예제 #1
0
def run_ner(
        lang: str = 'eng',
        log_dir: str = 'logs',
        task: str = NER,
        batch_size: int = 1,
        lr: float = 5e-5,
        epochs: int = 1,
        dataset: str = 'data/conll-2003/',
        loss: str = 'cross',
        max_seq_len: int = 128,
        do_lower_case: bool = False,
        warmup_proportion: float = 0.1,
        grad_acc_steps: int = 1,
        rand_seed: int = None,
        fp16: bool = False,
        loss_scale: float = None,
        ds_size: int = None,
        data_bunch_path: str = 'data/conll-2003/db',
        bertAdam: bool = False,
        freez: bool = False,
        one_cycle: bool = False,
        discr: bool = False,
        lrm: int = 2.6,
        div: int = None,
        tuned_learner: str = None,
        do_train: str = False,
        do_eval: str = False,
        save: bool = False,
        name: str = 'ner',
        mask: tuple = ('s', 's'),
):
    name = "_".join(
        map(str, [
            name, task, lang, mask[0], mask[1], loss, batch_size, lr,
            max_seq_len, do_train, do_eval
        ]))

    log_dir = Path(log_dir)
    log_dir.mkdir(parents=True, exist_ok=True)
    init_logger(log_dir, name)

    if rand_seed:
        random.seed(rand_seed)
        np.random.seed(rand_seed)
        torch.manual_seed(rand_seed)
        if torch.cuda.is_available():
            torch.cuda.manual_seed_all(rand_seed)

    trainset = dataset + lang + '/train.txt'
    devset = dataset + lang + '/dev.txt'
    testset = dataset + lang + '/test.txt'

    bert_model = 'bert-base-cased' if lang == 'eng' else 'bert-base-multilingual-cased'
    print(f'Lang: {lang}\nModel: {bert_model}\nRun: {name}')
    model = BertForTokenClassification.from_pretrained(bert_model,
                                                       num_labels=len(VOCAB),
                                                       cache_dir='bertm')

    model = torch.nn.DataParallel(model)
    model_lr_group = bert_layer_list(model)
    layers = len(model_lr_group)
    kwargs = {'max_seq_len': max_seq_len, 'ds_size': ds_size, 'mask': mask}

    train_dl = DataLoader(dataset=NerDataset(trainset,
                                             bert_model,
                                             train=True,
                                             **kwargs),
                          batch_size=batch_size,
                          shuffle=True,
                          collate_fn=partial(pad, train=True))

    dev_dl = DataLoader(dataset=NerDataset(devset, bert_model, **kwargs),
                        batch_size=batch_size,
                        shuffle=False,
                        collate_fn=pad)

    test_dl = DataLoader(dataset=NerDataset(testset, bert_model, **kwargs),
                         batch_size=batch_size,
                         shuffle=False,
                         collate_fn=pad)

    data = DataBunch(train_dl=train_dl,
                     valid_dl=dev_dl,
                     test_dl=test_dl,
                     collate_fn=pad,
                     path=Path(data_bunch_path))

    loss_fun = ner_loss_func if loss == 'cross' else partial(ner_loss_func,
                                                             zero=True)
    metrics = [Conll_F1()]

    learn = Learner(
        data,
        model,
        BertAdam,
        loss_func=loss_fun,
        metrics=metrics,
        true_wd=False,
        layer_groups=None if not freez else model_lr_group,
        path='learn',
    )

    # initialise bert adam optimiser
    train_opt_steps = int(len(train_dl.dataset) / batch_size) * epochs
    optim = BertAdam(model.parameters(),
                     lr=lr,
                     warmup=warmup_proportion,
                     t_total=train_opt_steps)

    if bertAdam: learn.opt = OptimWrapper(optim)
    else: print("No Bert Adam")

    # load fine-tuned learner
    if tuned_learner:
        print('Loading pretrained learner: ', tuned_learner)
        learn.load(tuned_learner)

    # Uncomment to graph learning rate plot
    # learn.lr_find()
    # learn.recorder.plot(skip_end=15)

    # set lr (discriminative learning rates)
    if div: layers = div
    lrs = lr if not discr else learn.lr_range(slice(lr / lrm**(layers), lr))

    results = [['epoch', 'lr', 'f1', 'val_loss', 'train_loss', 'train_losses']]

    if do_train:
        for epoch in range(epochs):
            if freez:
                lay = (layers // (epochs - 1)) * epoch * -1
                if lay == 0:
                    print('Freeze')
                    learn.freeze()
                elif lay == layers:
                    print('unfreeze')
                    learn.unfreeze()
                else:
                    print('freeze2')
                    learn.freeze_to(lay)
                print('Freezing layers ', lay, ' off ', layers)

            # Fit Learner - eg train model
            if one_cycle: learn.fit_one_cycle(1, lrs, moms=(0.8, 0.7))
            else: learn.fit(1, lrs)

            results.append([
                epoch,
                lrs,
                learn.recorder.metrics[0][0],
                learn.recorder.val_losses[0],
                np.array(learn.recorder.losses).mean(),
                learn.recorder.losses,
            ])

            if save:
                m_path = learn.save(f"{lang}_{epoch}_model", return_path=True)
                print(f'Saved model to {m_path}')
    if save: learn.export(f'{lang}.pkl')

    if do_eval:
        res = learn.validate(test_dl, metrics=metrics)
        met_res = [f'{m.__name__}: {r}' for m, r in zip(metrics, res[1:])]
        print(f'Validation on TEST SET:\nloss {res[0]}, {met_res}')
        results.append(['val', '-', res[1], res[0], '-', '-'])

    with open(log_dir / (name + '.csv'), 'a') as resultFile:
        wr = csv.writer(resultFile)
        wr.writerows(results)
예제 #2
0
def run_ner(
        lang: str = 'eng',
        log_dir: str = 'logs',
        task: str = NER,
        batch_size: int = 1,
        epochs: int = 1,
        dataset: str = 'data/conll-2003/',
        loss: str = 'cross',
        max_seq_len: int = 128,
        do_lower_case: bool = False,
        warmup_proportion: float = 0.1,
        rand_seed: int = None,
        ds_size: int = None,
        data_bunch_path: str = 'data/conll-2003/db',
        tuned_learner: str = None,
        do_train: str = False,
        do_eval: str = False,
        save: bool = False,
        nameX: str = 'ner',
        mask: tuple = ('s', 's'),
):
    name = "_".join(
        map(str, [
            nameX, task, lang, mask[0], mask[1], loss, batch_size, max_seq_len,
            do_train, do_eval
        ]))
    log_dir = Path(log_dir)
    log_dir.mkdir(parents=True, exist_ok=True)
    init_logger(log_dir, name)

    if rand_seed:
        random.seed(rand_seed)
        np.random.seed(rand_seed)
        torch.manual_seed(rand_seed)
        if torch.cuda.is_available():
            torch.cuda.manual_seed_all(rand_seed)

    trainset = dataset + lang + '/train.txt'
    devset = dataset + lang + '/dev.txt'
    testset = dataset + lang + '/test.txt'

    bert_model = 'bert-base-cased' if lang == 'eng' else 'bert-base-multilingual-cased'
    print(f'Lang: {lang}\nModel: {bert_model}\nRun: {name}')
    model = BertForTokenClassification.from_pretrained(bert_model,
                                                       num_labels=len(VOCAB),
                                                       cache_dir='bertm')
    if tuned_learner:
        print('Loading pretrained learner: ', tuned_learner)
        model.bert.load_state_dict(torch.load(tuned_learner))

    model = torch.nn.DataParallel(model)
    model_lr_group = bert_layer_list(model)
    layers = len(model_lr_group)
    kwargs = {'max_seq_len': max_seq_len, 'ds_size': ds_size, 'mask': mask}

    train_dl = DataLoader(dataset=NerDataset(trainset,
                                             bert_model,
                                             train=True,
                                             **kwargs),
                          batch_size=batch_size,
                          shuffle=True,
                          collate_fn=partial(pad, train=True))

    dev_dl = DataLoader(dataset=NerDataset(devset, bert_model, **kwargs),
                        batch_size=batch_size,
                        shuffle=False,
                        collate_fn=pad)

    test_dl = DataLoader(dataset=NerDataset(testset, bert_model, **kwargs),
                         batch_size=batch_size,
                         shuffle=False,
                         collate_fn=pad)

    data = DataBunch(train_dl=train_dl,
                     valid_dl=dev_dl,
                     test_dl=test_dl,
                     collate_fn=pad,
                     path=Path(data_bunch_path))

    train_opt_steps = int(len(train_dl.dataset) / batch_size) * epochs
    optim = BertAdam(model.parameters(),
                     lr=0.01,
                     warmup=warmup_proportion,
                     t_total=train_opt_steps)

    loss_fun = ner_loss_func if loss == 'cross' else partial(ner_loss_func,
                                                             zero=True)
    metrics = [Conll_F1()]

    learn = Learner(
        data,
        model,
        BertAdam,
        loss_func=loss_fun,
        metrics=metrics,
        true_wd=False,
        layer_groups=model_lr_group,
        path='learn' + nameX,
    )

    learn.opt = OptimWrapper(optim)

    lrm = 1.6

    # select set of starting lrs
    lrs_eng = [0.01, 5e-4, 3e-4, 3e-4, 1e-5]
    lrs_deu = [0.01, 5e-4, 5e-4, 3e-4, 2e-5]

    startlr = lrs_eng if lang == 'eng' else lrs_deu
    results = [['epoch', 'lr', 'f1', 'val_loss', 'train_loss', 'train_losses']]
    if do_train:
        learn.freeze()
        learn.fit_one_cycle(1, startlr[0], moms=(0.8, 0.7))
        learn.freeze_to(-3)
        lrs = learn.lr_range(slice(startlr[1] / (1.6**15), startlr[1]))
        learn.fit_one_cycle(1, lrs, moms=(0.8, 0.7))
        learn.freeze_to(-6)
        lrs = learn.lr_range(slice(startlr[2] / (1.6**15), startlr[2]))
        learn.fit_one_cycle(1, lrs, moms=(0.8, 0.7))
        learn.freeze_to(-12)
        lrs = learn.lr_range(slice(startlr[3] / (1.6**15), startlr[3]))
        learn.fit_one_cycle(1, lrs, moms=(0.8, 0.7))
        learn.unfreeze()
        lrs = learn.lr_range(slice(startlr[4] / (1.6**15), startlr[4]))
        learn.fit_one_cycle(1, lrs, moms=(0.8, 0.7))

    if do_eval:
        res = learn.validate(test_dl, metrics=metrics)
        met_res = [f'{m.__name__}: {r}' for m, r in zip(metrics, res[1:])]
        print(f'Validation on TEST SET:\nloss {res[0]}, {met_res}')
        results.append(['val', '-', res[1], res[0], '-', '-'])

    with open(log_dir / (name + '.csv'), 'a') as resultFile:
        wr = csv.writer(resultFile)
        wr.writerows(results)
예제 #3
0
learn.enable_coach = True

learn.split([learn.model.cnn[:6], learn.model.cnn[6:], learn.model.fc])

# In[13]:

from fastai.callbacks import SaveModelCallback
cb_save_model = SaveModelCallback(learn, every="epoch", name=name)
cb_coach = CbCoachTrain(learn, n_train_batch=20)
cb_sims = CbSims(learn)
#cb_siamese_validate = SiameseValidateCallback(learn, txlog)
cbs = [cb_save_model, cb_coach, cb_sims]  #, cb_siamese_validate]

# In[14]:

learn.freeze_to(-1)
learn.fit_one_cycle(3, callbacks=cbs)
learn.unfreeze()

# In[15]:

enable_lr_find = 0
if enable_lr_find:
    print('LR plotting ...')
    learn.lr_find()
    learn.recorder.plot()
    plt.savefig('lr_find.png')

# In[16]:

max_lr = 1e-4