A concept I came up which ditches the idea of "layers" in a neural network.

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Machine LearningDynet
Overview

Dynet

A concept I came up which ditches the idea of "layers" in a neural network.

A picture of the XOR test's error graph

Install

Copy Dynet.py to your project.

Run the example

Install matplotlib with pip install matplotlib to run the example in main.py.

How it works

Classic neural networks use layers as a way of organizing neurons. "Dynet" uses a single layers to process inputs and outputs where neurons can directly connect to outputs or pass through mutliple neurons and even connect to themselves

Owner
Anik Patel
I like coding
Anik Patel
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