Abstract

Big data machine learning and graph analytics have been widely used in industry, academia and government. Continuous advance in this area is critical to business success, scientific discovery, as well as cybersecurity. In this paper, we present some current projects and propose that next-generation computing systems for big data machine learning and graph analytics need innovative designs in both hardware and software that provide a good match between big data algorithms and the underlying computing and storage resources.

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