This repository consists of:
- torchtext.data: Generic data loaders, abstractions, and iterators for text (including vocabulary and word vectors)
- torchtext.datasets: Pre-built loaders for common NLP datasets
Note: we are currently re-designing the torchtext library to make it more compatible with pytorch (e.g. torch.utils.data
). Several datasets have been written with the new abstractions in torchtext.experimental folder. We also created an issue to discuss the new abstraction, and users are welcome to leave feedback link.
We recommend Anaconda as Python package management system. Please refer to pytorch.org for the detail of PyTorch installation. The following is the corresponding torchtext
versions and supported Python versions.
PyTorch version | torchtext version | Supported Python version |
---|---|---|
nightly build | master | 3.6+ |
1.5 | 0.5 | 3.5+ |
1.4 | 0.4 | 2.7, 3.5+ |
0.4 and below | 0.2.3 | 2.7, 3.5+ |
Using conda;:
conda install -c pytorch torchtext
Using pip;:
pip install torchtext
If you want to use English tokenizer from SpaCy, you need to install SpaCy and download its English model:
pip install spacy python -m spacy download en
Alternatively, you might want to use the Moses tokenizer port in SacreMoses (split from NLTK). You have to install SacreMoses:
pip install sacremoses
For torchtext 0.5 and below, sentencepiece
:
conda install -c powerai sentencepiece
To build torchtext from source, you need git
, CMake
and C++11 compiler such as g++
.:
git clone https://github.com/pytorch/text torchtext cd torchtext git submodule update --init --recursive python setup.py clean install # or ``python setup.py develop`` if you are making modifications.
Note
When building from source, make sure that you have the same C++ compiler as the one used to build PyTorch. A simple way is to build PyTorch from source and use the same environment to build torchtext. If you are using nightly build of PyTorch, checkout the environment it was built here (conda) and here (pip).
Find the documentation here.
The data module provides the following:
Ability to describe declaratively how to load a custom NLP dataset that's in a "normal" format:
>>> pos = data.TabularDataset( ... path='data/pos/pos_wsj_train.tsv', format='tsv', ... fields=[('text', data.Field()), ... ('labels', data.Field())]) ... >>> sentiment = data.TabularDataset( ... path='data/sentiment/train.json', format='json', ... fields={'sentence_tokenized': ('text', data.Field(sequential=True)), ... 'sentiment_gold': ('labels', data.Field(sequential=False))})
Ability to define a preprocessing pipeline:
>>> src = data.Field(tokenize=my_custom_tokenizer) >>> trg = data.Field(tokenize=my_custom_tokenizer) >>> mt_train = datasets.TranslationDataset( ... path='data/mt/wmt16-ende.train', exts=('.en', '.de'), ... fields=(src, trg))
Batching, padding, and numericalizing (including building a vocabulary object):
>>> # continuing from above >>> mt_dev = datasets.TranslationDataset( ... path='data/mt/newstest2014', exts=('.en', '.de'), ... fields=(src, trg)) >>> src.build_vocab(mt_train, max_size=80000) >>> trg.build_vocab(mt_train, max_size=40000) >>> # mt_dev shares the fields, so it shares their vocab objects >>> >>> train_iter = data.BucketIterator( ... dataset=mt_train, batch_size=32, ... sort_key=lambda x: data.interleave_keys(len(x.src), len(x.trg))) >>> # usage >>> next(iter(train_iter)) <data.Batch(batch_size=32, src=[LongTensor (32, 25)], trg=[LongTensor (32, 28)])>
Wrapper for dataset splits (train, validation, test):
>>> TEXT = data.Field() >>> LABELS = data.Field() >>> >>> train, val, test = data.TabularDataset.splits( ... path='/data/pos_wsj/pos_wsj', train='_train.tsv', ... validation='_dev.tsv', test='_test.tsv', format='tsv', ... fields=[('text', TEXT), ('labels', LABELS)]) >>> >>> train_iter, val_iter, test_iter = data.BucketIterator.splits( ... (train, val, test), batch_sizes=(16, 256, 256), >>> sort_key=lambda x: len(x.text), device=0) >>> >>> TEXT.build_vocab(train) >>> LABELS.build_vocab(train)
The datasets module currently contains:
- Sentiment analysis: SST and IMDb
- Question classification: TREC
- Entailment: SNLI, MultiNLI
- Language modeling: abstract class + WikiText-2, WikiText103, PennTreebank
- Machine translation: abstract class + Multi30k, IWSLT, WMT14
- Sequence tagging (e.g. POS/NER): abstract class + UDPOS, CoNLL2000Chunking
- Question answering: 20 QA bAbI tasks
- Text classification: AG_NEWS, SogouNews, DBpedia, YelpReviewPolarity, YelpReviewFull, YahooAnswers, AmazonReviewPolarity, AmazonReviewFull
Others are planned or a work in progress:
- Question answering: SQuAD
See the test
directory for examples of dataset usage.
We have re-written several datasets under torchtext.experimental.datasets
:
- Sentiment analysis: IMDb
- Language modeling: abstract class + WikiText-2, WikiText103, PennTreebank
A new pattern is introduced in Release v0.5.0. Several other datasets are also in the new pattern:
- Unsupervised learning dataset: Enwik9
- Text classification: AG_NEWS, SogouNews, DBpedia, YelpReviewPolarity, YelpReviewFull, YahooAnswers, AmazonReviewPolarity, AmazonReviewFull
This is a utility library that downloads and prepares public datasets. We do not host or distribute these datasets, vouch for their quality or fairness, or claim that you have license to use the dataset. It is your responsibility to determine whether you have permission to use the dataset under the dataset's license.
If you're a dataset owner and wish to update any part of it (description, citation, etc.), or do not want your dataset to be included in this library, please get in touch through a GitHub issue. Thanks for your contribution to the ML community!