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Compute predictions
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335
transformers/data/metrics/squad_metrics.py
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335
transformers/data/metrics/squad_metrics.py
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import json
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import logging
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import math
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import collections
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from io import open
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from tqdm import tqdm
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from transformers.tokenization_bert import BasicTokenizer, whitespace_tokenize
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logger = logging.getLogger(__name__)
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def compute_predictions(all_examples, all_features, all_results, n_best_size,
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max_answer_length, do_lower_case, output_prediction_file,
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output_nbest_file, output_null_log_odds_file, verbose_logging,
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version_2_with_negative, null_score_diff_threshold):
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"""Write final predictions to the json file and log-odds of null if needed."""
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logger.info("Writing predictions to: %s" % (output_prediction_file))
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logger.info("Writing nbest to: %s" % (output_nbest_file))
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example_index_to_features = collections.defaultdict(list)
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for feature in all_features:
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example_index_to_features[feature.example_index].append(feature)
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unique_id_to_result = {}
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for result in all_results:
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unique_id_to_result[result.unique_id] = result
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_PrelimPrediction = collections.namedtuple( # pylint: disable=invalid-name
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"PrelimPrediction",
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["feature_index", "start_index", "end_index", "start_logit", "end_logit"])
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all_predictions = collections.OrderedDict()
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all_nbest_json = collections.OrderedDict()
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scores_diff_json = collections.OrderedDict()
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for (example_index, example) in enumerate(all_examples):
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features = example_index_to_features[example_index]
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prelim_predictions = []
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# keep track of the minimum score of null start+end of position 0
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score_null = 1000000 # large and positive
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min_null_feature_index = 0 # the paragraph slice with min null score
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null_start_logit = 0 # the start logit at the slice with min null score
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null_end_logit = 0 # the end logit at the slice with min null score
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for (feature_index, feature) in enumerate(features):
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result = unique_id_to_result[feature.unique_id]
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start_indexes = _get_best_indexes(result.start_logits, n_best_size)
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end_indexes = _get_best_indexes(result.end_logits, n_best_size)
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# if we could have irrelevant answers, get the min score of irrelevant
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if version_2_with_negative:
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feature_null_score = result.start_logits[0] + result.end_logits[0]
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if feature_null_score < score_null:
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score_null = feature_null_score
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min_null_feature_index = feature_index
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null_start_logit = result.start_logits[0]
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null_end_logit = result.end_logits[0]
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for start_index in start_indexes:
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for end_index in end_indexes:
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# We could hypothetically create invalid predictions, e.g., predict
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# that the start of the span is in the question. We throw out all
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# invalid predictions.
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if start_index >= len(feature.tokens):
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continue
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if end_index >= len(feature.tokens):
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continue
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if start_index not in feature.token_to_orig_map:
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continue
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if end_index not in feature.token_to_orig_map:
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continue
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if not feature.token_is_max_context.get(start_index, False):
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continue
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if end_index < start_index:
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continue
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length = end_index - start_index + 1
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if length > max_answer_length:
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continue
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prelim_predictions.append(
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_PrelimPrediction(
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feature_index=feature_index,
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start_index=start_index,
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end_index=end_index,
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start_logit=result.start_logits[start_index],
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end_logit=result.end_logits[end_index]))
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if version_2_with_negative:
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prelim_predictions.append(
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_PrelimPrediction(
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feature_index=min_null_feature_index,
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start_index=0,
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end_index=0,
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start_logit=null_start_logit,
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end_logit=null_end_logit))
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prelim_predictions = sorted(
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prelim_predictions,
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key=lambda x: (x.start_logit + x.end_logit),
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reverse=True)
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_NbestPrediction = collections.namedtuple( # pylint: disable=invalid-name
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"NbestPrediction", ["text", "start_logit", "end_logit"])
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seen_predictions = {}
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nbest = []
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for pred in prelim_predictions:
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if len(nbest) >= n_best_size:
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break
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feature = features[pred.feature_index]
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if pred.start_index > 0: # this is a non-null prediction
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tok_tokens = feature.tokens[pred.start_index:(pred.end_index + 1)]
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orig_doc_start = feature.token_to_orig_map[pred.start_index]
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orig_doc_end = feature.token_to_orig_map[pred.end_index]
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orig_tokens = example.doc_tokens[orig_doc_start:(orig_doc_end + 1)]
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tok_text = " ".join(tok_tokens)
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# De-tokenize WordPieces that have been split off.
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tok_text = tok_text.replace(" ##", "")
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tok_text = tok_text.replace("##", "")
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# Clean whitespace
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tok_text = tok_text.strip()
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tok_text = " ".join(tok_text.split())
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orig_text = " ".join(orig_tokens)
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final_text = get_final_text(tok_text, orig_text, do_lower_case, verbose_logging)
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if final_text in seen_predictions:
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continue
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seen_predictions[final_text] = True
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else:
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final_text = ""
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seen_predictions[final_text] = True
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nbest.append(
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_NbestPrediction(
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text=final_text,
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start_logit=pred.start_logit,
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end_logit=pred.end_logit))
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# if we didn't include the empty option in the n-best, include it
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if version_2_with_negative:
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if "" not in seen_predictions:
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nbest.append(
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_NbestPrediction(
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text="",
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start_logit=null_start_logit,
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end_logit=null_end_logit))
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# In very rare edge cases we could only have single null prediction.
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# So we just create a nonce prediction in this case to avoid failure.
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if len(nbest)==1:
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nbest.insert(0,
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_NbestPrediction(text="empty", start_logit=0.0, end_logit=0.0))
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# In very rare edge cases we could have no valid predictions. So we
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# just create a nonce prediction in this case to avoid failure.
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if not nbest:
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nbest.append(
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_NbestPrediction(text="empty", start_logit=0.0, end_logit=0.0))
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assert len(nbest) >= 1
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total_scores = []
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best_non_null_entry = None
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for entry in nbest:
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total_scores.append(entry.start_logit + entry.end_logit)
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if not best_non_null_entry:
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if entry.text:
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best_non_null_entry = entry
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probs = _compute_softmax(total_scores)
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nbest_json = []
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for (i, entry) in enumerate(nbest):
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output = collections.OrderedDict()
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output["text"] = entry.text
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output["probability"] = probs[i]
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output["start_logit"] = entry.start_logit
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output["end_logit"] = entry.end_logit
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nbest_json.append(output)
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assert len(nbest_json) >= 1
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if not version_2_with_negative:
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all_predictions[example.qas_id] = nbest_json[0]["text"]
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else:
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# predict "" iff the null score - the score of best non-null > threshold
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score_diff = score_null - best_non_null_entry.start_logit - (
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best_non_null_entry.end_logit)
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scores_diff_json[example.qas_id] = score_diff
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if score_diff > null_score_diff_threshold:
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all_predictions[example.qas_id] = ""
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else:
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all_predictions[example.qas_id] = best_non_null_entry.text
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all_nbest_json[example.qas_id] = nbest_json
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with open(output_prediction_file, "w") as writer:
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writer.write(json.dumps(all_predictions, indent=4) + "\n")
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with open(output_nbest_file, "w") as writer:
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writer.write(json.dumps(all_nbest_json, indent=4) + "\n")
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if version_2_with_negative:
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with open(output_null_log_odds_file, "w") as writer:
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writer.write(json.dumps(scores_diff_json, indent=4) + "\n")
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return all_predictions
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def get_final_text(pred_text, orig_text, do_lower_case, verbose_logging=False):
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"""Project the tokenized prediction back to the original text."""
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# When we created the data, we kept track of the alignment between original
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# (whitespace tokenized) tokens and our WordPiece tokenized tokens. So
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# now `orig_text` contains the span of our original text corresponding to the
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# span that we predicted.
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#
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# However, `orig_text` may contain extra characters that we don't want in
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# our prediction.
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#
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# For example, let's say:
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# pred_text = steve smith
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# orig_text = Steve Smith's
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#
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# We don't want to return `orig_text` because it contains the extra "'s".
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#
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# We don't want to return `pred_text` because it's already been normalized
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# (the SQuAD eval script also does punctuation stripping/lower casing but
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# our tokenizer does additional normalization like stripping accent
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# characters).
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#
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# What we really want to return is "Steve Smith".
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#
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# Therefore, we have to apply a semi-complicated alignment heuristic between
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# `pred_text` and `orig_text` to get a character-to-character alignment. This
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# can fail in certain cases in which case we just return `orig_text`.
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def _strip_spaces(text):
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ns_chars = []
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ns_to_s_map = collections.OrderedDict()
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for (i, c) in enumerate(text):
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if c == " ":
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continue
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ns_to_s_map[len(ns_chars)] = i
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ns_chars.append(c)
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ns_text = "".join(ns_chars)
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return (ns_text, ns_to_s_map)
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# We first tokenize `orig_text`, strip whitespace from the result
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# and `pred_text`, and check if they are the same length. If they are
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# NOT the same length, the heuristic has failed. If they are the same
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# length, we assume the characters are one-to-one aligned.
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tokenizer = BasicTokenizer(do_lower_case=do_lower_case)
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tok_text = " ".join(tokenizer.tokenize(orig_text))
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start_position = tok_text.find(pred_text)
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if start_position == -1:
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if verbose_logging:
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logger.info(
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"Unable to find text: '%s' in '%s'" % (pred_text, orig_text))
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return orig_text
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end_position = start_position + len(pred_text) - 1
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(orig_ns_text, orig_ns_to_s_map) = _strip_spaces(orig_text)
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(tok_ns_text, tok_ns_to_s_map) = _strip_spaces(tok_text)
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if len(orig_ns_text) != len(tok_ns_text):
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if verbose_logging:
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logger.info("Length not equal after stripping spaces: '%s' vs '%s'",
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orig_ns_text, tok_ns_text)
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return orig_text
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# We then project the characters in `pred_text` back to `orig_text` using
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# the character-to-character alignment.
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tok_s_to_ns_map = {}
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for (i, tok_index) in tok_ns_to_s_map.items():
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tok_s_to_ns_map[tok_index] = i
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orig_start_position = None
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if start_position in tok_s_to_ns_map:
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ns_start_position = tok_s_to_ns_map[start_position]
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if ns_start_position in orig_ns_to_s_map:
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orig_start_position = orig_ns_to_s_map[ns_start_position]
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if orig_start_position is None:
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if verbose_logging:
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logger.info("Couldn't map start position")
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return orig_text
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orig_end_position = None
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if end_position in tok_s_to_ns_map:
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ns_end_position = tok_s_to_ns_map[end_position]
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if ns_end_position in orig_ns_to_s_map:
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orig_end_position = orig_ns_to_s_map[ns_end_position]
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if orig_end_position is None:
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if verbose_logging:
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logger.info("Couldn't map end position")
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return orig_text
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output_text = orig_text[orig_start_position:(orig_end_position + 1)]
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return output_text
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def _get_best_indexes(logits, n_best_size):
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"""Get the n-best logits from a list."""
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index_and_score = sorted(enumerate(logits), key=lambda x: x[1], reverse=True)
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best_indexes = []
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for i in range(len(index_and_score)):
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if i >= n_best_size:
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break
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best_indexes.append(index_and_score[i][0])
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return best_indexes
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def _compute_softmax(scores):
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"""Compute softmax probability over raw logits."""
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if not scores:
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return []
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max_score = None
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for score in scores:
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if max_score is None or score > max_score:
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max_score = score
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exp_scores = []
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total_sum = 0.0
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for score in scores:
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x = math.exp(score - max_score)
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exp_scores.append(x)
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total_sum += x
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probs = []
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for score in exp_scores:
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probs.append(score / total_sum)
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return probs
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