/******************************************************************************* * Copyright 2016-2018 Intel Corporation * * 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. *******************************************************************************/ #ifndef CONVOLUTION_PD_HPP #define CONVOLUTION_PD_HPP #include "mkldnn.h" #include "c_types_map.hpp" #include "primitive_desc.hpp" #include "memory_pd.hpp" #include "utils.hpp" namespace mkldnn { namespace impl { status_t conv_desc_init(convolution_desc_t *conv_desc, prop_kind_t prop_kind, alg_kind_t alg_kind, const memory_desc_t *src_desc, const memory_desc_t *weights_desc, const memory_desc_t *bias_desc, const memory_desc_t *dst_desc, const dims_t strides, const dims_t dilates, const dims_t padding_l, const dims_t padding_r, padding_kind_t padding_kind); memory_desc_t *conv_prop_agnostic_src_d(convolution_desc_t *desc); memory_desc_t *conv_prop_agnostic_wei_d(convolution_desc_t *desc); memory_desc_t *conv_prop_agnostic_bia_d(convolution_desc_t *desc); memory_desc_t *conv_prop_agnostic_dst_d(convolution_desc_t *desc); const memory_desc_t *conv_prop_agnostic_src_d(const convolution_desc_t *desc); const memory_desc_t *conv_prop_agnostic_wei_d(const convolution_desc_t *desc); const memory_desc_t *conv_prop_agnostic_bia_d(const convolution_desc_t *desc); const memory_desc_t *conv_prop_agnostic_dst_d(const convolution_desc_t *desc); struct convolution_fwd_pd_t: public primitive_desc_t { typedef convolution_fwd_pd_t base_class; typedef convolution_fwd_pd_t hint_class; static constexpr auto base_pkind = primitive_kind::convolution; convolution_fwd_pd_t(mkldnn::impl::engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const convolution_fwd_pd_t *hint_fwd_pd) : primitive_desc_t(engine, attr, base_pkind), desc_(*adesc) , hint_fwd_pd_(hint_fwd_pd) {} virtual ~convolution_fwd_pd_t() {} const convolution_desc_t *desc() const { return &desc_; } virtual const op_desc_t *op_desc() const override { return reinterpret_cast(this->desc()); } virtual void init_info() override { init_info_conv(this, this->info_); } virtual const memory_pd_t *input_pd(int index = 0) const override { switch (index) { case 0: return src_pd(); case 1: case 2: return weights_pd(index - 1); default: return nullptr; } } virtual const memory_pd_t *output_pd(int index = 0) const override { return index == 0 ? dst_pd() : nullptr; } virtual int n_inputs() const override { return 2 + with_bias(); } virtual int n_outputs() const override { return 1; } virtual status_t query(query_t what, int idx, void *result) const override { switch (what) { case pkind_traits::query_d: *(const convolution_desc_t**)result = desc(); break; default: return primitive_desc_t::query(what, idx, result); } return status::success; } /* common conv aux functions */ inline int MB() const { return desc_.src_desc.dims[0]; } inline int IC() const { return desc_.src_desc.dims[1]; } inline int OC() const { return desc_.dst_desc.dims[1]; } inline int G() const { return with_groups() ? desc_.weights_desc.dims[0] : 1; } inline int ID() const { return (ndims() == 5) ? desc_.src_desc.dims[2] : 1; } inline int IH() const { return (ndims() == 3) ? 1 : desc_.src_desc.dims[ndims()-2]; } inline int IW() const { return desc_.src_desc.dims[ndims()-1]; } inline int OD() const { return (ndims() == 5) ? desc_.dst_desc.dims[2] : 1; } inline int OH() const { return (ndims() == 3) ? 1 : desc_.dst_desc.dims[ndims()-2]; } inline int OW() const { return desc_.dst_desc.dims[ndims()-1]; } inline int KD() const { return (ndims() == 5) ? desc_.weights_desc.dims[2 + with_groups()] : 1; } inline int KH() const { return (ndims() == 3) ? 1 : desc_.weights_desc.dims[ndims() - (2 - with_groups())]; } inline int KW() const { return desc_.weights_desc.dims[ndims() - (1 - with_groups())]; } inline int KSD() const { return (ndims() == 5) ? desc_.strides[0] : 1; } inline int KSH() const { return (ndims() == 3) ? 1 : desc_.strides[ndims()-4]; } inline int KSW() const { return desc_.strides[ndims()-3]; } inline int KDD() const { return (ndims() == 5) ? desc_.dilates[0] : 0; } inline int KDH() const { return (ndims() == 3) ? 0 : desc_.dilates[ndims()-4]; } inline int KDW() const { return desc_.dilates[ndims()-3]; } inline int padFront() const { return (ndims() == 5) ? desc_.padding[0][0] : 0; } inline int padBack() const { return (ndims() == 5) ? desc_.padding[1][0] : 0; } inline int padT() const { return (ndims() == 3) ? 0 : desc_.padding[0][ndims()-4]; } inline int padB() const { return (ndims() == 3) ? 0 : desc_.padding[1][ndims()-4]; } inline int padL() const { return desc_.padding[0][ndims()-3]; } inline int padR() const { return desc_.padding[1][ndims()-3]; } inline bool with_bias() const { return !memory_desc_wrapper(desc_.bias_desc).is_zero(); } inline bool with_groups() const { return desc_.weights_desc.ndims == desc_.src_desc.ndims + 1; } inline int ndims() const { return desc_.src_desc.ndims; } virtual status_t set_alg_kind(alg_kind_t alg) { if (alg == alg_kind::undef) return status::invalid_arguments; desc_.alg_kind = alg; return status::success; } bool has_zero_dim_memory() const { return false || memory_desc_wrapper(desc_.src_desc).has_zero_dim() || memory_desc_wrapper(desc_.dst_desc).has_zero_dim(); } protected: convolution_desc_t desc_; const convolution_fwd_pd_t *hint_fwd_pd_; virtual status_t init() = 0; }; struct convolution_bwd_data_pd_t: public primitive_desc_t { typedef convolution_bwd_data_pd_t base_class; typedef convolution_fwd_pd_t hint_class; static constexpr auto base_pkind = primitive_kind::convolution; convolution_bwd_data_pd_t(mkldnn::impl::engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const convolution_fwd_pd_t *hint_fwd_pd) : primitive_desc_t(engine, attr, base_pkind), desc_(*adesc) , hint_fwd_pd_(hint_fwd_pd) {} virtual ~convolution_bwd_data_pd_t() {} const convolution_desc_t *desc() const { return &desc_; } virtual const op_desc_t *op_desc() const override { return reinterpret_cast(this->desc()); } virtual void init_info() override { init_info_conv(this, this->info_); } virtual const memory_pd_t *input_pd(int index = 0) const override { switch (index) { case 0: return diff_dst_pd(); case 1: return weights_pd(0); default: return nullptr; } } virtual const memory_pd_t *output_pd(int index = 0) const override { return index == 0 ? diff_src_pd() : nullptr; } virtual int n_inputs() const override { return 2 + with_bias(); } virtual int n_outputs() const override { return 1; } virtual status_t query(query_t what, int idx, void *result) const override { switch (what) { case query::convolution_d: *(const convolution_desc_t**)result = desc(); break; default: return primitive_desc_t::query(what, idx, result); } return status::success; } /* common conv aux functions */ inline int MB() const { return desc_.diff_src_desc.dims[0]; } inline int IC() const { return desc_.diff_src_desc.dims[1]; } inline int OC() const { return desc_.diff_dst_desc.dims[1]; } inline int G() const { return with_groups() ? desc_.weights_desc.dims[0] : 1; } inline int ID() const { return (ndims() == 5) ? desc_.diff_src_desc.dims[2] : 1; } inline int IH() const { return (ndims() == 3) ? 1 : desc_.diff_src_desc.dims[ndims()-2]; } inline int IW() const { return desc_.diff_src_desc.dims[ndims()-1]; } inline int OD() const { return (ndims() == 5) ? desc_.diff_dst_desc.dims[2] : 1; } inline int OH() const { return (ndims() == 3) ? 1 : desc_.diff_dst_desc.dims[ndims()-2]; } inline int OW() const { return desc_.diff_dst_desc.dims[ndims()-1]; } inline int KD() const { return (ndims() == 5) ? desc_.weights_desc.dims[2 + with_groups()] : 1; } inline int KH() const { return (ndims() == 3) ? 1 : desc_.weights_desc.dims[ndims() - (2 - with_groups())]; } inline int KW() const { return desc_.weights_desc.dims[ndims() - (1 - with_groups())]; } inline int KSD() const { return (ndims() == 5) ? desc_.strides[0] : 1; } inline int KSH() const { return (ndims() == 3) ? 1 : desc_.strides[ndims()-4]; } inline int KSW() const { return desc_.strides[ndims()-3]; } inline int KDD() const { return (ndims() == 5) ? desc_.dilates[0] : 0; } inline int KDH() const { return (ndims() == 3) ? 0 : desc_.dilates[ndims()-4]; } inline int KDW() const { return desc_.dilates[ndims()-3]; } inline int padFront() const { return (ndims() == 5) ? desc_.padding[0][0] : 0; } inline int padBack() const { return (ndims() == 5) ? desc_.padding[1][0] : 0; } inline int padT() const { return (ndims() == 3) ? 0 : desc_.padding[0][ndims()-4]; } inline int padB() const { return (ndims() == 3) ? 0 : desc_.padding[1][ndims()-4]; } inline int padL() const { return desc_.padding[0][ndims()-3]; } inline int padR() const { return desc_.padding[1][ndims()-3]; } inline bool with_bias() const { return !memory_desc_wrapper(desc_.bias_desc).is_zero(); } inline bool with_groups() const { return desc_.weights_desc.ndims == desc_.diff_src_desc.ndims + 1; } inline int ndims() const { return desc_.diff_src_desc.ndims; } virtual bool support_bias() const { return false; } virtual status_t set_alg_kind(alg_kind_t alg) { if (alg == alg_kind::undef) return status::invalid_arguments; desc_.alg_kind = alg; return status::success; } bool has_zero_dim_memory() const { return false || memory_desc_wrapper(desc_.diff_src_desc).has_zero_dim() || memory_desc_wrapper(desc_.diff_dst_desc).has_zero_dim(); } protected: convolution_desc_t desc_; const convolution_fwd_pd_t *hint_fwd_pd_; virtual status_t init() = 0; }; struct convolution_bwd_weights_pd_t: public primitive_desc_t { typedef convolution_bwd_weights_pd_t base_class; typedef convolution_fwd_pd_t hint_class; static constexpr auto base_pkind = primitive_kind::convolution; convolution_bwd_weights_pd_t(mkldnn::impl::engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const convolution_fwd_pd_t *hint_fwd_pd) : primitive_desc_t(engine, attr, base_pkind), desc_(*adesc) , hint_fwd_pd_(hint_fwd_pd) {} virtual ~convolution_bwd_weights_pd_t() {} const convolution_desc_t *desc() const { return &desc_; } virtual const op_desc_t *op_desc() const override { return reinterpret_cast(this->desc()); } virtual void init_info() override { init_info_conv(this, this->info_); } virtual const memory_pd_t *input_pd(int index = 0) const override { switch (index) { case 0: return src_pd(); case 1: return diff_dst_pd(); default: return nullptr; } } virtual const memory_pd_t *output_pd(int index = 0) const override { switch (index) { case 0: return diff_weights_pd(0); case 1: return with_bias() ? diff_weights_pd(1) : nullptr; default: return nullptr; } } virtual int n_inputs() const override { return 2; } virtual int n_outputs() const override { return 1 + with_bias(); } virtual status_t query(query_t what, int idx, void *result) const override { switch (what) { case query::convolution_d: *(const convolution_desc_t**)result = desc(); break; default: return primitive_desc_t::query(what, idx, result); } return status::success; } /* common conv aux functions */ inline int MB() const { return desc_.src_desc.dims[0]; } inline int IC() const { return desc_.src_desc.dims[1]; } inline int OC() const { return desc_.diff_dst_desc.dims[1]; } inline int G() const { return with_groups() ? desc_.diff_weights_desc.dims[0] : 1; } inline int ID() const { return (ndims() == 5) ? desc_.src_desc.dims[2] : 1; } inline int IH() const { return (ndims() == 3) ? 1 : desc_.src_desc.dims[ndims()-2]; } inline int IW() const { return desc_.src_desc.dims[ndims()-1]; } inline int OD() const { return (ndims() == 5) ? desc_.diff_dst_desc.dims[2] : 1; } inline int OH() const { return (ndims() == 3) ? 1 : desc_.diff_dst_desc.dims[ndims()-2]; } inline int OW() const { return desc_.diff_dst_desc.dims[ndims()-1]; } inline int KD() const { return (ndims() == 5) ? desc_.diff_weights_desc.dims[2 + with_groups()] : 1; } inline int KH() const { return (ndims() == 3) ? 1 : desc_.diff_weights_desc.dims[ndims() - (2 - with_groups())]; } inline int KW() const { return desc_.diff_weights_desc.dims[ndims() - (1 - with_groups())]; } inline int KSD() const { return (ndims() == 5) ? desc_.strides[0] : 1; } inline int KSH() const { return (ndims() == 3) ? 1 : desc_.strides[ndims()-4]; } inline int KSW() const { return desc_.strides[ndims()-3]; } inline int KDD() const { return (ndims() == 5) ? desc_.dilates[0] : 0; } inline int KDH() const { return (ndims() == 3) ? 0 : desc_.dilates[ndims()-4]; } inline int KDW() const { return desc_.dilates[ndims()-3]; } inline int padFront() const { return (ndims() == 5) ? desc_.padding[0][0] : 0; } inline int padBack() const { return (ndims() == 5) ? desc_.padding[1][0] : 0; } inline int padT() const { return (ndims() == 3) ? 0 : desc_.padding[0][ndims()-4]; } inline int padB() const { return (ndims() == 3) ? 0 : desc_.padding[1][ndims()-4]; } inline int padL() const { return desc_.padding[0][ndims()-3]; } inline int padR() const { return desc_.padding[1][ndims()-3]; } inline bool with_bias() const { return !memory_desc_wrapper(desc_.diff_bias_desc).is_zero(); } inline bool with_groups() const { return desc_.diff_weights_desc.ndims == desc_.diff_dst_desc.ndims + 1; } inline int ndims() const { return desc_.src_desc.ndims; } virtual status_t set_alg_kind(alg_kind_t alg) { if (alg == alg_kind::undef) return status::invalid_arguments; desc_.alg_kind = alg; return status::success; } bool has_zero_dim_memory() const { return false || memory_desc_wrapper(desc_.src_desc).has_zero_dim() || memory_desc_wrapper(desc_.diff_dst_desc).has_zero_dim(); } protected: convolution_desc_t desc_; const convolution_fwd_pd_t *hint_fwd_pd_; virtual status_t init() = 0; }; } } #endif // vim: et ts=4 sw=4 cindent cino^=l0,\:0,N-s