RNSnet: In-Memory Neural Network Acceleration Using Residue Number System - Sahand Salamat - ICRC 2018

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#IEEE #ICRC #Rebooting Computing #2018 #conference #event #computing #technology #neural networks #applications #processing #memory #computation #Residue Number System #RNS #RNS net #digital computation

Sahand Salamat, from the University of California San Diego and System Energy Efficiency Lab, looks at deep neural networks and their role in the majority of applications in use today. Salamat points to the main issue of overloaded processing and presents solutions using RNS, explaining the technical details behind these memory computations.

Sahand Salamat, from the University of California San Diego and System Energy Efficiency Lab, looks at deep neural networks and their role in the majority of applications in use today. Salamat points to the main issue of overloaded processing and presents solutions using RNS, explaining the technical details behind these memory computations.

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