Location Los Angeles, California, United States Regions Greater Los Angeles Area, West Coast, Western US Gender Male
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David Kale is a deep learning engineer at Skymind and a PhD candidate in computer science at the University of Southern California (advised by Greg Ver Steeg of the USC Information Sciences Institute). David’s research uses machine learning to extract insights from digital data in high-impact domains, such as healthcare. Recently, he has pioneered
the application of recurrent neural nets to modern electronic health records data. At Skymind, he is developing the ScalNet Scala API for DL4J and working on model interoperability between DL4J and other major frameworks. David organizes the Machine Learning and Healthcare Conference (MLHC), is a cofounder of Podimetrics, and serves as a judge in the Qualcomm Tricorder XPRIZE competition. David is supported by the Alfred E. Mann Innovation in Engineering Fellowship.




