tensorflow.js_explained - This is the code for "Tensorflow.js Explained" By Siraj Raval on Youtube

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Detect objects in images right in your browser using Tensorflow.js! Currently takes ~800ms to analyze each frame on Chrome MBP 13" mid-2014. Supports Tiny YOLO, as of right now, tfjs does not have support to run any full YOLO models (and your user's computers probably can't handle it either).

https://github.com/llSourcell/tensorflow.js_explained

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