ganeshjawahar / torch-teacher

Compilation of the state-of-the-art neural models used in Machine Reading and Comprehension Task (in progress)

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Teaching Machines to Read and Comprehend CNN News and Children Books using Torch

This software repository hosts the self-contained implementation of the state-of-the-art models used in Machine Reading and Comprehension Task.

Folder Reference
watson/ Text Understanding with the Attention Sum Reader Network, Kadlec et al., ACL 2016.
stanford/ A Thorough Examination of the CNN/Daily Mail Reading Comprehension Task, Chen et al., ACL 2016.
fair/ The Goldilocks Principle: Reading Children's Books with Explicit Memory Representations, Hill et al., ICLR 2016.

Benchmarking Training Time

mins per batch (mins per epoch) watson/ stanford/ fair/
GPU\Batch Size 32 32 1
K40 806 ms (46m 16s) 800 ms (2h 40m) 18ms (34m 8s)
Titan X 746 ms (42m 38s) - 13ms (24m 45s)
1080 889 ms (51m 8s) - 13ms (25m 29s)

Acknowledgements

This repository would not be possible without the efforts of the maintainers of the following libraries:

Author

Ganesh J

Licence

MIT

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Compilation of the state-of-the-art neural models used in Machine Reading and Comprehension Task (in progress)


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