone, Copy, Default)]
pub struct ShapeEntry;
impl<'ctx> StructKind<'ctx> for ShapeEntry {
type Fields<F: FieldTraversal<'ctx>> = ShapeEntryFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields { ndims: traversal.add_auto("ndims"), shape: traversal.add_auto("shape") }
}
}
impl<'ctx> NDArrayObject<'ctx> {
/// Create a broadcast view on this ndarray with a target shape.
///
/// * `target_ndims` - The ndims type after broadcasting to the given shape.
/// The caller has to figure this out for this function.
/// * `target_shape` - An array pointer pointing to the target shape.
#[must_use]
pub fn broadcast_to<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
target_ndims: u64,
target_shape: Ptr<'ctx, IntModel<SizeT>>,
) -> Self {
let broadcast_ndarray = NDArrayObject::alloca_uninitialized(
generator,
ctx,
self.dtype,
target_ndims,
"broadcast_ndarray_to_dst",
);
broadcast_ndarray.copy_shape_from_array(generator, ctx, target_shape);
call_nac3_ndarray_broadcast_to(generator, ctx, self.value, broadcast_ndarray.value);
broadcast_ndarray
}
}
/// A result produced by [`broadcast_all_ndarrays`]
#[derive(Debug, Clone)]
pub struct BroadcastAllResult<'ctx> {
/// The statically known `ndims` of the broadcast result.
pub ndims: u64,
/// The broadcasting shape.
pub shape: Ptr<'ctx, IntModel<SizeT>>,
/// Broadcasted views on the inputs.
///
/// All of them will have `shape` [`BroadcastAllResult::shape`] and
/// `ndims` [`BroadcastAllResult::ndims`]. The length of the vector
/// is the same as the input.
pub ndarrays: Vec<NDArrayObject<'ctx>>,
}
impl<'ctx> NDArrayObject<'ctx> {
// TODO: DOCUMENT: Behaves like `np.broadcast()`, except returns results differently.
pub fn broadcast_all<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ndarrays: &[Self],
) -> BroadcastAllResult<'ctx> {
assert!(!ndarrays.is_empty());
let sizet_model = IntModel(SizeT);
let shape_model = StructModel(ShapeEntry);
let broadcast_ndims = get_broadcast_all_ndims(ndarrays.iter().map(|ndarray| ndarray.ndims));
// Prepare input shape entries
let num_shape_entries =
sizet_model.constant(generator, ctx.ctx, u64::try_from(ndarrays.len()).unwrap());
let shape_entries =
shape_model.array_alloca(generator, ctx, num_shape_entries.value, "shape_entries");
for (i, ndarray) in ndarrays.iter().enumerate() {
let i = sizet_model.constant(generator, ctx.ctx, i as u64).value;
let shape_entry = shape_entries.offset(generator, ctx, i, "shape_entry");
let this_ndims = ndarray.value.get(generator, ctx, |f| f.ndims, "this_ndims");
shape_entry.set(ctx, |f| f.ndims, this_ndims);
let this_shape = ndarray.value.get(generator, ctx, |f| f.shape, "this_shape");
shape_entry.set(ctx, |f| f.shape, this_shape);
}
// Prepare destination
let broadcast_ndims_llvm = sizet_model.constant(generator, ctx.ctx, broadcast_ndims);
let broadcast_shape =
sizet_model.array_alloca(generator, ctx, broadcast_ndims_llvm.value, "dst_shape");
// Compute the target broadcast shape `dst_shape` for all ndarrays.
call_nac3_ndarray_broadcast_shapes(
generator,
ctx,
num_shape_entries,
shape_entries,
broadcast_ndims_llvm,
broadcast_shape,
);
// Now that we know about the broadcasting shape, broadcast all the inputs.
// Broadcast all the inputs to shape `dst_shape`.
let broadcast_ndarrays: Vec<_> = ndarrays
.iter()
.map(|ndarray| ndarray.broadcast_to(generator, ctx, broadcast_ndims, broadcast_shape))
.collect_vec();
BroadcastAllResult {
ndims: broadcast_ndims,
shape: broadcast_shape,
ndarrays: broadcast_ndarrays,
}
}
}

View File

@ -0,0 +1,562 @@
use inkwell::{
values::{BasicValue, FloatValue, IntValue},
FloatPredicate, IntPredicate,
};
use itertools::Itertools;
use crate::{
codegen::{
llvm_intrinsics,
model::{
util::{gen_for_model_auto, gen_if_model},
*,
},
CodeGenContext, CodeGenerator,
},
typecheck::typedef::Type,
};
use super::{scalar::ScalarObject, NDArrayObject};
/// Convenience function to crash the program when types of arguments are not supported.
/// Used to be debugged with a stacktrace.
fn unsupported_type<I>(ctx: &CodeGenContext<'_, '_>, tys: I) -> !
where
I: IntoIterator<Item = Type>,
{
unreachable!(
"unsupported types found '{}'",
tys.into_iter().map(|ty| format!("'{}'", ctx.unifier.stringify(ty))).join(", "),
)
}
#[derive(Debug, Clone, Copy)]
pub enum FloorOrCeil {
Floor,
Ceil,
}
#[derive(Debug, Clone, Copy)]
pub enum MinOrMax {
Min,
Max,
}
fn signed_ints(ctx: &CodeGenContext<'_, '_>) -> Vec<Type> {
vec![ctx.primitives.int32, ctx.primitives.int64]
}
fn unsigned_ints(ctx: &CodeGenContext<'_, '_>) -> Vec<Type> {
vec![ctx.primitives.uint32, ctx.primitives.uint64]
}
fn ints(ctx: &CodeGenContext<'_, '_>) -> Vec<Type> {
vec![ctx.primitives.int32, ctx.primitives.int64, ctx.primitives.uint32, ctx.primitives.uint64]
}
fn int_like(ctx: &CodeGenContext<'_, '_>) -> Vec<Type> {
vec![
ctx.primitives.bool,
ctx.primitives.int32,
ctx.primitives.int64,
ctx.primitives.uint32,
ctx.primitives.uint64,
]
}
fn cast_to_int_conversion<'ctx, 'a, G, HandleFloatFn>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
scalar: ScalarObject<'ctx>,
ret_int_dtype: Type,
handle_float: HandleFloatFn,
) -> ScalarObject<'ctx>
where
G: CodeGenerator + ?Sized,
HandleFloatFn:
FnOnce(&mut G, &mut CodeGenContext<'ctx, 'a>, FloatValue<'ctx>) -> IntValue<'ctx>,
{
let ret_int_dtype_llvm = ctx.get_llvm_type(generator, ret_int_dtype).into_int_type();
let result = if ctx.unifier.unioned(scalar.dtype, ctx.primitives.float) {
// Special handling for floats
let n = scalar.value.into_float_value();
handle_float(generator, ctx, n)
} else if ctx.unifier.unioned_any(scalar.dtype, int_like(ctx)) {
let n = scalar.value.into_int_value();
if n.get_type().get_bit_width() <= ret_int_dtype_llvm.get_bit_width() {
ctx.builder.build_int_z_extend(n, ret_int_dtype_llvm, "zext").unwrap()
} else {
ctx.builder.build_int_truncate(n, ret_int_dtype_llvm, "trunc").unwrap()
}
} else {
unsupported_type(ctx, [scalar.dtype]);
};
assert_eq!(ret_int_dtype_llvm.get_bit_width(), result.get_type().get_bit_width()); // Sanity check
ScalarObject { value: result.into(), dtype: ret_int_dtype }
}
impl<'ctx> ScalarObject<'ctx> {
/// Convenience function. Assume this scalar has typechecker type float64, get its underlying LLVM value.
///
/// Panic if the type is wrong.
pub fn into_float64(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> FloatValue<'ctx> {
if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
self.value.into_float_value() // self.value must be a FloatValue
} else {
panic!("not a float type")
}
}
/// Convenience function. Assume this scalar has typechecker type int32, get its underlying LLVM value.
///
/// Panic if the type is wrong.
pub fn into_int32(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> IntValue<'ctx> {
if ctx.unifier.unioned(self.dtype, ctx.primitives.int32) {
let value = self.value.into_int_value();
debug_assert_eq!(value.get_type().get_bit_width(), 32); // Sanity check
value
} else {
panic!("not a float type")
}
}
/// Compare two scalars. Only int-to-int and float-to-float comparisons are allowed.
/// Panic otherwise.
pub fn compare<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
lhs: ScalarObject<'ctx>,
rhs: ScalarObject<'ctx>,
int_predicate: IntPredicate,
float_predicate: FloatPredicate,
name: &str,
) -> Int<'ctx, Bool> {
if !ctx.unifier.unioned(lhs.dtype, rhs.dtype) {
unsupported_type(ctx, [lhs.dtype, rhs.dtype]);
}
let bool_model = IntModel(Bool);
let common_ty = lhs.dtype;
let result = if ctx.unifier.unioned(common_ty, ctx.primitives.float) {
let lhs = lhs.value.into_float_value();
let rhs = rhs.value.into_float_value();
ctx.builder.build_float_compare(float_predicate, lhs, rhs, name).unwrap()
} else if ctx.unifier.unioned_any(common_ty, int_like(ctx)) {
let lhs = lhs.value.into_int_value();
let rhs = rhs.value.into_int_value();
ctx.builder.build_int_compare(int_predicate, lhs, rhs, name).unwrap()
} else {
unsupported_type(ctx, [lhs.dtype, rhs.dtype]);
};
bool_model.check_value(generator, ctx.ctx, result).unwrap()
}
/// Invoke NAC3's builtin `int32()`.
#[must_use]
pub fn cast_to_int32<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Self {
cast_to_int_conversion(
generator,
ctx,
*self,
ctx.primitives.int32,
|_generator, ctx, input| {
let n =
ctx.builder.build_float_to_signed_int(input, ctx.ctx.i64_type(), "").unwrap();
ctx.builder.build_int_truncate(n, ctx.ctx.i32_type(), "conv").unwrap()
},
)
}
/// Invoke NAC3's builtin `int64()`.
#[must_use]
pub fn cast_to_int64<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Self {
cast_to_int_conversion(
generator,
ctx,
*self,
ctx.primitives.int64,
|_generator, ctx, input| {
ctx.builder.build_float_to_signed_int(input, ctx.ctx.i64_type(), "").unwrap()
},
)
}
/// Invoke NAC3's builtin `uint32()`.
#[must_use]
pub fn cast_to_uint32<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Self {
cast_to_int_conversion(
generator,
ctx,
*self,
ctx.primitives.uint32,
|_generator, ctx, n| {
let n_gez = ctx
.builder
.build_float_compare(FloatPredicate::OGE, n, n.get_type().const_zero(), "")
.unwrap();
let to_int32 =
ctx.builder.build_float_to_signed_int(n, ctx.ctx.i32_type(), "").unwrap();
let to_uint64 =
ctx.builder.build_float_to_unsigned_int(n, ctx.ctx.i64_type(), "").unwrap();
ctx.builder
.build_select(
n_gez,
ctx.builder.build_int_truncate(to_uint64, ctx.ctx.i32_type(), "").unwrap(),
to_int32,
"conv",
)
.unwrap()
.into_int_value()
},
)
}
/// Invoke NAC3's builtin `uint64()`.
#[must_use]
pub fn cast_to_uint64<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Self {
cast_to_int_conversion(
generator,
ctx,
*self,
ctx.primitives.uint64,
|_generator, ctx, n| {
let val_gez = ctx
.builder
.build_float_compare(FloatPredicate::OGE, n, n.get_type().const_zero(), "")
.unwrap();
let to_int64 =
ctx.builder.build_float_to_signed_int(n, ctx.ctx.i64_type(), "").unwrap();
let to_uint64 =
ctx.builder.build_float_to_unsigned_int(n, ctx.ctx.i64_type(), "").unwrap();
ctx.builder
.build_select(val_gez, to_uint64, to_int64, "conv")
.unwrap()
.into_int_value()
},
)
}
/// Invoke NAC3's builtin `bool()`.
#[must_use]
pub fn cast_to_bool(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> Self {
// TODO: Why is the original code being so lax about i1 and i8 for the returned int type?
let result = if ctx.unifier.unioned(self.dtype, ctx.primitives.bool) {
self.value.into_int_value()
} else if ctx.unifier.unioned_any(self.dtype, ints(ctx)) {
let n = self.value.into_int_value();
ctx.builder
.build_int_compare(inkwell::IntPredicate::NE, n, n.get_type().const_zero(), "bool")
.unwrap()
} else if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let n = self.value.into_float_value();
ctx.builder
.build_float_compare(FloatPredicate::UNE, n, n.get_type().const_zero(), "bool")
.unwrap()
} else {
unsupported_type(ctx, [self.dtype])
};
ScalarObject { dtype: ctx.primitives.bool, value: result.as_basic_value_enum() }
}
/// Invoke NAC3's builtin `float()`.
#[must_use]
pub fn cast_to_float(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> Self {
let llvm_f64 = ctx.ctx.f64_type();
let result: FloatValue<'_> = if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
self.value.into_float_value()
} else if ctx
.unifier
.unioned_any(self.dtype, [signed_ints(ctx).as_slice(), &[ctx.primitives.bool]].concat())
{
let n = self.value.into_int_value();
ctx.builder.build_signed_int_to_float(n, llvm_f64, "sitofp").unwrap()
} else if ctx.unifier.unioned_any(self.dtype, unsigned_ints(ctx)) {
let n = self.value.into_int_value();
ctx.builder.build_unsigned_int_to_float(n, llvm_f64, "uitofp").unwrap()
} else {
unsupported_type(ctx, [self.dtype]);
};
ScalarObject { value: result.as_basic_value_enum(), dtype: ctx.primitives.float }
}
/// Invoke NAC3's builtin `round()`.
#[must_use]
pub fn round<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ret_int_dtype: Type,
) -> Self {
let ret_int_dtype_llvm = ctx.get_llvm_type(generator, ret_int_dtype).into_int_type();
let result = if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let n = self.value.into_float_value();
let n = llvm_intrinsics::call_float_round(ctx, n, None);
ctx.builder.build_float_to_signed_int(n, ret_int_dtype_llvm, "round").unwrap()
} else {
unsupported_type(ctx, [self.dtype, ret_int_dtype])
};
ScalarObject { dtype: ret_int_dtype, value: result.as_basic_value_enum() }
}
/// Invoke NAC3's builtin `np_round()`.
///
/// NOTE: `np.round()` has different behaviors than `round()` in terms of their result
/// on "tie" cases and return type.
#[must_use]
pub fn np_round(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> Self {
let result = if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let n = self.value.into_float_value();
llvm_intrinsics::call_float_rint(ctx, n, None)
} else {
unsupported_type(ctx, [self.dtype])
};
ScalarObject { dtype: ctx.primitives.float, value: result.as_basic_value_enum() }
}
/// Invoke NAC3's builtin `min()` or `max()`.
pub fn min_or_max(
ctx: &mut CodeGenContext<'ctx, '_>,
kind: MinOrMax,
a: Self,
b: Self,
) -> Self {
if !ctx.unifier.unioned(a.dtype, b.dtype) {
unsupported_type(ctx, [a.dtype, b.dtype])
}
let common_dtype = a.dtype;
if ctx.unifier.unioned(common_dtype, ctx.primitives.float) {
let function = match kind {
MinOrMax::Min => llvm_intrinsics::call_float_minnum,
MinOrMax::Max => llvm_intrinsics::call_float_maxnum,
};
let result =
function(ctx, a.value.into_float_value(), b.value.into_float_value(), None);
ScalarObject { value: result.as_basic_value_enum(), dtype: ctx.primitives.float }
} else if ctx.unifier.unioned_any(
common_dtype,
[unsigned_ints(ctx).as_slice(), &[ctx.primitives.bool]].concat(),
) {
// Treating bool has an unsigned int since that is convenient
let function = match kind {
MinOrMax::Min => llvm_intrinsics::call_int_umin,
MinOrMax::Max => llvm_intrinsics::call_int_umax,
};
let result = function(ctx, a.value.into_int_value(), b.value.into_int_value(), None);
ScalarObject { value: result.as_basic_value_enum(), dtype: common_dtype }
} else {
unsupported_type(ctx, [common_dtype])
}
}
/// Invoke NAC3's builtin `floor()` or `ceil()`.
///
/// * `ret_int_dtype` - The type of int to return.
///
/// Takes in a float/int and returns an int of type `ret_int_dtype`
#[must_use]
pub fn floor_or_ceil<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
kind: FloorOrCeil,
ret_int_dtype: Type,
) -> Self {
let ret_int_dtype_llvm = ctx.get_llvm_type(generator, ret_int_dtype).into_int_type();
if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let function = match kind {
FloorOrCeil::Floor => llvm_intrinsics::call_float_floor,
FloorOrCeil::Ceil => llvm_intrinsics::call_float_ceil,
};
let n = self.value.into_float_value();
let n = function(ctx, n, None);
let n = ctx.builder.build_float_to_signed_int(n, ret_int_dtype_llvm, "").unwrap();
ScalarObject { dtype: ret_int_dtype, value: n.as_basic_value_enum() }
} else {
unsupported_type(ctx, [self.dtype])
}
}
/// Invoke NAC3's builtin `np_floor()`/ `np_ceil()`.
///
/// Takes in a float/int and returns a float64 result.
#[must_use]
pub fn np_floor_or_ceil(&self, ctx: &mut CodeGenContext<'ctx, '_>, kind: FloorOrCeil) -> Self {
if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let function = match kind {
FloorOrCeil::Floor => llvm_intrinsics::call_float_floor,
FloorOrCeil::Ceil => llvm_intrinsics::call_float_ceil,
};
let n = self.value.into_float_value();
let n = function(ctx, n, None);
ScalarObject { dtype: ctx.primitives.float, value: n.as_basic_value_enum() }
} else {
unsupported_type(ctx, [self.dtype])
}
}
/// Invoke NAC3's builtin `abs()`.
pub fn abs(&self, ctx: &mut CodeGenContext<'ctx, '_>) -> Self {
if ctx.unifier.unioned(self.dtype, ctx.primitives.float) {
let n = self.value.into_float_value();
let n = llvm_intrinsics::call_float_fabs(ctx, n, Some("abs"));
ScalarObject { value: n.into(), dtype: ctx.primitives.float }
} else if ctx.unifier.unioned_any(self.dtype, ints(ctx)) {
let n = self.value.into_int_value();
let is_poisoned = ctx.ctx.bool_type().const_zero(); // is_poisoned = false
let n = llvm_intrinsics::call_int_abs(ctx, n, is_poisoned, Some("abs"));
ScalarObject { value: n.into(), dtype: self.dtype }
} else {
unsupported_type(ctx, [self.dtype])
}
}
}
impl<'ctx> NDArrayObject<'ctx> {
/// Helper function to implement NAC3's builtin `np_min()`, `np_max()`, `np_argmin()`, and `np_argmax()`.
///
/// Generate LLVM IR to find the extremum and index of the **first** extremum value.
///
/// Care has also been taken to make the error messages match that of NumPy.
fn min_max_argmin_argmax_helper<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
kind: MinOrMax,
on_empty_err_msg: &str,
) -> (ScalarObject<'ctx>, Int<'ctx, SizeT>) {
let sizet_model = IntModel(SizeT);
let dtype_llvm = ctx.get_llvm_type(generator, self.dtype);
// If the ndarray is empty, throw an error.
let is_empty = self.is_empty(generator, ctx);
ctx.make_assert(
generator,
is_empty.value,
"0:ValueError",
on_empty_err_msg,
[None, None, None],
ctx.current_loc,
);
// Setup and initialize the extremum to be the first element in the ndarray
let pextremum_index = sizet_model.alloca(generator, ctx, "extremum_index");
let pextremum = ctx.builder.build_alloca(dtype_llvm, "extremum").unwrap();
let zero = sizet_model.const_0(generator, ctx.ctx);
pextremum_index.store(ctx, zero);
let first_scalar = self.get_nth(generator, ctx, zero);
ctx.builder.build_store(pextremum, first_scalar.value).unwrap();
// Find extremum
let start = sizet_model.const_1(generator, ctx.ctx); // Start on 1
let stop = self.size(generator, ctx);
let step = sizet_model.const_1(generator, ctx.ctx);
gen_for_model_auto(generator, ctx, start, stop, step, |generator, ctx, _hooks, i| {
// Worth reading on "Notes" in <https://numpy.org/doc/stable/reference/generated/numpy.min.html#numpy.min>
// on how `NaN` values have to be handled.
let scalar = self.get_nth(generator, ctx, i);
let old_extremum = ctx.builder.build_load(pextremum, "current_extremum").unwrap();
let old_extremum = ScalarObject { dtype: self.dtype, value: old_extremum };
let new_extremum = ScalarObject::min_or_max(ctx, kind, old_extremum, scalar);
// Check if new_extremum is more extreme than old_extremum.
let update_index = ScalarObject::compare(
generator,
ctx,
new_extremum,
old_extremum,
IntPredicate::NE,
FloatPredicate::ONE,
"",
);
gen_if_model(generator, ctx, update_index, |_generator, ctx| {
pextremum_index.store(ctx, i);
Ok(())
})
.unwrap();
Ok(())
})
.unwrap();
// Finally return the extremum and extremum index.
let extremum_index = pextremum_index.load(generator, ctx, "extremum_index");
let extremum = ctx.builder.build_load(pextremum, "extremum_value").unwrap();
let extremum = ScalarObject { dtype: self.dtype, value: extremum };
(extremum, extremum_index)
}
/// Invoke NAC3's builtin `np_min()` or `np_max()`.
pub fn min_or_max<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
kind: MinOrMax,
) -> ScalarObject<'ctx> {
let on_empty_err_msg = format!(
"zero-size array to reduction operation {} which has no identity",
match kind {
MinOrMax::Min => "minimum",
MinOrMax::Max => "maximum",
}
);
self.min_max_argmin_argmax_helper(generator, ctx, kind, &on_empty_err_msg).0
}
/// Invoke NAC3's builtin `np_argmin()` or `np_argmax()`.
pub fn argmin_or_argmax<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
kind: MinOrMax,
) -> Int<'ctx, SizeT> {
let on_empty_err_msg = format!(
"attempt to get {} of an empty sequence",
match kind {
MinOrMax::Min => "argmin",
MinOrMax::Max => "argmax",
}
);
self.min_max_argmin_argmax_helper(generator, ctx, kind, &on_empty_err_msg).1
}
}

View File

@ -0,0 +1,338 @@
use crate::codegen::{irrt::call_nac3_ndarray_index, model::*, CodeGenContext, CodeGenerator};
use super::{scalar::ScalarOrNDArray, NDArrayObject};
pub type NDIndexType = Byte;
/// Fields of [`NDIndex`]
#[derive(Debug, Clone, Copy)]
pub struct NDIndexFields<'ctx, F: FieldTraversal<'ctx>> {
pub type_: F::Out<IntModel<NDIndexType>>, // Defined to be uint8_t in IRRT
pub data: F::Out<PtrModel<IntModel<Byte>>>,
}
/// An IRRT representation fo an ndarray subscript index.
#[derive(Debug, Clone, Copy, Default, PartialEq, Eq)]
pub struct NDIndex;
impl<'ctx> StructKind<'ctx> for NDIndex {
type Fields<F: FieldTraversal<'ctx>> = NDIndexFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields { type_: traversal.add_auto("type"), data: traversal.add_auto("data") }
}
}
/// Fields of [`UserSlice`]
#[derive(Debug, Clone)]
pub struct UserSliceFields<'ctx, F: FieldTraversal<'ctx>> {
pub start_defined: F::Out<IntModel<Bool>>,
pub start: F::Out<IntModel<Int32>>,
pub stop_defined: F::Out<IntModel<Bool>>,
pub stop: F::Out<IntModel<Int32>>,
pub step_defined: F::Out<IntModel<Bool>>,
pub step: F::Out<IntModel<Int32>>,
}
/// An IRRT representation of a user slice.
#[derive(Debug, Clone, Copy, Default, PartialEq, Eq)]
pub struct UserSlice;
impl<'ctx> StructKind<'ctx> for UserSlice {
type Fields<F: FieldTraversal<'ctx>> = UserSliceFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields {
start_defined: traversal.add_auto("start_defined"),
start: traversal.add_auto("start"),
stop_defined: traversal.add_auto("stop_defined"),
stop: traversal.add_auto("stop"),
step_defined: traversal.add_auto("step_defined"),
step: traversal.add_auto("step"),
}
}
}
/// A convenience structure to prepare a [`UserSlice`].
#[derive(Debug, Clone)]
pub struct RustUserSlice<'ctx> {
pub start: Option<Int<'ctx, Int32>>,
pub stop: Option<Int<'ctx, Int32>>,
pub step: Option<Int<'ctx, Int32>>,
}
impl<'ctx> RustUserSlice<'ctx> {
/// Write the contents to an LLVM [`UserSlice`].
pub fn write_to_user_slice<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
dst_slice_ptr: Ptr<'ctx, StructModel<UserSlice>>,
) {
let bool_model = IntModel(Bool);
let false_ = bool_model.constant(generator, ctx.ctx, 0);
let true_ = bool_model.constant(generator, ctx.ctx, 1);
// TODO: Code duplication. Probably okay...?
match self.start {
Some(start) => {
dst_slice_ptr.gep(ctx, |f| f.start_defined).store(ctx, true_);
dst_slice_ptr.gep(ctx, |f| f.start).store(ctx, start);
}
None => dst_slice_ptr.gep(ctx, |f| f.start_defined).store(ctx, false_),
}
match self.stop {
Some(stop) => {
dst_slice_ptr.gep(ctx, |f| f.stop_defined).store(ctx, true_);
dst_slice_ptr.gep(ctx, |f| f.stop).store(ctx, stop);
}
None => dst_slice_ptr.gep(ctx, |f| f.stop_defined).store(ctx, false_),
}
match self.step {
Some(step) => {
dst_slice_ptr.gep(ctx, |f| f.step_defined).store(ctx, true_);
dst_slice_ptr.gep(ctx, |f| f.step).store(ctx, step);
}
None => dst_slice_ptr.gep(ctx, |f| f.step_defined).store(ctx, false_),
}
}
}
// A convenience enum variant to store the content and type of an NDIndex in high level.
#[derive(Debug, Clone)]
pub enum RustNDIndex<'ctx> {
SingleElement(Int<'ctx, Int32>), // TODO: To be SizeT
Slice(RustUserSlice<'ctx>),
}
impl<'ctx> RustNDIndex<'ctx> {
/// Get the value to set `NDIndex::type` for this variant.
fn get_type_id(&self) -> u64 {
// Defined in IRRT, must be in sync
match self {
RustNDIndex::SingleElement(_) => 0,
RustNDIndex::Slice(_) => 1,
}
}
/// Write the contents to an LLVM [`NDIndex`].
fn write_to_ndindex<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
dst_ndindex_ptr: Ptr<'ctx, StructModel<NDIndex>>,
) {
let ndindex_type_model = IntModel(NDIndexType::default());
let i32_model = IntModel(Int32);
let user_slice_model = StructModel(UserSlice);
// Set `dst_ndindex_ptr->type`
dst_ndindex_ptr
.gep(ctx, |f| f.type_)
.store(ctx, ndindex_type_model.constant(generator, ctx.ctx, self.get_type_id()));
// Set `dst_ndindex_ptr->data`
let data = match self {
RustNDIndex::SingleElement(in_index) => {
let index_ptr = i32_model.alloca(generator, ctx, "index");
index_ptr.store(ctx, *in_index);
index_ptr.transmute(generator, ctx, IntModel(Byte), "")
}
RustNDIndex::Slice(in_rust_slice) => {
let user_slice_ptr = user_slice_model.alloca(generator, ctx, "user_slice");
in_rust_slice.write_to_user_slice(generator, ctx, user_slice_ptr);
user_slice_ptr.transmute(generator, ctx, IntModel(Byte), "")
}
};
dst_ndindex_ptr.gep(ctx, |f| f.data).store(ctx, data);
}
/// Allocate an array of `NDIndex`es on the stack and return its stack pointer.
pub fn alloca_ndindexes<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &CodeGenContext<'ctx, '_>,
in_ndindexes: &[RustNDIndex<'ctx>],
) -> (Int<'ctx, SizeT>, Ptr<'ctx, StructModel<NDIndex>>) {
let sizet_model = IntModel(SizeT);
let ndindex_model = StructModel(NDIndex);
let num_ndindexes = sizet_model.constant(generator, ctx.ctx, in_ndindexes.len() as u64);
let ndindexes =
ndindex_model.array_alloca(generator, ctx, num_ndindexes.value, "ndindexes");
for (i, in_ndindex) in in_ndindexes.iter().enumerate() {
let i = sizet_model.constant(generator, ctx.ctx, i as u64);
let pndindex = ndindexes.offset(generator, ctx, i.value, "");
in_ndindex.write_to_ndindex(generator, ctx, pndindex);
}
(num_ndindexes, ndindexes)
}
}
impl<'ctx> NDArrayObject<'ctx> {
/// Get the ndims [`Type`] after indexing with a given slice.
#[must_use]
pub fn deduce_ndims_after_indexing_with(&self, indexes: &[RustNDIndex<'ctx>]) -> u64 {
let mut ndims = self.ndims;
for index in indexes {
match index {
RustNDIndex::SingleElement(_) => {
ndims -= 1; // Single elements decrements ndims
}
RustNDIndex::Slice(_) => {}
}
}
ndims
}
/// Index into the ndarray, and return a newly-allocated view on this ndarray.
///
/// This function behaves like NumPy's ndarray indexing, but if the indexes index
/// into a single element, an unsized ndarray is returned.
#[must_use]
pub fn index<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
indexes: &[RustNDIndex<'ctx>],
name: &str,
) -> Self {
let dst_ndims = self.deduce_ndims_after_indexing_with(indexes);
let dst_ndarray =
NDArrayObject::alloca_uninitialized(generator, ctx, self.dtype, dst_ndims, name);
let (num_indexes, indexes) = RustNDIndex::alloca_ndindexes(generator, ctx, indexes);
call_nac3_ndarray_index(
generator,
ctx,
num_indexes,
indexes,
self.value,
dst_ndarray.value,
);
dst_ndarray
}
/// Like [`NDArrayObject::index`] but returns a scalar if the indexes index
/// into a single element.
#[must_use]
pub fn index_or_scalar<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
indexes: &[RustNDIndex<'ctx>],
name: &str,
) -> ScalarOrNDArray<'ctx> {
let sizet_model = IntModel(SizeT);
let zero = sizet_model.const_0(generator, ctx.ctx);
let subndarray = self.index(generator, ctx, indexes, name);
if subndarray.is_unsized() {
// NOTE: `np.size(self) == 0` here is never possible.
ScalarOrNDArray::Scalar(subndarray.get_nth(generator, ctx, zero))
} else {
ScalarOrNDArray::NDArray(subndarray)
}
}
}
pub mod util {
use itertools::Itertools;
use nac3parser::ast::{Expr, ExprKind};
use crate::{
codegen::{model::*, CodeGenContext, CodeGenerator},
typecheck::typedef::Type,
};
use super::{RustNDIndex, RustUserSlice};
/// Generate LLVM code to transform an ndarray subscript expression to
/// its list of [`RustNDIndex`]
///
/// i.e.,
/// ```python
/// my_ndarray[::3, 1, :2:]
/// ^^^^^^^^^^^ Then these into a three `RustNDIndex`es
/// ```
pub fn gen_ndarray_subscript_ndindexes<'ctx, G: CodeGenerator>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
subscript: &Expr<Option<Type>>,
) -> Result<Vec<RustNDIndex<'ctx>>, String> {
// TODO: Support https://numpy.org/doc/stable/user/basics.indexing.html#dimensional-indexing-tools
let i32_model = IntModel(Int32);
// Annoying notes about `slice`
// - `my_array[5]`
// - slice is a `Constant`
// - `my_array[:5]`
// - slice is a `Slice`
// - `my_array[:]`
// - slice is a `Slice`, but lower upper step would all be `Option::None`
// - `my_array[:, :]`
// - slice is now a `Tuple` of two `Slice`-s
//
// In summary:
// - when there is a comma "," within [], `slice` will be a `Tuple` of the entries.
// - when there is not comma "," within [] (i.e., just a single entry), `slice` will be that entry itself.
//
// So we first "flatten" out the slice expression
let index_exprs = match &subscript.node {
ExprKind::Tuple { elts, .. } => elts.iter().collect_vec(),
_ => vec![subscript],
};
// Process all index expressions
let mut rust_ndindexes: Vec<RustNDIndex> = Vec::with_capacity(index_exprs.len()); // Not using iterators here because `?` is used here.
for index_expr in index_exprs {
// NOTE: Currently nac3core's slices do not have an object representation,
// so the code/implementation looks awkward - we have to do pattern matching on the expression
let ndindex =
if let ExprKind::Slice { lower: start, upper: stop, step } = &index_expr.node {
// Helper function here to deduce code duplication
type ValueExpr = Option<Box<Expr<Option<Type>>>>;
let mut help = |value_expr: &ValueExpr| -> Result<_, String> {
Ok(match value_expr {
None => None,
Some(value_expr) => {
let value_expr = generator
.gen_expr(ctx, value_expr)?
.unwrap()
.to_basic_value_enum(ctx, generator, ctx.primitives.int32)?;
let value_expr =
i32_model.check_value(generator, ctx.ctx, value_expr).unwrap();
Some(value_expr)
}
})
};
let start = help(start)?;
let stop = help(stop)?;
let step = help(step)?;
RustNDIndex::Slice(RustUserSlice { start, stop, step })
} else {
// Anything else that is not a slice (might be illegal values),
// For nac3core, this should be e.g., an int32 constant, an int32 variable, otherwise its an error
let index = generator.gen_expr(ctx, index_expr)?.unwrap().to_basic_value_enum(
ctx,
generator,
ctx.primitives.int32,
)?;
let index = i32_model.check_value(generator, ctx.ctx, index).unwrap();
RustNDIndex::SingleElement(index)
};
rust_ndindexes.push(ndindex);
}
Ok(rust_ndindexes)
}
}

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@ -0,0 +1,158 @@
use inkwell::values::BasicValueEnum;
use itertools::Itertools;
use util::gen_for_model_auto;
use crate::{
codegen::{
model::*,
structure::ndarray::{scalar::ScalarObject, NDArrayObject},
CodeGenContext, CodeGenerator,
},
typecheck::typedef::Type,
};
use super::scalar::ScalarOrNDArray;
impl<'ctx> NDArrayObject<'ctx> {
/// TODO: Document me. Has complex behavior.
/// and explain why `ret_dtype` has to be specified beforehand.
pub fn broadcasting_starmap<'a, G, MappingFn>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
ndarrays: &[Self],
ret_dtype: Type,
mapping: MappingFn,
) -> Result<Self, String>
where
G: CodeGenerator + ?Sized,
MappingFn: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
Int<'ctx, SizeT>,
&[ScalarObject<'ctx>],
) -> Result<BasicValueEnum<'ctx>, String>,
{
let sizet_model = IntModel(SizeT);
// Broadcast inputs
let broadcast_result = NDArrayObject::broadcast_all(generator, ctx, ndarrays);
// Allocate the resulting ndarray
let mapped_ndarray = NDArrayObject::alloca_uninitialized(
generator,
ctx,
ret_dtype,
broadcast_result.ndims,
"mapped_ndarray",
);
mapped_ndarray.copy_shape_from_array(generator, ctx, broadcast_result.shape);
mapped_ndarray.create_data(generator, ctx);
// Map element-wise and store results into `mapped_ndarray`.
let start = sizet_model.const_0(generator, ctx.ctx);
let stop = broadcast_result.ndarrays[0].size(generator, ctx); // They all should have the same `np.size`.
let step = sizet_model.const_1(generator, ctx.ctx);
gen_for_model_auto(generator, ctx, start, stop, step, move |generator, ctx, _hooks, i| {
let elements =
ndarrays.iter().map(|ndarray| ndarray.get_nth(generator, ctx, i)).collect_vec();
let ret = mapping(generator, ctx, i, &elements)?;
let pret = mapped_ndarray.get_nth_pointer(generator, ctx, i, "pret");
ctx.builder.build_store(pret, ret).unwrap();
Ok(())
})?;
Ok(mapped_ndarray)
}
pub fn map<'a, G, Mapping>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
ret_dtype: Type,
mapping: Mapping,
) -> Result<Self, String>
where
G: CodeGenerator + ?Sized,
Mapping: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
Int<'ctx, SizeT>,
ScalarObject<'ctx>,
) -> Result<BasicValueEnum<'ctx>, String>,
{
NDArrayObject::broadcasting_starmap(
generator,
ctx,
&[*self],
ret_dtype,
|generator, ctx, i, scalars| mapping(generator, ctx, i, scalars[0]),
)
}
}
impl<'ctx> ScalarOrNDArray<'ctx> {
/// TODO: Document me. Has complex behavior.
/// and explain why `ret_dtype` has to be specified beforehand.
pub fn broadcasting_starmap<'a, G, MappingFn>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
inputs: &[Self],
ret_dtype: Type,
mapping: MappingFn,
) -> Result<Self, String>
where
G: CodeGenerator + ?Sized,
MappingFn: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
Int<'ctx, SizeT>,
&[ScalarObject<'ctx>],
) -> Result<BasicValueEnum<'ctx>, String>,
{
let sizet_model = IntModel(SizeT);
// Check if all inputs are ScalarObjects
let all_scalars: Option<Vec<_>> =
inputs.iter().map(ScalarObject::try_from).try_collect().ok();
if let Some(scalars) = all_scalars {
let i = sizet_model.const_0(generator, ctx.ctx); // Pass 0 as the index
let scalar =
ScalarObject { value: mapping(generator, ctx, i, &scalars)?, dtype: ret_dtype };
Ok(ScalarOrNDArray::Scalar(scalar))
} else {
// Promote all input to ndarrays and map through them.
let inputs = inputs.iter().map(|input| input.as_ndarray(generator, ctx)).collect_vec();
let ndarray =
NDArrayObject::broadcasting_starmap(generator, ctx, &inputs, ret_dtype, mapping)?;
Ok(ScalarOrNDArray::NDArray(ndarray))
}
}
pub fn map<'a, G, Mapping>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
ret_dtype: Type,
mapping: Mapping,
) -> Result<Self, String>
where
G: CodeGenerator + ?Sized,
Mapping: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
Int<'ctx, SizeT>,
ScalarObject<'ctx>,
) -> Result<BasicValueEnum<'ctx>, String>,
{
ScalarOrNDArray::broadcasting_starmap(
generator,
ctx,
&[*self],
ret_dtype,
|generator, ctx, i, scalars| mapping(generator, ctx, i, scalars[0]),
)
}
}

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@ -0,0 +1,478 @@
pub mod broadcast;
pub mod functions;
pub mod indexing;
pub mod mapping;
pub mod scalar;
pub mod shape_util;
use crate::{
codegen::{
irrt::{
call_nac3_ndarray_copy_data, call_nac3_ndarray_get_nth_pelement,
call_nac3_ndarray_is_c_contiguous, call_nac3_ndarray_len, call_nac3_ndarray_nbytes,
call_nac3_ndarray_set_strides_by_shape, call_nac3_ndarray_size,
},
model::*,
stmt::BreakContinueHooks,
CodeGenContext, CodeGenerator,
},
toplevel::numpy::unpack_ndarray_var_tys,
typecheck::{numpy::extract_ndims, typedef::Type},
};
use inkwell::{
context::Context,
types::BasicType,
values::{BasicValue, BasicValueEnum, PointerValue},
AddressSpace, IntPredicate,
};
use scalar::ScalarObject;
use util::{call_memcpy_model, gen_for_model_auto};
pub struct NpArrayFields<'ctx, F: FieldTraversal<'ctx>> {
pub data: F::Out<PtrModel<IntModel<Byte>>>,
pub itemsize: F::Out<IntModel<SizeT>>,
pub ndims: F::Out<IntModel<SizeT>>,
pub shape: F::Out<PtrModel<IntModel<SizeT>>>,
pub strides: F::Out<PtrModel<IntModel<SizeT>>>,
}
// TODO: Rename to `NDArray` when the old NDArray is removed.
#[derive(Debug, Clone, Copy, Default)]
pub struct NpArray;
impl<'ctx> StructKind<'ctx> for NpArray {
type Fields<F: FieldTraversal<'ctx>> = NpArrayFields<'ctx, F>;
fn traverse_fields<F: FieldTraversal<'ctx>>(&self, traversal: &mut F) -> Self::Fields<F> {
Self::Fields {
data: traversal.add_auto("data"),
itemsize: traversal.add_auto("itemsize"),
ndims: traversal.add_auto("ndims"),
shape: traversal.add_auto("shape"),
strides: traversal.add_auto("strides"),
}
}
}
/// A NAC3 Python ndarray object.
#[derive(Debug, Clone, Copy)]
pub struct NDArrayObject<'ctx> {
pub dtype: Type,
pub ndims: u64,
pub value: Ptr<'ctx, StructModel<NpArray>>,
}
impl<'ctx> NDArrayObject<'ctx> {
/// Create an [`NDArrayObject`] from an LLVM value and its typechecker [`Type`].
pub fn from_value_and_type<V: BasicValue<'ctx>, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
value: V,
ty: Type,
) -> Self {
let pndarray_model = PtrModel(StructModel(NpArray));
let (dtype, ndims) = unpack_ndarray_var_tys(&mut ctx.unifier, ty);
let ndims = extract_ndims(&ctx.unifier, ndims);
let value = pndarray_model.check_value(generator, ctx.ctx, value).unwrap();
NDArrayObject { dtype, ndims, value }
}
/// Get the `np.size()` of this ndarray.
pub fn size<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Int<'ctx, SizeT> {
call_nac3_ndarray_size(generator, ctx, self.value)
}
/// Get the `ndarray.nbytes` of this ndarray.
pub fn nbytes<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Int<'ctx, SizeT> {
call_nac3_ndarray_nbytes(generator, ctx, self.value)
}
/// Get the `len()` of this ndarray.
pub fn len<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Int<'ctx, SizeT> {
call_nac3_ndarray_len(generator, ctx, self.value)
}
/// Check if this ndarray is C-contiguous.
///
/// See NumPy's `flags["C_CONTIGUOUS"]`: <https://numpy.org/doc/stable/reference/generated/numpy.ndarray.flags.html#numpy.ndarray.flags>
pub fn is_c_contiguous<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Int<'ctx, Bool> {
call_nac3_ndarray_is_c_contiguous(generator, ctx, self.value)
}
/// Get the pointer to the n-th (0-based) element.
///
/// The returned pointer has the element type of the LLVM type of this ndarray's `dtype`.
pub fn get_nth_pointer<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
nth: Int<'ctx, SizeT>,
name: &str,
) -> PointerValue<'ctx> {
let elem_ty = ctx.get_llvm_type(generator, self.dtype);
let p = call_nac3_ndarray_get_nth_pelement(generator, ctx, self.value, nth);
ctx.builder
.build_pointer_cast(p.value, elem_ty.ptr_type(AddressSpace::default()), name)
.unwrap()
}
/// Get the n-th (0-based) scalar.
pub fn get_nth<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
nth: Int<'ctx, SizeT>,
) -> ScalarObject<'ctx> {
let p = self.get_nth_pointer(generator, ctx, nth, "value");
let value = ctx.builder.build_load(p, "value").unwrap();
ScalarObject { dtype: self.dtype, value }
}
/// Call [`call_nac3_ndarray_set_strides_by_shape`] on this ndarray to update `strides`.
///
/// Please refer to the IRRT implementation to see its purpose.
pub fn update_strides_by_shape<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) {
call_nac3_ndarray_set_strides_by_shape(generator, ctx, self.value);
}
/// Copy data from another ndarray.
///
/// This ndarray and `src` is that their `np.size()` should be the same. Their shapes
/// do not matter. The copying order is determined by how their flattened views look.
///
/// Panics if the `dtype`s of ndarrays are different.
pub fn copy_data_from<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src: NDArrayObject<'ctx>,
) {
assert!(ctx.unifier.unioned(self.dtype, src.dtype), "self and src dtype should match");
call_nac3_ndarray_copy_data(generator, ctx, src.value, self.value);
}
/// Allocate an ndarray on the stack given its `ndims` and `dtype`.
///
/// `shape` and `strides` will be automatically allocated on the stack.
///
/// The returned ndarray's content will be:
/// - `data`: set to `nullptr`.
/// - `itemsize`: set to the `sizeof()` of `dtype`.
/// - `ndims`: set to the value of `ndims`.
/// - `shape`: allocated with an array of length `ndims` with uninitialized values.
/// - `strides`: allocated with an array of length `ndims` with uninitialized values.
pub fn alloca_uninitialized<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
dtype: Type,
ndims: u64,
name: &str,
) -> Self {
let sizet_model = IntModel(SizeT);
let ndarray_model = StructModel(NpArray);
let ndarray_data_model = PtrModel(IntModel(Byte));
let pndarray = ndarray_model.alloca(generator, ctx, name);
let data = ndarray_data_model.nullptr(generator, ctx.ctx);
pndarray.set(ctx, |f| f.data, data);
let itemsize = ctx.get_llvm_type(generator, dtype).size_of().unwrap();
let itemsize =
sizet_model.s_extend_or_bit_cast(generator, ctx, itemsize, "alloca_itemsize");
pndarray.set(ctx, |f| f.itemsize, itemsize);
let ndims_val = sizet_model.constant(generator, ctx.ctx, ndims);
pndarray.set(ctx, |f| f.ndims, ndims_val);
let shape = sizet_model.array_alloca(generator, ctx, ndims_val.value, "alloca_shape");
pndarray.set(ctx, |f| f.shape, shape);
let strides = sizet_model.array_alloca(generator, ctx, ndims_val.value, "alloca_strides");
pndarray.set(ctx, |f| f.strides, strides);
NDArrayObject { dtype, ndims, value: pndarray }
}
/// Convenience function.
/// Like [`NDArrayObject::alloca_uninitialized`] but directly takes the typechecker type of the ndarray.
pub fn alloca_uninitialized_of_type<G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
ndarray_ty: Type,
name: &str,
) -> Self {
let (dtype, ndims) = unpack_ndarray_var_tys(&mut ctx.unifier, ndarray_ty);
let ndims = extract_ndims(&ctx.unifier, ndims);
Self::alloca_uninitialized(generator, ctx, dtype, ndims, name)
}
/// Clone this ndaarray - Allocate a new ndarray with the same shape as this ndarray and copy the contents
/// over.
///
/// The new ndarray will own its data and will be C-contiguous.
pub fn make_clone<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
name: &str,
) -> Self {
let clone =
NDArrayObject::alloca_uninitialized(generator, ctx, self.dtype, self.ndims, name);
let shape = self.value.gep(ctx, |f| f.shape).load(generator, ctx, "shape");
clone.copy_shape_from_array(generator, ctx, shape);
clone.create_data(generator, ctx);
clone.copy_data_from(generator, ctx, *self);
clone
}
/// Get this ndarray's `ndims` as an LLVM constant.
pub fn get_ndims<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &'ctx Context,
) -> Int<'ctx, SizeT> {
let sizet_model = IntModel(SizeT);
sizet_model.constant(generator, ctx, self.ndims)
}
/// Get if this ndarray's `np.size` is `0` - containing no content.
pub fn is_empty<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> Int<'ctx, Bool> {
let sizet_model = IntModel(SizeT);
let size = self.size(generator, ctx);
size.compare(ctx, IntPredicate::EQ, sizet_model.const_0(generator, ctx.ctx), "is_empty")
}
/// Return true if this ndarray is unsized - `ndims == 0` and only contains a scalar.
///
/// This is a staticially known property of ndarrays. This is why it is returning
/// a Rust boolean instead of a [`BasicValue`].
#[must_use]
pub fn is_unsized(&self) -> bool {
self.ndims == 0
}
/// Initialize an ndarray's `data` by allocating a buffer on the stack.
/// The allocated data buffer is considered to be *owned* by the ndarray.
///
/// `strides` of the ndarray will also be updated with `set_strides_by_shape`.
///
/// `shape` and `itemsize` of the ndarray ***must*** be initialized first.
pub fn create_data<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) {
let byte_model = IntModel(Byte);
let nbytes = self.nbytes(generator, ctx);
let data = byte_model.array_alloca(generator, ctx, nbytes.value, "data");
self.value.set(ctx, |f| f.data, data);
self.update_strides_by_shape(generator, ctx);
}
/// Copy shape dimensions from an array.
pub fn copy_shape_from_array<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_shape: Ptr<'ctx, IntModel<SizeT>>,
) {
let dst_shape = self.value.get(generator, ctx, |f| f.shape, "dst_shape");
let num_items = self.get_ndims(generator, ctx.ctx).value;
call_memcpy_model(generator, ctx, dst_shape, src_shape, num_items);
}
/// Copy shape dimensions from an ndarray.
/// Panics if `ndims` mismatches.
pub fn copy_shape_from_ndarray<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_ndarray: NDArrayObject<'ctx>,
) {
assert_eq!(self.ndims, src_ndarray.ndims);
let src_shape = src_ndarray.value.get(generator, ctx, |f| f.shape, "src_shape");
self.copy_shape_from_array(generator, ctx, src_shape);
}
/// Copy strides dimensions from an array.
pub fn copy_strides_from_array<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_strides: Ptr<'ctx, IntModel<SizeT>>,
) {
let dst_strides = self.value.get(generator, ctx, |f| f.strides, "dst_strides");
let num_items = self.get_ndims(generator, ctx.ctx).value;
call_memcpy_model(generator, ctx, dst_strides, src_strides, num_items);
}
/// Copy strides dimensions from an ndarray.
/// Panics if `ndims` mismatches.
pub fn copy_strides_from_ndarray<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
src_ndarray: NDArrayObject<'ctx>,
) {
assert_eq!(self.ndims, src_ndarray.ndims);
let src_strides = src_ndarray.value.get(generator, ctx, |f| f.strides, "src_strides");
self.copy_strides_from_array(generator, ctx, src_strides);
}
/// Iterate through every element pointer in the ndarray in its flatten view.
///
/// `body` also access to [`BreakContinueHooks`] to short-circuit and an element's
/// index. The given element pointer also has been casted to the LLVM type of this ndarray's `dtype`.
pub fn foreach_pointer<'a, G, F>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
body: F,
) -> Result<(), String>
where
G: CodeGenerator + ?Sized,
F: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks<'ctx>,
Int<'ctx, SizeT>,
PointerValue<'ctx>,
) -> Result<(), String>,
{
let sizet_model = IntModel(SizeT);
let start = sizet_model.const_0(generator, ctx.ctx);
let stop = self.size(generator, ctx);
let step = sizet_model.const_1(generator, ctx.ctx);
gen_for_model_auto(generator, ctx, start, stop, step, |generator, ctx, hooks, i| {
let pelement = self.get_nth_pointer(generator, ctx, i, "element");
body(generator, ctx, hooks, i, pelement)
})
}
/// Iterate through every scalar in this ndarray.
pub fn foreach<'a, G, F>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, 'a>,
body: F,
) -> Result<(), String>
where
G: CodeGenerator + ?Sized,
F: FnOnce(
&mut G,
&mut CodeGenContext<'ctx, 'a>,
BreakContinueHooks<'ctx>,
Int<'ctx, SizeT>,
ScalarObject<'ctx>,
) -> Result<(), String>,
{
self.foreach_pointer(generator, ctx, |generator, ctx, hooks, i, p| {
let value = ctx.builder.build_load(p, "value").unwrap();
let scalar = ScalarObject { dtype: self.dtype, value };
body(generator, ctx, hooks, i, scalar)
})
}
/// Fill the ndarray with a value.
///
/// `fill_value` must have the same LLVM type as the `dtype` of this ndarray.
pub fn fill<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
fill_value: BasicValueEnum<'ctx>,
) {
self.foreach_pointer(generator, ctx, |_generator, ctx, _hooks, _i, pelement| {
ctx.builder.build_store(pelement, fill_value).unwrap();
Ok(())
})
.unwrap();
}
/// Create a reshaped view on this ndarray like `np.reshape()`.
///
/// If reshape without copying is impossible, this function will allocate a new ndarray
/// and copy contents.
///
/// * `new_ndims` - The number of dimensions of `new_shape` as a [`Type`].
/// * `new_shape` - The target shape to do `np.reshape()`.
#[must_use]
pub fn reshape_or_copy<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
new_ndims: u64,
new_shape: Ptr<'ctx, IntModel<SizeT>>,
) -> Self {
// TODO: The current criterion for whether to do a full copy or not is by checking `is_c_contiguous`,
// but this is not optimal. Look into how numpy does it.
let current_bb = ctx.builder.get_insert_block().unwrap();
let then_bb = ctx.ctx.insert_basic_block_after(current_bb, "then_bb");
let else_bb = ctx.ctx.insert_basic_block_after(then_bb, "else_bb");
let end_bb = ctx.ctx.insert_basic_block_after(else_bb, "end_bb");
let dst_ndarray = NDArrayObject::alloca_uninitialized(
generator,
ctx,
self.dtype,
new_ndims,
"reshaped_ndarray",
);
dst_ndarray.copy_shape_from_array(generator, ctx, new_shape);
let is_c_contiguous = self.is_c_contiguous(generator, ctx);
ctx.builder.build_conditional_branch(is_c_contiguous.value, then_bb, else_bb).unwrap();
// Inserting into then_bb: reshape is possible without copying
ctx.builder.position_at_end(then_bb);
dst_ndarray.update_strides_by_shape(generator, ctx);
dst_ndarray.value.set(ctx, |f| f.data, self.value.get(generator, ctx, |f| f.data, "data"));
ctx.builder.build_unconditional_branch(end_bb).unwrap();
// Inserting into else_bb: reshape is impossible without copying
ctx.builder.position_at_end(else_bb);
dst_ndarray.create_data(generator, ctx);
dst_ndarray.copy_data_from(generator, ctx, *self);
ctx.builder.build_unconditional_branch(end_bb).unwrap();
// Reposition for continuation
ctx.builder.position_at_end(end_bb);
dst_ndarray
}
}

View File

@ -0,0 +1,143 @@
use inkwell::values::{BasicValue, BasicValueEnum};
use crate::{
codegen::{model::*, CodeGenContext, CodeGenerator},
typecheck::typedef::{Type, TypeEnum},
};
use super::NDArrayObject;
/// An LLVM numpy scalar with its [`Type`].
///
/// Intended to be used with [`ScalarOrNDArray`].
///
/// A scalar does not have to be an actual number. It could be arbitrary objects.
#[derive(Debug, Clone, Copy)]
pub struct ScalarObject<'ctx> {
pub dtype: Type,
pub value: BasicValueEnum<'ctx>,
}
impl<'ctx> ScalarObject<'ctx> {
/// Promote this scalar to an unsized ndarray (like doing `np.asarray`).
///
/// The scalar value is allocated onto the stack, and the ndarray's `data` will point to that
/// allocated value.
pub fn as_ndarray<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> NDArrayObject<'ctx> {
let pbyte_model = PtrModel(IntModel(Byte));
// We have to put the value on the stack to get a data pointer.
let data = ctx.builder.build_alloca(self.value.get_type(), "as_ndarray_scalar").unwrap();
ctx.builder.build_store(data, self.value).unwrap();
let data = pbyte_model.pointer_cast(generator, ctx, data, "data");
let ndarray =
NDArrayObject::alloca_uninitialized(generator, ctx, self.dtype, 0, "scalar_ndarray");
ndarray.value.set(ctx, |f| f.data, data);
ndarray
}
}
/// A convenience enum for implementing scalar/ndarray agnostic utilities.
#[derive(Debug, Clone, Copy)]
pub enum ScalarOrNDArray<'ctx> {
Scalar(ScalarObject<'ctx>),
NDArray(NDArrayObject<'ctx>),
}
impl<'ctx> ScalarOrNDArray<'ctx> {
/// Get the underlying [`BasicValueEnum<'ctx>`] of this [`ScalarOrNDArray`].
#[must_use]
pub fn to_basic_value_enum(self) -> BasicValueEnum<'ctx> {
match self {
ScalarOrNDArray::Scalar(scalar) => scalar.value,
ScalarOrNDArray::NDArray(ndarray) => ndarray.value.value.as_basic_value_enum(),
}
}
#[must_use]
pub fn into_scalar(&self) -> ScalarObject<'ctx> {
match self {
ScalarOrNDArray::NDArray(_ndarray) => panic!("Got NDArray"),
ScalarOrNDArray::Scalar(scalar) => *scalar,
}
}
#[must_use]
pub fn into_ndarray(&self) -> NDArrayObject<'ctx> {
match self {
ScalarOrNDArray::NDArray(ndarray) => *ndarray,
ScalarOrNDArray::Scalar(_scalar) => panic!("Got Scalar"),
}
}
/// Convert this [`ScalarOrNDArray`] to an ndarray - behaves like `np.asarray`.
/// - If this is an ndarray, the ndarray is returned.
/// - If this is a scalar, an unsized ndarray view is created on it.
pub fn as_ndarray<G: CodeGenerator + ?Sized>(
&self,
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
) -> NDArrayObject<'ctx> {
match self {
ScalarOrNDArray::NDArray(ndarray) => *ndarray,
ScalarOrNDArray::Scalar(scalar) => scalar.as_ndarray(generator, ctx),
}
}
#[must_use]
pub fn dtype(&self) -> Type {
match self {
ScalarOrNDArray::Scalar(scalar) => scalar.dtype,
ScalarOrNDArray::NDArray(ndarray) => ndarray.dtype,
}
}
}
impl<'ctx> TryFrom<&ScalarOrNDArray<'ctx>> for ScalarObject<'ctx> {
type Error = ();
fn try_from(value: &ScalarOrNDArray<'ctx>) -> Result<Self, Self::Error> {
match value {
ScalarOrNDArray::Scalar(scalar) => Ok(*scalar),
ScalarOrNDArray::NDArray(_ndarray) => Err(()),
}
}
}
impl<'ctx> TryFrom<&ScalarOrNDArray<'ctx>> for NDArrayObject<'ctx> {
type Error = ();
fn try_from(value: &ScalarOrNDArray<'ctx>) -> Result<Self, Self::Error> {
match value {
ScalarOrNDArray::Scalar(_scalar) => Err(()),
ScalarOrNDArray::NDArray(ndarray) => Ok(*ndarray),
}
}
}
/// Split an [`BasicValueEnum<'ctx>`] into a [`ScalarOrNDArray`] depending
/// on its [`Type`].
pub fn split_scalar_or_ndarray<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
input: BasicValueEnum<'ctx>,
input_ty: Type,
) -> ScalarOrNDArray<'ctx> {
match &*ctx.unifier.get_ty(input_ty) {
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.ndarray.obj_id(&ctx.unifier).unwrap() =>
{
let ndarray = NDArrayObject::from_value_and_type(generator, ctx, input, input_ty);
ScalarOrNDArray::NDArray(ndarray)
}
_ => {
let scalar = ScalarObject { dtype: input_ty, value: input };
ScalarOrNDArray::Scalar(scalar)
}
}
}

View File

@ -0,0 +1,112 @@
use inkwell::values::BasicValueEnum;
use util::gen_for_model_auto;
use crate::{
codegen::{model::*, structure::list::ListObject, CodeGenContext, CodeGenerator},
typecheck::typedef::{Type, TypeEnum},
};
/// Parse a NumPy-like "int sequence" input and return the int sequence as an array and its length.
///
/// * `sequence` - The `sequence` parameter.
/// * `sequence_ty` - The typechecker type of `sequence`
///
/// The `sequence` argument type may only be one of the following:
/// 1. A list of `int32`; e.g., `np.empty([600, 800, 3])`
/// 2. A tuple of `int32`; e.g., `np.empty((600, 800, 3))`
/// 3. A scalar `int32`; e.g., `np.empty(3)`, this is functionally equivalent to `np.empty([3])`
///
/// All `int32` values will be sign-extended to `SizeT`.
pub fn parse_numpy_int_sequence<'ctx, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
input_sequence: BasicValueEnum<'ctx>,
input_sequence_ty: Type,
) -> (Int<'ctx, SizeT>, Ptr<'ctx, IntModel<SizeT>>) {
let sizet_model = IntModel(SizeT);
let zero = sizet_model.const_0(generator, ctx.ctx);
let one = sizet_model.const_1(generator, ctx.ctx);
// The result `list` to return.
match &*ctx.unifier.get_ty(input_sequence_ty) {
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.list.obj_id(&ctx.unifier).unwrap() =>
{
// 1. A list of `int32`; e.g., `np.empty([600, 800, 3])`
// Check `input_sequence`
let input_sequence =
ListObject::from_value_and_type(generator, ctx, input_sequence, input_sequence_ty);
let len = input_sequence.value.gep(ctx, |f| f.len).load(generator, ctx, "len");
let result = sizet_model.array_alloca(generator, ctx, len.value, "int_sequence");
// Load all the `int32`s from the input_sequence, cast them to `SizeT`, and store them into `result`
gen_for_model_auto(generator, ctx, zero, len, one, |generator, ctx, _hooks, i| {
// Load the i-th int32 in the input sequence
let int = input_sequence
.value
.get(generator, ctx, |f| f.items, "int")
.ix(generator, ctx, i.value, "int")
.value
.into_int_value();
// Cast to SizeT
let int = sizet_model.s_extend_or_bit_cast(generator, ctx, int, "int");
// Store
result.offset(generator, ctx, i.value, "int").store(ctx, int);
Ok(())
})
.unwrap();
(len, result)
}
TypeEnum::TTuple { ty: tuple_types } => {
// 2. A tuple of ints; e.g., `np.empty((600, 800, 3))`
let input_sequence = input_sequence.into_struct_value(); // A tuple is a struct
let len_int = tuple_types.len();
let len = sizet_model.constant(generator, ctx.ctx, len_int as u64);
let result = sizet_model.array_alloca(generator, ctx, len.value, "int_sequence");
for i in 0..len_int {
// Get the i-th element off of the tuple and load it into `result`.
let int = ctx
.builder
.build_extract_value(input_sequence, i as u32, "int")
.unwrap()
.into_int_value();
let int = sizet_model.s_extend_or_bit_cast(generator, ctx, int, "int");
let offset = sizet_model.constant(generator, ctx.ctx, i as u64);
result.offset(generator, ctx, offset.value, "int").store(ctx, int);
}
(len, result)
}
TypeEnum::TObj { obj_id, .. }
if *obj_id == ctx.primitives.int32.obj_id(&ctx.unifier).unwrap() =>
{
// 3. A scalar int; e.g., `np.empty(3)`, this is functionally equivalent to `np.empty([3])`
let input_int = input_sequence.into_int_value();
let len = sizet_model.const_1(generator, ctx.ctx);
let result = sizet_model.array_alloca(generator, ctx, len.value, "int_sequence");
let int = sizet_model.s_extend_or_bit_cast(generator, ctx, input_int, "int");
// Storing into result[0]
result.store(ctx, int);
(len, result)
}
_ => panic!(
"encountered unknown sequence type: {}",
ctx.unifier.stringify(input_sequence_ty)
),
}
}

View File

@ -0,0 +1,67 @@
use inkwell::values::{BasicValueEnum, StructValue};
use itertools::Itertools;
use crate::{
codegen::{CodeGenContext, CodeGenerator},
typecheck::typedef::Type,
};
pub struct TupleObject<'ctx> {
pub tys: Vec<Type>,
pub value: StructValue<'ctx>,
}
impl<'ctx> TupleObject<'ctx> {
pub fn create<I, G: CodeGenerator + ?Sized>(
generator: &mut G,
ctx: &mut CodeGenContext<'ctx, '_>,
items: I,
name: &str,
) -> Self
where
I: IntoIterator<Item = (BasicValueEnum<'ctx>, Type)>,
{
let (vals, tys): (Vec<_>, Vec<_>) = items.into_iter().unzip();
// let tuple_ty = ctx.unifier.add_ty(TypeEnum::TTuple { ty: tys });
let llvm_tys = tys.iter().map(|ty| ctx.get_llvm_type(generator, *ty)).collect_vec();
let llvm_tuple_ty = ctx.ctx.struct_type(&llvm_tys, false);
let pllvm_tuple = ctx.builder.build_alloca(llvm_tuple_ty, "tuple").unwrap();
for (i, val) in vals.into_iter().enumerate() {
// Store the dim value into the tuple
let pval = ctx.builder.build_struct_gep(pllvm_tuple, i as u32, "value").unwrap();
ctx.builder.build_store(pval, val).unwrap();
}
let value = ctx.builder.build_load(pllvm_tuple, name).unwrap().into_struct_value();
TupleObject { tys, value }
}
// pub fn create_from_array<G: CodeGenerator + ?Sized>(
// generator: &mut G,
// ctx: &mut CodeGenContext<'ctx, '_>,
// array: PointerValue<'ctx>,
// elem_ty: Type,
// count: u64,
// name: &str,
// ) -> Self {
// let i32_type = ctx.ctx.i32_type();
// let mut items: Vec<(BasicValueEnum<'ctx>, Type)> = Vec::with_capacity(count as usize);
// for i in 0..count {
// let pval = unsafe {
// ctx.builder.build_in_bounds_gep(
// array,
// &[i32_type.const_zero(), i32_type.const_int(i as u64, false)],
// name,
// )
// }
// .unwrap();
// let val = ctx.builder.build_load(pval, "value").unwrap();
// items.push((val, elem_ty));
// }
// Self::create(generator, ctx, items, name)
// }
}

View File

@ -189,6 +189,8 @@ fn test_primitives() {
let expected = indoc! {" let expected = indoc! {"
; ModuleID = 'test' ; ModuleID = 'test'
source_filename = \"test\" source_filename = \"test\"
target datalayout = \"e-m:e-p270:32:32-p271:32:32-p272:64:64-i64:64-f80:128-n8:16:32:64-S128\"
target triple = \"x86_64-unknown-linux-gnu\"
; Function Attrs: mustprogress nofree norecurse nosync nounwind readnone willreturn ; Function Attrs: mustprogress nofree norecurse nosync nounwind readnone willreturn
define i32 @testing(i32 %0, i32 %1) local_unnamed_addr #0 !dbg !4 { define i32 @testing(i32 %0, i32 %1) local_unnamed_addr #0 !dbg !4 {
@ -368,6 +370,8 @@ fn test_simple_call() {
let expected = indoc! {" let expected = indoc! {"
; ModuleID = 'test' ; ModuleID = 'test'
source_filename = \"test\" source_filename = \"test\"
target datalayout = \"e-m:e-p270:32:32-p271:32:32-p272:64:64-i64:64-f80:128-n8:16:32:64-S128\"
target triple = \"x86_64-unknown-linux-gnu\"
; Function Attrs: mustprogress nofree norecurse nosync nounwind readnone willreturn ; Function Attrs: mustprogress nofree norecurse nosync nounwind readnone willreturn
define i32 @testing(i32 %0) local_unnamed_addr #0 !dbg !5 { define i32 @testing(i32 %0) local_unnamed_addr #0 !dbg !5 {

File diff suppressed because it is too large Load Diff

View File

@ -766,6 +766,7 @@ impl TopLevelComposer {
let target_ty = get_type_from_type_annotation_kinds( let target_ty = get_type_from_type_annotation_kinds(
&temp_def_list, &temp_def_list,
unifier, unifier,
primitives,
&def, &def,
&mut subst_list, &mut subst_list,
)?; )?;
@ -936,6 +937,7 @@ impl TopLevelComposer {
let ty = get_type_from_type_annotation_kinds( let ty = get_type_from_type_annotation_kinds(
temp_def_list.as_ref(), temp_def_list.as_ref(),
unifier, unifier,
primitives_store,
&type_annotation, &type_annotation,
&mut None, &mut None,
)?; )?;
@ -1002,6 +1004,7 @@ impl TopLevelComposer {
get_type_from_type_annotation_kinds( get_type_from_type_annotation_kinds(
&temp_def_list, &temp_def_list,
unifier, unifier,
primitives_store,
&return_ty_annotation, &return_ty_annotation,
&mut None, &mut None,
)? )?
@ -1622,6 +1625,7 @@ impl TopLevelComposer {
let self_type = get_type_from_type_annotation_kinds( let self_type = get_type_from_type_annotation_kinds(
&def_list, &def_list,
unifier, unifier,
primitives_ty,
&make_self_type_annotation(type_vars, *object_id), &make_self_type_annotation(type_vars, *object_id),
&mut None, &mut None,
)?; )?;
@ -1803,7 +1807,11 @@ impl TopLevelComposer {
let ty_ann = make_self_type_annotation(type_vars, *class_id); let ty_ann = make_self_type_annotation(type_vars, *class_id);
let self_ty = get_type_from_type_annotation_kinds( let self_ty = get_type_from_type_annotation_kinds(
&def_list, unifier, &ty_ann, &mut None, &def_list,
unifier,
primitives_ty,
&ty_ann,
&mut None,
)?; )?;
vars.extend(type_vars.iter().map(|ty| { vars.extend(type_vars.iter().map(|ty| {
let TypeEnum::TVar { id, .. } = &*unifier.get_ty(*ty) else { let TypeEnum::TVar { id, .. } = &*unifier.get_ty(*ty) else {

View File

@ -27,17 +27,22 @@ pub enum PrimDef {
List, List,
NDArray, NDArray,
// Member Functions // Option methods
OptionIsSome, FunOptionIsSome,
OptionIsNone, FunOptionIsNone,
OptionUnwrap, FunOptionUnwrap,
NDArrayCopy,
NDArrayFill, // Option-related functions
FunInt32, FunSome,
FunInt64,
FunUInt32, // NDArray methods
FunUInt64, FunNDArrayCopy,
FunFloat, FunNDArrayFill,
// Range methods
FunRangeInit,
// NumPy factory functions
FunNpNDArray, FunNpNDArray,
FunNpEmpty, FunNpEmpty,
FunNpZeros, FunNpZeros,
@ -46,26 +51,28 @@ pub enum PrimDef {
FunNpArray, FunNpArray,
FunNpEye, FunNpEye,
FunNpIdentity, FunNpIdentity,
FunRound, FunNpArange,
FunRound64,
// NumPy view functions
FunNpBroadcastTo,
FunNpReshape,
FunNpTranspose,
// NumPy NDArray property getters
FunNpSize,
FunNpShape,
FunNpStrides,
// Miscellaneous NumPy & SciPy functions
FunNpRound, FunNpRound,
FunRangeInit,
FunStr,
FunBool,
FunFloor,
FunFloor64,
FunNpFloor, FunNpFloor,
FunCeil,
FunCeil64,
FunNpCeil, FunNpCeil,
FunLen,
FunMin,
FunNpMin, FunNpMin,
FunNpMinimum, FunNpMinimum,
FunMax, FunNpArgmin,
FunNpMax, FunNpMax,
FunNpMaximum, FunNpMaximum,
FunAbs, FunNpArgmax,
FunNpIsNan, FunNpIsNan,
FunNpIsInf, FunNpIsInf,
FunNpSin, FunNpSin,
@ -104,14 +111,43 @@ pub enum PrimDef {
FunNpHypot, FunNpHypot,
FunNpNextAfter, FunNpNextAfter,
// Top-Level Functions // Linalg functions
FunSome, FunNpDot,
FunNpLinalgCholesky,
FunNpLinalgQr,
FunNpLinalgSvd,
FunNpLinalgInv,
FunNpLinalgPinv,
FunNpLinalgMatrixPower,
FunNpLinalgDet,
FunSpLinalgLu,
FunSpLinalgSchur,
FunSpLinalgHessenberg,
// Miscellaneous Python & NAC3 functions
FunInt32,
FunInt64,
FunUInt32,
FunUInt64,
FunFloat,
FunRound,
FunRound64,
FunStr,
FunBool,
FunFloor,
FunFloor64,
FunCeil,
FunCeil64,
FunLen,
FunMin,
FunMax,
FunAbs,
} }
/// Associated details of a [`PrimDef`] /// Associated details of a [`PrimDef`]
pub enum PrimDefDetails { pub enum PrimDefDetails {
PrimFunction { name: &'static str, simple_name: &'static str }, PrimFunction { name: &'static str, simple_name: &'static str },
PrimClass { name: &'static str }, PrimClass { name: &'static str, get_ty_fn: fn(&PrimitiveStore) -> Type },
} }
impl PrimDef { impl PrimDef {
@ -153,15 +189,17 @@ impl PrimDef {
#[must_use] #[must_use]
pub fn name(&self) -> &'static str { pub fn name(&self) -> &'static str {
match self.details() { match self.details() {
PrimDefDetails::PrimFunction { name, .. } | PrimDefDetails::PrimClass { name } => name, PrimDefDetails::PrimFunction { name, .. } | PrimDefDetails::PrimClass { name, .. } => {
name
}
} }
} }
/// Get the associated details of this [`PrimDef`] /// Get the associated details of this [`PrimDef`]
#[must_use] #[must_use]
pub fn details(self) -> PrimDefDetails { pub fn details(self) -> PrimDefDetails {
fn class(name: &'static str) -> PrimDefDetails { fn class(name: &'static str, get_ty_fn: fn(&PrimitiveStore) -> Type) -> PrimDefDetails {
PrimDefDetails::PrimClass { name } PrimDefDetails::PrimClass { name, get_ty_fn }
} }
fn fun(name: &'static str, simple_name: Option<&'static str>) -> PrimDefDetails { fn fun(name: &'static str, simple_name: Option<&'static str>) -> PrimDefDetails {
@ -169,29 +207,37 @@ impl PrimDef {
} }
match self { match self {
PrimDef::Int32 => class("int32"), // Classes
PrimDef::Int64 => class("int64"), PrimDef::Int32 => class("int32", |primitives| primitives.int32),
PrimDef::Float => class("float"), PrimDef::Int64 => class("int64", |primitives| primitives.int64),
PrimDef::Bool => class("bool"), PrimDef::Float => class("float", |primitives| primitives.float),
PrimDef::None => class("none"), PrimDef::Bool => class("bool", |primitives| primitives.bool),
PrimDef::Range => class("range"), PrimDef::None => class("none", |primitives| primitives.none),
PrimDef::Str => class("str"), PrimDef::Range => class("range", |primitives| primitives.range),
PrimDef::Exception => class("Exception"), PrimDef::Str => class("str", |primitives| primitives.str),
PrimDef::UInt32 => class("uint32"), PrimDef::Exception => class("Exception", |primitives| primitives.exception),
PrimDef::UInt64 => class("uint64"), PrimDef::UInt32 => class("uint32", |primitives| primitives.uint32),
PrimDef::Option => class("Option"), PrimDef::UInt64 => class("uint64", |primitives| primitives.uint64),
PrimDef::OptionIsSome => fun("Option.is_some", Some("is_some")), PrimDef::Option => class("Option", |primitives| primitives.option),
PrimDef::OptionIsNone => fun("Option.is_none", Some("is_none")), PrimDef::List => class("list", |primitives| primitives.list),
PrimDef::OptionUnwrap => fun("Option.unwrap", Some("unwrap")), PrimDef::NDArray => class("ndarray", |primitives| primitives.ndarray),
PrimDef::List => class("list"),
PrimDef::NDArray => class("ndarray"), // Option methods
PrimDef::NDArrayCopy => fun("ndarray.copy", Some("copy")), PrimDef::FunOptionIsSome => fun("Option.is_some", Some("is_some")),
PrimDef::NDArrayFill => fun("ndarray.fill", Some("fill")), PrimDef::FunOptionIsNone => fun("Option.is_none", Some("is_none")),
PrimDef::FunInt32 => fun("int32", None), PrimDef::FunOptionUnwrap => fun("Option.unwrap", Some("unwrap")),
PrimDef::FunInt64 => fun("int64", None),
PrimDef::FunUInt32 => fun("uint32", None), // Option-related functions
PrimDef::FunUInt64 => fun("uint64", None), PrimDef::FunSome => fun("Some", None),
PrimDef::FunFloat => fun("float", None),
// NDArray methods
PrimDef::FunNDArrayCopy => fun("ndarray.copy", Some("copy")),
PrimDef::FunNDArrayFill => fun("ndarray.fill", Some("fill")),
// Range methods
PrimDef::FunRangeInit => fun("range.__init__", Some("__init__")),
// NumPy factory functions
PrimDef::FunNpNDArray => fun("np_ndarray", None), PrimDef::FunNpNDArray => fun("np_ndarray", None),
PrimDef::FunNpEmpty => fun("np_empty", None), PrimDef::FunNpEmpty => fun("np_empty", None),
PrimDef::FunNpZeros => fun("np_zeros", None), PrimDef::FunNpZeros => fun("np_zeros", None),
@ -200,26 +246,28 @@ impl PrimDef {
PrimDef::FunNpArray => fun("np_array", None), PrimDef::FunNpArray => fun("np_array", None),
PrimDef::FunNpEye => fun("np_eye", None), PrimDef::FunNpEye => fun("np_eye", None),
PrimDef::FunNpIdentity => fun("np_identity", None), PrimDef::FunNpIdentity => fun("np_identity", None),
PrimDef::FunRound => fun("round", None), PrimDef::FunNpArange => fun("np_arange", None),
PrimDef::FunRound64 => fun("round64", None),
// NumPy view functions
PrimDef::FunNpBroadcastTo => fun("np_broadcast_to", None),
PrimDef::FunNpReshape => fun("np_reshape", None),
PrimDef::FunNpTranspose => fun("np_transpose", None),
// NumPy NDArray property getters
PrimDef::FunNpSize => fun("np_size", None),
PrimDef::FunNpShape => fun("np_shape", None),
PrimDef::FunNpStrides => fun("np_strides", None),
// Miscellaneous NumPy & SciPy functions
PrimDef::FunNpRound => fun("np_round", None), PrimDef::FunNpRound => fun("np_round", None),
PrimDef::FunRangeInit => fun("range.__init__", Some("__init__")),
PrimDef::FunStr => fun("str", None),
PrimDef::FunBool => fun("bool", None),
PrimDef::FunFloor => fun("floor", None),
PrimDef::FunFloor64 => fun("floor64", None),
PrimDef::FunNpFloor => fun("np_floor", None), PrimDef::FunNpFloor => fun("np_floor", None),
PrimDef::FunCeil => fun("ceil", None),
PrimDef::FunCeil64 => fun("ceil64", None),
PrimDef::FunNpCeil => fun("np_ceil", None), PrimDef::FunNpCeil => fun("np_ceil", None),
PrimDef::FunLen => fun("len", None),
PrimDef::FunMin => fun("min", None),
PrimDef::FunNpMin => fun("np_min", None), PrimDef::FunNpMin => fun("np_min", None),
PrimDef::FunNpMinimum => fun("np_minimum", None), PrimDef::FunNpMinimum => fun("np_minimum", None),
PrimDef::FunMax => fun("max", None), PrimDef::FunNpArgmin => fun("np_argmin", None),
PrimDef::FunNpMax => fun("np_max", None), PrimDef::FunNpMax => fun("np_max", None),
PrimDef::FunNpMaximum => fun("np_maximum", None), PrimDef::FunNpMaximum => fun("np_maximum", None),
PrimDef::FunAbs => fun("abs", None), PrimDef::FunNpArgmax => fun("np_argmax", None),
PrimDef::FunNpIsNan => fun("np_isnan", None), PrimDef::FunNpIsNan => fun("np_isnan", None),
PrimDef::FunNpIsInf => fun("np_isinf", None), PrimDef::FunNpIsInf => fun("np_isinf", None),
PrimDef::FunNpSin => fun("np_sin", None), PrimDef::FunNpSin => fun("np_sin", None),
@ -257,7 +305,38 @@ impl PrimDef {
PrimDef::FunNpLdExp => fun("np_ldexp", None), PrimDef::FunNpLdExp => fun("np_ldexp", None),
PrimDef::FunNpHypot => fun("np_hypot", None), PrimDef::FunNpHypot => fun("np_hypot", None),
PrimDef::FunNpNextAfter => fun("np_nextafter", None), PrimDef::FunNpNextAfter => fun("np_nextafter", None),
PrimDef::FunSome => fun("Some", None),
// Linalg functions
PrimDef::FunNpDot => fun("np_dot", None),
PrimDef::FunNpLinalgCholesky => fun("np_linalg_cholesky", None),
PrimDef::FunNpLinalgQr => fun("np_linalg_qr", None),
PrimDef::FunNpLinalgSvd => fun("np_linalg_svd", None),
PrimDef::FunNpLinalgInv => fun("np_linalg_inv", None),
PrimDef::FunNpLinalgPinv => fun("np_linalg_pinv", None),
PrimDef::FunNpLinalgMatrixPower => fun("np_linalg_matrix_power", None),
PrimDef::FunNpLinalgDet => fun("np_linalg_det", None),
PrimDef::FunSpLinalgLu => fun("sp_linalg_lu", None),
PrimDef::FunSpLinalgSchur => fun("sp_linalg_schur", None),
PrimDef::FunSpLinalgHessenberg => fun("sp_linalg_hessenberg", None),
// Miscellaneous Python & NAC3 functions
PrimDef::FunInt32 => fun("int32", None),
PrimDef::FunInt64 => fun("int64", None),
PrimDef::FunUInt32 => fun("uint32", None),
PrimDef::FunUInt64 => fun("uint64", None),
PrimDef::FunFloat => fun("float", None),
PrimDef::FunRound => fun("round", None),
PrimDef::FunRound64 => fun("round64", None),
PrimDef::FunStr => fun("str", None),
PrimDef::FunBool => fun("bool", None),
PrimDef::FunFloor => fun("floor", None),
PrimDef::FunFloor64 => fun("floor64", None),
PrimDef::FunCeil => fun("ceil", None),
PrimDef::FunCeil64 => fun("ceil64", None),
PrimDef::FunLen => fun("len", None),
PrimDef::FunMin => fun("min", None),
PrimDef::FunMax => fun("max", None),
PrimDef::FunAbs => fun("abs", None),
} }
} }
} }
@ -408,9 +487,9 @@ impl TopLevelComposer {
let option = unifier.add_ty(TypeEnum::TObj { let option = unifier.add_ty(TypeEnum::TObj {
obj_id: PrimDef::Option.id(), obj_id: PrimDef::Option.id(),
fields: vec![ fields: vec![
(PrimDef::OptionIsSome.simple_name().into(), (is_some_type_fun_ty, true)), (PrimDef::FunOptionIsSome.simple_name().into(), (is_some_type_fun_ty, true)),
(PrimDef::OptionIsNone.simple_name().into(), (is_some_type_fun_ty, true)), (PrimDef::FunOptionIsNone.simple_name().into(), (is_some_type_fun_ty, true)),
(PrimDef::OptionUnwrap.simple_name().into(), (unwrap_fun_ty, true)), (PrimDef::FunOptionUnwrap.simple_name().into(), (unwrap_fun_ty, true)),
] ]
.into_iter() .into_iter()
.collect::<HashMap<_, _>>(), .collect::<HashMap<_, _>>(),
@ -451,8 +530,8 @@ impl TopLevelComposer {
let ndarray = unifier.add_ty(TypeEnum::TObj { let ndarray = unifier.add_ty(TypeEnum::TObj {
obj_id: PrimDef::NDArray.id(), obj_id: PrimDef::NDArray.id(),
fields: Mapping::from([ fields: Mapping::from([
(PrimDef::NDArrayCopy.simple_name().into(), (ndarray_copy_fun_ty, true)), (PrimDef::FunNDArrayCopy.simple_name().into(), (ndarray_copy_fun_ty, true)),
(PrimDef::NDArrayFill.simple_name().into(), (ndarray_fill_fun_ty, true)), (PrimDef::FunNDArrayFill.simple_name().into(), (ndarray_fill_fun_ty, true)),
]), ]),
params: into_var_map([ndarray_dtype_tvar, ndarray_ndims_tvar]), params: into_var_map([ndarray_dtype_tvar, ndarray_ndims_tvar]),
}); });

View File

@ -1,4 +1,7 @@
use std::sync::Arc;
use crate::{ use crate::{
symbol_resolver::SymbolValue,
toplevel::helper::PrimDef, toplevel::helper::PrimDef,
typecheck::{ typecheck::{
type_inferencer::PrimitiveStore, type_inferencer::PrimitiveStore,
@ -83,3 +86,33 @@ pub fn unpack_ndarray_var_ids(unifier: &mut Unifier, ndarray: Type) -> (TypeVarI
pub fn unpack_ndarray_var_tys(unifier: &mut Unifier, ndarray: Type) -> (Type, Type) { pub fn unpack_ndarray_var_tys(unifier: &mut Unifier, ndarray: Type) -> (Type, Type) {
unpack_ndarray_tvars(unifier, ndarray).into_iter().map(|v| v.1).collect_tuple().unwrap() unpack_ndarray_tvars(unifier, ndarray).into_iter().map(|v| v.1).collect_tuple().unwrap()
} }
/// Extract an ndarray's `ndims` [type][`Type`] in `u64`. Panic if not possible.
/// The `ndims` must only contain 1 value.
#[must_use]
pub fn extract_ndims(unifier: &Unifier, ndims_ty: Type) -> u64 {
let ndims_ty_enum = unifier.get_ty_immutable(ndims_ty);
let TypeEnum::TLiteral { values, .. } = &*ndims_ty_enum else {
panic!("ndims_ty should be a TLiteral");
};
assert_eq!(values.len(), 1, "ndims_ty TLiteral should only contain 1 value");
let ndims = values[0].clone();
u64::try_from(ndims).unwrap()
}
/// Return an ndarray's `ndims` as a typechecker [`Type`] from its `u64` value.
pub fn create_ndims(unifier: &mut Unifier, ndims: u64) -> Type {
unifier.get_fresh_literal(vec![SymbolValue::U64(ndims)], None)
}
/// Return the ndims after broadcasting ndarrays of different ndims.
///
/// Panics if the input list is empty.
pub fn get_broadcast_all_ndims<I>(ndims: I) -> u64
where
I: IntoIterator<Item = u64>,
{
ndims.into_iter().max().unwrap()
}

View File

@ -5,7 +5,7 @@ expression: res_vec
[ [
"Class {\nname: \"Generic_A\",\nancestors: [\"Generic_A[V]\", \"B\"],\nfields: [\"aa\", \"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"foo\", \"fn[[b:T], none]\"), (\"fun\", \"fn[[a:int32], V]\")],\ntype_vars: [\"V\"]\n}\n", "Class {\nname: \"Generic_A\",\nancestors: [\"Generic_A[V]\", \"B\"],\nfields: [\"aa\", \"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"foo\", \"fn[[b:T], none]\"), (\"fun\", \"fn[[a:int32], V]\")],\ntype_vars: [\"V\"]\n}\n",
"Function {\nname: \"Generic_A.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"Generic_A.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"Generic_A.fun\",\nsig: \"fn[[a:int32], V]\",\nvar_id: [TypeVarId(245)]\n}\n", "Function {\nname: \"Generic_A.fun\",\nsig: \"fn[[a:int32], V]\",\nvar_id: [TypeVarId(246)]\n}\n",
"Class {\nname: \"B\",\nancestors: [\"B\"],\nfields: [\"aa\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"foo\", \"fn[[b:T], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"B\",\nancestors: [\"B\"],\nfields: [\"aa\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"foo\", \"fn[[b:T], none]\")],\ntype_vars: []\n}\n",
"Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"B.foo\",\nsig: \"fn[[b:T], none]\",\nvar_id: []\n}\n", "Function {\nname: \"B.foo\",\nsig: \"fn[[b:T], none]\",\nvar_id: []\n}\n",

View File

@ -7,7 +7,7 @@ expression: res_vec
"Function {\nname: \"A.__init__\",\nsig: \"fn[[t:T], none]\",\nvar_id: []\n}\n", "Function {\nname: \"A.__init__\",\nsig: \"fn[[t:T], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"A.fun\",\nsig: \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\",\nvar_id: []\n}\n", "Function {\nname: \"A.fun\",\nsig: \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\",\nvar_id: []\n}\n",
"Function {\nname: \"A.foo\",\nsig: \"fn[[c:C], none]\",\nvar_id: []\n}\n", "Function {\nname: \"A.foo\",\nsig: \"fn[[c:C], none]\",\nvar_id: []\n}\n",
"Class {\nname: \"B\",\nancestors: [\"B[typevar234]\", \"A[float]\"],\nfields: [\"a\", \"b\", \"c\", \"d\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\"), (\"foo\", \"fn[[c:C], none]\")],\ntype_vars: [\"typevar234\"]\n}\n", "Class {\nname: \"B\",\nancestors: [\"B[typevar235]\", \"A[float]\"],\nfields: [\"a\", \"b\", \"c\", \"d\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\"), (\"foo\", \"fn[[c:C], none]\")],\ntype_vars: [\"typevar235\"]\n}\n",
"Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"B.fun\",\nsig: \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\",\nvar_id: []\n}\n", "Function {\nname: \"B.fun\",\nsig: \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\",\nvar_id: []\n}\n",
"Class {\nname: \"C\",\nancestors: [\"C\", \"B[bool]\", \"A[float]\"],\nfields: [\"a\", \"b\", \"c\", \"d\", \"e\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\"), (\"foo\", \"fn[[c:C], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"C\",\nancestors: [\"C\", \"B[bool]\", \"A[float]\"],\nfields: [\"a\", \"b\", \"c\", \"d\", \"e\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:int32, b:T], list[virtual[B[bool]]]]\"), (\"foo\", \"fn[[c:C], none]\")],\ntype_vars: []\n}\n",

View File

@ -5,8 +5,8 @@ expression: res_vec
[ [
"Function {\nname: \"foo\",\nsig: \"fn[[a:list[int32], b:tuple[T, float]], A[B, bool]]\",\nvar_id: []\n}\n", "Function {\nname: \"foo\",\nsig: \"fn[[a:list[int32], b:tuple[T, float]], A[B, bool]]\",\nvar_id: []\n}\n",
"Class {\nname: \"A\",\nancestors: [\"A[T, V]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[v:V], none]\"), (\"fun\", \"fn[[a:T], V]\")],\ntype_vars: [\"T\", \"V\"]\n}\n", "Class {\nname: \"A\",\nancestors: [\"A[T, V]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[v:V], none]\"), (\"fun\", \"fn[[a:T], V]\")],\ntype_vars: [\"T\", \"V\"]\n}\n",
"Function {\nname: \"A.__init__\",\nsig: \"fn[[v:V], none]\",\nvar_id: [TypeVarId(247)]\n}\n", "Function {\nname: \"A.__init__\",\nsig: \"fn[[v:V], none]\",\nvar_id: [TypeVarId(248)]\n}\n",
"Function {\nname: \"A.fun\",\nsig: \"fn[[a:T], V]\",\nvar_id: [TypeVarId(252)]\n}\n", "Function {\nname: \"A.fun\",\nsig: \"fn[[a:T], V]\",\nvar_id: [TypeVarId(253)]\n}\n",
"Function {\nname: \"gfun\",\nsig: \"fn[[a:A[list[float], int32]], none]\",\nvar_id: []\n}\n", "Function {\nname: \"gfun\",\nsig: \"fn[[a:A[list[float], int32]], none]\",\nvar_id: []\n}\n",
"Class {\nname: \"B\",\nancestors: [\"B\"],\nfields: [],\nmethods: [(\"__init__\", \"fn[[], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"B\",\nancestors: [\"B\"],\nfields: [],\nmethods: [(\"__init__\", \"fn[[], none]\")],\ntype_vars: []\n}\n",
"Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",

View File

@ -3,7 +3,7 @@ source: nac3core/src/toplevel/test.rs
expression: res_vec expression: res_vec
--- ---
[ [
"Class {\nname: \"A\",\nancestors: [\"A[typevar233, typevar234]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[a:A[float, bool], b:B], none]\"), (\"fun\", \"fn[[a:A[float, bool]], A[bool, int32]]\")],\ntype_vars: [\"typevar233\", \"typevar234\"]\n}\n", "Class {\nname: \"A\",\nancestors: [\"A[typevar234, typevar235]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[a:A[float, bool], b:B], none]\"), (\"fun\", \"fn[[a:A[float, bool]], A[bool, int32]]\")],\ntype_vars: [\"typevar234\", \"typevar235\"]\n}\n",
"Function {\nname: \"A.__init__\",\nsig: \"fn[[a:A[float, bool], b:B], none]\",\nvar_id: []\n}\n", "Function {\nname: \"A.__init__\",\nsig: \"fn[[a:A[float, bool], b:B], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"A.fun\",\nsig: \"fn[[a:A[float, bool]], A[bool, int32]]\",\nvar_id: []\n}\n", "Function {\nname: \"A.fun\",\nsig: \"fn[[a:A[float, bool]], A[bool, int32]]\",\nvar_id: []\n}\n",
"Class {\nname: \"B\",\nancestors: [\"B\", \"A[int64, bool]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:A[float, bool]], A[bool, int32]]\"), (\"foo\", \"fn[[b:B], B]\"), (\"bar\", \"fn[[a:A[list[B], int32]], tuple[A[virtual[A[B, int32]], bool], B]]\")],\ntype_vars: []\n}\n", "Class {\nname: \"B\",\nancestors: [\"B\", \"A[int64, bool]\"],\nfields: [\"a\", \"b\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[a:A[float, bool]], A[bool, int32]]\"), (\"foo\", \"fn[[b:B], B]\"), (\"bar\", \"fn[[a:A[list[B], int32]], tuple[A[virtual[A[B, int32]], bool], B]]\")],\ntype_vars: []\n}\n",

View File

@ -6,12 +6,12 @@ expression: res_vec
"Class {\nname: \"A\",\nancestors: [\"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"A\",\nancestors: [\"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n",
"Function {\nname: \"A.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"A.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"A.fun\",\nsig: \"fn[[b:B], none]\",\nvar_id: []\n}\n", "Function {\nname: \"A.fun\",\nsig: \"fn[[b:B], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"A.foo\",\nsig: \"fn[[a:T, b:V], none]\",\nvar_id: [TypeVarId(253)]\n}\n", "Function {\nname: \"A.foo\",\nsig: \"fn[[a:T, b:V], none]\",\nvar_id: [TypeVarId(254)]\n}\n",
"Class {\nname: \"B\",\nancestors: [\"B\", \"C\", \"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"B\",\nancestors: [\"B\", \"C\", \"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n",
"Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"B.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Class {\nname: \"C\",\nancestors: [\"C\", \"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n", "Class {\nname: \"C\",\nancestors: [\"C\", \"A\"],\nfields: [\"a\"],\nmethods: [(\"__init__\", \"fn[[], none]\"), (\"fun\", \"fn[[b:B], none]\"), (\"foo\", \"fn[[a:T, b:V], none]\")],\ntype_vars: []\n}\n",
"Function {\nname: \"C.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n", "Function {\nname: \"C.__init__\",\nsig: \"fn[[], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"C.fun\",\nsig: \"fn[[b:B], none]\",\nvar_id: []\n}\n", "Function {\nname: \"C.fun\",\nsig: \"fn[[b:B], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"foo\",\nsig: \"fn[[a:A], none]\",\nvar_id: []\n}\n", "Function {\nname: \"foo\",\nsig: \"fn[[a:A], none]\",\nvar_id: []\n}\n",
"Function {\nname: \"ff\",\nsig: \"fn[[a:T], V]\",\nvar_id: [TypeVarId(261)]\n}\n", "Function {\nname: \"ff\",\nsig: \"fn[[a:T], V]\",\nvar_id: [TypeVarId(262)]\n}\n",
] ]

View File

@ -1,8 +1,9 @@
use super::*; use super::*;
use crate::symbol_resolver::SymbolValue; use crate::symbol_resolver::SymbolValue;
use crate::toplevel::helper::PrimDef; use crate::toplevel::helper::{PrimDef, PrimDefDetails};
use crate::typecheck::typedef::VarMap; use crate::typecheck::typedef::VarMap;
use nac3parser::ast::Constant; use nac3parser::ast::Constant;
use strum::IntoEnumIterator;
#[derive(Clone, Debug)] #[derive(Clone, Debug)]
pub enum TypeAnnotation { pub enum TypeAnnotation {
@ -357,6 +358,7 @@ pub fn parse_ast_to_type_annotation_kinds<T, S: std::hash::BuildHasher + Clone>(
pub fn get_type_from_type_annotation_kinds( pub fn get_type_from_type_annotation_kinds(
top_level_defs: &[Arc<RwLock<TopLevelDef>>], top_level_defs: &[Arc<RwLock<TopLevelDef>>],
unifier: &mut Unifier, unifier: &mut Unifier,
primitives: &PrimitiveStore,
ann: &TypeAnnotation, ann: &TypeAnnotation,
subst_list: &mut Option<Vec<Type>>, subst_list: &mut Option<Vec<Type>>,
) -> Result<Type, HashSet<String>> { ) -> Result<Type, HashSet<String>> {
@ -379,10 +381,43 @@ pub fn get_type_from_type_annotation_kinds(
let param_ty = params let param_ty = params
.iter() .iter()
.map(|x| { .map(|x| {
get_type_from_type_annotation_kinds(top_level_defs, unifier, x, subst_list) get_type_from_type_annotation_kinds(
top_level_defs,
unifier,
primitives,
x,
subst_list,
)
}) })
.collect::<Result<Vec<_>, _>>()?; .collect::<Result<Vec<_>, _>>()?;
let ty = if let Some(prim_def) = PrimDef::iter().find(|prim| prim.id() == *obj_id) {
// Primitive TopLevelDefs do not contain all fields that are present in their Type
// counterparts, so directly perform subst on the Type instead.
let PrimDefDetails::PrimClass { get_ty_fn, .. } = prim_def.details() else {
unreachable!()
};
let base_ty = get_ty_fn(primitives);
let params =
if let TypeEnum::TObj { params, .. } = &*unifier.get_ty_immutable(base_ty) {
params.clone()
} else {
unreachable!()
};
unifier
.subst(
get_ty_fn(primitives),
&params
.iter()
.zip(param_ty)
.map(|(obj_tv, param)| (*obj_tv.0, param))
.collect(),
)
.unwrap_or(base_ty)
} else {
let subst = { let subst = {
// check for compatible range // check for compatible range
// TODO: if allow type var to be applied(now this disallowed in the parse_to_type_annotation), need more check // TODO: if allow type var to be applied(now this disallowed in the parse_to_type_annotation), need more check
@ -424,12 +459,15 @@ pub fn get_type_from_type_annotation_kinds(
} }
} }
TypeEnum::TVar { id, range, name, loc, is_const_generic: true, .. } => { TypeEnum::TVar {
id, range, name, loc, is_const_generic: true, ..
} => {
let ty = range[0]; let ty = range[0];
let ok: bool = { let ok: bool = {
// create a temp type var and unify to check compatibility // create a temp type var and unify to check compatibility
p == *tvar || { p == *tvar || {
let temp = unifier.get_fresh_const_generic_var(ty, *name, *loc); let temp =
unifier.get_fresh_const_generic_var(ty, *name, *loc);
unifier.unify(temp.ty, p).is_ok() unifier.unify(temp.ty, p).is_ok()
} }
}; };
@ -468,11 +506,16 @@ pub fn get_type_from_type_annotation_kinds(
fields: tobj_fields, fields: tobj_fields,
params: subst, params: subst,
}); });
if need_subst { if need_subst {
if let Some(wl) = subst_list.as_mut() { if let Some(wl) = subst_list.as_mut() {
wl.push(ty); wl.push(ty);
} }
} }
ty
};
Ok(ty) Ok(ty)
} }
TypeAnnotation::Primitive(ty) | TypeAnnotation::TypeVar(ty) => Ok(*ty), TypeAnnotation::Primitive(ty) | TypeAnnotation::TypeVar(ty) => Ok(*ty),
@ -490,6 +533,7 @@ pub fn get_type_from_type_annotation_kinds(
let ty = get_type_from_type_annotation_kinds( let ty = get_type_from_type_annotation_kinds(
top_level_defs, top_level_defs,
unifier, unifier,
primitives,
ty.as_ref(), ty.as_ref(),
subst_list, subst_list,
)?; )?;
@ -499,7 +543,13 @@ pub fn get_type_from_type_annotation_kinds(
let tys = tys let tys = tys
.iter() .iter()
.map(|x| { .map(|x| {
get_type_from_type_annotation_kinds(top_level_defs, unifier, x, subst_list) get_type_from_type_annotation_kinds(
top_level_defs,
unifier,
primitives,
x,
subst_list,
)
}) })
.collect::<Result<Vec<_>, _>>()?; .collect::<Result<Vec<_>, _>>()?;
Ok(unifier.add_ty(TypeEnum::TTuple { ty: tys })) Ok(unifier.add_ty(TypeEnum::TTuple { ty: tys }))

View File

@ -34,13 +34,18 @@ impl<'a> Inferencer<'a> {
self.should_have_value(pattern)?; self.should_have_value(pattern)?;
Ok(()) Ok(())
} }
ExprKind::Tuple { elts, .. } => { ExprKind::List { elts, .. } | ExprKind::Tuple { elts, .. } => {
for elt in elts { for elt in elts {
self.check_pattern(elt, defined_identifiers)?; self.check_pattern(elt, defined_identifiers)?;
self.should_have_value(elt)?; self.should_have_value(elt)?;
} }
Ok(()) Ok(())
} }
ExprKind::Starred { value, .. } => {
self.check_pattern(value, defined_identifiers)?;
self.should_have_value(value)?;
Ok(())
}
ExprKind::Subscript { value, slice, .. } => { ExprKind::Subscript { value, slice, .. } => {
self.check_expr(value, defined_identifiers)?; self.check_expr(value, defined_identifiers)?;
self.should_have_value(value)?; self.should_have_value(value)?;

File diff suppressed because it is too large Load Diff

View File

@ -336,6 +336,14 @@ impl Unifier {
self.unification_table.unioned(a, b) self.unification_table.unioned(a, b)
} }
/// Determine if a type unions with a type in `tys`.
pub fn unioned_any<I>(&mut self, a: Type, tys: I) -> bool
where
I: IntoIterator<Item = Type>,
{
tys.into_iter().any(|ty| self.unioned(a, ty))
}
pub fn from_shared_unifier(unifier: &SharedUnifier) -> Unifier { pub fn from_shared_unifier(unifier: &SharedUnifier) -> Unifier {
let lock = unifier.lock().unwrap(); let lock = unifier.lock().unwrap();
Unifier { Unifier {

View File

@ -3,23 +3,55 @@
set -e set -e
if [ -z "$1" ]; then if [ -z "$1" ]; then
echo "Requires at least one argument" echo "No argument supplied"
exit 1 exit 1
fi fi
declare -a nac3args declare -a nac3args
while [ $# -ge 2 ]; do
case "$1" in
--help)
echo "Usage: check_demo.sh [-i686] -- demo [NAC3ARGS...]"
exit
;;
-i686)
i686=1
;;
--)
shift
break
;;
*)
break
;;
esac
shift
done
demo="$1"
shift
while [ $# -gt 1 ]; do while [ $# -gt 1 ]; do
nac3args+=("$1") nac3args+=("$1")
shift shift
done done
demo="$1"
echo -n "Checking $demo... "
echo "### Checking $demo..."
echo ">>>>>> Running $demo with the Python interpreter"
./interpret_demo.py "$demo" > interpreted.log ./interpret_demo.py "$demo" > interpreted.log
./run_demo.sh --out run.log "${nac3args[@]}" "$demo"
./run_demo.sh --lli --out run_lli.log "${nac3args[@]}" "$demo"
diff -Nau interpreted.log run.log
diff -Nau interpreted.log run_lli.log
echo "ok"
rm -f interpreted.log run.log run_lli.log if [ -n "$i686" ]; then
echo "...... Trying NAC3's 32-bit code generator output"
./run_demo.sh -i686 --out run_32.log "${nac3args[@]}" "$demo"
diff -Nau interpreted.log run_32.log
fi
echo "...... Trying NAC3's 64-bit code generator output"
./run_demo.sh --out run_64.log "${nac3args[@]}" "$demo"
diff -Nau interpreted.log run_64.log
echo "...... OK"
rm -f interpreted.log \
run_32.log run_64.log

View File

@ -6,8 +6,6 @@
#include <stdlib.h> #include <stdlib.h>
#include <string.h> #include <string.h>
#define usize size_t
double dbl_nan(void) { double dbl_nan(void) {
return NAN; return NAN;
} }
@ -64,14 +62,14 @@ void output_asciiart(int32_t x) {
struct cslice { struct cslice {
void *data; void *data;
usize len; size_t len;
}; };
void output_int32_list(struct cslice *slice) { void output_int32_list(struct cslice *slice) {
const int32_t *data = (int32_t *) slice->data; const int32_t *data = (int32_t *) slice->data;
putchar('['); putchar('[');
for (usize i = 0; i < slice->len; ++i) { for (size_t i = 0; i < slice->len; ++i) {
if (i == slice->len - 1) { if (i == slice->len - 1) {
printf("%d", data[i]); printf("%d", data[i]);
} else { } else {
@ -85,7 +83,7 @@ void output_int32_list(struct cslice *slice) {
void output_str(struct cslice *slice) { void output_str(struct cslice *slice) {
const char *data = (const char *) slice->data; const char *data = (const char *) slice->data;
for (usize i = 0; i < slice->len; ++i) { for (size_t i = 0; i < slice->len; ++i) {
putchar(data[i]); putchar(data[i]);
} }
} }
@ -107,8 +105,25 @@ uint32_t __nac3_personality(uint32_t state, uint32_t exception_object, uint32_t
__builtin_unreachable(); __builtin_unreachable();
} }
uint32_t __nac3_raise(uint32_t state, uint32_t exception_object, uint32_t context) { // See `struct Exception<'a>` in
printf("__nac3_raise(state: %u, exception_object: %u, context: %u)\n", state, exception_object, context); // https://github.com/m-labs/artiq/blob/master/artiq/firmware/libeh/eh_artiq.rs
struct Exception {
uint32_t id;
struct cslice file;
uint32_t line;
uint32_t column;
struct cslice function;
struct cslice message;
int64_t param[3];
};
uint32_t __nac3_raise(struct Exception* e) {
printf("__nac3_raise called. Exception details:\n");
printf(" ID: %"PRIu32"\n", e->id);
printf(" Location: %*s:%"PRIu32":%"PRIu32"\n" , (int) e->file.len, (const char*) e->file.data, e->line, e->column);
printf(" Function: %*s\n" , (int) e->function.len, (const char*) e->function.data);
printf(" Message: \"%*s\"\n" , (int) e->message.len, (const char*) e->message.data);
printf(" Params: {0}=%"PRId64", {1}=%"PRId64", {2}=%"PRId64"\n", e->param[0], e->param[1], e->param[2]);
exit(101); exit(101);
__builtin_unreachable(); __builtin_unreachable();
} }

View File

@ -6,6 +6,7 @@ import importlib.machinery
import math import math
import numpy as np import numpy as np
import numpy.typing as npt import numpy.typing as npt
import scipy as sp
import pathlib import pathlib
from numpy import int32, int64, uint32, uint64 from numpy import int32, int64, uint32, uint64
@ -167,7 +168,7 @@ def patch(module):
module.ceil64 = _ceil module.ceil64 = _ceil
module.np_ceil = np.ceil module.np_ceil = np.ceil
# NumPy ndarray functions # NumPy NDArray factory functions
module.ndarray = NDArray module.ndarray = NDArray
module.np_ndarray = np.ndarray module.np_ndarray = np.ndarray
module.np_empty = np.empty module.np_empty = np.empty
@ -183,8 +184,10 @@ def patch(module):
module.np_isinf = np.isinf module.np_isinf = np.isinf
module.np_min = np.min module.np_min = np.min
module.np_minimum = np.minimum module.np_minimum = np.minimum
module.np_argmin = np.argmin
module.np_max = np.max module.np_max = np.max
module.np_maximum = np.maximum module.np_maximum = np.maximum
module.np_argmax = np.argmax
module.np_sin = np.sin module.np_sin = np.sin
module.np_cos = np.cos module.np_cos = np.cos
module.np_exp = np.exp module.np_exp = np.exp
@ -216,7 +219,17 @@ def patch(module):
module.np_hypot = np.hypot module.np_hypot = np.hypot
module.np_nextafter = np.nextafter module.np_nextafter = np.nextafter
# SciPy Math Functions # NumPy view functions
module.np_broadcast_to = np.broadcast_to
module.np_reshape = np.reshape
module.np_transpose = np.transpose
# NumPy NDArray property getter functions
module.np_size = np.size
module.np_shape = np.shape
module.np_strides = lambda ndarray: ndarray.strides
# SciPy Math functions
module.sp_spec_erf = special.erf module.sp_spec_erf = special.erf
module.sp_spec_erfc = special.erfc module.sp_spec_erfc = special.erfc
module.sp_spec_gamma = special.gamma module.sp_spec_gamma = special.gamma
@ -224,14 +237,19 @@ def patch(module):
module.sp_spec_j0 = special.j0 module.sp_spec_j0 = special.j0
module.sp_spec_j1 = special.j1 module.sp_spec_j1 = special.j1
# NumPy NDArray Functions # Linalg functions
module.np_ndarray = np.ndarray module.np_dot = np.dot
module.np_empty = np.empty module.np_linalg_cholesky = np.linalg.cholesky
module.np_zeros = np.zeros module.np_linalg_qr = np.linalg.qr
module.np_ones = np.ones module.np_linalg_svd = np.linalg.svd
module.np_full = np.full module.np_linalg_inv = np.linalg.inv
module.np_eye = np.eye module.np_linalg_pinv = np.linalg.pinv
module.np_identity = np.identity module.np_linalg_matrix_power = np.linalg.matrix_power
module.np_linalg_det = np.linalg.det
module.sp_linalg_lu = lambda x: sp.linalg.lu(x, True)
module.sp_linalg_schur = sp.linalg.schur
module.sp_linalg_hessenberg = lambda x: sp.linalg.hessenberg(x, True)
def file_import(filename, prefix="file_import_"): def file_import(filename, prefix="file_import_"):
filename = pathlib.Path(filename) filename = pathlib.Path(filename)

114
nac3standalone/demo/linalg/Cargo.lock generated Normal file
View File

@ -0,0 +1,114 @@
# This file is automatically @generated by Cargo.
# It is not intended for manual editing.
version = 3
[[package]]
name = "approx"
version = "0.5.1"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "cab112f0a86d568ea0e627cc1d6be74a1e9cd55214684db5561995f6dad897c6"
dependencies = [
"num-traits",
]
[[package]]
name = "autocfg"
version = "1.3.0"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "0c4b4d0bd25bd0b74681c0ad21497610ce1b7c91b1022cd21c80c6fbdd9476b0"
[[package]]
name = "cslice"
version = "0.3.0"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "0f8cb7306107e4b10e64994de6d3274bd08996a7c1322a27b86482392f96be0a"
[[package]]
name = "libm"
version = "0.2.8"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "4ec2a862134d2a7d32d7983ddcdd1c4923530833c9f2ea1a44fc5fa473989058"
[[package]]
name = "linalg"
version = "0.1.0"
dependencies = [
"cslice",
"nalgebra",
]
[[package]]
name = "nalgebra"
version = "0.32.6"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "7b5c17de023a86f59ed79891b2e5d5a94c705dbe904a5b5c9c952ea6221b03e4"
dependencies = [
"approx",
"num-complex",
"num-rational",
"num-traits",
"simba",
"typenum",
]
[[package]]
name = "num-complex"
version = "0.4.6"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "73f88a1307638156682bada9d7604135552957b7818057dcef22705b4d509495"
dependencies = [
"num-traits",
]
[[package]]
name = "num-integer"
version = "0.1.46"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "7969661fd2958a5cb096e56c8e1ad0444ac2bbcd0061bd28660485a44879858f"
dependencies = [
"num-traits",
]
[[package]]
name = "num-rational"
version = "0.4.2"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "f83d14da390562dca69fc84082e73e548e1ad308d24accdedd2720017cb37824"
dependencies = [
"num-integer",
"num-traits",
]
[[package]]
name = "num-traits"
version = "0.2.19"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "071dfc062690e90b734c0b2273ce72ad0ffa95f0c74596bc250dcfd960262841"
dependencies = [
"autocfg",
"libm",
]
[[package]]
name = "paste"
version = "1.0.15"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "57c0d7b74b563b49d38dae00a0c37d4d6de9b432382b2892f0574ddcae73fd0a"
[[package]]
name = "simba"
version = "0.8.1"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "061507c94fc6ab4ba1c9a0305018408e312e17c041eb63bef8aa726fa33aceae"
dependencies = [
"approx",
"num-complex",
"num-traits",
"paste",
]
[[package]]
name = "typenum"
version = "1.17.0"
source = "registry+https://github.com/rust-lang/crates.io-index"
checksum = "42ff0bf0c66b8238c6f3b578df37d0b7848e55df8577b3f74f92a69acceeb825"

View File

@ -0,0 +1,13 @@
[package]
name = "linalg"
version = "0.1.0"
edition = "2021"
[lib]
crate-type = ["staticlib"]
[dependencies]
nalgebra = {version = "0.32.6", default-features = false, features = ["libm", "alloc"]}
cslice = "0.3.0"
[workspace]

View File

@ -0,0 +1,406 @@
// Uses `nalgebra` crate to invoke `np_linalg` and `sp_linalg` functions
// When converting between `nalgebra::Matrix` and `NDArray` following considerations are necessary
//
// * Both `nalgebra::Matrix` and `NDArray` require their content to be stored in row-major order
// * `NDArray` data pointer can be directly read and converted to `nalgebra::Matrix` (row and column number must be known)
// * `nalgebra::Matrix::as_slice` returns the content of matrix in column-major order and initial data needs to be transposed before storing it in `NDArray` data pointer
use core::slice;
use nalgebra::DMatrix;
fn report_error(
error_name: &str,
fn_name: &str,
file_name: &str,
line_num: u32,
col_num: u32,
err_msg: &str,
) -> ! {
panic!(
"Exception {} from {} in {}:{}:{}, message: {}",
error_name, fn_name, file_name, line_num, col_num, err_msg
);
}
pub struct InputMatrix {
pub ndims: usize,
pub dims: *const usize,
pub data: *mut f64,
}
impl InputMatrix {
fn get_dims(&mut self) -> Vec<usize> {
let dims = unsafe { slice::from_raw_parts(self.dims, self.ndims) };
dims.to_vec()
}
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_cholesky(mat1: *mut InputMatrix, out: *mut InputMatrix) {
let mat1 = mat1.as_mut().unwrap();
let out = out.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_cholesky", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
if dim1[0] != dim1[1] {
let err_msg =
format!("last 2 dimensions of the array must be square: {0} != {1}", dim1[0], dim1[1]);
report_error("LinAlgError", "np_linalg_cholesky", file!(), line!(), column!(), &err_msg);
}
let outdim = out.get_dims();
let out_slice = unsafe { slice::from_raw_parts_mut(out.data, outdim[0] * outdim[1]) };
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let matrix1 = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let result = matrix1.cholesky();
match result {
Some(res) => {
out_slice.copy_from_slice(res.unpack().transpose().as_slice());
}
None => {
report_error(
"LinAlgError",
"np_linalg_cholesky",
file!(),
line!(),
column!(),
"Matrix is not positive definite",
);
}
};
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_qr(
mat1: *mut InputMatrix,
out_q: *mut InputMatrix,
out_r: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let out_q = out_q.as_mut().unwrap();
let out_r = out_r.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_cholesky", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let outq_dim = (*out_q).get_dims();
let outr_dim = (*out_r).get_dims();
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let out_q_slice = unsafe { slice::from_raw_parts_mut(out_q.data, outq_dim[0] * outq_dim[1]) };
let out_r_slice = unsafe { slice::from_raw_parts_mut(out_r.data, outr_dim[0] * outr_dim[1]) };
// Refer to https://github.com/dimforge/nalgebra/issues/735
let matrix1 = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let res = matrix1.qr();
let (q, r) = res.unpack();
// Uses different algo need to match numpy
out_q_slice.copy_from_slice(q.transpose().as_slice());
out_r_slice.copy_from_slice(r.transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_svd(
mat1: *mut InputMatrix,
outu: *mut InputMatrix,
outs: *mut InputMatrix,
outvh: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let outu = outu.as_mut().unwrap();
let outs = outs.as_mut().unwrap();
let outvh = outvh.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_svd", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let outu_dim = (*outu).get_dims();
let outs_dim = (*outs).get_dims();
let outvh_dim = (*outvh).get_dims();
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let out_u_slice = unsafe { slice::from_raw_parts_mut(outu.data, outu_dim[0] * outu_dim[1]) };
let out_s_slice = unsafe { slice::from_raw_parts_mut(outs.data, outs_dim[0]) };
let out_vh_slice =
unsafe { slice::from_raw_parts_mut(outvh.data, outvh_dim[0] * outvh_dim[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let result = matrix.svd(true, true);
out_u_slice.copy_from_slice(result.u.unwrap().transpose().as_slice());
out_s_slice.copy_from_slice(result.singular_values.as_slice());
out_vh_slice.copy_from_slice(result.v_t.unwrap().transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_inv(mat1: *mut InputMatrix, out: *mut InputMatrix) {
let mat1 = mat1.as_mut().unwrap();
let out = out.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_inv", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
if dim1[0] != dim1[1] {
let err_msg =
format!("last 2 dimensions of the array must be square: {0} != {1}", dim1[0], dim1[1]);
report_error("LinAlgError", "np_linalg_inv", file!(), line!(), column!(), &err_msg);
}
let outdim = out.get_dims();
let out_slice = unsafe { slice::from_raw_parts_mut(out.data, outdim[0] * outdim[1]) };
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
if !matrix.is_invertible() {
report_error(
"LinAlgError",
"np_linalg_inv",
file!(),
line!(),
column!(),
"no inverse for Singular Matrix",
);
}
let inv = matrix.try_inverse().unwrap();
out_slice.copy_from_slice(inv.transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_pinv(mat1: *mut InputMatrix, out: *mut InputMatrix) {
let mat1 = mat1.as_mut().unwrap();
let out = out.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_pinv", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let outdim = out.get_dims();
let out_slice = unsafe { slice::from_raw_parts_mut(out.data, outdim[0] * outdim[1]) };
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let svd = matrix.svd(true, true);
let inv = svd.pseudo_inverse(1e-15);
match inv {
Ok(m) => {
out_slice.copy_from_slice(m.transpose().as_slice());
}
Err(err_msg) => {
report_error("LinAlgError", "np_linalg_pinv", file!(), line!(), column!(), err_msg);
}
}
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_matrix_power(
mat1: *mut InputMatrix,
mat2: *mut InputMatrix,
out: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let mat2 = mat2.as_mut().unwrap();
let out = out.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D", mat1.ndims);
report_error("ValueError", "np_linalg_matrix_power", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let power = unsafe { slice::from_raw_parts_mut(mat2.data, 1) };
let power = power[0];
let outdim = out.get_dims();
let out_slice = unsafe { slice::from_raw_parts_mut(out.data, outdim[0] * outdim[1]) };
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let abs_pow = power.abs();
let matrix1 = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let mut result = matrix1.pow(abs_pow as u32);
if power < 0.0 {
if !result.is_invertible() {
report_error(
"LinAlgError",
"np_linalg_inv",
file!(),
line!(),
column!(),
"no inverse for Singular Matrix",
);
}
result = result.try_inverse().unwrap();
}
out_slice.copy_from_slice(result.transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn np_linalg_det(mat1: *mut InputMatrix, out: *mut InputMatrix) {
let mat1 = mat1.as_mut().unwrap();
let out = out.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "np_linalg_det", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let out_slice = unsafe { slice::from_raw_parts_mut(out.data, 1) };
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
if !matrix.is_square() {
let err_msg =
format!("last 2 dimensions of the array must be square: {0} != {1}", dim1[0], dim1[1]);
report_error("LinAlgError", "np_linalg_inv", file!(), line!(), column!(), &err_msg);
}
out_slice[0] = matrix.determinant();
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn sp_linalg_lu(
mat1: *mut InputMatrix,
out_l: *mut InputMatrix,
out_u: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let out_l = out_l.as_mut().unwrap();
let out_u = out_u.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "sp_linalg_lu", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
let outl_dim = (*out_l).get_dims();
let outu_dim = (*out_u).get_dims();
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let out_l_slice = unsafe { slice::from_raw_parts_mut(out_l.data, outl_dim[0] * outl_dim[1]) };
let out_u_slice = unsafe { slice::from_raw_parts_mut(out_u.data, outu_dim[0] * outu_dim[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let (_, l, u) = matrix.lu().unpack();
out_l_slice.copy_from_slice(l.transpose().as_slice());
out_u_slice.copy_from_slice(u.transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn sp_linalg_schur(
mat1: *mut InputMatrix,
out_t: *mut InputMatrix,
out_z: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let out_t = out_t.as_mut().unwrap();
let out_z = out_z.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "sp_linalg_schur", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
if dim1[0] != dim1[1] {
let err_msg =
format!("last 2 dimensions of the array must be square: {0} != {1}", dim1[0], dim1[1]);
report_error("LinAlgError", "np_linalg_schur", file!(), line!(), column!(), &err_msg);
}
let out_t_dim = (*out_t).get_dims();
let out_z_dim = (*out_z).get_dims();
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let out_t_slice = unsafe { slice::from_raw_parts_mut(out_t.data, out_t_dim[0] * out_t_dim[1]) };
let out_z_slice = unsafe { slice::from_raw_parts_mut(out_z.data, out_z_dim[0] * out_z_dim[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let (z, t) = matrix.schur().unpack();
out_t_slice.copy_from_slice(t.transpose().as_slice());
out_z_slice.copy_from_slice(z.transpose().as_slice());
}
/// # Safety
///
/// `mat1` should point to a valid 2DArray of `f64` floats in row-major order
#[no_mangle]
pub unsafe extern "C" fn sp_linalg_hessenberg(
mat1: *mut InputMatrix,
out_h: *mut InputMatrix,
out_q: *mut InputMatrix,
) {
let mat1 = mat1.as_mut().unwrap();
let out_h = out_h.as_mut().unwrap();
let out_q = out_q.as_mut().unwrap();
if mat1.ndims != 2 {
let err_msg = format!("expected 2D Vector Input, but received {}D input", mat1.ndims);
report_error("ValueError", "sp_linalg_hessenberg", file!(), line!(), column!(), &err_msg);
}
let dim1 = (*mat1).get_dims();
if dim1[0] != dim1[1] {
let err_msg =
format!("last 2 dimensions of the array must be square: {} != {}", dim1[0], dim1[1]);
report_error("LinAlgError", "sp_linalg_hessenberg", file!(), line!(), column!(), &err_msg);
}
let out_h_dim = (*out_h).get_dims();
let out_q_dim = (*out_q).get_dims();
let data_slice1 = unsafe { slice::from_raw_parts_mut(mat1.data, dim1[0] * dim1[1]) };
let out_h_slice = unsafe { slice::from_raw_parts_mut(out_h.data, out_h_dim[0] * out_h_dim[1]) };
let out_q_slice = unsafe { slice::from_raw_parts_mut(out_q.data, out_q_dim[0] * out_q_dim[1]) };
let matrix = DMatrix::from_row_slice(dim1[0], dim1[1], data_slice1);
let (q, h) = matrix.hessenberg().unpack();
out_h_slice.copy_from_slice(h.transpose().as_slice());
out_q_slice.copy_from_slice(q.transpose().as_slice());
}

View File

@ -2,6 +2,9 @@
set -e set -e
: "${DEMO_LINALG_STUB:=linalg/target/release/liblinalg.a}"
: "${DEMO_LINALG_STUB32:=linalg/target/i686-unknown-linux-gnu/release/liblinalg.a}"
if [ -z "$1" ]; then if [ -z "$1" ]; then
echo "No argument supplied" echo "No argument supplied"
exit 1 exit 1
@ -11,19 +14,19 @@ declare -a nac3args
while [ $# -ge 1 ]; do while [ $# -ge 1 ]; do
case "$1" in case "$1" in
--help) --help)
echo "Usage: run_demo.sh [--help] [--out OUTFILE] [--lli] [--debug] -- [NAC3ARGS...]" echo "Usage: run_demo.sh [--help] [--out OUTFILE] [--debug] [-i686] -- [NAC3ARGS...]"
exit exit
;; ;;
--out) --out)
shift shift
outfile="$1" outfile="$1"
;; ;;
--lli)
use_lli=1
;;
--debug) --debug)
debug=1 debug=1
;; ;;
-i686)
i686=1
;;
--) --)
shift shift
break break
@ -50,29 +53,19 @@ else
fi fi
rm -f ./*.o ./*.bc demo rm -f ./*.o ./*.bc demo
if [ -z "$use_lli" ]; then
if [ -z "$i686" ]; then
$nac3standalone "${nac3args[@]}" $nac3standalone "${nac3args[@]}"
clang -c -std=gnu11 -Wall -Wextra -O3 -o demo.o demo.c clang -c -std=gnu11 -Wall -Wextra -O3 -o demo.o demo.c
clang -lm -o demo module.o demo.o clang -o demo module.o demo.o $DEMO_LINALG_STUB -lm -Wl,--no-warn-search-mismatch
if [ -z "$outfile" ]; then
./demo
else
./demo > "$outfile"
fi
else else
$nac3standalone --emit-llvm "${nac3args[@]}" $nac3standalone --triple i686-unknown-linux-gnu "${nac3args[@]}"
clang -m32 -c -std=gnu11 -Wall -Wextra -O3 -msse2 -o demo.o demo.c
clang -c -std=gnu11 -Wall -Wextra -O3 -emit-llvm -o demo.bc demo.c clang -m32 -o demo module.o demo.o $DEMO_LINALG_STUB32 -lm -Wl,--no-warn-search-mismatch
fi
shopt -s nullglob
llvm-link -o nac3out.bc module*.bc main.bc if [ -z "$outfile" ]; then
shopt -u nullglob ./demo
else
if [ -z "$outfile" ]; then ./demo > "$outfile"
lli --extra-module demo.bc --extra-module irrt.bc nac3out.bc
else
lli --extra-module demo.bc --extra-module irrt.bc nac3out.bc > "$outfile"
fi
fi fi

View File

@ -0,0 +1,66 @@
@extern
def output_int32(x: int32):
...
@extern
def output_bool(x: bool):
...
def example1():
x, *ys, z = (1, 2, 3, 4, 5)
output_int32(x)
output_int32(ys[0])
output_int32(ys[1])
output_int32(ys[2])
output_int32(z)
def example2():
x, y, *zs = (1, 2, 3, 4, 5)
output_int32(x)
output_int32(y)
output_int32(zs[0])
output_int32(zs[1])
output_int32(zs[2])
def example3():
*xs, y, z = (1, 2, 3, 4, 5)
output_int32(xs[0])
output_int32(xs[1])
output_int32(xs[2])
output_int32(y)
output_int32(z)
def example4():
# Example from: https://docs.python.org/3/reference/simple_stmts.html#assignment-statements
x = [0, 1]
i = 0
i, x[i] = 1, 2 # i is updated, then x[i] is updated
output_int32(i)
output_int32(x[0])
output_int32(x[1])
class A:
value: int32
def __init__(self):
self.value = 1000
def example5():
ws = [88, 7, 8]
a = A()
x, [y, *ys, a.value], ws[0], (ws[0],) = 1, (2, False, 4, 5), 99, (6,)
output_int32(x)
output_int32(y)
output_bool(ys[0])
output_int32(ys[1])
output_int32(a.value)
output_int32(ws[0])
output_int32(ws[1])
output_int32(ws[2])
def run() -> int32:
example1()
example2()
example3()
example4()
example5()
return 0

View File

@ -867,6 +867,13 @@ def test_ndarray_minimum_broadcast_rhs_scalar():
output_ndarray_float_2(min_x_zeros) output_ndarray_float_2(min_x_zeros)
output_ndarray_float_2(min_x_ones) output_ndarray_float_2(min_x_ones)
def test_ndarray_argmin():
x = np_array([[1., 2.], [3., 4.]])
y = np_argmin(x)
output_ndarray_float_2(x)
output_int64(y)
def test_ndarray_max(): def test_ndarray_max():
x = np_identity(2) x = np_identity(2)
y = np_max(x) y = np_max(x)
@ -910,6 +917,13 @@ def test_ndarray_maximum_broadcast_rhs_scalar():
output_ndarray_float_2(max_x_zeros) output_ndarray_float_2(max_x_zeros)
output_ndarray_float_2(max_x_ones) output_ndarray_float_2(max_x_ones)
def test_ndarray_argmax():
x = np_array([[1., 2.], [3., 4.]])
y = np_argmax(x)
output_ndarray_float_2(x)
output_int64(y)
def test_ndarray_abs(): def test_ndarray_abs():
x = np_identity(2) x = np_identity(2)
y = abs(x) y = abs(x)
@ -1415,6 +1429,142 @@ def test_ndarray_nextafter_broadcast_rhs_scalar():
output_ndarray_float_2(nextafter_x_zeros) output_ndarray_float_2(nextafter_x_zeros)
output_ndarray_float_2(nextafter_x_ones) output_ndarray_float_2(nextafter_x_ones)
def test_ndarray_transpose():
x: ndarray[float, 2] = np_array([[1., 2., 3.], [4., 5., 6.]])
y = np_transpose(x)
z = np_transpose(y)
output_ndarray_float_2(x)
output_ndarray_float_2(y)
def test_ndarray_reshape():
w: ndarray[float, 1] = np_array([1., 2., 3., 4., 5., 6., 7., 8., 9., 10.])
x = np_reshape(w, (1, 2, 1, -1))
y = np_reshape(x, [2, -1])
z = np_reshape(y, 10)
x1: ndarray[int32, 1] = np_array([1, 2, 3, 4])
x2: ndarray[int32, 2] = np_reshape(x1, (2, 2))
output_ndarray_float_1(w)
output_ndarray_float_2(y)
output_ndarray_float_1(z)
def test_ndarray_dot():
x1: ndarray[float, 1] = np_array([5.0, 1.0, 4.0, 2.0])
y1: ndarray[float, 1] = np_array([5.0, 1.0, 6.0, 6.0])
z1 = np_dot(x1, y1)
x2: ndarray[int32, 1] = np_array([5, 1, 4, 2])
y2: ndarray[int32, 1] = np_array([5, 1, 6, 6])
z2 = np_dot(x2, y2)
x3: ndarray[bool, 1] = np_array([True, True, True, True])
y3: ndarray[bool, 1] = np_array([True, True, True, True])
z3 = np_dot(x3, y3)
z4 = np_dot(2, 3)
z5 = np_dot(2., 3.)
z6 = np_dot(True, False)
output_float64(z1)
output_int32(z2)
output_bool(z3)
output_int32(z4)
output_float64(z5)
output_bool(z6)
def test_ndarray_cholesky():
x: ndarray[float, 2] = np_array([[5.0, 1.0], [1.0, 4.0]])
y = np_linalg_cholesky(x)
output_ndarray_float_2(x)
output_ndarray_float_2(y)
def test_ndarray_qr():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
y, z = np_linalg_qr(x)
output_ndarray_float_2(x)
# QR Factorization is not unique and gives different results in numpy and nalgebra
# Reverting the decomposition to compare the initial arrays
a = y @ z
output_ndarray_float_2(a)
def test_ndarray_linalg_inv():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
y = np_linalg_inv(x)
output_ndarray_float_2(x)
output_ndarray_float_2(y)
def test_ndarray_pinv():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5]])
y = np_linalg_pinv(x)
output_ndarray_float_2(x)
output_ndarray_float_2(y)
def test_ndarray_matrix_power():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
y = np_linalg_matrix_power(x, -9)
output_ndarray_float_2(x)
output_ndarray_float_2(y)
def test_ndarray_det():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
y = np_linalg_det(x)
output_ndarray_float_2(x)
output_float64(y)
def test_ndarray_schur():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
t, z = sp_linalg_schur(x)
output_ndarray_float_2(x)
# Schur Factorization is not unique and gives different results in scipy and nalgebra
# Reverting the decomposition to compare the initial arrays
a = (z @ t) @ np_linalg_inv(z)
output_ndarray_float_2(a)
def test_ndarray_hessenberg():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 5.0, 8.5]])
h, q = sp_linalg_hessenberg(x)
output_ndarray_float_2(x)
# Hessenberg Factorization is not unique and gives different results in scipy and nalgebra
# Reverting the decomposition to compare the initial arrays
a = (q @ h) @ np_linalg_inv(q)
output_ndarray_float_2(a)
def test_ndarray_lu():
x: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5]])
l, u = sp_linalg_lu(x)
output_ndarray_float_2(x)
output_ndarray_float_2(l)
output_ndarray_float_2(u)
def test_ndarray_svd():
w: ndarray[float, 2] = np_array([[-5.0, -1.0, 2.0], [-1.0, 4.0, 7.5], [-1.0, 8.0, -8.5]])
x, y, z = np_linalg_svd(w)
output_ndarray_float_2(w)
# SVD Factorization is not unique and gives different results in numpy and nalgebra
# Reverting the decomposition to compare the initial arrays
a = x @ z
output_ndarray_float_2(a)
output_ndarray_float_1(y)
def run() -> int32: def run() -> int32:
test_ndarray_ctor() test_ndarray_ctor()
test_ndarray_empty() test_ndarray_empty()
@ -1524,11 +1674,13 @@ def run() -> int32:
test_ndarray_minimum_broadcast() test_ndarray_minimum_broadcast()
test_ndarray_minimum_broadcast_lhs_scalar() test_ndarray_minimum_broadcast_lhs_scalar()
test_ndarray_minimum_broadcast_rhs_scalar() test_ndarray_minimum_broadcast_rhs_scalar()
test_ndarray_argmin()
test_ndarray_max() test_ndarray_max()
test_ndarray_maximum() test_ndarray_maximum()
test_ndarray_maximum_broadcast() test_ndarray_maximum_broadcast()
test_ndarray_maximum_broadcast_lhs_scalar() test_ndarray_maximum_broadcast_lhs_scalar()
test_ndarray_maximum_broadcast_rhs_scalar() test_ndarray_maximum_broadcast_rhs_scalar()
test_ndarray_argmax()
test_ndarray_abs() test_ndarray_abs()
test_ndarray_isnan() test_ndarray_isnan()
test_ndarray_isinf() test_ndarray_isinf()
@ -1591,5 +1743,18 @@ def run() -> int32:
test_ndarray_nextafter_broadcast() test_ndarray_nextafter_broadcast()
test_ndarray_nextafter_broadcast_lhs_scalar() test_ndarray_nextafter_broadcast_lhs_scalar()
test_ndarray_nextafter_broadcast_rhs_scalar() test_ndarray_nextafter_broadcast_rhs_scalar()
test_ndarray_transpose()
test_ndarray_reshape()
test_ndarray_dot()
test_ndarray_cholesky()
test_ndarray_qr()
test_ndarray_svd()
test_ndarray_linalg_inv()
test_ndarray_pinv()
test_ndarray_matrix_power()
test_ndarray_det()
test_ndarray_lu()
test_ndarray_schur()
test_ndarray_hessenberg()
return 0 return 0

View File

@ -9,15 +9,12 @@
#![allow(clippy::too_many_lines, clippy::wildcard_imports)] #![allow(clippy::too_many_lines, clippy::wildcard_imports)]
use clap::Parser; use clap::Parser;
use inkwell::context::Context;
use inkwell::{ use inkwell::{
memory_buffer::MemoryBuffer, passes::PassBuilderOptions, support::is_multithreaded, targets::*, memory_buffer::MemoryBuffer, passes::PassBuilderOptions, support::is_multithreaded, targets::*,
OptimizationLevel, OptimizationLevel,
}; };
use parking_lot::{Mutex, RwLock}; use nac3core::codegen::irrt::setup_irrt_exceptions;
use std::collections::HashSet;
use std::num::NonZeroUsize;
use std::{collections::HashMap, fs, path::Path, sync::Arc};
use nac3core::{ use nac3core::{
codegen::{ codegen::{
concrete_type::ConcreteTypeStore, irrt::load_irrt, CodeGenLLVMOptions, concrete_type::ConcreteTypeStore, irrt::load_irrt, CodeGenLLVMOptions,
@ -39,6 +36,10 @@ use nac3parser::{
ast::{Constant, Expr, ExprKind, StmtKind, StrRef}, ast::{Constant, Expr, ExprKind, StmtKind, StrRef},
parser, parser,
}; };
use parking_lot::{Mutex, RwLock};
use std::collections::HashSet;
use std::num::NonZeroUsize;
use std::{collections::HashMap, fs, path::Path, sync::Arc};
mod basic_symbol_resolver; mod basic_symbol_resolver;
use basic_symbol_resolver::*; use basic_symbol_resolver::*;
@ -113,7 +114,9 @@ fn handle_typevar_definition(
x, x,
HashMap::new(), HashMap::new(),
)?; )?;
get_type_from_type_annotation_kinds(def_list, unifier, &ty, &mut None) get_type_from_type_annotation_kinds(
def_list, unifier, primitives, &ty, &mut None,
)
}) })
.collect::<Result<Vec<_>, _>>()?; .collect::<Result<Vec<_>, _>>()?;
let loc = func.location; let loc = func.location;
@ -152,7 +155,7 @@ fn handle_typevar_definition(
HashMap::new(), HashMap::new(),
)?; )?;
let constraint = let constraint =
get_type_from_type_annotation_kinds(def_list, unifier, &ty, &mut None)?; get_type_from_type_annotation_kinds(def_list, unifier, primitives, &ty, &mut None)?;
let loc = func.location; let loc = func.location;
Ok(unifier.get_fresh_const_generic_var(constraint, Some(generic_name), Some(loc)).ty) Ok(unifier.get_fresh_const_generic_var(constraint, Some(generic_name), Some(loc)).ty)
@ -239,8 +242,6 @@ fn handle_assignment_pattern(
} }
fn main() { fn main() {
const SIZE_T: u32 = usize::BITS;
let cli = CommandLineArgs::parse(); let cli = CommandLineArgs::parse();
let CommandLineArgs { file_name, threads, opt_level, emit_llvm, triple, mcpu, target_features } = let CommandLineArgs { file_name, threads, opt_level, emit_llvm, triple, mcpu, target_features } =
cli; cli;
@ -273,6 +274,24 @@ fn main() {
_ => OptimizationLevel::Aggressive, _ => OptimizationLevel::Aggressive,
}; };
let target_machine_options = CodeGenTargetMachineOptions {
triple,
cpu: mcpu,
features: target_features,
reloc_mode: RelocMode::PIC,
..host_target_machine
};
let size_t = Context::create()
.ptr_sized_int_type(
&target_machine_options
.create_target_machine(opt_level)
.map(|tm| tm.get_target_data())
.unwrap(),
None,
)
.get_bit_width();
let program = match fs::read_to_string(file_name.clone()) { let program = match fs::read_to_string(file_name.clone()) {
Ok(program) => program, Ok(program) => program,
Err(err) => { Err(err) => {
@ -281,9 +300,9 @@ fn main() {
} }
}; };
let primitive: PrimitiveStore = TopLevelComposer::make_primitives(SIZE_T).0; let primitive: PrimitiveStore = TopLevelComposer::make_primitives(size_t).0;
let (mut composer, builtins_def, builtins_ty) = let (mut composer, builtins_def, builtins_ty) =
TopLevelComposer::new(vec![], ComposerConfig::default(), SIZE_T); TopLevelComposer::new(vec![], ComposerConfig::default(), size_t);
let internal_resolver: Arc<ResolverInternal> = ResolverInternal { let internal_resolver: Arc<ResolverInternal> = ResolverInternal {
id_to_type: builtins_ty.into(), id_to_type: builtins_ty.into(),
@ -296,6 +315,16 @@ fn main() {
let resolver = let resolver =
Arc::new(Resolver(internal_resolver.clone())) as Arc<dyn SymbolResolver + Send + Sync>; Arc::new(Resolver(internal_resolver.clone())) as Arc<dyn SymbolResolver + Send + Sync>;
let context = inkwell::context::Context::create();
// Process IRRT
let irrt = load_irrt(&context);
setup_irrt_exceptions(&context, &irrt, resolver.as_ref());
if emit_llvm {
irrt.write_bitcode_to_path(Path::new("irrt.bc"));
}
// Process the Python script
let parser_result = parser::parse_program(&program, file_name.into()).unwrap(); let parser_result = parser::parse_program(&program, file_name.into()).unwrap();
for stmt in parser_result { for stmt in parser_result {
@ -371,16 +400,7 @@ fn main() {
instance_to_stmt[""].clone() instance_to_stmt[""].clone()
}; };
let llvm_options = CodeGenLLVMOptions { let llvm_options = CodeGenLLVMOptions { opt_level, target: target_machine_options };
opt_level,
target: CodeGenTargetMachineOptions {
triple,
cpu: mcpu,
features: target_features,
reloc_mode: RelocMode::PIC,
..host_target_machine
},
};
let task = CodeGenTask { let task = CodeGenTask {
subst: Vec::default(), subst: Vec::default(),
@ -403,14 +423,14 @@ fn main() {
membuffer.lock().push(buffer); membuffer.lock().push(buffer);
}))); })));
let threads = (0..threads) let threads = (0..threads)
.map(|i| Box::new(DefaultCodeGenerator::new(format!("module{i}"), SIZE_T))) .map(|i| Box::new(DefaultCodeGenerator::new(format!("module{i}"), size_t)))
.collect(); .collect();
let (registry, handles) = WorkerRegistry::create_workers(threads, top_level, &llvm_options, &f); let (registry, handles) = WorkerRegistry::create_workers(threads, top_level, &llvm_options, &f);
registry.add_task(task); registry.add_task(task);
registry.wait_tasks_complete(handles); registry.wait_tasks_complete(handles);
// Link all modules together into `main`
let buffers = membuffers.lock(); let buffers = membuffers.lock();
let context = inkwell::context::Context::create();
let main = context let main = context
.create_module_from_ir(MemoryBuffer::create_from_memory_range(&buffers[0], "main")) .create_module_from_ir(MemoryBuffer::create_from_memory_range(&buffers[0], "main"))
.unwrap(); .unwrap();
@ -430,12 +450,9 @@ fn main() {
main.link_in_module(other).unwrap(); main.link_in_module(other).unwrap();
} }
let irrt = load_irrt(&context);
if emit_llvm {
irrt.write_bitcode_to_path(Path::new("irrt.bc"));
}
main.link_in_module(irrt).unwrap(); main.link_in_module(irrt).unwrap();
// Private all functions except "run"
let mut function_iter = main.get_first_function(); let mut function_iter = main.get_first_function();
while let Some(func) = function_iter { while let Some(func) = function_iter {
if func.count_basic_blocks() > 0 && func.get_name().to_str().unwrap() != "run" { if func.count_basic_blocks() > 0 && func.get_name().to_str().unwrap() != "run" {
@ -444,6 +461,7 @@ fn main() {
function_iter = func.get_next_function(); function_iter = func.get_next_function();
} }
// Optimize `main`
let target_machine = llvm_options let target_machine = llvm_options
.target .target
.create_target_machine(llvm_options.opt_level) .create_target_machine(llvm_options.opt_level)
@ -457,6 +475,7 @@ fn main() {
panic!("Failed to run optimization for module `main`: {}", err.to_string()); panic!("Failed to run optimization for module `main`: {}", err.to_string());
} }
// Write output
target_machine target_machine
.write_to_file(&main, FileType::Object, Path::new("module.o")) .write_to_file(&main, FileType::Object, Path::new("module.o"))
.expect("couldn't write module to file"); .expect("couldn't write module to file");