blob: aeb285f67e1a8244c074751b3023b5e017fd1c2e [file] [log] [blame]
// Copyright 2020 Google LLC
//
// This source code is licensed under the BSD-style license found in the
// LICENSE file in the root directory of this source tree.
#include <xnnpack.h>
#include <array>
#include <algorithm>
#include <functional>
#include <iostream>
#include <limits>
#include <random>
#include "models/models.h"
namespace models {
ExecutionPlan FP32SparseMobileNetV1(float sparsity, pthreadpool_t threadpool) {
alignas(16) static std::array<float, 150528> v0;
alignas(16) static std::array<float, 401408> v1;
alignas(16) static std::array<float, 401408> v2;
alignas(16) static std::array<float, 802816> v3;
alignas(16) static std::array<float, 200704> v4;
alignas(16) static std::array<float, 401408> v5;
alignas(16) static std::array<float, 401408> v6;
alignas(16) static std::array<float, 401408> v7;
alignas(16) static std::array<float, 100352> v8;
alignas(16) static std::array<float, 200704> v9;
alignas(16) static std::array<float, 200704> v10;
alignas(16) static std::array<float, 200704> v11;
alignas(16) static std::array<float, 50176> v12;
alignas(16) static std::array<float, 100352> v13;
alignas(16) static std::array<float, 100352> v14;
alignas(16) static std::array<float, 100352> v15;
alignas(16) static std::array<float, 100352> v16;
alignas(16) static std::array<float, 100352> v17;
alignas(16) static std::array<float, 100352> v18;
alignas(16) static std::array<float, 100352> v19;
alignas(16) static std::array<float, 100352> v20;
alignas(16) static std::array<float, 100352> v21;
alignas(16) static std::array<float, 100352> v22;
alignas(16) static std::array<float, 100352> v23;
alignas(16) static std::array<float, 25088> v24;
alignas(16) static std::array<float, 50176> v25;
alignas(16) static std::array<float, 50176> v26;
alignas(16) static std::array<float, 50176> v27;
alignas(16) static std::array<float, 1024> v28;
alignas(16) static std::array<float, 1001> v29;
alignas(16) static std::array<float, 864> w30;
alignas(16) static std::array<float, 32> w31;
alignas(16) static std::array<float, 288> w32;
alignas(16) static std::array<float, 32> w33;
alignas(16) static std::array<float, 2048> w34;
alignas(16) static std::array<float, 64> w35;
alignas(16) static std::array<float, 576> w36;
alignas(16) static std::array<float, 64> w37;
alignas(16) static std::array<float, 8192> w38;
alignas(16) static std::array<float, 128> w39;
alignas(16) static std::array<float, 1152> w40;
alignas(16) static std::array<float, 128> w41;
alignas(16) static std::array<float, 16384> w42;
alignas(16) static std::array<float, 128> w43;
alignas(16) static std::array<float, 1152> w44;
alignas(16) static std::array<float, 128> w45;
alignas(16) static std::array<float, 32768> w46;
alignas(16) static std::array<float, 256> w47;
alignas(16) static std::array<float, 2304> w48;
alignas(16) static std::array<float, 256> w49;
alignas(16) static std::array<float, 65536> w50;
alignas(16) static std::array<float, 256> w51;
alignas(16) static std::array<float, 2304> w52;
alignas(16) static std::array<float, 256> w53;
alignas(16) static std::array<float, 131072> w54;
alignas(16) static std::array<float, 512> w55;
alignas(16) static std::array<float, 4608> w56;
alignas(16) static std::array<float, 512> w57;
alignas(16) static std::array<float, 262144> w58;
alignas(16) static std::array<float, 512> w59;
alignas(16) static std::array<float, 4608> w60;
alignas(16) static std::array<float, 512> w61;
alignas(16) static std::array<float, 262144> w62;
alignas(16) static std::array<float, 512> w63;
alignas(16) static std::array<float, 4608> w64;
alignas(16) static std::array<float, 512> w65;
alignas(16) static std::array<float, 262144> w66;
alignas(16) static std::array<float, 512> w67;
alignas(16) static std::array<float, 4608> w68;
alignas(16) static std::array<float, 512> w69;
alignas(16) static std::array<float, 262144> w70;
alignas(16) static std::array<float, 512> w71;
alignas(16) static std::array<float, 4608> w72;
alignas(16) static std::array<float, 512> w73;
alignas(16) static std::array<float, 262144> w74;
alignas(16) static std::array<float, 512> w75;
alignas(16) static std::array<float, 4608> w76;
alignas(16) static std::array<float, 512> w77;
alignas(16) static std::array<float, 524288> w78;
alignas(16) static std::array<float, 1024> w79;
alignas(16) static std::array<float, 9216> w80;
alignas(16) static std::array<float, 1024> w81;
alignas(16) static std::array<float, 1048576> w82;
alignas(16) static std::array<float, 1024> w83;
alignas(16) static std::array<float, 1025024> w84;
alignas(16) static std::array<float, 1001> w85;
std::random_device random_device;
auto rng = std::mt19937(random_device());
auto f32rng = std::bind(std::uniform_real_distribution<float>(-1.0f, +1.0f), std::ref(rng));
std::generate(v0.begin(), v0.end(), std::ref(f32rng));
std::generate(v1.begin(), v1.end(), std::ref(f32rng));
std::generate(v2.begin(), v2.end(), std::ref(f32rng));
std::generate(v3.begin(), v3.end(), std::ref(f32rng));
std::generate(v4.begin(), v4.end(), std::ref(f32rng));
std::generate(v5.begin(), v5.end(), std::ref(f32rng));
std::generate(v6.begin(), v6.end(), std::ref(f32rng));
std::generate(v7.begin(), v7.end(), std::ref(f32rng));
std::generate(v8.begin(), v8.end(), std::ref(f32rng));
std::generate(v9.begin(), v9.end(), std::ref(f32rng));
std::generate(v10.begin(), v10.end(), std::ref(f32rng));
std::generate(v11.begin(), v11.end(), std::ref(f32rng));
std::generate(v12.begin(), v12.end(), std::ref(f32rng));
std::generate(v13.begin(), v13.end(), std::ref(f32rng));
std::generate(v14.begin(), v14.end(), std::ref(f32rng));
std::generate(v15.begin(), v15.end(), std::ref(f32rng));
std::generate(v16.begin(), v16.end(), std::ref(f32rng));
std::generate(v17.begin(), v17.end(), std::ref(f32rng));
std::generate(v18.begin(), v18.end(), std::ref(f32rng));
std::generate(v19.begin(), v19.end(), std::ref(f32rng));
std::generate(v20.begin(), v20.end(), std::ref(f32rng));
std::generate(v21.begin(), v21.end(), std::ref(f32rng));
std::generate(v22.begin(), v22.end(), std::ref(f32rng));
std::generate(v23.begin(), v23.end(), std::ref(f32rng));
std::generate(v24.begin(), v24.end(), std::ref(f32rng));
std::generate(v25.begin(), v25.end(), std::ref(f32rng));
std::generate(v26.begin(), v26.end(), std::ref(f32rng));
std::generate(v27.begin(), v27.end(), std::ref(f32rng));
std::generate(v28.begin(), v28.end(), std::ref(f32rng));
std::generate(v29.begin(), v29.end(), std::ref(f32rng));
std::generate(w30.begin(), w30.end(), std::ref(f32rng));
std::generate(w31.begin(), w31.end(), std::ref(f32rng));
std::generate(w32.begin(), w32.end(), std::ref(f32rng));
std::generate(w33.begin(), w33.end(), std::ref(f32rng));
std::fill(w34.begin(), w34.end(), 0.0f);
std::generate(w34.begin(), w34.end() - size_t(sparsity * w34.size()), std::ref(f32rng));
std::shuffle(w34.begin(), w34.end(), rng);
std::generate(w35.begin(), w35.end(), std::ref(f32rng));
std::generate(w36.begin(), w36.end(), std::ref(f32rng));
std::generate(w37.begin(), w37.end(), std::ref(f32rng));
std::fill(w38.begin(), w38.end(), 0.0f);
std::generate(w38.begin(), w38.end() - size_t(sparsity * w38.size()), std::ref(f32rng));
std::shuffle(w38.begin(), w38.end(), rng);
std::generate(w39.begin(), w39.end(), std::ref(f32rng));
std::generate(w40.begin(), w40.end(), std::ref(f32rng));
std::generate(w41.begin(), w41.end(), std::ref(f32rng));
std::fill(w42.begin(), w42.end(), 0.0f);
std::generate(w42.begin(), w42.end() - size_t(sparsity * w42.size()), std::ref(f32rng));
std::shuffle(w42.begin(), w42.end(), rng);
std::generate(w43.begin(), w43.end(), std::ref(f32rng));
std::generate(w44.begin(), w44.end(), std::ref(f32rng));
std::generate(w45.begin(), w45.end(), std::ref(f32rng));
std::fill(w46.begin(), w46.end(), 0.0f);
std::generate(w46.begin(), w46.end() - size_t(sparsity * w46.size()), std::ref(f32rng));
std::shuffle(w46.begin(), w46.end(), rng);
std::generate(w47.begin(), w47.end(), std::ref(f32rng));
std::generate(w48.begin(), w48.end(), std::ref(f32rng));
std::generate(w49.begin(), w49.end(), std::ref(f32rng));
std::fill(w50.begin(), w50.end(), 0.0f);
std::generate(w50.begin(), w50.end() - size_t(sparsity * w50.size()), std::ref(f32rng));
std::shuffle(w50.begin(), w50.end(), rng);
std::generate(w51.begin(), w51.end(), std::ref(f32rng));
std::generate(w52.begin(), w52.end(), std::ref(f32rng));
std::generate(w53.begin(), w53.end(), std::ref(f32rng));
std::fill(w54.begin(), w54.end(), 0.0f);
std::generate(w54.begin(), w54.end() - size_t(sparsity * w54.size()), std::ref(f32rng));
std::shuffle(w54.begin(), w54.end(), rng);
std::generate(w55.begin(), w55.end(), std::ref(f32rng));
std::generate(w56.begin(), w56.end(), std::ref(f32rng));
std::generate(w57.begin(), w57.end(), std::ref(f32rng));
std::fill(w58.begin(), w58.end(), 0.0f);
std::generate(w58.begin(), w58.end() - size_t(sparsity * w58.size()), std::ref(f32rng));
std::shuffle(w58.begin(), w58.end(), rng);
std::generate(w59.begin(), w59.end(), std::ref(f32rng));
std::generate(w60.begin(), w60.end(), std::ref(f32rng));
std::generate(w61.begin(), w61.end(), std::ref(f32rng));
std::fill(w62.begin(), w62.end(), 0.0f);
std::generate(w62.begin(), w62.end() - size_t(sparsity * w62.size()), std::ref(f32rng));
std::shuffle(w62.begin(), w62.end(), rng);
std::generate(w63.begin(), w63.end(), std::ref(f32rng));
std::generate(w64.begin(), w64.end(), std::ref(f32rng));
std::generate(w65.begin(), w65.end(), std::ref(f32rng));
std::fill(w66.begin(), w66.end(), 0.0f);
std::generate(w66.begin(), w66.end() - size_t(sparsity * w66.size()), std::ref(f32rng));
std::shuffle(w66.begin(), w66.end(), rng);
std::generate(w67.begin(), w67.end(), std::ref(f32rng));
std::generate(w68.begin(), w68.end(), std::ref(f32rng));
std::generate(w69.begin(), w69.end(), std::ref(f32rng));
std::fill(w70.begin(), w70.end(), 0.0f);
std::generate(w70.begin(), w70.end() - size_t(sparsity * w70.size()), std::ref(f32rng));
std::shuffle(w70.begin(), w70.end(), rng);
std::generate(w71.begin(), w71.end(), std::ref(f32rng));
std::generate(w72.begin(), w72.end(), std::ref(f32rng));
std::generate(w73.begin(), w73.end(), std::ref(f32rng));
std::fill(w74.begin(), w74.end(), 0.0f);
std::generate(w74.begin(), w74.end() - size_t(sparsity * w74.size()), std::ref(f32rng));
std::shuffle(w74.begin(), w74.end(), rng);
std::generate(w75.begin(), w75.end(), std::ref(f32rng));
std::generate(w76.begin(), w76.end(), std::ref(f32rng));
std::generate(w77.begin(), w77.end(), std::ref(f32rng));
std::fill(w78.begin(), w78.end(), 0.0f);
std::generate(w78.begin(), w78.end() - size_t(sparsity * w78.size()), std::ref(f32rng));
std::shuffle(w78.begin(), w78.end(), rng);
std::generate(w79.begin(), w79.end(), std::ref(f32rng));
std::generate(w80.begin(), w80.end(), std::ref(f32rng));
std::generate(w81.begin(), w81.end(), std::ref(f32rng));
std::fill(w82.begin(), w82.end(), 0.0f);
std::generate(w82.begin(), w82.end() - size_t(sparsity * w82.size()), std::ref(f32rng));
std::shuffle(w82.begin(), w82.end(), rng);
std::generate(w83.begin(), w83.end(), std::ref(f32rng));
std::generate(w84.begin(), w84.end(), std::ref(f32rng));
std::generate(w85.begin(), w85.end(), std::ref(f32rng));
ExecutionPlan operators;
xnn_status status;
xnn_operator_t op0 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
2 /* subsampling height */, 2 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
3 /* input channels per group */,
32 /* output_channels_per_group */,
3 /* input pixel stride */,
32 /* output pixel stride */,
w30.data(), w31.data(),
0.0f /* output min */, 6.0f /* output max */,
XNN_FLAG_INPUT_NHWC /* flags */,
&op0);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #0" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op0, xnn_delete_operator);
xnn_operator_t op1 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
32 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
32 /* input pixel stride */,
32 /* output pixel stride */,
w32.data(), w33.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op1);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #1" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op1, xnn_delete_operator);
xnn_operator_t op2 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
32 /* input channels per group */,
64 /* output_channels_per_group */,
32 /* input pixel stride */,
64 /* output pixel stride */,
w34.data(), w35.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op2);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #2" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op2, xnn_delete_operator);
xnn_operator_t op3 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
2 /* subsampling height */, 2 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
64 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
64 /* input pixel stride */,
64 /* output pixel stride */,
w36.data(), w37.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op3);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #3" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op3, xnn_delete_operator);
xnn_operator_t op4 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
64 /* input channels per group */,
128 /* output_channels_per_group */,
64 /* input pixel stride */,
128 /* output pixel stride */,
w38.data(), w39.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op4);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #4" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op4, xnn_delete_operator);
xnn_operator_t op5 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
128 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
128 /* input pixel stride */,
128 /* output pixel stride */,
w40.data(), w41.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op5);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #5" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op5, xnn_delete_operator);
xnn_operator_t op6 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
128 /* input channels per group */,
128 /* output_channels_per_group */,
128 /* input pixel stride */,
128 /* output pixel stride */,
w42.data(), w43.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op6);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #6" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op6, xnn_delete_operator);
xnn_operator_t op7 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
2 /* subsampling height */, 2 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
128 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
128 /* input pixel stride */,
128 /* output pixel stride */,
w44.data(), w45.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op7);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #7" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op7, xnn_delete_operator);
xnn_operator_t op8 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
128 /* input channels per group */,
256 /* output_channels_per_group */,
128 /* input pixel stride */,
256 /* output pixel stride */,
w46.data(), w47.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op8);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #8" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op8, xnn_delete_operator);
xnn_operator_t op9 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
256 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
256 /* input pixel stride */,
256 /* output pixel stride */,
w48.data(), w49.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op9);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #9" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op9, xnn_delete_operator);
xnn_operator_t op10 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
256 /* input channels per group */,
256 /* output_channels_per_group */,
256 /* input pixel stride */,
256 /* output pixel stride */,
w50.data(), w51.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op10);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #10" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op10, xnn_delete_operator);
xnn_operator_t op11 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
2 /* subsampling height */, 2 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
256 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
256 /* input pixel stride */,
256 /* output pixel stride */,
w52.data(), w53.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op11);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #11" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op11, xnn_delete_operator);
xnn_operator_t op12 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
256 /* input channels per group */,
512 /* output_channels_per_group */,
256 /* input pixel stride */,
512 /* output pixel stride */,
w54.data(), w55.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op12);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #12" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op12, xnn_delete_operator);
xnn_operator_t op13 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w56.data(), w57.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op13);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #13" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op13, xnn_delete_operator);
xnn_operator_t op14 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
512 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w58.data(), w59.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op14);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #14" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op14, xnn_delete_operator);
xnn_operator_t op15 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w60.data(), w61.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op15);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #15" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op15, xnn_delete_operator);
xnn_operator_t op16 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
512 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w62.data(), w63.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op16);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #16" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op16, xnn_delete_operator);
xnn_operator_t op17 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w64.data(), w65.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op17);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #17" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op17, xnn_delete_operator);
xnn_operator_t op18 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
512 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w66.data(), w67.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op18);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #18" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op18, xnn_delete_operator);
xnn_operator_t op19 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w68.data(), w69.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op19);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #19" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op19, xnn_delete_operator);
xnn_operator_t op20 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
512 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w70.data(), w71.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op20);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #20" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op20, xnn_delete_operator);
xnn_operator_t op21 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w72.data(), w73.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op21);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #21" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op21, xnn_delete_operator);
xnn_operator_t op22 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
512 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w74.data(), w75.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op22);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #22" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op22, xnn_delete_operator);
xnn_operator_t op23 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
2 /* subsampling height */, 2 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
512 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
512 /* input pixel stride */,
512 /* output pixel stride */,
w76.data(), w77.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op23);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #23" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op23, xnn_delete_operator);
xnn_operator_t op24 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
512 /* input channels per group */,
1024 /* output_channels_per_group */,
512 /* input pixel stride */,
1024 /* output pixel stride */,
w78.data(), w79.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op24);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #24" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op24, xnn_delete_operator);
xnn_operator_t op25 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
1 /* top padding */, 1 /* right padding */,
1 /* bottom padding */, 1 /* left padding */,
3 /* kernel height */, 3 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1024 /* groups */,
1 /* input channels per group */,
1 /* output_channels_per_group */,
1024 /* input pixel stride */,
1024 /* output pixel stride */,
w80.data(), w81.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op25);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #25" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op25, xnn_delete_operator);
xnn_operator_t op26 = nullptr;
status = xnn_create_convolution2d_nchw_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
1024 /* input channels per group */,
1024 /* output_channels_per_group */,
1024 /* input pixel stride */,
1024 /* output pixel stride */,
w82.data(), w83.data(),
0.0f /* output min */, 6.0f /* output max */,
0 /* flags */,
&op26);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #26" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op26, xnn_delete_operator);
xnn_operator_t op27 = nullptr;
status = xnn_create_global_average_pooling_ncw_f32(
1024 /* channels */,
-std::numeric_limits<float>::infinity(), std::numeric_limits<float>::infinity(),
0 /* flags */,
&op27);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #27" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op27, xnn_delete_operator);
xnn_operator_t op28 = nullptr;
status = xnn_create_convolution2d_nhwc_f32(
0 /* top padding */, 0 /* right padding */,
0 /* bottom padding */, 0 /* left padding */,
1 /* kernel height */, 1 /* kernel width */,
1 /* subsampling height */, 1 /* subsampling width */,
1 /* dilation_height */, 1 /* dilation_width */,
1 /* groups */,
1024 /* input channels per group */,
1001 /* output_channels_per_group */,
1024 /* input pixel stride */,
1001 /* output pixel stride */,
w84.data(), w85.data(),
-std::numeric_limits<float>::infinity() /* output min */, std::numeric_limits<float>::infinity() /* output max */,
0 /* flags */,
&op28);
if (status != xnn_status_success) {
std::cerr << "failed to create operation #28" << std::endl;
return ExecutionPlan();
}
operators.emplace_back(op28, xnn_delete_operator);
status = xnn_setup_convolution2d_nchw_f32(
op0,
1 /* batch size */, 224 /* input height */, 224 /* input width */,
v0.data() /* input */, v1.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #0" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op1,
1 /* batch size */, 112 /* input height */, 112 /* input width */,
v1.data() /* input */, v2.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #1" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op2,
1 /* batch size */, 112 /* input height */, 112 /* input width */,
v2.data() /* input */, v3.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #2" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op3,
1 /* batch size */, 112 /* input height */, 112 /* input width */,
v3.data() /* input */, v4.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #3" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op4,
1 /* batch size */, 56 /* input height */, 56 /* input width */,
v4.data() /* input */, v5.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #4" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op5,
1 /* batch size */, 56 /* input height */, 56 /* input width */,
v5.data() /* input */, v6.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #5" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op6,
1 /* batch size */, 56 /* input height */, 56 /* input width */,
v6.data() /* input */, v7.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #6" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op7,
1 /* batch size */, 56 /* input height */, 56 /* input width */,
v7.data() /* input */, v8.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #7" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op8,
1 /* batch size */, 28 /* input height */, 28 /* input width */,
v8.data() /* input */, v9.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #8" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op9,
1 /* batch size */, 28 /* input height */, 28 /* input width */,
v9.data() /* input */, v10.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #9" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op10,
1 /* batch size */, 28 /* input height */, 28 /* input width */,
v10.data() /* input */, v11.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #10" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op11,
1 /* batch size */, 28 /* input height */, 28 /* input width */,
v11.data() /* input */, v12.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #11" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op12,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v12.data() /* input */, v13.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #12" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op13,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v13.data() /* input */, v14.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #13" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op14,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v14.data() /* input */, v15.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #14" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op15,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v15.data() /* input */, v16.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #15" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op16,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v16.data() /* input */, v17.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #16" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op17,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v17.data() /* input */, v18.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #17" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op18,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v18.data() /* input */, v19.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #18" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op19,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v19.data() /* input */, v20.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #19" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op20,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v20.data() /* input */, v21.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #20" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op21,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v21.data() /* input */, v22.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #21" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op22,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v22.data() /* input */, v23.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #22" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op23,
1 /* batch size */, 14 /* input height */, 14 /* input width */,
v23.data() /* input */, v24.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #23" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op24,
1 /* batch size */, 7 /* input height */, 7 /* input width */,
v24.data() /* input */, v25.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #24" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op25,
1 /* batch size */, 7 /* input height */, 7 /* input width */,
v25.data() /* input */, v26.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #25" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nchw_f32(
op26,
1 /* batch size */, 7 /* input height */, 7 /* input width */,
v26.data() /* input */, v27.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #26" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_global_average_pooling_ncw_f32(
op27,
1 /* batch size */, 49 /* width */,
v27.data() /* input */, v28.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #27" << std::endl;
return ExecutionPlan();
}
status = xnn_setup_convolution2d_nhwc_f32(
op28,
1 /* batch size */, 1 /* input height */, 1 /* input width */,
v28.data() /* input */, v29.data() /* output */,
threadpool /* threadpool */);
if (status != xnn_status_success) {
std::cerr << "failed to setup operation #28" << std::endl;
return ExecutionPlan();
}
#pragma clang diagnostic push
#pragma clang diagnostic ignored "-Wpessimizing-move"
return operators;
#pragma clang diagnostic pop
}
} // namespace models