| |
| |
| |
| |
|
|
| import math |
| import os |
| import re |
| import subprocess |
| from contextlib import redirect_stdout |
|
|
| from fairseq import options |
| from fairseq_cli import eval_lm, preprocess |
|
|
|
|
| def reprocess(fle): |
| |
| |
| |
| |
| |
|
|
| with open(fle, "r") as f: |
| txt = f.read() |
|
|
| """reprocess generate.py output""" |
| p = re.compile(r"[STHP][-]\d+\s*") |
| hp = re.compile(r"(\s*[-]?\d+[.]?\d+\s*)|(\s*(-inf)\s*)") |
| source_dict = {} |
| hypothesis_dict = {} |
| score_dict = {} |
| target_dict = {} |
| pos_score_dict = {} |
| lines = txt.split("\n") |
|
|
| for line in lines: |
| line += "\n" |
| prefix = re.search(p, line) |
| if prefix is not None: |
| assert len(prefix.group()) > 2, "prefix id not found" |
| _, j = prefix.span() |
| id_num = prefix.group()[2:] |
| id_num = int(id_num) |
| line_type = prefix.group()[0] |
| if line_type == "H": |
| h_txt = line[j:] |
| hypo = re.search(hp, h_txt) |
| assert ( |
| hypo is not None |
| ), "regular expression failed to find the hypothesis scoring" |
| _, i = hypo.span() |
| score = hypo.group() |
| if id_num in hypothesis_dict: |
| hypothesis_dict[id_num].append(h_txt[i:]) |
| score_dict[id_num].append(float(score)) |
| else: |
| hypothesis_dict[id_num] = [h_txt[i:]] |
| score_dict[id_num] = [float(score)] |
|
|
| elif line_type == "S": |
| source_dict[id_num] = line[j:] |
| elif line_type == "T": |
| target_dict[id_num] = line[j:] |
| elif line_type == "P": |
| pos_scores = (line[j:]).split() |
| pos_scores = [float(x) for x in pos_scores] |
| if id_num in pos_score_dict: |
| pos_score_dict[id_num].append(pos_scores) |
| else: |
| pos_score_dict[id_num] = [pos_scores] |
|
|
| return source_dict, hypothesis_dict, score_dict, target_dict, pos_score_dict |
|
|
|
|
| def reprocess_nbest(fle): |
| """reprocess interactive.py output""" |
| with open(fle, "r") as f: |
| txt = f.read() |
|
|
| source_dict = {} |
| hypothesis_dict = {} |
| score_dict = {} |
| target_dict = {} |
| pos_score_dict = {} |
| lines = txt.split("\n") |
|
|
| hp = re.compile(r"[-]?\d+[.]?\d+") |
| j = -1 |
|
|
| for _i, line in enumerate(lines): |
| line += "\n" |
| line_type = line[0] |
|
|
| if line_type == "H": |
| hypo = re.search(hp, line) |
| _, start_index = hypo.span() |
| score = hypo.group() |
| if j in score_dict: |
| score_dict[j].append(float(score)) |
| hypothesis_dict[j].append(line[start_index:].strip("\t")) |
| else: |
| score_dict[j] = [float(score)] |
| hypothesis_dict[j] = [line[start_index:].strip("\t")] |
| elif line_type == "O": |
| j += 1 |
| source_dict[j] = line[2:] |
| |
| target_dict[j] = "filler" |
|
|
| elif line_type == "P": |
| pos_scores = [float(pos_score) for pos_score in line.split()[1:]] |
| if j in pos_score_dict: |
| pos_score_dict[j].append(pos_scores) |
| else: |
| pos_score_dict[j] = [pos_scores] |
|
|
| assert source_dict.keys() == hypothesis_dict.keys() |
| assert source_dict.keys() == pos_score_dict.keys() |
| assert source_dict.keys() == score_dict.keys() |
|
|
| return source_dict, hypothesis_dict, score_dict, target_dict, pos_score_dict |
|
|
|
|
| def write_reprocessed( |
| sources, |
| hypos, |
| targets, |
| source_outfile, |
| hypo_outfile, |
| target_outfile, |
| right_to_left=False, |
| prefix_len=None, |
| bpe_symbol=None, |
| target_prefix_frac=None, |
| source_prefix_frac=None, |
| ): |
|
|
| """writes nbest hypothesis for rescoring""" |
| assert not ( |
| prefix_len is not None and target_prefix_frac is not None |
| ), "in writing reprocessed, only one type of prefix may be used" |
| assert not ( |
| prefix_len is not None and source_prefix_frac is not None |
| ), "in writing reprocessed, only one type of prefix may be used" |
| assert not ( |
| target_prefix_frac is not None and source_prefix_frac is not None |
| ), "in writing reprocessed, only one type of prefix may be used" |
|
|
| with open(source_outfile, "w") as source_file, open( |
| hypo_outfile, "w" |
| ) as hypo_file, open(target_outfile, "w") as target_file: |
|
|
| assert len(sources) == len(hypos), "sources and hypos list length mismatch" |
| if right_to_left: |
| for i in range(len(sources)): |
| for j in range(len(hypos[i])): |
| if prefix_len is None: |
| hypo_file.write(make_right_to_left(hypos[i][j]) + "\n") |
| else: |
| raise NotImplementedError() |
| source_file.write(make_right_to_left(sources[i]) + "\n") |
| target_file.write(make_right_to_left(targets[i]) + "\n") |
| else: |
| for i in sorted(sources.keys()): |
| for j in range(len(hypos[i])): |
| if prefix_len is not None: |
| shortened = ( |
| get_prefix_no_bpe(hypos[i][j], bpe_symbol, prefix_len) |
| + "\n" |
| ) |
| hypo_file.write(shortened) |
| source_file.write(sources[i]) |
| target_file.write(targets[i]) |
| elif target_prefix_frac is not None: |
| num_words, shortened, num_bpe_tokens = calc_length_from_frac( |
| hypos[i][j], target_prefix_frac, bpe_symbol |
| ) |
| shortened += "\n" |
| hypo_file.write(shortened) |
| source_file.write(sources[i]) |
| target_file.write(targets[i]) |
| elif source_prefix_frac is not None: |
| num_words, shortened, num_bpe_tokensn = calc_length_from_frac( |
| sources[i], source_prefix_frac, bpe_symbol |
| ) |
| shortened += "\n" |
| hypo_file.write(hypos[i][j]) |
| source_file.write(shortened) |
| target_file.write(targets[i]) |
| else: |
| hypo_file.write(hypos[i][j]) |
| source_file.write(sources[i]) |
| target_file.write(targets[i]) |
|
|
|
|
| def calc_length_from_frac(bpe_sentence, prefix_frac, bpe_symbol): |
| |
| no_bpe_sen = remove_bpe(bpe_sentence, bpe_symbol) |
| len_sen = len(no_bpe_sen.split()) |
|
|
| num_words = math.ceil(len_sen * prefix_frac) |
| prefix = get_prefix_no_bpe(bpe_sentence, bpe_symbol, num_words) |
| num_bpe_tokens = len(prefix.split()) |
| return num_words, prefix, num_bpe_tokens |
|
|
|
|
| def get_prefix(sentence, prefix_len): |
| """assuming no bpe, gets the prefix of the sentence with prefix_len words""" |
| tokens = sentence.strip("\n").split() |
| if prefix_len >= len(tokens): |
| return sentence.strip("\n") |
| else: |
| return " ".join(tokens[:prefix_len]) |
|
|
|
|
| def get_prefix_no_bpe(sentence, bpe_symbol, prefix_len): |
| if bpe_symbol is None: |
| return get_prefix(sentence, prefix_len) |
| else: |
| return " ".join(get_prefix_from_len(sentence.split(), bpe_symbol, prefix_len)) |
|
|
|
|
| def get_prefix_from_len(sentence, bpe_symbol, prefix_len): |
| """get the prefix of sentence with bpe, with prefix len in terms of words, not bpe tokens""" |
| bpe_count = sum([bpe_symbol.strip(" ") in t for t in sentence[:prefix_len]]) |
| if bpe_count == 0: |
| return sentence[:prefix_len] |
| else: |
| return sentence[:prefix_len] + get_prefix_from_len( |
| sentence[prefix_len:], bpe_symbol, bpe_count |
| ) |
|
|
|
|
| def get_num_bpe_tokens_from_len(sentence, bpe_symbol, prefix_len): |
| """given a prefix length in terms of words, return the number of bpe tokens""" |
| prefix = get_prefix_no_bpe(sentence, bpe_symbol, prefix_len) |
| assert len(remove_bpe(prefix, bpe_symbol).split()) <= prefix_len |
| return len(prefix.split(" ")) |
|
|
|
|
| def make_right_to_left(line): |
| tokens = line.split() |
| tokens.reverse() |
| new_line = " ".join(tokens) |
| return new_line |
|
|
|
|
| def remove_bpe(line, bpe_symbol): |
| line = line.replace("\n", "") |
| line = (line + " ").replace(bpe_symbol, "").rstrip() |
| return line + ("\n") |
|
|
|
|
| def remove_bpe_dict(pred_dict, bpe_symbol): |
| new_dict = {} |
| for i in pred_dict: |
| if type(pred_dict[i]) == list: |
| new_list = [remove_bpe(elem, bpe_symbol) for elem in pred_dict[i]] |
| new_dict[i] = new_list |
| else: |
| new_dict[i] = remove_bpe(pred_dict[i], bpe_symbol) |
| return new_dict |
|
|
|
|
| def parse_bleu_scoring(line): |
| p = re.compile(r"(BLEU4 = )\d+[.]\d+") |
| res = re.search(p, line) |
| assert res is not None, line |
| return float(res.group()[8:]) |
|
|
|
|
| def get_full_from_prefix(hypo_prefix, hypos): |
| """given a hypo prefix, recover the first hypo from the list of complete hypos beginning with that prefix""" |
| for hypo in hypos: |
| hypo_prefix = hypo_prefix.strip("\n") |
| len_prefix = len(hypo_prefix) |
| if hypo[:len_prefix] == hypo_prefix: |
| return hypo |
| |
| raise Exception() |
|
|
|
|
| def get_score( |
| a, |
| b, |
| c, |
| target_len, |
| bitext_score1, |
| bitext_score2=None, |
| lm_score=None, |
| lenpen=None, |
| src_len=None, |
| tgt_len=None, |
| bitext1_backwards=False, |
| bitext2_backwards=False, |
| normalize=False, |
| ): |
| if bitext1_backwards: |
| bitext1_norm = src_len |
| else: |
| bitext1_norm = tgt_len |
| if bitext_score2 is not None: |
| if bitext2_backwards: |
| bitext2_norm = src_len |
| else: |
| bitext2_norm = tgt_len |
| else: |
| bitext2_norm = 1 |
| bitext_score2 = 0 |
| if normalize: |
| score = ( |
| a * bitext_score1 / bitext1_norm |
| + b * bitext_score2 / bitext2_norm |
| + c * lm_score / src_len |
| ) |
| else: |
| score = a * bitext_score1 + b * bitext_score2 + c * lm_score |
|
|
| if lenpen is not None: |
| score /= (target_len) ** float(lenpen) |
|
|
| return score |
|
|
|
|
| class BitextOutput(object): |
| def __init__( |
| self, |
| output_file, |
| backwards, |
| right_to_left, |
| bpe_symbol, |
| prefix_len=None, |
| target_prefix_frac=None, |
| source_prefix_frac=None, |
| ): |
| """process output from rescoring""" |
| source, hypo, score, target, pos_score = reprocess(output_file) |
| if backwards: |
| self.hypo_fracs = source_prefix_frac |
| else: |
| self.hypo_fracs = target_prefix_frac |
|
|
| |
| score, num_bpe_tokens = get_score_from_pos( |
| pos_score, prefix_len, hypo, bpe_symbol, self.hypo_fracs, backwards |
| ) |
| source_lengths = {} |
| target_lengths = {} |
|
|
| assert hypo.keys() == source.keys(), "key mismatch" |
| if backwards: |
| tmp = hypo |
| hypo = source |
| source = tmp |
| for i in source: |
| |
| if backwards: |
| len_src = len(source[i][0].split()) |
| |
| if len_src == num_bpe_tokens[i][0] - 1: |
| source_lengths[i] = num_bpe_tokens[i][0] - 1 |
| else: |
| source_lengths[i] = num_bpe_tokens[i][0] |
|
|
| target_lengths[i] = len(hypo[i].split()) |
|
|
| source[i] = remove_bpe(source[i][0], bpe_symbol) |
| target[i] = remove_bpe(target[i], bpe_symbol) |
| hypo[i] = remove_bpe(hypo[i], bpe_symbol) |
|
|
| score[i] = float(score[i][0]) |
| pos_score[i] = pos_score[i][0] |
|
|
| else: |
| len_tgt = len(hypo[i][0].split()) |
| |
| if len_tgt == num_bpe_tokens[i][0] - 1: |
| target_lengths[i] = num_bpe_tokens[i][0] - 1 |
| else: |
| target_lengths[i] = num_bpe_tokens[i][0] |
|
|
| source_lengths[i] = len(source[i].split()) |
|
|
| if right_to_left: |
| source[i] = remove_bpe(make_right_to_left(source[i]), bpe_symbol) |
| target[i] = remove_bpe(make_right_to_left(target[i]), bpe_symbol) |
| hypo[i] = remove_bpe(make_right_to_left(hypo[i][0]), bpe_symbol) |
| score[i] = float(score[i][0]) |
| pos_score[i] = pos_score[i][0] |
| else: |
| assert ( |
| len(hypo[i]) == 1 |
| ), "expected only one hypothesis per source sentence" |
| source[i] = remove_bpe(source[i], bpe_symbol) |
| target[i] = remove_bpe(target[i], bpe_symbol) |
| hypo[i] = remove_bpe(hypo[i][0], bpe_symbol) |
| score[i] = float(score[i][0]) |
| pos_score[i] = pos_score[i][0] |
|
|
| self.rescore_source = source |
| self.rescore_hypo = hypo |
| self.rescore_score = score |
| self.rescore_target = target |
| self.rescore_pos_score = pos_score |
| self.backwards = backwards |
| self.right_to_left = right_to_left |
| self.target_lengths = target_lengths |
| self.source_lengths = source_lengths |
|
|
|
|
| class BitextOutputFromGen(object): |
| def __init__( |
| self, |
| predictions_bpe_file, |
| bpe_symbol=None, |
| nbest=False, |
| prefix_len=None, |
| target_prefix_frac=None, |
| ): |
| if nbest: |
| ( |
| pred_source, |
| pred_hypo, |
| pred_score, |
| pred_target, |
| pred_pos_score, |
| ) = reprocess_nbest(predictions_bpe_file) |
| else: |
| pred_source, pred_hypo, pred_score, pred_target, pred_pos_score = reprocess( |
| predictions_bpe_file |
| ) |
|
|
| assert len(pred_source) == len(pred_hypo) |
| assert len(pred_source) == len(pred_score) |
| assert len(pred_source) == len(pred_target) |
| assert len(pred_source) == len(pred_pos_score) |
|
|
| |
| pred_score, num_bpe_tokens = get_score_from_pos( |
| pred_pos_score, prefix_len, pred_hypo, bpe_symbol, target_prefix_frac, False |
| ) |
|
|
| self.source = pred_source |
| self.target = pred_target |
| self.score = pred_score |
| self.pos_score = pred_pos_score |
| self.hypo = pred_hypo |
| self.target_lengths = {} |
| self.source_lengths = {} |
|
|
| self.no_bpe_source = remove_bpe_dict(pred_source.copy(), bpe_symbol) |
| self.no_bpe_hypo = remove_bpe_dict(pred_hypo.copy(), bpe_symbol) |
| self.no_bpe_target = remove_bpe_dict(pred_target.copy(), bpe_symbol) |
|
|
| |
| self.rescore_source = {} |
| self.rescore_target = {} |
| self.rescore_pos_score = {} |
| self.rescore_hypo = {} |
| self.rescore_score = {} |
| self.num_hypos = {} |
| self.backwards = False |
| self.right_to_left = False |
|
|
| index = 0 |
|
|
| for i in sorted(pred_source.keys()): |
| for j in range(len(pred_hypo[i])): |
|
|
| self.target_lengths[index] = len(self.hypo[i][j].split()) |
| self.source_lengths[index] = len(self.source[i].split()) |
|
|
| self.rescore_source[index] = self.no_bpe_source[i] |
| self.rescore_target[index] = self.no_bpe_target[i] |
| self.rescore_hypo[index] = self.no_bpe_hypo[i][j] |
| self.rescore_score[index] = float(pred_score[i][j]) |
| self.rescore_pos_score[index] = pred_pos_score[i][j] |
| self.num_hypos[index] = len(pred_hypo[i]) |
| index += 1 |
|
|
|
|
| def get_score_from_pos( |
| pos_score_dict, prefix_len, hypo_dict, bpe_symbol, hypo_frac, backwards |
| ): |
| score_dict = {} |
| num_bpe_tokens_dict = {} |
| assert prefix_len is None or hypo_frac is None |
| for key in pos_score_dict: |
| score_dict[key] = [] |
| num_bpe_tokens_dict[key] = [] |
| for i in range(len(pos_score_dict[key])): |
| if prefix_len is not None and not backwards: |
| num_bpe_tokens = get_num_bpe_tokens_from_len( |
| hypo_dict[key][i], bpe_symbol, prefix_len |
| ) |
| score_dict[key].append(sum(pos_score_dict[key][i][:num_bpe_tokens])) |
| num_bpe_tokens_dict[key].append(num_bpe_tokens) |
| elif hypo_frac is not None: |
| num_words, shortened, hypo_prefix_len = calc_length_from_frac( |
| hypo_dict[key][i], hypo_frac, bpe_symbol |
| ) |
| score_dict[key].append(sum(pos_score_dict[key][i][:hypo_prefix_len])) |
| num_bpe_tokens_dict[key].append(hypo_prefix_len) |
| else: |
| score_dict[key].append(sum(pos_score_dict[key][i])) |
| num_bpe_tokens_dict[key].append(len(pos_score_dict[key][i])) |
| return score_dict, num_bpe_tokens_dict |
|
|
|
|
| class LMOutput(object): |
| def __init__( |
| self, |
| lm_score_file, |
| lm_dict=None, |
| prefix_len=None, |
| bpe_symbol=None, |
| target_prefix_frac=None, |
| ): |
| ( |
| lm_sentences, |
| lm_sen_scores, |
| lm_sen_pos_scores, |
| lm_no_bpe_sentences, |
| lm_bpe_tokens, |
| ) = parse_lm( |
| lm_score_file, |
| prefix_len=prefix_len, |
| bpe_symbol=bpe_symbol, |
| target_prefix_frac=target_prefix_frac, |
| ) |
|
|
| self.sentences = lm_sentences |
| self.score = lm_sen_scores |
| self.pos_score = lm_sen_pos_scores |
| self.lm_dict = lm_dict |
| self.no_bpe_sentences = lm_no_bpe_sentences |
| self.bpe_tokens = lm_bpe_tokens |
|
|
|
|
| def parse_lm(input_file, prefix_len=None, bpe_symbol=None, target_prefix_frac=None): |
| """parse output of eval_lm""" |
| with open(input_file, "r") as f: |
| text = f.readlines() |
| text = text[7:] |
| cleaned_text = text[:-2] |
|
|
| sentences = {} |
| sen_scores = {} |
| sen_pos_scores = {} |
| no_bpe_sentences = {} |
| num_bpe_tokens_dict = {} |
| for _i, line in enumerate(cleaned_text): |
| tokens = line.split() |
| if tokens[0].isdigit(): |
| line_id = int(tokens[0]) |
| scores = [float(x[1:-1]) for x in tokens[2::2]] |
| sentences[line_id] = " ".join(tokens[1::2][:-1]) + "\n" |
| if bpe_symbol is not None: |
| |
| bpe_sen = " ".join(tokens[1::2][:-1]) + "\n" |
| no_bpe_sen = remove_bpe(bpe_sen, bpe_symbol) |
| no_bpe_sentences[line_id] = no_bpe_sen |
|
|
| if prefix_len is not None: |
| num_bpe_tokens = get_num_bpe_tokens_from_len( |
| bpe_sen, bpe_symbol, prefix_len |
| ) |
| sen_scores[line_id] = sum(scores[:num_bpe_tokens]) |
| num_bpe_tokens_dict[line_id] = num_bpe_tokens |
| elif target_prefix_frac is not None: |
| num_words, shortened, target_prefix_len = calc_length_from_frac( |
| bpe_sen, target_prefix_frac, bpe_symbol |
| ) |
| sen_scores[line_id] = sum(scores[:target_prefix_len]) |
| num_bpe_tokens_dict[line_id] = target_prefix_len |
| else: |
| sen_scores[line_id] = sum(scores) |
| num_bpe_tokens_dict[line_id] = len(scores) |
|
|
| sen_pos_scores[line_id] = scores |
|
|
| return sentences, sen_scores, sen_pos_scores, no_bpe_sentences, num_bpe_tokens_dict |
|
|
|
|
| def get_directories( |
| data_dir_name, |
| num_rescore, |
| gen_subset, |
| fw_name, |
| shard_id, |
| num_shards, |
| sampling=False, |
| prefix_len=None, |
| target_prefix_frac=None, |
| source_prefix_frac=None, |
| ): |
| nbest_file_id = ( |
| "nbest_" |
| + str(num_rescore) |
| + "_subset_" |
| + gen_subset |
| + "_fw_name_" |
| + fw_name |
| + "_shard_" |
| + str(shard_id) |
| + "_of_" |
| + str(num_shards) |
| ) |
|
|
| if sampling: |
| nbest_file_id += "_sampling" |
|
|
| |
| pre_gen = ( |
| os.path.join(os.path.dirname(__file__)) |
| + "/rerank_data/" |
| + data_dir_name |
| + "/" |
| + nbest_file_id |
| ) |
| |
| left_to_right_preprocessed_dir = pre_gen + "/left_to_right_preprocessed" |
| if source_prefix_frac is not None: |
| left_to_right_preprocessed_dir = ( |
| left_to_right_preprocessed_dir + "/prefix_frac" + str(source_prefix_frac) |
| ) |
| |
| right_to_left_preprocessed_dir = pre_gen + "/right_to_left_preprocessed" |
| |
| backwards_preprocessed_dir = pre_gen + "/backwards" |
| if target_prefix_frac is not None: |
| backwards_preprocessed_dir = ( |
| backwards_preprocessed_dir + "/prefix_frac" + str(target_prefix_frac) |
| ) |
| elif prefix_len is not None: |
| backwards_preprocessed_dir = ( |
| backwards_preprocessed_dir + "/prefix_" + str(prefix_len) |
| ) |
|
|
| |
| lm_preprocessed_dir = pre_gen + "/lm_preprocessed" |
|
|
| return ( |
| pre_gen, |
| left_to_right_preprocessed_dir, |
| right_to_left_preprocessed_dir, |
| backwards_preprocessed_dir, |
| lm_preprocessed_dir, |
| ) |
|
|
|
|
| def lm_scoring( |
| preprocess_directory, |
| bpe_status, |
| gen_output, |
| pre_gen, |
| cur_lm_dict, |
| cur_lm_name, |
| cur_language_model, |
| cur_lm_bpe_code, |
| batch_size, |
| lm_score_file, |
| target_lang, |
| source_lang, |
| prefix_len=None, |
| ): |
| if prefix_len is not None: |
| assert ( |
| bpe_status == "different" |
| ), "bpe status must be different to use prefix len" |
| if bpe_status == "no bpe": |
| |
| write_reprocessed( |
| gen_output.no_bpe_source, |
| gen_output.no_bpe_hypo, |
| gen_output.no_bpe_target, |
| pre_gen + "/rescore_data_no_bpe.de", |
| pre_gen + "/rescore_data_no_bpe.en", |
| pre_gen + "/reference_file_no_bpe", |
| ) |
|
|
| preprocess_lm_param = [ |
| "--only-source", |
| "--trainpref", |
| pre_gen + "/rescore_data_no_bpe." + target_lang, |
| "--srcdict", |
| cur_lm_dict, |
| "--destdir", |
| preprocess_directory, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(preprocess_lm_param) |
| preprocess.main(input_args) |
|
|
| eval_lm_param = [ |
| preprocess_directory, |
| "--path", |
| cur_language_model, |
| "--output-word-probs", |
| "--batch-size", |
| str(batch_size), |
| "--max-tokens", |
| "1024", |
| "--sample-break-mode", |
| "eos", |
| "--gen-subset", |
| "train", |
| ] |
|
|
| eval_lm_parser = options.get_eval_lm_parser() |
| input_args = options.parse_args_and_arch(eval_lm_parser, eval_lm_param) |
|
|
| with open(lm_score_file, "w") as f: |
| with redirect_stdout(f): |
| eval_lm.main(input_args) |
|
|
| elif bpe_status == "shared": |
| preprocess_lm_param = [ |
| "--only-source", |
| "--trainpref", |
| pre_gen + "/rescore_data." + target_lang, |
| "--srcdict", |
| cur_lm_dict, |
| "--destdir", |
| preprocess_directory, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(preprocess_lm_param) |
| preprocess.main(input_args) |
|
|
| eval_lm_param = [ |
| preprocess_directory, |
| "--path", |
| cur_language_model, |
| "--output-word-probs", |
| "--batch-size", |
| str(batch_size), |
| "--sample-break-mode", |
| "eos", |
| "--gen-subset", |
| "train", |
| ] |
|
|
| eval_lm_parser = options.get_eval_lm_parser() |
| input_args = options.parse_args_and_arch(eval_lm_parser, eval_lm_param) |
|
|
| with open(lm_score_file, "w") as f: |
| with redirect_stdout(f): |
| eval_lm.main(input_args) |
|
|
| elif bpe_status == "different": |
| rescore_file = pre_gen + "/rescore_data_no_bpe" |
| rescore_bpe = pre_gen + "/rescore_data_new_bpe" |
|
|
| rescore_file += "." |
| rescore_bpe += "." |
|
|
| write_reprocessed( |
| gen_output.no_bpe_source, |
| gen_output.no_bpe_hypo, |
| gen_output.no_bpe_target, |
| rescore_file + source_lang, |
| rescore_file + target_lang, |
| pre_gen + "/reference_file_no_bpe", |
| bpe_symbol=None, |
| ) |
|
|
| |
| bpe_src_param = [ |
| "-c", |
| cur_lm_bpe_code, |
| "--input", |
| rescore_file + target_lang, |
| "--output", |
| rescore_bpe + target_lang, |
| ] |
| subprocess.call( |
| [ |
| "python", |
| os.path.join( |
| os.path.dirname(__file__), "subword-nmt/subword_nmt/apply_bpe.py" |
| ), |
| ] |
| + bpe_src_param, |
| shell=False, |
| ) |
| |
| |
| |
|
|
| preprocess_dir = preprocess_directory |
|
|
| preprocess_lm_param = [ |
| "--only-source", |
| "--trainpref", |
| rescore_bpe + target_lang, |
| "--srcdict", |
| cur_lm_dict, |
| "--destdir", |
| preprocess_dir, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(preprocess_lm_param) |
| preprocess.main(input_args) |
|
|
| eval_lm_param = [ |
| preprocess_dir, |
| "--path", |
| cur_language_model, |
| "--output-word-probs", |
| "--batch-size", |
| str(batch_size), |
| "--max-tokens", |
| "1024", |
| "--sample-break-mode", |
| "eos", |
| "--gen-subset", |
| "train", |
| ] |
|
|
| eval_lm_parser = options.get_eval_lm_parser() |
| input_args = options.parse_args_and_arch(eval_lm_parser, eval_lm_param) |
|
|
| with open(lm_score_file, "w") as f: |
| with redirect_stdout(f): |
| eval_lm.main(input_args) |
|
|
|
|
| def rescore_file_name( |
| nbest_dir, |
| prefix_len, |
| scorer_name, |
| lm_file=False, |
| target_prefix_frac=None, |
| source_prefix_frac=None, |
| backwards=None, |
| ): |
| if lm_file: |
| score_file = nbest_dir + "/lm_score_translations_model_" + scorer_name + ".txt" |
| else: |
| score_file = nbest_dir + "/" + scorer_name + "_score_translations.txt" |
| if backwards: |
| if prefix_len is not None: |
| score_file += "prefix_len" + str(prefix_len) |
| elif target_prefix_frac is not None: |
| score_file += "target_prefix_frac" + str(target_prefix_frac) |
| else: |
| if source_prefix_frac is not None: |
| score_file += "source_prefix_frac" + str(source_prefix_frac) |
| return score_file |
|
|