SESSION + Live Q&A
Mini Workshop: Hands-on Deep Learning
In this interactive workshop, Micha Gorelick will lead you through modification an existing deep learning product implemented in Keras. If you plan to run the code, please come with a well-charged laptop battery! And if you get the chance, please also download the python packages and data we'll be working with using the following three commands:
Speaker
Micha Gorelick
Research Engineer @FastForwardLabs, Keras Contributor
Research engineer at Fast Forward Labs, Keras contributor. Previously at bit.ly.
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Speaker
Mike Lee Williams
Director of Research @FastForwardLabs
Mike Lee Williams is Director of Research at Fast Forward Labs, an applied machine intelligence lab in New York City. He builds prototypes that bring the latest ideas in machine learning and AI to life, and works with Fast Forward Labs's clients to help them understand how to make use of these...
Read moreFind Mike Lee Williams at:
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Deep Learning @Google Scale: Smart Reply in Inbox
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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...
Micha Gorelick
Research Engineer @FastForwardLabs, Keras Contributor
DSSTNE: Deep Learning at Scale
DSSTNE (Deep Sparse Scalable Tensor Network Engine) is a deep learning framework for working with large sparse data sets. It arose out of research into the use of deep learning for product recommendations after we realized existing frameworks were limited to a single GPU or data-parallel scaling...
Scott Le Grand
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Julia: A Modern Language For Modern ML
Julia is a modern high-performance, dynamic language for technical computing, with many features which make it ideal for machine learning, including just-in-time (JIT) compilation, multiple dispatch, metaprogramming and easy to use parallelism. This talk will demonstrate these features, and...
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Dr. Simon Byrne
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