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/*
// Copyright (c) 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.
*/
#include <string>
#include <algorithm>
#include <samples/common.hpp>
#include "Processor.hpp"
using namespace InferenceEngine;
Processor::Processor(const std::string& flags_m, const std::string& flags_d, const std::string& flags_i, int flags_b,
InferencePlugin plugin, CsvDumper& dumper, const std::string& approach, PreprocessingOptions preprocessingOptions)
: targetDevice(flags_d), modelFileName(flags_m), imagesPath(flags_i), batch(flags_b),
plugin(plugin), dumper(dumper), approach(approach), preprocessingOptions(preprocessingOptions) {
// --------------------Load network (Generated xml/bin files)-------------------------------------------
slog::info << "Loading network files" << slog::endl;
loadDuration = getDurationOf([&]() {
/** Read network model **/
networkReader.ReadNetwork(modelFileName);
if (!networkReader.isParseSuccess()) THROW_IE_EXCEPTION << "cannot load a failed Model";
/** Extract model name and load weights **/
std::string binFileName = fileNameNoExt(modelFileName) + ".bin";
networkReader.ReadWeights(binFileName.c_str());
});
// -----------------------------------------------------------------------------------------------------
// -----------------------------Prepare input blobs-----------------------------------------------------
slog::info << "Preparing input blobs" << slog::endl;
/** Taking information about all topology inputs **/
inputInfo = InputsDataMap(networkReader.getNetwork().getInputsInfo());
/** Stores all input blobs data **/
// TODO Check if it's necessary
if (!targetDevice.empty()) {
networkReader.getNetwork().setTargetDevice(getDeviceFromStr(targetDevice));
}
if (batch == 0) {
// Zero means "take batch value from the IR"
batch = networkReader.getNetwork().getBatchSize();
} else {
// Not zero means "use the specified value"
networkReader.getNetwork().setBatchSize(batch);
}
if (inputInfo.size() != 1) {
THROW_IE_EXCEPTION << "This app accepts networks having only one input";
}
for (auto & item : inputInfo) {
inputDims = item.second->getDims();
slog::info << "Batch size is " << std::to_string(networkReader.getNetwork().getBatchSize()) << slog::endl;
}
outInfo = networkReader.getNetwork().getOutputsInfo();
DataPtr outData = outInfo.begin()->second;
// Set the precision of output data provided by the user, should be called before load of the network to the plugin
if (!outData) {
throw std::logic_error("output data pointer is not valid");
}
outData->setPrecision(Precision::FP32);
if (outInfo.size() != 1) {
THROW_IE_EXCEPTION << "This app accepts networks having only one output";
}
if (!outData) {
THROW_IE_EXCEPTION << "The network output info is not valid";
}
outputDims = outData->dims;
// Load model to plugin and create an inference request
ExecutableNetwork executable_network = plugin.LoadNetwork(networkReader.getNetwork(), {});
inferRequest = executable_network.CreateInferRequest();
}
double Processor::Infer(ConsoleProgress& progress, int filesWatched, InferenceMetrics& im) {
ResponseDesc dsc;
// InferencePlugin plugin(enginePtr);
// Infer model
double time = getDurationOf([&]() {
inferRequest.Infer();
});
im.maxDuration = std::min(im.maxDuration, time);
im.minDuration = std::max(im.minDuration, time);
im.totalTime += time;
im.nRuns++;
progress.addProgress(filesWatched);
return time;
}
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