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DPACS: Hardware Accelerated Dynamic Neural Network Pruning through Algorithm-Architecture Co-design

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This repo serves as the official implementation of the paper "DPACS: Hardware Accelerated Dynamic Neural Network Pruning through Algorithm-Architecture Co-design". 


DPCAS is an algorithm-architecture co-design framework for dynamic neural network pruning. It utilizes a hardware-aware dynamic spatial and channel pruning mechanism in conjunction with a dynamic dataflow engine in hardware to facilitate efficient processing of the pruned network.


The code is also avaliable on github: https://github.com/CASR-HKU/DPACS


Our group page: https://casr.eee.hku.hk/publication/dpacs-asplos23/

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