ArmNN
 21.02
ExecuteNetwork.cpp File Reference

Go to the source code of this file.

Functions

template<typename TParser , typename TDataType >
int MainImpl (const ExecuteNetworkParams &params, const std::shared_ptr< armnn::IRuntime > &runtime=nullptr)
 
int main (int argc, const char *argv[])
 

Function Documentation

◆ main()

int main ( int  argc,
const char *  argv[] 
)

Definition at line 448 of file ExecuteNetwork.cpp.

References ARMNN_LOG, armnn::ConfigureLogging(), IRuntime::Create(), armnn::Debug, armnn::Info, ExecuteNetworkParams::m_EnableDelegate, ProgramOptions::m_ExNetParams, ExecuteNetworkParams::m_ModelFormat, and ProgramOptions::m_RuntimeOptions.

449 {
450  // Configures logging for both the ARMNN library and this test program.
451  #ifdef NDEBUG
453  #else
455  #endif
456  armnn::ConfigureLogging(true, true, level);
457 
458 
459  // Get ExecuteNetwork parameters and runtime options from command line
460  ProgramOptions ProgramOptions(argc, argv);
461 
462  // Create runtime
463  std::shared_ptr<armnn::IRuntime> runtime(armnn::IRuntime::Create(ProgramOptions.m_RuntimeOptions));
464 
465  std::string modelFormat = ProgramOptions.m_ExNetParams.m_ModelFormat;
466 
467  // Forward to implementation based on the parser type
468  if (modelFormat.find("armnn") != std::string::npos)
469  {
470  #if defined(ARMNN_SERIALIZER)
471  return MainImpl<armnnDeserializer::IDeserializer, float>(ProgramOptions.m_ExNetParams, runtime);
472  #else
473  ARMNN_LOG(fatal) << "Not built with serialization support.";
474  return EXIT_FAILURE;
475  #endif
476  }
477  else if (modelFormat.find("caffe") != std::string::npos)
478  {
479  #if defined(ARMNN_CAFFE_PARSER)
480  return MainImpl<armnnCaffeParser::ICaffeParser, float>(ProgramOptions.m_ExNetParams, runtime);
481  #else
482  ARMNN_LOG(fatal) << "Not built with Caffe parser support.";
483  return EXIT_FAILURE;
484  #endif
485  }
486  else if (modelFormat.find("onnx") != std::string::npos)
487  {
488  #if defined(ARMNN_ONNX_PARSER)
489  return MainImpl<armnnOnnxParser::IOnnxParser, float>(ProgramOptions.m_ExNetParams, runtime);
490  #else
491  ARMNN_LOG(fatal) << "Not built with Onnx parser support.";
492  return EXIT_FAILURE;
493  #endif
494  }
495  else if (modelFormat.find("tensorflow") != std::string::npos)
496  {
497  #if defined(ARMNN_TF_PARSER)
498  return MainImpl<armnnTfParser::ITfParser, float>(ProgramOptions.m_ExNetParams, runtime);
499  #else
500  ARMNN_LOG(fatal) << "Not built with Tensorflow parser support.";
501  return EXIT_FAILURE;
502  #endif
503  }
504  else if(modelFormat.find("tflite") != std::string::npos)
505  {
506 
508  {
509  #if defined(ARMNN_TF_LITE_DELEGATE)
510  return TfLiteDelegateMainImpl(ProgramOptions.m_ExNetParams, runtime);
511  #else
512  ARMNN_LOG(fatal) << "Not built with Arm NN Tensorflow-Lite delegate support.";
513  return EXIT_FAILURE;
514  #endif
515  }
516  #if defined(ARMNN_TF_LITE_PARSER)
517  return MainImpl<armnnTfLiteParser::ITfLiteParser, float>(ProgramOptions.m_ExNetParams, runtime);
518  #else
519  ARMNN_LOG(fatal) << "Not built with Tensorflow-Lite parser support.";
520  return EXIT_FAILURE;
521  #endif
522  }
523  else
524  {
525  ARMNN_LOG(fatal) << "Unknown model format: '" << modelFormat
526  << "'. Please include 'caffe', 'tensorflow', 'tflite' or 'onnx'";
527  return EXIT_FAILURE;
528  }
529 }
ExecuteNetworkParams m_ExNetParams
static IRuntimePtr Create(const CreationOptions &options)
Definition: Runtime.cpp:37
void ConfigureLogging(bool printToStandardOutput, bool printToDebugOutput, LogSeverity severity)
Configures the logging behaviour of the ARMNN library.
Definition: Utils.cpp:18
armnn::IRuntime::CreationOptions m_RuntimeOptions
#define ARMNN_LOG(severity)
Definition: Logging.hpp:202
Holds and parses program options for the ExecuteNetwork application.
LogSeverity
Definition: Utils.hpp:13

◆ MainImpl()

int MainImpl ( const ExecuteNetworkParams params,
const std::shared_ptr< armnn::IRuntime > &  runtime = nullptr 
)

Definition at line 289 of file ExecuteNetwork.cpp.

References ARMNN_LOG, InferenceModel< IParser, TDataType >::GetInputQuantizationParams(), InferenceModel< IParser, TDataType >::GetInputSize(), InferenceModel< IParser, TDataType >::GetOutputBindingInfos(), InferenceModel< IParser, TDataType >::GetOutputSize(), ExecuteNetworkParams::m_CachedNetworkFilePath, Params::m_CachedNetworkFilePath, ExecuteNetworkParams::m_ComputeDevices, Params::m_ComputeDevices, ExecuteNetworkParams::m_DequantizeOutput, ExecuteNetworkParams::m_DynamicBackendsPath, Params::m_DynamicBackendsPath, ExecuteNetworkParams::m_EnableBf16TurboMode, Params::m_EnableBf16TurboMode, ExecuteNetworkParams::m_EnableFastMath, Params::m_EnableFastMath, ExecuteNetworkParams::m_EnableFp16TurboMode, Params::m_EnableFp16TurboMode, ExecuteNetworkParams::m_EnableLayerDetails, ExecuteNetworkParams::m_EnableProfiling, ExecuteNetworkParams::m_GenerateTensorData, ExecuteNetworkParams::m_InferOutputShape, Params::m_InferOutputShape, Params::m_InputBindings, ExecuteNetworkParams::m_InputNames, Params::m_InputShapes, ExecuteNetworkParams::m_InputTensorDataFilePaths, ExecuteNetworkParams::m_InputTensorShapes, ExecuteNetworkParams::m_InputTypes, ExecuteNetworkParams::m_IsModelBinary, Params::m_IsModelBinary, ExecuteNetworkParams::m_Iterations, ExecuteNetworkParams::m_MLGOTuningFilePath, Params::m_MLGOTuningFilePath, ExecuteNetworkParams::m_ModelPath, Params::m_ModelPath, ExecuteNetworkParams::m_NumberOfThreads, Params::m_NumberOfThreads, Params::m_OutputBindings, ExecuteNetworkParams::m_OutputNames, ExecuteNetworkParams::m_OutputTensorFiles, ExecuteNetworkParams::m_OutputTypes, ExecuteNetworkParams::m_ParseUnsupported, Params::m_ParseUnsupported, ExecuteNetworkParams::m_PrintIntermediate, Params::m_PrintIntermediateLayers, ExecuteNetworkParams::m_QuantizeInput, ExecuteNetworkParams::m_SaveCachedNetwork, Params::m_SaveCachedNetwork, ExecuteNetworkParams::m_SubgraphId, Params::m_SubgraphId, ExecuteNetworkParams::m_ThresholdTime, Params::m_VisualizePostOptimizationModel, PopulateTensorWithData(), InferenceModel< IParser, TDataType >::Run(), and Exception::what().

291 {
292  using TContainer = mapbox::util::variant<std::vector<float>, std::vector<int>, std::vector<unsigned char>>;
293 
294  std::vector<TContainer> inputDataContainers;
295 
296  try
297  {
298  // Creates an InferenceModel, which will parse the model and load it into an IRuntime.
299  typename InferenceModel<TParser, TDataType>::Params inferenceModelParams;
300  inferenceModelParams.m_ModelPath = params.m_ModelPath;
301  inferenceModelParams.m_IsModelBinary = params.m_IsModelBinary;
302  inferenceModelParams.m_ComputeDevices = params.m_ComputeDevices;
303  inferenceModelParams.m_DynamicBackendsPath = params.m_DynamicBackendsPath;
304  inferenceModelParams.m_PrintIntermediateLayers = params.m_PrintIntermediate;
305  inferenceModelParams.m_VisualizePostOptimizationModel = params.m_EnableLayerDetails;
306  inferenceModelParams.m_ParseUnsupported = params.m_ParseUnsupported;
307  inferenceModelParams.m_InferOutputShape = params.m_InferOutputShape;
308  inferenceModelParams.m_EnableFastMath = params.m_EnableFastMath;
309  inferenceModelParams.m_SaveCachedNetwork = params.m_SaveCachedNetwork;
310  inferenceModelParams.m_CachedNetworkFilePath = params.m_CachedNetworkFilePath;
311  inferenceModelParams.m_NumberOfThreads = params.m_NumberOfThreads;
312  inferenceModelParams.m_MLGOTuningFilePath = params.m_MLGOTuningFilePath;
313 
314  for(const std::string& inputName: params.m_InputNames)
315  {
316  inferenceModelParams.m_InputBindings.push_back(inputName);
317  }
318 
319  for(unsigned int i = 0; i < params.m_InputTensorShapes.size(); ++i)
320  {
321  inferenceModelParams.m_InputShapes.push_back(*params.m_InputTensorShapes[i]);
322  }
323 
324  for(const std::string& outputName: params.m_OutputNames)
325  {
326  inferenceModelParams.m_OutputBindings.push_back(outputName);
327  }
328 
329  inferenceModelParams.m_SubgraphId = params.m_SubgraphId;
330  inferenceModelParams.m_EnableFp16TurboMode = params.m_EnableFp16TurboMode;
331  inferenceModelParams.m_EnableBf16TurboMode = params.m_EnableBf16TurboMode;
332 
333  InferenceModel<TParser, TDataType> model(inferenceModelParams,
334  params.m_EnableProfiling,
335  params.m_DynamicBackendsPath,
336  runtime);
337 
338  const size_t numInputs = inferenceModelParams.m_InputBindings.size();
339  for(unsigned int i = 0; i < numInputs; ++i)
340  {
342  armnn::MakeOptional<QuantizationParams>(
343  model.GetInputQuantizationParams()) :
345 
348  armnn::MakeOptional<std::string>(
349  params.m_InputTensorDataFilePaths[i]);
350 
351  unsigned int numElements = model.GetInputSize(i);
352  if (params.m_InputTensorShapes.size() > i && params.m_InputTensorShapes[i])
353  {
354  // If the user has provided a tensor shape for the current input,
355  // override numElements
356  numElements = params.m_InputTensorShapes[i]->GetNumElements();
357  }
358 
359  TContainer tensorData;
360  PopulateTensorWithData(tensorData,
361  numElements,
362  params.m_InputTypes[i],
363  qParams,
364  dataFile);
365 
366  inputDataContainers.push_back(tensorData);
367  }
368 
369  const size_t numOutputs = inferenceModelParams.m_OutputBindings.size();
370  std::vector<TContainer> outputDataContainers;
371 
372  for (unsigned int i = 0; i < numOutputs; ++i)
373  {
374  if (params.m_OutputTypes[i].compare("float") == 0)
375  {
376  outputDataContainers.push_back(std::vector<float>(model.GetOutputSize(i)));
377  }
378  else if (params.m_OutputTypes[i].compare("int") == 0)
379  {
380  outputDataContainers.push_back(std::vector<int>(model.GetOutputSize(i)));
381  }
382  else if (params.m_OutputTypes[i].compare("qasymm8") == 0)
383  {
384  outputDataContainers.push_back(std::vector<uint8_t>(model.GetOutputSize(i)));
385  }
386  else
387  {
388  ARMNN_LOG(fatal) << "Unsupported tensor data type \"" << params.m_OutputTypes[i] << "\". ";
389  return EXIT_FAILURE;
390  }
391  }
392 
393  for (size_t x = 0; x < params.m_Iterations; x++)
394  {
395  // model.Run returns the inference time elapsed in EnqueueWorkload (in milliseconds)
396  auto inference_duration = model.Run(inputDataContainers, outputDataContainers);
397 
398  if (params.m_GenerateTensorData)
399  {
400  ARMNN_LOG(warning) << "The input data was generated, note that the output will not be useful";
401  }
402 
403  // Print output tensors
404  const auto& infosOut = model.GetOutputBindingInfos();
405  for (size_t i = 0; i < numOutputs; i++)
406  {
407  const armnn::TensorInfo& infoOut = infosOut[i].second;
408  auto outputTensorFile = params.m_OutputTensorFiles.empty() ? "" : params.m_OutputTensorFiles[i];
409 
410  TensorPrinter printer(inferenceModelParams.m_OutputBindings[i],
411  infoOut,
412  outputTensorFile,
413  params.m_DequantizeOutput);
414  mapbox::util::apply_visitor(printer, outputDataContainers[i]);
415  }
416 
417  ARMNN_LOG(info) << "\nInference time: " << std::setprecision(2)
418  << std::fixed << inference_duration.count() << " ms\n";
419 
420  // If thresholdTime == 0.0 (default), then it hasn't been supplied at command line
421  if (params.m_ThresholdTime != 0.0)
422  {
423  ARMNN_LOG(info) << "Threshold time: " << std::setprecision(2)
424  << std::fixed << params.m_ThresholdTime << " ms";
425  auto thresholdMinusInference = params.m_ThresholdTime - inference_duration.count();
426  ARMNN_LOG(info) << "Threshold time - Inference time: " << std::setprecision(2)
427  << std::fixed << thresholdMinusInference << " ms" << "\n";
428 
429  if (thresholdMinusInference < 0)
430  {
431  std::string errorMessage = "Elapsed inference time is greater than provided threshold time.";
432  ARMNN_LOG(fatal) << errorMessage;
433  }
434  }
435  }
436  }
437  catch (const armnn::Exception& e)
438  {
439  ARMNN_LOG(fatal) << "Armnn Error: " << e.what();
440  return EXIT_FAILURE;
441  }
442 
443  return EXIT_SUCCESS;
444 }
std::vector< std::string > m_InputTypes
std::vector< TensorShapePtr > m_InputTensorShapes
mapbox::util::variant< std::vector< float >, std::vector< int >, std::vector< unsigned char > > TContainer
virtual const char * what() const noexcept override
Definition: Exceptions.cpp:32
#define ARMNN_LOG(severity)
Definition: Logging.hpp:202
void PopulateTensorWithData(TContainer &tensorData, unsigned int numElements, const std::string &dataTypeStr, const armnn::Optional< QuantizationParams > &qParams, const armnn::Optional< std::string > &dataFile)
std::vector< std::string > m_OutputNames
Copyright (c) 2021 ARM Limited and Contributors.
std::vector< std::string > m_OutputTensorFiles
std::vector< std::string > m_InputBindings
std::vector< armnn::BackendId > m_ComputeDevices
std::vector< std::string > m_OutputTypes
std::vector< armnn::TensorShape > m_InputShapes
std::vector< std::string > m_OutputBindings
std::vector< armnn::BackendId > m_ComputeDevices
std::vector< std::string > m_InputNames
EmptyOptional is used to initialize the Optional class in case we want to have default value for an O...
Definition: Optional.hpp:32
Base class for all ArmNN exceptions so that users can filter to just those.
Definition: Exceptions.hpp:46
Optional< T > MakeOptional(Args &&... args)
Utility template that constructs an object of type T in-place and wraps it inside an Optional<T> obje...
Definition: Optional.hpp:305