Improving DNN Fault Tolerance using Weight Pruning and Differential
Crossbar Mapping for ReRAM-based Edge AI
Improving DNN Fault Tolerance using Weight Pruning and Differential
Crossbar Mapping for ReRAM-based Edge AI
Recent research demonstrated the promise of using resistive random access memory (ReRAM) as an emerging technology to perform inherently parallel analog domain in-situ matrix-vector multiplication -- the intensive and key computation in deep neural networks (DNNs). However, hardware failure, such as stuck-at-fault defects, is one of the main concerns that …