""" This examples trains a CrossEncoder for the NLI task. A CrossEncoder takes a sentence pair as input and outputs a label. Here, it learns to predict the labels: "contradiction": 0, "entailment": 1, "neutral": 2. It does NOT produce a sentence embedding and does NOT work for individual sentences. Usage: python training_nli.py """ from torch.utils.data import DataLoader import math from sentence_transformers import LoggingHandler, util from sentence_transformers.cross_encoder import CrossEncoder from sentence_transformers.cross_encoder.evaluation import CEF1Evaluator, CESoftmaxAccuracyEvaluator from sentence_transformers.evaluation import SequentialEvaluator from sentence_transformers.readers import InputExample import logging from datetime import datetime import os import gzip import csv #### Just some code to print debug information to stdout logging.basicConfig( format="%(asctime)s - %(message)s", datefmt="%Y-%m-%d %H:%M:%S", level=logging.INFO, handlers=[LoggingHandler()] ) logger = logging.getLogger(__name__) #### /print debug information to stdout # As dataset, we use SNLI + MultiNLI # Check if dataset exists. If not, download and extract it nli_dataset_path = "datasets/AllNLI.tsv.gz" if not os.path.exists(nli_dataset_path): util.http_get("https://sbert.net/datasets/AllNLI.tsv.gz", nli_dataset_path) # Read the AllNLI.tsv.gz file and create the training dataset logger.info("Read AllNLI train dataset") label2int = {"contradiction": 0, "entailment": 1, "neutral": 2} train_samples = [] dev_samples = [] with gzip.open(nli_dataset_path, "rt", encoding="utf8") as fIn: reader = csv.DictReader(fIn, delimiter="\t", quoting=csv.QUOTE_NONE) for row in reader: label_id = label2int[row["label"]] if row["split"] == "train": train_samples.append(InputExample(texts=[row["sentence1"], row["sentence2"]], label=label_id)) else: dev_samples.append(InputExample(texts=[row["sentence1"], row["sentence2"]], label=label_id)) train_batch_size = 16 num_epochs = 4 model_save_path = "output/training_allnli-" + datetime.now().strftime("%Y-%m-%d_%H-%M-%S") # Define our CrossEncoder model. We use distilroberta-base as basis and setup it up to predict 3 labels model = CrossEncoder("distilroberta-base", num_labels=len(label2int)) # We wrap train_samples, which is a list of InputExample, in a pytorch DataLoader train_dataloader = DataLoader(train_samples, shuffle=True, batch_size=train_batch_size) # During training, we use CESoftmaxAccuracyEvaluator and CEF1Evaluator to measure the performance on the dev set accuracy_evaluator = CESoftmaxAccuracyEvaluator.from_input_examples(dev_samples, name="AllNLI-dev") f1_evaluator = CEF1Evaluator.from_input_examples(dev_samples, name="AllNLI-dev") evaluator = SequentialEvaluator([accuracy_evaluator, f1_evaluator]) warmup_steps = math.ceil(len(train_dataloader) * num_epochs * 0.1) # 10% of train data for warm-up logger.info("Warmup-steps: {}".format(warmup_steps)) # Train the model model.fit( train_dataloader=train_dataloader, evaluator=evaluator, epochs=num_epochs, evaluation_steps=10000, warmup_steps=warmup_steps, output_path=model_save_path, )