Ejemplo n.º 1
0
    def train(self):
        train_dataset = Dataset(self.data_train, self.batch_size,
                                self.vocab_size, self.pad_idx)
        valid_dataset = Dataset(self.data_valid, self.batch_size,
                                self.vocab_size, self.pad_idx)
        train_generator = BatchGenerator(train_dataset)
        valid_generator = BatchGenerator(valid_dataset)

        if self.cfg.early_stopping:
            valid_metric_history = []

        dropout_prob = self.cfg.d_dropout_prob
        pbar = tqdm(total=self.cfg.max_step)
        step = self.sess.run(self.global_step)

        if step > 1:
            pbar.update(step)

        while not self.sv.should_stop():
            pbar.update(1)
            feed = train_generator.get_d_batch()
            ops = [self.train_op, self.global_step]
            result = self.D.run(self.sess, ops, feed, dropout_prob)
            step = result[1]

            # update learning rate (optional)
            if step % self.cfg.lr_update_step == self.cfg.lr_update_step - 1:
                self.sess.run(self.d_lr_update)

            if not step % self.cfg.log_step == 0:
                continue

            ops = [self.D.loss, self.D.accuracy]
            train_loss, train_acc = self.D.run(self.sess, ops, feed,
                                               dropout_prob)
            print_msg = '[{}/{}] D_loss: {:.6f} D_accuracy: {:.6f}'.format(
                            step, self.cfg.max_step, train_loss, train_acc)

            if self.cfg.validation:
                feed = valid_generator.get_d_batch()
                ops = [self.D.loss, self.D.accuracy]
                valid_loss, valid_acc = self.D.run(self.sess, ops, feed, 1)
                add_msg = \
                    " | [Valid] D_loss: {:.6f} D_accuracy: {:.6f}  ".format(
                        valid_loss, valid_acc)
                print_msg = print_msg + add_msg

                if self.cfg.early_stopping and step >= 100:
                    if self.cfg.early_stopping_metric == 'loss':
                        valid_metric_history.append(valid_loss)
                    elif self.cfg.early_stopping_metric == 'accuracy':
                        valid_metric_history.append(valid_acc)
                    if step >= 1000:
                        add_msg = self.validation_monitor(valid_metric_history)
                        print_msg = print_msg + add_msg

            print(print_msg)
Ejemplo n.º 2
0
def evaluate(model, config, checkpoint_manager, checkpoint, ckpt_path,
             model_name_or_path, tokenizer_class, tokenizer_cache_dir):
    if ckpt_path == None:
        ckpt_path = checkpoint_manager.latest_checkpoint
    tf.get_logger().info("Evaluating model %s", ckpt_path)
    checkpoint.restore(ckpt_path)
    validation_dataset = Dataset(config.get("validation_file_path", None),
                                 os.path.join(config.get("model_dir"), "data"),
                                 config.get("seq_size"),
                                 config.get("max_sents"),
                                 config.get("do_shuffle"),
                                 config.get("do_skip_empty"),
                                 procedure="dev",
                                 model_name_or_path=model_name_or_path,
                                 tokenizer_class=tokenizer_class,
                                 tokenizer_cache_dir=tokenizer_cache_dir)
    iterator = iter(
        validation_dataset.create_one_epoch(do_shuffle=False, mode="p"))

    @tf.function
    def encode_next():
        src, tgt = next(iterator)
        padding_mask = build_mask(src["input_ids"], src["lengths"])
        src_sentence_embedding = model.encode(src, padding_mask)
        padding_mask = build_mask(tgt["input_ids"], tgt["lengths"])
        tgt_sentence_embedding = model.encode(tgt, padding_mask)
        return src_sentence_embedding, tgt_sentence_embedding

    # Iterates on the dataset.
    src_sentence_embedding_list = []
    tgt_sentence_embedding_list = []
    while True:
        try:
            src_sentence_embedding_, tgt_sentence_embedding_ = encode_next()
            src_sentence_embedding_list.append(src_sentence_embedding_.numpy())
            tgt_sentence_embedding_list.append(tgt_sentence_embedding_.numpy())
        except tf.errors.OutOfRangeError:
            break
    src_sentences = np.concatenate(src_sentence_embedding_list, axis=0)
    tgt_sentences = np.concatenate(tgt_sentence_embedding_list, axis=0)
    print("src_sentences", src_sentences.shape)
    print("tgt_sentences", tgt_sentences.shape)
    d = src_sentences.shape[-1]
    index = faiss.IndexFlatIP(d)  # build the index
    print("faiss state: ", index.is_trained)
    index.add(src_sentences)  # add vectors to the index
    print("number of sentences: %d" % index.ntotal)
    k = 1
    D, I = index.search(tgt_sentences, k)  # tgt -> src search
    print(sklearn.metrics.accuracy_score(np.arange(index.ntotal), I))
Ejemplo n.º 3
0
def load_image_features(args):
    # Image preprocessing, normalization for the pretrained b7
    transform = transforms.Compose([
        transforms.Resize(args.crop_size),
        transforms.ToTensor(),
        transforms.Normalize((0.485, 0.456, 0.406), (0.229, 0.224, 0.225))
    ])

    # train split
    fts_file = os.path.join(args.save,
                            'b7_v2.{}.{}.th'.format(args.data_set, 'train'))
    if os.path.isfile(fts_file):
        print('[INFO] loading image features: {}'.format(fts_file))
        fts = torch.load(fts_file, map_location='cpu')
    else:
        print('[INFO] computing image features: {}'.format(fts_file))
        data_loader = Dataset(args.image_folder.format(args.data_set),
                              args.data_split_file.format(
                                  args.data_set, 'train'),
                              transform,
                              num_workers=args.num_workers)
        attr_file = args.attribute_file.format(args.data_set)

        fts = utils.extract_features(data_loader, attr_file,
                                     args.attr2idx_file, device,
                                     args.image_model)
        torch.save(fts, fts_file)

    # dev split
    fts_file_dev = os.path.join(args.save,
                                'b7_v2.{}.{}.th'.format(args.data_set, 'val'))
    if os.path.isfile(fts_file_dev):
        print('[INFO] loading image features: {}'.format(fts_file_dev))
        fts_dev = torch.load(fts_file_dev, map_location='cpu')
    else:
        print('[INFO] computing image features: {}'.format(fts_file_dev))
        data_loader_dev = Dataset(args.image_folder.format(args.data_set),
                                  args.data_split_file.format(
                                      args.data_set, 'val'),
                                  transform,
                                  num_workers=args.num_workers)
        attr_file_dev = args.attribute_file.format(args.data_set)
        fts_dev = utils.extract_features(data_loader_dev, attr_file_dev,
                                         args.attr2idx_file, device,
                                         args.image_model)
        torch.save(fts_dev, fts_file_dev)

    return fts, fts_dev
Ejemplo n.º 4
0
    def train(self):

        from data_loader import Dataset
        from data_loader import BatchGenerator

        train_dataset = Dataset(self.data_train, self.cfg.batch_size,
                                self.vocab_size, self.pad_idx)
        train_generator = BatchGenerator(train_dataset)
        self.label_real = train_generator.get_binary_label_batch(True)
        self.label_fake = train_generator.get_binary_label_batch(False)

        dropout_prob = self.cfg.d_dropout_prob
        pbar = tqdm(total=self.cfg.max_step)
        step = self.sess.run(self.global_step)

        # z_test = np.random.uniform(-1, 1,
        #                            [self.cfg.batch_size, self.cfg.z_dim])

        if step > 1:
            pbar.update(step)

        while not self.sv.should_stop():
            pbar.update(1)
            que_real, ans_real = train_generator.get_gan_data_batch()

            # G train
            z = np.random.uniform(-1, 1, [self.cfg.batch_size, self.cfg.z_dim])
            feed = [que_real, ans_real, z, 1]
            ops = [self.global_step, self.g_loss, self.g_train_op]
            step, g_loss, _ = self.run_gan(self.sess, ops, feed)

            # D train
            if step % self.cfg.g_per_d_train == 0:
                z = np.random.uniform(-1, 1,
                                      [self.cfg.batch_size, self.cfg.z_dim])
                feed = [que_real, ans_real, z, dropout_prob]
                ops = [self.d_loss, self.summary_op, self.d_train_op]
                d_loss, summary, _ = self.run_gan(self.sess, ops, feed)

            # summary & print message
            if step % (self.cfg.g_per_d_train * 10) == 0:
                print_msg = "[{}/{}] G_loss: {:.6f} D_loss: {:.6f} ".\
                             format(step, self.cfg.max_step, g_loss, d_loss)
                print(print_msg)
                self.writer.add_summary(summary, step)

                # print generated samples
                feed = [que_real, ans_real, z, 1]

                # ans_real.fill(40607)
                # feed = [que_real[:self.cfg.num_samples],
                #         ans_real[:self.cfg.num_samples],
                #         z[:self.cfg.num_samples],
                #         1]
                if self.cfg.dataset == 'nugu':
                    self._print_nugu_samples(feed)
                elif self.cfg.dataset == 'simque':
                    self._print_simque_samples(feed)
                else:
                    raise Exception('Unsupported dataset:', self.cfg.dataset)
Ejemplo n.º 5
0
def main(params):
    """
    Starting point of the application
    """
    backends = [StdOutBackend(Verbosity.VERBOSE)]
    if params.log_dir is not None:
        os.makedirs(params.log_dir, exist_ok=True)
        logfile = os.path.join(params.log_dir, "log.json")
        backends.append(JSONStreamBackend(Verbosity.VERBOSE, logfile))
    logger = Logger(backends)

    # Optimization flags
    os.environ['CUDA_CACHE_DISABLE'] = '0'
    os.environ['HOROVOD_GPU_ALLREDUCE'] = 'NCCL'
    os.environ['TF_CPP_MIN_LOG_LEVEL'] = '3'
    os.environ['TF_GPU_THREAD_MODE'] = 'gpu_private'
    os.environ['TF_SYNC_ON_FINISH'] = '0'
    os.environ['TF_AUTOTUNE_THRESHOLD'] = '2'

    hvd.init()  #init horovod
    #set gpu configurations

    if params.use_xla:
        tf.config.optimizer.set_jit(True)

    gpus = tf.config.experimental.list_physical_devices('GPU')
    for gpu in gpus:
        tf.config.experimental.set_memory_growth(gpu, True)
    if gpus:
        tf.config.experimental.set_visible_devices(gpus[hvd.local_rank()],
                                                   'GPU')

    if params.use_amp:
        tf.keras.mixed_precision.experimental.set_policy('mixed_float16')
    else:
        os.environ['TF_ENABLE_AUTO_MIXED_PRECISION'] = '0'

    # get dataset from tf.data api
    dataset = Dataset(batch_size=params.batch_size,
                      gpu_id=hvd.rank(),
                      num_gpus=hvd.size())

    # Build the  model
    input_shape = (1024, 2048, 3)
    model = custom_unet(
        input_shape,
        num_classes=8,
        use_batch_norm=False,
        upsample_mode='decov',  # 'deconv' or 'simple' 
        use_dropout_on_upsampling=True,
        dropout=0.3,
        dropout_change_per_layer=0.0,
        filters=7,
        num_layers=4,
        output_activation='softmax')
    # do not use model compile as we are using gradientTape

    #start training
    train(params, model, dataset, logger)
Ejemplo n.º 6
0
def get_dataloaders(args):
    if args.dataset == 'miniImageNet':
        from data_loader import MiniImageNet as Dataset
    elif args.dataset == 'CUB':
        from data_loader import CUB as Dataset
    elif args.dataset == 'tieredImageNet':
        from data_loader import TieredImageNet as Dataset

    train_set = Dataset(root=args.data_root, dataset=args.dataset, mode='train',cnn = args.cnn)
    train_sampler = CategoriesSampler(train_set.label, args.iters_per_epoch, args.way, args.shot + args.query)
    train_loader = DataLoader(dataset=train_set, batch_sampler=train_sampler, num_workers=8, pin_memory=True)

    val_set = Dataset(root=args.data_root, dataset=args.dataset, mode='val',cnn = args.cnn)
    val_sampler = CategoriesSampler(val_set.label, args.val_episodes, args.val_way, args.val_shot + args.val_query)
    val_loader = DataLoader(dataset=val_set, batch_sampler=val_sampler, num_workers=8, pin_memory=True)

    return train_loader, val_loader
def test(CV, val_csv_file):
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
    model = select_model(device)
    model.load_state_dict(torch.load(args.load_model))
    model.to(device)
    model.eval()
    val_transform = transforms.Compose([
        transforms.Resize(256),
        transforms.RandomCrop(224),
        transforms.ToTensor()
    ])
    testset = Dataset(csv_file=val_csv_file,
                      root_dir=img_path,
                      transform=val_transform)
    test_loader = torch.utils.data.DataLoader(testset,
                                              batch_size=args.test_batch_size,
                                              shuffle=False,
                                              num_workers=args.num_workers)
    print('***CV_{}***'.format(CV))
    for batch_idx, data in enumerate(test_loader):
        print('image count: {}'.format((batch_idx + 1) * args.test_batch_size),
              end='\r')
        image = data['image'].to(device)
        labels = data['annotations'].to(device).float()
        with torch.no_grad():
            outputs = model(image)
        outputs = outputs.view(-1, 5, 1)
        predicted_mean, predicted_std = 0.0, 0.0
        target_mean, target_std = 0.0, 0.0
        for i in range(5):
            predicted_mean += i * outputs[:, i].cpu()
            target_mean += i * labels[:, i].cpu()
        for i in range(5):
            predicted_std += outputs[:, i].cpu() * (i - predicted_mean)**2
            target_std += labels[:, i].cpu() * (i - target_mean)**2
        if batch_idx == 0:
            predicted = predicted_mean
            target = target_mean
        else:
            predicted = torch.cat((predicted, predicted_mean), 0)
            target = torch.cat((target, target_mean), 0)
        if args.plot:
            output_score = predicted_mean.numpy().flatten().tolist()[0]
            target_score = target_mean.numpy().flatten().tolist()[0]
            output_score_std = predicted_std.numpy().flatten().tolist()[0]
            target_score_std = target_std.numpy().flatten().tolist()[0]
            img = data['image'].cpu().squeeze(0).permute(1, 2, 0).numpy()
            print('beauty score: {:.2f}%{:.2f}({:.2f}%{:.2f})'.format(
                output_score, output_score_std, target_score,
                target_score_std))
            plt.imshow(img)
            plt.show()
    print('EMD LOSS: {:.4f}'.format(emd_loss(target, predicted)))
    print('PC: {:.4f}'.format(pearsonr_loss(target, predicted)))
    print('MAE LOSS: {:.4f}'.format(MAE_loss(target, predicted)))
    print('RMSE LOSS: {:.4f}'.format(RMSE_loss(target, predicted)))
    print('\n')
Ejemplo n.º 8
0
def main():
    #+++++++++++++++++ 1) load and prepare the data
    file_path = r"C:\Users\jojo\Documents\Uni\Second Semester\Machine Learning\Project\ml_project1_data.xlsx"
    ds = Dataset(file_path)

    #+++++++++++++++++ 2) split into train and unseen
    seed = 0
    DF_train, DF_unseen = train_test_split(ds.rm_df.copy(),
                                           test_size=0.2,
                                           stratify=ds.rm_df["Response"],
                                           random_state=seed)

    #+++++++++++++++++ 3) preprocess, based on train
    pr = Processor(DF_train, DF_unseen)

    #+++++++++++++++++ 4) feature engineering
    fe = FeatureEngineer(pr.training, pr.unseen)

    # apply Box-Cox transformations
    # num_features = fe.training._get_numeric_data().drop(['Response'], axis=1).columns
    # fe.box_cox_transformations(num_features, target="Response")

    # rank input features according to Chi-Squared
    # continuous_flist = fe.box_cox_features
    # categorical_flist = ['DT_MS_Divorced', 'DT_MS_Widow', 'DT_E_Master', 'DT_R_5', 'DT_R_6', "Gender"]
    # fe.rank_features_chi_square(continuous_flist, categorical_flist)
    # print("Ranked input features:\n", fe._rank)

    # get top n features
    # criteria, n_top = "chisq", 9
    # DF_train_top, DF_unseen_top = fe.get_top(criteria="chisq", n_top=n_top)

    #+++++++++++++++++ 5) modelling
    # mlp_param_grid = {'mlpc__hidden_layer_sizes': [(3), (6), (3, 3), (5, 5)],
    #                   'mlpc__learning_rate_init': [0.001, 0.01]}
    #
    # mlp_gscv = grid_search_MLP(DF_train_top, mlp_param_grid, seed)
    # print("Best parameter set: ", mlp_gscv.best_params_)
    # pd.DataFrame.from_dict(mlp_gscv.cv_results_).to_excel("D:\\PipeLines\\project_directory\\data\\mlp_gscv.xlsx")

    #+++++++++++++++++ 6) retraining & assessment of generalization ability
    # auprc = assess_generalization_auprc(mlp_gscv.best_estimator_, DF_unseen_top)
    # print("AUPRC: {:.2f}".format(auprc))

    #+++++++++++++++++ X, y split
    y_test = fe.unseen['Response']
    y_train = fe.training['Response']
    X_test = fe.unseen.loc[:, fe.unseen.columns != 'Response']
    X_train = fe.training.loc[:, fe.training.columns != 'Response']
Ejemplo n.º 9
0
    def __init__(self, config):
        self.config         = config
        self.z_num          = config['z_num']
        self.hidden_num     = config['conv_hidden_num']
        self.height         = 256
        self.width          = 256
        self.channels       = 3
        self.repeat_num     = int(np.log2(self.height)) - 2
        self.noise_dim      = 0
        self.model_dir      = config['results_dir']
        self.num_epochs     = config['num_epochs']
        self.batch_size     = config['batch_size']
        self.logger         = Logger(config['log_dir'])
        self.pretrained_path= config['pretrained_path']
        self.log_every      = config['log_every']
        self.save_every     = config['save_every']
        self.print_every    = config['print_every']
        self.is_wgan        = config['is_wgan']

        if not os.path.exists(self.model_dir):
            os.makedirs(self.model_dir)

        self.data_loader_params  = {'batch_size': self.batch_size, 'shuffle': True, 'num_workers': 6}

        if config['use_cuda']:
            self.device = torch.device('cuda')
        else:
            self.device = torch.device('cpu')
        if config['train']:
            self.dataset   = Dataset(**get_split('train'))
            self.generator = data.DataLoader(self.dataset, **self.data_loader_params)
            self.n_samples = get_split('train')['total_data']
        else:
            self.dataset   = Dataset(**get_split('test'))
            self.generator = data.DataLoader(self.dataset, **self.data_loader_params)
            self.n_samples = get_split('train')['total_data']
            'req_id': req_id,
            'num_tags': len(tags)
        }]

print(raw_data)

data_cleaner = Data_cleaner(config, 'predict')
data_cleaner.raw_data = copy.deepcopy(raw_data)
data_cleaner.num_article = len(data_cleaner.raw_data)
data_cleaner.tokenize()

data_manager = Data_manager(config, data_cleaner.raw_data)
tokens_tensor, segments_tensors, label = data_manager.get_fitting_features_labels(
)

dataset = Dataset(config, tokens_tensor, segments_tensors, label)
generator = data.DataLoader(dataset,
                            batch_size=config['val_batch_size'],
                            num_workers=multiprocessing.cpu_count(),
                            pin_memory=True)

# BERT init
bert_model = BertModel.from_pretrained(config['bert_model'])
BERT_LAYERS = config['BERT_LAYERS']
BERT_INTER_LAYER = config['BERT_INTER_LAYER']

# check devices
if torch.cuda.is_available():
    device = torch.device('cuda')
    # move model to GPU
    model.cuda()
Ejemplo n.º 11
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def train(CV, train_csv_file, val_csv_file, file_name):
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
    model = select_model(device)
    loss_fn = nn.MultiLabelSoftMarginLoss()
    metrics = torch.nn.Sigmoid()

    train_transform = transforms.Compose([
        transforms.Resize(256),
        transforms.RandomCrop(224),
        transforms.RandomHorizontalFlip(),
        transforms.RandomRotation(10, resample=PIL.Image.BILINEAR),
        transforms.ToTensor()
    ])

    val_transform = transforms.Compose([
        transforms.Resize(256),
        transforms.RandomCrop(224),
        transforms.ToTensor()
    ])

    os.makedirs(os.path.join(ckpt_path, file_name), exist_ok=True)
    save_path = os.path.join(ckpt_path, file_name)
    logger = Logger(save_path)

    trainset = Dataset(csv_file=train_csv_file,
                       root_dir=img_path,
                       transform=train_transform)
    valset = Dataset(csv_file=val_csv_file,
                     root_dir=img_path,
                     transform=val_transform)

    train_loader = torch.utils.data.DataLoader(
        trainset,
        batch_size=args.train_batch_size,
        shuffle=True,
        num_workers=args.num_workers)
    val_loader = torch.utils.data.DataLoader(valset,
                                             batch_size=args.val_batch_size,
                                             shuffle=False,
                                             num_workers=args.num_workers)

    optimizer = optim.Adam([{
        'params': model.features.parameters(),
        'lr': args.CONV_LR
    }, {
        'params': model.classifier.parameters(),
        'lr': args.DENSE_LR
    }])

    # send hyperparams
    info = ({
        'train_batch_size': args.train_batch_size,
        'val_batch_size': args.val_batch_size,
        'conv_base_lr': args.CONV_LR,
        'dense_lr': args.DENSE_LR,
    })

    for tag, value in info.items():
        logger.scalar_summary(tag, value, 0)

    param_num = 0
    for param in model.parameters():
        param_num += int(np.prod(param.shape))
    print('Trainable params: %.2f million' % (param_num / 1e6))
    #loss_fn = softCrossEntropy()

    best_val_loss = float('inf')
    train_losses, val_losses = [], []
    train_pc, val_pc = [], []
    train_mae, val_mae = [], []
    train_rmse, val_rmse = [], []
    for epoch in range(0, args.EPOCHS):
        start = time.time()
        for batch_idx, data in enumerate(train_loader):
            images = data['image'].to(device)
            labels = data['annotations'].to(device).float()
            model.train()
            outputs = model(images)
            outputs = outputs.view(-1, 5, 1)
            optimizer.zero_grad()
            outprobs = metrics(outputs)
            predicted_mean, target_mean = 0.0, 0.0

            for i in range(5):
                predicted_mean += i * outprobs[:, i].cpu()
                target_mean += i * labels[:, i].cpu()
            if batch_idx == 0:
                predicted = predicted_mean
                target = target_mean
                predicted_prob = outputs.cpu()
                target_prob = labels.cpu()
            else:
                predicted = torch.cat((predicted, predicted_mean), 0)
                target = torch.cat((target, target_mean), 0)
                predicted_prob = torch.cat((predicted_prob, outputs.cpu()), 0)
                target_prob = torch.cat((target_prob, labels.cpu()), 0)

            PC = pearsonr_loss(target_mean, predicted_mean)
            MAE = MAE_loss(target_mean, predicted_mean)
            RMSE = RMSE_loss(target_mean, predicted_mean)
            loss = loss_fn(outputs, labels)

            loss.backward()
            optimizer.step()

            if batch_idx > 0:
                print(
                    '\rCV{} Epoch: {}/{} | CE: {:.4f} | PC: {:.4f} | MAE: {:.4f} | RMSE: {:.4f} | [{}/{} ({:.0f}%)] | Time: {}  '
                    .format(
                        CV, epoch + 1, args.EPOCHS, loss, PC, MAE, RMSE,
                        batch_idx * args.train_batch_size,
                        len(train_loader.dataset), 100. * batch_idx *
                        args.train_batch_size / len(train_loader.dataset),
                        timeSince(
                            start, batch_idx * args.train_batch_size /
                            len(train_loader.dataset))),
                    end='')

        train_losses.append(loss_fn(predicted_prob, target_prob))
        train_pc.append(pearsonr_loss(target, predicted))
        train_mae.append(MAE_loss(target, predicted))
        train_rmse.append(RMSE_loss(target, predicted))

        # do validation after each epoch
        for batch_idx, data in enumerate(val_loader):
            images = data['image'].to(device)
            labels = data['annotations'].to(device).float()
            with torch.no_grad():
                model.eval()
                outputs = model(images)
            outputs = outputs.view(-1, 5, 1)
            outprobs = metrics(outputs)
            predicted_mean, target_mean = 0.0, 0.0
            for i in range(5):
                predicted_mean += i * outprobs[:, i].cpu()
                target_mean += i * labels[:, i].cpu()
            if batch_idx == 0:
                predicted = predicted_mean
                target = target_mean
                predicted_prob = outputs.cpu()
                target_prob = labels.cpu()
            else:
                predicted = torch.cat((predicted, predicted_mean), 0)
                target = torch.cat((target, target_mean), 0)
                predicted_prob = torch.cat((predicted_prob, outputs.cpu()), 0)
                target_prob = torch.cat((target_prob, labels.cpu()), 0)

        val_losses.append(loss_fn(predicted_prob, target_prob))
        val_pc.append(pearsonr_loss(target, predicted))
        val_mae.append(MAE_loss(target, predicted))
        val_rmse.append(RMSE_loss(target, predicted))

        info = {
            'conv_base_lr': args.CONV_LR,
            'dense_lr': args.DENSE_LR,
            'train CE loss': train_losses[-1],
            'train mae loss': train_mae[-1],
            'train rmse loss': train_rmse[-1],
            'train pc': train_pc[-1],
            'val CE loss': val_losses[-1],
            'val mae loss': val_mae[-1],
            'val rmse loss': val_rmse[-1],
            'val pc': val_pc[-1]
        }
        for tag, value in info.items():
            logger.scalar_summary(tag, value, epoch + 1)

        print(
            '\ntrain CE %.4f | train PC %.4f | train MAE %.4f | train RMSE: %.4f'
            % (train_losses[-1], train_pc[-1], train_mae[-1], train_rmse[-1]))
        print(
            'valid CE %.4f | valid PC %.4f | valid MAE %.4f | valid RMSE: %.4f'
            % (val_losses[-1], val_pc[-1], val_mae[-1], val_rmse[-1]))

        # Use early stopping to monitor training
        if val_losses[-1] < best_val_loss:
            best_val_loss = val_losses[-1]
            # save model weights if val loss decreases
            torch.save(model.state_dict(),
                       os.path.join(save_path, 'BCE-%f.pkl' % (best_val_loss)))
            print('Save Improved Model(BCE_loss = %.6f)...' % (best_val_loss))
            # reset stop_count
        if args.save_fig and (epoch + 1) % 100 == 0:
            epochs = range(1, epoch + 2)
            plt.plot(epochs, train_losses, 'b-', label='train CE')
            plt.plot(epochs, val_losses, 'g-', label='val CE')
            plt.plot(epochs, train_pc, 'r-', label='train pc')
            plt.plot(epochs, val_pc, 'y', label='val pc')
            plt.title('CE loss')
            plt.legend()
            plt.savefig(save_path + 'loss.png')
Ejemplo n.º 12
0
    def __init__(self, debug, f):
        self.log = sys.stdout if debug else open(f, "a+")

    def __call__(self, sth):
        print(str(sth), file=self.log, flush=True)


log = os.path.join(args.outf, "log_%s_%s.txt" % (args.log_mark, args.mode))
logprinter = LogPrinter(args.debug, log)
logprinter(args._get_kwargs())

# Set up data
contentPath = args.UHD_contentPath if args.UHD else args.contentPath
stylePath = args.UHD_stylePath if args.UHD else args.stylePath
dataset = Dataset(contentPath, stylePath, args.texturePath, args.content_size,
                  args.style_size, args.picked_content_mark,
                  args.picked_style_mark, args.synthesis, args.debug)
loader = torch.utils.data.DataLoader(dataset=dataset,
                                     batch_size=1,
                                     shuffle=False)

# Set up model and transform
wct = WCT(args).cuda()


@torch.no_grad()
def styleTransfer(encoder, decoder, contentImg, styleImg, csF):
    sF = encoder(styleImg)
    torch.cuda.empty_cache()  # empty cache to save memory
    cF = encoder(contentImg)
    torch.cuda.empty_cache()
Ejemplo n.º 13
0
        loss = capsule_net.loss(data, output, target, reconstructions)

        test_loss += loss.data[0]
        correct += sum(
            np.argmax(masked.data.cpu().numpy(), 1) == np.argmax(
                target.data.cpu().numpy(), 1))

    tqdm.write("Epoch: [{}/{}], test accuracy: {:.6f}, loss: {:.6f}".format(
        epoch, N_EPOCHS, correct / len(test_loader.dataset),
        test_loss / len(test_loader)))


if __name__ == '__main__':
    torch.manual_seed(1)
    dataset = 'cifar10'
    # dataset = 'mnist'
    config = Config(dataset)
    mnist = Dataset(dataset, BATCH_SIZE)

    capsule_net = CapsNet(config)
    capsule_net = torch.nn.DataParallel(capsule_net)
    if USE_CUDA:
        capsule_net = capsule_net.cuda()
    capsule_net = capsule_net.module

    optimizer = torch.optim.Adam(capsule_net.parameters())

    for e in range(1, N_EPOCHS + 1):
        train(capsule_net, optimizer, mnist.train_loader, e)
        test(capsule_net, mnist.test_loader, e)
Ejemplo n.º 14
0
def main():
    cfg, args = _parse_args()
    torch.manual_seed(args.seed)

    output_base = cfg.OUTPUT_DIR if len(cfg.OUTPUT_DIR) > 0 else './output'
    exp_name = '-'.join([
        datetime.now().strftime("%Y%m%d-%H%M%S"), cfg.MODEL.ARCHITECTURE,
        str(cfg.INPUT.IMG_SIZE)
    ])
    output_dir = get_outdir(output_base, exp_name)
    with open(os.path.join(output_dir, 'config.yaml'), 'w',
              encoding='utf-8') as file_writer:
        # cfg.dump(stream=file_writer, default_flow_style=False, indent=2, allow_unicode=True)
        file_writer.write(pyaml.dump(cfg))
    logger = setup_logger(file_name=os.path.join(output_dir, 'train.log'),
                          control_log=False,
                          log_level='INFO')

    # create model
    model = create_model(cfg.MODEL.ARCHITECTURE,
                         num_classes=cfg.MODEL.NUM_CLASSES,
                         pretrained=True,
                         in_chans=cfg.INPUT.IN_CHANNELS,
                         drop_rate=cfg.MODEL.DROP_RATE,
                         drop_connect_rate=cfg.MODEL.DROP_CONNECT,
                         global_pool=cfg.MODEL.GLOBAL_POOL)

    os.environ['CUDA_VISIBLE_DEVICES'] = args.gpu
    gpu_list = list(map(int, args.gpu.split(',')))
    device = 'cuda'
    if len(gpu_list) == 1:
        model.cuda()
        torch.backends.cudnn.benchmark = True
    elif len(gpu_list) > 1:
        model = nn.DataParallel(model, device_ids=gpu_list)
        model = convert_model(model).cuda()
        torch.backends.cudnn.benchmark = True
    else:
        device = 'cpu'
    logger.info('device: {}, gpu_list: {}'.format(device, gpu_list))

    optimizer = create_optimizer(cfg, model)

    # optionally initialize from a checkpoint
    if args.initial_checkpoint and os.path.isfile(args.initial_checkpoint):
        load_checkpoint(model, args.initial_checkpoint)

    # optionally resume from a checkpoint
    resume_state = None
    resume_epoch = None
    if args.resume and os.path.isfile(args.resume):
        resume_state, resume_epoch = resume_checkpoint(model, args.resume)
    if resume_state and not args.no_resume_opt:
        if 'optimizer' in resume_state:
            optimizer.load_state_dict(resume_state['optimizer'])
            logger.info('Restoring optimizer state from [{}]'.format(
                args.resume))

    start_epoch = 0
    if args.start_epoch is not None:
        start_epoch = args.start_epoch
    elif resume_epoch is not None:
        start_epoch = resume_epoch

    model_ema = None
    if cfg.SOLVER.EMA:
        # Important to create EMA model after cuda()
        model_ema = ModelEma(model,
                             decay=cfg.SOLVER.EMA_DECAY,
                             device=device,
                             resume=args.resume)

    lr_scheduler, num_epochs = create_scheduler(cfg, optimizer)
    if lr_scheduler is not None and start_epoch > 0:
        lr_scheduler.step(start_epoch)

    # summary
    print('=' * 60)
    print(cfg)
    print('=' * 60)
    print(model)
    print('=' * 60)
    summary(model, (3, cfg.INPUT.IMG_SIZE, cfg.INPUT.IMG_SIZE))

    # dataset
    dataset_train = Dataset(cfg.DATASETS.TRAIN)
    dataset_valid = Dataset(cfg.DATASETS.TEST)
    train_loader = create_loader(dataset_train, cfg, is_training=True)
    valid_loader = create_loader(dataset_valid, cfg, is_training=False)

    # loss function
    if cfg.SOLVER.LABEL_SMOOTHING > 0:
        train_loss_fn = LabelSmoothingCrossEntropy(
            smoothing=cfg.SOLVER.LABEL_SMOOTHING).to(device)
        validate_loss_fn = nn.CrossEntropyLoss().to(device)
    else:
        train_loss_fn = nn.CrossEntropyLoss().to(device)
        validate_loss_fn = train_loss_fn

    eval_metric = cfg.SOLVER.EVAL_METRIC
    best_metric = None
    best_epoch = None
    saver = CheckpointSaver(
        checkpoint_dir=output_dir,
        recovery_dir=output_dir,
        decreasing=True if eval_metric == 'loss' else False)
    try:
        for epoch in range(start_epoch, num_epochs):
            train_metrics = train_epoch(epoch,
                                        model,
                                        train_loader,
                                        optimizer,
                                        train_loss_fn,
                                        cfg,
                                        logger,
                                        lr_scheduler=lr_scheduler,
                                        saver=saver,
                                        device=device,
                                        model_ema=model_ema)

            eval_metrics = validate(epoch, model, valid_loader,
                                    validate_loss_fn, cfg, logger)

            if model_ema is not None:
                ema_eval_metrics = validate(epoch, model_ema.ema, valid_loader,
                                            validate_loss_fn, cfg, logger)
                eval_metrics = ema_eval_metrics

            if lr_scheduler is not None:
                # step LR for next epoch
                lr_scheduler.step(epoch + 1, eval_metrics[eval_metric])

            update_summary(epoch,
                           train_metrics,
                           eval_metrics,
                           os.path.join(output_dir, 'summary.csv'),
                           write_header=best_metric is None)

            if saver is not None:
                # save proper checkpoint with eval metric
                save_metric = eval_metrics[eval_metric]
                best_metric, best_epoch = saver.save_checkpoint(
                    model,
                    optimizer,
                    cfg,
                    epoch=epoch,
                    model_ema=model_ema,
                    metric=save_metric)

    except KeyboardInterrupt:
        pass
    if best_metric is not None:
        logger.info('*** Best metric: {0} (epoch {1})'.format(
            best_metric, best_epoch))
Ejemplo n.º 15
0
def align(lang,
          checkpoint_path,
          dataset_path,
          config,
          config_class,
          model_class,
          tokenizer_class,
          output="output"):
    #####
    print("encoding %s in lang %d using ckpt %s" %
          (dataset_path, lang, checkpoint_path))
    #####
    model_name_or_path = config.get("model_name_or_path", "xlm-mlm-enfr-1024")
    config_cache_dir = config.get("pretrained_config_cache_dir")
    model_cache_dir = config.get("pretrained_model_cache_dir")
    tokenizer_cache_dir = config.get("pretrained_tokenizer_cache_dir")
    model_name_or_path_ = config.get("model_name_or_path_",
                                     "xlm-mlm-enfr-1024")
    #####
    dataset = Dataset(dataset_path,
                      config.get("training_data_save_path"),
                      config.get("seq_size"),
                      config.get("max_sents"),
                      config.get("do_shuffle"),
                      config.get("do_skip_empty"),
                      procedure="align",
                      model_name_or_path=model_name_or_path,
                      tokenizer_class=tokenizer_class,
                      tokenizer_cache_dir=tokenizer_cache_dir)
    pretrained_config = config_class.from_pretrained(
        model_name_or_path,
        cache_dir=config_cache_dir if config_cache_dir else None)
    model = model_class.from_pretrained(
        model_name_or_path_,
        config=pretrained_config,
        cache_dir=model_cache_dir if model_cache_dir else None)
    checkpoint = tf.train.Checkpoint(model=model)
    checkpoint_manager = tf.train.CheckpointManager(checkpoint,
                                                    config["model_dir"],
                                                    max_to_keep=5)
    if checkpoint_manager.latest_checkpoint is not None:

        if checkpoint_path == None:
            checkpoint_path = checkpoint_manager.latest_checkpoint
        tf.get_logger().info("Restoring parameters from %s", checkpoint_path)
        checkpoint.restore(checkpoint_path)
    iterator = iter(dataset.create_one_epoch(mode="p", lang=lang))

    @tf.function
    def encode_next():
        src, tgt = next(iterator)
        src_padding_mask = build_mask(src["input_ids"], src["lengths"])
        tgt_padding_mask = build_mask(tgt["input_ids"], tgt["lengths"])
        sign = -1.0
        align, _, _, _, _ = model((src, tgt),
                                  sign_src=sign,
                                  sign_tgt=sign,
                                  src_padding_mask=src_padding_mask,
                                  tgt_padding_mask=tgt_padding_mask,
                                  training=False)
        tf.print(align, summarize=1000)
        return align

    import matplotlib.pyplot as plt
    import seaborn as sns
    align_ = None
    while True:
        try:
            align = encode_next()
            align_ = tf.squeeze(align).numpy()
        except tf.errors.OutOfRangeError:
            break

    fig, ax = plt.subplots(figsize=(6, 6))
    ax = sns.heatmap(align_, linewidths=.5, ax=ax, cbar=False)
    fig.savefig('heatmap_align.pgf')

    return True
Ejemplo n.º 16
0
def train(model_name="LSTM", params=None, embedding="Random"):

    # Parameters to tune
    print(params)
    batch_size = params["batch_size"]
    num_epochs = params["num_epochs"]
    oversample = params["oversample"]
    soft_labels = params["soft_labels"]
    if model_name == "LSTM":
        learning_rate = params["learning_rate"]
        hidden_dim = params["hidden_dim"]
        num_layers = params["num_layers"]
        dropout = params["dropout"]
        combine = embedding == "Both"

    embedding_dim = 300

    if combine:
        embedding = "Random"

    if model_name == "Bert":
        learning_rate = params["learning_rate"]
        num_warmup_steps = params["num_warmup_steps"]
        num_total_steps = params["num_total_steps"]
        embedding = "None"

    # Constants
    test_percentage = 0.1
    val_percentage = 0.2

    # Load data
    torch.manual_seed(42)
    dataset = Dataset("../data/cleaned_tweets_orig.csv",
                      use_embedding=embedding,
                      embedd_dim=embedding_dim,
                      for_bert=(model_name == "Bert"),
                      combine=combine)
    train_data, val_test_data = split_dataset(dataset,
                                              test_percentage + val_percentage)
    val_data, test_data = split_dataset(
        val_test_data, test_percentage / (test_percentage + val_percentage))
    train_loader, val_loader, weights = load_data(oversample, train_data,
                                                  val_data, batch_size)

    # Define model
    if model_name == "CNN":
        vocab_size = len(dataset.vocab)
        model = CNN(vocab_size,
                    embedding_dim=embedding_dim,
                    combine=params["combine"],
                    n_filters=params["filters"])
    elif model_name == "LSTM":

        vocab_size = len(dataset.vocab)
        model = LSTM(vocab_size,
                     embedding_dim,
                     batch_size=batch_size,
                     hidden_dim=hidden_dim,
                     lstm_num_layers=num_layers,
                     combine=combine,
                     dropout=dropout)
    elif model_name == "Bert":
        model = BertForSequenceClassification.from_pretrained(
            "bert-base-uncased", num_labels=3)
        train_loader, val_loader, weights = load_data(oversample,
                                                      train_data,
                                                      val_data,
                                                      batch_size,
                                                      collate_fn=bert_collate)

    if not model_name == "Bert":
        model.embedding.weight.data.copy_(dataset.vocab.vectors)
        if combine:
            model.embedding_glove.weight.data.copy_(dataset.glove.vectors)

    # cuda
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
    model.to(device)

    # optimiser
    scheduler = None
    optimizer = optim.Adam(model.parameters(), lr=params["learning_rate"])

    if model_name == "Bert":
        optimizer = AdamW(model.parameters(),
                          lr=learning_rate,
                          correct_bias=False)
        # Linear scheduler for adaptive lr
        scheduler = WarmupLinearSchedule(optimizer,
                                         warmup_steps=num_warmup_steps,
                                         t_total=num_total_steps)

    # weighted cross entropy loss, by class counts of other classess
    weights = torch.tensor([0.9414, 0.2242, 0.8344], device=device)
    if soft_labels:
        criterion = weighted_soft_cross_entropy
    else:
        criterion = nn.CrossEntropyLoss(weight=weights)
    eval_criterion = nn.CrossEntropyLoss(weight=weights)

    for epoch in range(num_epochs):
        # train
        epoch_loss, epoch_acc = train_epoch(model,
                                            train_loader,
                                            optimizer,
                                            criterion,
                                            device,
                                            scheduler=scheduler,
                                            weights=weights)

        # realtime feel
        print(f'Epoch: {epoch+1}')
        print(
            f'\tTrain Loss: {epoch_loss:.5f} | Train Acc: {epoch_acc*100:.2f}%'
        )

    # Compute F1 score on validation set - this is what we optimise during tuning
    loss, acc, predictions, ground_truth = evaluate_epoch(model,
                                                          val_loader,
                                                          eval_criterion,
                                                          device,
                                                          is_final=True)
    val_f1 = f1_score(y_true=ground_truth, y_pred=predictions, average="macro")
    print("Done")
    return val_f1
Ejemplo n.º 17
0
def resume_train_gan(meta_file,
                     checkpoint_path,
                     train_data_dir,
                     val_data_dir,
                     output_dir,
                     num_epochs,
                     batch_size=16,
                     eval_val=True,
                     save_eval_img=True,
                     num_eval_img=100,
                     device='/gpu:0',
                     img_dim=256):
    # Set up output directories
    val_dir = output_dir + 'val_results/'
    val_img_dir = val_dir + 'imgs/'
    train_dir = output_dir + 'train_results/'
    trained_sess_dir = output_dir + 'trained_sess/'
    if not os.path.exists(val_dir):
        os.makedirs(val_dir)
    if not os.path.exists(val_img_dir):
        os.makedirs(val_img_dir)
    if not os.path.exists(train_dir):
        os.makedirs(train_dir)
    if not os.path.exists(trained_sess_dir):
        os.makedirs(trained_sess_dir)

    # Get the trained model configuration
    configs = checkpoint_path.split('/')[-1]
    pre_epoch = int(configs.split('_')[-1])
    params_str = configs.split('_')[:-2]
    params_str = '_'.join(params_str)

    # Output file paths
    train_log_file = train_dir + 'train_log_{}.txt'.format(params_str)
    train_img_file = train_dir + 'train_gen_examples_epoch_'
    val_log_file = val_dir + 'val_log_{}.txt'.format(params_str)
    val_csv_file = val_dir + 'val_metrics_{}'.format(params_str)

    # Initialize the log files
    start_msg = local_clock(
    ) + '  Resumed training model with {} and {} epochs\n'.format(
        params_str, pre_epoch)
    print(start_msg)
    with open(train_log_file, 'w') as handle:
        handle.write(start_msg)
        handle.write('device={}\n'.format(device))
    with open(val_log_file, 'w') as handle:
        handle.write(start_msg)
        handle.write('device={}\n'.format(device))

    # Get the data set
    train_gray_dir = train_data_dir + 'gray/'
    train_color_dir = train_data_dir + 'color/'
    val_gray_dir = val_data_dir + 'gray/'
    val_color_dir = val_data_dir + 'color/'
    train_data = Dataset(train_gray_dir,
                         train_color_dir,
                         batch_size,
                         img_dim,
                         shuffle=True)
    train_example_data = Dataset(train_gray_dir,
                                 train_color_dir,
                                 batch_size,
                                 img_dim,
                                 shuffle=False)
    val_data = Dataset(val_gray_dir,
                       val_color_dir,
                       batch_size,
                       img_dim,
                       shuffle=False)

    # Restore the trained session and evaluate on the evlation dataset
    with tf.Session() as sess:
        new_saver = tf.train.import_meta_graph(meta_file)
        new_saver.restore(sess, checkpoint_path)

        # Restore the variables
        is_training = tf.get_collection('is_training')[0]
        gray_img = tf.get_collection('gray_img')[0]
        color_img = tf.get_collection('color_img')[0]
        G_sample = tf.get_collection('G_sample')[0]
        D_loss = tf.get_collection('D_loss')[0]
        G_loss = tf.get_collection('G_loss')[0]
        img_loss = tf.get_collection('img_loss')[0]
        mse = tf.get_collection('mse')[0]
        D_train_op = tf.get_collection('D_train_op')[0]
        G_train_op = tf.get_collection('G_train_op')[0]

        for epoch in range(pre_epoch + 1, pre_epoch + 1 + num_epochs):
            print(local_clock() + '  Started epoch %d' % (epoch))
            for t, (gray_img_np, color_img_np) in enumerate(train_data):
                gray_processed_np = preprocess(gray_img_np)
                color_processed_np = preprocess(color_img_np)
                feed_dict = {
                    gray_img: gray_processed_np,
                    color_img: color_processed_np,
                    is_training: True
                }
                _, D_loss_np = sess.run([D_train_op, D_loss],
                                        feed_dict=feed_dict)
                _, G_loss_np, img_loss_np = sess.run(
                    [G_train_op, G_loss, img_loss], feed_dict=feed_dict)
                mse_np = sess.run(mse, feed_dict=feed_dict)

            # Save the results to the train log file
            epoch_train_time = local_clock() + '\n'
            epoch_train_msg = 'Epoch %d  D loss: %0.4f  G loss: %0.4f  img loss: %0.4f  MSE: %0.4f' % (
                epoch, D_loss_np, G_loss_np, img_loss_np, mse_np)
            print(local_clock() + '  ' + epoch_train_msg)
            epoch_train_msg += '\n'
            with open(train_log_file, 'a') as handle:
                handle.write('\n')
                handle.write(epoch_train_time)
                handle.write(epoch_train_msg)

            # Save examples of generated images
            for j, (gray_example_np,
                    color_example_np) in enumerate(train_example_data):
                gray_example_processed_np = preprocess(gray_example_np)
                color_example_processed_np = preprocess(color_example_np)
                break  # only load the first batch as examples
            example_feed_dict = {
                gray_img: gray_example_processed_np,
                color_img: color_example_processed_np,
                is_training: False
            }
            gen_example_np = sess.run(G_sample, feed_dict=example_feed_dict)
            gen_example_np = postprocess(gen_example_np)
            show_images(gen_example_np,
                        post_process=False,
                        save=True,
                        filepath=train_img_file + str(epoch) + '.png')

            # If true, evaluate on the validation data set
            if eval_val:
                val_log_note = 'Epoch ' + str(epoch)
                epoch_val_img_dir = val_img_dir + 'epoch' + str(epoch) + '/'
                if not os.path.exists(epoch_val_img_dir):
                    os.makedirs(epoch_val_img_dir)
                epoch_val_csv = val_csv_file + '_epoch' + str(epoch) + '.csv'
                evaluate_model(sess=sess,
                               graph_gray=gray_img,
                               graph_color=color_img,
                               graph_training=is_training,
                               graph_D_loss=D_loss,
                               graph_G_loss=G_loss,
                               graph_img_loss=img_loss,
                               graph_G_sample=G_sample,
                               dataset=val_data,
                               log_filename=val_log_file,
                               log_note=val_log_note,
                               csv_filename=epoch_val_csv,
                               output_imgs=save_eval_img,
                               img_dir=epoch_val_img_dir,
                               num_eval_img=num_eval_img)

            # Save the session when the epoch is done
            saver = tf.train.Saver()
            sess_name = params_str + '_epoch_' + str(epoch)
            sess_file = trained_sess_dir + sess_name
            saver.save(sess, sess_file)

            print(local_clock() + '  Finished epoch %d' % (epoch))
            print('')
    return
Ejemplo n.º 18
0
def evaluate_trained_gan(meta_file,
                         checkpoint_path,
                         eval_data_dir,
                         output_dir,
                         num_eval_img=100,
                         batch_size=16,
                         img_dim=256):
    # Set up output directories
    eval_dir = output_dir + 'eval_results/'
    eval_img_dir = eval_dir + 'imgs/'
    if not os.path.exists(eval_dir):
        os.makedirs(eval_dir)
    if not os.path.exists(eval_img_dir):
        os.makedirs(eval_img_dir)

    # Output file paths
    eval_log_file = eval_dir + 'eval_log.txt'
    eval_csv_file = eval_dir + 'eval_metrics.csv'

    # Initialize the log file
    start_msg = local_clock() + '  Started evaluating model.'
    with open(eval_log_file, 'w') as handle:
        handle.write(start_msg)
        handle.write('meta file: ' + meta_file + '\n')
        handle.write('checkpoint path: ' + checkpoint_path + '\n')
        handle.write('eval data directory: ' + eval_data_dir + '\n')

    # Get the data set
    eval_gray_dir = eval_data_dir + 'gray/'
    eval_color_dir = eval_data_dir + 'color/'
    eval_data = Dataset(eval_gray_dir,
                        eval_color_dir,
                        batch_size,
                        img_dim,
                        shuffle=False)

    # Restore the trained session and evaluate on the evlation dataset
    with tf.Session() as sess:
        new_saver = tf.train.import_meta_graph(meta_file)
        new_saver.restore(sess, checkpoint_path)

        # Restore the variables
        is_training = tf.get_collection('is_training')[0]
        gray_img = tf.get_collection('gray_img')[0]
        color_img = tf.get_collection('color_img')[0]
        G_sample = tf.get_collection('G_sample')[0]
        D_loss = tf.get_collection('D_loss')[0]
        G_loss = tf.get_collection('G_loss')[0]
        img_loss = tf.get_collection('img_loss')[0]
        mse = tf.get_collection('mse')[0]
        D_train_op = tf.get_collection('D_train_op')[0]
        G_train_op = tf.get_collection('G_train_op')[0]

        evaluate_model(sess=sess,
                       graph_gray=gray_img,
                       graph_color=color_img,
                       graph_training=is_training,
                       graph_D_loss=D_loss,
                       graph_G_loss=G_loss,
                       graph_img_loss=img_loss,
                       graph_G_sample=G_sample,
                       dataset=eval_data,
                       log_filename=eval_log_file,
                       log_note='Finished evaluating.',
                       csv_filename=eval_csv_file,
                       output_imgs=True,
                       img_dir=eval_img_dir,
                       num_eval_img=num_eval_img)
    return
Ejemplo n.º 19
0
def train_gan(train_data_dir,
              val_data_dir,
              output_dir,
              D_lr,
              G_lr,
              beta1,
              reg,
              num_epochs,
              loss='l2',
              batch_size=16,
              eval_val=True,
              save_eval_img=True,
              num_eval_img=100,
              device='/gpu:0',
              img_dim=256):
    # Set up the image loss function
    if loss == 'l2':
        loss_method = l2_loss
    elif loss == 'l1':
        loss_method = l1_loss

    # Set up output directories
    val_dir = output_dir + 'val_results/'
    val_img_dir = val_dir + 'imgs/'
    train_dir = output_dir + 'train_results/'
    trained_sess_dir = output_dir + 'trained_sess/'
    if not os.path.exists(val_dir):
        os.makedirs(val_dir)
    if not os.path.exists(val_img_dir):
        os.makedirs(val_img_dir)
    if not os.path.exists(train_dir):
        os.makedirs(train_dir)
    if not os.path.exists(trained_sess_dir):
        os.makedirs(trained_sess_dir)

    # Output file paths
    train_log_file = train_dir + 'train_log_Dlr={}_Glr={}_beta1={}_reg={}_loss={}.txt'.format(
        D_lr, G_lr, beta1, reg, loss)
    train_img_file = train_dir + 'train_gen_examples_epoch_'
    val_log_file = val_dir + 'val_log_Dlr={}_Glr={}_beta1={}_reg={}_loss={}.txt'.format(
        D_lr, G_lr, beta1, reg, loss)
    val_csv_file = val_dir + 'val_metrics_Dlr={}_Glr={}_beta1={}_reg={}_loss={}'.format(
        D_lr, G_lr, beta1, reg, loss)

    # Initialize the log files
    start_msg = local_clock(
    ) + '  Started training model with D_lr={}, G_lr={}, beta1={}, reg={}\n'.format(
        D_lr, G_lr, beta1, reg)
    print(start_msg)
    with open(train_log_file, 'w') as handle:
        handle.write(start_msg)
        handle.write('device={}\n'.format(device))
    with open(val_log_file, 'w') as handle:
        handle.write(start_msg)
        handle.write('device={}\n'.format(device))

    # Get the data set
    train_gray_dir = train_data_dir + 'gray/'
    train_color_dir = train_data_dir + 'color/'
    val_gray_dir = val_data_dir + 'gray/'
    val_color_dir = val_data_dir + 'color/'
    train_data = Dataset(train_gray_dir,
                         train_color_dir,
                         batch_size,
                         img_dim,
                         shuffle=True)
    train_example_data = Dataset(train_gray_dir,
                                 train_color_dir,
                                 batch_size,
                                 img_dim,
                                 shuffle=False)
    val_data = Dataset(val_gray_dir,
                       val_color_dir,
                       batch_size,
                       img_dim,
                       shuffle=False)

    # Construct computational graph
    tf.reset_default_graph()  # reset the graph
    with tf.device(device):
        is_training = tf.placeholder(tf.bool, name='is_training')
        gray_img = tf.placeholder(tf.float32, [None, img_dim, img_dim, 1])
        color_img = tf.placeholder(tf.float32, [None, img_dim, img_dim, 4])

        pair_real = tf.concat([gray_img, color_img], axis=3)
        G_sample = generator(gray_img, is_training)
        pair_fake = tf.concat([gray_img, G_sample], axis=3)

        with tf.variable_scope('') as scope:
            logits_real = discriminator(pair_real, is_training)
            scope.reuse_variables()
            logits_fake = discriminator(pair_fake, is_training)

        # Get the list of trainable variables for the discriminator and generator
        D_vars = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES,
                                   'discriminator')
        G_vars = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES,
                                   'generator')

        # Get solvers
        D_solver, G_solver = get_solvers(D_lr=D_lr, G_lr=G_lr, beta1=beta1)

        # Compute the losses
        D_loss, G_loss = gan_loss(logits_real, logits_fake)
        img_loss = loss_method(G_sample, color_img, reg=reg)

        # Calculate the MSE between generated images and original color images
        mse = calculate_mse(G_sample, color_img)

        # Set up the training operations
        D_update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS,
                                         'discriminator')
        with tf.control_dependencies(D_update_ops):
            D_train_op = D_solver.minimize(D_loss, var_list=D_vars)

        G_update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS, 'generator')
        with tf.control_dependencies(G_update_ops):
            G_train_op = G_solver.minimize(G_loss + img_loss, var_list=G_vars)

        # Remember the nodes we want to run in the future
        tf.add_to_collection('is_training', is_training)
        tf.add_to_collection('gray_img', gray_img)
        tf.add_to_collection('color_img', color_img)
        tf.add_to_collection('G_sample', G_sample)
        tf.add_to_collection('D_loss', D_loss)
        tf.add_to_collection('G_loss', G_loss)
        tf.add_to_collection('img_loss', img_loss)
        tf.add_to_collection('mse', mse)
        tf.add_to_collection('D_train_op', D_train_op)
        tf.add_to_collection('G_train_op', G_train_op)

    # Training loop
    with tf.Session() as sess:
        sess.run(tf.global_variables_initializer())
        for epoch in range(num_epochs):
            print(local_clock() + '  Started epoch %d' % (epoch))
            for t, (gray_img_np, color_img_np) in enumerate(train_data):
                gray_processed_np = preprocess(gray_img_np)
                color_processed_np = preprocess(color_img_np)
                feed_dict = {
                    gray_img: gray_processed_np,
                    color_img: color_processed_np,
                    is_training: True
                }
                _, D_loss_np = sess.run([D_train_op, D_loss],
                                        feed_dict=feed_dict)
                _, G_loss_np, img_loss_np = sess.run(
                    [G_train_op, G_loss, img_loss], feed_dict=feed_dict)
                mse_np = sess.run(mse, feed_dict=feed_dict)

            # Save the results to the train log file
            epoch_train_time = local_clock() + '\n'
            epoch_train_msg = 'Epoch %d  D loss: %0.4f  G loss: %0.4f  img loss: %0.4f  MSE: %0.4f' % (
                epoch, D_loss_np, G_loss_np, img_loss_np, mse_np)
            print(local_clock() + '  ' + epoch_train_msg)
            epoch_train_msg += '\n'
            with open(train_log_file, 'a') as handle:
                handle.write('\n')
                handle.write(epoch_train_time)
                handle.write(epoch_train_msg)

            # Save examples of generated images
            for j, (gray_example_np,
                    color_example_np) in enumerate(train_example_data):
                gray_example_processed_np = preprocess(gray_example_np)
                color_example_processed_np = preprocess(color_example_np)
                break  # only load the first batch as examples
            example_feed_dict = {
                gray_img: gray_example_processed_np,
                color_img: color_example_processed_np,
                is_training: False
            }
            gen_example_np = sess.run(G_sample, feed_dict=example_feed_dict)
            gen_example_np = postprocess(gen_example_np)
            show_images(gen_example_np,
                        post_process=False,
                        save=True,
                        filepath=train_img_file + str(epoch) + '.png')

            # If true, evaluate on the validation data set
            if eval_val:
                val_log_note = 'Epoch ' + str(epoch)
                epoch_val_img_dir = val_img_dir + 'epoch' + str(epoch) + '/'
                if not os.path.exists(epoch_val_img_dir):
                    os.makedirs(epoch_val_img_dir)
                epoch_val_csv = val_csv_file + '_epoch' + str(epoch) + '.csv'
                evaluate_model(sess=sess,
                               graph_gray=gray_img,
                               graph_color=color_img,
                               graph_training=is_training,
                               graph_D_loss=D_loss,
                               graph_G_loss=G_loss,
                               graph_img_loss=img_loss,
                               graph_G_sample=G_sample,
                               dataset=val_data,
                               log_filename=val_log_file,
                               log_note=val_log_note,
                               csv_filename=epoch_val_csv,
                               output_imgs=save_eval_img,
                               img_dir=epoch_val_img_dir,
                               num_eval_img=num_eval_img)

            # Save the session when the epoch is done
            saver = tf.train.Saver()
            sess_name = 'Dlr={}_Glr={}_beta1={}_reg={}_loss={}_epoch_{}'.format(
                D_lr, G_lr, beta1, reg, loss, epoch)
            sess_file = trained_sess_dir + sess_name
            saver.save(sess, sess_file)

            print(local_clock() + '  Finished epoch %d' % (epoch))
            print('')
    return
Ejemplo n.º 20
0
    prediction_labels = np.argmax(preds, axis=1)
    test_labels = np.argmax(dataset.test_labels, axis=1)
    test_features = dataset.test_features
    csv_writer.append_to_file(
        ['#', 'Paveikslėlis', 'Nuspėta klasė', 'Tikroji klasė'])
    for index in range(30):
        csv_writer.append_to_file([
            index + 1, '', LABELS[prediction_labels[index]],
            LABELS[test_labels[index]]
        ])
        image_saver.plt.imshow(test_features[index])
        image_saver.save_image(index)


if __name__ == '__main__':
    dataset = Dataset(data_folder='./data')
    dataset.load_data(data_parts=[0.7, 0.2, 0.1])

    print(dataset.get_data_summary())

    l_rate, momentum, n_epoch, batch_size, verbose, optimizer, loss_func = load_P1_options(
    )
    model = Model(l_rate=l_rate,
                  momentum=momentum,
                  optimizer=optimizer,
                  loss=loss_func)

    # train_scenario()
    load_from_file_scenario()

    loss, accuracy, predictions = model.evaluate(
Ejemplo n.º 21
0
# Add all arguments to parser
args = parser.parse_args()

##############
# Cuda Flags #
##############
if args.cuda:
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
else:
    device = torch.device("cpu")

###############################
# Creating the dataset object #
###############################
# Create training data object
trainset = Dataset(phase='train', max_input_length=10, auto_encoder=args.auto_encoder)

# Extract the languages' attributes
input_lang, output_lang = trainset.langs()

# The trainloader for parallel processing
trainloader = torch.utils.data.DataLoader(trainset, batch_size=args.batch_size,
                                          shuffle=True, num_workers=args.num_workers, pin_memory=False, drop_last=True)
# iterate through training
dataiter = iter(trainloader)

# Create testing data object
testset = Dataset(phase='test', max_input_length=10, auto_encoder=args.auto_encoder)
testloader = torch.utils.data.DataLoader(testset, batch_size=1,
                                          shuffle=True, num_workers=1, pin_memory=False, drop_last=True)
Ejemplo n.º 22
0
def train(network, dataset_path, real_path, mesh_path, mesh_info, object_id, epochs, batch_size=1, sample_interval=50):

    dalo = Dataset('train', dataset_path, object_id, real_path, mesh_path, mesh_info, batch_size)
    optimizer = Adam(lr=1e-5, clipnorm=0.001)
    network.compile(loss='mse', optimizer=optimizer)

    multiproc = Pool(1)

    for epoch in range(epochs):
        for batch_i in range(dalo.n_batches):

            start_t = time.time()
            batch = dalo.__get_batch__(batch_i)

            img_list = dalo.__img_list__()
            ann_list = copy.deepcopy(dalo.__anno_list__())
            ia = copy.deepcopy(dalo.__augmenter__())
            intri = copy.deepcopy(dalo.__get_intrinsics__())
            diameter = copy.deepcopy(dalo.__model_diameter__())
            img_res = copy.deepcopy(dalo.__image_shape__())

            parallel_loaded = multiproc.map(partial(load_data_sample, img_list=img_list, anno_list=ann_list, augmenter=ia, intrinsics=intri, img_res=img_res, model_dia=diameter), batch)

            imgs_obsv = []
            imgs_rend = []
            targets = []
            ren_Rot = []
            ren_Tra = []
            bboxes = [] # temp for separate rendering
            for sample in parallel_loaded:
                imgs_obsv.append(sample[0])
                #imgs_rend.append(sample[1])
                targets.append(sample[1])
                ren_Rot.append(sample[2])
                ren_Tra.append(sample[3])
                bboxes.append(sample[4])

            # looping over render
            #for idx, pose in enumerate(extrinsics):
            #    imgs_rend.append(render_crop(obsv_pose=pose, bbox=bboxes[idx], renderer=bop_render, intrinsics=intri, obj_id=object_id,, img_res=img_res))

            # multiproc render and cropping
            #triple_list = []
            #for idx, rot in enumerate(ren_Rot):
            #   triple_list.append([rot, ren_Tra[idx], bboxes[idx]])
            #parallel_rendered = multiproc.map(partial(render_crop, renderer=bop_render, intrinsics=intri, obj_id=object_id, img_res=img_res), triple_list)

            '''
            # multiproc only rendering
            double_list = []
            for idx, rot in enumerate(ren_Rot):
                double_list.append([rot, ren_Tra[idx]])

            light_pose = [np.random.rand() * 2000.0 - 1000.0, np.random.rand() * 2000.0 - 1000.0, 0.0]
            # light_color = [np.random.rand() * 0.1 + 0.9, np.random.rand() * 0.1 + 0.9, np.random.rand() * 0.1 + 0.9]
            light_color = [1.0, 1.0, 1.0]
            light_ambient_weight = np.random.rand()
            light_diffuse_weight = 0.75 + np.random.rand() * 0.25
            light_spec_weight = 0.25 + np.random.rand() * 0.25
            light_spec_shine = np.random.rand() * 3.0

            # time negligible
            bop_render.set_light(light_pose, light_color, light_ambient_weight, light_diffuse_weight, light_spec_weight,
                          light_spec_shine)

            # render + get < 23 ms i5-6600k
            #bop_renderer.render_object(obj_id, R_list, t_list, intri[0], intri[1], intri[2], intri[3])
            parallel_rendered = multiproc.map(partial(render_top_level, ren=bop_render, intrinsics=intri, obj_id=object_id), double_list)
            '''

            quat_list = []
            img_sizes = []

            for idx, rot in enumerate(ren_Rot):
                quat_list.append([rot, ren_Tra[idx], intri, int(object_id)])
                img_sizes.append(img_res)

            print('start rendering')
            full_renderings = multiproc.map(render_top_level, quat_list)
            print('rendering done')

            for img in full_renderings:
                print(img.shape)
            parallel_cropping = multiproc.map(partial(crop_rendering, bbox=bboxes, img_res=img_res), full_renderings)

            imgs_obsv = np.array(imgs_obsv, dtype=np.float32)
            imgs_rend = np.array(parallel_cropping, dtype=np.float32)
            targets = np.array(targets, dtype=np.float32)
            imgs_obsv = imgs_obsv / 127.5 - 1.
            imgs_rend = imgs_rend / 127.5 - 1.
            print('T data preparation: ', time.time()-start_t)

            network.fit(x=[imgs_obsv, imgs_rend],
                        y=targets,
                        batch_size=batch_size,
                        verbose=1,
                        steps_per_epoch=1,
                        # steps_per_epoch=data_generator.__len__(),
                        epochs=1)

            #elapsed_time = datetime.datetime.now() - start_time
            # Plot the progress
            #print("Epoch %d/%d     Iteration: %d/%d Loss: %f || pose: %f da: %f" % (epoch, epochs,
            #                                                            batch_i, data_loader.n_batches,
            #                                                            g_loss[0] + g_loss[1],
            #                                                            g_loss[0], g_loss[1]))
            #print("Epoch %d/%d     Iteration: %d/%d Loss: %f" % (epoch, epochs, batch_i, data_loader.n_batches, g_loss))

        snapshot_path = './models'
        try:
            os.makedirs(snapshot_path)
        except OSError:
            if not os.path.isdir(snapshot_path):
                raise

        network.save(snapshot_path, 'linemod_{oi}_{{epoch:02d}}.h5'.format(oi=object_id))
    print("Training finished!")
Ejemplo n.º 23
0
def main():
    torch.manual_seed(42)

    # Random
    #params = {'batch_size': 32, 'dropout': 0, 'hidden_dim': 128, 'learning_rate': 0.01, 'num_epochs': 5, 'num_layers': 2, 'oversample': False, 'soft_labels': False}
    # Glove
    params = {
        'batch_size': 32,
        'dropout': 0,
        'hidden_dim': 128,
        'learning_rate': 0.001,
        'num_epochs': 5,
        'num_layers': 2,
        'oversample': False,
        'soft_labels': False
    }
    # Random
    #params = {'batch_size': 32, 'dropout': 0, 'hidden_dim': 256, 'learning_rate': 0.0001, 'num_epochs': 5, 'num_layers': 3, 'oversample': False, 'soft_labels': False}

    #some params
    experiment_number = 1
    test_percentage = 0.1
    val_percentage = 0.2
    batch_size = params["batch_size"]
    num_epochs = 5  #params["num_epochs"]
    dropout = params["dropout"]
    embedding_dim = 300
    model_name = "CNN"  #'Bert' #"CNN" #"LSTM"
    unsupervised = True
    embedding = "Glove"  #"Random" ##"Glove" # "Both" #
    soft_labels = False
    combine = embedding == "Both"

    # LSTM parameters
    if model_name == "LSTM":
        hidden_dim = params["hidden_dim"]
        num_layers = params["num_layers"]

    # Bert parameter
    num_warmup_steps = 100
    num_total_steps = 1000
    if model_name == "Bert":
        embedding = "None"
    if embedding == "Both":
        combine = True
        embedding = "Random"
    else:
        combine = False
    learning_rate = params["learning_rate"]  #5e-5, 3e-5, 2e-5
    oversample_bool = False
    weighted_loss = True
    # load data
    dataset = Dataset("../data/cleaned_tweets_orig.csv",
                      use_embedding=embedding,
                      embedd_dim=embedding_dim,
                      combine=combine,
                      for_bert=(model_name == "Bert"))

    #dataset.oversample()
    train_data, val_test_data = split_dataset(dataset,
                                              test_percentage + val_percentage)
    val_data, test_data = split_dataset(
        val_test_data, test_percentage / (test_percentage + val_percentage))

    # print(len(train_data))
    #save_data(train_data, 'train')
    #save_data(test_data, 'test')

    #define loaders
    if oversample_bool:
        weights, targets = get_loss_weights(train_data, return_targets=True)
        class_sample_count = [
            1024 / 20, 13426, 2898 / 2
        ]  # dataset has 10 class-1 samples, 1 class-2 samples, etc.
        oversample_weights = 1 / torch.Tensor(class_sample_count)
        oversample_weights = oversample_weights[targets]
        # oversample_weights = torch.tensor([0.9414, 0.2242, 0.8344]) #torch.ones((3))-
        sampler = torch.utils.data.sampler.WeightedRandomSampler(
            oversample_weights, len(oversample_weights))
        train_loader = torch.utils.data.DataLoader(train_data,
                                                   batch_size=batch_size,
                                                   collate_fn=my_collate,
                                                   sampler=sampler)
    else:
        train_loader = torch.utils.data.DataLoader(train_data,
                                                   batch_size=batch_size,
                                                   collate_fn=my_collate)
    val_loader = torch.utils.data.DataLoader(val_data,
                                             batch_size=batch_size,
                                             collate_fn=my_collate)

    #define model
    if model_name == "CNN":
        vocab_size = len(dataset.vocab)
        model = CNN(vocab_size, embedding_dim, combine=combine)
    elif model_name == "LSTM":
        vocab_size = len(dataset.vocab)
        model = LSTM(vocab_size,
                     embedding_dim,
                     batch_size=batch_size,
                     hidden_dim=hidden_dim,
                     lstm_num_layers=num_layers,
                     combine=combine,
                     dropout=dropout)

    elif model_name == "Bert":
        model = BertForSequenceClassification.from_pretrained(
            "bert-base-uncased", num_labels=3)
        train_loader = torch.utils.data.DataLoader(train_data,
                                                   batch_size=batch_size,
                                                   collate_fn=bert_collate)
        val_loader = torch.utils.data.DataLoader(val_data,
                                                 batch_size=batch_size,
                                                 collate_fn=bert_collate)

    #device
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
    #LOSS : weighted cross entropy loss, by class counts of other classess
    if weighted_loss:
        weights = torch.tensor([0.9414, 0.2242, 0.8344], device=device)
    else:
        weights = torch.ones(3, device=device)
    #weights = torch.tensor([1.0, 1.0, 1.0], device = device) #get_loss_weights(train_data).to(device) # not to run again
    criterion = nn.CrossEntropyLoss(weight=weights)
    if soft_labels:
        criterion = weighted_soft_cross_entropy
    #latent model
    if unsupervised:
        vocab_size = len(dataset.vocab)
        criterion = nn.CrossEntropyLoss(weight=weights, reduction='none')
        model = Rationalisation_model(vocab_size,
                                      embedding_dim=embedding_dim,
                                      model=model_name,
                                      batch_size=batch_size,
                                      combine=combine,
                                      criterion=criterion)

    if not model_name == "Bert":
        model.embedding.weight.data.copy_(dataset.vocab.vectors)
        if combine:
            model.embedding_glove.weight.data.copy_(dataset.glove.vectors)

    #model to device
    model.to(device)

    #optimiser
    optimizer = optim.Adam(model.parameters(), lr=learning_rate)

    if model_name == "Bert":
        optimizer = AdamW(model.parameters(),
                          lr=learning_rate,
                          correct_bias=False)
        # Linear scheduler for adaptive lr
        scheduler = WarmupLinearSchedule(optimizer,
                                         warmup_steps=num_warmup_steps,
                                         t_total=num_total_steps)
    else:
        scheduler = None

    plot_log = defaultdict(list)
    for epoch in range(num_epochs):
        #train and validate
        epoch_loss, epoch_acc = train_epoch(model,
                                            train_loader,
                                            optimizer,
                                            criterion,
                                            device,
                                            soft_labels=soft_labels,
                                            weights=weights,
                                            scheduler=scheduler,
                                            unsupervised=unsupervised)
        val_loss, val_acc = evaluate_epoch(model,
                                           val_loader,
                                           criterion,
                                           device,
                                           soft_labels=soft_labels,
                                           weights=weights,
                                           unsupervised=unsupervised)
        #save for plotting
        for name, point in zip(
            ["train_loss", "train_accuracy", "val_loss", "val_accuracy"],
            [epoch_loss, epoch_acc, val_loss, val_acc]):
            plot_log[f'{name}'] = point
        #realtime feel
        print(f'Epoch: {epoch+1}')
        print(
            f'\tTrain Loss: {epoch_loss:.5f} | Train Acc: {epoch_acc*100:.2f}%'
        )
        print(f'\t Val. Loss: {val_loss:.5f} |  Val. Acc: {val_acc*100:.2f}%')
    sample_sentences_and_z(model, train_loader, device, dataset.vocab)
    #save plot
    results_directory = f'plots/{experiment_number}'
    os.makedirs(results_directory, exist_ok=True)
    for name, data in plot_log.items():
        save_plot(data, name, results_directory)
    #save model
    torch.save(model, os.path.join(results_directory, 'model_cnn.pth'))
    #confusion matrix and all that fun
    loss, acc, predictions, ground_truth = evaluate_epoch(
        model,
        val_loader,
        criterion,
        device,
        is_final=True,
        soft_labels=soft_labels,
        weights=weights,
        unsupervised=unsupervised)
    conf_matrix = confusion_matrix(ground_truth, predictions)
    class_report = classification_report(ground_truth, predictions)
    print('\nFinal Loss and Accuracy\n----------------\n')
    print(f'\t Val. Loss: {loss:.5f} |  Val. Acc: {acc*100:.2f}%')
    print('\nCONFUSION MATRIX\n----------------\n')
    print(conf_matrix)
    print('\nCLASSSIFICATION REPORT\n----------------------\n')
    print(class_report)

    plot_confusion_matrix(ground_truth,
                          predictions,
                          classes=["Hate speech", "Offensive", "Neither"],
                          normalize=False,
                          title='Confusion matrix')
    plt.show()
Ejemplo n.º 24
0
def evaluate_with_beam_search(args):
    transform = transforms.Compose([
        transforms.ToTensor(),
        transforms.Normalize((0.485, 0.456, 0.406), (0.229, 0.224, 0.225))
    ])

    dataset = Dataset({
        'data_dir': args['data_dir'],
        'exp_dir': args['exp_dir'],
        'raw_data_dir': args['raw_data_dir'],
        'transform': transform,
        'mode': 'test'
    })
    args['vocab_size'] = len(dataset.vocab)

    encoder = EncoderCNN(args).eval()
    decoder = DecoderRNN(args).eval()

    encoder = encoder.to(device)
    decoder = decoder.to(device)

    encoder.load_state_dict(
        torch.load(os.path.join(args['model_path'], 'encoder.pt')))
    decoder.load_state_dict(
        torch.load(os.path.join(args['model_path'], 'decoder.pt')))

    generated_captions = []
    image_ids = []
    target_captions = []

    for idx in range(len(dataset.ids)):
        image_id, image, captions = dataset.get_test_item(idx)
        image = image.to(device)
        print(idx)

        features = encoder(image)
        generated_sents = decoder.decode_with_beam_search(features)
        #        print(generated_sents)
        sents = []
        for sent_id in generated_sents:
            words = []
            for word_id in sent_id[0]:
                if dataset.vocab.idx2word[word_id] == '<start>':
                    continue
                elif dataset.vocab.idx2word[word_id] != '<end>':
                    words.append(dataset.vocab.idx2word[word_id])
                else:
                    break

            sents.append((' '.join(words), sent_id[1] / len(sent_id[0])))
        sents = sorted(sents, key=lambda x: x[1], reverse=True)
        generated_captions.append(sents)
        image_ids.append(image_id)
        target_captions.append(captions)

    image_captions = [{
        'image_id': image_ids[idx],
        'caption': generated_captions[idx][0][0]
    } for idx in range(len(image_ids))]

    captions_path = os.path.join(args['exp_dir'], args['model_dir'],
                                 args['caption_fils'])
    image_caption_path = os.path.join(args['exp_dir'], args['model_dir'],
                                      args['evaluation_file'])

    with open(captions_path, 'w') as f:
        for idx in range(len(generated_captions)):
            f.write('*' * 50 + '\n')
            f.write('-' * 20 + 'generated_captions' + '-' * 20 + '\n')
            for sent in generated_captions[idx]:
                f.write(sent[0] + '\n')
            f.write('-' * 20 + 'target_captions' + '-' * 20 + '\n')
            for words in target_captions[idx]:
                f.write(' '.join(words) + '\n')
            f.write('*' * 50 + '\n')
            f.write('\n')

    with open(image_caption_path, 'w') as f:
        json.dump(image_captions, f)
Ejemplo n.º 25
0
def train(strategy,
          optimizer,
          learning_rate,
          config,
          config_class,
          model_class,
          tokenizer_class,
          on_top=False):
    #####
    model_name_or_path = config.get("model_name_or_path", "xlm-mlm-enfr-1024")
    config_cache_dir = config.get("pretrained_config_cache_dir")
    model_cache_dir = config.get("pretrained_model_cache_dir")
    tokenizer_cache_dir = config.get("pretrained_tokenizer_cache_dir")
    model_name_or_path_ = config.get("model_name_or_path_",
                                     "xlm-mlm-enfr-1024")
    #####
    train_dataset = Dataset(config.get("filepath", None),
                            config.get("training_data_save_path"),
                            config.get("seq_size"),
                            config.get("max_sents"),
                            config.get("do_shuffle"),
                            config.get("do_skip_empty"),
                            model_name_or_path=model_name_or_path,
                            tokenizer_class=tokenizer_class,
                            tokenizer_cache_dir=tokenizer_cache_dir)
    pretrained_config = config_class.from_pretrained(
        model_name_or_path,
        cache_dir=config_cache_dir if config_cache_dir else None)
    with strategy.scope():
        model = model_class.from_pretrained(
            model_name_or_path_,
            config=pretrained_config,
            cache_dir=model_cache_dir if model_cache_dir else None)

        checkpoint = tf.train.Checkpoint(model=model, optimizer=optimizer)
        checkpoint_manager = tf.train.CheckpointManager(checkpoint,
                                                        config["model_dir"],
                                                        max_to_keep=5)
        if checkpoint_manager.latest_checkpoint is not None:
            tf.get_logger().info("Restoring parameters from %s",
                                 checkpoint_manager.latest_checkpoint)
            checkpoint_path = checkpoint_manager.latest_checkpoint
            checkpoint.restore(checkpoint_path)
    #####
    ##### Training functions
    with strategy.scope():
        gradient_accumulator = GradientAccumulator()

    def _accumulate_gradients(src, tgt, sign):
        src_padding_mask = build_mask(src["input_ids"], src["lengths"])
        tgt_padding_mask = build_mask(tgt["input_ids"], tgt["lengths"])
        align, aggregation_src, aggregation_tgt, loss, similarity_loss = model(
            (src, tgt),
            sign_src=sign,
            sign_tgt=sign,
            src_padding_mask=src_padding_mask,
            tgt_padding_mask=tgt_padding_mask,
            training=True)
        #tf.print("aggregation_src", aggregation_src, "aggregation_tgt", aggregation_tgt, "sign", sign, summarize=1000)
        loss = loss + similarity_loss * 0.1
        if on_top:
            variables = [
                var for var in model.trainable_variables
                if "bidirectional" in var.name
            ]
        else:
            variables = model.trainable_variables
        print("var numb: ", len(variables))
        for var in variables:
            print(var.name)
            print(var)
        gradients = optimizer.get_gradients(loss, variables)
        #gradients = [(tf.clip_by_norm(grad, 0.1)) for grad in gradients]
        gradient_accumulator(gradients)
        num_examples = tf.shape(src["input_ids"])[0]
        return loss, num_examples

    def _apply_gradients():
        #variables = model.trainable_variables
        if on_top:
            variables = [
                var for var in model.trainable_variables
                if "bidirectional" in var.name
            ]
        else:
            variables = model.trainable_variables
        grads_and_vars = []
        for gradient, variable in zip(gradient_accumulator.gradients,
                                      variables):
            scaled_gradient = gradient / 2.0
            grads_and_vars.append((scaled_gradient, variable))
        optimizer.apply_gradients(grads_and_vars)
        gradient_accumulator.reset()

    u_epoch_dataset = train_dataset.create_one_epoch(mode="u")
    p_epoch_dataset = train_dataset.create_one_epoch(mode="p")

    @function_on_next(u_epoch_dataset)
    def _u_train_forward(next_fn):
        with strategy.scope():
            per_replica_source, per_replica_target = next_fn()
            per_replica_loss, per_replica_num_examples = strategy.experimental_run_v2(
                _accumulate_gradients,
                args=(per_replica_source, per_replica_target, 1.0))
            loss = strategy.reduce(tf.distribute.ReduceOp.MEAN,
                                   per_replica_loss, None)
            num_examples = strategy.reduce(tf.distribute.ReduceOp.SUM,
                                           per_replica_num_examples, None)
        return loss, num_examples

    @function_on_next(p_epoch_dataset)
    def _p_train_forward(next_fn):
        with strategy.scope():
            per_replica_source, per_replica_target = next_fn()
            per_replica_loss, per_replica_num_examples = strategy.experimental_run_v2(
                _accumulate_gradients,
                args=(per_replica_source, per_replica_target, -1.0))
            loss = strategy.reduce(tf.distribute.ReduceOp.MEAN,
                                   per_replica_loss, None)
            num_examples = strategy.reduce(tf.distribute.ReduceOp.SUM,
                                           per_replica_num_examples, None)
        return loss, num_examples

    @tf.function
    def _step():
        with strategy.scope():
            strategy.experimental_run_v2(_apply_gradients)

    #### Training

    _summary_writer = tf.summary.create_file_writer(config["model_dir"])
    report_every = config.get("report_every", 100)
    save_every = config.get("save_every", 1000)
    eval_every = config.get("eval_every", 1000)
    train_steps = config.get("train_steps", 100000)

    u_training_flow = iter(_u_train_forward())
    p_training_flow = iter(_p_train_forward())

    p_losses = []
    u_losses = []
    _number_examples = []
    import time
    start = time.time()
    with _summary_writer.as_default():
        while True:
            try:
                u_loss, u_examples_num = next(u_training_flow)
                p_loss, p_examples_num = next(p_training_flow)
                _step()
                p_losses.append(p_loss)
                u_losses.append(u_loss)

                _number_examples.extend([u_examples_num, p_examples_num])
                step = optimizer.iterations.numpy()
                if step % report_every == 0:
                    elapsed = time.time() - start
                    tf.get_logger().info(
                        "Step = %d ; Learning rate = %f ; u_loss = %f; p_loss = %f, number_examples = %d, after %f seconds",
                        step, learning_rate(step), np.mean(u_losses),
                        np.mean(p_losses), np.sum(_number_examples), elapsed)
                    start = time.time()
                    u_losses = []
                    p_losses = []
                    _number_examples = []
                if step % save_every == 0:
                    tf.get_logger().info("Saving checkpoint for step %d", step)
                    checkpoint_manager.save(checkpoint_number=step)
                if step % eval_every == 0:
                    ckpt_path = None
                    evaluate(model, config, checkpoint_manager, checkpoint,
                             ckpt_path, model_name_or_path, tokenizer_class,
                             tokenizer_cache_dir)
                tf.summary.flush()
                if step > train_steps:
                    break
            except StopIteration:  #tf.errors.OutOfRangeError:
                print("next epoch")
                u_epoch_dataset = train_dataset.create_one_epoch(mode="u")
                p_epoch_dataset = train_dataset.create_one_epoch(mode="p")

                @function_on_next(u_epoch_dataset)
                def _u_train_forward(next_fn):
                    with strategy.scope():
                        per_replica_source, per_replica_target = next_fn()
                        per_replica_loss, per_replica_num_examples = strategy.experimental_run_v2(
                            _accumulate_gradients,
                            args=(per_replica_source, per_replica_target, 1.0))
                        loss = strategy.reduce(tf.distribute.ReduceOp.MEAN,
                                               per_replica_loss, None)
                        num_examples = strategy.reduce(
                            tf.distribute.ReduceOp.SUM,
                            per_replica_num_examples, None)
                    return loss, num_examples

                @function_on_next(p_epoch_dataset)
                def _p_train_forward(next_fn):
                    with strategy.scope():
                        per_replica_source, per_replica_target = next_fn()
                        per_replica_loss, per_replica_num_examples = strategy.experimental_run_v2(
                            _accumulate_gradients,
                            args=(per_replica_source, per_replica_target,
                                  -1.0))
                        loss = strategy.reduce(tf.distribute.ReduceOp.MEAN,
                                               per_replica_loss, None)
                        num_examples = strategy.reduce(
                            tf.distribute.ReduceOp.SUM,
                            per_replica_num_examples, None)
                    return loss, num_examples

                u_training_flow = iter(_u_train_forward())
                p_training_flow = iter(_p_train_forward())
Ejemplo n.º 26
0
  # set up log dirs
  TimeID, ExpID, rec_img_path, weights_path, log = set_up_dir(args.project_name, args.resume, args.debug)
  logprint = LogPrint(log, ExpID, args.screen)
  args.ExpID = ExpID
  args.CodeID = get_CodeID()
  loghub = LogHub()

  # Set up model, data, optimizer
  if args.mode == "wct_se":
    args.BE = "trained_models/original_wct_models/vgg_normalised_conv%d_1.t7" % args.stage
    args.BD = "trained_models/our_BD/%dBD_E30S0.pth" % args.stage
    if args.pretrained_init:
      args.SE = "trained_models/small16x_ae_base/e%d_base.pth" % args.stage
    net = TrainSE_With_WCTDecoder(args).cuda()
    dataset = Dataset(args.content_train, args.shorter_side)
    train_loader = torch.utils.data.DataLoader(dataset=dataset, batch_size=args.batch_size, shuffle=True)
  
  elif args.mode == "wct_sd":
    args.BE = "trained_models/original_wct_models/vgg_normalised_conv%d_1.t7" % args.stage
    if args.pretrained_init:
        args.SD = "trained_models/small16x_ae_base/d%d_base.pth" % args.stage
    net = TrainSD_With_WCTSE(args).cuda()
    SE_path = check_path(args.SE)
    net.SE.load_state_dict(torch.load(SE_path)["model"])
    dataset = Dataset(args.content_train, args.shorter_side)
    train_loader = torch.utils.data.DataLoader(dataset=dataset, batch_size=args.batch_size, shuffle=True)

  optimizer = torch.optim.Adam(net.parameters(), lr=args.lr)
  
  # Train
Ejemplo n.º 27
0
def encode(lang,
           checkpoint_path,
           dataset_path,
           config,
           config_class,
           model_class,
           tokenizer_class,
           output="output"):
    #####
    print("encoding %s in lang %d using ckpt %s" %
          (dataset_path, lang, checkpoint_path))
    #####
    model_name_or_path = config.get("model_name_or_path", "xlm-mlm-enfr-1024")
    config_cache_dir = config.get("pretrained_config_cache_dir")
    model_cache_dir = config.get("pretrained_model_cache_dir")
    tokenizer_cache_dir = config.get("pretrained_tokenizer_cache_dir")
    model_name_or_path_ = config.get("model_name_or_path_",
                                     "xlm-mlm-enfr-1024")
    #####
    dataset = Dataset(dataset_path,
                      config.get("training_data_save_path"),
                      config.get("seq_size"),
                      config.get("max_sents"),
                      config.get("do_shuffle"),
                      config.get("do_skip_empty"),
                      procedure="encode",
                      model_name_or_path=model_name_or_path,
                      tokenizer_class=tokenizer_class,
                      tokenizer_cache_dir=tokenizer_cache_dir)
    pretrained_config = config_class.from_pretrained(
        model_name_or_path,
        cache_dir=config_cache_dir if config_cache_dir else None)
    model = model_class.from_pretrained(
        model_name_or_path_,
        config=pretrained_config,
        cache_dir=model_cache_dir if model_cache_dir else None)
    checkpoint = tf.train.Checkpoint(model=model)
    checkpoint_manager = tf.train.CheckpointManager(checkpoint,
                                                    config["model_dir"],
                                                    max_to_keep=5)
    if checkpoint_manager.latest_checkpoint is not None:

        if checkpoint_path == None:
            checkpoint_path = checkpoint_manager.latest_checkpoint
        tf.get_logger().info("Restoring parameters from %s", checkpoint_path)
        checkpoint.restore(checkpoint_path)
    iterator = iter(dataset.create_one_epoch(mode="e", lang=lang))

    @tf.function
    def encode_next():
        src = next(iterator)
        padding_mask = build_mask(src["input_ids"], src["lengths"])
        src_sentence_embedding = model.encode(src, padding_mask)
        return src_sentence_embedding

    src_sentence_embedding_list = []
    maxcount = 1000000
    count = 0
    index = 0
    while True:
        try:
            src_sentence_embedding_ = encode_next()
            src_sentence_embedding__ = src_sentence_embedding_.numpy()
            src_sentence_embedding_list.append(src_sentence_embedding__)
            count += src_sentence_embedding__.shape[0]
            print(count)
            if count > maxcount:
                src_sentences = np.concatenate(src_sentence_embedding_list,
                                               axis=0)
                np.savez(output + str(index),
                         sentence_embeddings=src_sentences)
                count = 0
                src_sentence_embedding_list = []
                index += 1
        except tf.errors.OutOfRangeError:
            break
    if len(src_sentence_embedding_list) > 0:
        src_sentences = np.concatenate(src_sentence_embedding_list, axis=0)
        np.savez(output + str(index), sentence_embeddings=src_sentences)
    return True
Ejemplo n.º 28
0
import sys
import os
from unet import UNet
from discriminator import Discriminator
from data_loader import Dataset
from predictor import Predictor

yml_path = sys.argv[1]
with open(yml_path) as f:
    config = yaml.load(f)

if config['use_gpu']:
    torch.set_default_tensor_type('torch.cuda.FloatTensor')

discriminator = Discriminator(**(config['discriminator_params']))
unet = UNet(**(config['unet_params']))

dl = Dataset(**(config['dataset_params'])) \
    .flow_from_directory(**(config['test_dataloader_params']))

unet_path = os.path.join(config['fit_params']['logdir'],
                         'unet_%d.pth' % config['test_epoch'])
unet.load_state_dict(torch.load(unet_path))

discriminator_path = os.path.join(
    config['fit_params']['logdir'],
    'discriminator_%d.pth' % config['test_epoch'])
discriminator.load_state_dict(torch.load(discriminator_path))

p = Predictor(unet, discriminator)
p(dl, os.path.join(config['fit_params']['logdir'], 'predicted'))
Ejemplo n.º 29
0
    device = torch.device(device_type)
    import psutil
    n_cpu = psutil.cpu_count()
    n_cpu_to_use = n_cpu // 4
    torch.set_num_threads(n_cpu_to_use)
    os.environ['MKL_NUM_THREADS'] = str(n_cpu_to_use)
    os.environ['KMP_AFFINITY'] = 'compact'

if args.mode == 'test': verbose = True
else: verbose = False

if verbose:
    print("%s dataset running on %s mode with %s device" %
          (args.dataset.upper(), args.mode.upper(), device_type.upper()))

dset = Dataset(args.dataset, args.data_dir, args.mode)

x_s_train = FN(dset.x_s_train).to(device)
y_s_train = FN(dset.y_s_train).to(device)
y_s_train_ix = FN(index_labels(dset.y_s_train, dset.s_class)).to(device)

x_s_test = FN(dset.x_s_test).to(device)
y_s_test = FN(dset.y_s_test).to(device)

x_u_test = FN(dset.x_u_test).to(device)
y_u_test = FN(dset.y_u_test).to(device)
y_u_test_ix = FN(index_labels(dset.y_u_test, dset.u_class)).to(device)

attr = FN(dset.attr).to(device)
s_attr = FN(dset.s_attr).to(device)
u_attr = FN(dset.u_attr).to(device)
Ejemplo n.º 30
0
def evaluate(args):
    transform = transforms.Compose([
        transforms.ToTensor(),
        transforms.Normalize((0.485, 0.456, 0.406), (0.229, 0.224, 0.225))
    ])

    dataset = Dataset({
        'data_dir': args['data_dir'],
        'exp_dir': args['exp_dir'],
        'raw_data_dir': args['raw_data_dir'],
        'transform': transform,
        'mode': 'test'
    })
    args['vocab_size'] = len(dataset.vocab)

    encoder = EncoderCNN(args).eval()
    decoder = DecoderRNN(args).eval()

    encoder = encoder.to(device)
    decoder = decoder.to(device)

    encoder.load_state_dict(
        torch.load(os.path.join(args['model_path'], 'encoder.pt')))
    decoder.load_state_dict(
        torch.load(os.path.join(args['model_path'], 'decoder.pt')))

    generated_captions = []
    image_ids = []
    target_captions = []

    for idx in range(len(dataset.ids)):
        image_id, image, captions = dataset.get_test_item(idx)
        image = image.to(device)
        print(idx)

        features = encoder(image)
        word_ids = decoder.sample(features)
        word_ids = word_ids[0].cpu().tolist()

        words = []
        for word_id in word_ids:
            if dataset.vocab.idx2word[word_id] == '<start>':
                continue
            if dataset.vocab.idx2word[word_id] != '<end>':
                words.append(dataset.vocab.idx2word[word_id])
            else:
                break
        image_ids.append(image_id)
        generated_captions.append(words)
        target_captions.append(captions)
        print(words)

    image_captions = [{
        'image_id': image_ids[idx],
        'caption': ' '.join(generated_captions[idx])
    } for idx in range(len(image_ids))]

    captions_path = os.path.join(args['exp_dir'], args['caption_file'])
    image_caption_path = os.path.join(args['exp_dir'], args['evaluation_file'])

    with open(captions_path, 'w') as f:
        for idx in range(len(generated_captions)):
            f.write('*' * 50 + '\n')
            f.write('-' * 20 + 'generated_captions' + '-' * 20 + '\n')
            f.write(' '.join(generated_captions[idx]) + '\n')
            f.write('-' * 20 + 'target_captions' + '-' * 20 + '\n')
            for words in target_captions[idx]:
                f.write(' '.join(words) + '\n')
            f.write('*' * 50 + '\n')
            f.write('\n')

    with open(bleu_score_path, 'w') as f:
        f.write('BLEU_score: {}'.format(str(BLEU_score)))

    with open(image_caption_path, 'w') as f:
        json.dump(image_captions, f)