Blocks is a framework that helps you build neural network models on top of Theano. Currently it supports and provides:
- Constructing parametrized Theano operations, called "bricks"
 - Pattern matching to select variables and bricks in large models
 - Algorithms to optimize your model
 - Saving and resuming of training
 - Monitoring and analyzing values during training progress (on the training set as well as on test sets)
 - Application of graph transformations, such as dropout
 
In the future we also hope to support:
- Dimension, type and axes-checking
 
- See Also:
 - Fuel, the data processing engine developed primarily for Blocks.
 - Blocks-examples for maintained examples of scripts using Blocks.
 - Blocks-extras for semi-maintained additional Blocks components.
 
- Citing Blocks
 If you use Blocks or Fuel in your work, we'd really appreciate it if you could cite the following paper:
Bart van Merriënboer, Dzmitry Bahdanau, Vincent Dumoulin, Dmitriy Serdyuk, David Warde-Farley, Jan Chorowski, and Yoshua Bengio, "Blocks and Fuel: Frameworks for deep learning," arXiv preprint arXiv:1506.00619 [cs.LG], 2015.
- Documentation
 - Please see the documentation for more information.
 - Contributing
 - If you want to contribute, please make sure to read the developer guidelines.