/* Copyright (c) 2022 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. */ #include "paddle/phi/api/lib/data_transform.h" #include "paddle/phi/api/ext/dispatch.h" #include "paddle/phi/api/lib/kernel_dispatch.h" #include "paddle/phi/api/lib/utils/storage.h" #include "paddle/phi/backends/all_context.h" #include "paddle/phi/kernels/cast_kernel.h" #include "paddle/phi/kernels/transfer_layout_kernel.h" #include "paddle/fluid/framework/data_device_transform.h" namespace paddle { namespace experimental { inline bool NeedTransformDataType(const DataType& input, const DataType& target, const TransformFlag& transform_flag) { return input != target && (transform_flag.need_trans_data_type() || target == DataType::COMPLEX64 || target == DataType::COMPLEX128); } inline bool NeedTransformPlace(const paddle::platform::Place& input, const Backend& target, const TransformFlag& transform_flag) { bool ret = transform_flag.need_trans_backend() && target != Backend::ALL_BACKEND && phi::TransToPhiBackend(input) != target; return ret; } inline bool NeedTransformLayout(const DataLayout& input, const DataLayout& target, const TransformFlag& transform_flag) { bool ret = transform_flag.need_trans_layout() && (input != DataLayout::ALL_LAYOUT && target != DataLayout::ALL_LAYOUT && input != target); return ret; } inline phi::DenseTensor TransDataLayout(const phi::DenseTensor& tensor, DataLayout layout) { auto& pool = paddle::platform::DeviceContextPool::Instance(); VLOG(3) << "DataLayoutTransform src_layout: " << tensor.layout() << " dst_layout: " << layout; if (platform::is_cpu_place(tensor.place())) { auto* dev_ctx = static_cast(pool.Get(tensor.place())); return phi::TransferLayout(*dev_ctx, tensor, layout); } else { PADDLE_THROW(phi::errors::PreconditionNotMet( "Unsupported data layout cast from CPU to GPU.")); } } template phi::DenseTensor CastDateType(const Context& dev_ctx, const phi::DenseTensor& tensor, DataType dtype) { switch (tensor.dtype()) { case DataType::FLOAT32: return phi::Cast(dev_ctx, tensor, dtype); case DataType::FLOAT64: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT32: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT64: return phi::Cast(dev_ctx, tensor, dtype); case DataType::FLOAT16: return phi::Cast(dev_ctx, tensor, dtype); case DataType::BFLOAT16: return phi::Cast(dev_ctx, tensor, dtype); case DataType::BOOL: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT16: return phi::Cast(dev_ctx, tensor, dtype); case DataType::UINT8: return phi::Cast(dev_ctx, tensor, dtype); default: PADDLE_THROW(phi::errors::Unimplemented( "Data type (%s) is not supported when casting data type.", tensor.dtype())); } } #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) phi::DenseTensor CastDateType(const phi::GPUContext& dev_ctx, const phi::DenseTensor& tensor, DataType dtype) { switch (tensor.dtype()) { case DataType::FLOAT32: return phi::Cast(dev_ctx, tensor, dtype); case DataType::FLOAT64: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT32: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT64: return phi::Cast(dev_ctx, tensor, dtype); case DataType::FLOAT16: return phi::Cast(dev_ctx, tensor, dtype); case DataType::BOOL: return phi::Cast(dev_ctx, tensor, dtype); case DataType::INT16: return phi::Cast(dev_ctx, tensor, dtype); case DataType::UINT8: return phi::Cast(dev_ctx, tensor, dtype); default: PADDLE_THROW(phi::errors::Unimplemented( "Data type (%s) is not supported when casting data type.", tensor.dtype())); } } #endif inline phi::DenseTensor TransDataType(const phi::DenseTensor& tensor, DataType dtype) { auto& pool = paddle::platform::DeviceContextPool::Instance(); VLOG(3) << "DataTypeTransform src_dtype: " << tensor.dtype() << " dst_dtype: " << dtype; phi::DenseTensor out( phi::make_intrusive(tensor.place()), {dtype, tensor.dims(), tensor.layout()}); if (platform::is_cpu_place(tensor.place())) { auto* dev_ctx = static_cast(pool.Get(tensor.place())); return CastDateType(*dev_ctx, tensor, dtype); #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) } else if (platform::is_gpu_place(tensor.place())) { auto* dev_ctx = static_cast(pool.Get(tensor.place())); return CastDateType(*dev_ctx, tensor, dtype); #endif } else { PADDLE_THROW(phi::errors::Unimplemented( "Place type is not supported when casting data type.")); } return out; } phi::DenseTensor TransformData(const phi::DenseTensor& tensor, const phi::TensorArgDef& target_args_def, const TransformFlag& transform_flag) { phi::DenseTensor out = tensor; if (NeedTransformLayout( tensor.layout(), target_args_def.layout, transform_flag)) { out = TransDataLayout(out, target_args_def.layout); } if (NeedTransformDataType( tensor.dtype(), target_args_def.dtype, transform_flag)) { out = TransDataType(out, target_args_def.dtype); } if (NeedTransformPlace( out.place(), target_args_def.backend, transform_flag)) { phi::DenseTensor result; framework::TransDataDevice( out, phi::TransToPhiPlace(target_args_def.backend), &result); out = result; } return out; } std::shared_ptr PrepareData( const Tensor& input, const phi::TensorArgDef& target_args_def, const TransformFlag& transform_flag) { const auto& tensor_in = input.impl(); if (tensor_in) { phi::DenseTensor& dense_tensor = *static_cast(tensor_in.get()); if (!transform_flag.NeedTransform() || !dense_tensor.initialized() || (!NeedTransformPlace( dense_tensor.place(), target_args_def.backend, transform_flag) && !NeedTransformDataType( dense_tensor.dtype(), target_args_def.dtype, transform_flag) && !NeedTransformLayout( dense_tensor.layout(), target_args_def.layout, transform_flag))) { return std::static_pointer_cast(tensor_in); } phi::DenseTensor out = TransformData(dense_tensor, target_args_def, transform_flag); return std::make_shared(std::move(out)); } return nullptr; } std::shared_ptr PrepareData( const paddle::optional& input, const phi::TensorArgDef& target_args_def, const TransformFlag& transform_flag) { if (input) { return PrepareData(*input, target_args_def, transform_flag); } return {nullptr}; } std::shared_ptr PrepareData( const paddle::optional input, const phi::TensorArgDef& target_args_def, const TransformFlag& transform_flag) { if (input.get_ptr() != nullptr) { return PrepareData(*(input.get_ptr()), target_args_def, transform_flag); } return {nullptr}; } std::unique_ptr> PrepareData( const std::vector& inputs, const phi::TensorArgDef& target_args_def, const TransformFlag& transform_flag) { auto pt_tensors = std::make_unique>(); pt_tensors->reserve(inputs.size()); for (const auto& input : inputs) { const auto& tensor_in = input.impl(); if (!transform_flag.NeedTransform() || !tensor_in->initialized() || (!NeedTransformPlace( tensor_in->place(), target_args_def.backend, transform_flag) && !NeedTransformDataType( tensor_in->dtype(), target_args_def.dtype, transform_flag) && !NeedTransformLayout( tensor_in->layout(), target_args_def.layout, transform_flag))) { pt_tensors->emplace_back( *std::dynamic_pointer_cast(tensor_in)); } else { pt_tensors->emplace_back( TransformData(*(static_cast(tensor_in.get())), target_args_def, transform_flag)); } } return std::move(pt_tensors); } } // namespace experimental } // namespace paddle