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README.md
Genie NLP library
This library contains the NLP models for the Genie toolkit for virtual assistants. It is derived from the decaNLP library by Salesforce, but has diverged significantly.
The library is suitable for all NLP tasks that can be framed as Contextual Question Answering, that is, with 3 inputs:
- text or structured input as context
- text input as question
- text or structured output as answer
As the decaNLP paper shows, many different NLP tasks can be framed in this way. Genie primarily uses the library for semantic parsing, dialogue state tracking, and natural language generation given a formal dialogue state, and this is what the models work best for.
Installation
genienlp is available on PyPi. You can install it with:
pip3 install genienlp
After installation, a genienlp
command becomes available.
Likely, you will also want to download the word embeddings ahead of time:
genienlp cache-embeddings --embeddings glove+char -d <embeddingdir>
Usage
Train a model:
genienlp train --tasks almond --train_iterations 50000 --embeddings <embeddingdir> --data <datadir> --save <modeldir>
Generate predictions:
genienlp predict --tasks almond --data <datadir> --path <modeldir>
See genienlp --help
for details.
Citation
If you use the MultiTask Question Answering model in your work, please cite The Natural Language Decathlon: Multitask Learning as Question Answering.
@article{McCann2018decaNLP,
title={The Natural Language Decathlon: Multitask Learning as Question Answering},
author={Bryan McCann and Nitish Shirish Keskar and Caiming Xiong and Richard Socher},
journal={arXiv preprint arXiv:1806.08730},
year={2018}
}
If you use the BERT-LSTM model (Identity encoder + MQAN decoder), please cite Schema2QA: Answering Complex Queries on the Structured Web with a Neural Model
@article{Xu2020Schema2QA,
title={Schema2QA: Answering Complex Queries on the Structured Web with a Neural Model},
author={Silei Xu and Giovanni Campagna and Jian Li and Monica S. Lam},
journal={arXiv preprint arXiv:2001.05609},
year={2020}
}