Пример #1
0
int main(int argc, const char ** argv) {

  print_copyright();
 
  /* GraphChi initialization will read the command line 
     arguments and the configuration file. */
  graphchi_init(argc, argv);

  /* Metrics object for keeping track of performance counters
     and other information. Currently required. */
  metrics m("als-inmemory-factors");

  lambda        = get_option_float("lambda", 0.065);

  parse_command_line_args();
  parse_implicit_command_line();
  if (unittest == 1){
    if (training == "") training = "test_wals"; 
    niters = 100;
  }

  /* Preprocess data if needed, or discover preprocess files */
  int nshards = convert_matrixmarket4<edge_data>(training);
  init_feature_vectors<std::vector<vertex_data> >(M+N, latent_factors_inmem, !load_factors_from_file);
  if (validation != ""){
    int vshards = convert_matrixmarket4<EdgeDataType>(validation, false, M==N, VALIDATION, 0);
    init_validation_rmse_engine<VertexDataType, EdgeDataType>(pvalidation_engine, vshards, &wals_predict, true, false, 0);
  }

  if (load_factors_from_file){
    load_matrix_market_matrix(training + "_U.mm", 0, D);
    load_matrix_market_matrix(training + "_V.mm", M, D);
  }


  /* Run */
  WALSVerticesInMemProgram program;
  graphchi_engine<VertexDataType, EdgeDataType> engine(training, nshards, false, m); 
  set_engine_flags(engine);
  pengine = &engine;
  engine.run(program, niters);

  /* Output latent factor matrices in matrix-market format */
  output_als_result(training);
  test_predictions(&wals_predict);    

  if (unittest == 1){
    if (dtraining_rmse > 0.03)
      logstream(LOG_FATAL)<<"Unit test 1 failed. Training RMSE is: " << training_rmse << std::endl;
    if (dvalidation_rmse > 0.61)
      logstream(LOG_FATAL)<<"Unit test 1 failed. Validation RMSE is: " << validation_rmse << std::endl;

  }
 
  /* Report execution metrics */
  if (!quiet)
    metrics_report(m);
  return 0;
}
Пример #2
0
int main(int argc, const char ** argv) {

  print_copyright();
 
  /* GraphChi initialization will read the command line 
     arguments and the configuration file. */
  graphchi_init(argc, argv);

  /* Metrics object for keeping track of performance counters
     and other information. Currently required. */
  metrics m("als-inmemory-factors");

  lambda        = get_option_float("lambda", 0.065);
  user_sparsity = get_option_float("user_sparsity", 0.9);
  movie_sparsity = get_option_float("movie_sparsity", 0.9);
  algorithm      = get_option_int("algorithm", SPARSE_USR_FACTOR);

  parse_command_line_args();
  parse_implicit_command_line(); 

  if (user_sparsity < 0.5 || user_sparsity >= 1)
    logstream(LOG_FATAL)<<"Sparsity level should be [0.5,1). Please run again using --user_sparsity=XX in this range" << std::endl;

  if (movie_sparsity < 0.5 || movie_sparsity >= 1)
    logstream(LOG_FATAL)<<"Sparsity level should be [0.5,1). Please run again using --movie_sparsity=XX in this range" << std::endl;

if (algorithm != SPARSE_USR_FACTOR && algorithm != SPARSE_BOTH_FACTORS && algorithm != SPARSE_ITM_FACTOR)
    logstream(LOG_FATAL)<<"Algorithm should be 1 for SPARSE_USR_FACTOR, 2 for SPARSE_ITM_FACTOR and 3 for SPARSE_BOTH_FACTORS" << std::endl;

  /* Preprocess data if needed, or discover preprocess files */
  int nshards = convert_matrixmarket<EdgeDataType>(training);
  init_feature_vectors<std::vector<vertex_data> >(M+N, latent_factors_inmem, !load_factors_from_file);
  if (validation != ""){
    int vshards = convert_matrixmarket<EdgeDataType>(validation, 0, 0, 3, VALIDATION);
    init_validation_rmse_engine<VertexDataType, EdgeDataType>(pvalidation_engine, vshards, &sparse_als_predict);
  }
 

  if (load_factors_from_file){
    load_matrix_market_matrix(training + "_U.mm", 0, D);
    load_matrix_market_matrix(training + "_V.mm", M, D);
  }

  /* Run */
  ALSVerticesInMemProgram program;
  graphchi_engine<VertexDataType, EdgeDataType> engine(training, nshards, false, m); 
  set_engine_flags(engine);
  pengine = &engine;
  engine.run(program, niters);

  /* Output latent factor matrices in matrix-market format */
  output_als_result(training);
  test_predictions(&sparse_als_predict);    

  /* Report execution metrics */
  if (!quiet)
    metrics_report(m);
  return 0;
}
Пример #3
0
int main(int argc, const char ** argv) {

  print_copyright();
 
  /* CE_Graph initialization will read the command line 
     arguments and the configuration file. */
  CE_Graph_init(argc, argv);

  /* Metrics object for keeping track of performance counters
     and other information. Currently required. */
  metrics m("als-inmemory-factors");

  lambda        = get_option_float("lambda", 0.065);
  
  parse_command_line_args();
  parse_implicit_command_line();


  /* Preprocess data if needed, or discover preprocess files */
  int nshards = convert_matrixmarket<EdgeDataType>(training, 0, 0, 3, TRAINING, false);
  init_feature_vectors<std::vector<vertex_data> >(M+N, latent_factors_inmem, !load_factors_from_file);
  if (validation != ""){
    int vshards = convert_matrixmarket<EdgeDataType>(validation, 0, 0, 3, VALIDATION, false);
    init_validation_rmse_engine<VertexDataType, EdgeDataType>(pvalidation_engine, vshards, &als_predict);
  }

  /* load initial state from disk (optional) */
  if (load_factors_from_file){
    load_matrix_market_matrix(training + "_U.mm", 0, D);
    load_matrix_market_matrix(training + "_V.mm", M, D);
  }

  /* Run */
  ALSVerticesInMemProgram program;
  CE_Graph_engine<VertexDataType, EdgeDataType> engine(training, nshards, false, m); 
  set_engine_flags(engine);
  pengine = &engine;
  engine.run(program, niters);

  /* Output latent factor matrices in matrix-market format */
  output_als_result(training);
  test_predictions(&als_predict);    

  /* Report execution metrics */
  if (!quiet)
    metrics_report(m);
  
  return 0;
}
Пример #4
0
int main(int argc, const char ** argv) {

	print_copyright();

	/* GraphChi initialization will read the command line
	 arguments and the configuration file. */
	graphchi_init(argc, argv);

	/* Metrics object for keeping track of performance counters
	 and other information. Currently required. */
	metrics m("bsvd_coor-inmemory-factors");

	/* Basic arguments for application. NOTE: File will be automatically 'sharded'. */
	alpha = get_option_float("alpha", 1.0);
	lambda = get_option_float("lambda", 1.0);

	parse_command_line_args();
	parse_implicit_command_line();

	/* Preprocess data if needed, or discover preprocess files */
	int nshards = convert_matrixmarket<EdgeDataType>(training, 0, 0, 3, TRAINING, false);

	// initialize features vectors
	std::string initType;
	switch (init_features_type) {
	case 1: // bounded random
		// randomly initialize feature vectors so that rmin < rate < rmax
		initType = "bounded-random";
		init_random_bounded<std::vector<vertex_data> >(latent_factors_inmem, !load_factors_from_file);
		break;
	case 2: // baseline
		initType = "baseline";
		init_baseline<std::vector<vertex_data> >(latent_factors_inmem);
		load_matrix_market_matrix(training + "-baseline_P.mm", 0, D);
		load_matrix_market_matrix(training + "-baseline_Q.mm", M, D);
		break;
	case 3: // random
		initType = "random";
		init_feature_vectors<std::vector<vertex_data> >(M + N, latent_factors_inmem, !load_factors_from_file);
		break;
	default: // random
		initType = "random";
		init_feature_vectors<std::vector<vertex_data> >(M + N, latent_factors_inmem, !load_factors_from_file);
	}

	if (validation != "") {
		int vshards = convert_matrixmarket<EdgeDataType>(validation, 0, 0, 3, VALIDATION, false);
		init_validation_rmse_engine<VertexDataType, EdgeDataType>(pvalidation_engine, vshards, &bsvd_predict);
	}

	/* load initial state from disk (optional) */
	if (load_factors_from_file) {
		load_matrix_market_matrix(training + "_U.mm", 0, D);
		load_matrix_market_matrix(training + "_V.mm", M, D);
	}

	/* Run */
	ALSVerticesInMemProgram program;
	graphchi_engine<VertexDataType, EdgeDataType> engine(training, nshards, false, m);
	set_engine_flags(engine);
	pengine = &engine;
	engine.run(program, niters);

	/* Output latent factor matrices in matrix-market format */
	output_als_result(training);
	test_predictions(&bsvd_predict);

	/* Report execution metrics */
	if (!quiet)
		metrics_report(m);

	return 0;
}