X-Git-Url: https://www.fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=cnn-svrt.py;h=90b4c6d6693f51a1ef35b54ed2eb8130865277c7;hb=4d3bc68c677cc9554df9c47dd214dfc4cb9c6577;hp=aa3690d13c800122d7599d41172e19f141cb48d1;hpb=f829e951a7988cfc228af56fbcf17057cb61c06c;p=pysvrt.git diff --git a/cnn-svrt.py b/cnn-svrt.py index aa3690d..90b4c6d 100755 --- a/cnn-svrt.py +++ b/cnn-svrt.py @@ -73,6 +73,10 @@ parser.add_argument('--compress_vignettes', action='store_true', default = False, help = 'Use lossless compression to reduce the memory footprint') +parser.add_argument('--test_loaded_models', + action='store_true', default = False, + help = 'Should we compute the test error of models we load') + args = parser.parse_args() ###################################################################### @@ -84,13 +88,16 @@ print(Fore.RED + 'Logging into ' + args.log_file + Style.RESET_ALL) def log_string(s): global pred_log_t + t = time.time() if pred_log_t is None: elapsed = 'start' else: elapsed = '+{:.02f}s'.format(t - pred_log_t) + pred_log_t = t + s = Fore.BLUE + time.ctime() + ' ' + Fore.GREEN + elapsed + Style.RESET_ALL + ' ' + s log_file.write(s + '\n') log_file.flush() @@ -142,6 +149,8 @@ def train_model(model, train_set): optimizer = optim.SGD(model.parameters(), lr = 1e-2) + start_t = time.time() + for e in range(0, args.nb_epochs): acc_loss = 0.0 for b in range(0, train_set.nb_batches): @@ -153,6 +162,8 @@ def train_model(model, train_set): loss.backward() optimizer.step() log_string('train_loss {:d} {:f}'.format(e + 1, acc_loss)) + dt = (time.time() - start_t) / (e + 1) + print(Fore.CYAN + 'ETA ' + time.ctime(time.time() + dt * (args.nb_epochs - e)) + Style.RESET_ALL) return model @@ -180,6 +191,8 @@ for arg in vars(args): for problem_number in range(1, 24): + log_string('**** problem ' + str(problem_number) + ' ****') + model = AfrozeShallowNet() if torch.cuda.is_available(): @@ -210,20 +223,12 @@ for problem_number in range(1, 24): train_set = CompressedVignetteSet(problem_number, args.nb_train_batches, args.batch_size, cuda=torch.cuda.is_available()) - test_set = CompressedVignetteSet(problem_number, - args.nb_test_batches, args.batch_size, - cuda=torch.cuda.is_available()) else: train_set = VignetteSet(problem_number, args.nb_train_batches, args.batch_size, cuda=torch.cuda.is_available()) - test_set = VignetteSet(problem_number, - args.nb_test_batches, args.batch_size, - cuda=torch.cuda.is_available()) - log_string('data_generation {:0.2f} samples / s'.format( - (train_set.nb_samples + test_set.nb_samples) / (time.time() - t)) - ) + log_string('data_generation {:0.2f} samples / s'.format(train_set.nb_samples / (time.time() - t))) train_model(model, train_set) torch.save(model.state_dict(), model_filename) @@ -238,6 +243,21 @@ for problem_number in range(1, 24): train_set.nb_samples) ) + if need_to_train or args.test_loaded_models: + + t = time.time() + + if args.compress_vignettes: + test_set = CompressedVignetteSet(problem_number, + args.nb_test_batches, args.batch_size, + cuda=torch.cuda.is_available()) + else: + test_set = VignetteSet(problem_number, + args.nb_test_batches, args.batch_size, + cuda=torch.cuda.is_available()) + + log_string('data_generation {:0.2f} samples / s'.format(test_set.nb_samples / (time.time() - t))) + nb_test_errors = nb_errors(model, test_set) log_string('test_error {:d} {:.02f}% {:d} {:d}'.format(