Metadata-Version: 2.0
Name: dnc
Version: 0.0.3
Summary: Differentiable Neural Computer, for Pytorch
Home-page: https://github.com/pypa/dnc
Author: Russi Chatterjee
Author-email: root@ixaxaar.in
License: MIT
Keywords: differentiable neural computer dnc memory network
Platform: UNKNOWN
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.3
Classifier: Programming Language :: Python :: 3.4
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Requires-Python: >=3
Requires-Dist: numpy
Requires-Dist: torch
Provides-Extra: dev
Requires-Dist: check-manifest; extra == 'dev'
Provides-Extra: test
Requires-Dist: coverage; extra == 'test'

# Differentiable Neural Computer, for Pytorch

This is an implementation of [Differentiable Neural Computers](people.idsia.ch/~rupesh/rnnsymposium2016/slides/graves.pdf), described in the paper [Hybrid computing using a neural network with dynamic external memory, Graves et al.](www.nature.com/articles/nature20101)

## Install

```bash
pip install dnc
```

## Usage

**Parameters**:

| Argument | Default | Description |
| --- | --- | --- |
| input_size | None | Size of the input vectors |
| hidden_size | None | Size of hidden units |
| rnn_type | 'lstm' | Type of recurrent cells used in the controller |
| num_layers | 1 | Number of layers of recurrent units in the controller |
| bias | True | Bias |
| batch_first | True | Whether data is fed batch first |
| dropout | 0 | Dropout between layers in the controller (Not yet implemented) |
| bidirectional | False | If the controller is bidirectional (Not yet implemented) |
| nr_cells | 5 | Number of memory cells |
| read_heads | 2 | Number of read heads |
| cell_size | 10 | Size of each memory cell |
| nonlinearity | 'tanh' | If using 'rnn' as `rnn_type`, non-linearity of the RNNs |
| gpu_id | -1 | ID of the GPU, -1 for CPU |
| independent_linears | False | Whether to use independent linear units to derive interface vector |
| share_memory | True | Whether to share memory between controller layers |
| reset_experience | False | Whether to reset memory (This is a parameter for the forward pass) |


Example usage:

```python
from dnc import DNC

rnn = DNC(
  input_size=64,
  hidden_size=128,
  rnn_type='lstm',
  num_layers=4,
  nr_cells=100,
  cell_size=32,
  read_heads=4,
  batch_first=True,
  gpu_id=0
)

(controller_hidden, memory, read_vectors) = (None, None, None)

output, (controller_hidden, memory, read_vectors) = \
  rnn(torch.randn(10, 4, 64), (controller_hidden, memory, read_vectors, reset_experience=True))
```

## Example copy task

The copy task, as descibed in the original paper, is included in the repo.

```
python ./copy_task.py -cuda 0
```

## General noteworthy stuff

1. DNCs converge with Adam and RMSProp learning rules, SGD generally causes them to diverge.
2. Using a large batch size (> 100, recommended 1000) prevents gradients from becoming `NaN`.



