mirror of
https://github.com/PaddlePaddle/FastDeploy.git
synced 2025-10-06 00:57:33 +08:00
210 lines
7.3 KiB
C++
210 lines
7.3 KiB
C++
// Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#include "adaptive_pool2d.h"
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namespace fastdeploy {
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nvinfer1::PluginFieldCollection AdaptivePool2dPluginCreator::mFC{};
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std::vector<nvinfer1::PluginField>
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AdaptivePool2dPluginCreator::mPluginAttributes;
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pluginStatus_t AdaptivePool2dInference(cudaStream_t stream, int32_t n,
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const void* input, void* output);
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AdaptivePool2d::AdaptivePool2d(std::vector<int32_t> output_size,
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std::string pooling_type) {
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output_size_ = output_size;
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pooling_type_ = pooling_type;
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}
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AdaptivePool2d::AdaptivePool2d(const void* buffer, size_t length) {
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const char *d = reinterpret_cast<const char*>(buffer), *a = d;
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output_size_.resize(4);
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for (int64_t i = 0; i < 4; i++) {
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output_size_[i] = read<int32_t>(d);
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}
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if (read<int32_t>(d) == 0) {
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pooling_type_ = "avg";
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} else {
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pooling_type_ = "max";
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}
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FDASSERT(d == a + length, "deserialize failed.");
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}
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int AdaptivePool2d::getNbOutputs() const noexcept { return 1; }
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nvinfer1::DimsExprs AdaptivePool2d::getOutputDimensions(
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int outputIndex, const nvinfer1::DimsExprs* inputs, int nbInputs,
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nvinfer1::IExprBuilder& exprBuilder) noexcept {
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try {
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nvinfer1::DimsExprs output(inputs[0]);
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output.d[2] = exprBuilder.constant(static_cast<int32_t>(output_size_[2]));
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output.d[3] = exprBuilder.constant(static_cast<int32_t>(output_size_[3]));
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return output;
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} catch (const std::exception& e) {
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FDASSERT(false, "getOutputDimensions failed: %s.", e.what());
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}
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return nvinfer1::DimsExprs{};
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}
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int AdaptivePool2d::enqueue(const nvinfer1::PluginTensorDesc* inputDesc,
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const nvinfer1::PluginTensorDesc* outputDesc,
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const void* const* inputs, void* const* outputs,
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void* workspace, cudaStream_t stream) noexcept {
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int nums = outputDesc[0].dims.d[0] * outputDesc[0].dims.d[1] *
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outputDesc[0].dims.d[2] * outputDesc[0].dims.d[3];
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std::vector<int64_t> input_size, output_size;
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for (int i = 0; i < 4; i++) {
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input_size.push_back(inputDesc[0].dims.d[i]);
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output_size.push_back(outputDesc[0].dims.d[i]);
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}
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if (inputDesc[0].type == nvinfer1::DataType::kHALF) {
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if (outputDesc[0].type == nvinfer1::DataType::kHALF) {
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CudaAdaptivePool(input_size, output_size, outputs[0], inputs[0], stream,
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pooling_type_, "half", "half");
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} else if (outputDesc[0].type == nvinfer1::DataType::kFLOAT) {
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CudaAdaptivePool(input_size, output_size, outputs[0], inputs[0], stream,
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pooling_type_, "half", "float");
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}
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} else if (inputDesc[0].type == nvinfer1::DataType::kFLOAT) {
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CudaAdaptivePool(input_size, output_size, outputs[0], inputs[0], stream,
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pooling_type_, "float", "float");
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}
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return cudaPeekAtLastError();
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}
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size_t AdaptivePool2d::getSerializationSize() const noexcept {
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return 5 * sizeof(int32_t);
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}
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void AdaptivePool2d::serialize(void* buffer) const noexcept {
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char *d = reinterpret_cast<char*>(buffer), *a = d;
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for (int64_t i = 0; i < 4; i++) {
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write(d, output_size_[i]);
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}
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int32_t pooling_type_val = 0;
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if (pooling_type_ != "avg") {
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pooling_type_val = 1;
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}
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write(d, pooling_type_val);
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FDASSERT(d == a + getSerializationSize(), "d == a + getSerializationSize()");
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}
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nvinfer1::DataType AdaptivePool2d::getOutputDataType(
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int index, const nvinfer1::DataType* inputType,
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int nbInputs) const noexcept {
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return inputType[0];
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}
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bool AdaptivePool2d::supportsFormatCombination(
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int pos, const nvinfer1::PluginTensorDesc* inOut, int nbInputs,
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int nbOutputs) noexcept {
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if ((inOut[pos].format == nvinfer1::PluginFormat::kLINEAR) &&
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(inOut[pos].type == nvinfer1::DataType::kFLOAT ||
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inOut[pos].type == nvinfer1::DataType::kHALF)) {
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return true;
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}
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return false;
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}
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int AdaptivePool2d::initialize() noexcept { return 0; }
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void AdaptivePool2d::terminate() noexcept { return; }
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size_t AdaptivePool2d::getWorkspaceSize(
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const nvinfer1::PluginTensorDesc* inputs, int nbInputs,
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const nvinfer1::PluginTensorDesc* outputs, int nbOutputs) const noexcept {
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return 0;
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}
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const char* AdaptivePool2d::getPluginType() const noexcept {
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return "AdaptivePool2d";
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}
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const char* AdaptivePool2d::getPluginVersion() const noexcept { return "1"; }
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void AdaptivePool2d::destroy() noexcept { return; }
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void AdaptivePool2d::configurePlugin(
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const nvinfer1::DynamicPluginTensorDesc* in, int nbInputs,
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const nvinfer1::DynamicPluginTensorDesc* out, int nbOutputs) noexcept {
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return;
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}
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nvinfer1::IPluginV2DynamicExt* AdaptivePool2d::clone() const noexcept {
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try {
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nvinfer1::IPluginV2DynamicExt* plugin =
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new AdaptivePool2d(output_size_, pooling_type_);
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plugin->setPluginNamespace(mNamespace.c_str());
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return plugin;
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} catch (std::exception const& e) {
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FDASSERT(false, "clone failed: %s.", e.what());
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}
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return nullptr;
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}
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AdaptivePool2dPluginCreator::AdaptivePool2dPluginCreator() {
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mPluginAttributes.clear();
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mPluginAttributes.emplace_back(nvinfer1::PluginField(
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"output_size", nullptr, nvinfer1::PluginFieldType::kINT32, 4));
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mPluginAttributes.emplace_back(nvinfer1::PluginField(
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"pooling_type", nullptr, nvinfer1::PluginFieldType::kCHAR, 3));
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mFC.nbFields = mPluginAttributes.size();
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mFC.fields = mPluginAttributes.data();
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}
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const char* AdaptivePool2dPluginCreator::getPluginName() const noexcept {
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return "AdaptivePool2d";
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}
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const char* AdaptivePool2dPluginCreator::getPluginVersion() const noexcept {
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return "1";
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}
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const nvinfer1::PluginFieldCollection*
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AdaptivePool2dPluginCreator::getFieldNames() noexcept {
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return &mFC;
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}
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nvinfer1::IPluginV2DynamicExt* AdaptivePool2dPluginCreator::createPlugin(
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const char* name, const nvinfer1::PluginFieldCollection* fc) noexcept {
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try {
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const nvinfer1::PluginField* fields = fc->fields;
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auto const dims = static_cast<int32_t const*>(fields[0].data);
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output_size_.resize(4);
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for (int64_t i = 0; i < 4; i++) {
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output_size_[i] = dims[i];
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}
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const char* pooling_type_ptr = (static_cast<char const*>(fields[1].data));
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std::string pooling_type(pooling_type_ptr, 3);
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pooling_type_ = pooling_type;
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return new AdaptivePool2d(output_size_, pooling_type_);
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} catch (std::exception const& e) {
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FDASSERT(false, "createPlugin failed: %s.", e.what());
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}
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return nullptr;
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}
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nvinfer1::IPluginV2DynamicExt* AdaptivePool2dPluginCreator::deserializePlugin(
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const char* name, const void* serialData, size_t serialLength) noexcept {
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try {
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return new AdaptivePool2d(serialData, serialLength);
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} catch (std::exception const& e) {
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FDASSERT(false, "deserializePlugin failed: %s.", e.what());
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}
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return nullptr;
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}
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} // namespace fastdeploy
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