Пример #1
0
void lbann_callback_summary::on_epoch_end(model *m) {
  prof_region_begin("summary-epoch", prof_colors[0], false);
  for (const auto& met : m->get_metrics()) {
    EvalType train_score = met->get_mean_value(m->get_execution_mode());
    // Replace spaces with _ for consistency.
    std::string metric_name = met->name();
    std::transform(metric_name.begin(), metric_name.end(), metric_name.begin(),
                   [] (char c) { return c == ' ' ? '_' : c; });
    std::string phase = "train_" + metric_name;
    m_summarizer->reduce_scalar(phase, train_score, m->get_cur_step());
  }
  save_histograms(m);
  m_summarizer->flush();
  prof_region_end("summary-epoch", false);
}
Пример #2
0
/* end of tasks */
int event_exit(){
	/* show block number and the analyzing ratio */
	fprintf(stderr,"\n");
	show_blk_num(1);

	save_scalers();
	
	/* DST exit tasks */
	dst_exit();

	if(rootflag == 1)
		root_exit();

	save_histograms();
	hb_exit(shmflag);
	return 0;
}
Пример #3
0
void GA::step()
{
  pop_vector children;
  children.clear();
  children.reserve(m_population_size);

  // elitism
  unsigned int elite_size = m_population_size * m_elitism_rate;

  for (unsigned int i=0; i<elite_size; i++) {
    children.push_back(m_population[i]->copy());
  }

  // crossover
  while (children.size() < (m_population_size - elite_size)) {

    // select parents
    int p1 = roulette();
    int p2 = roulette();

    // crossover parents
    crossover(m_population[p1], m_population[p2], children);
  }

  // mutation
  mutate(children);

  // update population and save last population
  update(children);

  // evaluate fitness and sort
  evaluate_fitness();

  // log, save generation
  log();

  save_histograms();
}
Пример #4
0
void lbann_callback_summary::on_train_begin(model *m) {
  save_histograms(m);
}