/* Copyright (c) 2016 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. */ #pragma once #include #include "lite/backends/x86/cpu_info.h" #include "lite/backends/x86/jit/helper.h" #include "lite/backends/x86/jit/kernel_base.h" #include "lite/backends/x86/jit/kernels.h" #include "lite/backends/x86/math/cpu_vec.h" #include "lite/core/tensor.h" #include "lite/fluid/eigen.h" namespace paddle { namespace lite { namespace x86 { namespace math { template using EigenMatrix = lite::fluid::EigenMatrix; template struct ValueClip { HOSTDEVICE T operator()(const T& x) const { const T kThreshold = static_cast(-64.); return x < kThreshold ? kThreshold : x; } }; template void SoftmaxEigen(const lite::Context& context, const int axis_dim, const lite::Tensor* X, lite::Tensor* Y) { constexpr int kBatchDim = 0; constexpr int kClassDim = 1; auto logits = EigenMatrix::From(*X); auto softmax = EigenMatrix::From(*Y); const int batch_size = logits.dimension(kBatchDim); const int num_classes = logits.dimension(kClassDim); const int num_remain = num_classes / axis_dim; Eigen::DSizes along_class(kClassDim); Eigen::DSizes batch_by_one(batch_size, 1); Eigen::DSizes one_by_class(1, num_classes); Eigen::DSizes batch_axis_remain(batch_size, axis_dim, num_remain); Eigen::DSizes one_axis(1, axis_dim); auto shifted_logits = (logits - logits.maximum(along_class) .eval() .reshape(batch_by_one) .broadcast(one_by_class)) .unaryExpr(ValueClip()); softmax.device(typename lite::fluid::EigenDevice::Type()) = shifted_logits.exp(); softmax.device(typename lite::fluid::EigenDevice::Type()) = (softmax * softmax.reshape(batch_axis_remain) .sum(along_class) .inverse() .eval() .broadcast(one_axis)); } template void SoftmaxFunctor::operator()( const lite::Context& context, const int axis_dim, const lite::Tensor* X, lite::Tensor* Y) { SoftmaxEigen, T, is_test>(context, axis_dim, X, Y); } template using enable_if_CPU = typename std::enable_if< std::is_same, lite::X86Context>::value>::type; template class SoftmaxFunctor> { public: void operator()(const lite::Context& context, const int axis_dim, const lite::Tensor* X, lite::Tensor* Y) { const auto& in_dims = X->dims(); constexpr int kBatchDim = 0; constexpr int kClassDim = 1; const int num_classes = in_dims[kClassDim]; const int batch_size = in_dims[kBatchDim]; const int num_remain = num_classes / axis_dim; if (num_remain == 1 && lite::x86::MayIUse(lite::x86::avx)) { const T* in_data = X->template data(); auto* out_data = Y->template mutable_data(); for (int bs = 0; bs < batch_size; ++bs) { T max_val = *std::max_element(in_data, in_data + num_classes); max_val *= static_cast(-1); vec_add_bias( num_classes, max_val, in_data, out_data); vec_clip( num_classes, static_cast(-64), out_data, out_data); vec_exp(num_classes, out_data, out_data); T sum = 0; vec_sum(num_classes, out_data, &sum); sum = static_cast(1) / sum; vec_scal(num_classes, sum, out_data, out_data); in_data += num_classes; out_data += num_classes; } } else { SoftmaxEigen(context, axis_dim, X, Y); } } }; template class SoftmaxFunctor> { public: void operator()(const lite::Context& context, const int axis_dim, const lite::Tensor* X, lite::Tensor* Y) { const auto& in_dims = X->dims(); const float* in_data = X->data(); float* out_data = Y->mutable_data(); const int kBatchDim = 0; const int kClassDim = 1; // 2D data. Batch x C auto compute_softmax = lite::jit::KernelFuncs, fluid::CPUPlace>::Cache() .At(in_dims[kClassDim]); compute_softmax(in_data, out_data, in_dims[kClassDim], in_dims[kBatchDim], in_dims[kClassDim] / axis_dim); } }; template void SoftmaxGradEigen(const lite::Context& context, const int axis_dim, const lite::Tensor* y, const lite::Tensor* y_grad, lite::Tensor* x_grad) { auto softmax = EigenMatrix::From(*y); auto softmax_grad = EigenMatrix::From(*y_grad); auto logits_grad = EigenMatrix::From(*x_grad); constexpr int kBatchDim = 0; constexpr int kClassDim = 1; const int batch_size = softmax.dimension(kBatchDim); const int num_classes = softmax.dimension(kClassDim); const int num_remain = num_classes / axis_dim; Eigen::DSizes along_class(kClassDim); Eigen::DSizes batch_by_one(batch_size, 1); Eigen::DSizes one_by_class(1, num_classes); Eigen::DSizes batch_axis_remain(batch_size, axis_dim, num_remain); Eigen::DSizes one_axis(1, axis_dim); auto dot = (softmax * softmax_grad) .reshape(batch_axis_remain) .sum(along_class) .eval() .broadcast(one_axis); // logits_grad.device(*context.eigen_device()) = (softmax_grad - dot) * // softmax; logits_grad.device(typename lite::fluid::EigenDevice::Type()) = (softmax_grad - dot) * softmax; } template void SoftmaxGradFunctor::operator()( const lite::Context& context, const int axis_dim, const lite::Tensor* y, const lite::Tensor* y_grad, lite::Tensor* x_grad) { SoftmaxGradEigen, T>( context, axis_dim, y, y_grad, x_grad); } template class SoftmaxGradFunctor> { public: void operator()(const lite::Context& context, const int axis_dim, const lite::Tensor* y, const lite::Tensor* y_grad, lite::Tensor* x_grad) { auto out_dims = y->dims(); constexpr int kBatchDim = 0; constexpr int kClassDim = 1; const int num_classes = out_dims[kClassDim]; const int batch_size = out_dims[kBatchDim]; const int num_remain = num_classes / axis_dim; if (num_remain == 1 && lite::x86::MayIUse(lite::x86::avx)) { const T* out_data = y->template data(); const T* out_grad = y_grad->template data(); T* in_grad = x_grad->template mutable_data(); for (int bs = 0; bs < batch_size; ++bs) { T scalar; vec_mul_reduce( num_classes, out_grad, out_data, &scalar); scalar *= static_cast(-1); vec_add_bias(num_classes, scalar, out_grad, in_grad); vec_mul(num_classes, out_data, in_grad, in_grad); out_data += num_classes; out_grad += num_classes; in_grad += num_classes; } } else { SoftmaxGradEigen(context, axis_dim, y, y_grad, x_grad); } } }; } // namespace math } // namespace x86 } // namespace lite } // namespace paddle