/* 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/api_custom_impl.h" #include "paddle/phi/api/lib/api_gen_utils.h" #include "paddle/phi/api/lib/data_transform.h" #include "paddle/phi/api/lib/kernel_dispatch.h" #include "paddle/phi/api/lib/utils/storage.h" #include "paddle/phi/core/compat/convert_utils.h" #include "paddle/phi/core/kernel_registry.h" #include "paddle/phi/core/meta_tensor.h" #include "paddle/phi/infermeta/backward.h" #include "paddle/phi/infermeta/binary.h" #include "paddle/phi/infermeta/multiary.h" #include "paddle/phi/infermeta/nullary.h" #include "paddle/phi/infermeta/unary.h" #include "glog/logging.h" namespace paddle { namespace experimental { // TODO(chenweihang): the original sum grad op can support higher-level // differentiation, // but if we use this impl, it will not support. We need to be able to reuse // the autograd API here, which is not yet implemented // TODO(chenweihang): we should support call generated api in custom api impl std::vector add_n_grad_impl(const std::vector& x, const Tensor& out_grad) { auto kernel_key_set = ParseKernelKeyByInputArgs(out_grad); auto kernel_key = kernel_key_set.GetHighestPriorityKernelKey(); Backend kernel_backend = kernel_key.backend(); DataLayout kernel_layout = kernel_key.layout(); DataType kernel_data_type = kernel_key.dtype(); auto kernel = phi::KernelFactory::Instance().SelectKernelOrThrowError( "scale", {kernel_backend, kernel_layout, kernel_data_type}); VLOG(6) << "add_n_grad API kernel key: [" << kernel_backend << ", " << kernel_layout << ", " << kernel_data_type << "]"; VLOG(6) << "add_n_grad API kernel: " << kernel; auto* dev_ctx = GetDeviceContextByBackend(kernel_backend); auto dense_out_grad = PrepareData(out_grad, kernel.InputAt(0), {}); size_t out_number = x.size(); std::vector x_grad; auto dense_x_grad = SetKernelOutput(out_number, kernel_backend, &x_grad); using kernel_signature = void (*)(const platform::DeviceContext&, const phi::DenseTensor&, const phi::Scalar&, float, bool, phi::DenseTensor*); auto* kernel_fn = kernel.GetVariadicKernelFn(); for (auto* dense_x_grad_t : dense_x_grad) { phi::MetaTensor meta_out(dense_x_grad_t); phi::UnchangedInferMeta(MakeMetaTensor(*dense_out_grad), &meta_out); (*kernel_fn)( *dev_ctx, *dense_out_grad, phi::Scalar(1.0), 0.0, true, dense_x_grad_t); } return x_grad; } Tensor copy_to_impl(const Tensor& x, Place place, bool blocking) { auto kernel_key_set = ParseKernelKeyByInputArgs(x); kernel_key_set.backend_set = kernel_key_set.backend_set | BackendSet(phi::TransToPhiBackend(place)); auto kernel_key = kernel_key_set.GetHighestPriorityKernelKey(); auto kernel = phi::KernelFactory::Instance().SelectKernelOrThrowError( "copy", kernel_key); VLOG(6) << "copy API kernel key: " << kernel_key; VLOG(6) << "copy API kernel: " << kernel; auto* dev_ctx = GetDeviceContextByBackend(kernel_key.backend()); auto dense_x = TensorToDenseTensor(x); Tensor out; auto kernel_out = SetKernelOutput(kernel_key.backend(), &out); phi::MetaTensor meta_out(kernel_out); phi::UnchangedInferMeta(*dense_x, &meta_out); using kernel_signature = void (*)(const platform::DeviceContext&, const phi::DenseTensor&, phi::Place, bool, phi::DenseTensor*); auto* kernel_fn = kernel.GetVariadicKernelFn(); (*kernel_fn)(*dev_ctx, *dense_x, place, blocking, kernel_out); return out; } std::vector split_impl(const Tensor& x, const IntArray& num_or_sections, const Scalar& axis) { auto kernel_key_set = ParseKernelKeyByInputArgs(x); auto kernel_key = kernel_key_set.GetHighestPriorityKernelKey(); Backend kernel_backend = kernel_key.backend(); DataLayout kernel_layout = kernel_key.layout(); DataType kernel_data_type = kernel_key.dtype(); auto kernel = phi::KernelFactory::Instance().SelectKernelOrThrowError( "split", {kernel_backend, kernel_layout, kernel_data_type}); VLOG(6) << "split API kernel key: [" << kernel_backend << ", " << kernel_layout << ", " << kernel_data_type << "]"; VLOG(6) << "split API kernel: " << kernel; auto* dev_ctx = GetDeviceContextByBackend(kernel_backend); auto dense_x = PrepareData(x, kernel.InputAt(0), {}); // Calculate the number of out tensors size_t out_number; if (num_or_sections.GetData().size() == 1) { out_number = num_or_sections.GetData()[0]; } else { out_number = num_or_sections.GetData().size(); } std::vector out; auto dense_outs = SetKernelOutput(out_number, kernel_backend, &out); std::vector meta_outs; meta_outs.reserve(out_number); std::vector meta_out_ptrs; meta_out_ptrs.reserve(out_number); for (size_t i = 0; i < out_number; ++i) { meta_outs.push_back(dense_outs[i]); meta_out_ptrs.push_back(&meta_outs.back()); } phi::SplitInferMeta( MakeMetaTensor(*dense_x), num_or_sections, axis, meta_out_ptrs); using kernel_signature = void (*)(const platform::DeviceContext&, const phi::DenseTensor&, const phi::IntArray&, const phi::Scalar&, std::vector&); auto* kernel_fn = kernel.GetVariadicKernelFn(); (*kernel_fn)(*dev_ctx, *dense_x, phi::IntArray(num_or_sections), phi::Scalar(axis), dense_outs); return out; } std::tuple batch_norm_impl( const Tensor& x, const Tensor& scale, const Tensor& bias, const Tensor& mean, const Tensor& variance, float momentum, float epsilon, const std::string& data_layout, bool is_test, bool use_global_stats, bool trainable_statistics, bool fuse_with_relu) { Backend kernel_backend = Backend::UNDEFINED; DataLayout kernel_layout = DataLayout::UNDEFINED; DataType kernel_data_type = DataType::UNDEFINED; kernel_data_type = ParseDataType(x); if (kernel_backend == Backend::UNDEFINED || kernel_layout == DataLayout::UNDEFINED || kernel_data_type == DataType::UNDEFINED) { auto kernel_key_set = ParseKernelKeyByInputArgs(x); auto kernel_key = kernel_key_set.GetHighestPriorityKernelKey(); if (kernel_backend == Backend::UNDEFINED) { kernel_backend = kernel_key.backend(); } if (kernel_layout == DataLayout::UNDEFINED) { kernel_layout = kernel_key.layout(); } if (kernel_data_type == DataType::UNDEFINED) { kernel_data_type = kernel_key.dtype(); } } const auto& kernel = phi::KernelFactory::Instance().SelectKernelOrThrowError( "batch_norm", {kernel_backend, kernel_layout, kernel_data_type}); VLOG(6) << "batch_norm API kernel key: [" << kernel_backend << ", " << kernel_layout << ", " << kernel_data_type << "]"; VLOG(6) << "batch_norm API kernel: " << kernel; auto* dev_ctx = GetDeviceContextByBackend(kernel_backend); auto input_x = PrepareData(x, kernel.InputAt(0), {}); auto input_scale = PrepareData(scale, kernel.InputAt(1), {}); auto input_bias = PrepareData(bias, kernel.InputAt(2), {}); auto input_mean = PrepareData(mean, kernel.InputAt(3), {}); auto input_variance = PrepareData(variance, kernel.InputAt(4), {}); std::tuple api_output; auto kernel_out_0 = SetKernelOutput(kernel_backend, &std::get<0>(api_output)); std::get<1>(api_output).set_impl(mean.impl()); std::get<2>(api_output).set_impl(variance.impl()); auto kernel_out_1 = SetKernelOutput(kernel_backend, &std::get<1>(api_output)); auto kernel_out_2 = SetKernelOutput(kernel_backend, &std::get<2>(api_output)); auto kernel_out_3 = SetKernelOutput(kernel_backend, &std::get<3>(api_output)); auto kernel_out_4 = SetKernelOutput(kernel_backend, &std::get<4>(api_output)); auto kernel_out_5 = SetKernelOutput(kernel_backend, &std::get<5>(api_output)); phi::MetaTensor meta_out_0(kernel_out_0); phi::MetaTensor meta_out_1(kernel_out_1); phi::MetaTensor meta_out_2(kernel_out_2); phi::MetaTensor meta_out_3(kernel_out_3); phi::MetaTensor meta_out_4(kernel_out_4); phi::MetaTensor meta_out_5(kernel_out_5); phi::BatchNormInferMeta(MakeMetaTensor(*input_x), MakeMetaTensor(*input_scale), MakeMetaTensor(*input_bias), MakeMetaTensor(*input_mean), MakeMetaTensor(*input_variance), momentum, epsilon, data_layout, is_test, use_global_stats, trainable_statistics, fuse_with_relu, &meta_out_0, &meta_out_1, &meta_out_2, &meta_out_3, &meta_out_4, &meta_out_5); using kernel_signature = void (*)(const platform::DeviceContext&, const phi::DenseTensor&, const phi::DenseTensor&, const phi::DenseTensor&, const phi::DenseTensor&, const phi::DenseTensor&, float, float, const std::string&, bool, bool, bool, bool, phi::DenseTensor*, phi::DenseTensor*, phi::DenseTensor*, phi::DenseTensor*, phi::DenseTensor*, phi::DenseTensor*); auto* kernel_fn = kernel.GetVariadicKernelFn(); { (*kernel_fn)(*dev_ctx, *input_x, *input_scale, *input_bias, *input_mean, *input_variance, momentum, epsilon, data_layout, is_test, use_global_stats, trainable_statistics, fuse_with_relu, kernel_out_0, kernel_out_1, kernel_out_2, kernel_out_3, kernel_out_4, kernel_out_5); } return api_output; } std::vector concat_grad_impl(const std::vector& x, const Tensor& out_grad, const Scalar& axis) { auto kernel_key_set = ParseKernelKeyByInputArgs(out_grad); auto kernel_key = kernel_key_set.GetHighestPriorityKernelKey(); Backend kernel_backend = kernel_key.backend(); DataLayout kernel_layout = kernel_key.layout(); DataType kernel_data_type = kernel_key.dtype(); auto kernel = phi::KernelFactory::Instance().SelectKernelOrThrowError( "concat_grad", {kernel_backend, kernel_layout, kernel_data_type}); VLOG(6) << "concat_grad API kernel key: [" << kernel_backend << ", " << kernel_layout << ", " << kernel_data_type << "]"; VLOG(6) << "concat_grad API kernel: " << kernel; auto* dev_ctx = GetDeviceContextByBackend(kernel_backend); // std::unique_ptr> auto dense_x = PrepareData(x, kernel.InputAt(0), {}); auto dense_out_grad = PrepareData(out_grad, kernel.InputAt(1), {}); // Calculate the number of out tensors size_t out_number = x.size(); std::vector x_grad; auto dense_x_grad = SetKernelOutput(out_number, kernel_backend, &x_grad); std::vector meta_x; meta_x.reserve(x.size()); std::vector meta_x_ptrs; meta_x_ptrs.reserve(x.size()); for (const auto& t : *dense_x) { meta_x.push_back(t); meta_x_ptrs.push_back(&meta_x.back()); } std::vector meta_x_grad; meta_x_grad.reserve(x.size()); std::vector meta_x_grad_ptrs; meta_x_grad_ptrs.reserve(x.size()); for (size_t i = 0; i < out_number; ++i) { meta_x_grad.push_back(*dense_x_grad[i]); meta_x_grad_ptrs.push_back(&meta_x_grad.back()); } phi::UnchangedMultiInferMeta(meta_x_ptrs, meta_x_grad_ptrs); std::vector dense_x_ptr; dense_x_ptr.reserve(x.size()); for (const auto& t : *dense_x) { dense_x_ptr.push_back(&t); } using kernel_signature = void (*)(const platform::DeviceContext&, const std::vector&, const phi::DenseTensor&, const phi::Scalar&, std::vector); auto* kernel_fn = kernel.GetVariadicKernelFn(); (*kernel_fn)( *dev_ctx, dense_x_ptr, *dense_out_grad, phi::Scalar(axis), dense_x_grad); return x_grad; } } // namespace experimental } // namespace paddle