
Scaled ML 2017 was a successful unveiling of Matroid, bringing together industry leaders and academics under one roof. Pictures and slides follow.
Speaker Slides
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Jeff Dean (Google)
Scaled Machine Learning with TensorFlow and XLA
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Reza Zadeh (Matroid and Stanford)
Scaling Computer Vision at Matroid
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Ion Stoica (UC Berkeley and Databricks)
Distributed Machine Learning and the Berkeley RISE lab
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Wes McKinney (Two Sigma)
Memory Interoperability in Analytics and Machine Learning
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David Ku (Microsoft)
Scaled Machine Learning at Microsoft
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Claudia Perlich (Dstillery)
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Andy Feng (Yahoo)
TensorFlow on Apache Spark
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Matei Zaharia (Stanford)
DAWN: Infrastructure for usable Machine Learning
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Ilya Sutskever (OpenAI)
Evolution Strategies: a scalable alternative to reinforcement learning.
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