Beispiel #1
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def main(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    nb_gpu = len(opt.gpu_ranks)

    if opt.world_size > 1:
        mp = torch.multiprocessing.get_context('spawn')
        # Create a thread to listen for errors in the child processes.
        error_queue = mp.SimpleQueue()
        error_handler = ErrorHandler(error_queue)
        # Train with multiprocessing.
        procs = []
        for device_id in range(nb_gpu):
            procs.append(
                mp.Process(target=run,
                           args=(
                               opt,
                               device_id,
                               error_queue,
                           ),
                           daemon=True))
            procs[device_id].start()
            logger.info(" Starting process pid: %d  " % procs[device_id].pid)
            error_handler.add_child(procs[device_id].pid)
        for p in procs:
            p.join()

    elif nb_gpu == 1:  # case 1 GPU only
        single_main(opt, 0)
    else:  # case only CPU
        single_main(opt, -1)
def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models
    checkpoint = torch.load(model_path[0],
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    teacher_vocab = checkpoint['teacher_vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(vocab,
                                          opt.data_type,
                                          dynamic_dict=model_opt.copy_attn)

    else:
        fields = vocab
        teacher_fields = teacher_vocab

    fields_opt = {'original': fields, 'teacher': teacher_fields}
    # setattr(fields,"true_tgt_vocab",true_tgt_field.vocab)

    model = build_base_model(model_opt, fields_opt, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #3
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def ltm(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint["vocab"]
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(vocab,
                                          opt.data_type,
                                          dynamic_dict=model_opt.copy_attn)
    else:
        fields = vocab

    # This will randomly initialize
    if settings.RANDOM_WEIGHTS:
        checkpoint = None
    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #4
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def main(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)


    runTrain(opt)
def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    fields = checkpoint['vocab']

    # Avoid functionality on inference
    model_opt.update_vocab = False

    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    elif opt.int8:
        if opt.gpu >= 0:
            raise ValueError(
                "Dynamic 8-bit quantization is not supported on GPU")
        torch.quantization.quantize_dynamic(model, inplace=True)
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #6
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def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(
            vocab, opt.data_type, dynamic_dict=model_opt.copy_attn
        )
    else:
        fields = vocab

    arae_model_path = opt.model_arae if opt.arae and checkpoint else None
    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu, arae_setting=opt.arae, arae_model_path=arae_model_path)
    if opt.arae:
        model, gan_g, gan_d = model
        gan_g.eval()
        gan_d.eval()

    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()

    if opt.arae:
        model = model, gan_g, gan_d

    return fields, model, model_opt
Beispiel #7
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def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(
            vocab, opt.data_type, dynamic_dict=model_opt.copy_attn
        )
    else:
        fields = vocab
    # @memray, to make tgt_field be aware of format of targets (multiple phrases)
    if opt.data_type == "keyphrase":
        fields["tgt"].type = opt.tgt_type

    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #8
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def load_test_model(opt, args):
    model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(vocab,
                                          opt.data_type,
                                          dynamic_dict=model_opt.copy_attn)
    else:
        fields = vocab

    model = build_base_model(model_opt, fields, use_gpu(opt), args, checkpoint,
                             opt.gpu)
    if args.data_type == 'fp32':
        model.float()
    elif args.data_type == 'fp16':
        model.half()
    else:
        raise ValueError('wrong data_type argument {}'.format(args.data_type))
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #9
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def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(vocab,
                                          opt.data_type,
                                          dynamic_dict=model_opt.copy_attn)
    else:
        fields = vocab

    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    # TODO(yida)
    if model_opt.pos_gen:
        model.pos_generator.eval()
    return fields, model, model_opt
Beispiel #10
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def main(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    if opt.gpu > -1:  # case GPU
        single_main(opt, 0)
    else:  # case only CPU
        single_main(opt, -1)
Beispiel #11
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def load_pre_train(path):
    logger.info('Loading pre-train model from %s' % path)
    checkpoint = torch.load(path, map_location=lambda storage, loc: storage)

    opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
    model_opt = opt
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
    fields = checkpoint['vocab']
    model = build_model(model_opt, opt, fields, checkpoint)
    return model
Beispiel #12
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def main(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        vocab = torch.load(opt.data + '.vocab.pt')

    segment_token_idx = None
    if opt.use_segments:
        segment_token_idx = vocab['tgt'].base_field.vocab.stoi['.']
    opt.segment_token_idx = segment_token_idx

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    logger.info('Loading checkpoint from %s' % opt.train_from)
    checkpoint = torch.load(opt.train_from,
                            map_location=lambda storage, loc: storage)
    model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
    vocab = checkpoint['vocab']

    fields = vocab
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    model = build_model(model_opt, opt, fields, checkpoint)
    pdb.set_trace()
Beispiel #13
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def _get_model_opts(opt, checkpoint=None):
    """Get `model_opt` to build model, may load from `checkpoint` if any."""
    if checkpoint is not None:
        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        if (opt.tensorboard_log_dir == model_opt.tensorboard_log_dir
                and hasattr(model_opt, 'tensorboard_log_dir_dated')):
            # ensure tensorboard output is written in the directory
            # of previous checkpoints
            opt.tensorboard_log_dir_dated = model_opt.tensorboard_log_dir_dated
    else:
        model_opt = opt
    return model_opt
Beispiel #14
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def main(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        data = torch.load(opt.data)

    single_main(opt, opt.gpu, data)
    def load_model(self, model, use_gpu=False, gpu_device=-1, fp32=False):

        checkpoint = torch.load(model,
                                map_location=lambda storage, loc: storage)
        model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        fields = checkpoint['vocab']

        model = build_base_model(
            model_opt, fields, use_gpu, checkpoint,
            gpu_device)  # use_gpu = True/False, gpu_device = int/None
        if fp32:
            model.float()
        model.eval()
        model.generator.eval()
        return fields, model, model_opt
Beispiel #16
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def main():
    dummy_parser = argparse.ArgumentParser(description='train.py')
    onmt.opts.model_opts(dummy_parser)
    dummy_opt = dummy_parser.parse_known_args([])[0]
    opt = parser.parse_args()
    opt.cuda = opt.gpu > -1
    if opt.cuda:
        torch.cuda.set_device(opt.gpu)

    # Add in default model arguments, possibly added since training.
    checkpoint = torch.load(opt.model,
                            map_location=lambda storage, loc: storage)
    model_opt = checkpoint['opt']

    fields = checkpoint['vocab']
    src_dict = fields['src'].base_field.vocab  # assumes src is text
    tgt_dict = fields['tgt'].base_field.vocab

    model_opt = checkpoint['opt']
    for arg in dummy_opt.__dict__:
        if arg not in model_opt:
            model_opt.__dict__[arg] = dummy_opt.__dict__[arg]

    # build_base_model expects updated and validated opts
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)

    model = onmt.model_builder.build_base_model(model_opt, fields,
                                                use_gpu(opt), checkpoint)
    encoder = model.encoder
    decoder = model.decoder

    encoder_embeddings = encoder.embeddings.word_lut.weight.data.tolist()
    decoder_embeddings = decoder.embeddings.word_lut.weight.data.tolist()

    logger.info("Writing source embeddings")
    write_embeddings(opt.output_dir + "/src_embeddings.txt", src_dict,
                     encoder_embeddings)

    logger.info("Writing target embeddings")
    write_embeddings(opt.output_dir + "/tgt_embeddings.txt", tgt_dict,
                     decoder_embeddings)

    logger.info('... done.')
    logger.info('Converting model...')
Beispiel #17
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def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    fields = checkpoint['vocab']

    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #18
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def load_test_model(opt, model_path=None):
    if model_path is None:
        model_path = opt.models[0]
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)

    model_opt = ArgumentParser.ckpt_model_opts(checkpoint['opt'])
    ArgumentParser.update_model_opts(model_opt)
    ArgumentParser.validate_model_opts(model_opt)
    vocab = checkpoint['vocab']
    if inputters.old_style_vocab(vocab):
        fields = inputters.load_old_vocab(
            vocab, opt.data_type, dynamic_dict=model_opt.copy_attn
        )
    else:
        fields = vocab

    model = build_base_model(model_opt, fields, use_gpu(opt), checkpoint,
                             opt.gpu)
    if opt.fp32:
        model.float()
    model.eval()
    model.generator.eval()
    return fields, model, model_opt
Beispiel #19
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def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    if opt.local_rank != -1:
        torch.cuda.set_device(opt.local_rank)
        device = torch.device("cuda", opt.local_rank)
        torch.distributed.init_process_group(backend='nccl')
        device_id = opt.local_rank
        world_size = torch.distributed.get_world_size()
    else:
        if device_id == -1:
            device = torch.device("cpu")
        else:
            device = torch.device("cuda", device_id)
    if opt.local_rank > 0:
        logger.disabled = True
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)

        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    if opt.bert_kd:
        src_vocab = vocab['src'].fields[0][1].vocab.stoi
        tgt_vocab = vocab['tgt'].fields[0][1].vocab.stoi
        assert 0 < opt.kd_topk <= 128
        train_dataset = BertKdDataset(opt.data_db,
                                      opt.bert_dump,
                                      src_vocab,
                                      tgt_vocab,
                                      max_len=150,
                                      k=opt.kd_topk)
        BUCKET_SIZE = 8192
        if True or opt.local_rank == -1 and opt.world_size == 1:
            train_sampler = TokenBucketSampler(train_dataset.keys,
                                               BUCKET_SIZE,
                                               opt.batch_size,
                                               batch_multiple=1)
        else:
            assert False  # seems like it's handled in training loop
            train_sampler = DistributedTokenBucketSampler(world_size,
                                                          device_id,
                                                          train_dataset.keys,
                                                          BUCKET_SIZE,
                                                          opt.batch_size,
                                                          batch_multiple=1)
        train_loader = DataLoader(train_dataset,
                                  batch_sampler=train_sampler,
                                  num_workers=4,
                                  collate_fn=BertKdDataset.pad_collate)
        train_iter = cycle_loader(train_loader, device)
    else:
        train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if opt.tensorboard:
        if trainer.report_manager.tensorboard_writer:
            trainer.report_manager.tensorboard_writer.close()
def main(opt, device_id, batch_queue=None, semaphore=None):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    assert len(opt.accum_count) == len(opt.accum_steps), \
        'Number of accum_count values must match number of accum_steps'
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    if opt.teacher_model_path:
        logger.info('Loading teacher model from {path}'.format(
            path=opt.teacher_model_path))
        teacher_model_ckpt = torch.load(
            opt.teacher_model_path, map_location=lambda storage, loc: storage)

        teacher_model_opt = ArgumentParser.ckpt_model_opts(
            teacher_model_ckpt['opt'])
        ArgumentParser.update_model_opts(teacher_model_opt)
        ArgumentParser.validate_model_opts(teacher_model_opt)
        logger.info('Loading vocab from checkpoint at {path}'.format(
            path=opt.teacher_model_path))
        teacher_vocab = teacher_model_ckpt['vocab']

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab
        teacher_fields = teacher_vocab if opt.teacher_model_path else None

    # patch for fields that may be missing in old data/model
    # patch_fields(opt, fields)

    # Report src and tgt vocab sizes, including for features
    report_vocab_size(fields)
    if teacher_fields is not None:
        report_vocab_size(teacher_fields)

    # Build model.
    fields_opt = {"original": fields, "teacher": teacher_fields}
    model = custom_builder.build_model(model_opt, opt, fields_opt, checkpoint)
    # model = build_model(model_opt, opt, fields, checkpoint)
    teacher_model = build_model(
        teacher_model_opt, teacher_model_opt, teacher_fields,
        teacher_model_ckpt) if opt.teacher_model_path else None

    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    if teacher_model is not None:
        n_params, enc, dec = _tally_parameters(teacher_model)
        logger.info('encoder: %d' % enc)
        logger.info('decoder: %d' % dec)
        logger.info('* number of parameters: %d' % n_params)
        _check_save_model_path(teacher_model_opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    # model_saver = build_model_saver(model_opt, opt, model, fields, optim)
    model_saver = custom_model_saver.build_model_saver(model_opt, opt, model,
                                                       fields_opt, optim)

    tgt_field = dict(teacher_fields)["tgt"].base_field if teacher_model is not None \
        else dict(fields)["tgt"].base_field
    sos_id = tgt_field.vocab.stoi[tgt_field.init_token]

    if teacher_model is not None and opt.word_sampling:
        sampler = Emulator(teacher_model,
                           teacher_fields,
                           device_id,
                           max_length=50,
                           random_sampling_topk=5)
    else:
        sampler = None

    if teacher_model is not None:
        trainer = build_trainer(opt,
                                device_id,
                                model,
                                teacher_fields,
                                optim,
                                model_saver,
                                teacher_model=teacher_model,
                                emulator=sampler)
    else:
        trainer = build_trainer(opt,
                                device_id,
                                model,
                                fields,
                                optim,
                                model_saver,
                                teacher_model=teacher_model,
                                emulator=sampler)

    if batch_queue is None:
        if len(opt.data_ids) > 1:
            train_shards = []
            for train_id in opt.data_ids:
                shard_base = "train_" + train_id
                train_shards.append(shard_base)
            train_iter = build_dataset_iter_multiple(train_shards, fields, opt)
        else:
            if opt.data_ids[0] is not None:
                shard_base = "train_" + opt.data_ids[0]
            else:
                shard_base = "train"
            train_iter = build_dataset_iter(shard_base, fields, opt)

    else:
        assert semaphore is not None, \
            "Using batch_queue requires semaphore as well"

        def _train_iter():
            while True:
                batch = batch_queue.get()
                semaphore.release()
                yield batch

        train_iter = _train_iter()

    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0

    trainer.train(train_iter,
                  train_steps,
                  sos_id=sos_id,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if trainer.report_manager.tensorboard_writer is not None:
        trainer.report_manager.tensorboard_writer.close()
Beispiel #21
0
def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    assert len(opt.accum_count) == len(opt.accum_steps), \
        'Number of accum_count values must match number of accum_steps'
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)

        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    logger.info('Loading alignment.')
    lemma_aligns = open(model_opt.lemma_align, 'rb').readlines()
    src_stoi = vocab['src'].base_field.vocab.stoi
    lemma_stoi = vocab['word_topic'].base_field.vocab.stoi
    w2l = {}
    word_to_lemma = []
    for pair in lemma_aligns:
        pair = pair.strip().split()
        w2l[src_stoi[pair[0].decode('utf-8')]] = \
            lemma_stoi[pair[1].decode('utf-8')]
    w2l[src_stoi['unk']] = lemma_stoi['unk']
    for index in range(len(vocab['src'].base_field.vocab.itos)):
        if index in w2l:
            word_to_lemma.append(w2l[index])
        else:
            word_to_lemma.append(w2l[lemma_stoi['unk']])
    word_to_lemma = torch.tensor(word_to_lemma)
    logger.info('Loading topic matrix')
    if device_id >= 0:
        topic_matrix = torch.load(opt.topic_matrix,
                                  map_location=torch.device(device_id))
    else:
        topic_matrix = torch.load(opt.topic_matrix)
    if opt.model_dtype == 'fp16':
        topic_matrix = topic_matrix.half()
    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab
    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(topic_matrix,
                  word_to_lemma,
                  train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if opt.tensorboard:
        trainer.report_manager.tensorboard_writer.close()
Beispiel #22
0
def train(opt):
    init_logger(opt.log_file)
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    set_random_seed(opt.seed, False)

    checkpoint, fields, transforms_cls = _init_train(
        opt)  # Datasets and transformations (Both dicts)
    train_process = partial(single_main,
                            fields=fields,
                            transforms_cls=transforms_cls,
                            checkpoint=checkpoint)

    nb_gpu = len(opt.gpu_ranks)

    if opt.world_size > 1:

        queues = []
        mp = torch.multiprocessing.get_context('spawn')
        semaphore = mp.Semaphore(opt.world_size * opt.queue_size)
        # Create a thread to listen for errors in the child processes.
        error_queue = mp.SimpleQueue()
        error_handler = ErrorHandler(error_queue)
        # Train with multiprocessing.
        procs = []
        for device_id in range(nb_gpu):
            q = mp.Queue(opt.queue_size)
            queues += [q]
            procs.append(
                mp.Process(target=consumer,
                           args=(train_process, opt, device_id, error_queue, q,
                                 semaphore),
                           daemon=True))
            procs[device_id].start()
            logger.info(" Starting process pid: %d  " % procs[device_id].pid)
            error_handler.add_child(procs[device_id].pid)
        producers = []
        # This does not work if we merge with the first loop, not sure why
        for device_id in range(nb_gpu):
            # Get the iterator to generate from
            train_iter = _build_train_iter(opt,
                                           fields,
                                           transforms_cls,
                                           stride=nb_gpu,
                                           offset=device_id)
            producer = mp.Process(target=batch_producer,
                                  args=(
                                      train_iter,
                                      queues[device_id],
                                      semaphore,
                                      opt,
                                  ),
                                  daemon=True)
            producers.append(producer)
            producers[device_id].start()
            logger.info(" Starting producer process pid: {}  ".format(
                producers[device_id].pid))
            error_handler.add_child(producers[device_id].pid)

        for p in procs:
            p.join()
        # Once training is done, we can terminate the producers
        for p in producers:
            p.terminate()

    elif nb_gpu == 1:  # case 1 GPU only
        # TODO make possible for custom GPU id. Also replace assert at utils/parse.py line 275
        train_process(opt, device_id=opt.gpu_ranks[0])
    else:  # case only CPU
        train_process(opt, device_id=-1)
Beispiel #23
0
def train(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    if opt.train_from != '':
        raise Exception(
            'train_from will be set automatically to the latest model, you should not set it manually'
        )

    # set gpu ranks automatically if not specified
    if len(opt.gpu_ranks) == 0:
        opt.gpu_ranks = list(range(opt.world_size))

    # Set train_from to latest checkpoint if it exists
    file_list = glob.glob(opt.save_model + '*.pt')
    if len(os.listdir(os.path.dirname(
            opt.save_model))) > 0 and len(file_list) == 0:
        raise Exception(
            'save_model directory is not empty but no pretrained models found')
    if len(file_list) > 0:
        ckpt_nos = list(
            map(lambda x: int(x.split('_')[-1].split('.')[0]), file_list))
        ckpt_no = max(ckpt_nos)
        opt.train_from = opt.save_model + '_' + str(ckpt_no) + '.pt'
        print(opt.train_from)
        assert os.path.exists(opt.train_from)

    set_random_seed(opt.seed, False)

    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    if len(opt.data_ids) > 1:
        train_shards = []
        for train_id in opt.data_ids:
            shard_base = "train_" + train_id
            train_shards.append(shard_base)
        train_iter = build_dataset_iter_multiple(train_shards, fields, opt)
    else:
        if opt.data_ids[0] is not None:
            shard_base = "train_" + opt.data_ids[0]
        else:
            shard_base = "train"
        train_iter = build_dataset_iter(shard_base, fields, opt)

    nb_gpu = len(opt.gpu_ranks)

    if opt.world_size > 1:
        queues = []
        mp = torch.multiprocessing.get_context('spawn')
        semaphore = mp.Semaphore(opt.world_size * opt.queue_size)
        # Create a thread to listen for errors in the child processes.
        error_queue = mp.SimpleQueue()
        error_handler = ErrorHandler(error_queue)
        # Train with multiprocessing.
        procs = []
        for device_id in range(nb_gpu):
            q = mp.Queue(opt.queue_size)
            queues += [q]
            procs.append(
                mp.Process(target=run,
                           args=(opt, device_id, error_queue, q, semaphore),
                           daemon=True))
            procs[device_id].start()
            logger.info(" Starting process pid: %d  " % procs[device_id].pid)
            error_handler.add_child(procs[device_id].pid)
        producer = mp.Process(target=batch_producer,
                              args=(
                                  train_iter,
                                  queues,
                                  semaphore,
                                  opt,
                              ),
                              daemon=True)
        producer.start()
        error_handler.add_child(producer.pid)

        for p in procs:
            p.join()
        producer.terminate()

    elif nb_gpu == 1:  # case 1 GPU only
        single_main(opt, 0)
    else:  # case only CPU
        single_main(opt, -1)
Beispiel #24
0
    def train_single(self,
                     output_model_dir: Path,
                     opt,
                     device_id,
                     batch_queue=None,
                     semaphore=None):
        from roosterize.ml.onmt.MultiSourceInputter import MultiSourceInputter
        from roosterize.ml.onmt.MultiSourceModelBuilder import MultiSourceModelBuilder
        from roosterize.ml.onmt.MultiSourceModelSaver import MultiSourceModelSaver
        from roosterize.ml.onmt.MultiSourceTrainer import MultiSourceTrainer
        from onmt.inputters.inputter import load_old_vocab, old_style_vocab
        from onmt.train_single import configure_process, _tally_parameters, _check_save_model_path
        from onmt.utils.optimizers import Optimizer
        from onmt.utils.parse import ArgumentParser

        configure_process(opt, device_id)
        assert len(opt.accum_count) == len(
            opt.accum_steps
        ), 'Number of accum_count values must match number of accum_steps'
        # Load checkpoint if we resume from a previous training.
        if opt.train_from:
            self.logger.info('Loading checkpoint from %s' % opt.train_from)
            checkpoint = torch.load(opt.train_from,
                                    map_location=lambda storage, loc: storage)
            model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
            ArgumentParser.update_model_opts(model_opt)
            ArgumentParser.validate_model_opts(model_opt)
            self.logger.info('Loading vocab from checkpoint at %s.' %
                             opt.train_from)
            vocab = checkpoint['vocab']
        else:
            checkpoint = None
            model_opt = opt
            vocab = torch.load(opt.data + '.vocab.pt')
        # end if

        # check for code where vocab is saved instead of fields
        # (in the future this will be done in a smarter way)
        if old_style_vocab(vocab):
            fields = load_old_vocab(vocab,
                                    opt.model_type,
                                    dynamic_dict=opt.copy_attn)
        else:
            fields = vocab
        # end if

        # Report src and tgt vocab sizes, including for features
        data_keys = [
            f"src.{src_type}" for src_type in self.config.get_src_types()
        ] + ["tgt"]
        for side in data_keys:
            f = fields[side]
            try:
                f_iter = iter(f)
            except TypeError:
                f_iter = [(side, f)]
            # end try
            for sn, sf in f_iter:
                if sf.use_vocab:
                    self.logger.info(' * %s vocab size = %d' %
                                     (sn, len(sf.vocab)))
            # end for

        # Build model
        model = MultiSourceModelBuilder.build_model(
            self.config.get_src_types(), model_opt, opt, fields, checkpoint)
        n_params, enc, dec = _tally_parameters(model)
        self.logger.info('encoder: %d' % enc)
        self.logger.info('decoder: %d' % dec)
        self.logger.info('* number of parameters: %d' % n_params)
        _check_save_model_path(opt)

        # Build optimizer.
        optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

        # Build model saver
        model_saver = MultiSourceModelSaver.build_model_saver(
            self.config.get_src_types(), model_opt, opt, model, fields, optim)

        trainer = MultiSourceTrainer.build_trainer(self.config.get_src_types(),
                                                   opt,
                                                   device_id,
                                                   model,
                                                   fields,
                                                   optim,
                                                   model_saver=model_saver)

        if batch_queue is None:
            if len(opt.data_ids) > 1:
                train_shards = []
                for train_id in opt.data_ids:
                    shard_base = "train_" + train_id
                    train_shards.append(shard_base)
                # end for
                train_iter = MultiSourceInputter.build_dataset_iter_multiple(
                    self.config.get_src_types(), train_shards, fields, opt)
            else:
                if opt.data_ids[0] is not None:
                    shard_base = "train_" + opt.data_ids[0]
                else:
                    shard_base = "train"
                # end if
                train_iter = MultiSourceInputter.build_dataset_iter(
                    self.config.get_src_types(), shard_base, fields, opt)
            # end if
        else:
            assert semaphore is not None, "Using batch_queue requires semaphore as well"

            def _train_iter():
                while True:
                    batch = batch_queue.get()
                    semaphore.release()
                    yield batch
                # end while

            # end def

            train_iter = _train_iter()
        # end if

        valid_iter = MultiSourceInputter.build_dataset_iter(
            self.config.get_src_types(), "valid", fields, opt, is_train=False)

        if len(opt.gpu_ranks):
            self.logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
        else:
            self.logger.info('Starting training on CPU, could be very slow')
        # end if
        train_steps = opt.train_steps
        if opt.single_pass and train_steps > 0:
            self.logger.warning(
                "Option single_pass is enabled, ignoring train_steps.")
            train_steps = 0
        # end if

        trainer.train(train_iter,
                      train_steps,
                      save_checkpoint_steps=opt.save_checkpoint_steps,
                      valid_iter=valid_iter,
                      valid_steps=opt.valid_steps)
        time_begin = trainer.report_manager.start_time
        time_end = time.time()

        if opt.tensorboard: trainer.report_manager.tensorboard_writer.close()

        # Dump train metrics
        train_history = trainer.report_manager.get_joint_history()
        train_metrics = {
            "time_begin": time_begin,
            "time_end": time_end,
            "time": time_end - time_begin,
            "train_history": train_history,
        }
        IOUtils.dump(output_model_dir / "train-metrics.json", train_metrics,
                     IOUtils.Format.jsonNoSort)

        # Get the best step, depending on the lowest val_xent (cross entropy)
        best_loss = min([th["val_xent"] for th in train_history])
        best_step = [
            th["step"] for th in train_history if th["val_xent"] == best_loss
        ][-1]  # Take the last if multiple
        IOUtils.dump(output_model_dir / "best-step.json", best_step,
                     IOUtils.Format.json)
        return
Beispiel #25
0
    def train_impl(
        self,
        train_processed_data_dir: Path,
        val_processed_data_dir: Path,
        output_model_dir: Path,
    ) -> NoReturn:
        self.preprocess(train_processed_data_dir, val_processed_data_dir,
                        output_model_dir)

        from train import _get_parser as train_get_parser
        from train import ErrorHandler, batch_producer
        from roosterize.ml.onmt.MultiSourceInputter import MultiSourceInputter
        from onmt.inputters.inputter import old_style_vocab, load_old_vocab
        import onmt.utils.distributed
        from onmt.utils.parse import ArgumentParser

        with IOUtils.cd(self.open_nmt_path):
            parser = train_get_parser()
            opt = parser.parse_args(
                f" -data {output_model_dir}/processed-data"
                f" -save_model {output_model_dir}/models/ckpt")
            opt.gpu_ranks = [0]
            opt.early_stopping = self.config.early_stopping_threshold
            opt.report_every = 200
            opt.valid_steps = 200
            opt.save_checkpoint_steps = 200
            opt.keep_checkpoint_max = self.config.ckpt_keep_max

            opt.optim = "adam"
            opt.learning_rate = self.config.learning_rate
            opt.max_grad_norm = self.config.max_grad_norm
            opt.batch_size = self.config.batch_size

            opt.encoder_type = self.config.encoder
            opt.decoder_type = self.config.decoder
            opt.dropout = [self.config.dropout]
            opt.src_word_vec_size = self.config.dim_embed
            opt.tgt_word_vec_size = self.config.dim_embed
            opt.layers = self.config.rnn_num_layers
            opt.enc_rnn_size = self.config.dim_encoder_hidden
            opt.dec_rnn_size = self.config.dim_decoder_hidden
            opt.__setattr__("num_srcs", len(self.config.get_src_types()))
            if self.config.use_attn:
                opt.global_attention = "general"
            else:
                opt.global_attention = "none"
            # end if
            if self.config.use_copy:
                opt.copy_attn = True
                opt.copy_attn_type = "general"
            # end if

            # train.main
            ArgumentParser.validate_train_opts(opt)
            ArgumentParser.update_model_opts(opt)
            ArgumentParser.validate_model_opts(opt)

            # Load checkpoint if we resume from a previous training.
            if opt.train_from:
                self.logger.info('Loading checkpoint from %s' % opt.train_from)
                checkpoint = torch.load(
                    opt.train_from, map_location=lambda storage, loc: storage)
                self.logger.info('Loading vocab from checkpoint at %s.' %
                                 opt.train_from)
                vocab = checkpoint['vocab']
            else:
                vocab = torch.load(opt.data + '.vocab.pt')
            # end if

            # check for code where vocab is saved instead of fields
            # (in the future this will be done in a smarter way)
            if old_style_vocab(vocab):
                fields = load_old_vocab(vocab,
                                        opt.model_type,
                                        dynamic_dict=opt.copy_attn)
            else:
                fields = vocab
            # end if

            if len(opt.data_ids) > 1:
                train_shards = []
                for train_id in opt.data_ids:
                    shard_base = "train_" + train_id
                    train_shards.append(shard_base)
                # end for
                train_iter = MultiSourceInputter.build_dataset_iter_multiple(
                    self.config.get_src_types(), train_shards, fields, opt)
            else:
                if opt.data_ids[0] is not None:
                    shard_base = "train_" + opt.data_ids[0]
                else:
                    shard_base = "train"
                # end if
                train_iter = MultiSourceInputter.build_dataset_iter(
                    self.config.get_src_types(), shard_base, fields, opt)
            # end if

            nb_gpu = len(opt.gpu_ranks)

            if opt.world_size > 1:
                queues = []
                mp = torch.multiprocessing.get_context('spawn')
                semaphore = mp.Semaphore(opt.world_size * opt.queue_size)
                # Create a thread to listen for errors in the child processes.
                error_queue = mp.SimpleQueue()
                error_handler = ErrorHandler(error_queue)
                # Train with multiprocessing.
                procs = []
                for device_id in range(nb_gpu):
                    q = mp.Queue(opt.queue_size)
                    queues += [q]

                    def run(opt, device_id, error_queue, batch_queue,
                            semaphore):
                        """ run process """
                        try:
                            gpu_rank = onmt.utils.distributed.multi_init(
                                opt, device_id)
                            if gpu_rank != opt.gpu_ranks[device_id]:
                                raise AssertionError(
                                    "An error occurred in Distributed initialization"
                                )
                            self.train_single(opt, device_id, batch_queue,
                                              semaphore)
                        except KeyboardInterrupt:
                            pass  # killed by parent, do nothing
                        except Exception:
                            # propagate exception to parent process, keeping original traceback
                            import traceback
                            error_queue.put((opt.gpu_ranks[device_id],
                                             traceback.format_exc()))
                        # end try

                    # end def

                    procs.append(
                        mp.Process(target=run,
                                   args=(opt, device_id, error_queue, q,
                                         semaphore),
                                   daemon=True))
                    procs[device_id].start()
                    self.logger.info(" Starting process pid: %d  " %
                                     procs[device_id].pid)
                    error_handler.add_child(procs[device_id].pid)
                # end for
                producer = mp.Process(target=batch_producer,
                                      args=(
                                          train_iter,
                                          queues,
                                          semaphore,
                                          opt,
                                      ),
                                      daemon=True)
                producer.start()
                error_handler.add_child(producer.pid)

                for p in procs:
                    p.join()
                producer.terminate()

            elif nb_gpu == 1:  # case 1 GPU only
                self.train_single(output_model_dir, opt, 0)
            else:  # case only CPU
                self.train_single(output_model_dir, opt, -1)
            # end if
        # end with
        return
Beispiel #26
0
def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    assert len(opt.accum_count) == len(opt.accum_steps), \
        'Number of accum_count values must match number of accum_steps'
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)

        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(
            vocab, opt.model_type, dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(
        opt, device_id, model, fields, optim, model_saver=model_saver)

    train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter(
        "valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(
        train_iter,
        train_steps,
        save_checkpoint_steps=opt.save_checkpoint_steps,
        valid_iter=valid_iter,
        valid_steps=opt.valid_steps)

    if opt.tensorboard:
        trainer.report_manager.tensorboard_writer.close()
Beispiel #27
0
def train(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    set_random_seed(opt.seed, False)

    # @Memray, check the dir existence beforehand to avoid path conflicting errors,
    #   and set save_model, tensorboard_log_dir, wandb_log_dir if not exist
    train_single._check_save_model_path(opt)
    if not os.path.exists(opt.tensorboard_log_dir):
        os.makedirs(opt.tensorboard_log_dir)

    # Scan previous checkpoint to resume training
    latest_step = 0
    latest_ckpt = None
    for subdir, dirs, filenames in os.walk(opt.exp_dir):
        for filename in sorted(filenames):
            if not filename.endswith('.pt'):
                continue
            step = int(filename[filename.rfind('_') + 1:filename.rfind('.pt')])
            if step > latest_step:
                latest_ckpt = os.path.join(subdir, filename)
                latest_step = step
    # if not saved in the exp folder, check opt.save_model
    if latest_ckpt is None and opt.save_model is not None:
        save_model_dir = os.path.dirname(os.path.abspath(opt.save_model))
        model_prefix = opt.save_model[opt.save_model.rfind(os.path.sep) + 1:]
        for subdir, dirs, filenames in os.walk(save_model_dir):
            for filename in sorted(filenames):
                if not filename.endswith('.pt'):
                    continue
                if not filename.startswith(model_prefix):
                    continue
                step = int(filename[filename.rfind('_') +
                                    1:filename.rfind('.pt')])
                if step > latest_step:
                    latest_ckpt = os.path.join(subdir, filename)
                    latest_step = step
    if latest_ckpt is not None:
        logger.info("A previous checkpoint is found, train from it: %s" %
                    latest_ckpt)
        setattr(opt, 'train_from', latest_ckpt)
        setattr(opt, 'reset_optim', 'none')

    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    elif opt.vocab and opt.vocab != 'none':
        # added by @memray for multiple datasets
        vocab = torch.load(opt.vocab)
        # check for code where vocab is saved instead of fields
        # (in the future this will be done in a smarter way)
        if old_style_vocab(vocab):
            vocab = load_old_vocab(vocab,
                                   opt.model_type,
                                   dynamic_dict=opt.copy_attn)
    elif opt.encoder_type == 'pretrained':
        vocab = None
    else:
        vocab = None

    fields = vocab

    # @memray: a temporary workaround, as well as train_single.py line 78
    if fields and opt.data_type == "keyphrase":
        if opt.tgt_type in ["one2one", "multiple"]:
            if 'sep_indices' in fields:
                del fields['sep_indices']
        else:
            if 'sep_indices' not in fields:
                sep_indices = Field(use_vocab=False,
                                    dtype=torch.long,
                                    postprocessing=make_tgt,
                                    sequential=False)
                fields["sep_indices"] = sep_indices
        if 'src_ex_vocab' not in fields:
            src_ex_vocab = RawField()
            fields["src_ex_vocab"] = src_ex_vocab

    # @memray reload fields for news dataset and pretrained models
    tokenizer = None
    if opt.pretrained_tokenizer is not None:
        tokenizer = load_pretrained_tokenizer(opt.pretrained_tokenizer,
                                              opt.cache_dir,
                                              opt.special_vocab_path)
        setattr(opt, 'vocab_size', len(tokenizer))
    if opt.data_type == 'news':
        fields = reload_news_fields(opt, tokenizer=tokenizer)
    # elif opt.data_type == 'keyphrase':
    #     fields = reload_keyphrase_fields(opt, tokenizer=tokenizer)

    if len(opt.data_ids) > 1:
        # added by @memray, for loading multiple datasets
        if opt.multi_dataset:
            shard_base = "train"
            train_iter = build_dataset_iter(shard_base,
                                            fields,
                                            opt,
                                            multi=True)
        else:
            train_shards = []
            for train_id in opt.data_ids:
                shard_base = "train_" + train_id
                train_shards.append(shard_base)
            train_iter = build_dataset_iter_multiple(train_shards, fields, opt)
    else:
        shard_base = "train"
        train_iter = build_dataset_iter(shard_base, fields, opt)

    nb_gpu = len(opt.gpu_ranks)

    if opt.world_size > 1:
        queues = []
        mp = torch.multiprocessing.get_context('spawn')
        semaphore = mp.Semaphore(opt.world_size * opt.queue_size)
        # Create a thread to listen for errors in the child processes.
        error_queue = mp.SimpleQueue()
        error_handler = ErrorHandler(error_queue)
        # Train with multiprocessing.
        procs = []
        for device_id in range(nb_gpu):
            q = mp.Queue(opt.queue_size)
            queues += [q]
            procs.append(
                mp.Process(target=run,
                           args=(opt, device_id, error_queue, q, semaphore),
                           daemon=True))
            procs[device_id].start()
            logger.info(" Starting process pid: %d  " % procs[device_id].pid)
            error_handler.add_child(procs[device_id].pid)
        producer = mp.Process(target=batch_producer,
                              args=(
                                  train_iter,
                                  queues,
                                  semaphore,
                                  opt,
                              ),
                              daemon=True)
        producer.start()
        error_handler.add_child(producer.pid)

        for p in procs:
            p.join()
        producer.terminate()

    elif nb_gpu == 1:  # case 1 GPU only
        single_main(opt, 0)
    else:  # case only CPU
        single_main(opt, -1)
Beispiel #28
0
def train(opt):
    ArgumentParser.validate_train_opts(opt)
    ArgumentParser.update_model_opts(opt)
    ArgumentParser.validate_model_opts(opt)

    set_random_seed(opt.seed, False)

    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        if 'vocab' in checkpoint:
            logger.info('Loading vocab from checkpoint at %s.' %
                        opt.train_from)
            vocab = checkpoint['vocab']
        else:
            vocab = torch.load(opt.data + '.vocab.pt')
    else:
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    if len(opt.data_ids) > 1:
        train_shards = []
        for train_id in opt.data_ids:
            shard_base = "train_" + train_id
            train_shards.append(shard_base)
        train_iter = build_dataset_iter_multiple(train_shards, fields, opt)
    else:
        if opt.data_ids[0] is not None:
            shard_base = "train_" + opt.data_ids[0]
        else:
            shard_base = "train"
        train_iter = build_dataset_iter(shard_base, fields, opt)

    nb_gpu = len(opt.gpu_ranks)

    if opt.world_size > 1:
        queues = []
        mp = torch.multiprocessing.get_context('spawn')
        semaphore = mp.Semaphore(opt.world_size * opt.queue_size)
        # Create a thread to listen for errors in the child processes.
        error_queue = mp.SimpleQueue()
        error_handler = ErrorHandler(error_queue)
        # Train with multiprocessing.
        procs = []
        for device_id in range(nb_gpu):
            q = mp.Queue(opt.queue_size)
            queues += [q]
            procs.append(
                mp.Process(target=run,
                           args=(opt, device_id, error_queue, q, semaphore),
                           daemon=True))
            procs[device_id].start()
            logger.info(" Starting process pid: %d  " % procs[device_id].pid)
            error_handler.add_child(procs[device_id].pid)
        producer = mp.Process(target=batch_producer,
                              args=(
                                  train_iter,
                                  queues,
                                  semaphore,
                                  opt,
                              ),
                              daemon=True)
        producer.start()
        error_handler.add_child(producer.pid)

        for p in procs:
            p.join()
        producer.terminate()

    elif nb_gpu == 1:  # case 1 GPU only
        single_main(opt, 0)
    else:  # case only CPU
        single_main(opt, -1)
Beispiel #29
0
def main(opt, device_id, batch_queue=None, semaphore=None):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    assert len(opt.accum_count) == len(opt.accum_steps), \
        'Number of accum_count values must match number of accum_steps'
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)
        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec, nontrainable = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('non-trainable parameters (tgt_out_emb): %d' % nontrainable)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    if batch_queue is None:
        if len(opt.data_ids) > 1:
            train_shards = []
            for train_id in opt.data_ids:
                shard_base = "train_" + train_id
                train_shards.append(shard_base)
            train_iter = build_dataset_iter_multiple(train_shards, fields, opt)
        else:
            if opt.data_ids[0] is not None:
                shard_base = "train_" + opt.data_ids[0]
            else:
                shard_base = "train"
            train_iter = build_dataset_iter(shard_base, fields, opt)

    else:
        assert semaphore is not None, \
            "Using batch_queue requires semaphore as well"

        def _train_iter():
            while True:
                batch = batch_queue.get()
                semaphore.release()
                yield batch

        train_iter = _train_iter()

    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0

    trainer.train(train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if trainer.report_manager.tensorboard_writer is not None:
        trainer.report_manager.tensorboard_writer.close()
Beispiel #30
0
def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    #     import pdb
    #     _check_ = torch.load("/home/irteam/users/kaist/ginalee/clean_data/baselines/9-domain5-185pre_step_2500.pt")
    #     model_encoder = [i for i in _check_['model'].keys() if "encoder" in i.split(".")]
    #     encoder = {}
    #     pdb.set_trace()
    #     for i, param in enumerate(model_encoder):
    #         if i == 0:
    #             encoder['embeddings.word_embeddings.weight'] = _check_['model'][param]
    #             continue
    #         param_ = ".".join(param.split(".")[1:])
    # #         if param.split(".")[1] == 'encoder':
    # #             param_ = ".".join(param.split(".")[2:])
    # #         else:
    # #             param_ = ".".join(param.split(".")[1:])
    #         encoder[param_] = _check_['model'][param]
    #     pdb.set_trace()

    configure_process(opt, device_id)
    init_logger(opt.log_file)
    logger.info(opt)
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)

        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)

        load_vocab = torch.load(opt.data + '.vocab.pt')
        vocab = checkpoint['vocab']
        load_vocab['src'].fields[0][1].vocab = vocab['src'].fields[0][1].vocab
        load_vocab['tgt'].fields[0][1].vocab = vocab['tgt'].fields[0][1].vocab
        vocab = load_vocab
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    if opt.pretrain_from:
        check = torch.load(opt.pretrain_from,
                           map_location=lambda storage, loc: storage)
        model.load_state_dict(check['model'], strict=False)
        model.load_state_dict(check['generator'], strict=False)
        if 'dom_classifier' in check:
            model.load_state_dict(check['dom_classifier'], strict=False)

    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    translator = None
    if opt.domain_cls_enc == False:
        translator = train_build_translator(opt,
                                            model,
                                            model_opt,
                                            fields,
                                            report_score=True)

    trainer = build_trainer(translator,
                            opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if opt.tensorboard:
        trainer.report_manager.tensorboard_writer.close()
Beispiel #31
0
def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    # Load checkpoint if we resume from a previous training.
    if opt.train_from:
        logger.info('Loading checkpoint from %s' % opt.train_from)
        checkpoint = torch.load(opt.train_from,
                                map_location=lambda storage, loc: storage)

        model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
        ArgumentParser.update_model_opts(model_opt)
        ArgumentParser.validate_model_opts(model_opt)
        logger.info('Loading vocab from checkpoint at %s.' % opt.train_from)
        vocab = checkpoint['vocab']
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    for side in ['src', 'tgt']:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec = _tally_parameters(model)
    logger.info('encoder: %d' % enc)
    logger.info('decoder: %d' % dec)
    logger.info('* number of parameters: %d' % n_params)
    _check_save_model_path(opt)

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if opt.tensorboard:
        trainer.report_manager.tensorboard_writer.close()
def main(opt, device_id):
    # NOTE: It's important that ``opt`` has been validated and updated
    # at this point.
    configure_process(opt, device_id)
    init_logger(opt.log_file)
    # Load checkpoint if we resume from a previous training.
    load_str = opt.train_from if opt.train_from else opt.load_uncond_from
    if load_str:
        logger.info('Loading checkpoint from %s' % load_str)
        checkpoint = torch.load(load_str,
                                map_location=lambda storage, loc: storage)

        logger.info('Loading vocab from checkpoint at %s.' % load_str)
        vocab = checkpoint['vocab']

        if opt.train_from:
            model_opt = ArgumentParser.ckpt_model_opts(checkpoint["opt"])
            ArgumentParser.update_model_opts(model_opt)
            ArgumentParser.validate_model_opts(model_opt)
        else:
            model_opt = opt
    else:
        checkpoint = None
        model_opt = opt
        vocab = torch.load(opt.data + '.vocab.pt')

    if opt.gpt2_params_path is not None:
        import tensorflow as tf
        import numpy as np
        # Taken from pytorch-pretrained-BERT:
        # Load weights from TF model
        logger.info("Loading TF GPT weights...")
        init_vars = tf.train.list_variables(opt.gpt2_params_path)
        names = []
        arrays = []
        for name, shape in init_vars:
            if opt.gpt_emb_only and ('wpe' not in name and 'wte' not in name):
                continue
            if opt.gpt_wpe_only and 'wpe' not in name:
                continue
            #print("Loading TF weight {} with shape {}".format(name, shape))
            array = tf.train.load_variable(opt.gpt2_params_path, name)
            names.append(name)
            arrays.append(array.squeeze())
        logger.info("Done.")

        if checkpoint is None:
            checkpoint = {'gpt2_params': zip(names, arrays)}
        else:
            checkpoint['gpt2_params'] = zip(names, arrays)

    if opt.encoder_from is not None:
        logger.info('Loading checkpoint with encoder from %s' %
                    opt.encoder_from)
        enc_checkpoint = torch.load(opt.encoder_from,
                                    map_location=lambda storage, loc: storage)
        enc_vocab = enc_checkpoint['vocab']
        if vocab['src'].base_field.vocab != enc_vocab['src'].base_field.vocab:
            raise ValueError(
                'encoder vocab and model vocab need to be identical it using pretrained encoder'
            )
        if checkpoint is None:
            checkpoint = {}
        checkpoint['enc_model'] = enc_checkpoint['model']

    # check for code where vocab is saved instead of fields
    # (in the future this will be done in a smarter way)
    if old_style_vocab(vocab):
        fields = load_old_vocab(vocab,
                                opt.model_type,
                                dynamic_dict=opt.copy_attn)
    else:
        fields = vocab

    # Report src and tgt vocab sizes, including for features
    sides = ['tgt'] if opt.model_type == 'none' else ['src', 'tgt']
    for side in sides:
        f = fields[side]
        try:
            f_iter = iter(f)
        except TypeError:
            f_iter = [(side, f)]
        for sn, sf in f_iter:
            if sf.use_vocab:
                logger.info(' * %s vocab size = %d' % (sn, len(sf.vocab)))

    # Build model.
    model = build_model(model_opt, opt, fields, checkpoint)
    n_params, enc, dec, lm_dec = _tally_parameters(model)
    n_params_t, enc_t, dec_t, lm_dec_t = _tally_parameters(model,
                                                           only_trainable=True)
    logger.info('encoder: %d (%d)' % (enc, enc_t))
    logger.info('decoder: %d (%d)' % (dec, dec_t))
    if opt.simple_fusion:
        logger.info('lm decoder: %d (%d)' % (lm_dec, lm_dec_t))

    logger.info('* number of parameters: %d (%d)' % (n_params, n_params_t))
    _check_save_model_path(opt)

    if not opt.train_from and opt.gpt2_params_path is not None:
        checkpoint = None

    # Build optimizer.
    optim = Optimizer.from_opt(model, opt, checkpoint=checkpoint)

    # Build model saver
    model_saver = build_model_saver(model_opt, opt, model, fields, optim)

    trainer = build_trainer(opt,
                            device_id,
                            model,
                            fields,
                            optim,
                            model_saver=model_saver)

    train_iter = build_dataset_iter("train", fields, opt)
    valid_iter = build_dataset_iter("valid", fields, opt, is_train=False)

    if len(opt.gpu_ranks):
        logger.info('Starting training on GPU: %s' % opt.gpu_ranks)
    else:
        logger.info('Starting training on CPU, could be very slow')
    train_steps = opt.train_steps
    if opt.single_pass and train_steps > 0:
        logger.warning("Option single_pass is enabled, ignoring train_steps.")
        train_steps = 0
    trainer.train(train_iter,
                  train_steps,
                  save_checkpoint_steps=opt.save_checkpoint_steps,
                  valid_iter=valid_iter,
                  valid_steps=opt.valid_steps)

    if opt.tensorboard:
        trainer.report_manager.tensorboard_writer.close()