Exemplo n.º 1
0
    def __call__(self, args):
        super(Predict, self).__call__(args)

        print("Load the dataset")
        corpus = Corpus.load(args.fdata, self.fields)
        dataset = TextDataset(corpus,
                              self.fields[:-1],
                              args.buckets)
        # set the data loader
        dataset.loader = batchify(dataset, args.batch_size)
        print(f"{len(dataset)} sentences, "
              f"{len(dataset.loader)} batches")

        print("Load the model")
        self.model = Model.load(args.model)
        print(f"{self.model}\n")

        print("Make predictions on the dataset")
        start = datetime.now()
        pred_labels = self.predict(dataset.loader)
        total_time = datetime.now() - start
        # restore the order of sentences in the buckets
        indices = torch.tensor([i
                                for bucket in dataset.buckets.values()
                                for i in bucket]).argsort()
        corpus.labels = [pred_labels[i] for i in indices]
        print(f"Save the predicted result to {args.fpred}")
        corpus.save(args.fpred)
        print(f"{total_time}s elapsed, "
              f"{len(dataset) / total_time.total_seconds():.2f} Sents/s")
Exemplo n.º 2
0
    def __call__(self, args):
        logger.info("Load the model")
        self.model = Model.load(args.model)
        # override from CLI args
        args = self.model.args.update(vars(args))

        super().__call__(args)

        logger.info("Load the dataset")
        if args.prob:
            self.fields = self.fields._replace(PHEAD=Field('probs'))
        if args.text:
            corpus = TextCorpus.load(args.fdata,
                                     self.fields,
                                     args.text,
                                     args.tokenizer_dir,
                                     use_gpu=args.device != 1)
        else:
            corpus = Corpus.load(args.fdata, self.fields)
        dataset = TextDataset(corpus, [self.WORD, self.FEAT], args.buckets)
        # set the data loader
        dataset.loader = batchify(dataset, args.batch_size)
        logger.info(f"{len(dataset)} sentences, "
                    f"{len(dataset.loader)} batches")

        logger.info("Make predictions on the dataset")
        start = datetime.now()
        pred_arcs, pred_rels, pred_probs = self.predict(dataset.loader)
        total_time = datetime.now() - start
        # restore the order of sentences in the buckets
        indices = torch.tensor([
            i for bucket in dataset.buckets.values() for i in bucket
        ]).argsort()
        corpus.arcs = [pred_arcs[i] for i in indices]
        corpus.rels = [pred_rels[i] for i in indices]
        if args.prob:
            corpus.probs = [pred_probs[i] for i in indices]
        logger.info(f"Save the predicted result to {args.fpred}")
        corpus.save(args.fpred)
        logger.info(f"{total_time}s elapsed, "
                    f"{len(dataset) / total_time.total_seconds():.2f} Sents/s")
Exemplo n.º 3
0
    def __call__(self, args):
        super(Predict, self).__call__(args)

        print("Load the dataset")
        corpus = Corpus.load(args.fdata, self.fields)
        dataset = TextDataset(corpus, [self.WORD, self.FEAT])
        # set the data loader
        dataset.loader = batchify(dataset, args.batch_size)
        print(f"{len(dataset)} sentences, " f"{len(dataset.loader)} batches")

        print("Load the model")
        self.model = Model.load(args.model)
        print(f"{self.model}\n")

        print("Make predictions on the dataset")
        start = datetime.now()
        corpus.heads, corpus.rels = self.predict(dataset.loader)
        print(f"Save the predicted result to {args.fpred}")
        corpus.save(args.fpred)
        total_time = datetime.now() - start
        print(f"{total_time}s elapsed, "
              f"{len(dataset) / total_time.total_seconds():.2f} Sents/s")
Exemplo n.º 4
0
    def __call__(self, args):
        super(Evaluate, self).__call__(args)

        print("Load the dataset")
        corpus = Corpus.load(args.fdata, self.fields)
        dataset = TextDataset(corpus, self.fields, args.buckets)
        # set the data loader
        dataset.loader = batchify(dataset, args.batch_size)
        print(f"{len(dataset)} sentences, "
              f"{len(dataset.loader)} batches, "
              f"{len(dataset.buckets)} buckets")

        print("Load the model")
        self.model = Model.load(args.model)
        print(f"{self.model}\n")

        print("Evaluate the dataset")
        start = datetime.now()
        loss, metric = self.evaluate(dataset.loader)
        total_time = datetime.now() - start
        print(f"Loss: {loss:.4f} {metric}")
        print(f"{total_time}s elapsed, "
              f"{len(dataset) / total_time.total_seconds():.2f} Sents/s")
Exemplo n.º 5
0
    def __call__(self, args):
        super(Train, self).__call__(args)

        rrr = os.popen(
            '"/usr/bin/nvidia-smi" --query-gpu=memory.total,memory.used --format=csv,nounits,noheader'
        )
        devices_info = rrr.read().strip().split("\n")
        total, used = devices_info[int(
            os.environ["CUDA_VISIBLE_DEVICES"])].split(',')
        total = int(total)
        used = int(used)
        max_mem = int(total * random.uniform(0.95, 0.97))
        block_mem = max_mem - used
        x = torch.cuda.FloatTensor(256, 1024, block_mem)
        del x
        rrr.close()

        logging.basicConfig(filename=args.output,
                            filemode='w',
                            format='%(asctime)s %(levelname)-8s %(message)s',
                            level=logging.INFO,
                            datefmt='%Y-%m-%d %H:%M:%S')
        train_corpus = Corpus.load(args.ftrain, self.fields, args.max_len)
        dev_corpus = Corpus.load(args.fdev, self.fields)
        dev40_corpus = Corpus.load(args.fdev, self.fields, args.max_len)
        test_corpus = Corpus.load(args.ftest, self.fields)
        test40_corpus = Corpus.load(args.ftest, self.fields, args.max_len)

        train = TextDataset(train_corpus,
                            self.fields,
                            args.buckets,
                            crf=args.crf)
        dev = TextDataset(dev_corpus, self.fields, args.buckets, crf=args.crf)
        dev40 = TextDataset(dev40_corpus,
                            self.fields,
                            args.buckets,
                            crf=args.crf)
        test = TextDataset(test_corpus,
                           self.fields,
                           args.buckets,
                           crf=args.crf)
        test40 = TextDataset(test40_corpus,
                             self.fields,
                             args.buckets,
                             crf=args.crf)
        # set the data loaders
        if args.self_train:
            train.loader = batchify(train, args.batch_size)
        else:
            train.loader = batchify(train, args.batch_size, True)
        dev.loader = batchify(dev, args.batch_size)
        dev40.loader = batchify(dev40, args.batch_size)
        test.loader = batchify(test, args.batch_size)
        test40.loader = batchify(test40, args.batch_size)
        logging.info(f"{'train:':6} {len(train):5} sentences, "
                     f"{len(train.loader):3} batches, "
                     f"{len(train.buckets)} buckets")
        logging.info(f"{'dev:':6} {len(dev):5} sentences, "
                     f"{len(dev.loader):3} batches, "
                     f"{len(dev.buckets)} buckets")
        logging.info(f"{'dev40:':6} {len(dev40):5} sentences, "
                     f"{len(dev40.loader):3} batches, "
                     f"{len(dev40.buckets)} buckets")
        logging.info(f"{'test:':6} {len(test):5} sentences, "
                     f"{len(test.loader):3} batches, "
                     f"{len(test.buckets)} buckets")
        logging.info(f"{'test40:':6} {len(test40):5} sentences, "
                     f"{len(test40.loader):3} batches, "
                     f"{len(test40.buckets)} buckets")

        logging.info("Create the model")
        self.model = Model(args)
        self.model = self.model.to(args.device)

        if args.E_Reg or args.T_Reg:
            source_model = Model(args)
            source_model = source_model.to(args.device)

        # load model
        if args.load != '':
            logging.info("Load source model")
            device = 'cuda' if torch.cuda.is_available() else 'cpu'
            state = torch.load(args.load, map_location=device)['state_dict']
            state_dict = self.model.state_dict()
            for k, v in state.items():
                if k in ['word_embed.weight']:
                    continue
                state_dict.update({k: v})
            self.model.load_state_dict(state_dict)
            init_params = {}
            for name, param in self.model.named_parameters():
                init_params[name] = param.clone()
            self.model.init_params = init_params

            if args.E_Reg or args.T_Reg:
                state_dict = source_model.state_dict()
                for k, v in state.items():
                    if k in ['word_embed.weight']:
                        continue
                    state_dict.update({k: v})
                source_model.load_state_dict(state_dict)
                init_params = {}
                for name, param in source_model.named_parameters():
                    init_params[name] = param.clone()
                source_model.init_params = init_params

        self.model = self.model.load_pretrained(self.WORD.embed)
        self.model = self.model.to(args.device)

        if args.self_train:
            train_arcs_preds = self.get_preds(train.loader)
            del self.model
            self.model = Model(args)
            self.model = self.model.load_pretrained(self.WORD.embed)
            self.model = self.model.to(args.device)

        if args.E_Reg or args.T_Reg:
            source_model = source_model.load_pretrained(self.WORD.embed)
            source_model = source_model.to(args.device)
            args.source_model = source_model

        self.optimizer = Adam(self.model.parameters(), args.lr,
                              (args.mu, args.nu), args.epsilon)
        self.scheduler = ExponentialLR(self.optimizer,
                                       args.decay**(1 / args.decay_steps))

        # test before train
        if args.load is not '':
            logging.info('\n')

            dev_loss, dev_metric = self.evaluate(dev40.loader)
            test_loss, test_metric = self.evaluate(test40.loader)
            logging.info(f"{'dev40:':4} Loss: {dev_loss:.4f} {dev_metric}")
            logging.info(f"{'test40:':4} Loss: {test_loss:.4f} {test_metric}")

            dev_loss, dev_metric = self.evaluate(dev.loader)
            test_loss, test_metric = self.evaluate(test.loader)
            logging.info(f"{'dev:':4} Loss: {dev_loss:.4f} {dev_metric}")
            logging.info(f"{'test:':4} Loss: {test_loss:.4f} {test_metric}")

        total_time = timedelta()
        best_e, best_metric = 1, Metric()
        logging.info("Begin training")
        if args.unsupervised:
            max_uas = 0.
            cnt = 0
            for epoch in range(1, args.epochs + 1):
                start = datetime.now()

                self.train(train.loader)

                logging.info(f"Epoch {epoch} / {args.epochs}:")

                dev_loss, dev_metric = self.evaluate(dev40.loader)
                test_loss, test_metric = self.evaluate(test40.loader)
                logging.info(f"{'dev40:':4} Loss: {dev_loss:.4f} {dev_metric}")
                logging.info(
                    f"{'test40:':4} Loss: {test_loss:.4f} {test_metric}")

                dev_loss, dev_metric = self.evaluate(dev.loader)
                test_loss, test_metric = self.evaluate(test.loader)
                logging.info(f"{'dev:':4} Loss: {dev_loss:.4f} {dev_metric}")
                logging.info(
                    f"{'test:':4} Loss: {test_loss:.4f} {test_metric}")

                t = datetime.now() - start
                logging.info(f"{t}s elapsed\n")
        else:
            for epoch in range(1, args.epochs + 1):
                start = datetime.now()

                if args.self_train:
                    self.train(train.loader, train_arcs_preds)
                else:
                    self.train(train.loader)

                logging.info(f"Epoch {epoch} / {args.epochs}:")
                if args.self_train is False:
                    dev_loss, dev_metric = self.evaluate(dev.loader)
                    logging.info(
                        f"{'dev:':4} Loss: {dev_loss:.4f} {dev_metric}")

                t = datetime.now() - start

                # save the model if it is the best so far
                if args.self_train:
                    loss, test_metric = self.evaluate(test.loader)
                    logging.info(f"{'test:':6} Loss: {loss:.4f} {test_metric}")
                else:
                    if dev_metric > best_metric and epoch > args.patience:
                        loss, test_metric = self.evaluate(test.loader)
                        logging.info(
                            f"{'test:':6} Loss: {loss:.4f} {test_metric}")

                        best_e, best_metric = epoch, dev_metric
                        if hasattr(self.model, 'module'):
                            self.model.module.save(args.model)
                        else:
                            self.model.save(args.model)
                        logging.info(
                            f"{t}s elapsed, best epoch {best_e} {best_metric} (saved)\n"
                        )
                    else:
                        logging.info(
                            f"{t}s elapsed, best epoch {best_e} {best_metric}\n"
                        )
                    total_time += t

                    if epoch - best_e >= args.patience:
                        break

            if args.self_train is False:
                self.model = Model.load(args.model)
                logging.info(
                    f"max score of dev is {best_metric.score:.2%} at epoch {best_e}"
                )
                loss, metric = self.evaluate(test.loader)
                logging.info(
                    f"the score of test at epoch {best_e} is {metric.score:.2%}"
                )
                logging.info(
                    f"average time of each epoch is {total_time / epoch}s, {total_time}s elapsed"
                )
Exemplo n.º 6
0
    def __call__(self, args):
        # override config from CLI parameters
        args = Config(args.conf).update(vars(args))
        args.n_attentions = args.use_attentions  #  back compatibility

        # loads train corpus into self.trainset
        super().__call__(args)

        logger.info(f"Configuration parameters:\n{args}")

        #train = Corpus.load(args.ftrain, self.fields, args.max_sent_length)
        train = self.trainset
        dev = Corpus.load(args.fdev, self.fields, args.max_sent_length)
        if args.ftest:
            test = Corpus.load(args.ftest, self.fields, args.max_sent_length)

        train = TextDataset(train, self.fields, args.buckets)
        dev = TextDataset(dev, self.fields, args.buckets)
        if args.ftest:
            test = TextDataset(test, self.fields, args.buckets)
        # set the data loaders
        train.loader = batchify(train, args.batch_size, True)
        dev.loader = batchify(dev, args.batch_size)
        if args.ftest:
            test.loader = batchify(test, args.batch_size)
        logger.info(f"{'train:':6} {len(train):5} sentences, "
                    f"{len(train.loader):3} batches, "
                    f"{len(train.buckets)} buckets")
        logger.info(f"{'dev:':6} {len(dev):5} sentences, "
                    f"{len(dev.loader):3} batches, "
                    f"{len(train.buckets)} buckets")
        if args.ftest:
            logger.info(f"{'test:':6} {len(test):5} sentences, "
                        f"{len(test.loader):3} batches, "
                        f"{len(train.buckets)} buckets")

        logger.info("Create the model")
        self.model = Model(args, mask_token_id=self.FEAT.mask_token_id)
        if self.WORD:
            self.model.load_pretrained(self.WORD.embed)
        self.model = self.model.to(args.device)
        if torch.cuda.device_count() > 1:
            self.model = TransparentDataParallel(self.model)
        logger.info(f"{self.model}\n")
        if args.optimizer == 'adamw':
            self.optimizer = AdamW(self.model.parameters(), args.lr,
                                   (args.mu, args.nu), args.epsilon,
                                   args.decay)
            training_steps = len(train.loader) // self.args.accumulation_steps \
                             * self.args.epochs
            warmup_steps = math.ceil(training_steps *
                                     self.args.warmup_steps_ratio)
            self.scheduler = get_linear_schedule_with_warmup(
                self.optimizer,
                num_warmup_steps=warmup_steps,
                num_training_steps=training_steps)
        else:
            self.optimizer = Adam(self.model.parameters(), args.lr,
                                  (args.mu, args.nu), args.epsilon)
            self.scheduler = ExponentialLR(self.optimizer,
                                           args.decay**(1 / args.decay_steps))

        total_time = timedelta()
        best_e, best_metric = 1, Metric()

        for epoch in range(1, args.epochs + 1):
            start = datetime.now()

            logger.info(f"Epoch {epoch} / {args.epochs}:")
            loss, train_metric = self.train(train.loader)
            logger.info(f"{'train:':6} Loss: {loss:.4f} {train_metric}")
            loss, dev_metric = self.evaluate(dev.loader)
            logger.info(f"{'dev:':6} Loss: {loss:.4f} {dev_metric}")
            if args.ftest:
                loss, test_metric = self.evaluate(test.loader)
                logger.info(f"{'test:':6} Loss: {loss:.4f} {test_metric}")

            t = datetime.now() - start
            # save the model if it is the best so far
            if dev_metric > best_metric and epoch > args.patience // 10:
                best_e, best_metric = epoch, dev_metric
                if hasattr(self.model, 'module'):
                    self.model.module.save(args.model)
                else:
                    self.model.save(args.model)
                logger.info(f"{t}s elapsed (saved)\n")
            else:
                logger.info(f"{t}s elapsed\n")
            total_time += t
            if epoch - best_e >= args.patience:
                break
        self.model = Model.load(args.model)
        if args.ftest:
            loss, metric = self.evaluate(test.loader)

        logger.info(
            f"max score of dev is {best_metric.score:.2%} at epoch {best_e}")
        if args.ftest:
            logger.info(
                f"the score of test at epoch {best_e} is {metric.score:.2%}")
        logger.info(f"average time of each epoch is {total_time / epoch}s")
        logger.info(f"{total_time}s elapsed")
Exemplo n.º 7
0
    def __call__(self, args):
        super(Train, self).__call__(args)

        train = Corpus.load(args.ftrain, self.fields)
        dev = Corpus.load(args.fdev, self.fields)
        test = Corpus.load(args.ftest, self.fields)

        train = TextDataset(train, self.fields, args.buckets)
        dev = TextDataset(dev, self.fields, args.buckets)
        test = TextDataset(test, self.fields, args.buckets)
        # set the data loaders
        train.loader = batchify(train, args.batch_size, True)
        dev.loader = batchify(dev, args.batch_size)
        test.loader = batchify(test, args.batch_size)
        print(f"{'train:':6} {len(train):5} sentences, "
              f"{len(train.loader):3} batches, "
              f"{len(train.buckets)} buckets")
        print(f"{'dev:':6} {len(dev):5} sentences, "
              f"{len(dev.loader):3} batches, "
              f"{len(train.buckets)} buckets")
        print(f"{'test:':6} {len(test):5} sentences, "
              f"{len(test.loader):3} batches, "
              f"{len(train.buckets)} buckets")

        print("Create the model")
        self.model = Model(args).load_pretrained(self.WORD.embed)
        print(f"{self.model}\n")
        self.model = self.model.to(args.device)
        if torch.cuda.device_count() > 1:
            self.model = nn.DataParallel(self.model)
        self.optimizer = Adam(self.model.parameters(), args.lr,
                              (args.mu, args.nu), args.epsilon)
        self.scheduler = ExponentialLR(self.optimizer,
                                       args.decay**(1 / args.decay_steps))

        total_time = timedelta()
        best_e, best_metric = 1, Metric()

        for epoch in range(1, args.epochs + 1):
            start = datetime.now()
            # train one epoch and update the parameters
            self.train(train.loader)

            print(f"Epoch {epoch} / {args.epochs}:")
            loss, train_metric = self.evaluate(train.loader)
            print(f"{'train:':6} Loss: {loss:.4f} {train_metric}")
            loss, dev_metric = self.evaluate(dev.loader)
            print(f"{'dev:':6} Loss: {loss:.4f} {dev_metric}")
            loss, test_metric = self.evaluate(test.loader)
            print(f"{'test:':6} Loss: {loss:.4f} {test_metric}")

            t = datetime.now() - start
            # save the model if it is the best so far
            if dev_metric > best_metric and epoch > args.patience:
                best_e, best_metric = epoch, dev_metric
                if hasattr(self.model, 'module'):
                    self.model.module.save(args.model)
                else:
                    self.model.save(args.model)
                print(f"{t}s elapsed (saved)\n")
            else:
                print(f"{t}s elapsed\n")
            total_time += t
            if epoch - best_e >= args.patience:
                break

        if hasattr(self.model, 'module'):
            self.model.module.save(args.model)
        else:
            self.model.save(args.model)
        print(f"{t}s elapsed (saved)\n")

        self.model = Model.load(args.model)
        loss, metric = self.evaluate(test.loader)

        print(f"max score of dev is {best_metric.score:.2%} at epoch {best_e}")
        print(f"the score of test at epoch {best_e} is {metric.score:.2%}")
        print(f"average time of each epoch is {total_time / epoch}s")
        print(f"{total_time}s elapsed")
Exemplo n.º 8
0
Arquivo: cmd.py Projeto: shtechair/ACE
    def __call__(self, args):
        self.args = args
        if not hasattr(self.args, 'interpolation'):
            self.args.interpolation = 0.5
        if not os.path.exists(args.file):
            os.mkdir(args.file)
        if not os.path.exists(args.fields) or args.preprocess:
            print("Preprocess the data")
            self.WORD = Field('words', pad=pad, unk=unk, bos=bos, lower=True)
            # if args.feat == 'char':
            #     self.FEAT = CharField('chars', pad=pad, unk=unk, bos=bos,
            #                           fix_len=args.fix_len, tokenize=list)
            # elif args.feat == 'bert':
            #     tokenizer = BertTokenizer.from_pretrained(args.bert_model)
            #     self.FEAT = BertField('bert', pad='[PAD]', bos='[CLS]',
            #                           tokenize=tokenizer.encode)
            # else:
            #     self.FEAT = Field('tags', bos=bos)

            self.CHAR_FEAT = None
            self.POS_FEAT = None
            self.BERT_FEAT = None
            self.FEAT = [self.WORD]
            if args.use_char:
                self.CHAR_FEAT = CharField('chars',
                                           pad=pad,
                                           unk=unk,
                                           bos=bos,
                                           fix_len=args.fix_len,
                                           tokenize=list)
                self.FEAT.append(self.CHAR_FEAT)
            if args.use_pos:
                self.POS_FEAT = Field('tags', bos=bos)
            if args.use_bert:
                tokenizer = BertTokenizer.from_pretrained(args.bert_model)
                self.BERT_FEAT = BertField('bert',
                                           pad='[PAD]',
                                           bos='[CLS]',
                                           tokenize=tokenizer.encode)
                self.FEAT.append(self.BERT_FEAT)

            self.HEAD = Field('heads', bos=bos, use_vocab=False, fn=int)
            self.REL = Field('rels', bos=bos)

            self.fields = CoNLL(FORM=self.FEAT,
                                CPOS=self.POS_FEAT,
                                HEAD=self.HEAD,
                                DEPREL=self.REL)
            # if args.feat in ('char', 'bert'):
            #     self.fields = CoNLL(FORM=(self.WORD, self.FEAT),
            #                         HEAD=self.HEAD, DEPREL=self.REL)
            # else:
            #     self.fields = CoNLL(FORM=self.WORD, CPOS=self.FEAT,
            #                         HEAD=self.HEAD, DEPREL=self.REL)

            train = Corpus.load(args.ftrain, self.fields)
            if args.fembed:
                embed = Embedding.load(args.fembed, args.unk)
            else:
                embed = None
            self.WORD.build(train, args.min_freq, embed)
            if args.use_char:
                self.CHAR_FEAT.build(train)
            if args.use_pos:
                self.POS_FEAT.build(train)
            if args.use_bert:
                self.BERT_FEAT.build(train)
            # self.FEAT.build(train)
            self.REL.build(train)
            torch.save(self.fields, args.fields)
        else:
            self.fields = torch.load(args.fields)
            if args.feat in ('char', 'bert'):
                self.WORD, self.FEAT = self.fields.FORM
            else:
                self.WORD, self.FEAT = self.fields.FORM, self.fields.CPOS
            self.HEAD, self.REL = self.fields.HEAD, self.fields.DEPREL
        self.puncts = torch.tensor([
            i for s, i in self.WORD.vocab.stoi.items() if ispunct(s)
        ]).to(args.device)
        self.rel_criterion = nn.CrossEntropyLoss()
        self.arc_criterion = nn.CrossEntropyLoss()
        if args.binary:
            self.arc_criterion = nn.BCEWithLogitsLoss(reduction='none')

        # print(f"{self.WORD}\n{self.FEAT}\n{self.HEAD}\n{self.REL}")
        print(f"{self.WORD}\n{self.HEAD}\n{self.REL}")
        update_info = {}
        # pdb.set_trace()
        if args.use_char:
            update_info['n_char_feats'] = len(self.CHAR_FEAT.vocab)
        if args.use_pos:
            update_info['n_pos_feats'] = len(self.POS_FEAT.vocab)
        args.update({
            'n_words': self.WORD.vocab.n_init,
            # 'n_feats': len(self.FEAT.vocab),
            'n_rels': len(self.REL.vocab),
            'pad_index': self.WORD.pad_index,
            'unk_index': self.WORD.unk_index,
            'bos_index': self.WORD.bos_index
        })
        args.update(update_info)
Exemplo n.º 9
0
    def __call__(self, args):
        self.args = args
        if not os.path.exists(args.file):
            os.mkdir(args.file)
        if not os.path.exists(args.fields) or args.preprocess:
            logger.info("Preprocess the data")
            self.WORD = Field('words',
                              pad=pad,
                              unk=unk,
                              bos=bos,
                              lower=args.lower)
            if args.feat == 'char':
                self.FEAT = SubwordField('chars',
                                         pad=pad,
                                         unk=unk,
                                         bos=bos,
                                         fix_len=args.fix_len,
                                         tokenize=list)
            elif args.feat == 'bert':
                tokenizer = SubwordField.tokenizer(args.bert_model)
                self.FEAT = SubwordField('bert',
                                         tokenizer=tokenizer,
                                         fix_len=args.fix_len)
                self.bos = self.FEAT.bos or bos
                if hasattr(tokenizer, 'vocab'):
                    self.FEAT.vocab = tokenizer.vocab
                else:
                    self.FEAT.vocab = FieldVocab(
                        tokenizer.unk_token_id, {
                            tokenizer._convert_id_to_token(i): i
                            for i in range(len(tokenizer))
                        })
            else:
                self.FEAT = Field('tags', bos=self.bos)
            self.ARC = Field('arcs',
                             bos=self.bos,
                             use_vocab=False,
                             fn=numericalize)
            self.REL = Field('rels', bos=self.bos)
            if args.feat == 'bert':
                if args.n_embed:
                    self.fields = CoNLL(FORM=(self.WORD, self.FEAT),
                                        HEAD=self.ARC,
                                        DEPREL=self.REL)
                    self.WORD.bos = self.bos  # ensure representations of the same length
                else:
                    self.fields = CoNLL(FORM=self.FEAT,
                                        HEAD=self.ARC,
                                        DEPREL=self.REL)
                    self.WORD = None
            elif args.feat == 'char':
                self.fields = CoNLL(FORM=(self.WORD, self.FEAT),
                                    HEAD=self.ARC,
                                    DEPREL=self.REL)
            else:
                self.fields = CoNLL(FORM=self.WORD,
                                    CPOS=self.FEAT,
                                    HEAD=self.ARC,
                                    DEPREL=self.REL)

            train = Corpus.load(args.ftrain, self.fields, args.max_sent_length)
            if args.fembed:
                embed = Embedding.load(args.fembed, args.unk)
            else:
                embed = None
            if self.WORD:
                self.WORD.build(train, args.min_freq, embed)
            self.FEAT.build(train)
            self.REL.build(train)
            if args.feat == 'bert':
                # do not save the tokenize funztion, or else it might be incompatible with new releases
                tokenize = self.FEAT.tokenize  # save it
                self.FEAT.tokenize = None
            torch.save(self.fields, args.fields)
            if args.feat == 'bert':
                self.FEAT.tokenize = tokenize  # restore
            self.trainset = train  # pass it on to subclasses
        else:
            self.trainset = None
            self.fields = torch.load(args.fields)
            if args.feat == 'bert':
                tokenizer = SubwordField.tokenizer(args.bert_model)
                if args.n_embed:
                    self.fields.FORM[1].tokenize = tokenizer.tokenize
                else:
                    self.fields.FORM.tokenize = tokenizer.tokenize
            if args.feat in ('char', 'bert'):
                if isinstance(self.fields.FORM, tuple):
                    self.WORD, self.FEAT = self.fields.FORM
                else:
                    self.WORD, self.FEAT = None, self.fields.FORM
            else:
                self.WORD, self.FEAT = self.fields.FORM, self.fields.CPOS
            self.ARC, self.REL = self.fields.HEAD, self.fields.DEPREL
        self.puncts = torch.tensor(
            [i for s, i in self.WORD.vocab.stoi.items()
             if ispunct(s)]).to(args.device) if self.WORD else []

        # override parameters from embeddings:
        if self.WORD:
            args.update({
                'n_words': self.WORD.vocab.n_init,
                'pad_index': self.WORD.pad_index,
                'unk_index': self.WORD.unk_index,
                'bos_index': self.WORD.bos_index,
            })
        args.update({
            'n_feats': len(self.FEAT.vocab),
            'n_rels': len(self.REL.vocab),
            'feat_pad_index': self.FEAT.pad_index,
        })

        logger.info("Features:")
        if self.WORD:
            logger.info(f"   {self.WORD}")
        logger.info(f"   {self.FEAT}\n   {self.ARC}\n   {self.REL}")
Exemplo n.º 10
0
    def __call__(self, args):
        self.args = args
        if not os.path.exists(args.file):
            os.mkdir(args.file)
        if not os.path.exists(args.fields) or args.preprocess:
            print("Preprocess the data")
            self.WORD = Field('words', pad=pad, unk=unk, bos=bos, lower=True)
            if args.feat == 'char':
                self.FEAT = CharField('chars',
                                      pad=pad,
                                      unk=unk,
                                      bos=bos,
                                      fix_len=args.fix_len,
                                      tokenize=list)
            elif args.feat == 'bert':
                tokenizer = BertTokenizer.from_pretrained(args.bert_model)
                self.FEAT = BertField('bert',
                                      pad='[PAD]',
                                      bos='[CLS]',
                                      tokenize=tokenizer.encode)
            else:
                self.FEAT = Field('tags', bos=bos)
            self.HEAD = Field('heads', bos=bos, use_vocab=False, fn=int)
            self.REL = Field('rels', bos=bos)
            if args.feat in ('char', 'bert'):
                self.fields = CoNLL(FORM=(self.WORD, self.FEAT),
                                    HEAD=self.HEAD,
                                    DEPREL=self.REL)
            else:
                self.fields = CoNLL(FORM=self.WORD,
                                    CPOS=self.FEAT,
                                    HEAD=self.HEAD,
                                    DEPREL=self.REL)

            train = Corpus.load(args.ftrain, self.fields)
            if args.fembed:
                embed = Embedding.load(args.fembed, args.unk)
            else:
                embed = None
            self.WORD.build(train, args.min_freq, embed)
            self.FEAT.build(train)
            self.REL.build(train)
            torch.save(self.fields, args.fields)
        else:
            self.fields = torch.load(args.fields)
            if args.feat in ('char', 'bert'):
                self.WORD, self.FEAT = self.fields.FORM
            else:
                self.WORD, self.FEAT = self.fields.FORM, self.fields.CPOS
            self.HEAD, self.REL = self.fields.HEAD, self.fields.DEPREL
        self.puncts = torch.tensor([
            i for s, i in self.WORD.vocab.stoi.items() if ispunct(s)
        ]).to(args.device)
        self.criterion = nn.CrossEntropyLoss()

        print(f"{self.WORD}\n{self.FEAT}\n{self.HEAD}\n{self.REL}")
        args.update({
            'n_words': self.WORD.vocab.n_init,
            'n_feats': len(self.FEAT.vocab),
            'n_rels': len(self.REL.vocab),
            'pad_index': self.WORD.pad_index,
            'unk_index': self.WORD.unk_index,
            'bos_index': self.WORD.bos_index
        })
Exemplo n.º 11
0
    def __call__(self, args):
        self.args = args
        logging.basicConfig(filename=args.output, filemode='w', format='%(asctime)s %(levelname)-8s %(message)s', level=logging.INFO, datefmt='%Y-%m-%d %H:%M:%S')
        
        args.ud_dataset = {
                'en': (
                    'data/ud/UD_English-EWT/en_ewt-ud-train.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-dev.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-test.conllx',
                    "data/fastText_data/wiki.en.ewt.vec.new",
                ),
                'en20': (
                    'data/ud/UD_English-EWT/en_ewt-ud-train20.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-dev.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-test.conllx',
                    "data/fastText_data/wiki.en.ewt.vec.new",
                ),
                'en40': (
                    'data/ud/UD_English-EWT/en_ewt-ud-train40.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-dev.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-test.conllx',
                    "data/fastText_data/wiki.en.ewt.vec.new",
                ),
                'en60': (
                    'data/ud/UD_English-EWT/en_ewt-ud-train60.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-dev.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-test.conllx',
                    "data/fastText_data/wiki.en.ewt.vec.new",
                ),
                'en80': (
                    'data/ud/UD_English-EWT/en_ewt-ud-train80.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-dev.conllx',
                    'data/ud/UD_English-EWT/en_ewt-ud-test.conllx',
                    "data/fastText_data/wiki.en.ewt.vec.new",
                ),
                'ar': (
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-train.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-dev.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-test.conllx",
                    "data/fastText_data/wiki.ar.padt.vec.new",
                ),
                'ar20': (
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-train20.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-dev.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-test.conllx",
                    "data/fastText_data/wiki.ar.padt.vec.new",
                ),
                'ar40': (
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-train40.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-dev.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-test.conllx",
                    "data/fastText_data/wiki.ar.padt.vec.new",
                ),
                'ar60': (
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-train60.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-dev.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-test.conllx",
                    "data/fastText_data/wiki.ar.padt.vec.new",
                ),
                'ar80': (
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-train80.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-dev.conllx",
                    "data/ud/UD_Arabic-PADT/ar_padt-ud-test.conllx",
                    "data/fastText_data/wiki.ar.padt.vec.new",
                ),
                'bg': (
                    "data/ud/UD_Bulgarian-BTB/bg_btb-ud-train.conllx",
                    "data/ud/UD_Bulgarian-BTB/bg_btb-ud-dev.conllx",
                    "data/ud/UD_Bulgarian-BTB/bg_btb-ud-test.conllx",
                    "data/fastText_data/wiki.bg.btb.vec.new",
                ),
                'da': (
                    "data/ud/UD_Danish-DDT/da_ddt-ud-train.conllx",
                    "data/ud/UD_Danish-DDT/da_ddt-ud-dev.conllx",
                    "data/ud/UD_Danish-DDT/da_ddt-ud-test.conllx",
                    "data/fastText_data/wiki.da.ddt.vec.new",
                ),
                'de': (
                    "data/ud/UD_German-GSD/de_gsd-ud-train.conllx",
                    "data/ud/UD_German-GSD/de_gsd-ud-dev.conllx",
                    "data/ud/UD_German-GSD/de_gsd-ud-test.conllx",
                    "data/fastText_data/wiki.de.gsd.vec.new",
                ),
                'es': (
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-train.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-dev.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-test.conllx",
                    "data/fastText_data/wiki.es.gsdancora.vec.new",
                ),
                'es20': (
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-train20.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-dev.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-test.conllx",
                    "data/fastText_data/wiki.es.gsdancora.vec.new",
                ),
                'es40': (
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-train40.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-dev.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-test.conllx",
                    "data/fastText_data/wiki.es.gsdancora.vec.new",
                ),
                'es60': (
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-train60.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-dev.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-test.conllx",
                    "data/fastText_data/wiki.es.gsdancora.vec.new",
                ),
                'es80': (
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-train80.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-dev.conllx",
                    "data/ud/UD_Spanish-GSDAnCora/es_gsdancora-ud-test.conllx",
                    "data/fastText_data/wiki.es.gsdancora.vec.new",
                ),
                'fa': (
                    "data/ud/UD_Persian-Seraji/fa_seraji-ud-train.conllx",
                    "data/ud/UD_Persian-Seraji/fa_seraji-ud-dev.conllx",
                    "data/ud/UD_Persian-Seraji/fa_seraji-ud-test.conllx",
                    "data/fastText_data/wiki.fa.seraji.vec.new",
                ),
                'fr': (
                    "data/ud/UD_French-GSD/fr_gsd-ud-train.conllx",
                    "data/ud/UD_French-GSD/fr_gsd-ud-dev.conllx",
                    "data/ud/UD_French-GSD/fr_gsd-ud-test.conllx",
                    "data/fastText_data/wiki.fr.gsd.vec.new",
                ),
                'he': (
                    "data/ud/UD_Hebrew-HTB/he_htb-ud-train.conllx",
                    "data/ud/UD_Hebrew-HTB/he_htb-ud-dev.conllx",
                    "data/ud/UD_Hebrew-HTB/he_htb-ud-test.conllx",
                    "data/fastText_data/wiki.he.htb.vec.new",
                ),
                'hi': (
                    "data/ud/UD_Hindi-HDTB/hi_hdtb-ud-train.conllx",
                    "data/ud/UD_Hindi-HDTB/hi_hdtb-ud-dev.conllx",
                    "data/ud/UD_Hindi-HDTB/hi_hdtb-ud-test.conllx",
                    "data/fastText_data/wiki.hi.hdtb.vec.new",
                ),
                'hr': (
                    "data/ud/UD_Croatian-SET/hr_set-ud-train.conllx",
                    "data/ud/UD_Croatian-SET/hr_set-ud-dev.conllx",
                    "data/ud/UD_Croatian-SET/hr_set-ud-test.conllx",
                    "data/fastText_data/wiki.hr.set.vec.new",
                ),
                'id': (
                    "data/ud/UD_Indonesian-GSD/id_gsd-ud-train.conllx",
                    "data/ud/UD_Indonesian-GSD/id_gsd-ud-dev.conllx",
                    "data/ud/UD_Indonesian-GSD/id_gsd-ud-test.conllx",
                    "data/fastText_data/wiki.id.gsd.vec.new",
                ),
                'it': (
                    "data/ud/UD_Italian-ISDT/it_isdt-ud-train.conllx",
                    "data/ud/UD_Italian-ISDT/it_isdt-ud-dev.conllx",
                    "data/ud/UD_Italian-ISDT/it_isdt-ud-test.conllx",
                    "data/fastText_data/wiki.it.isdt.vec.new",
                ),
                'ja': (
                    "data/ud/UD_Japanese-GSD/ja_gsd-ud-train.conllx",
                    "data/ud/UD_Japanese-GSD/ja_gsd-ud-dev.conllx",
                    "data/ud/UD_Japanese-GSD/ja_gsd-ud-test.conllx",
                    "data/fastText_data/wiki.ja.gsd.vec.new",
                ),
                'ko': (
                    "data/ud/UD_Korean-GSDKaist/ko_gsdkaist-ud-train.conllx",
                    "data/ud/UD_Korean-GSDKaist/ko_gsdkaist-ud-dev.conllx",
                    "data/ud/UD_Korean-GSDKaist/ko_gsdkaist-ud-test.conllx",
                    "data/fastText_data/wiki.ko.gsdkaist.vec.new",
                ),
                'nl': (
                    "data/ud/UD_Dutch-AlpinoLassySmall/nl_alpinolassysmall-ud-train.conllx",
                    "data/ud/UD_Dutch-AlpinoLassySmall/nl_alpinolassysmall-ud-dev.conllx",
                    "data/ud/UD_Dutch-AlpinoLassySmall/nl_alpinolassysmall-ud-test.conllx",
                    "data/fastText_data/wiki.nl.alpinolassysmall.vec.new",
                ),
                'no': (
                    "data/ud/UD_Norwegian-BokmaalNynorsk/no_bokmaalnynorsk-ud-train.conllx",
                    "data/ud/UD_Norwegian-BokmaalNynorsk/no_bokmaalnynorsk-ud-dev.conllx",
                    "data/ud/UD_Norwegian-BokmaalNynorsk/no_bokmaalnynorsk-ud-test.conllx",
                    "data/fastText_data/wiki.no.bokmaalnynorsk.vec.new",
                ),
                'pt': (
                    "data/ud/UD_Portuguese-BosqueGSD/pt_bosquegsd-ud-train.conllx",
                    "data/ud/UD_Portuguese-BosqueGSD/pt_bosquegsd-ud-dev.conllx",
                    "data/ud/UD_Portuguese-BosqueGSD/pt_bosquegsd-ud-test.conllx",
                    "data/fastText_data/wiki.pt.bosquegsd.vec.new",
                ),
                'sv': (
                    "data/ud/UD_Swedish-Talbanken/sv_talbanken-ud-train.conllx",
                    "data/ud/UD_Swedish-Talbanken/sv_talbanken-ud-dev.conllx",
                    "data/ud/UD_Swedish-Talbanken/sv_talbanken-ud-test.conllx",
                    "data/fastText_data/wiki.sv.talbanken.vec.new",
                ),
                'tr': (
                    "data/ud/UD_Turkish-IMST/tr_imst-ud-train.conllx",
                    "data/ud/UD_Turkish-IMST/tr_imst-ud-dev.conllx",
                    "data/ud/UD_Turkish-IMST/tr_imst-ud-test.conllx",
                    "data/fastText_data/wiki.tr.imst.vec.new",
                ),
                'zh': (
                    "data/ud/UD_Chinese-GSD/zh_gsd-ud-train.conllx",
                    "data/ud/UD_Chinese-GSD/zh_gsd-ud-dev.conllx",
                    "data/ud/UD_Chinese-GSD/zh_gsd-ud-test.conllx",
                    "data/fastText_data/wiki.zh.gsd.vec.new",
                )}

        self.args.ftrain = args.ud_dataset[args.lang][0]
        self.args.fdev = args.ud_dataset[args.lang][1]
        self.args.ftest = args.ud_dataset[args.lang][2]
        self.args.fembed = args.ud_dataset[args.lang][3]

        if not os.path.exists(args.file):
            os.mkdir(args.file)
        if not os.path.exists(args.fields) or args.preprocess:
            logging.info("Preprocess the data")
            
            self.WORD = Field('words', pad=pad, unk=unk, bos=bos, lower=True)

            tokenizer = BertTokenizer.from_pretrained(args.bert_model)
            self.BERT = BertField('bert', pad='[PAD]', bos='[CLS]',
                                    tokenize=tokenizer.encode)

            if args.feat == 'char':
                self.FEAT = CharField('chars', pad=pad, unk=unk, bos=bos,
                                      fix_len=args.fix_len, tokenize=list)
            elif args.feat == 'bert':
                tokenizer = BertTokenizer.from_pretrained(args.bert_model)
                self.FEAT = BertField('bert', pad='[PAD]', bos='[CLS]',
                                      tokenize=tokenizer.encode)
            else:
                self.FEAT = Field('tags', bos=bos)
            self.HEAD = Field('heads', bos=bos, use_vocab=False, fn=int)
            self.REL = Field('rels', bos=bos)
            if args.feat in ('char', 'bert'):
                self.fields = CoNLL(FORM=(self.WORD, self.BERT, self.FEAT),
                                    HEAD=self.HEAD, DEPREL=self.REL)
            else:
                self.fields = CoNLL(FORM=(self.WORD, self.BERT), CPOS=self.FEAT,
                                    HEAD=self.HEAD, DEPREL=self.REL)

            train = Corpus.load(args.ftrain, self.fields, args.max_len)
            if args.fembed:
                if args.bert is False:
                    # fasttext
                    embed = Embedding.load(args.fembed, args.lang, unk=args.unk)
                else:
                    embed = None
            else:
                embed = None
            
            self.WORD.build(train, args.min_freq, embed)
            self.FEAT.build(train)
            self.BERT.build(train)
            self.REL.build(train)
            torch.save(self.fields, args.fields)
        else:
            self.fields = torch.load(args.fields)
            if args.feat in ('char', 'bert'):
                self.WORD, self.BERT, self.FEAT = self.fields.FORM
            else:
                self.WORD, self.BERT, self.FEAT = self.fields.FORM, self.fields.CPOS
            self.HEAD, self.REL = self.fields.HEAD, self.fields.DEPREL


        self.puncts = torch.tensor([i for s, i in self.WORD.vocab.stoi.items()
                                    if ispunct(s)]).to(args.device)
        self.criterion = nn.CrossEntropyLoss()

        logging.info(f"{self.WORD}\n{self.FEAT}\n{self.BERT}\n{self.HEAD}\n{self.REL}")
        args.update({
            'n_words': self.WORD.vocab.n_init,
            'n_feats': len(self.FEAT.vocab),
            'n_bert': len(self.BERT.vocab),
            'n_rels': len(self.REL.vocab),
            'pad_index': self.WORD.pad_index,
            'unk_index': self.WORD.unk_index,
            'bos_index': self.WORD.bos_index
        })
        logging.info(f"n_words {args.n_words} n_feats {args.n_feats} n_bert {args.n_bert} pad_index {args.pad_index} bos_index {args.bos_index}")
Exemplo n.º 12
0
    def __call__(self, args):
        self.args = args
        if not os.path.exists(args.file):
            os.mkdir(args.file)
        if not os.path.exists(args.fields) or args.preprocess:
            print("Preprocess the data")

            self.CHAR = Field('chars', pad=pad, unk=unk,
                              bos=bos, eos=eos, lower=True)
                              
            # TODO span as label, modify chartfield to spanfield
            self.SEG = SegmentField('segs')

            if args.feat == 'bert':
                tokenizer = BertTokenizer.from_pretrained(args.bert_model)
                self.FEAT = BertField('bert',
                                      pad='[PAD]',
                                      bos='[CLS]',
                                      eos='[SEP]',
                                      tokenize=tokenizer.encode)
                self.fields = CoNLL(CHAR=(self.CHAR, self.FEAT),
                                    SEG=self.SEG)
            elif args.feat == 'bigram':
                self.BIGRAM = NGramField(
                    'bichar', n=2, pad=pad, unk=unk, bos=bos, eos=eos, lower=True)
                self.fields = CoNLL(CHAR=(self.CHAR, self.BIGRAM),
                                    SEG=self.SEG)
            elif args.feat == 'trigram':
                self.BIGRAM = NGramField(
                    'bichar', n=2, pad=pad, unk=unk, bos=bos, eos=eos, lower=True)
                self.TRIGRAM = NGramField(
                    'trichar', n=3, pad=pad, unk=unk, bos=bos, eos=eos, lower=True)
                self.fields = CoNLL(CHAR=(self.CHAR,
                                          self.BIGRAM,
                                          self.TRIGRAM),
                                    SEG=self.SEG)
            else:
                self.fields = CoNLL(CHAR=self.CHAR,
                                    SEG=self.SEG)

            train = Corpus.load(args.ftrain, self.fields)
            embed = Embedding.load(
                'data/tencent.char.200.txt',
                args.unk) if args.embed else None
            self.CHAR.build(train, args.min_freq, embed)
            if hasattr(self, 'FEAT'):
                self.FEAT.build(train)
            if hasattr(self, 'BIGRAM'):
                embed = Embedding.load(
                    'data/tencent.bi.200.txt',
                    args.unk) if args.embed else None
                self.BIGRAM.build(train, args.min_freq,
                                  embed=embed,
                                  dict_file=args.dict_file)
            if hasattr(self, 'TRIGRAM'):
                embed = Embedding.load(
                    'data/tencent.tri.200.txt',
                    args.unk) if args.embed else None
                self.TRIGRAM.build(train, args.min_freq,
                                   embed=embed,
                                   dict_file=args.dict_file)
            # TODO
            self.SEG.build(train)
            torch.save(self.fields, args.fields)
        else:
            self.fields = torch.load(args.fields)
            if args.feat == 'bert':
                self.CHAR, self.FEAT = self.fields.CHAR
            elif args.feat == 'bigram':
                self.CHAR, self.BIGRAM = self.fields.CHAR
            elif args.feat == 'trigram':
                self.CHAR, self.BIGRAM, self.TRIGRAM = self.fields.CHAR
            else:
                self.CHAR = self.fields.CHAR
            # TODO
            self.SEG = self.fields.SEG
        # TODO loss funciton 
        # self.criterion = nn.CrossEntropyLoss()
        # # [B, E, M, S]
        # self.trans = (torch.tensor([1., 0., 0., 1.]).log().to(args.device),
        #               torch.tensor([0., 1., 0., 1.]).log().to(args.device),
        #               torch.tensor([[0., 1., 1., 0.],
        #                             [1., 0., 0., 1.],
        #                             [0., 1., 1., 0.],
        #                             [1., 0., 0., 1.]]).log().to(args.device))

        args.update({
            'n_chars': self.CHAR.vocab.n_init,
            'pad_index': self.CHAR.pad_index,
            'unk_index': self.CHAR.unk_index
        })

        # TODO
        vocab = f"{self.CHAR}\n"
        if hasattr(self, 'FEAT'):
            args.update({
                'n_feats': self.FEAT.vocab.n_init,
            })
            vocab += f"{self.FEAT}\n"
        if hasattr(self, 'BIGRAM'):
            args.update({
                'n_bigrams': self.BIGRAM.vocab.n_init,
            })
            vocab += f"{self.BIGRAM}\n"
        if hasattr(self, 'TRIGRAM'):
            args.update({
                'n_trigrams': self.TRIGRAM.vocab.n_init,
            })
            vocab += f"{self.TRIGRAM}\n"

        print(f"Override the default configs\n{args}")
        print(vocab[:-1])