/******************************************************************************* * Copyright 2017-2018 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_AVX512_COMMON_CONVOLUTION_WINOGRAD_HPP #define CPU_JIT_AVX512_COMMON_CONVOLUTION_WINOGRAD_HPP #include "c_types_map.hpp" #include "memory_tracking.hpp" #include "cpu_convolution_pd.hpp" #include "cpu_engine.hpp" #include "mkldnn_thread.hpp" #include "jit_avx512_common_conv_winograd_kernel_f32.hpp" namespace mkldnn { namespace impl { namespace cpu { namespace winograd_avx512_common { inline void init_scratchpad(memory_tracking::registrar_t &scratchpad, const jit_conv_winograd_conf_t &jcp) { using namespace memory_tracking::names; size_t U_sz = (size_t)alpha * alpha * jcp.ic * jcp.oc; size_t V_sz = (size_t)alpha * alpha * jcp.mb * jcp.ic * (jcp.itiles * jcp.jtiles + jcp.tile_4fma_padding); size_t M_sz = (size_t)alpha * alpha * jcp.mb * jcp.oc * (jcp.itiles * jcp.jtiles + jcp.tile_4fma_padding); scratchpad.book(key_wino_U, sizeof(float) * U_sz, PAGE_2M); scratchpad.book(key_wino_V, sizeof(float) * V_sz, PAGE_2M); scratchpad.book(key_wino_M, sizeof(float) * M_sz, PAGE_2M); if (jcp.sched_policy == WSCHED_WEI_S_D_G_W) { const int nthr = mkldnn_get_max_threads(); size_t tr_src_sz = jcp.ver != ver_4fma ? 0 : (size_t)nthr * alpha * alpha * jcp.tile_4fma * jcp.ic_simd_block; scratchpad.book(key_conv_tr_src, sizeof(float) * tr_src_sz, PAGE_2M); size_t br_sz = jcp.with_bias ? nthr * jcp.oc : 0; scratchpad.book(key_conv_bia_reduction, sizeof(float) * br_sz, PAGE_2M); size_t padded_bias_sz = jcp.with_bias && jcp.oc_without_padding != jcp.oc ? jcp.oc : 0; scratchpad.book(key_conv_padded_bias, sizeof(float) * padded_bias_sz); } } } template struct _jit_avx512_common_convolution_winograd_t { _jit_avx512_common_convolution_winograd_t( const jit_conv_winograd_conf_t &jcp, const primitive_attr_t *attr) : kernel_(nullptr), attr_(attr) { kernel_ = new _jit_avx512_common_conv_winograd_data_kernel_f32(jcp); } ~_jit_avx512_common_convolution_winograd_t() { delete kernel_; } protected: void _execute_data_W_S_G_D(float *inp_ptr, float *out_ptr, float *wei_ptr, float *bias_ptr, const memory_tracking::grantor_t &scratchpad) const; _jit_avx512_common_conv_winograd_data_kernel_f32 *kernel_; const primitive_attr_t *attr_; }; struct jit_avx512_common_convolution_winograd_fwd_t : _jit_avx512_common_convolution_winograd_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( JIT_IMPL_NAME_HELPER("jit_wino:", avx512_common, ""), jit_avx512_common_convolution_winograd_fwd_t); virtual status_t init() override { using namespace prop_kind; 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_winograd) && !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) && mkldnn_thr_syncable(); if (!ok) return status::unimplemented; status_t status = jit_avx512_common_conv_winograd_fwd_kernel_f32::init_conf( jcp_, *this->desc(), *this->src_pd_.desc(), *this->weights_pd_.desc(), *this->dst_pd_.desc(), *this->attr()); if (status != status::success) return status; auto scratchpad = this->scratchpad_registry().registrar(); winograd_avx512_common::init_scratchpad(scratchpad, jcp_); if (status == status::success && this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_winograd)); return status; } jit_conv_winograd_conf_t jcp_; protected: virtual status_t set_default_params() override { using namespace memory_format; if (this->src_pd_.desc()->format == any) CHECK(this->src_pd_.set_format(nChw16c)); if (this->dst_pd_.desc()->format == any) CHECK(this->dst_pd_.set_format(nChw16c)); if (this->weights_pd_.desc()->format == any) CHECK(this->weights_pd_.set_format( this->with_groups() ? gOIhw16i16o : OIhw16i16o)); if (this->bias_pd_.desc()->format == any) CHECK(this->bias_pd_.set_format(x)); return status::success; } }; jit_avx512_common_convolution_winograd_fwd_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : _jit_avx512_common_convolution_winograd_t(apd->jcp_, apd->attr()) , cpu_primitive_t(apd, inputs, outputs, true) {} ~jit_avx512_common_convolution_winograd_fwd_t(){}; typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { float *src = (float *)this->input_memory(0); float *dst = (float *)this->memory(); float *weights = (float *)this->input_memory(1); float *bias = (float *)this->input_memory(2); this->_execute_data_W_S_G_D(src, dst, weights, bias, this->scratchpad()); e->set_state(event_t::ready); } private: const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } }; struct jit_avx512_common_convolution_winograd_bwd_data_t : _jit_avx512_common_convolution_winograd_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( JIT_IMPL_NAME_HELPER("jit_wino:", avx512_common, ""), jit_avx512_common_convolution_winograd_bwd_data_t); virtual status_t init() override { using namespace prop_kind; assert(this->engine()->kind() == engine_kind::cpu); bool ok = true && this->set_default_params() == status::success && utils::one_of(this->desc()->prop_kind, backward_data) && utils::one_of(this->desc()->alg_kind, alg_kind::convolution_auto, alg_kind::convolution_winograd) && !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) && mkldnn_thr_syncable(); if (!ok) return status::unimplemented; status_t status = jit_avx512_common_conv_winograd_bwd_data_kernel_f32::init_conf( jcp_, *this->desc(), *this->diff_src_pd_.desc(), *this->weights_pd_.desc(), *this->diff_dst_pd_.desc()); if (status != status::success) return status; auto scratchpad = this->scratchpad_registry().registrar(); winograd_avx512_common::init_scratchpad(scratchpad, jcp_); if (status == status::success && this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_winograd)); return status; } jit_conv_winograd_conf_t jcp_; protected: 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(nChw16c)); if (this->diff_dst_pd_.desc()->format == any) CHECK(this->diff_dst_pd_.set_format(nChw16c)); if (this->weights_pd_.desc()->format == any) CHECK(this->weights_pd_.set_format( this->with_groups() ? gOIhw16i16o : OIhw16i16o)); return status::success; } }; jit_avx512_common_convolution_winograd_bwd_data_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : _jit_avx512_common_convolution_winograd_t(apd->jcp_, apd->attr()) , cpu_primitive_t(apd, inputs, outputs, true) {} ~jit_avx512_common_convolution_winograd_bwd_data_t(){}; typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { assert(pd()->desc()->prop_kind == prop_kind::backward_data && "invalid prop_kind"); float *diff_dst = (float *)this->input_memory(0); float *diff_src = (float *)this->memory(); float *weights = (float *)this->input_memory(1); this->_execute_data_W_S_G_D(diff_dst, diff_src, weights, nullptr, this->scratchpad()); e->set_state(event_t::ready); } private: const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } }; struct jit_avx512_common_convolution_winograd_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( JIT_IMPL_NAME_HELPER("jit_wino:", avx512_common, ""), jit_avx512_common_convolution_winograd_bwd_weights_t); virtual status_t init() override { using namespace prop_kind; assert(this->engine()->kind() == engine_kind::cpu); bool ok = true && this->set_default_params() == status::success && utils::one_of(this->desc()->prop_kind, backward_weights) && utils::one_of(this->desc()->alg_kind, alg_kind::convolution_auto, alg_kind::convolution_winograd) && !this->has_zero_dim_memory() && utils::everyone_is(data_type::f32, this->desc()->src_desc.data_type, this->desc()->diff_dst_desc.data_type, this->desc()->diff_weights_desc.data_type) && mkldnn_thr_syncable(); if (!ok) return status::unimplemented; status_t status = jit_avx512_common_conv_winograd_bwd_weights_kernel_f32:: init_conf(jcp_, *this->desc(), *this->src_pd_.desc(), *this->diff_dst_pd_.desc(), *this->diff_weights_pd_.desc()); if (status != status::success) return status; auto scratchpad = this->scratchpad_registry().registrar(); winograd_avx512_common::init_scratchpad(scratchpad, jcp_); if (status == status::success && this->desc()->alg_kind == alg_kind::convolution_auto) CHECK(this->set_alg_kind(alg_kind::convolution_winograd)); return status; } jit_conv_winograd_conf_t jcp_; protected: virtual status_t set_default_params() override { using namespace memory_format; if (this->src_pd_.desc()->format == any) CHECK(this->src_pd_.set_format(nChw16c)); if (this->diff_dst_pd_.desc()->format == any) CHECK(this->diff_dst_pd_.set_format(nChw16c)); if (this->diff_weights_pd_.desc()->format == any) CHECK(this->diff_weights_pd_.set_format( this->with_groups() ? gOIhw16i16o : OIhw16i16o)); if (diff_bias_pd_.desc()->format == any) CHECK(diff_bias_pd_.set_format(x)); return status::success; } }; jit_avx512_common_convolution_winograd_bwd_weights_t(const pd_t *apd, const input_vector &inputs, const output_vector &outputs) : cpu_primitive_t(apd, inputs, outputs, true), kernel_(nullptr) { kernel_ = new jit_avx512_common_conv_winograd_bwd_weights_kernel_f32( pd()->jcp_); } ~jit_avx512_common_convolution_winograd_bwd_weights_t() { delete kernel_; } typedef typename prec_traits::type data_t; virtual void execute(event_t *e) const { assert(pd()->desc()->prop_kind == prop_kind::backward_weights && "invalid prop_kind"); _execute_backward_weights_S_D_G_W(scratchpad()); e->set_state(event_t::ready); } private: void _execute_backward_weights_S_D_G_W( const memory_tracking::grantor_t &scratchpad) const; void _maybe_execute_diff_bias_copy( const memory_tracking::grantor_t &scratchpad) const; const pd_t *pd() const { return (const pd_t *)primitive_t::pd(); } jit_avx512_common_conv_winograd_bwd_weights_kernel_f32 *kernel_; }; void trans_W_4x4_3x3(float Fw_[6][6][16][16], float F[3][3][16][16]); void trans_O_4x4_3x3(float Mw[6][6][16], float O[4][4][16]); void trans_W_3x3_4x4(float Fw[6][6][16], float F[4][6][16]); void trans_O_3x3_4x4(float Mw[6][6][16][16], float M[3][3][16][16]); void trans_I_4x4_3x3(float Iw[6][6][16], float I[6][6][16]); void trans_W_3x3_4x4_wu(float Fw[6][6][16], float F[4][6][16]); void trans_O_3x3_4x4_wu(float Mw[6][6][16][16], float M[3][3][16][16]); } } } #endif // vim: et ts=4 sw=4 cindent cino^=l0,\:0,N-s