CONCISE (COnvolutional Neural for CIS-regulatory Elements)
Project description
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<img src="docs/img/concise_logo_text.jpg" alt="Concise logo" height="64" width="64">
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# Concise: Keras extension for regulatory genomics
[![Build Status](https://travis-ci.org/gagneurlab/concise.svg?branch=master)](https://travis-ci.org/gagneurlab/concise)
[![license](https://img.shields.io/github/license/mashape/apistatus.svg?maxAge=2592000)](https://github.com/fchollet/keras/blob/master/LICENSE)
##
Concise (originally CONvolutional neural networks for CIS-regulatory Elements) allows you to:
1. Pre-process sequence-related data (`concise.preprocessing`)
- convert a list of sequences into one-hot-encoded numpy array or tokens.
2. Specify a Keras model with additional modules
- Concise provides custom `layers`, `initializers` and `regularizers`.
3. Tune the hyper-parameters (`concise.hyopt`)
- Concise provides convenience functions for working with the `hyperopt` package.
4. Interpret the model
- most of Concise layers contain plotting methods
5. Share and re-use models
- every component (layer, initializer, regularizer, loss) is fully compatible with Keras. Model saving and loading works out-of-the-box.
## Installation
Concise is available for Python versions greater than 3.4 and can be installed from [PyPI](pypi.python.org) using `pip`:
```sh
pip install concise
```
To successfully use concise plotting functionality, please also install the libgeos library required by the `shapely` package:
- Ubuntu: `sudo apt-get install -y libgeos-dev`
- Red-hat/CentOS: `sudo yum install geos-devel`
<!-- Make sure your Keras is installed properly and configured with the backend of choice. -->
## Documentation
- <https://i12g-gagneurweb.in.tum.de/public/docs/concise/>
<img src="docs/img/concise_logo_text.jpg" alt="Concise logo" height="64" width="64">
</div>
# Concise: Keras extension for regulatory genomics
[![Build Status](https://travis-ci.org/gagneurlab/concise.svg?branch=master)](https://travis-ci.org/gagneurlab/concise)
[![license](https://img.shields.io/github/license/mashape/apistatus.svg?maxAge=2592000)](https://github.com/fchollet/keras/blob/master/LICENSE)
##
Concise (originally CONvolutional neural networks for CIS-regulatory Elements) allows you to:
1. Pre-process sequence-related data (`concise.preprocessing`)
- convert a list of sequences into one-hot-encoded numpy array or tokens.
2. Specify a Keras model with additional modules
- Concise provides custom `layers`, `initializers` and `regularizers`.
3. Tune the hyper-parameters (`concise.hyopt`)
- Concise provides convenience functions for working with the `hyperopt` package.
4. Interpret the model
- most of Concise layers contain plotting methods
5. Share and re-use models
- every component (layer, initializer, regularizer, loss) is fully compatible with Keras. Model saving and loading works out-of-the-box.
## Installation
Concise is available for Python versions greater than 3.4 and can be installed from [PyPI](pypi.python.org) using `pip`:
```sh
pip install concise
```
To successfully use concise plotting functionality, please also install the libgeos library required by the `shapely` package:
- Ubuntu: `sudo apt-get install -y libgeos-dev`
- Red-hat/CentOS: `sudo yum install geos-devel`
<!-- Make sure your Keras is installed properly and configured with the backend of choice. -->
## Documentation
- <https://i12g-gagneurweb.in.tum.de/public/docs/concise/>
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