This is self-defined neural network framework for self-learning
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About
This is a self-designed deep learning framework created by victor @Hangzhou
Features
- Define Dynamic Computing Graph
- Define Neural Network Operator
- define Linear, Sigmoid, L2_loss
- Auto_Diff Computing
- Auto-Feedforward and Backward
Remain
- Classificaiton
- Cross-Entropy
- CNN, RNN
Connection
whatchat:alwayslearn Mail:2534535@qq.com
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