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paddlepaddle--paddle/paddle/phi/api/include/compat/ATen/ops/arange.h
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// Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved.
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
// The file has been adapted from pytorch project
// Licensed under BSD-style license -
// https://github.com/pytorch/pytorch/blob/main/LICENSE
#pragma once
#include <ATen/core/Tensor.h>
#include <ATen/native/RangeUtils.h>
#include <c10/core/TensorOptions.h>
#include <utils/pinned_place.h>
#include <optional>
#include "paddle/phi/api/include/api.h"
#include "paddle/phi/common/place.h"
namespace at {
namespace detail {
inline bool _PD_IsIntegralArangeScalar(const at::Scalar& scalar) {
switch (scalar.dtype()) {
case phi::DataType::BOOL:
case phi::DataType::UINT8:
case phi::DataType::INT8:
case phi::DataType::UINT16:
case phi::DataType::INT16:
case phi::DataType::UINT32:
case phi::DataType::INT32:
case phi::DataType::UINT64:
case phi::DataType::INT64:
return true;
default:
return false;
}
}
inline at::ScalarType _PD_ResolveArangeDtype(const at::Scalar& start,
const at::Scalar& end,
const at::Scalar& step,
const at::TensorOptions& options) {
if (options.has_dtype()) {
return options.dtype().toScalarType();
}
if (_PD_IsIntegralArangeScalar(start) && _PD_IsIntegralArangeScalar(end) &&
_PD_IsIntegralArangeScalar(step)) {
return at::kLong;
}
return c10::get_default_dtype_as_scalartype();
}
inline paddle::Tensor _PD_MakeArangeScalarTensor(const at::Scalar& scalar,
phi::DataType dtype) {
return paddle::experimental::full({}, scalar, dtype, phi::CPUPlace());
}
} // namespace detail
inline at::Tensor arange(const at::Scalar& start,
const at::Scalar& end,
const at::Scalar& step,
at::TensorOptions options = {}) {
// Match PyTorch: step must be non-zero and consistent with (end - start).
at::native::arange_check_bounds(start, end, step);
auto dtype = detail::_PD_ResolveArangeDtype(start, end, step, options);
auto pd_dtype = compat::_PD_AtenScalarTypeToPhiDataType(dtype);
if (options.pinned_memory()) {
// Pinning memory is only supported for CPU tensors
if (options.has_device() && !options.device().is_cpu()) {
PD_THROW(
"pin_memory=true requires device to be CPU, but got non-CPU device");
}
phi::Place base_place = options._PD_GetPlace();
phi::Place pinned_place = compat::_PD_GetCreatePinnedPlace(base_place);
auto dense = paddle::experimental::arange(
detail::_PD_MakeArangeScalarTensor(start, pd_dtype),
detail::_PD_MakeArangeScalarTensor(end, pd_dtype),
detail::_PD_MakeArangeScalarTensor(step, pd_dtype),
pd_dtype,
phi::CPUPlace());
return dense.copy_to(pinned_place, /*blocking=*/true);
}
return paddle::experimental::arange(
detail::_PD_MakeArangeScalarTensor(start, pd_dtype),
detail::_PD_MakeArangeScalarTensor(end, pd_dtype),
detail::_PD_MakeArangeScalarTensor(step, pd_dtype),
pd_dtype,
options._PD_GetPlace());
}
inline at::Tensor arange(const at::Scalar& end,
at::TensorOptions options = {}) {
return arange(/*start=*/0, end, /*step=*/1, options);
}
inline at::Tensor arange(const at::Scalar& end,
::std::optional<at::ScalarType> dtype,
::std::optional<at::Layout> layout,
::std::optional<at::Device> device,
::std::optional<bool> pin_memory) {
auto options = at::TensorOptions()
.dtype(dtype)
.layout(layout)
.device(device)
.pinned_memory(pin_memory);
return arange(/*start=*/0, end, /*step=*/1, options);
}
inline at::Tensor arange(const at::Scalar& start,
const at::Scalar& end,
at::TensorOptions options = {}) {
return arange(start, end, /*step=*/1, options);
}
inline at::Tensor arange(const at::Scalar& start,
const at::Scalar& end,
::std::optional<at::ScalarType> dtype,
::std::optional<at::Layout> layout,
::std::optional<at::Device> device,
::std::optional<bool> pin_memory) {
auto options = at::TensorOptions()
.dtype(dtype)
.layout(layout)
.device(device)
.pinned_memory(pin_memory);
return arange(start, end, /*step=*/1, options);
}
inline at::Tensor arange(const at::Scalar& start,
const at::Scalar& end,
const at::Scalar& step,
::std::optional<at::ScalarType> dtype,
::std::optional<at::Layout> layout,
::std::optional<at::Device> device,
::std::optional<bool> pin_memory) {
auto options = at::TensorOptions()
.dtype(dtype)
.layout(layout)
.device(device)
.pinned_memory(pin_memory);
return arange(start, end, step, options);
}
} // namespace at