core/ndstrides: implement np_shape() and np_strides()
These functions are not important, but they are handy for debugging. `np.strides()` is not an actual NumPy function, but `ndarray.strides` is used.
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@ -27,7 +27,7 @@ use crate::{
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typecheck::typedef::Type,
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};
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use super::any::AnyObject;
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use super::{any::AnyObject, tuple::TupleObject};
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/// Fields of [`NDArray`]
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pub struct NDArrayFields<'ctx, F: FieldTraversal<'ctx>> {
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@ -427,6 +427,62 @@ impl<'ctx> NDArrayObject<'ctx> {
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})
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.unwrap();
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}
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/// Create the shape tuple of this ndarray like `np.shape(<ndarray>)`.
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///
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/// The returned integers in the tuple are in int32.
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pub fn make_shape_tuple<G: CodeGenerator + ?Sized>(
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&self,
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generator: &mut G,
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ctx: &mut CodeGenContext<'ctx, '_>,
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) -> TupleObject<'ctx> {
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// TODO: Return a tuple of SizeT
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let mut objects = Vec::with_capacity(self.ndims as usize);
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for i in 0..self.ndims {
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let dim = self
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.instance
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.get(generator, ctx, |f| f.shape)
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.get_index_const(generator, ctx, i64::try_from(i).unwrap())
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.truncate_or_bit_cast(generator, ctx, Int32);
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objects.push(AnyObject {
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ty: ctx.primitives.int32,
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value: dim.value.as_basic_value_enum(),
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});
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}
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TupleObject::from_objects(generator, ctx, objects)
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}
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/// Create the strides tuple of this ndarray like `<ndarray>.strides`.
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///
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/// The returned integers in the tuple are in int32.
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pub fn make_strides_tuple<G: CodeGenerator + ?Sized>(
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&self,
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generator: &mut G,
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ctx: &mut CodeGenContext<'ctx, '_>,
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) -> TupleObject<'ctx> {
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// TODO: Return a tuple of SizeT.
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let mut objects = Vec::with_capacity(self.ndims as usize);
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for i in 0..self.ndims {
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let dim = self
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.instance
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.get(generator, ctx, |f| f.strides)
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.get_index_const(generator, ctx, i64::try_from(i).unwrap())
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.truncate_or_bit_cast(generator, ctx, Int32);
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objects.push(AnyObject {
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ty: ctx.primitives.int32,
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value: dim.value.as_basic_value_enum(),
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});
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}
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TupleObject::from_objects(generator, ctx, objects)
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}
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}
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/// A convenience enum for implementing functions that acts on scalars or ndarrays or both.
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@ -16,6 +16,7 @@ use crate::{
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builtin_fns,
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classes::{ProxyValue, RangeValue},
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numpy::*,
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object::{any::AnyObject, ndarray::NDArrayObject},
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stmt::exn_constructor,
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},
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symbol_resolver::SymbolValue,
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@ -511,6 +512,10 @@ impl<'a> BuiltinBuilder<'a> {
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| PrimDef::FunNpEye
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| PrimDef::FunNpIdentity => self.build_ndarray_other_factory_function(prim),
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PrimDef::FunNpShape | PrimDef::FunNpStrides => {
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self.build_ndarray_property_getter_function(prim)
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}
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PrimDef::FunStr => self.build_str_function(),
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PrimDef::FunFloor | PrimDef::FunFloor64 | PrimDef::FunCeil | PrimDef::FunCeil64 => {
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@ -1385,6 +1390,54 @@ impl<'a> BuiltinBuilder<'a> {
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}
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}
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fn build_ndarray_property_getter_function(&mut self, prim: PrimDef) -> TopLevelDef {
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debug_assert_prim_is_allowed(prim, &[PrimDef::FunNpShape, PrimDef::FunNpStrides]);
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let in_ndarray_ty = self.unifier.get_fresh_var_with_range(
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&[self.primitives.ndarray],
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Some("T".into()),
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None,
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);
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match prim {
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PrimDef::FunNpShape | PrimDef::FunNpStrides => {
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// The function signatures of `np_shape` an `np_size` are the same.
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// Mixed together for convenience.
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// The return type is a tuple of variable length depending on the ndims of the input ndarray.
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let ret_ty = self.unifier.get_dummy_var().ty; // Handled by special folding
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create_fn_by_codegen(
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self.unifier,
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&into_var_map([in_ndarray_ty]),
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prim.name(),
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ret_ty,
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&[(in_ndarray_ty.ty, "a")],
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Box::new(move |ctx, obj, fun, args, generator| {
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assert!(obj.is_none());
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assert_eq!(args.len(), 1);
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let ndarray_ty = fun.0.args[0].ty;
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let ndarray =
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args[0].1.clone().to_basic_value_enum(ctx, generator, ndarray_ty)?;
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let ndarray = AnyObject { ty: ndarray_ty, value: ndarray };
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let ndarray = NDArrayObject::from_object(generator, ctx, ndarray);
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let result_tuple = match prim {
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PrimDef::FunNpShape => ndarray.make_shape_tuple(generator, ctx),
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PrimDef::FunNpStrides => ndarray.make_strides_tuple(generator, ctx),
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_ => unreachable!(),
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};
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Ok(Some(result_tuple.value.as_basic_value_enum()))
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}),
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)
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}
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_ => unreachable!(),
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}
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}
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/// Build the `str()` function.
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fn build_str_function(&mut self) -> TopLevelDef {
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let prim = PrimDef::FunStr;
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@ -1887,8 +1940,8 @@ impl<'a> BuiltinBuilder<'a> {
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self.unifier,
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&into_var_map([ndarray_ty]),
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prim.name(),
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ndarray_ty.ty,
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&[(ndarray_ty.ty, "x")],
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self.ndarray_num_ty,
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&[(self.ndarray_num_ty, "x")],
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Box::new(move |ctx, _, fun, args, generator| {
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let arg_ty = fun.0.args[0].ty;
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let arg_val =
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@ -53,6 +53,10 @@ pub enum PrimDef {
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FunNpEye,
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FunNpIdentity,
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// NumPy ndarray property getters
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FunNpShape,
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FunNpStrides,
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// Miscellaneous NumPy & SciPy functions
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FunNpRound,
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FunNpFloor,
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@ -239,6 +243,10 @@ impl PrimDef {
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PrimDef::FunNpEye => fun("np_eye", None),
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PrimDef::FunNpIdentity => fun("np_identity", None),
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// NumPy NDArray property getters,
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PrimDef::FunNpShape => fun("np_shape", None),
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PrimDef::FunNpStrides => fun("np_strides", None),
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// Miscellaneous NumPy & SciPy functions
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PrimDef::FunNpRound => fun("np_round", None),
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PrimDef::FunNpFloor => fun("np_floor", None),
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@ -1,7 +1,7 @@
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use std::cmp::max;
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use std::collections::{HashMap, HashSet};
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use std::convert::{From, TryInto};
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use std::iter::once;
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use std::iter::{self, once};
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use std::{cell::RefCell, sync::Arc};
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use super::{
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@ -1183,6 +1183,45 @@ impl<'a> Inferencer<'a> {
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}));
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}
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if ["np_shape".into(), "np_strides".into()].contains(id) && args.len() == 1 {
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let ndarray = self.fold_expr(args.remove(0))?;
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let ndims = arraylike_get_ndims(self.unifier, ndarray.custom.unwrap());
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// Make a tuple of size `ndims` full of int32 (TODO: Make it usize)
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let ret_ty = TypeEnum::TTuple {
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ty: iter::repeat(self.primitives.int32).take(ndims as usize).collect_vec(),
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is_vararg_ctx: false,
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};
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let ret_ty = self.unifier.add_ty(ret_ty);
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let func_ty = TypeEnum::TFunc(FunSignature {
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args: vec![FuncArg {
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name: "a".into(),
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default_value: None,
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ty: ndarray.custom.unwrap(),
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is_vararg: false,
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}],
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ret: ret_ty,
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vars: VarMap::new(),
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});
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let func_ty = self.unifier.add_ty(func_ty);
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return Ok(Some(Located {
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location,
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custom: Some(ret_ty),
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node: ExprKind::Call {
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func: Box::new(Located {
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custom: Some(func_ty),
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location: func.location,
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node: ExprKind::Name { id: *id, ctx: *ctx },
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}),
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args: vec![ndarray],
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keywords: vec![],
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},
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}));
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}
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if id == &"np_dot".into() {
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let arg0 = self.fold_expr(args.remove(0))?;
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let arg1 = self.fold_expr(args.remove(0))?;
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@ -179,6 +179,10 @@ def patch(module):
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module.np_identity = np.identity
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module.np_array = np.array
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# NumPy NDArray property getters
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module.np_shape = np.shape
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module.np_strides = lambda ndarray: ndarray.strides
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# NumPy Math functions
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module.np_isnan = np.isnan
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module.np_isinf = np.isinf
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