torchtext.data.TabularDataset can be created from a TSV/JSON/CSV file and then it can be used for building the vocabulary from Glove, FastText or any other embeddings. But my requirement is to create a torchtext.data.TabularDataset directly, either from a list or a dict.

Current implementation of the code by reading TSV files

self.RAW = data.RawField()
self.TEXT = data.Field(batch_first=True)
self.LABEL = data.Field(sequential=False, unk_token=None)

self.train, self.dev, self.test = data.TabularDataset.splits(
    fields=[('label', self.LABEL),
            ('q1', self.TEXT),
            ('q2', self.TEXT),
            ('id', self.RAW)])

self.TEXT.build_vocab(self.train, self.dev, self.test, vectors=GloVe(name='840B', dim=300))

sort_key = lambda x: data.interleave_keys(len(x.q1), len(x.q2))

self.train_iter, self.dev_iter, self.test_iter = \
    data.BucketIterator.splits((self.train, self.dev, self.test),
                               batch_sizes=[args.batch_size] * 3,

This is the current working code for reading data from a file. So in order to create the dataset directly from a List/Dict I tried inbuilt functions like Examples.fromDict or Examples.fromList but then while coming to the last for loop, it throws an error that AttributeError: 'BucketIterator' object has no attribute 'q1'

1 Answer 1


It required me to write an own class inheriting the Dataset class and with few modifications in torchtext.data.TabularDataset class.

class TabularDataset_From_List(data.Dataset):

    def __init__(self, input_list, format, fields, skip_header=False, **kwargs):
        make_example = {
            'json': Example.fromJSON, 'dict': Example.fromdict,
            'tsv': Example.fromTSV, 'csv': Example.fromCSV}[format.lower()]

        examples = [make_example(item, fields) for item in input_list]

        if make_example in (Example.fromdict, Example.fromJSON):
            fields, field_dict = [], fields
            for field in field_dict.values():
                if isinstance(field, list):

        super(TabularDataset_From_List, self).__init__(examples, fields, **kwargs)

    def splits(cls, path=None, root='.data', train=None, validation=None,
               test=None, **kwargs):
        if path is None:
            path = cls.download(root)
        train_data = None if train is None else cls(
            train, **kwargs)
        val_data = None if validation is None else cls(
            validation, **kwargs)
        test_data = None if test is None else cls(
            test, **kwargs)
        return tuple(d for d in (train_data, val_data, test_data)
                     if d is not None)

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