2022
DOI: 10.1145/3498328
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Dynamic Quantization Range Control for Analog-in-Memory Neural Networks Acceleration

Abstract: Analog in Memory Computing (AiMC) based neural network acceleration is a promising solution to increase the energy efficiency of deep neural networks deployment. However, the quantization requirements of these analog systems are not compatible with state of the art neural network quantization techniques. Indeed, while the quantization of the weights and activations is considered by modern deep neural network quantization techniques, AiMC accelerators also impose the quantization of each Matrix Vector Multiplic… Show more

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Cited by 5 publications
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