Machine Learning Blog
Announcing new open source contributions to the Apache Spark community for creating deep, distributed, object detectors – without a single human-generated label This post is authored by members of the Microsoft ML for Apache Spark Team – Mark Hamilton, Minsoo Thigpen, Abhiram Eswaran, Ari Green, Courtney Cochrane, Janhavi Suresh Mahajan, Karthik Rajendran, Sudarshan Raghunathan, and…
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