Exemple #1
0
def init_state(logger, config, args):
    logger.log('Loading data...')

    with open(args.data) as f_o:
        data, _ = load_data(args.data)
    
    limit_passage = config.get('training', {}).get('limit')
    vocab_size = config.get('training', {}).get('vocab_size', None)

    logger.log('Tokenizing data...')
    data, token_to_id, char_to_id = tokenize_data(logger, data, vocab_size, True, limit_passage)
    data = get_loader(data, config)

    id_to_token = {id_: tok for tok, id_ in token_to_id.items()}
    id_to_char = {id_: char for char, id_ in char_to_id.items()}

    assert(token_to_id[C.SOS_TOKEN] == C.SOS_INDEX)
    assert(token_to_id[C.UNK_TOKEN] == C.UNK_INDEX)
    assert(token_to_id[C.EOS_TOKEN] == C.EOS_INDEX)
    assert(token_to_id[C.PAD_TOKEN] == C.PAD_INDEX)

    logger.log('Creating model...')
    model = BidafModel.from_config(config['bidaf'], id_to_token, id_to_char)

    if args.word_rep:
        logger.log('Loading pre-trained embeddings...')
        with open(args.word_rep) as f_o:
            pre_trained = SymbolEmbSourceText(
                    f_o,
                    set(tok for id_, tok in id_to_token.items() if id_ != 0))
        mean, cov = pre_trained.get_norm_stats(args.use_covariance)
        rng = np.random.RandomState(2)
        oovs = SymbolEmbSourceNorm(mean, cov, rng, args.use_covariance)

        model.embedder.embeddings[0].embeddings.weight.data = torch.from_numpy(
            symbol_injection(
                id_to_token, 0,
                model.embedder.embeddings[0].embeddings.weight.data.numpy(),
                pre_trained, oovs))
    else:
        pass  # No pretraining, just keep the random values.

    # Char embeddings are already random, so we don't need to update them.

    if torch.cuda.is_available() and args.cuda:
        model.cuda()

    model.train()

    optimizer = get_optimizer(model, config, state=None)
    return model, id_to_token, id_to_char, optimizer, data
Exemple #2
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def init_state(config, args, loading_limit=None):
    token_to_id = {'': 0}
    char_to_id = {'': 0}
    print('Load Data [1/6]')
    with open(args.data) as f_o:
        data, _ = load_data(json.load(f_o),
                            span_only=True,
                            answered_only=True,
                            loading_limit=loading_limit)
    print('Tokenize Data [2/6]')
    data = tokenize_data(data, token_to_id, char_to_id)
    data = get_loader(data, config)

    print('Create Inverse Dictionaries [3/6]')
    id_to_token = {id_: tok for tok, id_ in token_to_id.items()}
    id_to_char = {id_: char for char, id_ in char_to_id.items()}

    print('Initiate Model [4/6]')
    model = BidafModel.from_config(config['bidaf'], id_to_token, id_to_char)

    if args.word_rep:
        print('Load pre-trained embeddings [5/6]')
        with open(args.word_rep) as f_o:
            pre_trained = SymbolEmbSourceText(
                f_o, set(tok for id_, tok in id_to_token.items() if id_ != 0))
        mean, cov = pre_trained.get_norm_stats(args.use_covariance)
        rng = np.random.RandomState(2)
        oovs = SymbolEmbSourceNorm(mean, cov, rng, args.use_covariance)

        model.embedder.embeddings[0].embeddings.weight.data = torch.from_numpy(
            symbol_injection(
                id_to_token, 0,
                model.embedder.embeddings[0].embeddings.weight.data.numpy(),
                pre_trained, oovs))
    else:
        print('No pre-trained embeddings given [5/6]')
        pass  # No pretraining, just keep the random values.

    # Char embeddings are already random, so we don't need to update them.

    if torch.cuda.is_available() and args.cuda:
        model.cuda()
    model.train()

    optimizer = get_optimizer(model, config, state=None)
    print('Done init_state [6/6]')
    return model, id_to_token, id_to_char, optimizer, data
Exemple #3
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def init_state(config, args):
    token_to_id = {'': 0}
    char_to_id = {'': 0}
    print('Loading data...')
    with open(args.data) as f_o:
        data, _ = load_data(json.load(f_o), span_only=True, answered_only=True)
    print('Tokenizing data...')
    data = tokenize_data(data, token_to_id, char_to_id)
    data = get_loader(data, config)

    id_to_token = {id_: tok for tok, id_ in token_to_id.items()}
    id_to_char = {id_: char for char, id_ in char_to_id.items()}

    print('Creating model...')
    model = BidafModel.from_config(config['bidaf'], id_to_token, id_to_char)

    if args.word_rep:
        print('Loading pre-trained embeddings...')
        with open(args.word_rep) as f_o:
            pre_trained = SymbolEmbSourceText(
                    f_o,
                    set(tok for id_, tok in id_to_token.items() if id_ != 0))
        mean, cov = pre_trained.get_norm_stats(args.use_covariance)
        rng = np.random.RandomState(2)
        oovs = SymbolEmbSourceNorm(mean, cov, rng, args.use_covariance)

        model.embedder.embeddings[0].embeddings.weight.data = torch.from_numpy(
            symbol_injection(
                id_to_token, 0,
                model.embedder.embeddings[0].embeddings.weight.data.numpy(),
                pre_trained, oovs))
    else:
        pass  # No pretraining, just keep the random values.

    # Char embeddings are already random, so we don't need to update them.

    if torch.cuda.is_available() and args.cuda:
        model.cuda()
    model.train()

    optimizer = get_optimizer(model, config, state=None)
    return model, id_to_token, id_to_char, optimizer, data
Exemple #4
0
def reload_state(checkpoint, config, args):
    """
    Reload state before predicting.
    """
    print('Loading Model...')
    model, id_to_token, id_to_char = BidafModel.from_checkpoint(
        config['bidaf'], checkpoint)

    token_to_id = {tok: id_ for id_, tok in id_to_token.items()}
    char_to_id = {char: id_ for id_, char in id_to_char.items()}

    len_tok_voc = len(token_to_id)
    len_char_voc = len(char_to_id)

    with open(args.data) as f_o:
        data, _ = load_data(json.load(f_o), span_only=True, answered_only=True)
    data = tokenize_data(data, token_to_id, char_to_id)

    id_to_token = {id_: tok for tok, id_ in token_to_id.items()}
    id_to_char = {id_: char for char, id_ in char_to_id.items()}

    data = get_loader(data, args)

    if len_tok_voc != len(token_to_id):
        need = set(tok for id_, tok in id_to_token.items()
                   if id_ >= len_tok_voc)

        if args.word_rep:
            with open(args.word_rep) as f_o:
                pre_trained = SymbolEmbSourceText(f_o, need)
        else:
            pre_trained = SymbolEmbSourceText([], need)

        cur = model.embedder.embeddings[0].embeddings.weight.data.numpy()
        mean = cur.mean(0)
        if args.use_covariance:
            cov = np.cov(cur, rowvar=False)
        else:
            cov = cur.std(0)

        rng = np.random.RandomState(2)
        oovs = SymbolEmbSourceNorm(mean, cov, rng, args.use_covariance)

        if args.word_rep:
            print('Augmenting with pre-trained embeddings...')
        else:
            print('Augmenting with random embeddings...')

        model.embedder.embeddings[0].embeddings.weight.data = torch.from_numpy(
            symbol_injection(
                id_to_token, len_tok_voc,
                model.embedder.embeddings[0].embeddings.weight.data.numpy(),
                pre_trained, oovs))

    if len_char_voc != len(char_to_id):
        print('Augmenting with random char embeddings...')
        pre_trained = SymbolEmbSourceText([], None)
        cur = model.embedder.embeddings[1].embeddings.weight.data.numpy()
        mean = cur.mean(0)
        if args.use_covariance:
            cov = np.cov(cur, rowvar=False)
        else:
            cov = cur.std(0)

        rng = np.random.RandomState(2)
        oovs = SymbolEmbSourceNorm(mean, cov, rng, args.use_covariance)

        model.embedder.embeddings[1].embeddings.weight.data = torch.from_numpy(
            symbol_injection(
                id_to_char, len_char_voc,
                model.embedder.embeddings[1].embeddings.weight.data.numpy(),
                pre_trained, oovs))

    if torch.cuda.is_available() and args.cuda:
        model.cuda()
    model.eval()

    return model, id_to_token, id_to_char, data