2025-06-19 –, Room "Berlin & Oslo"
Stochastic Computing (SC) is a computational paradigm that encodes numerical values within the probability of logic ‘1’s in a stochastic bitstream. Utilizing SC enables neural network implementations to achieve improved scalability and ultra-low hardware footprint . This work proposes SuperSIM+, an extension of the benchmarking framework SuperSim designed for neural networks using superconducting Josephson devices. By expanding its functions beyond the existing single-bit and multi-bit Process-In-Memory (PIM) designs, SuperSIM+ enables comprehensive SC-based neural network (SCNN) benchmarking. Specifically, the proposed SuperSIM+ support superconducting SCNNs by incorporating stochastic memory, probabilistic multiplication, superconducting pulse merging-based accumulation, and efficient activation using adjustable flux storage loops. Several classical neural network models trained on the MNIST and CIFAR-10 datasets are employed to validate our framework in SC simulation, including computational accuracy, hardware cost, energy consumption, and overall latency .
Key words: Stochastic Computing, System Simulations, Neural Network
Acknowledgment:
This work was supported by JST FOREST Program (Grant Number JPMJFR226W, Japan) and JSPS KAKENHI Grant Number JP22H0220 and 23K28055.
Graduate School and Faculty of Information Science and Electrical Engineering, Kyushu University
Additional Authors with Affiliation:Wenhui Luo, Institute of Advanced Sciences, Yokohama National University.
Naoki Takeuchi, Graduate School of System Informatics, Kobe University.
Olivia Chen, Department of Advanced Information Technology, Kyushu University.