NumpyNet is a very simple python framework for neural networks. It meant to be a teaching tool so that people can really get under the hood and learn the basics about how neural network are built and how they work.
It includes nice visualizations of the process so that the user can watch what is going on as the models learn and make predictions. Its only dependencies are numpy, which does the math, and visdom, which does the visualizations.
Grab NumpyNet:
git clone https://github.com/uptake/numpynet.git
cd numpynet
Install NumpyNet (will install visdom
as well):
python setup.py install
Start visdom server locally:
visdom
Open up http://localhost:8097 in a browser
Run a demo and have some fun:
python examples.py
Currently this project is in its infancy. The basic functionality is there but there's still a lot to do. So get in there and add some issues you'd like to see or better yet contribute some code!
Take a look at our travis.yml for integration testing using Travis CI. For local testing use ./integration.sh
.
Check out these resouces in concert with NumpyNet
for a full appreciation of how a neural network works:
KDnuggets - Nothing but NumPy: Understanding & Creating Neural Networks with Computational Graphs from Scratch
Understanding new concepts can be hard, especially these days when there is an avalanche of resources with only cursory explanations for complex concepts. This blog is the result of a dearth of detailed walkthroughs on how to create neural networks in the form of computational graphs. In this blog posts, I consolidate all that I have learned as a way to give back to the community and help new entrants. I will be creating common forms of neural networks all with the help of nothing but NumPy.
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