SESSION + Live Q&A
Products And Prototypes With Keras
In this talk Micha will show how to build a working product with Keras, a high level deep learning framework. He'll start by explaining deep learning at a conceptual level, before describing the product requirements. He'll then show code and discuss design decisions that demonstrate how to train and deploy the model. In the process, he'll place Keras in context in the deep learning framework ecosystem, that includes Tensorflow, MXNet and Theano.
Speaker
Micha Gorelick
Research Engineer @FastForwardLabs, Keras Contributor
Research engineer at Fast Forward Labs, Keras contributor. Previously at bit.ly.
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