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Code and Data to accompany "Dilated Convolutions for Modeling Long-Distance Genomic Dependencies", presented at the ICML 2017 Workshop on Computational Biology

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regulatory-prediction

Code and Data to accompany "Dilated Convolutions for Modeling Long-Distance Genomic Dependencies", presented at the ICML 2017 Workshop on Computational Biology, by Ankit Gupta and Alexander Rush. Data forthcoming. Please email [email protected] if you have any questions in the meantime.

Current State

Ankit is current working on a unified set of deep learning benchmarks for genomics tasks. All of these results and a cleaned up version of the code will be included with that repository, and it will be linked here. In the meantime, feel free to email us if you have any questions.

Dependencies

  • Python 2.7 (3.x should also work but not thoroughly tested)
  • Tensorflow 1.0
  • Numpy 1.12.0
  • Scipy 0.17.1

Usage

Run python train.py

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Code and Data to accompany "Dilated Convolutions for Modeling Long-Distance Genomic Dependencies", presented at the ICML 2017 Workshop on Computational Biology

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