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  • Digital Parallel Computing Architecture - NeuroSim+
  • Energy Efficient Computing

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Low-Energy Classification Systems

Created about 5 years ago, updated 28 days ago

Verma

2015 Realizing Low-Energy Classification Systems by Implementing Matrix Multiplication Directly Within an ADC

2015 A matrix-multiplying ADC implementing a machine-learning classifier directly with data conversion

http://www.princeton.edu/~nverma/VermaLabSite/Publications/2016/ZhangWangVerma_VLSI2016.pdf

2020 Low Voltage Time-Based Matrix Multiplier-and-Accumulator for Neural Computing System - Sungjin Hong

Parents

  • Digital Parallel Computing Architecture - NeuroSim+
  • Energy Efficient Computing

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