[core] codegen: Implement NDArray functions from a0a1f35b
This commit is contained in:
parent
110416d07a
commit
44498f22f6
@ -722,7 +722,7 @@ fn format_rpc_ret<'ctx>(
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);
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}
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ndarray.create_data(generator, ctx, llvm_elem_ty, num_elements);
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unsafe { ndarray.create_data(generator, ctx) };
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let ndarray_data = ndarray.data().base_ptr(ctx, generator);
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let ndarray_data_i8 =
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@ -2521,7 +2521,7 @@ fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
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generator: &mut G,
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ctx: &mut CodeGenContext<'ctx, '_>,
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ty: Type,
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ndims: Type,
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ndims_ty: Type,
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v: NDArrayValue<'ctx>,
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slice: &Expr<Option<Type>>,
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) -> Result<Option<ValueEnum<'ctx>>, String> {
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@ -2529,7 +2529,7 @@ fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
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let llvm_i32 = ctx.ctx.i32_type();
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let llvm_usize = generator.get_size_type(ctx.ctx);
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let TypeEnum::TLiteral { values, .. } = &*ctx.unifier.get_ty_immutable(ndims) else {
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let TypeEnum::TLiteral { values, .. } = &*ctx.unifier.get_ty_immutable(ndims_ty) else {
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codegen_unreachable!(ctx)
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};
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@ -2562,10 +2562,6 @@ fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
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_ => 1,
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};
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let ndarray_ndims_ty = ctx.unifier.get_fresh_literal(
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ndims.iter().map(|v| SymbolValue::U64(v - subscripted_dims)).collect(),
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None,
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);
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let llvm_ndarray_data_t = ctx.get_llvm_type(generator, ty).as_basic_type_enum();
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let sizeof_elem = llvm_ndarray_data_t.size_of().unwrap();
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@ -2759,27 +2755,13 @@ fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
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// Accessing an element from a multi-dimensional `ndarray`
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let Some(index_addr) = make_indices_arr(generator, ctx)? else { return Ok(None) };
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let num_dims = extract_ndims(&ctx.unifier, ndims_ty) - 1;
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// Create a new array, remove the top dimension from the dimension-size-list, and copy the
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// elements over
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let ndarray = NDArrayType::new(
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generator,
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ctx.ctx,
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llvm_ndarray_data_t,
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Some(extract_ndims(&ctx.unifier, ndarray_ndims_ty)),
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)
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.alloca(generator, ctx, None);
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let num_dims = v.load_ndims(ctx);
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ndarray.store_ndims(
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ctx,
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generator,
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ctx.builder
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.build_int_sub(num_dims, llvm_usize.const_int(1, false), "")
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.unwrap(),
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);
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let ndarray_num_dims = ndarray.load_ndims(ctx);
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ndarray.create_shape(ctx, llvm_usize, ndarray_num_dims);
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let ndarray =
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NDArrayType::new(generator, ctx.ctx, llvm_ndarray_data_t, Some(num_dims))
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.construct_uninitialized(generator, ctx, None);
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let ndarray_num_dims = ctx
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.builder
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@ -2818,7 +2800,7 @@ fn gen_ndarray_subscript_expr<'ctx, G: CodeGenerator>(
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.builder
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.build_int_z_extend_or_bit_cast(ndarray_num_elems, sizeof_elem.get_type(), "")
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.unwrap();
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ndarray.create_data(generator, ctx, llvm_ndarray_data_t, ndarray_num_elems);
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unsafe { ndarray.create_data(generator, ctx) };
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let v_data_src_ptr = v.data().ptr_offset(ctx, generator, &index_addr, None);
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call_memcpy_generic(
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@ -61,6 +61,7 @@ where
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) -> Result<IntValue<'ctx>, String>,
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{
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let llvm_usize = generator.get_size_type(ctx.ctx);
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let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty);
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// Assert that all dimensions are non-negative
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let shape_len = shape_len_fn(generator, ctx, shape)?;
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@ -100,15 +101,10 @@ where
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llvm_usize.const_int(1, false),
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)?;
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let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty);
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let ndarray =
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NDArrayType::new(generator, ctx.ctx, llvm_elem_ty, None).alloca(generator, ctx, None);
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let num_dims = shape_len_fn(generator, ctx, shape)?;
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ndarray.store_ndims(ctx, generator, num_dims);
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let ndarray_num_dims = ndarray.load_ndims(ctx);
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ndarray.create_shape(ctx, llvm_usize, ndarray_num_dims);
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let ndarray = NDArrayType::new(generator, ctx.ctx, llvm_elem_ty, None)
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.construct_dyn_ndims(generator, ctx, num_dims, None);
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// Copy the dimension sizes from shape to ndarray.dims
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let shape_len = shape_len_fn(generator, ctx, shape)?;
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@ -133,7 +129,7 @@ where
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llvm_usize.const_int(1, false),
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)?;
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let ndarray = ndarray_init_data(generator, ctx, elem_ty, ndarray);
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unsafe { ndarray.create_data(generator, ctx) };
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Ok(ndarray)
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}
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@ -173,32 +169,11 @@ pub fn create_ndarray_const_shape<'ctx, G: CodeGenerator + ?Sized>(
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let ndarray = NDArrayType::new(generator, ctx.ctx, llvm_dtype, Some(shape.len() as u64))
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.construct_dyn_shape(generator, ctx, shape, None);
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let ndarray = ndarray_init_data(generator, ctx, elem_ty, ndarray);
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unsafe { ndarray.create_data(generator, ctx) };
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Ok(ndarray)
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}
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/// Initializes the `data` field of [`NDArrayValue`] based on the `ndims` and `shape` fields.
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fn ndarray_init_data<'ctx, G: CodeGenerator + ?Sized>(
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generator: &mut G,
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ctx: &mut CodeGenContext<'ctx, '_>,
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elem_ty: Type,
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ndarray: NDArrayValue<'ctx>,
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) -> NDArrayValue<'ctx> {
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let llvm_ndarray_data_t = ctx.get_llvm_type(generator, elem_ty).as_basic_type_enum();
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assert!(llvm_ndarray_data_t.is_sized());
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let ndarray_num_elems = call_ndarray_calc_size(
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generator,
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ctx,
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&ndarray.shape().as_slice_value(ctx, generator),
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(None, None),
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);
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ndarray.create_data(generator, ctx, llvm_ndarray_data_t, ndarray_num_elems);
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ndarray
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}
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fn ndarray_zero_value<'ctx, G: CodeGenerator + ?Sized>(
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generator: &mut G,
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ctx: &mut CodeGenContext<'ctx, '_>,
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@ -1206,6 +1181,7 @@ pub fn ndarray_sliced_copy<'ctx, G: CodeGenerator + ?Sized>(
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) -> Result<NDArrayValue<'ctx>, String> {
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let llvm_i32 = ctx.ctx.i32_type();
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let llvm_usize = generator.get_size_type(ctx.ctx);
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let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty);
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let ndarray =
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if slices.is_empty() {
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@ -1220,7 +1196,6 @@ pub fn ndarray_sliced_copy<'ctx, G: CodeGenerator + ?Sized>(
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},
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)?
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} else {
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let llvm_elem_ty = ctx.get_llvm_type(generator, elem_ty);
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let ndarray = NDArrayType::new(generator, ctx.ctx, llvm_elem_ty, None)
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.construct_dyn_ndims(generator, ctx, this.load_ndims(ctx), None);
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@ -1282,7 +1257,9 @@ pub fn ndarray_sliced_copy<'ctx, G: CodeGenerator + ?Sized>(
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)
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.unwrap();
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ndarray_init_data(generator, ctx, elem_ty, ndarray)
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unsafe { ndarray.create_data(generator, ctx) };
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ndarray
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};
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ndarray_sliced_copyto_impl(
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@ -198,7 +198,7 @@ impl<'ctx> NDArrayType<'ctx> {
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let itemsize = ctx
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.builder
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.build_int_z_extend_or_bit_cast(self.dtype.size_of().unwrap(), self.llvm_usize, "")
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.build_int_truncate_or_bit_cast(self.dtype.size_of().unwrap(), self.llvm_usize, "")
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.unwrap();
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ndarray.store_itemsize(ctx, generator, itemsize);
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@ -10,7 +10,7 @@ use super::{
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};
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use crate::codegen::{
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irrt,
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llvm_intrinsics::call_int_umin,
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llvm_intrinsics::{call_int_umin, call_memcpy_generic_array},
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stmt::gen_for_callback_incrementing,
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type_aligned_alloca,
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types::{ndarray::NDArrayType, structure::StructField},
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@ -186,21 +186,23 @@ impl<'ctx> NDArrayValue<'ctx> {
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/// Convenience method for creating a new array storing data elements with the given element
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/// type `elem_ty` and `size`.
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pub fn create_data<G: CodeGenerator + ?Sized>(
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///
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/// The data buffer will be allocated on the stack, and is considered to be owned by this ndarray instance.
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///
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/// # Safety
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///
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/// The caller must ensure that `shape` and `itemsize` of this ndarray instance is initialized.
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pub unsafe fn create_data<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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elem_ty: BasicTypeEnum<'ctx>,
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size: IntValue<'ctx>,
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) {
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let itemsize = ctx
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.builder
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.build_int_z_extend_or_bit_cast(elem_ty.size_of().unwrap(), size.get_type(), "")
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.unwrap();
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let nbytes = ctx.builder.build_int_mul(size, itemsize, "").unwrap();
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let nbytes = self.nbytes(generator, ctx);
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let data = type_aligned_alloca(generator, ctx, elem_ty, nbytes, None);
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let data = type_aligned_alloca(generator, ctx, self.dtype, nbytes, None);
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self.store_data(ctx, data);
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self.set_strides_contiguous(generator, ctx);
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}
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/// Returns a proxy object to the field storing the data of this `NDArray`.
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@ -208,6 +210,173 @@ impl<'ctx> NDArrayValue<'ctx> {
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pub fn data(&self) -> NDArrayDataProxy<'ctx, '_> {
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NDArrayDataProxy(self)
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}
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/// Copy shape dimensions from an array.
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pub fn copy_shape_from_array<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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shape: PointerValue<'ctx>,
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) {
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let num_items = self.load_ndims(ctx);
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call_memcpy_generic_array(
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ctx,
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self.shape().base_ptr(ctx, generator),
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shape,
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num_items,
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ctx.ctx.bool_type().const_zero(),
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);
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}
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/// Copy shape dimensions from an ndarray.
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/// Panics if `ndims` mismatches.
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pub fn copy_shape_from_ndarray<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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src_ndarray: NDArrayValue<'ctx>,
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) {
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if self.ndims.is_some() && src_ndarray.ndims.is_some() {
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assert_eq!(self.ndims, src_ndarray.ndims);
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} else {
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let self_ndims = self.load_ndims(ctx);
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let src_ndims = src_ndarray.load_ndims(ctx);
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ctx.make_assert(
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generator,
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ctx.builder.build_int_compare(
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IntPredicate::EQ,
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self_ndims,
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src_ndims,
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""
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).unwrap(),
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"0:AssertionError",
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"NDArrayValue::copy_shape_from_ndarray: Expected self.ndims ({0}) == src_ndarray.ndims ({1})",
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[Some(self_ndims), Some(src_ndims), None],
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ctx.current_loc
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);
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}
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let src_shape = src_ndarray.shape().base_ptr(ctx, generator);
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self.copy_shape_from_array(generator, ctx, src_shape);
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}
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/// Copy strides dimensions from an array.
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pub fn copy_strides_from_array<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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strides: PointerValue<'ctx>,
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) {
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let num_items = self.load_ndims(ctx);
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call_memcpy_generic_array(
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ctx,
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self.strides().base_ptr(ctx, generator),
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strides,
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num_items,
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ctx.ctx.bool_type().const_zero(),
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);
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}
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/// Copy strides dimensions from an ndarray.
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/// Panics if `ndims` mismatches.
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pub fn copy_strides_from_ndarray<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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src_ndarray: NDArrayValue<'ctx>,
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) {
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if self.ndims.is_some() && src_ndarray.ndims.is_some() {
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assert_eq!(self.ndims, src_ndarray.ndims);
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} else {
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let self_ndims = self.load_ndims(ctx);
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let src_ndims = src_ndarray.load_ndims(ctx);
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ctx.make_assert(
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generator,
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ctx.builder.build_int_compare(
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IntPredicate::EQ,
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self_ndims,
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src_ndims,
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""
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).unwrap(),
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"0:AssertionError",
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"NDArrayValue::copy_shape_from_ndarray: Expected self.ndims ({0}) == src_ndarray.ndims ({1})",
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[Some(self_ndims), Some(src_ndims), None],
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ctx.current_loc
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);
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}
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let src_strides = src_ndarray.strides().base_ptr(ctx, generator);
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self.copy_strides_from_array(generator, ctx, src_strides);
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}
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/// Get the `np.size()` of this ndarray.
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pub fn size<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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) -> IntValue<'ctx> {
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irrt::ndarray::call_nac3_ndarray_size(generator, ctx, *self)
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}
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/// Get the `ndarray.nbytes` of this ndarray.
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pub fn nbytes<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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) -> IntValue<'ctx> {
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irrt::ndarray::call_nac3_ndarray_nbytes(generator, ctx, *self)
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}
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/// Get the `len()` of this ndarray.
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pub fn len<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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) -> IntValue<'ctx> {
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irrt::ndarray::call_nac3_ndarray_len(generator, ctx, *self)
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}
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/// Check if this ndarray is C-contiguous.
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///
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/// See NumPy's `flags["C_CONTIGUOUS"]`: <https://numpy.org/doc/stable/reference/generated/numpy.ndarray.flags.html#numpy.ndarray.flags>
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pub fn is_c_contiguous<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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) -> IntValue<'ctx> {
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irrt::ndarray::call_nac3_ndarray_is_c_contiguous(generator, ctx, *self)
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}
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/// Call [`call_nac3_ndarray_set_strides_by_shape`] on this ndarray to update `strides`.
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///
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/// Update the ndarray's strides to make the ndarray contiguous.
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pub fn set_strides_contiguous<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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) {
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irrt::ndarray::call_nac3_ndarray_set_strides_by_shape(generator, ctx, *self);
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}
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/// Copy data from another ndarray.
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///
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/// This ndarray and `src` is that their `np.size()` should be the same. Their shapes
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/// do not matter. The copying order is determined by how their flattened views look.
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///
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/// Panics if the `dtype`s of ndarrays are different.
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pub fn copy_data_from<G: CodeGenerator + ?Sized>(
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&self,
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generator: &G,
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ctx: &CodeGenContext<'ctx, '_>,
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src: NDArrayValue<'ctx>,
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) {
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assert_eq!(self.dtype, src.dtype, "self and src dtype should match");
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irrt::ndarray::call_nac3_ndarray_copy_data(generator, ctx, src, *self);
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}
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}
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impl<'ctx> ProxyValue<'ctx> for NDArrayValue<'ctx> {
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