# python wrapper for fairseq-interactive command line tool #!/usr/bin/env python3 -u # Copyright (c) Facebook, Inc. and its affiliates. # # This source code is licensed under the MIT license found in the # LICENSE file in the root directory of this source tree. """ Translate raw text with a trained model. Batches data on-the-fly. """ import ast from collections import namedtuple import torch from fairseq import checkpoint_utils, options, tasks, utils from fairseq.dataclass.utils import convert_namespace_to_omegaconf from fairseq.token_generation_constraints import pack_constraints, unpack_constraints from fairseq_cli.generate import get_symbols_to_strip_from_output import codecs Batch = namedtuple("Batch", "ids src_tokens src_lengths constraints") Translation = namedtuple("Translation", "src_str hypos pos_scores alignments") def make_batches( lines, cfg, task, max_positions, encode_fn, constrainted_decoding=False ): def encode_fn_target(x): return encode_fn(x) if constrainted_decoding: # Strip (tab-delimited) contraints, if present, from input lines, # store them in batch_constraints batch_constraints = [list() for _ in lines] for i, line in enumerate(lines): if "\t" in line: lines[i], *batch_constraints[i] = line.split("\t") # Convert each List[str] to List[Tensor] for i, constraint_list in enumerate(batch_constraints): batch_constraints[i] = [ task.target_dictionary.encode_line( encode_fn_target(constraint), append_eos=False, add_if_not_exist=False, ) for constraint in constraint_list ] if constrainted_decoding: constraints_tensor = pack_constraints(batch_constraints) else: constraints_tensor = None tokens, lengths = task.get_interactive_tokens_and_lengths(lines, encode_fn) itr = task.get_batch_iterator( dataset=task.build_dataset_for_inference( tokens, lengths, constraints=constraints_tensor ), max_tokens=cfg.dataset.max_tokens, max_sentences=cfg.dataset.batch_size, max_positions=max_positions, ignore_invalid_inputs=cfg.dataset.skip_invalid_size_inputs_valid_test, ).next_epoch_itr(shuffle=False) for batch in itr: ids = batch["id"] src_tokens = batch["net_input"]["src_tokens"] src_lengths = batch["net_input"]["src_lengths"] constraints = batch.get("constraints", None) yield Batch( ids=ids, src_tokens=src_tokens, src_lengths=src_lengths, constraints=constraints, ) class Translator: def __init__( self, data_dir, checkpoint_path, batch_size=25, constrained_decoding=False ): self.constrained_decoding = constrained_decoding self.parser = options.get_generation_parser(interactive=True) # buffer_size is currently not used but we just initialize it to batch # size + 1 to avoid any assertion errors. if self.constrained_decoding: self.parser.set_defaults( path=checkpoint_path, remove_bpe="subword_nmt", num_workers=-1, constraints="ordered", batch_size=batch_size, buffer_size=batch_size + 1, ) else: self.parser.set_defaults( path=checkpoint_path, remove_bpe="subword_nmt", num_workers=-1, batch_size=batch_size, buffer_size=batch_size + 1, ) args = options.parse_args_and_arch(self.parser, input_args=[data_dir]) # we are explictly setting src_lang and tgt_lang here # generally the data_dir we pass contains {split}-{src_lang}-{tgt_lang}.*.idx files from # which fairseq infers the src and tgt langs(if these are not passed). In deployment we dont # use any idx files and only store the SRC and TGT dictionaries. args.source_lang = "SRC" args.target_lang = "TGT" # since we are truncating sentences to max_seq_len in engine, we can set it to False here args.skip_invalid_size_inputs_valid_test = False # we have custom architechtures in this folder and we will let fairseq # import this args.user_dir = "model_configs" self.cfg = convert_namespace_to_omegaconf(args) utils.import_user_module(self.cfg.common) if self.cfg.interactive.buffer_size < 1: self.cfg.interactive.buffer_size = 1 if self.cfg.dataset.max_tokens is None and self.cfg.dataset.batch_size is None: self.cfg.dataset.batch_size = 1 assert ( not self.cfg.generation.sampling or self.cfg.generation.nbest == self.cfg.generation.beam ), "--sampling requires --nbest to be equal to --beam" assert ( not self.cfg.dataset.batch_size or self.cfg.dataset.batch_size <= self.cfg.interactive.buffer_size ), "--batch-size cannot be larger than --buffer-size" # Fix seed for stochastic decoding # if self.cfg.common.seed is not None and not self.cfg.generation.no_seed_provided: # np.random.seed(self.cfg.common.seed) # utils.set_torch_seed(self.cfg.common.seed) # if not self.constrained_decoding: # self.use_cuda = torch.cuda.is_available() and not self.cfg.common.cpu # else: # self.use_cuda = False self.use_cuda = torch.cuda.is_available() and not self.cfg.common.cpu # Setup task, e.g., translation self.task = tasks.setup_task(self.cfg.task) # Load ensemble overrides = ast.literal_eval(self.cfg.common_eval.model_overrides) self.models, self._model_args = checkpoint_utils.load_model_ensemble( utils.split_paths(self.cfg.common_eval.path), arg_overrides=overrides, task=self.task, suffix=self.cfg.checkpoint.checkpoint_suffix, strict=(self.cfg.checkpoint.checkpoint_shard_count == 1), num_shards=self.cfg.checkpoint.checkpoint_shard_count, ) # Set dictionaries self.src_dict = self.task.source_dictionary self.tgt_dict = self.task.target_dictionary # Optimize ensemble for generation for model in self.models: if model is None: continue if self.cfg.common.fp16: model.half() if ( self.use_cuda and not self.cfg.distributed_training.pipeline_model_parallel ): model.cuda() model.prepare_for_inference_(self.cfg) # Initialize generator self.generator = self.task.build_generator(self.models, self.cfg.generation) # Handle tokenization and BPE self.tokenizer = self.task.build_tokenizer(self.cfg.tokenizer) self.bpe = self.task.build_bpe(self.cfg.bpe) # Load alignment dictionary for unknown word replacement # (None if no unknown word replacement, empty if no path to align dictionary) self.align_dict = utils.load_align_dict(self.cfg.generation.replace_unk) self.max_positions = utils.resolve_max_positions( self.task.max_positions(), *[model.max_positions() for model in self.models] ) def encode_fn(self, x): if self.tokenizer is not None: x = self.tokenizer.encode(x) if self.bpe is not None: x = self.bpe.encode(x) return x def decode_fn(self, x): if self.bpe is not None: x = self.bpe.decode(x) if self.tokenizer is not None: x = self.tokenizer.decode(x) return x def translate(self, inputs, constraints=None): if self.constrained_decoding and constraints is None: raise ValueError("Constraints cant be None in constrained decoding mode") if not self.constrained_decoding and constraints is not None: raise ValueError("Cannot pass constraints during normal translation") if constraints: constrained_decoding = True modified_inputs = [] for _input, constraint in zip(inputs, constraints): modified_inputs.append(_input + f"\t{constraint}") inputs = modified_inputs else: constrained_decoding = False start_id = 0 results = [] final_translations = [] for batch in make_batches( inputs, self.cfg, self.task, self.max_positions, self.encode_fn, constrained_decoding, ): bsz = batch.src_tokens.size(0) src_tokens = batch.src_tokens src_lengths = batch.src_lengths constraints = batch.constraints if self.use_cuda: src_tokens = src_tokens.cuda() src_lengths = src_lengths.cuda() if constraints is not None: constraints = constraints.cuda() sample = { "net_input": { "src_tokens": src_tokens, "src_lengths": src_lengths, }, } translations = self.task.inference_step( self.generator, self.models, sample, constraints=constraints ) list_constraints = [[] for _ in range(bsz)] if constrained_decoding: list_constraints = [unpack_constraints(c) for c in constraints] for i, (id, hypos) in enumerate(zip(batch.ids.tolist(), translations)): src_tokens_i = utils.strip_pad(src_tokens[i], self.tgt_dict.pad()) constraints = list_constraints[i] results.append( ( start_id + id, src_tokens_i, hypos, { "constraints": constraints, }, ) ) # sort output to match input order for id_, src_tokens, hypos, _ in sorted(results, key=lambda x: x[0]): src_str = "" if self.src_dict is not None: src_str = self.src_dict.string( src_tokens, self.cfg.common_eval.post_process ) # Process top predictions for hypo in hypos[: min(len(hypos), self.cfg.generation.nbest)]: hypo_tokens, hypo_str, alignment = utils.post_process_prediction( hypo_tokens=hypo["tokens"].int().cpu(), src_str=src_str, alignment=hypo["alignment"], align_dict=self.align_dict, tgt_dict=self.tgt_dict, remove_bpe="subword_nmt", extra_symbols_to_ignore=get_symbols_to_strip_from_output( self.generator ), ) detok_hypo_str = self.decode_fn(hypo_str) final_translations.append(detok_hypo_str) return final_translations