// yala is pleased to support the open source community by making ncnn available. // // // Copyright (C) 2022 yala ;. All rights reserved. // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except // in compliance with the License. You may obtain a copy of the License at // // https://opensource.org/licenses/BSD-3-Clause // // 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 "convolution1d_loongarch.h" #if __loongarch_sx #include #endif // __loongarch_sx #include "loongarch_activation.h" #include "loongarch_usability.h" namespace ncnn { Convolution1D_loongarch::Convolution1D_loongarch() { #if __loongarch_sx support_packing = true; #endif // __loongarch_sx } int Convolution1D_loongarch::create_pipeline(const Option& opt) { if (dynamic_weight) return 0; const int num_input = weight_data_size / kernel_w / num_output; int elempack = 1; int out_elempack = 1; #if __loongarch_sx if (opt.use_packing_layout) { elempack = num_input % 4 == 0 ? 4 : 1; out_elempack = num_output % 4 == 0 ? 4 : 1; } #endif // src = kw-inch-outch // dst = pb-pa-kw-inch/pa-outch/pb { Mat weight_data_r2 = weight_data.reshape(kernel_w, num_input, num_output); weight_data_packed.create(kernel_w, num_input / elempack, num_output / out_elempack, (size_t)4u * elempack * out_elempack, elempack * out_elempack); for (int q = 0; q + (out_elempack - 1) < num_output; q += out_elempack) { float* g00 = weight_data_packed.channel(q / out_elempack); for (int p = 0; p + (elempack - 1) < num_input; p += elempack) { for (int k = 0; k < kernel_w; k++) { for (int i = 0; i < elempack; i++) { for (int j = 0; j < out_elempack; j++) { const float* k00 = weight_data_r2.channel(q + j).row(p + i); g00[0] = k00[k]; g00++; } } } } } } return 0; } int Convolution1D_loongarch::destroy_pipeline(const Option& /*opt*/) { return 0; } int Convolution1D_loongarch::forward(const Mat& bottom_blob, Mat& top_blob, const Option& opt) const { int w = bottom_blob.w; int h = bottom_blob.h; size_t elemsize = bottom_blob.elemsize; int elempack = bottom_blob.elempack; const int kernel_extent_w = dilation_w * (kernel_w - 1) + 1; Mat bottom_blob_bordered; make_padding(bottom_blob, bottom_blob_bordered, opt); if (bottom_blob_bordered.empty()) return -100; w = bottom_blob_bordered.w; h = bottom_blob_bordered.h; int out_elempack = 1; #if __loongarch_sx if (opt.use_packing_layout) { out_elempack = num_output % 4 == 0 ? 4 : 1; } #endif size_t out_elemsize = elemsize / elempack * out_elempack; const int outw = (w - kernel_extent_w) / stride_w + 1; const int outh = num_output / out_elempack; top_blob.create(outw, outh, out_elemsize, out_elempack, opt.blob_allocator); if (top_blob.empty()) return -100; #if __loongarch_sx if (elempack == 4 && out_elempack == 4) { { #pragma omp parallel for num_threads(opt.num_threads) for (int p = 0; p < outh; p++) { float* outptr = top_blob.row(p); for (int j = 0; j < outw; j++) { __m128 _sum = (__m128)__lsx_vreplgr2vr_w(0); if (bias_term) { _sum = (__m128)__lsx_vld((const float*)bias_data + p * 4, 0); } const float* kptr = weight_data_packed.channel(p); for (int q = 0; q < h; q++) { const float* sptr = bottom_blob_bordered.row(q) + j * stride_w * 4; for (int k = 0; k < kernel_w; k++) { __m128 _val0 = __lsx_vreplfr2vr_s(sptr[0]); __m128 _val1 = __lsx_vreplfr2vr_s(sptr[1]); __m128 _val2 = __lsx_vreplfr2vr_s(sptr[2]); __m128 _val3 = __lsx_vreplfr2vr_s(sptr[3]); __m128 _w0 = (__m128)__lsx_vld(kptr, 0); __m128 _w1 = (__m128)__lsx_vld(kptr + 4, 0); __m128 _w2 = (__m128)__lsx_vld(kptr + 8, 0); __m128 _w3 = (__m128)__lsx_vld(kptr + 12, 0); _sum = __lsx_vfmadd_s(_w0, _val0, _sum); _sum = __lsx_vfmadd_s(_w1, _val1, _sum); _sum = __lsx_vfmadd_s(_w2, _val2, _sum); _sum = __lsx_vfmadd_s(_w3, _val3, _sum); sptr += dilation_w * 4; kptr += 16; } } _sum = activation_ps(_sum, activation_type, activation_params); __lsx_vst(_sum, outptr, 0); outptr += 4; } } } } if (elempack == 1 && out_elempack == 4) { { #pragma omp parallel for num_threads(opt.num_threads) for (int p = 0; p < outh; p++) { float* outptr = top_blob.row(p); for (int j = 0; j < outw; j++) { __m128 _sum = (__m128)__lsx_vreplgr2vr_w(0); if (bias_term) { _sum = (__m128)__lsx_vld((const float*)bias_data + p * 4, 0); } const float* kptr = weight_data_packed.channel(p); for (int q = 0; q < h; q++) { const float* sptr = bottom_blob_bordered.row(q) + j * stride_w; for (int k = 0; k < kernel_w; k++) { __m128 _val = __lsx_vreplfr2vr_s(sptr[0]); __m128 _w = (__m128)__lsx_vld(kptr, 0); _sum = __lsx_vfmadd_s(_w, _val, _sum); sptr += dilation_w; kptr += 4; } } _sum = activation_ps(_sum, activation_type, activation_params); __lsx_vst(_sum, outptr, 0); outptr += 4; } } } } if (elempack == 4 && out_elempack == 1) { { #pragma omp parallel for num_threads(opt.num_threads) for (int p = 0; p < outh; p++) { float* outptr = top_blob.row(p); for (int j = 0; j < outw; j++) { float sum = 0.f; if (bias_term) { sum = bias_data[p]; } __m128 _sum = (__m128)__lsx_vreplgr2vr_w(0); const float* kptr = weight_data_packed.channel(p); for (int q = 0; q < h; q++) { const float* sptr = bottom_blob_bordered.row(q) + j * stride_w * 4; for (int k = 0; k < kernel_w; k++) { __m128 _val = (__m128)__lsx_vld(sptr, 0); __m128 _w = (__m128)__lsx_vld(kptr, 0); _sum = __lsx_vfmadd_s(_w, _val, _sum); sptr += dilation_w * 4; kptr += 4; } } sum += __lsx_reduce_fadd_s(_sum); sum = activation_ss(sum, activation_type, activation_params); outptr[j] = sum; } } } } #endif // __loongarch_sx if (elempack == 1 && out_elempack == 1) { { #pragma omp parallel for num_threads(opt.num_threads) for (int p = 0; p < outh; p++) { float* outptr = top_blob.row(p); for (int j = 0; j < outw; j++) { float sum = 0.f; if (bias_term) { sum = bias_data[p]; } const float* kptr = (const float*)weight_data + kernel_w * h * p; for (int q = 0; q < h; q++) { const float* sptr = bottom_blob_bordered.row(q) + j * stride_w; for (int k = 0; k < kernel_w; k++) { float val = sptr[0]; float wt = kptr[0]; sum += val * wt; sptr += dilation_w; kptr += 1; } } sum = activation_ss(sum, activation_type, activation_params); outptr[j] = sum; } } } } return 0; } int Convolution1D_loongarch::forward(const std::vector& bottom_blobs, std::vector& top_blobs, const Option& opt) const { const Mat& bottom_blob = bottom_blobs[0]; const Mat& _weight_data = bottom_blobs[1]; Mat& top_blob = top_blobs[0]; const int _kernel_w = _weight_data.w; const int _num_output = _weight_data.c * _weight_data.elempack; Mat weight_data_flattened; flatten(_weight_data, weight_data_flattened, opt); if (weight_data_flattened.empty()) return -100; // weight_data_flattened as pack1 weight_data_flattened.w *= weight_data_flattened.elempack; weight_data_flattened.elemsize /= weight_data_flattened.elempack; weight_data_flattened.elempack = 1; Mat bias_data_flattened; if (bias_term) { const Mat& _bias_data = bottom_blobs[2]; flatten(_bias_data, bias_data_flattened, opt); if (bias_data_flattened.empty()) return -100; // bias_data_flattened as pack1 bias_data_flattened.w *= bias_data_flattened.elempack; bias_data_flattened.elemsize /= bias_data_flattened.elempack; bias_data_flattened.elempack = 1; } ncnn::Layer* op = ncnn::create_layer(ncnn::LayerType::Convolution1D); ncnn::ParamDict pd; pd.set(0, _num_output); pd.set(1, _kernel_w); pd.set(2, dilation_w); pd.set(3, stride_w); pd.set(4, pad_left); pd.set(15, pad_right); pd.set(18, pad_value); pd.set(5, bias_term); pd.set(6, weight_data_flattened.w); pd.set(9, activation_type); pd.set(10, activation_params); op->load_param(pd); ncnn::Mat weights[2]; weights[0] = weight_data_flattened; weights[1] = bias_data_flattened; op->load_model(ncnn::ModelBinFromMatArray(weights)); op->create_pipeline(opt); op->forward(bottom_blob, top_blob, opt); op->destroy_pipeline(opt); delete op; return 0; } } // namespace ncnn