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Part of the NSF-PIM Pilot Talk 1: Dr. Kaushik Roy Professor in Purdue University 00:00:00 NSF-PIM Introduction 00:03:53 Pilot Talk1 ... The hardware behind analog AI → http://ibm.biz/analog-AI-hardware Check out the AI hardware toolkit ... Authors: Marcus Valtonen Örnhag (Ericsson Research)*; Püren Güler (Ericsson); Dmitry Knyaginin (Ericsson AB); Mattias Borg ...

Abstract: AI and many other applications have

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