/******************************************************************************* * 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 CPU_JIT_GEMM_CONVOLUTION_HPP #define CPU_JIT_GEMM_CONVOLUTION_HPP #include "c_types_map.hpp" #include "memory_tracking.hpp" #include "cpu_convolution_pd.hpp" #include "cpu_engine.hpp" #include "gemm_convolution_utils.hpp" #include "gemm/gemm.hpp" #include "ref_eltwise.hpp" namespace mkldnn { namespace impl { namespace cpu { struct gemm_convolution_fwd_t: public cpu_primitive_t { struct pd_t: public cpu_convolution_fwd_pd_t { pd_t(engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const typename pd_t::base_class *hint_fwd_pd) : cpu_convolution_fwd_pd_t(engine, adesc, attr, hint_fwd_pd) , jcp_() {} DECLARE_COMMON_PD_T(GEMM_IMPL_STR, gemm_convolution_fwd_t); virtual status_t init() override { using namespace prop_kind; using namespace memory_format; assert(this->engine()->kind() == engine_kind::cpu); bool ok = true && this->set_default_params() == status::success && utils::one_of(this->desc()->prop_kind, forward_training, forward_inference) && utils::one_of(this->desc()->alg_kind, alg_kind::convolution_auto, alg_kind::convolution_direct) && !this->has_zero_dim_memory() && utils::everyone_is(data_type::f32, this->desc()->src_desc.data_type, this->desc()->weights_desc.data_type, this->desc()->dst_desc.data_type) && IMPLICATION(this->with_bias(), data_type::f32 == this->desc()->bias_desc.data_type) && this->src_pd_.desc()->format == src_format() && this->dst_pd_.desc()->format == src_format() && this->weights_pd_.desc()->format == wei_format() && this->is_gemm_conv_format(); if (!ok) return status::unimplemented; auto scratchpad = scratchpad_registry().registrar(); return jit_gemm_convolution_utils::init_conf(jcp_, scratchpad, *desc(), src_pd(), weights_pd(0), dst_pd(), mkldnn_get_max_threads()); } jit_gemm_conv_conf_t jcp_; protected: memory_format_t src_format() const { using namespace memory_format; const int ndims_sp = this->desc()->src_desc.ndims - 2; return (utils::pick(ndims_sp - 1, ncw, nchw, ncdhw)); } memory_format_t wei_format() const { using namespace memory_format; const int ndims_sp = this->desc()->src_desc.ndims - 2; return (this->with_groups() ? utils::pick(ndims_sp - 1, goiw, goihw, goidhw) : utils::pick(ndims_sp - 1, oiw, oihw, oidhw)); } virtual status_t set_default_params() override { using namespace memory_format; if (this->src_pd_.desc()->format == any) CHECK(this->src_pd_.set_format(src_format())); if (this->dst_pd_.desc()->format == any) CHECK(this->dst_pd_.set_format(src_format())); if (this->weights_pd_.desc()->format == any) CHECK(this->weights_pd_.set_format(wei_format())); if (this->bias_pd_.desc()->format == any) CHECK(this->bias_pd_.set_format(x)); if (this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_direct)); return status::success; } virtual bool is_gemm_conv_format() const { auto const &po = this->attr()->post_ops_; auto is_eltwise = [&](int idx) { return po.entry_[idx].is_eltwise(); }; auto is_sum = [&](int idx) { return po.entry_[idx].is_sum(); }; switch (po.len_) { case 0: return true; // no post_ops case 1: return is_eltwise(0) || is_sum(0); // sum OR eltwise case 2: return is_sum(0) && is_eltwise(1); // sum -> eltwise default: return false; } return false; } }; gemm_convolution_fwd_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : cpu_primitive_t(apd, inputs, outputs, true), eltwise_(nullptr) { const auto &post_ops = pd()->attr()->post_ops_; const data_t one = 1.0, zero = 0.0; beta_ = post_ops.find(primitive_kind::sum) >= 0 ? one : zero; const int entry_idx = post_ops.find(primitive_kind::eltwise); if (entry_idx != -1) eltwise_ = new ref_eltwise_scalar_fwd_t( post_ops.entry_[entry_idx].eltwise); } ~gemm_convolution_fwd_t() { delete eltwise_; } typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { execute_forward(); e->set_state(event_t::ready); } private: void execute_forward() const; const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } data_t beta_; ref_eltwise_scalar_fwd_t* eltwise_; }; struct gemm_convolution_bwd_data_t: public cpu_primitive_t { struct pd_t: public cpu_convolution_bwd_data_pd_t { pd_t(engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const convolution_fwd_pd_t *hint_fwd_pd) : cpu_convolution_bwd_data_pd_t(engine, adesc, attr, hint_fwd_pd) , jcp_() {} DECLARE_COMMON_PD_T(GEMM_IMPL_STR, gemm_convolution_bwd_data_t); virtual status_t init() override { using namespace prop_kind; using namespace memory_format; assert(this->engine()->kind() == engine_kind::cpu); bool ok = true && this->set_default_params() == status::success && this->desc()->prop_kind == backward_data && utils::one_of(this->desc()->alg_kind, alg_kind::convolution_auto, alg_kind::convolution_direct) && !this->has_zero_dim_memory() && utils::everyone_is(data_type::f32, this->desc()->diff_src_desc.data_type, this->desc()->weights_desc.data_type, this->desc()->diff_dst_desc.data_type) && this->diff_src_pd_.desc()->format == src_format() && this->diff_dst_pd_.desc()->format == src_format() && this->weights_pd_.desc()->format == wei_format(); if (!ok) return status::unimplemented; auto scratchpad = scratchpad_registry().registrar(); return jit_gemm_convolution_utils::init_conf(jcp_, scratchpad, *desc(), diff_src_pd(), weights_pd(0), diff_dst_pd(), mkldnn_get_max_threads()); } jit_gemm_conv_conf_t jcp_; protected: memory_format_t src_format() const { using namespace memory_format; const int ndims_sp = this->desc()->diff_src_desc.ndims - 2; return (utils::pick(ndims_sp - 1, ncw, nchw, ncdhw)); } memory_format_t wei_format() const { using namespace memory_format; const int ndims_sp = this->desc()->diff_src_desc.ndims - 2; return (this->with_groups() ? utils::pick(ndims_sp - 1, goiw, goihw, goidhw) : utils::pick(ndims_sp - 1, oiw, oihw, oidhw)); } virtual status_t set_default_params() override { using namespace memory_format; if (this->diff_src_pd_.desc()->format == any) CHECK(this->diff_src_pd_.set_format(src_format())); if (this->diff_dst_pd_.desc()->format == any) CHECK(this->diff_dst_pd_.set_format(src_format())); if (this->weights_pd_.desc()->format == any) CHECK(this->weights_pd_.set_format(wei_format())); if (this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_direct)); return status::success; } }; gemm_convolution_bwd_data_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : cpu_primitive_t(apd, inputs, outputs, true) {} ~gemm_convolution_bwd_data_t() {} typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { switch (pd()->desc()->prop_kind) { case prop_kind::backward_data: execute_backward_data(); break; default: assert(!"invalid prop_kind"); } e->set_state(event_t::ready); } private: void execute_backward_data() const; const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } }; struct gemm_convolution_bwd_weights_t: public cpu_primitive_t { struct pd_t: public cpu_convolution_bwd_weights_pd_t { pd_t(engine_t *engine, const convolution_desc_t *adesc, const primitive_attr_t *attr, const convolution_fwd_pd_t *hint_fwd_pd) : cpu_convolution_bwd_weights_pd_t(engine, adesc, attr, hint_fwd_pd) , jcp_() {} DECLARE_COMMON_PD_T(GEMM_IMPL_STR, gemm_convolution_bwd_weights_t); virtual status_t init() override { using namespace prop_kind; using namespace memory_format; assert(this->engine()->kind() == engine_kind::cpu); bool ok = true && this->set_default_params() == status::success && this->desc()->prop_kind == backward_weights && utils::one_of(this->desc()->alg_kind, alg_kind::convolution_auto, alg_kind::convolution_direct) && !this->has_zero_dim_memory() && utils::everyone_is(data_type::f32, this->desc()->src_desc.data_type, this->desc()->diff_weights_desc.data_type, this->desc()->diff_dst_desc.data_type) && IMPLICATION(this->with_bias(), data_type::f32 == this->desc()->diff_bias_desc.data_type) && this->src_pd_.desc()->format == src_format() && this->diff_dst_pd_.desc()->format == src_format() && this->diff_weights_pd_.desc()->format == wei_format(); if (!ok) return status::unimplemented; auto scratchpad = scratchpad_registry().registrar(); return jit_gemm_convolution_utils::init_conf(jcp_, scratchpad, *desc(), src_pd(), diff_weights_pd(0), diff_dst_pd(), mkldnn_get_max_threads()); } jit_gemm_conv_conf_t jcp_; protected: memory_format_t src_format() const { using namespace memory_format; const int ndims_sp = this->desc()->src_desc.ndims - 2; return (utils::pick(ndims_sp - 1, ncw, nchw, ncdhw)); } memory_format_t wei_format() const { using namespace memory_format; const int ndims_sp = this->desc()->src_desc.ndims - 2; return (this->with_groups() ? utils::pick(ndims_sp - 1, goiw, goihw, goidhw) : utils::pick(ndims_sp - 1, oiw, oihw, oidhw)); } virtual status_t set_default_params() override { using namespace memory_format; if (this->src_pd_.desc()->format == any) CHECK(this->src_pd_.set_format(src_format())); if (this->diff_dst_pd_.desc()->format == any) CHECK(this->diff_dst_pd_.set_format(src_format())); if (this->diff_weights_pd_.desc()->format == any) CHECK(this->diff_weights_pd_.set_format(wei_format())); if (this->diff_bias_pd_.desc()->format == any) CHECK(this->diff_bias_pd_.set_format(x)); if (this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_direct)); return status::success; } }; gemm_convolution_bwd_weights_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : cpu_primitive_t(apd, inputs, outputs, true) {} ~gemm_convolution_bwd_weights_t() {} typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { switch (pd()->desc()->prop_kind) { case prop_kind::backward_weights: execute_backward_weights(); break; default: assert(!"invalid prop_kind"); } e->set_state(event_t::ready); } private: void execute_backward_weights() const; const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } }; } } } #endif