221 lines
7.2 KiB
C++
221 lines
7.2 KiB
C++
// Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#include "paddle/phi/kernels/dropout_kernel.h"
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#include "paddle/phi/backends/cpu/cpu_context.h"
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#include "paddle/phi/core/generator.h"
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#include "paddle/phi/core/kernel_registry.h"
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#include "paddle/phi/kernels/expand_kernel.h"
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#include "paddle/phi/kernels/funcs/eigen/common.h"
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namespace phi {
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template <typename T, typename Context>
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void ComputeDropoutInference(const Context& dev_ctx,
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const DenseTensor& x,
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const Scalar& dropout_prob,
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bool upscale_in_train,
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DenseTensor* y) {
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if (upscale_in_train) {
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const auto* X_data = x.data<T>();
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T* Y_data = dev_ctx.template Alloc<T>(y);
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#if defined(PADDLE_WITH_MKLML) || defined(PADDLE_WITH_HML)
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#pragma omp parallel for
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#endif
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for (int i = 0; i < x.numel(); i++) {
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Y_data[i] = X_data[i];
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}
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} else {
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auto X = EigenMatrix<T>::Reshape(x, 1);
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auto Y = EigenMatrix<T>::Reshape(*y, 1);
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auto& place = *dev_ctx.eigen_device();
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Y.device(place) = X * static_cast<T>(1.0f - dropout_prob.to<float>());
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}
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}
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template <typename T, typename Context>
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void DropoutRawKernel(const Context& dev_ctx,
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const DenseTensor& x,
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const optional<DenseTensor>& seed_tensor,
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const Scalar& p,
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bool is_test,
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const std::string& mode,
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int seed,
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bool fix_seed,
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DenseTensor* out,
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DenseTensor* mask) {
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auto* y = out;
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const auto* x_data = x.data<T>();
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T* y_data = dev_ctx.template Alloc<T>(y);
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float dropout_prob = p.to<float>();
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auto& dropout_implementation = mode;
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bool upscale_in_train = (dropout_implementation == "upscale_in_train");
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if (!is_test && mask) {
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auto* mask_data = dev_ctx.template Alloc<uint8_t>(mask);
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size_t size = common::product(mask->dims());
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// Special case when dropout_prob is 1.0
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if (dropout_prob == 1.0f) {
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std::memset(y_data, 0, size * sizeof(*y_data)); // NOLINT
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std::memset(mask_data, 0, size * sizeof(*mask_data)); // NOLINT
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return;
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}
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// std::minstd_rand engine;
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// NOTE: fixed seed should only be used in unittest or for debug.
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// Guarantee to use random seed in training.
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int seed_data = 0;
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if (seed_tensor.get_ptr() != nullptr) {
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seed_data = *(seed_tensor->data<int>());
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} else {
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seed_data = fix_seed ? seed : 0;
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}
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std::shared_ptr<std::mt19937_64> engine;
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if (seed_data) {
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engine = std::make_shared<std::mt19937_64>();
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engine->seed(seed_data);
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} else {
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engine = dev_ctx.GetGenerator()->GetCPUEngine();
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}
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std::uniform_real_distribution<float> dist(0, 1);
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for (size_t i = 0; i < size; ++i) {
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if (dist(*engine) < dropout_prob) {
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mask_data[i] = 0;
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y_data[i] = 0;
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} else {
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mask_data[i] = 1;
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if (upscale_in_train) {
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y_data[i] = x_data[i] / static_cast<T>(1.0f - dropout_prob);
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} else {
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y_data[i] = x_data[i];
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}
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}
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}
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} else {
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ComputeDropoutInference<T, Context>(
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dev_ctx, x, dropout_prob, upscale_in_train, y);
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}
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}
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template <typename T, typename Context>
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void DropoutNdKernel(const Context& dev_ctx,
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const DenseTensor& x,
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const optional<DenseTensor>& seed_tensor,
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const Scalar& p,
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bool is_test,
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const std::string& mode,
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int seed,
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bool fix_seed,
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const std::vector<int>& axis,
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DenseTensor* out,
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DenseTensor* mask) {
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auto* y = out;
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const auto* x_data = x.data<T>();
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T* y_data = dev_ctx.template Alloc<T>(y);
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float dropout_prob = p.to<float>();
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auto& dropout_implementation = mode;
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bool upscale_in_train = (dropout_implementation == "upscale_in_train");
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if (!is_test && mask) {
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DenseTensor t_mask;
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t_mask.Resize(mask->dims());
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T* t_mask_data = dev_ctx.template Alloc<T>(&t_mask);
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auto* mask_data = dev_ctx.template Alloc<uint8_t>(mask);
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size_t size = common::product(mask->dims());
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// Special case when dropout_prob is 1.0
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if (dropout_prob == 1.0f) {
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std::memset(y_data, 0, size * sizeof(*y_data)); // NOLINT
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std::memset(t_mask_data, 0, size * sizeof(*t_mask_data)); // NOLINT
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std::memset(mask_data, 0, size * sizeof(*mask_data)); // NOLINT
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return;
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}
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// std::minstd_rand engine;
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// NOTE: fixed seed should only be used in unittest or for debug.
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// Guarantee to use random seed in training.
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int seed_data = 0;
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if (seed_tensor.get_ptr() != nullptr) {
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seed_data = *(seed_tensor->data<int>());
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} else {
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seed_data = fix_seed ? seed : 0;
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}
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std::shared_ptr<std::mt19937_64> engine;
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if (seed_data) {
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engine = std::make_shared<std::mt19937_64>();
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engine->seed(seed_data);
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} else {
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engine = dev_ctx.GetGenerator()->GetCPUEngine();
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}
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std::uniform_real_distribution<float> dist(0, 1);
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for (size_t i = 0; i < size; ++i) {
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if (dist(*engine) < dropout_prob) {
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t_mask_data[i] = 0;
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mask_data[i] = 0;
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} else {
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t_mask_data[i] = 1;
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mask_data[i] = 1;
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}
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}
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auto& x_dims = x.dims();
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DenseTensor broadcast_mask;
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broadcast_mask.Resize(x_dims);
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T* broadcast_mask_data = dev_ctx.template Alloc<T>(&broadcast_mask);
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std::vector<int64_t> mask_bst_dims_vec;
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for (int i = 0; i < x_dims.size(); i++) {
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mask_bst_dims_vec.emplace_back(x_dims[i]);
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}
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IntArray mask_bst_dims(mask_bst_dims_vec);
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ExpandKernel<T, Context>(dev_ctx, t_mask, mask_bst_dims, &broadcast_mask);
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for (auto i = 0; i < x.numel(); i++) {
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if (broadcast_mask_data[i] == static_cast<T>(1)) {
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if (upscale_in_train) {
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y_data[i] = x_data[i] / static_cast<T>(1.0f - dropout_prob);
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} else {
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y_data[i] = x_data[i];
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}
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} else {
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y_data[i] = 0;
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}
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}
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} else {
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ComputeDropoutInference<T, Context>(
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dev_ctx, x, dropout_prob, upscale_in_train, y);
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}
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}
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} // namespace phi
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PD_REGISTER_KERNEL(dropout,
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CPU,
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ALL_LAYOUT,
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phi::DropoutRawKernel,
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float,
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double,
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phi::float16,
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phi::bfloat16) {
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kernel->OutputAt(1).SetDataType(phi::DataType::UINT8);
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}
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PD_REGISTER_KERNEL(
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dropout_nd, CPU, ALL_LAYOUT, phi::DropoutNdKernel, float, double) {
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kernel->OutputAt(1).SetDataType(phi::DataType::UINT8);
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}
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