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| """ |
| Generate n-best translations using a trained model. |
| """ |
|
|
| import os |
| import subprocess |
| from contextlib import redirect_stdout |
|
|
| from fairseq import options |
| from fairseq_cli import generate, preprocess |
|
|
| from examples.noisychannel import rerank_options, rerank_utils |
|
|
|
|
| def gen_and_reprocess_nbest(args): |
| if args.score_dict_dir is None: |
| args.score_dict_dir = args.data |
| if args.prefix_len is not None: |
| assert ( |
| args.right_to_left1 is False |
| ), "prefix length not compatible with right to left models" |
| assert ( |
| args.right_to_left2 is False |
| ), "prefix length not compatible with right to left models" |
|
|
| if args.nbest_list is not None: |
| assert args.score_model2 is None |
|
|
| if args.backwards1: |
| scorer1_src = args.target_lang |
| scorer1_tgt = args.source_lang |
| else: |
| scorer1_src = args.source_lang |
| scorer1_tgt = args.target_lang |
|
|
| store_data = ( |
| os.path.join(os.path.dirname(__file__)) + "/rerank_data/" + args.data_dir_name |
| ) |
| if not os.path.exists(store_data): |
| os.makedirs(store_data) |
|
|
| ( |
| pre_gen, |
| left_to_right_preprocessed_dir, |
| right_to_left_preprocessed_dir, |
| backwards_preprocessed_dir, |
| lm_preprocessed_dir, |
| ) = rerank_utils.get_directories( |
| args.data_dir_name, |
| args.num_rescore, |
| args.gen_subset, |
| args.gen_model_name, |
| args.shard_id, |
| args.num_shards, |
| args.sampling, |
| args.prefix_len, |
| args.target_prefix_frac, |
| args.source_prefix_frac, |
| ) |
| assert not ( |
| args.right_to_left1 and args.backwards1 |
| ), "backwards right to left not supported" |
| assert not ( |
| args.right_to_left2 and args.backwards2 |
| ), "backwards right to left not supported" |
| assert not ( |
| args.prefix_len is not None and args.target_prefix_frac is not None |
| ), "target prefix frac and target prefix len incompatible" |
|
|
| |
| if not os.path.exists(pre_gen): |
| os.makedirs(pre_gen) |
|
|
| rerank1_is_gen = ( |
| args.gen_model == args.score_model1 and args.source_prefix_frac is None |
| ) |
| rerank2_is_gen = ( |
| args.gen_model == args.score_model2 and args.source_prefix_frac is None |
| ) |
|
|
| if args.nbest_list is not None: |
| rerank2_is_gen = True |
|
|
| |
| if not os.path.exists(left_to_right_preprocessed_dir): |
| os.makedirs(left_to_right_preprocessed_dir) |
| if not os.path.exists(right_to_left_preprocessed_dir): |
| os.makedirs(right_to_left_preprocessed_dir) |
| if not os.path.exists(lm_preprocessed_dir): |
| os.makedirs(lm_preprocessed_dir) |
| if not os.path.exists(backwards_preprocessed_dir): |
| os.makedirs(backwards_preprocessed_dir) |
|
|
| score1_file = rerank_utils.rescore_file_name( |
| pre_gen, |
| args.prefix_len, |
| args.model1_name, |
| target_prefix_frac=args.target_prefix_frac, |
| source_prefix_frac=args.source_prefix_frac, |
| backwards=args.backwards1, |
| ) |
| if args.score_model2 is not None: |
| score2_file = rerank_utils.rescore_file_name( |
| pre_gen, |
| args.prefix_len, |
| args.model2_name, |
| target_prefix_frac=args.target_prefix_frac, |
| source_prefix_frac=args.source_prefix_frac, |
| backwards=args.backwards2, |
| ) |
|
|
| predictions_bpe_file = pre_gen + "/generate_output_bpe.txt" |
|
|
| using_nbest = args.nbest_list is not None |
|
|
| if using_nbest: |
| print("Using predefined n-best list from interactive.py") |
| predictions_bpe_file = args.nbest_list |
|
|
| else: |
| if not os.path.isfile(predictions_bpe_file): |
| print("STEP 1: generate predictions using the p(T|S) model with bpe") |
| print(args.data) |
| param1 = [ |
| args.data, |
| "--path", |
| args.gen_model, |
| "--shard-id", |
| str(args.shard_id), |
| "--num-shards", |
| str(args.num_shards), |
| "--nbest", |
| str(args.num_rescore), |
| "--batch-size", |
| str(args.batch_size), |
| "--beam", |
| str(args.num_rescore), |
| "--batch-size", |
| str(args.num_rescore), |
| "--gen-subset", |
| args.gen_subset, |
| "--source-lang", |
| args.source_lang, |
| "--target-lang", |
| args.target_lang, |
| ] |
| if args.sampling: |
| param1 += ["--sampling"] |
|
|
| gen_parser = options.get_generation_parser() |
| input_args = options.parse_args_and_arch(gen_parser, param1) |
|
|
| print(input_args) |
| with open(predictions_bpe_file, "w") as f: |
| with redirect_stdout(f): |
| generate.main(input_args) |
|
|
| gen_output = rerank_utils.BitextOutputFromGen( |
| predictions_bpe_file, |
| bpe_symbol=args.post_process, |
| nbest=using_nbest, |
| prefix_len=args.prefix_len, |
| target_prefix_frac=args.target_prefix_frac, |
| ) |
|
|
| if args.diff_bpe: |
| rerank_utils.write_reprocessed( |
| gen_output.no_bpe_source, |
| gen_output.no_bpe_hypo, |
| gen_output.no_bpe_target, |
| pre_gen + "/source_gen_bpe." + args.source_lang, |
| pre_gen + "/target_gen_bpe." + args.target_lang, |
| pre_gen + "/reference_gen_bpe." + args.target_lang, |
| ) |
| bitext_bpe = args.rescore_bpe_code |
| bpe_src_param = [ |
| "-c", |
| bitext_bpe, |
| "--input", |
| pre_gen + "/source_gen_bpe." + args.source_lang, |
| "--output", |
| pre_gen + "/rescore_data." + args.source_lang, |
| ] |
| bpe_tgt_param = [ |
| "-c", |
| bitext_bpe, |
| "--input", |
| pre_gen + "/target_gen_bpe." + args.target_lang, |
| "--output", |
| pre_gen + "/rescore_data." + args.target_lang, |
| ] |
|
|
| subprocess.call( |
| [ |
| "python", |
| os.path.join( |
| os.path.dirname(__file__), "subword-nmt/subword_nmt/apply_bpe.py" |
| ), |
| ] |
| + bpe_src_param, |
| shell=False, |
| ) |
|
|
| subprocess.call( |
| [ |
| "python", |
| os.path.join( |
| os.path.dirname(__file__), "subword-nmt/subword_nmt/apply_bpe.py" |
| ), |
| ] |
| + bpe_tgt_param, |
| shell=False, |
| ) |
|
|
| if (not os.path.isfile(score1_file) and not rerank1_is_gen) or ( |
| args.score_model2 is not None |
| and not os.path.isfile(score2_file) |
| and not rerank2_is_gen |
| ): |
| print( |
| "STEP 2: process the output of generate.py so we have clean text files with the translations" |
| ) |
|
|
| rescore_file = "/rescore_data" |
| if args.prefix_len is not None: |
| prefix_len_rescore_file = rescore_file + "prefix" + str(args.prefix_len) |
| if args.target_prefix_frac is not None: |
| target_prefix_frac_rescore_file = ( |
| rescore_file + "target_prefix_frac" + str(args.target_prefix_frac) |
| ) |
| if args.source_prefix_frac is not None: |
| source_prefix_frac_rescore_file = ( |
| rescore_file + "source_prefix_frac" + str(args.source_prefix_frac) |
| ) |
|
|
| if not args.right_to_left1 or not args.right_to_left2: |
| if not args.diff_bpe: |
| rerank_utils.write_reprocessed( |
| gen_output.source, |
| gen_output.hypo, |
| gen_output.target, |
| pre_gen + rescore_file + "." + args.source_lang, |
| pre_gen + rescore_file + "." + args.target_lang, |
| pre_gen + "/reference_file", |
| bpe_symbol=args.post_process, |
| ) |
| if args.prefix_len is not None: |
| bw_rescore_file = prefix_len_rescore_file |
| rerank_utils.write_reprocessed( |
| gen_output.source, |
| gen_output.hypo, |
| gen_output.target, |
| pre_gen + prefix_len_rescore_file + "." + args.source_lang, |
| pre_gen + prefix_len_rescore_file + "." + args.target_lang, |
| pre_gen + "/reference_file", |
| prefix_len=args.prefix_len, |
| bpe_symbol=args.post_process, |
| ) |
| elif args.target_prefix_frac is not None: |
| bw_rescore_file = target_prefix_frac_rescore_file |
| rerank_utils.write_reprocessed( |
| gen_output.source, |
| gen_output.hypo, |
| gen_output.target, |
| pre_gen |
| + target_prefix_frac_rescore_file |
| + "." |
| + args.source_lang, |
| pre_gen |
| + target_prefix_frac_rescore_file |
| + "." |
| + args.target_lang, |
| pre_gen + "/reference_file", |
| bpe_symbol=args.post_process, |
| target_prefix_frac=args.target_prefix_frac, |
| ) |
| else: |
| bw_rescore_file = rescore_file |
|
|
| if args.source_prefix_frac is not None: |
| fw_rescore_file = source_prefix_frac_rescore_file |
| rerank_utils.write_reprocessed( |
| gen_output.source, |
| gen_output.hypo, |
| gen_output.target, |
| pre_gen |
| + source_prefix_frac_rescore_file |
| + "." |
| + args.source_lang, |
| pre_gen |
| + source_prefix_frac_rescore_file |
| + "." |
| + args.target_lang, |
| pre_gen + "/reference_file", |
| bpe_symbol=args.post_process, |
| source_prefix_frac=args.source_prefix_frac, |
| ) |
| else: |
| fw_rescore_file = rescore_file |
|
|
| if args.right_to_left1 or args.right_to_left2: |
| rerank_utils.write_reprocessed( |
| gen_output.source, |
| gen_output.hypo, |
| gen_output.target, |
| pre_gen + "/right_to_left_rescore_data." + args.source_lang, |
| pre_gen + "/right_to_left_rescore_data." + args.target_lang, |
| pre_gen + "/right_to_left_reference_file", |
| right_to_left=True, |
| bpe_symbol=args.post_process, |
| ) |
|
|
| print("STEP 3: binarize the translations") |
| if ( |
| not args.right_to_left1 |
| or args.score_model2 is not None |
| and not args.right_to_left2 |
| or not rerank1_is_gen |
| ): |
|
|
| if args.backwards1 or args.backwards2: |
| if args.backwards_score_dict_dir is not None: |
| bw_dict = args.backwards_score_dict_dir |
| else: |
| bw_dict = args.score_dict_dir |
| bw_preprocess_param = [ |
| "--source-lang", |
| scorer1_src, |
| "--target-lang", |
| scorer1_tgt, |
| "--trainpref", |
| pre_gen + bw_rescore_file, |
| "--srcdict", |
| bw_dict + "/dict." + scorer1_src + ".txt", |
| "--tgtdict", |
| bw_dict + "/dict." + scorer1_tgt + ".txt", |
| "--destdir", |
| backwards_preprocessed_dir, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(bw_preprocess_param) |
| preprocess.main(input_args) |
|
|
| preprocess_param = [ |
| "--source-lang", |
| scorer1_src, |
| "--target-lang", |
| scorer1_tgt, |
| "--trainpref", |
| pre_gen + fw_rescore_file, |
| "--srcdict", |
| args.score_dict_dir + "/dict." + scorer1_src + ".txt", |
| "--tgtdict", |
| args.score_dict_dir + "/dict." + scorer1_tgt + ".txt", |
| "--destdir", |
| left_to_right_preprocessed_dir, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(preprocess_param) |
| preprocess.main(input_args) |
|
|
| if args.right_to_left1 or args.right_to_left2: |
| preprocess_param = [ |
| "--source-lang", |
| scorer1_src, |
| "--target-lang", |
| scorer1_tgt, |
| "--trainpref", |
| pre_gen + "/right_to_left_rescore_data", |
| "--srcdict", |
| args.score_dict_dir + "/dict." + scorer1_src + ".txt", |
| "--tgtdict", |
| args.score_dict_dir + "/dict." + scorer1_tgt + ".txt", |
| "--destdir", |
| right_to_left_preprocessed_dir, |
| ] |
| preprocess_parser = options.get_preprocessing_parser() |
| input_args = preprocess_parser.parse_args(preprocess_param) |
| preprocess.main(input_args) |
|
|
| return gen_output |
|
|
|
|
| def cli_main(): |
| parser = rerank_options.get_reranking_parser() |
| args = options.parse_args_and_arch(parser) |
| gen_and_reprocess_nbest(args) |
|
|
|
|
| if __name__ == "__main__": |
| cli_main() |
|
|