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Tool to simulate Spiking Neural Networks

Project description

Nervos

A tool to simulate simple Spiking Neural Networks

Developed by Jaskirat Singh Maskeen, for the purpose of project course under Prof. Sandip Lashkare at IIT Gandhinagar


Installing

The simplest way is to install using pip.

pip install nervos

Features:

  1. Fully customizable, you can modify neuron models, STDP rules etc.

  2. Tracking weights and spikes, and plotting them.

  3. Svae model state at every epoch.

Examples:

Stored at lib_examples.

  1. Neuron Spiking

  2. Iris

  3. MNIST

  4. Circles

Project poster

Will be updated soon

Paper

Will be updated soon


Feel free to fork and update.

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