Exemple #1
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    f1other = f1_score(y_true=labels, y_pred=preds, pos_label="OTHER")
    f1offense = f1_score(y_true=labels, y_pred=preds, pos_label="OFFENSE")
    f1macro = f1_score(y_true=labels, y_pred=preds, average="macro")
    f1micro = f1_score(y_true=labels, y_pred=preds, average="macro")
    mcc = matthews_corrcoef(labels, preds)
    return {
        "acc": acc,
        "f1_other": f1other,
        "f1_offense": f1offense,
        "f1_macro": f1macro,
        "f1_micro": f1micro,
        "mcc": mcc
    }


register_metrics('mymetrics', mymetrics)
metric = 'mymetrics'

# 2. Create a DataProcessor that handles all the conversion from raw text into a pytorch Dataset
# Here we load GermEval 2018 Data.

# The processor wants to know the possible labels ...
label_list = ["OTHER", "OFFENSE"]
processor = TextClassificationProcessor(tokenizer=tokenizer,
                                        max_seq_len=64,
                                        data_dir="../data/germeval18",
                                        label_list=label_list,
                                        metric=metric,
                                        label_column_name="coarse_label")

# 3. Create a DataSilo that loads several datasets (train/dev/test), provides DataLoaders for them and calculates a few descriptive statistics of our datasets
Exemple #2
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def doc_classification_crossvalidation():
    ##########################
    ########## Logging
    ##########################
    logger = logging.getLogger(__name__)
    logging.basicConfig(
        format="%(asctime)s - %(levelname)s - %(name)s -   %(message)s",
        datefmt="%m/%d/%Y %H:%M:%S",
        level=logging.INFO)
    # reduce verbosity from transformers library
    logging.getLogger('transformers').setLevel(logging.WARNING)

    # ml_logger = MLFlowLogger(tracking_uri="https://public-mlflow.deepset.ai/")
    # for local logging instead:
    ml_logger = MLFlowLogger(tracking_uri="logs")
    # ml_logger.init_experiment(experiment_name="Public_FARM", run_name="DocClassification_ES_f1_1")

    ##########################
    ########## Settings
    ##########################
    xval_folds = 5
    xval_stratified = True

    set_all_seeds(seed=42)
    device, n_gpu = initialize_device_settings(use_cuda=True)
    n_epochs = 20
    batch_size = 32
    evaluate_every = 100
    lang_model = "bert-base-german-cased"
    use_amp = None

    # 1.Create a tokenizer
    tokenizer = Tokenizer.load(pretrained_model_name_or_path=lang_model,
                               do_lower_case=False)

    # The evaluation on the dev-set can be done with one of the predefined metrics or with a
    # metric defined as a function from (preds, labels) to a dict that contains all the actual
    # metrics values. The function must get registered under a string name and the string name must
    # be used.
    # For xval, we also store the actual predictions and labels in each result so we can
    # calculate overall metrics over all folds later
    def mymetrics(preds, labels):
        acc = simple_accuracy(preds, labels).get("acc")
        f1other = f1_score(y_true=labels, y_pred=preds, pos_label="OTHER")
        f1offense = f1_score(y_true=labels, y_pred=preds, pos_label="OFFENSE")
        f1macro = f1_score(y_true=labels, y_pred=preds, average="macro")
        f1micro = f1_score(y_true=labels, y_pred=preds, average="macro")
        mcc = matthews_corrcoef(labels, preds)
        return {
            "acc": acc,
            "f1_other": f1other,
            "f1_offense": f1offense,
            "f1_macro": f1macro,
            "f1_micro": f1micro,
            "mcc": mcc
        }

    register_metrics('mymetrics', mymetrics)
    metric = 'mymetrics'

    # 2. Create a DataProcessor that handles all the conversion from raw text into a pytorch Dataset
    # Here we load GermEval 2018 Data.

    # The processor wants to know the possible labels ...
    label_list = ["OTHER", "OFFENSE"]
    processor = TextClassificationProcessor(
        tokenizer=tokenizer,
        max_seq_len=64,
        data_dir=Path("../data/germeval18"),
        label_list=label_list,
        metric=metric,
        label_column_name="coarse_label")

    # 3. Create a DataSilo that loads several datasets (train/dev/test), provides DataLoaders for them and calculates a few descriptive statistics of our datasets
    data_silo = DataSilo(processor=processor, batch_size=batch_size)

    # Load one silo for each fold in our cross-validation
    silos = DataSiloForCrossVal.make(data_silo, n_splits=xval_folds)

    # the following steps should be run for each of the folds of the cross validation, so we put them
    # into a function
    def train_on_split(silo_to_use, n_fold, save_dir):
        logger.info(
            f"############ Crossvalidation: Fold {n_fold} ############")
        # Create an AdaptiveModel
        # a) which consists of a pretrained language model as a basis
        language_model = LanguageModel.load(lang_model)
        # b) and a prediction head on top that is suited for our task => Text classification
        prediction_head = TextClassificationHead(
            class_weights=data_silo.calculate_class_weights(
                task_name="text_classification"),
            num_labels=len(label_list))

        model = AdaptiveModel(language_model=language_model,
                              prediction_heads=[prediction_head],
                              embeds_dropout_prob=0.2,
                              lm_output_types=["per_sequence"],
                              device=device)

        # Create an optimizer
        model, optimizer, lr_schedule = initialize_optimizer(
            model=model,
            learning_rate=0.5e-5,
            device=device,
            n_batches=len(silo_to_use.loaders["train"]),
            n_epochs=n_epochs,
            use_amp=use_amp)

        # Feed everything to the Trainer, which keeps care of growing our model into powerful plant and evaluates it from time to time
        # Also create an EarlyStopping instance and pass it on to the trainer

        # An early stopping instance can be used to save the model that performs best on the dev set
        # according to some metric and stop training when no improvement is happening for some iterations.
        # NOTE: Using a different save directory for each fold, allows us afterwards to use the
        # nfolds best models in an ensemble!
        save_dir = Path(str(save_dir) + f"-{n_fold}")
        earlystopping = EarlyStopping(
            metric="f1_offense",
            mode=
            "max",  # use the metric from our own metrics function instead of loss
            save_dir=save_dir,  # where to save the best model
            patience=
            5  # number of evaluations to wait for improvement before terminating the training
        )

        trainer = Trainer(model=model,
                          optimizer=optimizer,
                          data_silo=silo_to_use,
                          epochs=n_epochs,
                          n_gpu=n_gpu,
                          lr_schedule=lr_schedule,
                          evaluate_every=evaluate_every,
                          device=device,
                          early_stopping=earlystopping,
                          evaluator_test=False)

        # train it
        trainer.train()

        return trainer.model

    # for each fold, run the whole training, earlystopping to get a model, then evaluate the model
    # on the test set of each fold
    # Remember all the results for overall metrics over all predictions of all folds and for averaging
    allresults = []
    all_preds = []
    all_labels = []
    bestfold = None
    bestf1_offense = -1
    save_dir = Path("saved_models/bert-german-doc-tutorial-es")
    for num_fold, silo in enumerate(silos):
        model = train_on_split(silo, num_fold, save_dir)

        # do eval on test set here (and not in Trainer),
        #  so that we can easily store the actual preds and labels for a "global" eval across all folds.
        evaluator_test = Evaluator(data_loader=silo.get_data_loader("test"),
                                   tasks=silo.processor.tasks,
                                   device=device)
        result = evaluator_test.eval(model, return_preds_and_labels=True)
        evaluator_test.log_results(result,
                                   "Test",
                                   steps=len(silo.get_data_loader("test")),
                                   num_fold=num_fold)

        allresults.append(result)
        all_preds.extend(result[0].get("preds"))
        all_labels.extend(result[0].get("labels"))

        # keep track of best fold
        f1_offense = result[0]["f1_offense"]
        if f1_offense > bestf1_offense:
            bestf1_offense = f1_offense
            bestfold = num_fold

    # Save the per-fold results to json for a separate, more detailed analysis
    with open("doc_classification_xval.results.json", "wt") as fp:
        json.dump(allresults, fp)

    # calculate overall metrics across all folds
    xval_f1_micro = f1_score(all_labels,
                             all_preds,
                             labels=label_list,
                             average="micro")
    xval_f1_macro = f1_score(all_labels,
                             all_preds,
                             labels=label_list,
                             average="macro")
    xval_f1_offense = f1_score(all_labels,
                               all_preds,
                               labels=label_list,
                               pos_label="OFFENSE")
    xval_f1_other = f1_score(all_labels,
                             all_preds,
                             labels=label_list,
                             pos_label="OTHER")
    xval_mcc = matthews_corrcoef(all_labels, all_preds)

    logger.info("XVAL F1 MICRO:   ", xval_f1_micro)
    logger.info("XVAL F1 MACRO:   ", xval_f1_macro)
    logger.info("XVAL F1 OFFENSE: ", xval_f1_offense)
    logger.info("XVAL F1 OTHER:   ", xval_f1_other)
    logger.info("XVAL MCC:        ", xval_mcc)

    # -----------------------------------------------------
    # Just for illustration, use the best model from the best xval val for evaluation on
    # the original (still unseen) test set.
    logger.info(
        "###### Final Eval on hold out test set using best model #####")
    evaluator_origtest = Evaluator(
        data_loader=data_silo.get_data_loader("test"),
        tasks=data_silo.processor.tasks,
        device=device)
    # restore model from the best fold
    lm_name = model.language_model.name
    save_dir = Path(f"saved_models/bert-german-doc-tutorial-es-{bestfold}")
    model = AdaptiveModel.load(save_dir, device, lm_name=lm_name)
    model.connect_heads_with_processor(data_silo.processor.tasks,
                                       require_labels=True)

    result = evaluator_origtest.eval(model)
    logger.info("TEST F1 MICRO:   ", result[0]["f1_micro"])
    logger.info("TEST F1 MACRO:   ", result[0]["f1_macro"])
    logger.info("TEST F1 OFFENSE: ", result[0]["f1_offense"])
    logger.info("TEST F1 OTHER:   ", result[0]["f1_other"])
    logger.info("TEST MCC:        ", result[0]["mcc"])
def doc_classification_with_earlystopping():
    logging.basicConfig(
        format="%(asctime)s - %(levelname)s - %(name)s -   %(message)s",
        datefmt="%m/%d/%Y %H:%M:%S",
        level=logging.INFO)

    ml_logger = MLFlowLogger(tracking_uri="https://public-mlflow.deepset.ai/")
    # for local logging instead:
    # ml_logger = MLFlowLogger(tracking_uri="logs")
    ml_logger.init_experiment(experiment_name="Public_FARM",
                              run_name="DocClassification_ES_f1_1")

    ##########################
    ########## Settings
    ##########################
    set_all_seeds(seed=42)
    use_amp = None
    device, n_gpu = initialize_device_settings(use_cuda=True)
    n_epochs = 20
    batch_size = 32
    evaluate_every = 100
    lang_model = "bert-base-german-cased"

    # 1.Create a tokenizer
    tokenizer = Tokenizer.load(pretrained_model_name_or_path=lang_model,
                               do_lower_case=False)

    # 2. Create a DataProcessor that handles all the conversion from raw text into a pytorch Dataset
    # Here we load GermEval 2018 Data.

    # The processor wants to know the possible labels ...
    label_list = ["OTHER", "OFFENSE"]

    # The evaluation on the dev-set can be done with one of the predefined metrics or with a
    # metric defined as a function from (preds, labels) to a dict that contains all the actual
    # metrics values. The function must get registered under a string name and the string name must
    # be used.
    def mymetrics(preds, labels):
        acc = simple_accuracy(preds, labels)
        f1other = f1_score(y_true=labels, y_pred=preds, pos_label="OTHER")
        f1offense = f1_score(y_true=labels, y_pred=preds, pos_label="OFFENSE")
        f1macro = f1_score(y_true=labels, y_pred=preds, average="macro")
        f1micro = f1_score(y_true=labels, y_pred=preds, average="macro")
        return {
            "acc": acc,
            "f1_other": f1other,
            "f1_offense": f1offense,
            "f1_macro": f1macro,
            "f1_micro": f1micro
        }

    register_metrics('mymetrics', mymetrics)
    metric = 'mymetrics'

    processor = TextClassificationProcessor(
        tokenizer=tokenizer,
        max_seq_len=64,
        data_dir=Path("../data/germeval18"),
        label_list=label_list,
        metric=metric,
        label_column_name="coarse_label")

    # 3. Create a DataSilo that loads several datasets (train/dev/test), provides DataLoaders for them and calculates a few descriptive statistics of our datasets
    data_silo = DataSilo(processor=processor, batch_size=batch_size)

    # 4. Create an AdaptiveModel
    # a) which consists of a pretrained language model as a basis
    language_model = LanguageModel.load(lang_model)
    # b) and a prediction head on top that is suited for our task => Text classification
    prediction_head = TextClassificationHead(
        num_labels=len(label_list),
        class_weights=data_silo.calculate_class_weights(
            task_name="text_classification"))

    model = AdaptiveModel(language_model=language_model,
                          prediction_heads=[prediction_head],
                          embeds_dropout_prob=0.2,
                          lm_output_types=["per_sequence"],
                          device=device)

    # 5. Create an optimizer
    model, optimizer, lr_schedule = initialize_optimizer(
        model=model,
        learning_rate=0.5e-5,
        device=device,
        n_batches=len(data_silo.loaders["train"]),
        n_epochs=n_epochs,
        use_amp=use_amp)

    # 6. Feed everything to the Trainer, which keeps care of growing our model into powerful plant and evaluates it from time to time
    # Also create an EarlyStopping instance and pass it on to the trainer

    # An early stopping instance can be used to save the model that performs best on the dev set
    # according to some metric and stop training when no improvement is happening for some iterations.
    earlystopping = EarlyStopping(
        metric="f1_offense",
        mode=
        "max",  # use the metric from our own metrics function instead of loss
        # metric="f1_macro", mode="max",  # use f1_macro from the dev evaluator of the trainer
        # metric="loss", mode="min",   # use loss from the dev evaluator of the trainer
        save_dir=Path("saved_models/bert-german-doc-tutorial-es"
                      ),  # where to save the best model
        patience=
        5  # number of evaluations to wait for improvement before terminating the training
    )

    trainer = Trainer(model=model,
                      optimizer=optimizer,
                      data_silo=data_silo,
                      epochs=n_epochs,
                      n_gpu=n_gpu,
                      lr_schedule=lr_schedule,
                      evaluate_every=evaluate_every,
                      device=device,
                      early_stopping=earlystopping)

    # 7. Let it grow
    trainer.train()

    # 8. Hooray! You have a model.
    # NOTE: if early stopping is used, the best model has been stored already in the directory
    # defined with the EarlyStopping instance
    # The model we have at this moment is the model from the last training epoch that was carried
    # out before early stopping terminated the training
    save_dir = Path("saved_models/bert-german-doc-tutorial")
    model.save(save_dir)
    processor.save(save_dir)

    # 9. Load it & harvest your fruits (Inference)
    basic_texts = [
        {
            "text":
            "Schartau sagte dem Tagesspiegel, dass Fischer ein Idiot sei"
        },
        {
            "text": "Martin Müller spielt Handball in Berlin"
        },
    ]

    # Load from the final epoch directory and apply
    print("LOADING INFERENCER FROM FINAL MODEL DURING TRAINING")
    model = Inferencer.load(save_dir)
    result = model.inference_from_dicts(dicts=basic_texts)
    print(result)

    # Load from saved best model
    print("LOADING INFERENCER FROM BEST MODEL DURING TRAINING")
    model = Inferencer.load(earlystopping.save_dir)
    result = model.inference_from_dicts(dicts=basic_texts)
    print("APPLICATION ON BEST MODEL")
    print(result)