Litcius/Paper detail

YOLoC

Yiming Chen, Guodong Yin, Zhanhong Tan, Mingyen Lee, Zekun Yang, Yongpan Liu, Huazhong Yang, Kaisheng Ma, Xueqing Li

2022Proceedings of the 59th ACM/IEEE Design Automation Conference20 citationsDOIOpen Access PDF

Abstract

Computing-in-memory (CiM) is a promising technique to achieve high energy efficiency in data-intensive matrix-vector multiplication (MVM) by relieving the memory bottleneck. Unfortunately, due to the limited SRAM capacity, existing SRAM-based CiM needs to reload the weights from DRAM in large-scale networks. This undesired fact weakens the energy efficiency significantly. This work, for the first time, proposes the concept, design, and optimization of computing-in-ROM to achieve much higher on-chip memory capacity, and thus less DRAM access and lower energy consumption. Furthermore, to support different computing scenarios with varying weights, a weight fine-tune technique, namely Residual Branch (ReBranch), is also proposed. ReBranch combines ROM-CiM and assisting SRAM-CiM to achieve high versatility. YOLoC, a ReBranch-assisted ROM-CiM framework for object detection is presented and evaluated. With the same area in 28nm CMOS, YOLoC for several datasets has shown significant energy efficiency improvement by 14.8x for YOLO (DarkNet-19) and 4.8x for ResNet-18, with <8% latency overhead and almost no mean average precision (mAP) loss (−0.5% ~ +0.2%), compared with the fully SRAM-based CiM.

Topics & Concepts

Static random-access memoryComputer scienceDramBottleneckLatency (audio)Efficient energy useEnergy consumptionOverhead (engineering)CMOSParallel computingEmbedded systemComputer hardwareOperating systemElectronic engineeringEngineeringElectrical engineeringTelecommunicationsAdvanced Neural Network ApplicationsAdvanced Memory and Neural ComputingMachine Learning and ELM