Charge Based Mixed-Signal Multiply-Accumulate Circuit for Energy Efficient In-Memory Computing

2021 Kleinheubach Conference(2021)

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摘要
A feasibility study of an energy efficient analog mixed-signal multiply-accumulate circuit with multi-bit resolution is presented. With a derived hardware-specific neuron model a ResNetV2 with 4 bit quantized weights is trained on a CIFAR10 dataset achieving 90% accuracy. The simulated energy efficiency of the multiply-accumulate circuit is 2.840 fJ per multiply-accumulate operation.
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关键词
mixed-signal computing,neural network inference,deep learning
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