# coding=utf-8 # Copyright 2022 The Google Research Authors. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Library for reading/writing input and score files.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function import glob from absl import logging import six from six.moves import zip from six.moves import zip_longest def compute_scores_and_write_to_csv(target_filepattern, prediction_filepattern, output_filename, scorer, aggregator, delimiter="\n"): """Runs aggregate score calculations and outputs results to a CSV file. Args: target_filepattern: Pattern for files containing target text. prediction_filepattern: Pattern for files containing prediction text. output_filename: Name of file to write results to. scorer: A BaseScorer object to compute scores. aggregator: An aggregator to aggregate scores. If None, outputs are per-example scores. delimiter: Record delimiter. """ target_filenames = _glob(target_filepattern) prediction_filenames = _glob(prediction_filepattern) if (len(target_filenames) < 1 or len(target_filenames) != len(prediction_filenames)): raise ValueError("Must have equal and positive number of target and " "prediction files. Found: %d target files (%s)," " %d prediction files (%s)." % (len(target_filenames), target_filepattern, len(prediction_filenames), prediction_filepattern)) scores = _compute_scores(target_filenames, prediction_filenames, scorer, delimiter) if aggregator: for score in scores: aggregator.add_scores(score) _write_aggregates_to_csv(output_filename, aggregator.aggregate()) else: _write_scores_to_csv(output_filename, scores) def _glob(filepattern): return glob.glob(filepattern) # pylint: disable=unreachable def _open(filepattern, mode="r"): return open(filepattern, mode) # pylint: disable=unreachable def _record_gen(filename, delimiter): """Opens file and yields records separated by delimiter.""" with _open(filename) as f: records = f.read().split(six.ensure_str(delimiter)) if records[-1]: # Need a final delimiter at end of file to be able to detect an empty last # record. logging.warn("Expected delimiter at end of file") else: records = records[:-1] for record in records: yield record def _compute_scores(target_filenames, prediction_filenames, scorer, delimiter): """Computes aggregates scores across the given target and prediction files. Args: target_filenames: List of filenames from which to read target lines. prediction_filenames: List of filenames from which to read prediction lines. scorer: A BaseScorer object to compute scores. delimiter: string delimiter between each record in input files Returns: A list of dicts mapping score_type to Score objects. Raises: ValueError: If invalid targets or predictions are provided. """ scores = [] for target_filename, prediction_filename in zip( sorted(target_filenames), sorted(prediction_filenames)): logging.info("Reading targets from %s.", target_filename) logging.info("Reading predictions from %s.", prediction_filename) targets = _record_gen(target_filename, delimiter) preds = _record_gen(prediction_filename, delimiter) for target_rec, prediction_rec in zip_longest(targets, preds): if target_rec is None or prediction_rec is None: raise ValueError("Must have equal number of lines across target and " "prediction files. Mismatch between files: %s, %s." % (target_filename, prediction_filename)) scores.append(scorer.score(target_rec, prediction_rec)) return scores def _write_aggregates_to_csv(output_filename, aggregates): """Writes aggregate scores to an output CSV file. Output file is a comma separated where each line has the format: score_type-(P|R|F),low_ci,mean,high_ci P/R/F indicates whether the score is a precision, recall or f-measure. Args: output_filename: Name of file to write results to. aggregates: A dict mapping each score_type to a AggregateScore object. """ logging.info("Writing results to %s.", output_filename) with _open(output_filename, "w") as output_file: output_file.write("score_type,low,mid,high\n") for score_type, aggregate in sorted(aggregates.items()): output_file.write("%s-R,%f,%f,%f\n" % (score_type, aggregate.low.recall, aggregate.mid.recall, aggregate.high.recall)) output_file.write("%s-P,%f,%f,%f\n" % (score_type, aggregate.low.precision, aggregate.mid.precision, aggregate.high.precision)) output_file.write("%s-F,%f,%f,%f\n" % (score_type, aggregate.low.fmeasure, aggregate.mid.fmeasure, aggregate.high.fmeasure)) logging.info("Finished writing results.") def _write_scores_to_csv(output_filename, scores): """Writes scores for each individual example to an output CSV file. Output file is a comma separated where each line has the format: id,score1,score2,score3,... The header row indicates the type of each score column. Args: output_filename: Name of file to write results to. scores: A list of dicts mapping each score_type to a Score object. """ if len(scores) < 1: logging.warn("No scores to write") return rouge_types = sorted(scores[0].keys()) logging.info("Writing results to %s.", output_filename) with _open(output_filename, "w") as out_file: out_file.write("id") for rouge_type in rouge_types: out_file.write(",{t}-P,{t}-R,{t}-F".format(t=rouge_type)) out_file.write("\n") for i, result in enumerate(scores): out_file.write("%d" % i) for rouge_type in rouge_types: out_file.write(",%f,%f,%f" % (result[rouge_type].precision, result[rouge_type].recall, result[rouge_type].fmeasure)) out_file.write("\n") logging.info("Finished writing results.")