Backpropagation for energy-efficient neuromorphic computing
Steven K. Esser, Rathinakumar Appuswamy, et al.
NeurIPS 2015
Computing, since its inception, has been processor-centric, with memory separated from compute. Inspired by the organic brain and optimized for inorganic silicon, NorthPole is a neural inference architecture that blurs this boundary by eliminating off-chip memory, intertwining compute with memory on-chip, and appearing externally as an active memory chip. NorthPole is a low-precision, massively parallel, densely interconnected, energy-efficient, and spatial computing architecture with a co-optimized, high-utilization programming model. On the ResNet50 benchmark image classification network, relative to a graphics processing unit (GPU) that uses a comparable 12-nanometer technology process, NorthPole achieves a 25 times higher energy metric of frames per second (FPS) per watt, a 5 times higher space metric of FPS per transistor, and a 22 times lower time metric of latency. Similar results are reported for the Yolo-v4 detection network. NorthPole outperforms all prevalent architectures, even those that use more-advanced technology processes.
Steven K. Esser, Rathinakumar Appuswamy, et al.
NeurIPS 2015
Alexander Andreopoulos, Hirak J. Kashyap, et al.
CVPR 2018
Wei-Yu Tsai, Davis R. Barch, et al.
IJCNN 2016
Jun Sawada, Filipp Akopyan, et al.
SC 2016