/* 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 "paddle/fluid/framework/operator.h" #include "paddle/fluid/platform/dynload/cudnn.h" #include "paddle/fluid/platform/enforce.h" #include "paddle/fluid/platform/float16.h" #include "paddle/fluid/platform/macros.h" DECLARE_bool(cudnn_deterministic); namespace paddle { namespace platform { inline const char* cudnnGetErrorString(cudnnStatus_t status) { switch (status) { case CUDNN_STATUS_SUCCESS: return "CUDNN_STATUS_SUCCESS"; case CUDNN_STATUS_NOT_INITIALIZED: return "CUDNN_STATUS_NOT_INITIALIZED"; case CUDNN_STATUS_ALLOC_FAILED: return "CUDNN_STATUS_ALLOC_FAILED"; case CUDNN_STATUS_BAD_PARAM: return "CUDNN_STATUS_BAD_PARAM"; case CUDNN_STATUS_INTERNAL_ERROR: return "CUDNN_STATUS_INTERNAL_ERROR"; case CUDNN_STATUS_INVALID_VALUE: return "CUDNN_STATUS_INVALID_VALUE"; case CUDNN_STATUS_ARCH_MISMATCH: return "CUDNN_STATUS_ARCH_MISMATCH"; case CUDNN_STATUS_MAPPING_ERROR: return "CUDNN_STATUS_MAPPING_ERROR"; case CUDNN_STATUS_EXECUTION_FAILED: return "CUDNN_STATUS_EXECUTION_FAILED"; case CUDNN_STATUS_NOT_SUPPORTED: return "CUDNN_STATUS_NOT_SUPPORTED"; case CUDNN_STATUS_LICENSE_ERROR: return "CUDNN_STATUS_LICENSE_ERROR"; default: return "Unknown cudnn error number"; } } #define CUDNN_VERSION_MIN(major, minor, patch) \ (CUDNN_VERSION >= ((major)*1000 + (minor)*100 + (patch))) #if !defined(_WIN32) #define CUDNN_ENFORCE(condition) \ do { \ cudnnStatus_t status = condition; \ if (UNLIKELY(status != CUDNN_STATUS_SUCCESS)) { \ PADDLE_THROW(::paddle::platform::cudnnGetErrorString(status)); \ } \ } while (false) #else // windows #define CUDNN_ENFORCE(condition) \ do { \ cudnnStatus_t status = condition; \ if (status != CUDNN_STATUS_SUCCESS) { \ std::cerr << ::paddle::platform::cudnnGetErrorString(status); \ } \ } while (false) #endif enum class DataLayout { // Not use kNHWC, kNCHW, kNCDHW, kNCHW_VECT_C, }; enum class PoolingMode { kMaximum, kAverage, kMaximumDeterministic, }; #if CUDNN_VERSION < 6000 #pragma message "CUDNN version under 6.0 is supported at best effort." #pragma message "We strongly encourage you to move to 6.0 and above." #pragma message "This message is intended to annoy you enough to update." #pragma message \ "please see https://docs.nvidia.com/deeplearning/sdk/cudnn-release-notes/" inline cudnnPoolingMode_t GetPoolingMode(const PoolingMode& mode) { switch (mode) { case PoolingMode::kMaximumDeterministic: return CUDNN_POOLING_MAX; case PoolingMode::kAverage: return CUDNN_POOLING_AVERAGE_COUNT_EXCLUDE_PADDING; case PoolingMode::kMaximum: return CUDNN_POOLING_MAX; default: PADDLE_THROW("Unexpected pooling mode."); } } #else inline cudnnPoolingMode_t GetPoolingMode(const PoolingMode& mode) { switch (mode) { case PoolingMode::kMaximumDeterministic: return CUDNN_POOLING_MAX_DETERMINISTIC; case PoolingMode::kAverage: return CUDNN_POOLING_AVERAGE_COUNT_EXCLUDE_PADDING; case PoolingMode::kMaximum: return CUDNN_POOLING_MAX; default: PADDLE_THROW("Unexpected pooling mode."); } } #endif // CUDNN_VERSION < 6000 template class CudnnDataType; template <> class CudnnDataType { public: static const cudnnDataType_t type = CUDNN_DATA_HALF; // The scaling param type is float for HALF and FLOAT tensors using ScalingParamType = const float; using BatchNormParamType = float; static ScalingParamType* kOne() { static ScalingParamType v = 1.0; return &v; } static ScalingParamType* kZero() { static ScalingParamType v = 0.0; return &v; } }; template <> class CudnnDataType { public: static const cudnnDataType_t type = CUDNN_DATA_FLOAT; using ScalingParamType = const float; using BatchNormParamType = float; static ScalingParamType* kOne() { static ScalingParamType v = 1.0; return &v; } static ScalingParamType* kZero() { static ScalingParamType v = 0.0; return &v; } }; template <> class CudnnDataType { public: static const cudnnDataType_t type = CUDNN_DATA_DOUBLE; using ScalingParamType = const double; using BatchNormParamType = double; static ScalingParamType* kOne() { static ScalingParamType v = 1.0; return &v; } static ScalingParamType* kZero() { static ScalingParamType v = 0.0; return &v; } }; inline cudnnTensorFormat_t GetCudnnTensorFormat( const DataLayout& order) { // Not use switch (order) { case DataLayout::kNHWC: return CUDNN_TENSOR_NHWC; case DataLayout::kNCHW: return CUDNN_TENSOR_NCHW; case DataLayout::kNCDHW: return CUDNN_TENSOR_NCHW; // NOTE: cudnn treat NdTensor as the same default: PADDLE_THROW("Unknown cudnn equivalent for order"); } return CUDNN_TENSOR_NCHW; } class ScopedTensorDescriptor { public: ScopedTensorDescriptor() { PADDLE_ENFORCE(dynload::cudnnCreateTensorDescriptor(&desc_)); } ~ScopedTensorDescriptor() { PADDLE_ENFORCE(dynload::cudnnDestroyTensorDescriptor(desc_)); } inline cudnnTensorDescriptor_t descriptor(const cudnnTensorFormat_t format, const cudnnDataType_t type, const std::vector& dims, const int groups = 1) { // the format is not used now, will add later std::vector strides(dims.size()); strides[dims.size() - 1] = 1; for (int i = dims.size() - 2; i >= 0; i--) { strides[i] = dims[i + 1] * strides[i + 1]; } // Update tensor descriptor dims setting if groups > 1 // NOTE: Assume using NCHW or NCDHW order std::vector dims_with_group(dims.begin(), dims.end()); // copy if (groups > 1) { dims_with_group[1] = dims_with_group[1] / groups; } PADDLE_ENFORCE(dynload::cudnnSetTensorNdDescriptor( desc_, type, dims_with_group.size(), dims_with_group.data(), strides.data())); return desc_; } template inline cudnnTensorDescriptor_t descriptor(const DataLayout& order, const std::vector& dims, const int groups = 1) { return descriptor(GetCudnnTensorFormat(order), CudnnDataType::type, dims, groups); } private: cudnnTensorDescriptor_t desc_; DISABLE_COPY_AND_ASSIGN(ScopedTensorDescriptor); }; class ScopedFilterDescriptor { public: ScopedFilterDescriptor() { PADDLE_ENFORCE(dynload::cudnnCreateFilterDescriptor(&desc_)); } ~ScopedFilterDescriptor() { PADDLE_ENFORCE(dynload::cudnnDestroyFilterDescriptor(desc_)); } inline cudnnFilterDescriptor_t descriptor(const cudnnTensorFormat_t format, const cudnnDataType_t type, const std::vector& kernel, const int groups = 1) { // filter layout: MCHW(MCDHW), where M is the number of // output image channels, C is the number of input image channels, // D is the depth of the filter, H is the height of the filter, and W is the // width of the filter. std::vector kernel_with_group(kernel.begin(), kernel.end()); if (groups > 1) { kernel_with_group[0] /= groups; // NOTE: input filter(C) of the filter is already asserted to be C/groups. } PADDLE_ENFORCE(dynload::cudnnSetFilterNdDescriptor( desc_, type, format, kernel_with_group.size(), kernel_with_group.data())); return desc_; } template inline cudnnFilterDescriptor_t descriptor(const DataLayout& order, const std::vector& kernel, const int groups = 1) { return descriptor(GetCudnnTensorFormat(order), CudnnDataType::type, kernel, groups); } private: cudnnFilterDescriptor_t desc_; DISABLE_COPY_AND_ASSIGN(ScopedFilterDescriptor); }; class ScopedConvolutionDescriptor { public: ScopedConvolutionDescriptor() { PADDLE_ENFORCE(dynload::cudnnCreateConvolutionDescriptor(&desc_)); } ~ScopedConvolutionDescriptor() { PADDLE_ENFORCE(dynload::cudnnDestroyConvolutionDescriptor(desc_)); } inline cudnnConvolutionDescriptor_t descriptor( cudnnDataType_t type, const std::vector& pads, const std::vector& strides, const std::vector& dilations) { PADDLE_ENFORCE_EQ(pads.size(), strides.size()); PADDLE_ENFORCE_EQ(pads.size(), dilations.size()); #if !CUDNN_VERSION_MIN(6, 0, 0) // cudnn v5 does not support dilation conv, the argument is called upscale // instead of dilations and it is must be one. for (size_t i = 0; i < dilations.size(); ++i) { PADDLE_ENFORCE_EQ( dilations[i], 1, "Dilations conv is not supported in this cuDNN version(%d.%d.%d).", CUDNN_VERSION / 1000, CUDNN_VERSION % 1000 / 100, CUDNN_VERSION % 100); } #endif cudnnDataType_t compute_type = (type == CUDNN_DATA_DOUBLE) ? CUDNN_DATA_DOUBLE : CUDNN_DATA_FLOAT; PADDLE_ENFORCE(dynload::cudnnSetConvolutionNdDescriptor( desc_, pads.size(), pads.data(), strides.data(), dilations.data(), CUDNN_CROSS_CORRELATION, compute_type)); return desc_; } template inline cudnnConvolutionDescriptor_t descriptor( const std::vector& pads, const std::vector& strides, const std::vector& dilations) { return descriptor(CudnnDataType::type, pads, strides, dilations); } private: cudnnConvolutionDescriptor_t desc_; DISABLE_COPY_AND_ASSIGN(ScopedConvolutionDescriptor); }; class ScopedPoolingDescriptor { public: ScopedPoolingDescriptor() { PADDLE_ENFORCE(dynload::cudnnCreatePoolingDescriptor(&desc_)); } ~ScopedPoolingDescriptor() { PADDLE_ENFORCE(dynload::cudnnDestroyPoolingDescriptor(desc_)); } inline cudnnPoolingDescriptor_t descriptor(const PoolingMode& mode, const std::vector& kernel, const std::vector& pads, const std::vector& strides) { PADDLE_ENFORCE_EQ(kernel.size(), pads.size()); PADDLE_ENFORCE_EQ(kernel.size(), strides.size()); PADDLE_ENFORCE(dynload::cudnnSetPoolingNdDescriptor( desc_, (GetPoolingMode(mode)), CUDNN_PROPAGATE_NAN, // Always propagate nans. kernel.size(), kernel.data(), pads.data(), strides.data())); return desc_; } private: cudnnPoolingDescriptor_t desc_; DISABLE_COPY_AND_ASSIGN(ScopedPoolingDescriptor); }; inline bool CanCUDNNBeUsed(const framework::ExecutionContext& ctx) { bool use_cudnn = ctx.Attr("use_cudnn"); use_cudnn &= paddle::platform::is_gpu_place(ctx.GetPlace()); #ifdef PADDLE_WITH_CUDA if (use_cudnn) { auto& dev_ctx = ctx.device_context(); use_cudnn &= dev_ctx.cudnn_handle() != nullptr; } #endif return use_cudnn; } } // namespace platform } // namespace paddle