All Projects → cbovar → Convnetdraw

cbovar / Convnetdraw

Draw multi-layer neural network in your browser

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ConvNetDraw

Small tool to create multi-layer neural network diagrams such as this

Example

by entering the following script in your browser

Example

There is a lot of room for improvements. Pull Request most welcome!

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