Пример #1
0
    def make_batches(self, lines):
        token_lst = [
            self.task.source_dictionary.encode_line(
                line, add_if_not_exist=False).long() for line in lines
        ]
        length_lst = torch.LongTensor([tokens.numel() for tokens in token_lst])

        ds = data.TokenBlockDataset(token_lst,
                                    length_lst,
                                    self.args.tokens_per_sample,
                                    pad=self.task.dictionary.pad(),
                                    eos=self.task.dictionary.eos(),
                                    break_mode='eos',
                                    include_targets=True)
        add_eos_for_other_targets = self.args.sample_break_mode is not None and self.args.sample_break_mode != 'none'
        itr = self.task.get_batch_iterator(
            dataset=data.MonolingualDataset(ds,
                                            ds.sizes,
                                            self.task.dictionary,
                                            self.task.target_dictionary,
                                            add_eos_for_other_targets,
                                            shuffle=False,
                                            targets=self.task.targets),
            max_tokens=self.args.max_tokens or 3000,
            max_sentences=self.args.max_sentences,
            max_positions=utils.resolve_max_positions(
                *[model.max_positions() for model in self.models]),
            num_shards=self.args.num_shards,
            shard_id=self.args.shard_id,
            ignore_invalid_inputs=True,
            num_workers=self.args.num_workers,
        ).next_epoch_itr(shuffle=False)

        return itr
Пример #2
0
    def get_dummy_batch(self,
                        num_tokens,
                        max_positions,
                        src_len=128,
                        tgt_len=128):
        """Return a dummy batch with a given number of tokens."""
        src_len, tgt_len = utils.resolve_max_positions(
            (src_len, tgt_len),
            max_positions,
            (self.max_source_positions, self.max_target_positions),
        )
        bsz = max(num_tokens // max(src_len, tgt_len), 1)

        src_dummy = self.src_dict.dummy_sentence(src_len)
        tgt_dummy = self.tgt_dict.dummy_sentence(tgt_len)
        return self.collater([{
            'id': i,
            'source': {
                "tokens": src_dummy,
                "labels": torch.zeros_like(src_dummy),
            },
            'target': {
                "tokens": tgt_dummy,
                "labels": torch.zeros_like(tgt_dummy),
            } if self.tgt_dict is not None else None,
        } for i in range(bsz)])
Пример #3
0
def validate(args, trainer, task, epoch_itr, subsets):
    """Evaluate the model on the validation set(s) and return the losses."""
    valid_losses = []
    for subset in subsets:
        # Initialize data iterator
        itr = task.get_batch_iterator(
            dataset=task.dataset(subset),
            max_tokens=args.max_tokens,
            max_sentences=args.max_sentences_valid,
            max_positions=utils.resolve_max_positions(
                task.max_positions(),
                trainer.get_model().max_positions(),
            ),
            ignore_invalid_inputs=args.skip_invalid_size_inputs_valid_test,
            required_batch_size_multiple=8,
            seed=args.seed,
            num_shards=args.distributed_world_size,
            shard_id=args.distributed_rank,
            num_workers=args.num_workers,
        ).next_epoch_itr(shuffle=False)
        progress = progress_bar.build_progress_bar(
            args, itr, epoch_itr.epoch,
            prefix='valid on \'{}\' subset'.format(subset),
            no_progress_bar='simple'
        )

        # reset validation loss meters
        for k in ['valid_loss', 'valid_nll_loss']:
            meter = trainer.get_meter(k)
            if meter is not None:
                meter.reset()
        extra_meters = collections.defaultdict(lambda: AverageMeter())

        for sample in progress:
            log_output = trainer.valid_step(sample)

            for k, v in log_output.items():
                if k in ['loss', 'nll_loss', 'ntokens', 'nsentences', 'sample_size']:
                    continue
                extra_meters[k].update(v)

        # log validation stats
        stats = get_valid_stats(trainer)
        for k, meter in extra_meters.items():
            stats[k] = meter.avg
        progress.print(stats, tag=subset, step=trainer.get_num_updates())

        valid_losses.append(stats['loss'].avg)
    return valid_losses
Пример #4
0
def main(parsed_args):
    assert parsed_args.path is not None, '--path required for evaluation!'

    import_user_module(parsed_args)

    print(parsed_args)

    use_cuda = torch.cuda.is_available() and not parsed_args.cpu

    task = tasks.setup_task(parsed_args)

    # Load ensemble
    print('| loading model(s) from {}'.format(parsed_args.path))
    models, args = utils.load_ensemble_for_inference(
        parsed_args.path.split(':'), task, model_arg_overrides=eval(parsed_args.model_overrides),
    )

    for arg in vars(parsed_args).keys():
        if arg not in {'self_target', 'future_target', 'past_target', 'tokens_per_sample', 'output_size_dictionary'}:
            setattr(args, arg, getattr(parsed_args, arg))
    task = tasks.setup_task(args)

    # Load dataset splits
    task.load_dataset(args.gen_subset)
    print('| {} {} {} examples'.format(args.data, args.gen_subset, len(task.dataset(args.gen_subset))))

    # Optimize ensemble for generation and set the source and dest dicts on the model (required by scorer)
    for model in models:
        model.make_generation_fast_()
        if args.fp16:
            model.half()
        if use_cuda:
            model.cuda()

    assert len(models) > 0

    print('num. model params: {}'.format(sum(p.numel() for p in models[0].parameters())))

    itr = task.get_batch_iterator(
        dataset=task.dataset(args.gen_subset),
        max_tokens=args.max_tokens or 36000,
        max_sentences=args.max_sentences,
        max_positions=utils.resolve_max_positions(*[
            model.max_positions() for model in models
        ]),
        ignore_invalid_inputs=True,
        num_shards=args.num_shards,
        shard_id=args.shard_id,
        num_workers=args.num_workers,
    ).next_epoch_itr(shuffle=False)

    gen_timer = StopwatchMeter()
    scorer = SequenceScorer(task.target_dictionary)

    score_sum = 0.
    count = 0

    if args.remove_bpe is not None:
        if args.remove_bpe == 'sentencepiece':
            raise NotImplementedError
        else:
            bpe_cont = args.remove_bpe.rstrip()
            bpe_toks = set(i for i in range(len(task.dictionary)) if task.dictionary[i].endswith(bpe_cont))
        bpe_len = len(bpe_cont)
    else:
        bpe_toks = None
        bpe_len = 0

    word_stats = dict()

    with progress_bar.build_progress_bar(args, itr) as t:
        wps_meter = TimeMeter()
        for sample in t:
            sample = utils.move_to_cuda(sample) if use_cuda else sample
            if 'net_input' not in sample:
                continue

            gen_timer.start()
            hypos = scorer.generate(models, sample)
            gen_timer.stop(sample['ntokens'])

            for hypos_i in hypos:
                hypo = hypos_i[0]
                pos_scores = hypo['positional_scores']

                skipped_toks = 0
                if bpe_toks is not None:
                    for i in range(len(hypo['tokens']) - 1):
                        if hypo['tokens'][i].item() in bpe_toks:
                            skipped_toks += 1
                            pos_scores[i + 1] += pos_scores[i]
                            pos_scores[i] = 0

                inf_scores = pos_scores.eq(float('inf')) | pos_scores.eq(float('-inf'))
                if inf_scores.any():
                    print('| Skipping tokens with inf scores:',
                          task.target_dictionary.string(hypo['tokens'][inf_scores.nonzero()]))
                    pos_scores = pos_scores[(~inf_scores).nonzero()]
                score_sum += pos_scores.sum().cpu().item()  # custom fix to work with fp16
                count += pos_scores.numel() - skipped_toks

                if args.output_word_probs or args.output_word_stats:
                    w = ''
                    word_prob = []
                    is_bpe = False
                    for i in range(len(hypo['tokens'])):
                        w_ind = hypo['tokens'][i].item()
                        w += task.dictionary[w_ind]
                        if bpe_toks is not None and w_ind in bpe_toks:
                            w = w[:-bpe_len]
                            is_bpe = True
                        else:
                            word_prob.append((w, pos_scores[i].item()))

                            next_prob = None
                            ind = i + 1
                            while ind < len(hypo['tokens']):
                                if pos_scores[ind].item() != 0:
                                    next_prob = pos_scores[ind]
                                    break
                                ind += 1

                            word_stats.setdefault(w, WordStat(w, is_bpe)).add(pos_scores[i].item(), next_prob)
                            is_bpe = False
                            w = ''
                    if args.output_word_probs:
                        print('\t'.join('{} [{:2f}]'.format(x[0], x[1]) for x in word_prob))

            wps_meter.update(sample['ntokens'])
            t.log({'wps': round(wps_meter.avg)})

    avg_nll_loss = -score_sum / count
    print('| Evaluated {} tokens in {:.1f}s ({:.2f} tokens/s)'.format(gen_timer.n, gen_timer.sum, 1. / gen_timer.avg))
    print('| Loss: {:.4f}, Perplexity: {:.2f}'.format(avg_nll_loss, np.exp(avg_nll_loss)))

    if args.output_word_stats:
        for ws in sorted(word_stats.values(), key=lambda x: x.count, reverse=True):
            print(ws)
Пример #5
0
def main(args):
    import_user_module(args)

    if args.buffer_size < 1:
        args.buffer_size = 1
    if args.max_tokens is None and args.max_sentences is None:
        args.max_sentences = 1

    assert not args.sampling or args.nbest == args.beam, \
        '--sampling requires --nbest to be equal to --beam'
    assert not args.max_sentences or args.max_sentences <= args.buffer_size, \
        '--max-sentences/--batch-size cannot be larger than --buffer-size'

    print(args)

    use_cuda = torch.cuda.is_available() and not args.cpu

    # Setup task, e.g., translation
    task = tasks.setup_task(args)

    # Load ensemble
    print('| loading model(s) from {}'.format(args.path))
    models, _model_args = utils.load_ensemble_for_inference(
        args.path.split(':'), task, model_arg_overrides=eval(args.model_overrides),
    )

    # Set dictionaries
    src_dict = task.source_dictionary
    tgt_dict = task.target_dictionary

    # Optimize ensemble for generation
    for model in models:
        model.make_generation_fast_(
            beamable_mm_beam_size=None if args.no_beamable_mm else args.beam,
            need_attn=args.print_alignment,
        )
        if args.fp16:
            model.half()
        if use_cuda:
            model.cuda()

    # Initialize generator
    generator = task.build_generator(args)

    # Load alignment dictionary for unknown word replacement
    # (None if no unknown word replacement, empty if no path to align dictionary)
    align_dict = utils.load_align_dict(args.replace_unk)

    max_positions = utils.resolve_max_positions(
        task.max_positions(),
        *[model.max_positions() for model in models]
    )

    if args.buffer_size > 1:
        print('| Sentence buffer size:', args.buffer_size)
    print('| Type the input sentence and press return:')
    start_id = 0
    for inputs in buffered_read(args.input, args.buffer_size):
        results = []
        for batch in make_batches(inputs, args, task, max_positions):
            src_tokens = batch.src_tokens
            src_lengths = batch.src_lengths
            if use_cuda:
                src_tokens = src_tokens.cuda()
                src_lengths = src_lengths.cuda()

            sample = {
                'net_input': {
                    'src_tokens': src_tokens,
                    'src_lengths': src_lengths,
                },
            }
            translations = task.inference_step(generator, models, sample)
            for i, (id, hypos) in enumerate(zip(batch.ids.tolist(), translations)):
                src_tokens_i = utils.strip_pad(src_tokens[i], tgt_dict.pad())
                results.append((start_id + id, src_tokens_i, hypos))

        # sort output to match input order
        for id, src_tokens, hypos in sorted(results, key=lambda x: x[0]):
            if src_dict is not None:
                src_str = src_dict.string(src_tokens, args.remove_bpe)
                print('S-{}\t{}'.format(id, src_str))

            # Process top predictions
            for hypo in hypos[:min(len(hypos), args.nbest)]:
                hypo_tokens, hypo_str, alignment = utils.post_process_prediction(
                    hypo_tokens=hypo['tokens'].int().cpu(),
                    src_str=src_str,
                    alignment=hypo['alignment'].int().cpu() if hypo['alignment'] is not None else None,
                    align_dict=align_dict,
                    tgt_dict=tgt_dict,
                    remove_bpe=args.remove_bpe,
                )
                print('H-{}\t{}\t{}'.format(id, hypo['score'], hypo_str))
                print('P-{}\t{}'.format(
                    id,
                    ' '.join(map(lambda x: '{:.4f}'.format(x), hypo['positional_scores'].tolist()))
                ))
                if args.print_alignment:
                    print('A-{}\t{}'.format(
                        id,
                        ' '.join(map(lambda x: str(utils.item(x)), alignment))
                    ))

        # update running id counter
        start_id += len(results)
def main(args):
    assert args.path is not None, '--path required for generation!'
    assert not args.sampling or args.nbest == args.beam, \
        '--sampling requires --nbest to be equal to --beam'
    assert args.replace_unk is None or args.raw_text, \
        '--replace-unk requires a raw text dataset (--raw-text)'

    import_user_module(args)
    """
    MODIFIED: The GEC task uses token-labeled raw text datasets, which 
    require raw text to be used.
    """
    assert args.raw_text, \
        f"--raw-text option is required for copy-based generation."

    if args.max_tokens is None and args.max_sentences is None:
        args.max_tokens = 12000
    print(args)

    use_cuda = torch.cuda.is_available() and not args.cpu

    # Load dataset splits
    task = tasks.setup_task(args)
    task.load_dataset(args.gen_subset)
    print('| {} {} {} examples'.format(args.data, args.gen_subset,
                                       len(task.dataset(args.gen_subset))))

    # Set dictionaries
    try:
        src_dict = getattr(task, 'source_dictionary', None)
    except NotImplementedError:
        src_dict = None
    tgt_dict = task.target_dictionary

    # Load ensemble
    print('| loading model(s) from {}'.format(args.path))
    models, _model_args = utils.load_ensemble_for_inference(
        args.path.split(':'),
        task,
        model_arg_overrides=eval(args.model_overrides),
    )

    # Optimize ensemble for generation
    for model in models:
        model.make_generation_fast_(
            beamable_mm_beam_size=None if args.no_beamable_mm else args.beam,
            need_attn=args.print_alignment,
        )
        if args.fp16:
            model.half()
        if use_cuda:
            model.cuda()

    # Load alignment dictionary for unknown word replacement
    # (None if no unknown word replacement, empty if no path to align dictionary)
    align_dict = utils.load_align_dict(args.replace_unk)

    # Load dataset (possibly sharded)
    itr = task.get_batch_iterator(
        dataset=task.dataset(args.gen_subset),
        max_tokens=args.max_tokens,
        max_sentences=args.max_sentences,
        max_positions=utils.resolve_max_positions(
            task.max_positions(),
            *[model.max_positions() for model in models]),
        ignore_invalid_inputs=args.skip_invalid_size_inputs_valid_test,
        required_batch_size_multiple=8,
        num_shards=args.num_shards,
        shard_id=args.shard_id,
        num_workers=args.num_workers,
    ).next_epoch_itr(shuffle=False)

    # Initialize generator
    gen_timer = StopwatchMeter()
    generator = task.build_generator(args)

    # Generate and compute BLEU score
    if args.sacrebleu:
        scorer = bleu.SacrebleuScorer()
    else:
        scorer = bleu.Scorer(tgt_dict.pad(), tgt_dict.eos(), tgt_dict.unk())
    num_sentences = 0
    has_target = True
    has_copy_scores = True
    with progress_bar.build_progress_bar(args, itr) as t:
        wps_meter = TimeMeter()
        for sample in t:
            sample = utils.move_to_cuda(sample) if use_cuda else sample
            if 'net_input' not in sample:
                continue

            prefix_tokens = None
            if args.prefix_size > 0:
                prefix_tokens = sample['target'][:, :args.prefix_size]

            gen_timer.start()
            """
            MODIFIED: Use copy scores to replace <unk>'s with raw source words.
            
            use_copy_scores may be False with non-copy-based transformers that
            only use edit labels (e.g., transformer_aux_el and transformer_el).
            """
            hypos = task.inference_step(generator, models, sample,
                                        prefix_tokens)
            use_copy_scores = hypos[0][0].get('copy_scores', None) is not None
            if has_copy_scores and not use_copy_scores:
                print("| generate_or_copy.py | INFO | "
                      "Model does not include copy scores. "
                      "Generating hypotheses without replacing UNKs.")
                has_copy_scores = False
            num_generated_tokens = sum(len(h[0]['tokens']) for h in hypos)
            gen_timer.stop(num_generated_tokens)

            for i, sample_id in enumerate(sample['id'].tolist()):
                has_target = sample['target'] is not None

                # Remove padding
                src_tokens = utils.strip_pad(
                    sample['net_input']['src_tokens'][i, :], tgt_dict.pad())
                target_tokens = None
                if has_target:
                    target_tokens = utils.strip_pad(
                        sample['target'][i, :], tgt_dict.pad()).int().cpu()
                """
                MODIFIED: Replace <unk>s with raw source tokens. 
                This is analogous to the case where align_dict is provided
                in the original generate.py.
                """
                rawtext_dataset = task.dataset(args.gen_subset)
                src_str = rawtext_dataset.src.get_original_text(sample_id)
                tokenized_src_str = rawtext_dataset.src_dict.string(
                    src_tokens, bpe_symbol=args.remove_bpe)
                target_str = rawtext_dataset.tgt.get_original_text(sample_id)

                if not args.quiet:
                    if src_dict is not None:
                        # Raw source text
                        print('S-{}\t{}'.format(sample_id, src_str))
                        # Tokenized source text
                        print('K-{}\t{}'.format(sample_id, tokenized_src_str))
                    if has_target:
                        print('T-{}\t{}'.format(sample_id, target_str))

                # Process top predictions
                for k, hypo in enumerate(
                        hypos[i][:min(len(hypos), args.nbest)]):
                    hypo_tokens, hypo_str, alignment = utils.post_process_prediction(
                        hypo_tokens=hypo['tokens'].int().cpu(),
                        src_str=src_str,
                        alignment=hypo['alignment'].int().cpu()
                        if hypo['alignment'] is not None else None,
                        align_dict=align_dict,
                        tgt_dict=tgt_dict,
                        remove_bpe=args.remove_bpe,
                    )
                    """
                    MODIFIED: Replace predicted <unk>s with the source token
                    that received the highest score.
                    """
                    raw_src_tokens = src_str.split()
                    final_hypo_tokens_str = []
                    for tgt_position, hypo_token in enumerate(hypo_tokens):
                        if use_copy_scores and hypo_token == tgt_dict.unk():
                            # See sequence_copygenerator.py#L292 for details.
                            copy_scores = hypo[
                                'copy_scores'][:, tgt_position].cpu()
                            assert len(copy_scores) - 1 == len(raw_src_tokens), \
                                f"length of copy scores do not match input source tokens " \
                                f"(copy_scores: {copy_scores}, raw_src_tokens: {raw_src_tokens})"
                            src_position = torch.argmax(copy_scores).item()
                            # Don't copy if attending to an EOS (not ideal).
                            if src_position == len(raw_src_tokens):
                                print("WARNING: copy score highest at EOS.")
                            else:
                                final_hypo_tokens_str.append(
                                    raw_src_tokens[src_position])
                            print('U-{}\t{}\t{}'.format(
                                sample_id,
                                tgt_position,
                                ' '.join(
                                    map(
                                        lambda x: '{:.4f}'.format(x),
                                        copy_scores.tolist(),
                                    )),
                            ))
                        else:
                            final_hypo_tokens_str.append(tgt_dict[hypo_token])

                    # Note: raw input tokens could be included here.
                    final_hypo_str = ' '.join([
                        token for token in final_hypo_tokens_str
                        if token != tgt_dict.eos_word
                    ])

                    if not args.quiet:
                        print('H-{}\t{}\t{}'.format(sample_id, hypo['score'],
                                                    final_hypo_str))
                        print('P-{}\t{}'.format(
                            sample_id, ' '.join(
                                map(
                                    lambda x: '{:.4f}'.format(x),
                                    hypo['positional_scores'].tolist(),
                                ))))

                        if args.print_alignment:
                            print('A-{}\t{}'.format(
                                sample_id, ' '.join(
                                    map(lambda x: str(utils.item(x)),
                                        alignment))))

                    # Score only the top hypothesis
                    if has_target and k == 0:
                        if align_dict is not None or args.remove_bpe is not None:
                            # Convert back to tokens for evaluation with unk replacement and/or without BPE
                            target_tokens = tgt_dict.encode_line(
                                target_str, add_if_not_exist=True)
                        if hasattr(scorer, 'add_string'):
                            scorer.add_string(target_str, hypo_str)
                        else:
                            scorer.add(target_tokens, hypo_tokens)

            wps_meter.update(num_generated_tokens)
            t.log({'wps': round(wps_meter.avg)})
            num_sentences += sample['nsentences']

    print(
        '| Translated {} sentences ({} tokens) in {:.1f}s ({:.2f} sentences/s, {:.2f} tokens/s)'
        .format(num_sentences, gen_timer.n, gen_timer.sum,
                num_sentences / gen_timer.sum, 1. / gen_timer.avg))
    if has_target:
        print('| Generate {} with beam={}: {}'.format(args.gen_subset,
                                                      args.beam,
                                                      scorer.result_string()))
    return scorer
Пример #7
0
def main(args, init_distributed=False):
    import_user_module(args)

    if args.max_tokens is None:
        args.max_tokens = 6000
    print(args)

    if torch.cuda.is_available() and not args.cpu:
        torch.cuda.set_device(args.device_id)
    torch.manual_seed(args.seed)

    # Setup task, e.g., translation, language modeling, etc.
    task = tasks.setup_task(args)

    # Load dataset splits
    load_dataset_splits(task, ['train', 'valid'])

    # Initialize distributed training (after data loading)
    if init_distributed:
        import socket
        args.distributed_rank = distributed_utils.distributed_init(args)
        print('| initialized host {} as rank {}'.format(socket.gethostname(), args.distributed_rank))

    # Build model and criterion
    model = task.build_model(args)
    criterion = task.build_criterion(args)
    print(model)
    print('| model {}, criterion {}'.format(args.arch, criterion.__class__.__name__))
    print('| num. model params: {} (num. trained: {})'.format(
        sum(p.numel() for p in model.parameters()),
        sum(p.numel() for p in model.parameters() if p.requires_grad),
    ))

    # Make a dummy batch to (i) warm the caching allocator and (ii) as a
    # placeholder DistributedDataParallel when there's an uneven number of
    # batches per worker.
    max_positions = utils.resolve_max_positions(
        task.max_positions(),
        model.max_positions(),
    )
    dummy_batch = task.dataset('train').get_dummy_batch(args.max_tokens, max_positions)
    oom_batch = task.dataset('train').get_dummy_batch(1, max_positions)

    # Build trainer
    trainer = Trainer(args, task, model, criterion, dummy_batch, oom_batch)
    print('| training on {} GPUs'.format(args.distributed_world_size))
    print('| max tokens per GPU = {} and max sentences per GPU = {}'.format(
        args.max_tokens,
        args.max_sentences,
    ))

    # Initialize dataloader
    epoch_itr = task.get_batch_iterator(
        dataset=task.dataset(args.train_subset),
        max_tokens=args.max_tokens,
        max_sentences=args.max_sentences,
        max_positions=max_positions,
        ignore_invalid_inputs=True,
        required_batch_size_multiple=8,
        seed=args.seed,
        num_shards=args.distributed_world_size,
        shard_id=args.distributed_rank,
        num_workers=args.num_workers,
    )

    # Load the latest checkpoint if one is available
    if not load_checkpoint(args, trainer, epoch_itr):
        trainer.dummy_train_step([dummy_batch])

    # Train until the learning rate gets too small
    max_epoch = args.max_epoch or math.inf
    max_update = args.max_update or math.inf
    lr = trainer.get_lr()
    train_meter = StopwatchMeter()
    train_meter.start()
    valid_losses = [None]
    valid_subsets = args.valid_subset.split(',')
    while lr > args.min_lr and epoch_itr.epoch < max_epoch and trainer.get_num_updates() < max_update:
        # train for one epoch
        train(args, trainer, task, epoch_itr)

        if epoch_itr.epoch % args.validate_interval == 0:
            valid_losses = validate(args, trainer, task, epoch_itr, valid_subsets)

        # only use first validation loss to update the learning rate
        lr = trainer.lr_step(epoch_itr.epoch, valid_losses[0])

        # save checkpoint
        if epoch_itr.epoch % args.save_interval == 0:
            save_checkpoint(args, trainer, epoch_itr, valid_losses[0])
    train_meter.stop()
    print('| done training in {:.1f} seconds'.format(train_meter.sum))
Пример #8
0
def main(args):
    assert args.path is not None, '--path required for generation!'
    assert not args.sampling or args.nbest == args.beam, \
        '--sampling requires --nbest to be equal to --beam'
    assert args.replace_unk is None or args.raw_text, \
        '--replace-unk requires a raw text dataset (--raw-text)'

    import_user_module(args)

    if args.max_tokens is None and args.max_sentences is None:
        args.max_tokens = 12000
    print(args)

    use_cuda = torch.cuda.is_available() and not args.cpu

    # Load dataset splits
    task = tasks.setup_task(args)
    task.load_dataset(args.gen_subset)
    print('| {} {} {} examples'.format(args.data, args.gen_subset,
                                       len(task.dataset(args.gen_subset))))

    # Set dictionaries
    try:
        src_dict = getattr(task, 'source_dictionary', None)
    except NotImplementedError:
        src_dict = None
    tgt_dict = task.target_dictionary

    # Load ensemble
    print('| loading model(s) from {}'.format(args.path))
    models, _model_args = utils.load_ensemble_for_inference(
        args.path.split(':'),
        task,
        model_arg_overrides=eval(args.model_overrides),
    )

    # Optimize ensemble for generation
    for model in models:
        model.make_generation_fast_(
            beamable_mm_beam_size=None if args.no_beamable_mm else args.beam,
            need_attn=args.print_alignment,
        )
        if args.fp16:
            model.half()
        if use_cuda:
            model.cuda()

    # Load alignment dictionary for unknown word replacement
    # (None if no unknown word replacement, empty if no path to align dictionary)
    align_dict = utils.load_align_dict(args.replace_unk)

    # Load dataset (possibly sharded)
    itr = task.get_batch_iterator(
        dataset=task.dataset(args.gen_subset),
        max_tokens=args.max_tokens,
        max_sentences=args.max_sentences,
        max_positions=utils.resolve_max_positions(
            task.max_positions(),
            *[model.max_positions() for model in models]),
        ignore_invalid_inputs=args.skip_invalid_size_inputs_valid_test,
        required_batch_size_multiple=8,
        num_shards=args.num_shards,
        shard_id=args.shard_id,
        num_workers=args.num_workers,
    ).next_epoch_itr(shuffle=False)

    # Initialize generator
    gen_timer = StopwatchMeter()
    generator = task.build_generator(args)

    # Generate and compute BLEU score
    if args.sacrebleu:
        scorer = bleu.SacrebleuScorer()
    else:
        scorer = bleu.Scorer(tgt_dict.pad(), tgt_dict.eos(), tgt_dict.unk())
    num_sentences = 0
    has_target = True
    with progress_bar.build_progress_bar(args, itr) as t:
        wps_meter = TimeMeter()
        for sample in t:
            sample = utils.move_to_cuda(sample) if use_cuda else sample
            if 'net_input' not in sample:
                continue

            prefix_tokens = None
            if args.prefix_size > 0:
                prefix_tokens = sample['target'][:, :args.prefix_size]

            gen_timer.start()
            hypos = task.inference_step(generator, models, sample,
                                        prefix_tokens)
            num_generated_tokens = sum(len(h[0]['tokens']) for h in hypos)
            gen_timer.stop(num_generated_tokens)

            for i, sample_id in enumerate(sample['id'].tolist()):
                has_target = sample['target'] is not None

                # Remove padding
                src_tokens = utils.strip_pad(
                    sample['net_input']['src_tokens'][i, :], tgt_dict.pad())
                target_tokens = None
                if has_target:
                    target_tokens = utils.strip_pad(
                        sample['target'][i, :], tgt_dict.pad()).int().cpu()

                # Either retrieve the original sentences or regenerate them from tokens.
                if align_dict is not None:
                    src_str = task.dataset(
                        args.gen_subset).src.get_original_text(sample_id)
                    target_str = task.dataset(
                        args.gen_subset).tgt.get_original_text(sample_id)
                else:
                    if src_dict is not None:
                        src_str = src_dict.string(src_tokens, args.remove_bpe)
                    else:
                        src_str = ""
                    if has_target:
                        target_str = tgt_dict.string(target_tokens,
                                                     args.remove_bpe,
                                                     escape_unk=True)

                if not args.quiet:
                    if src_dict is not None:
                        print('S-{}\t{}'.format(sample_id, src_str))
                    if has_target:
                        print('T-{}\t{}'.format(sample_id, target_str))

                # Process top predictions
                for i, hypo in enumerate(
                        hypos[i][:min(len(hypos), args.nbest)]):
                    hypo_tokens, hypo_str, alignment = utils.post_process_prediction(
                        hypo_tokens=hypo['tokens'].int().cpu(),
                        src_str=src_str,
                        alignment=hypo['alignment'].int().cpu()
                        if hypo['alignment'] is not None else None,
                        align_dict=align_dict,
                        tgt_dict=tgt_dict,
                        remove_bpe=args.remove_bpe,
                    )

                    if not args.quiet:
                        print('H-{}\t{}\t{}'.format(sample_id, hypo['score'],
                                                    hypo_str))
                        print('P-{}\t{}'.format(
                            sample_id, ' '.join(
                                map(
                                    lambda x: '{:.4f}'.format(x),
                                    hypo['positional_scores'].tolist(),
                                ))))

                        if args.print_alignment:
                            print('A-{}\t{}'.format(
                                sample_id, ' '.join(
                                    map(lambda x: str(utils.item(x)),
                                        alignment))))

                    # Score only the top hypothesis
                    if has_target and i == 0:
                        if align_dict is not None or args.remove_bpe is not None:
                            # Convert back to tokens for evaluation with unk replacement and/or without BPE
                            target_tokens = tgt_dict.encode_line(
                                target_str, add_if_not_exist=True)
                        if hasattr(scorer, 'add_string'):
                            scorer.add_string(target_str, hypo_str)
                        else:
                            scorer.add(target_tokens, hypo_tokens)

            wps_meter.update(num_generated_tokens)
            t.log({'wps': round(wps_meter.avg)})
            num_sentences += sample['nsentences']

    print(
        '| Translated {} sentences ({} tokens) in {:.1f}s ({:.2f} sentences/s, {:.2f} tokens/s)'
        .format(num_sentences, gen_timer.n, gen_timer.sum,
                num_sentences / gen_timer.sum, 1. / gen_timer.avg))
    if has_target:
        print('| Generate {} with beam={}: {}'.format(args.gen_subset,
                                                      args.beam,
                                                      scorer.result_string()))
    return scorer