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๐Ÿ– Easy training and deployment of seq2seq models.

Headliner

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Headliner is a sequence modeling library that eases the training and in particular, the deployment of custom sequence models for both researchers and developers. You can very easily deploy your models in a few lines of code. It was originally built for our own research to generate headlines from Welt news articles (see figure 1). That's why we chose the name, Headliner.

Figure 1: One example from our Welt.de headline generator.

Update 21.01.2020

The library now supports fine-tuning pre-trained BERT models with custom preprocessing as in Text Summarization with Pretrained Encoders!

check out this tutorial on colab!

๐Ÿง  Internals

We use sequence-to-sequence (seq2seq) under the hood, an encoder-decoder framework (see figure 2). We provide a very simple interface to train and deploy seq2seq models. Although this library was created internally to generate headlines, you can also use it for other tasks like machine translations, text summarization and many more.

Figure 2: Encoder-decoder sequence-to-sequence model.

Why Headliner?

You may ask why another seq2seq library? There are a couple of them out there already. For example, Facebook has fairseq, Google has seq2seq and there is also OpenNMT. Although those libraries are great, they have a few drawbacks for our use case e.g. the former doesn't focus much on production whereas the Google one is not actively maintained. OpenNMT was the closest one to match our requirements i.e. it has a strong focus on production. However, we didn't like that their workflow (preparing data, training and evaluation) is mainly done via the command line. They also expose a well-defined API though but the complexity there is still too high with too much custom code (see their minimal transformer training example).

Therefore, we built this library for us with the following goals in mind:

  • Easy-to-use API for training and deployment (only a few lines of code)
  • Uses TensorFlow 2.0 with all its new features (tf.function, tf.keras.layers etc.)
  • Modular classes: text preprocessing, modeling, evaluation
  • Extensible for different encoder-decoder models
  • Works on large text data

For more details on the library, read the documentation at: https://as-ideas.github.io/headliner/

Headliner is compatible with Python 3.6 and is distributed under the MIT license.

โš™๏ธ Installation

โš ๏ธ Before installing Headliner, you need to install TensorFlow as we use this as our deep learning framework. For more details on how to install it, have a look at the TensorFlow installation instructions.

Then you can install Headliner itself. There are two ways to install Headliner:

  • Install Headliner from PyPI (recommended):
pip install headliner
  • Install Headliner from the GitHub source:
git clone https://github.com/as-ideas/headliner.git
cd headliner
python setup.py install

๐Ÿ“– Usage

Training

For the training, you need to import one of our provided models or create your own custom one. Then you need to create the dataset, a tuple of input-output sequences, and then train it:

from headliner.trainer import Trainer
from headliner.model.transformer_summarizer import TransformerSummarizer

data = [('You are the stars, earth and sky for me!', 'I love you.'),
        ('You are great, but I have other plans.', 'I like you.')]

summarizer = TransformerSummarizer(embedding_size=64, max_prediction_len=20)
trainer = Trainer(batch_size=2, steps_per_epoch=100)
trainer.train(summarizer, data, num_epochs=2)
summarizer.save('/tmp/summarizer')

Prediction

The prediction can be done in a few lines of code:

from headliner.model.transformer_summarizer import TransformerSummarizer

summarizer = TransformerSummarizer.load('/tmp/summarizer')
summarizer.predict('You are the stars, earth and sky for me!')

Models

Currently available models include a basic encoder-decoder, an encoder-decoder with Luong attention, the transformer and a transformer on top of a pre-trained BERT-model:

from headliner.model.basic_summarizer import BasicSummarizer
from headliner.model.attention_summarizer import AttentionSummarizer
from headliner.model.transformer_summarizer import TransformerSummarizer
from headliner.model.bert_summarizer import BertSummarizer

basic_summarizer = BasicSummarizer()
attention_summarizer = AttentionSummarizer()
transformer_summarizer = TransformerSummarizer()
bert_summarizer = BertSummarizer()

Advanced training

Training using a validation split and model checkpointing:

from headliner.model.transformer_summarizer import TransformerSummarizer
from headliner.trainer import Trainer

train_data = [('You are the stars, earth and sky for me!', 'I love you.'),
              ('You are great, but I have other plans.', 'I like you.')]
val_data = [('You are great, but I have other plans.', 'I like you.')]

summarizer = TransformerSummarizer(num_heads=1,
                                   feed_forward_dim=512,
                                   num_layers=1,
                                   embedding_size=64,
                                   max_prediction_len=50)
trainer = Trainer(batch_size=8,
                  steps_per_epoch=50,
                  max_vocab_size_encoder=10000,
                  max_vocab_size_decoder=10000,
                  tensorboard_dir='/tmp/tensorboard',
                  model_save_path='/tmp/summarizer')

trainer.train(summarizer, train_data, val_data=val_data, num_epochs=3)

Advanced prediction

Prediction information such as attention weights and logits can be accessed via predict_vectors returning a dictionary:

from headliner.model.transformer_summarizer import TransformerSummarizer

summarizer = TransformerSummarizer.load('/tmp/summarizer')
summarizer.predict_vectors('You are the stars, earth and sky for me!')

Resume training

A previously trained summarizer can be loaded and then retrained. In this case the data preprocessing and vectorization is loaded from the model.

train_data = [('Some new training data.', 'New data.')] * 10

summarizer_loaded = TransformerSummarizer.load('/tmp/summarizer')
trainer = Trainer(batch_size=2)
trainer.train(summarizer_loaded, train_data)
summarizer_loaded.save('/tmp/summarizer_retrained')

Use pretrained GloVe embeddings

Embeddings in GloVe format can be injected in to the trainer as follows. Optionally, set the embedding to non-trainable.

trainer = Trainer(embedding_path_encoder='/tmp/embedding_encoder.txt',
                  embedding_path_decoder='/tmp/embedding_decoder.txt')

# make sure the embedding size matches to the embedding size of the files
summarizer = TransformerSummarizer(embedding_size=64,
                                   embedding_encoder_trainable=False,
                                   embedding_decoder_trainable=False)

Custom preprocessing

A model can be initialized with custom preprocessing and tokenization:

from headliner.preprocessing.preprocessor import Preprocessor

train_data = [('Some inputs.', 'Some outputs.')] * 10

preprocessor = Preprocessor(filter_pattern='',
                            lower_case=True,
                            hash_numbers=False)
train_prep = [preprocessor(t) for t in train_data]
inputs_prep = [t[0] for t in train_prep]
targets_prep = [t[1] for t in train_prep]

# Build tf subword tokenizers. Other custom tokenizers can be implemented
# by subclassing headliner.preprocessing.Tokenizer
from tensorflow_datasets.core.features.text import SubwordTextEncoder
tokenizer_input = SubwordTextEncoder.build_from_corpus(
inputs_prep, target_vocab_size=2**13, reserved_tokens=[preprocessor.start_token, preprocessor.end_token])
tokenizer_target = SubwordTextEncoder.build_from_corpus(
    targets_prep, target_vocab_size=2**13,  reserved_tokens=[preprocessor.start_token, preprocessor.end_token])

vectorizer = Vectorizer(tokenizer_input, tokenizer_target)
summarizer = TransformerSummarizer(embedding_size=64, max_prediction_len=50)
summarizer.init_model(preprocessor, vectorizer)

trainer = Trainer(batch_size=2)
trainer.train(summarizer, train_data, num_epochs=3)

Use pre-trained BERT embeddings

Pre-trained BERT models can be included as follows. Be aware that pre-trained BERT models are expensive to train and require custom preprocessing!

from headliner.preprocessing.bert_preprocessor import BertPreprocessor
from spacy.lang.en import English

train_data = [('Some inputs.', 'Some outputs.')] * 10

# use BERT-specific start and end token
preprocessor = BertPreprocessor(nlp=English()
train_prep = [preprocessor(t) for t in train_data]
targets_prep = [t[1] for t in train_prep]


from tensorflow_datasets.core.features.text import SubwordTextEncoder
from transformers import BertTokenizer
from headliner.model.bert_summarizer import BertSummarizer

# Use a pre-trained BERT embedding and BERT tokenizer for the encoder 
tokenizer_input = BertTokenizer.from_pretrained('bert-base-uncased')
tokenizer_target = SubwordTextEncoder.build_from_corpus(
    targets_prep, target_vocab_size=2**13,  reserved_tokens=[preprocessor.start_token, preprocessor.end_token])

vectorizer = BertVectorizer(tokenizer_input, tokenizer_target)
summarizer = BertSummarizer(num_heads=2,
                            feed_forward_dim=512,
                            num_layers_encoder=0,
                            num_layers_decoder=4,
                            bert_embedding_encoder='bert-base-uncased',
                            embedding_size_encoder=768,
                            embedding_size_decoder=768,
                            dropout_rate=0.1,
                            max_prediction_len=50))
summarizer.init_model(preprocessor, vectorizer)

trainer = Trainer(batch_size=2)
trainer.train(summarizer, train_data, num_epochs=3)

Training on large datasets

Large datasets can be handled by using an iterator:

def read_data_iteratively():
    return (('Some inputs.', 'Some outputs.') for _ in range(1000))

class DataIterator:
    def __iter__(self):
        return read_data_iteratively()

data_iter = DataIterator()

summarizer = TransformerSummarizer(embedding_size=10, max_prediction_len=20)
trainer = Trainer(batch_size=16, steps_per_epoch=1000)
trainer.train(summarizer, data_iter, num_epochs=3)

๐Ÿค Contribute

We welcome all kinds of contributions such as new models, new examples and many more. See the Contribution guide for more details.

๐Ÿ“ Cite this work

Please cite Headliner in your publications if this is useful for your research. Here is an example BibTeX entry:

@misc{axelspringerai2019headliners,
  title={Headliner},
  author={Christian Schรคfer & Dat Tran},
  year={2019},
  howpublished={\url{https://github.com/as-ideas/headliner}},
}

๐Ÿ— Maintainers

ยฉ Copyright

See LICENSE for details.

References

Text Summarization with Pretrained Encoders

Effective Approaches to Attention-based Neural Machine Translation

Acknowlegements

https://www.tensorflow.org/tutorials/text/transformer

https://github.com/huggingface/transformers

https://machinetalk.org/2019/03/29/neural-machine-translation-with-attention-mechanism/