Tensorflow-JS-Examples - Working on some new examples with tensorflow.js and p5.js

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This repo is experimental and in progress. It is an "MNIST"-style classification example using the Google QuickDraw dataset, p5js, and tensorflow.js. It is loosely based on the tfjs MNIST example.




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