/* Copyright (c) 2018 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 #include "paddle/fluid/framework/data_layout_transform.h" #include "paddle/fluid/memory/malloc.h" #include "paddle/fluid/operators/conv_op.h" #include "paddle/fluid/platform/mkldnn_reuse.h" namespace paddle { namespace operators { using framework::DataLayout; using mkldnn::memory; using mkldnn::primitive; using mkldnn::reorder; using mkldnn::stream; using platform::to_void_cast; using platform::GetMKLDNNFormat; inline void GetWeightsTz(std::vector& weights_tz, int groups, // NOLINT bool is_conv3d) { if (groups > 1) { if (is_conv3d) { int output = weights_tz[0]; int input = weights_tz[1]; int dimension = weights_tz[2]; int height = weights_tz[3]; int width = weights_tz[4]; weights_tz.resize(6); weights_tz[0] = groups; weights_tz[1] = output / groups; weights_tz[2] = input; weights_tz[3] = dimension; weights_tz[4] = height; weights_tz[5] = width; } else { int output = weights_tz[0]; int input = weights_tz[1]; int height = weights_tz[2]; int width = weights_tz[3]; weights_tz.resize(5); weights_tz[0] = groups; weights_tz[1] = output / groups; weights_tz[2] = input; weights_tz[3] = height; weights_tz[4] = width; } } } inline mkldnn::memory::format GetWeightsFormat(mkldnn::memory::format format, int groups, bool is_conv3d) { if (is_conv3d) { return (groups == 1) ? format : mkldnn::memory::format::goidhw; } else { return (groups == 1) ? format : mkldnn::memory::format::goihw; } } template class ConvMKLDNNOpKernel : public paddle::framework::OpKernel { public: void Compute(const paddle::framework::ExecutionContext& ctx) const override { PADDLE_ENFORCE(paddle::platform::is_cpu_place(ctx.GetPlace()), "It must use CPUPlace."); bool is_INT8 = std::is_same::value || std::is_same::value; if (!is_INT8) { ComputeFP32(ctx); } else { ComputeINT8(ctx); } } void ComputeFP32(const paddle::framework::ExecutionContext& ctx) const { const bool is_test = ctx.Attr("is_test"); auto& dev_ctx = ctx.template device_context(); const auto& mkldnn_engine = dev_ctx.GetEngine(); auto* input = ctx.Input("Input"); auto* filter = ctx.Input("Filter"); auto* bias = ctx.HasInput("Bias") ? ctx.Input("Bias") : nullptr; auto* output = ctx.Output("Output"); PADDLE_ENFORCE(input->layout() == DataLayout::kMKLDNN && input->format() != memory::format::format_undef, "Wrong layout/format set for Input tensor"); PADDLE_ENFORCE(filter->layout() == DataLayout::kMKLDNN && filter->format() != memory::format::format_undef, "Wrong layout/format set for Filter tensor"); PADDLE_ENFORCE(input->dims().size() == 4 || input->dims().size() == 5, "Input must be with 4 or 5 dimensions, i.e. NCHW or NCDHW"); PADDLE_ENFORCE(filter->dims().size() == 4 || filter->dims().size() == 5, "Filter must be with 4 or 5 dimensions, i.e. OIHW or OIDHW"); if (bias) { PADDLE_ENFORCE(bias->layout() == DataLayout::kMKLDNN && bias->format() != memory::format::format_undef, "Wrong layout/format set for Bias tensor"); PADDLE_ENFORCE(bias->dims().size() == 1, "Bias must only have 1 dimension, i.e. X"); } std::vector strides = ctx.Attr>("strides"); std::vector paddings = ctx.Attr>("paddings"); std::vector dilations = ctx.Attr>("dilations"); bool fuse_relu = ctx.Attr("fuse_relu"); bool fuse_residual_conn = ctx.Attr("fuse_residual_connection"); int groups = ctx.Attr("groups"); bool is_conv3d = strides.size() == 3U; // TODO(tpatejko): add support for dilation PADDLE_ENFORCE( is_conv3d ? dilations.size() == 3 && dilations[0] == 1 && dilations[1] == 1 && dilations[2] == 1 : dilations.size() == 2 && dilations[0] == 1 && dilations[1] == 1, "dilation in convolution is not implemented yet"); const T* input_data = input->data(); const T* filter_data = filter->data(); std::vector src_tz = paddle::framework::vectorize2int(input->dims()); std::vector weights_tz = paddle::framework::vectorize2int(filter->dims()); int g = std::max(groups, 1); GetWeightsTz(weights_tz, g, is_conv3d); std::vector dst_tz = paddle::framework::vectorize2int(output->dims()); // Get unique name for storing MKLDNN primitives const std::string key = platform::ConvMKLDNNHandler::GetHash( src_tz, weights_tz, strides, paddings, dilations, groups, ctx.op().Output("Output")); const std::string key_conv_pd = key + "@conv_pd"; std::vector pipeline; auto src_format = input->format(); mkldnn::memory::format weights_format = GetWeightsFormat(filter->format(), g, is_conv3d); auto user_src_md = platform::MKLDNNMemDesc( {src_tz}, platform::MKLDNNGetDataType(), src_format); auto user_weights_md = platform::MKLDNNMemDesc( {weights_tz}, platform::MKLDNNGetDataType(), weights_format); /* create memory descriptor for convolution without specified format * ('any') which lets a primitive (convolution in this case) choose * the memory format preferred for best performance */ std::string data_format = ctx.Attr("data_format"); auto chosen_memory_format = platform::data_format_to_memory_format(data_format); weights_format = mkldnn::memory::format::any; // Check the format for user's special output if (chosen_memory_format != mkldnn::memory::format::any) { if (is_conv3d) { chosen_memory_format = platform::MKLDNNFormatForSize(src_tz.size(), chosen_memory_format); } } auto src_md = platform::MKLDNNMemDesc( src_tz, platform::MKLDNNGetDataType(), chosen_memory_format); auto weights_md = platform::MKLDNNMemDesc( weights_tz, platform::MKLDNNGetDataType(), weights_format); std::vector bias_tz; // TODO(mgallus): avoid empty vector creation. // Currently used whenever bias is != nullptr. auto dst_md = platform::MKLDNNMemDesc( dst_tz, platform::MKLDNNGetDataType(), chosen_memory_format); // create a conv primitive descriptor and save it for usage in backward std::shared_ptr conv_pd; auto fwd_prop_kind = is_test ? mkldnn::prop_kind::forward_inference : mkldnn::prop_kind::forward_training; if (bias) { bias_tz = paddle::framework::vectorize2int(bias->dims()); auto bias_md = platform::MKLDNNMemDesc( bias_tz, platform::MKLDNNGetDataType(), memory::format::x); conv_pd = ConvFwdPrimitiveDesc( src_md, weights_md, bias_md, dst_md, strides, paddings, mkldnn_engine, fuse_relu, fuse_residual_conn, fwd_prop_kind); } else { conv_pd = ConvFwdPrimitiveDesc(src_md, weights_md, dst_md, strides, paddings, mkldnn_engine, fuse_relu, fuse_residual_conn, fwd_prop_kind); } // Save conv_pd/src_memory/weights_memory for backward pass if (!is_test) dev_ctx.SetBlob(key_conv_pd, conv_pd); platform::ConvMKLDNNHandler handler(conv_pd, dev_ctx, mkldnn_engine, key); // create mkldnn memory from input tensors (data/weights) auto user_src_memory_p = handler.AcquireSrcMemory(user_src_md, to_void_cast(input_data)); auto user_weights_memory_p = handler.AcquireWeightsMemory( user_weights_md, to_void_cast(filter_data)); // create reorder primitive if the input format is not the preferred one auto src_memory_p = handler.AcquireSrcMemoryFromPrimitive(user_src_memory_p, pipeline); auto weights_memory_p = handler.AcquireWeightsMemoryFromPrimitive( user_weights_memory_p, pipeline, is_test); std::shared_ptr dst_memory_p; if (fuse_residual_conn) { auto residual_param = ctx.Input("ResidualData"); auto residual_param_data = residual_param->data(); PADDLE_ENFORCE( residual_param_data != nullptr, "Provide data if you want MKLDNN conv+elementwise_add fusion"); PADDLE_ENFORCE_EQ(output->dims(), residual_param->dims(), "Output and elementwise parameter need to have the " "same dimension sizes"); if (residual_param->format() != handler.GetDstFormat()) { auto output_data = output->mutable_data( ctx.GetPlace(), ::paddle::memory::Allocator::kDefault, handler.GetDstMemorySize()); auto residual_data_tz = paddle::framework::vectorize2int(residual_param->dims()); auto residual_data_type = paddle::framework::ToMKLDNNDataType(residual_param->type()); auto user_residual_md = platform::MKLDNNMemDesc( residual_data_tz, residual_data_type, residual_param->format()); auto user_residual_memory_p = handler.AcquireResidualDataMemory( user_residual_md, to_void_cast(residual_param_data)); dst_memory_p = handler.AcquireDstMemoryFromResidualDataMemory( user_residual_memory_p, to_void_cast(output_data), pipeline); } else { output->ShareDataWith(*residual_param); auto output_data = output->mutable_data(ctx.GetPlace()); dst_memory_p = handler.AcquireDstMemoryFromPrimitive(to_void_cast(output_data)); } } else { auto output_data = output->mutable_data( ctx.GetPlace(), paddle::memory::Allocator::kDefault, handler.GetDstMemorySize()); dst_memory_p = handler.AcquireDstMemoryFromPrimitive(to_void_cast(output_data)); } // create convolution op primitive std::shared_ptr conv_p; if (bias) { const T* bias_data = bias->data(); auto user_bias_md = platform::MKLDNNMemDesc( {bias_tz}, platform::MKLDNNGetDataType(), memory::format::x); auto user_bias_memory_p = handler.AcquireBiasMemory(user_bias_md, to_void_cast(bias_data)); auto bias_memory_p = handler.AcquireBiasMemoryFromPrimitive(user_bias_memory_p, pipeline); conv_p = handler.AcquireConvolution(src_memory_p, weights_memory_p, bias_memory_p, dst_memory_p); } else { conv_p = handler.AcquireConvolution(src_memory_p, weights_memory_p, dst_memory_p); } // push primitive to stream and wait until it's executed pipeline.push_back(*conv_p); stream(stream::kind::eager).submit(pipeline).wait(); output->set_layout(DataLayout::kMKLDNN); output->set_format(GetMKLDNNFormat(*dst_memory_p)); } void ComputeINT8(const paddle::framework::ExecutionContext& ctx) const { const bool is_test = ctx.Attr("is_test"); auto& dev_ctx = ctx.template device_context(); const auto& mkldnn_engine = dev_ctx.GetEngine(); auto* input = ctx.Input("Input"); auto* filter = ctx.Input("Filter"); auto* bias = ctx.HasInput("Bias") ? ctx.Input("Bias") : nullptr; auto* output = ctx.Output("Output"); PADDLE_ENFORCE(input->layout() == DataLayout::kMKLDNN && input->format() != memory::format::format_undef, "Wrong layout/format set for Input tensor"); PADDLE_ENFORCE(filter->layout() == DataLayout::kMKLDNN && filter->format() != memory::format::format_undef, "Wrong layout/format set for Filter tensor"); PADDLE_ENFORCE(input->dims().size() == 4 || input->dims().size() == 5, "Input must be with 4 or 5 dimensions, i.e. NCHW or NCDHW"); PADDLE_ENFORCE(filter->dims().size() == 4 || filter->dims().size() == 5, "Filter must be with 4 or 5 dimensions, i.e. OIHW or OIDHW"); if (bias) { PADDLE_ENFORCE(bias->layout() == DataLayout::kMKLDNN && bias->format() != memory::format::format_undef, "Wrong layout/format set for Bias tensor"); PADDLE_ENFORCE(bias->dims().size() == 1, "Bias must only have 1 dimension, i.e. X"); } std::vector strides = ctx.Attr>("strides"); std::vector paddings = ctx.Attr>("paddings"); std::vector dilations = ctx.Attr>("dilations"); int groups = ctx.Attr("groups"); bool fuse_relu = ctx.Attr("fuse_relu"); bool fuse_residual_conn = ctx.Attr("fuse_residual_connection"); bool force_fp32_output = ctx.Attr("force_fp32_output"); if (fuse_residual_conn) { PADDLE_ENFORCE(force_fp32_output != true, "residual fusion does not support force output with fp32"); } bool is_conv3d = strides.size() == 3U; // TODO(tpatejko): add support for dilation PADDLE_ENFORCE( is_conv3d ? dilations.size() == 3 && dilations[0] == 1 && dilations[1] == 1 && dilations[2] == 1 : dilations.size() == 2 && dilations[0] == 1 && dilations[1] == 1, "dilation in convolution is not implemented yet"); PADDLE_ENFORCE(is_conv3d != true, "int8 does not support conv3d currently"); const T* input_data = input->data(); std::vector src_tz = paddle::framework::vectorize2int(input->dims()); std::vector weights_tz = paddle::framework::vectorize2int(filter->dims()); int g = std::max(groups, 1); GetWeightsTz(weights_tz, g, is_conv3d); std::vector dst_tz = paddle::framework::vectorize2int(output->dims()); mkldnn::memory::data_type src_dt = paddle::framework::ToMKLDNNDataType(input->type()); auto dst_dt = fuse_relu ? paddle::framework::ToMKLDNNDataType( framework::DataTypeTrait::DataType) : paddle::framework::ToMKLDNNDataType( framework::DataTypeTrait::DataType); if (force_fp32_output) { dst_dt = paddle::framework::ToMKLDNNDataType( framework::DataTypeTrait::DataType); } if (fuse_residual_conn) { auto residual = ctx.Input("ResidualData"); auto residual_dt = paddle::framework::ToMKLDNNDataType(residual->type()); if (dst_dt != residual_dt) dst_dt = residual_dt; } // Get unique name for storing MKLDNN primitives std::string key; key.reserve(MaxKeyLength); platform::ConvMKLDNNHandler::AppendKey( &key, src_tz, weights_tz, strides, paddings, dilations, groups, src_dt, input->format(), fuse_relu, fuse_residual_conn, ctx.op().Output("Output")); const std::string key_conv_pd = key + "@conv_pd"; bool need_s8_to_u8 = false; std::shared_ptr conv_p = nullptr; std::shared_ptr src_memory_p = nullptr; std::shared_ptr user_src_memory_p = nullptr; std::shared_ptr dst_memory_p = nullptr; std::vector pipeline; std::shared_ptr conv_pd = nullptr; std::shared_ptr handler = nullptr; auto prim_key = key + "@conv_p"; auto dst_key = key + "@dst_mem_p"; auto src_key = key + "@src_mem_p"; auto user_src_key = key + "@user_src_mem_p"; auto src_reorder_key = key + "@src_mem_preorder_p"; auto residual_reorder_key = key + "@residual_data_mem_preorder_p"; conv_p = std::static_pointer_cast( dev_ctx.GetBlob(prim_key)); if (conv_p == nullptr || !is_test) { const K* filter_data = filter->data(); auto scale_in_data = ctx.Attr("Scale_in"); auto scale_in_eltwise_data = ctx.Attr("Scale_in_eltwise"); auto scale_weights_data = ctx.Attr>("Scale_weights"); auto scale_out_data = force_fp32_output ? 1.0f : ctx.Attr("Scale_out"); float sum_scale = fuse_residual_conn ? scale_out_data / scale_in_eltwise_data : 1.0f; bool is_multi_channel = scale_weights_data.size() > 1; int count = is_multi_channel ? (g > 1 ? (weights_tz)[1] * (weights_tz)[0] : (weights_tz)[0]) : 1; std::vector output_shift_scale(count); #pragma omp parallel for if (count > 1) for (int i = 0; i < count; i++) { if (scale_weights_data[i] == 0.0) output_shift_scale[i] = scale_out_data; // weights data will contain 0 // in some models, then weights // scale couldn't be calculated else output_shift_scale[i] = scale_out_data / (scale_in_data * scale_weights_data[i]); } auto user_src_md = platform::MKLDNNMemDesc({src_tz}, src_dt, input->format()); auto user_weights_md = platform::MKLDNNMemDesc( {weights_tz}, platform::MKLDNNGetDataType(), ((g) == 1) ? mkldnn::memory::format::oihw : mkldnn::memory::format::goihw); /* create memory descriptor for convolution without specified format * ('any') which lets a primitive (convolution in this case) choose * the memory format preferred for best performance */ std::string data_format = ctx.Attr("data_format"); auto chosen_memory_format = platform::data_format_to_memory_format(data_format); std::vector bias_tz; auto src_md = platform::MKLDNNMemDesc(src_tz, src_dt, chosen_memory_format); auto weights_md = platform::MKLDNNMemDesc( weights_tz, memory::data_type::s8, chosen_memory_format); auto dst_md = platform::MKLDNNMemDesc(dst_tz, dst_dt, chosen_memory_format); // create a conv primitive descriptor and save it for usage in backward if (bias) { bias_tz = paddle::framework::vectorize2int(bias->dims()); auto bias_md = platform::MKLDNNMemDesc(bias_tz, memory::data_type::s32, memory::format::x); conv_pd = ConvFwdPrimitiveDesc(src_md, weights_md, bias_md, dst_md, strides, paddings, mkldnn_engine, fuse_relu, fuse_residual_conn, output_shift_scale, sum_scale, is_test); } else { conv_pd = ConvFwdPrimitiveDesc(src_md, weights_md, dst_md, strides, paddings, mkldnn_engine, fuse_relu, fuse_residual_conn, output_shift_scale, sum_scale, is_test); } // Save conv_pd/src_memory/weights_memory for backward pass dev_ctx.SetBlob(key_conv_pd, conv_pd); handler.reset(new platform::ConvMKLDNNHandler(conv_pd, dev_ctx, mkldnn_engine, key)); // create mkldnn memory from input tensors (data/weights) user_src_memory_p = handler->AcquireSrcMemory(user_src_md, to_void_cast(input_data)); auto user_weights_memory_p = handler->AcquireWeightsMemory( user_weights_md, to_void_cast(filter_data)); // create reorder primitive if the input format is not the preferred one src_memory_p = handler->AcquireSrcMemoryFromPrimitive(user_src_memory_p, pipeline); std::shared_ptr weights_memory_p; int mask_reorder = is_multi_channel ? ((g != 1) ? (1 << 1) + (1 << 0) : 1 << 0) : 0; weights_memory_p = handler->AcquireWeightsMemoryFromPrimitive( user_weights_memory_p, pipeline, is_test, true, scale_weights_data, mask_reorder); if (fuse_residual_conn) { auto residual_param = ctx.Input("ResidualData"); PADDLE_ENFORCE_EQ(output->dims(), residual_param->dims(), "Output and elementwise parameter need to have the " "same dimension sizes"); auto residual_dt = paddle::framework::ToMKLDNNDataType(residual_param->type()); if (residual_param->format() != handler->GetDstFormat()) { auto residual_data_tz = paddle::framework::vectorize2int(residual_param->dims()); auto user_residual_md = platform::MKLDNNMemDesc( residual_data_tz, residual_dt, residual_param->format()); if (residual_dt == mkldnn::memory::data_type::u8) { dst_memory_p = platform::SetDstMemory( ctx, output, residual_param, user_residual_md, handler, &pipeline); } else { need_s8_to_u8 = fuse_relu; dst_memory_p = platform::SetDstMemory( ctx, output, residual_param, user_residual_md, handler, &pipeline); } } else { output->ShareDataWith(*residual_param); if (residual_dt == mkldnn::memory::data_type::u8) { dst_memory_p = platform::SetDstMemory(ctx, output, handler); } else { need_s8_to_u8 = fuse_relu; dst_memory_p = platform::SetDstMemory(ctx, output, handler); } } } else if (!force_fp32_output) { if (fuse_relu) { dst_memory_p = platform::SetDstMemory(ctx, output, handler); } else { dst_memory_p = platform::SetDstMemory(ctx, output, handler); } } else { dst_memory_p = platform::SetDstMemory(ctx, output, handler); } // create convolution op primitive auto scale_bias_key = key + "@scale_bias"; if (bias) { const K* bias_data = bias->data(); auto user_bias_md = platform::MKLDNNMemDesc( {bias_tz}, platform::MKLDNNGetDataType(), memory::format::x); auto user_bias_memory_p = handler->AcquireBiasMemory( user_bias_md, to_void_cast(bias_data)); std::shared_ptr bias_memory_p; int mask_reorder = is_multi_channel ? 1 << 0 : 1; int count = is_multi_channel ? (g > 1 ? (weights_tz)[1] * (weights_tz)[0] : (weights_tz)[0]) : 1; std::vector scale_bias_data(count); #pragma omp parallel for if (count > 1) for (int i = 0; i < count; i++) { scale_bias_data[i] = scale_in_data * scale_weights_data[i]; } bias_memory_p = handler->AcquireBiasMemoryFromPrimitive( user_bias_memory_p, pipeline, is_test, true, scale_bias_data, mask_reorder); conv_p = handler->AcquireConvolution(src_memory_p, weights_memory_p, bias_memory_p, dst_memory_p); } else { conv_p = handler->AcquireConvolution(src_memory_p, weights_memory_p, dst_memory_p); } // push primitive to stream and wait until it's executed pipeline.push_back(*conv_p); } else { auto src_memory_reorder_p = std::static_pointer_cast( dev_ctx.GetBlob(src_reorder_key)); src_memory_p = std::static_pointer_cast(dev_ctx.GetBlob(src_key)); if (src_memory_reorder_p) { user_src_memory_p = std::static_pointer_cast( dev_ctx.GetBlob(user_src_key)); user_src_memory_p->set_data_handle(to_void_cast(input_data)); } else if (src_memory_p) { src_memory_p->set_data_handle(to_void_cast(input_data)); } dst_memory_p = std::static_pointer_cast(dev_ctx.GetBlob(dst_key)); conv_pd = std::static_pointer_cast( dev_ctx.GetBlob(key_conv_pd)); if (conv_pd) { handler.reset(new platform::ConvMKLDNNHandler(conv_pd, dev_ctx, mkldnn_engine, key)); } if (fuse_residual_conn) { auto residual_param = ctx.Input("ResidualData"); auto residual_dt = paddle::framework::ToMKLDNNDataType(residual_param->type()); output->ShareDataWith(*residual_param); if (residual_dt == mkldnn::memory::data_type::u8) { platform::SetDstMemoryHandler(ctx, output, handler, &dst_memory_p); } else { platform::SetDstMemoryHandler(ctx, output, handler, &dst_memory_p); } } else if (!force_fp32_output) { if (fuse_relu) { platform::SetDstMemoryHandler(ctx, output, handler, &dst_memory_p); } else { platform::SetDstMemoryHandler(ctx, output, handler, &dst_memory_p); } } else { platform::SetDstMemoryHandler(ctx, output, handler, &dst_memory_p); } if (src_memory_reorder_p) { pipeline.push_back(*src_memory_reorder_p); } auto residual_reorder_p = std::static_pointer_cast( dev_ctx.GetBlob(residual_reorder_key)); if (residual_reorder_p) { pipeline.push_back(*residual_reorder_p); } pipeline.push_back(*conv_p); } // push primitive to stream and wait until it's executed stream(stream::kind::eager).submit(pipeline).wait(); if (need_s8_to_u8) { output->mutable_data(ctx.GetPlace()); } output->set_layout(DataLayout::kMKLDNN); output->set_format(GetMKLDNNFormat(*dst_memory_p)); } private: mkldnn::primitive_attr CreatePostOps(bool fuse_relu, bool fuse_residual_conn) const { mkldnn::primitive_attr conv_attr; mkldnn::post_ops post_operations; // Fusion with Elementwise layer relies on adding a sum post-operation with // the scale parameter. It is assumed that when fuse_residual_connection is // true, the output tensor contains the data coming from residual // connection. The result of this post_op is: // Output = scale * Output + Conv_Out. if (fuse_residual_conn) { post_operations.append_sum(1.0f); } // Fusion with ReLU layer is executed through the PostOps feature. Create a // PostOps object and configure it to execute an eltwise relu operation. if (fuse_relu) { constexpr float scale = 1.0f; constexpr float negative_slope = 0.0f; constexpr float placeholder = 0.0f; post_operations.append_eltwise(scale, mkldnn::algorithm::eltwise_relu, negative_slope, placeholder); } conv_attr.set_post_ops(post_operations); return conv_attr; } mkldnn::primitive_attr CreatePostOps( bool fuse_relu, bool fuse_residual_conn, const std::vector output_shift_scale, float sum_scale) const { mkldnn::primitive_attr conv_attr; mkldnn::post_ops post_operations; int mask = output_shift_scale.size() > 1 ? 1 << 1 : 0; conv_attr.set_output_scales(mask, output_shift_scale); if (fuse_residual_conn) { post_operations.append_sum(sum_scale); } if (fuse_relu) { constexpr float scale = 1.0f; constexpr float negative_slope = 0.0f; constexpr float placeholder = 1.0f; // beta post_operations.append_eltwise(scale, mkldnn::algorithm::eltwise_relu, negative_slope, placeholder); } conv_attr.set_post_ops(post_operations); return conv_attr; } std::unique_ptr ConvFwdPrimitiveDesc(const memory::desc& src, const memory::desc& weights, const memory::desc& dst, const std::vector& strides, const std::vector& paddings, const mkldnn::engine& engine, const bool fuse_relu, const bool fuse_residual_conn, mkldnn::prop_kind fwd_prop_kind) const { memory::dims stride_dims = strides; memory::dims padding_dims = paddings; auto conv_desc = mkldnn::convolution_forward::desc( fwd_prop_kind, mkldnn::convolution_direct, src, weights, dst, stride_dims, padding_dims, padding_dims, mkldnn::padding_kind::zero); mkldnn::primitive_attr conv_attr = CreatePostOps(fuse_relu, fuse_residual_conn); auto p_conv_pd = new mkldnn::convolution_forward::primitive_desc( conv_desc, conv_attr, engine); return std::unique_ptr( p_conv_pd); } std::unique_ptr ConvFwdPrimitiveDesc(const memory::desc& src, const memory::desc& weights, const memory::desc& dst, const std::vector& strides, const std::vector& paddings, const mkldnn::engine& engine, const bool fuse_relu, const bool fuse_residual_conn, const std::vector output_shift_scale, const float sum_scale, bool is_test) const { memory::dims stride_dims = {strides[0], strides[1]}; memory::dims padding_dims = {paddings[0], paddings[1]}; auto propagation = is_test ? mkldnn::prop_kind::forward_scoring : mkldnn::prop_kind::forward_training; auto conv_desc = mkldnn::convolution_forward::desc( propagation, mkldnn::convolution_direct, src, weights, dst, stride_dims, padding_dims, padding_dims, mkldnn::padding_kind::zero); mkldnn::primitive_attr conv_attr = CreatePostOps( fuse_relu, fuse_residual_conn, output_shift_scale, sum_scale); auto p_conv_pd = new mkldnn::convolution_forward::primitive_desc( conv_desc, conv_attr, engine); return std::unique_ptr( p_conv_pd); } std::unique_ptr ConvFwdPrimitiveDesc(const memory::desc& src, const memory::desc& weights, const memory::desc& bias, const memory::desc& dst, const std::vector& strides, const std::vector& paddings, const mkldnn::engine& engine, const bool fuse_relu, const bool fuse_residual_conn, mkldnn::prop_kind fwd_prop_kind) const { memory::dims stride_dims = strides; memory::dims padding_dims = paddings; auto conv_desc = mkldnn::convolution_forward::desc( fwd_prop_kind, mkldnn::convolution_direct, src, weights, bias, dst, stride_dims, padding_dims, padding_dims, mkldnn::padding_kind::zero); mkldnn::primitive_attr conv_attr = CreatePostOps(fuse_relu, fuse_residual_conn); auto p_conv_pd = new mkldnn::convolution_forward::primitive_desc( conv_desc, conv_attr, engine); return std::unique_ptr( p_conv_pd); } std::unique_ptr ConvFwdPrimitiveDesc(const memory::desc& src, const memory::desc& weights, const memory::desc& bias, const memory::desc& dst, const std::vector& strides, const std::vector& paddings, const mkldnn::engine& engine, const bool fuse_relu, const bool fuse_residual_conn, const std::vector output_shift_scale, const float sum_scale, bool is_test) const { memory::dims stride_dims = {strides[0], strides[1]}; memory::dims padding_dims = {paddings[0], paddings[1]}; auto propagation = is_test ? mkldnn::prop_kind::forward_scoring : mkldnn::prop_kind::forward_training; auto conv_desc = mkldnn::convolution_forward::desc( propagation, mkldnn::convolution_direct, src, weights, bias, dst, stride_dims, padding_dims, padding_dims, mkldnn::padding_kind::zero); mkldnn::primitive_attr conv_attr = CreatePostOps( fuse_relu, fuse_residual_conn, output_shift_scale, sum_scale); auto p_conv_pd = new mkldnn::convolution_forward::primitive_desc( conv_desc, conv_attr, engine); return std::unique_ptr( p_conv_pd); } }; template class ConvMKLDNNGradOpKernel : public paddle::framework::OpKernel { public: void Compute(const paddle::framework::ExecutionContext& ctx) const override { PADDLE_ENFORCE(paddle::platform::is_cpu_place(ctx.GetPlace()), "It must use CPUPlace."); auto& dev_ctx = ctx.template device_context(); const auto& mkldnn_engine = dev_ctx.GetEngine(); const Tensor* input = ctx.Input("Input"); const Tensor* filter = ctx.Input("Filter"); const Tensor* output = ctx.Input("Output"); const Tensor* output_grad = ctx.Input(framework::GradVarName("Output")); Tensor* input_grad = ctx.Output(framework::GradVarName("Input")); Tensor* filter_grad = ctx.Output(framework::GradVarName("Filter")); PADDLE_ENFORCE(input->layout() == DataLayout::kMKLDNN && input->format() != memory::format::format_undef, "Wrong layout/format set for Input tensor"); PADDLE_ENFORCE(filter->layout() == DataLayout::kMKLDNN && filter->format() != memory::format::format_undef, "Wrong layout/format set for Filter tensor"); PADDLE_ENFORCE(output->layout() == DataLayout::kMKLDNN && output->format() != memory::format::format_undef, "Wrong layout/format set for Output tensor"); PADDLE_ENFORCE(output_grad->layout() == DataLayout::kMKLDNN && output_grad->format() != memory::format::format_undef, "Wrong layout/format set for output_grad tensor"); PADDLE_ENFORCE( !ctx.Attr("is_test"), "is_test attribute should be set to False in training phase."); if (!input_grad && !filter_grad) return; std::vector strides = ctx.Attr>("strides"); std::vector paddings = ctx.Attr>("paddings"); std::vector dilations = ctx.Attr>("dilations"); int groups = ctx.Attr("groups"); bool is_conv3d = strides.size() == 3U; const T* input_data = input->data(); const T* filter_data = filter->data(); const T* output_grad_data = output_grad->data(); T* input_grad_data = nullptr; T* filter_grad_data = nullptr; std::vector src_tz = paddle::framework::vectorize2int(input->dims()); std::vector weights_tz = paddle::framework::vectorize2int(filter->dims()); int g = std::max(groups, 1); GetWeightsTz(weights_tz, g, is_conv3d); std::vector dst_tz = paddle::framework::vectorize2int(output->dims()); auto src_format = input->format(); mkldnn::memory::format weights_format = GetWeightsFormat(filter->format(), g, is_conv3d); // Get an unique name from "argument" name of "Output" variable // as well as attributes of primitive to be created // This name will be used as key when saving info into device context const std::string key = platform::ConvMKLDNNHandler::GetHash( src_tz, weights_tz, strides, paddings, dilations, groups, ctx.op().Input("Output")); const std::string key_conv_pd = key + "@conv_pd"; std::vector pipeline; // Create user memory descriptors auto user_src_md = platform::MKLDNNMemDesc( {src_tz}, platform::MKLDNNGetDataType(), src_format); auto user_weights_md = platform::MKLDNNMemDesc( {weights_tz}, platform::MKLDNNGetDataType(), weights_format); auto user_diff_dst_md = platform::MKLDNNMemDesc( {dst_tz}, platform::MKLDNNGetDataType(), output_grad->format()); /* create memory descriptor for conv backward without specified format * ('any') which lets a primitive (conv backward in this case) choose * the memory format preferred for best performance */ std::string data_format = ctx.Attr("data_format"); auto chosen_memory_format = platform::data_format_to_memory_format(data_format); weights_format = mkldnn::memory::format::any; // Check the format for user's special output if (chosen_memory_format != mkldnn::memory::format::any) { if (is_conv3d) { chosen_memory_format = platform::MKLDNNFormatForSize(src_tz.size(), chosen_memory_format); } } auto src_md = platform::MKLDNNMemDesc( src_tz, platform::MKLDNNGetDataType(), chosen_memory_format); auto diff_src_md = platform::MKLDNNMemDesc( src_tz, platform::MKLDNNGetDataType(), chosen_memory_format); auto weights_md = platform::MKLDNNMemDesc( weights_tz, platform::MKLDNNGetDataType(), weights_format); auto diff_weights_md = platform::MKLDNNMemDesc( weights_tz, platform::MKLDNNGetDataType(), weights_format); auto diff_dst_md = platform::MKLDNNMemDesc( dst_tz, platform::MKLDNNGetDataType(), chosen_memory_format); // Retrieve conv_pd from device context auto conv_pd = std::static_pointer_cast( dev_ctx.GetBlob(key_conv_pd)); PADDLE_ENFORCE(conv_pd != nullptr, "Fail to find conv_pd in device context"); // create backward convolution weights primitive descriptor auto conv_bwd_weights_desc = mkldnn::convolution_backward_weights::desc( mkldnn::convolution_direct, src_md, diff_weights_md, diff_dst_md, strides, paddings, paddings, mkldnn::padding_kind::zero); auto conv_bwd_weights_pd = std::make_shared( conv_bwd_weights_desc, mkldnn_engine, *conv_pd); // create backward convolution data primitive descriptor auto conv_bwd_data_desc = mkldnn::convolution_backward_data::desc( mkldnn::convolution_direct, diff_src_md, weights_md, diff_dst_md, strides, paddings, paddings, mkldnn::padding_kind::zero); auto conv_bwd_data_pd = std::make_shared( conv_bwd_data_desc, mkldnn_engine, *conv_pd); platform::ConvMKLDNNHandler handler(conv_pd, conv_bwd_data_pd, conv_bwd_weights_pd, dev_ctx, mkldnn_engine, key); // create mkldnn memory from input tensors (data/weights) auto user_src_memory_p = handler.AcquireSrcMemory(user_src_md, to_void_cast(input_data)); auto user_weights_memory_p = handler.AcquireWeightsMemory( user_weights_md, to_void_cast(filter_data)); auto user_diff_dst_memory_p = handler.AcquireDiffDstMemory( user_diff_dst_md, to_void_cast(output_grad_data)); // create backward conv primitive for weights if (filter_grad) { auto src_memory_p = handler.AcquireSrcMemoryFromWeightsPrimitive( user_src_memory_p, pipeline); auto diff_dst_memory_4filter_p = handler.AcquireDiffDstMemoryFromWeightsPrimitive( user_diff_dst_memory_p, pipeline); const size_t size = handler.GetDiffWeightsMemorySize(); filter_grad_data = filter_grad->mutable_data( ctx.GetPlace(), paddle::memory::Allocator::kDefault, size); auto diff_weights_memory_p = handler.AcquireDiffWeightsMemoryFromWeightsPrimitive( reinterpret_cast(filter_grad_data)); auto conv_bwd_weights_p = handler.AcquireConvolutionBackwardWeights( src_memory_p, diff_dst_memory_4filter_p, diff_weights_memory_p); // push primitive to stream and wait until it's executed pipeline.push_back(*conv_bwd_weights_p); filter_grad->set_layout(DataLayout::kMKLDNN); filter_grad->set_format(GetMKLDNNFormat(*diff_weights_memory_p)); } if (input_grad) { auto weights_memory_p = handler.AcquireWeightsMemoryFromDataPrimitive( user_weights_memory_p, pipeline); auto diff_dst_memory_4data_p = handler.AcquireDiffDstMemoryFromDataPrimitive(user_diff_dst_memory_p, pipeline); const size_t size = handler.GetDiffSourceMemorySize(); input_grad_data = input_grad->mutable_data( ctx.GetPlace(), paddle::memory::Allocator::kDefault, size); auto diff_src_memory_p = handler.AcquireDiffSrcMemoryFromDataPrimitive( reinterpret_cast(input_grad_data)); auto conv_bwd_data_p = handler.AcquireConvolutionBackwardData( diff_dst_memory_4data_p, weights_memory_p, diff_src_memory_p); pipeline.push_back(*conv_bwd_data_p); input_grad->set_layout(DataLayout::kMKLDNN); input_grad->set_format(GetMKLDNNFormat(*diff_src_memory_p)); } stream(stream::kind::eager).submit(pipeline).wait(); } }; } // namespace operators } // namespace paddle namespace ops = paddle::operators; REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv2d, MKLDNN, ::paddle::platform::CPUPlace, FP32, ops::kConvMKLDNNFP32, ops::ConvMKLDNNOpKernel); REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv2d, MKLDNN, ::paddle::platform::CPUPlace, U8, ops::kConvMKLDNNFP32, ops::ConvMKLDNNOpKernel); REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv2d, MKLDNN, ::paddle::platform::CPUPlace, S8, ops::kConvMKLDNNFP32, ops::ConvMKLDNNOpKernel); REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv2d_grad, MKLDNN, ::paddle::platform::CPUPlace, FP32, ops::kConvMKLDNNFP32, ops::ConvMKLDNNGradOpKernel); REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv3d, MKLDNN, ::paddle::platform::CPUPlace, FP32, ops::kConvMKLDNNFP32, ops::ConvMKLDNNOpKernel); REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(conv3d_grad, MKLDNN, ::paddle::platform::CPUPlace, FP32, ops::kConvMKLDNNFP32, ops::ConvMKLDNNGradOpKernel);