English

Bayes2IMC: In-Memory Computing for Bayesian Binary Neural Networks

Emerging Technologies 2025-05-20 v2 Hardware Architecture

Abstract

Bayesian Neural Networks (BNNs) provide superior estimates of uncertainty by generating an ensemble of predictive distributions. However, inference via ensembling is resource-intensive, requiring additional entropy sources to generate stochasticity which increases resource consumption. We introduce Bayes2IMC, an in-memory computing (IMC) architecture designed for binary Bayesian neural networks that leverage nanoscale device stochasticity to generate desired distributions. Our novel approach utilizes Phase-Change Memory (PCM) to harness inherent noise characteristics, enabling the creation of a binary neural network. This design eliminates the necessity for a pre-neuron Analog-to-Digital Converter (ADC), significantly improving power and area efficiency. We also develop a hardware-software co-optimized correction method applied solely on the logits in the final layer to reduce device-induced accuracy variations across deployments on hardware. Additionally, we devise a simple compensation technique that ensures no drop in classification accuracy despite conductance drift of PCM. We validate the effectiveness of our approach on the CIFAR-10 dataset with a VGGBinaryConnect model, achieving accuracy metrics comparable to ideal software implementations as well as results reported in the literature using other technologies. Finally, we present a complete core architecture and compare its projected power, performance, and area efficiency against an equivalent SRAM baseline, showing a 3.83.8 to 9.6×9.6 \times improvement in total efficiency (in GOPS/W/mm2^2) and a 2.22.2 to 5.6×5.6 \times improvement in power efficiency (in GOPS/W). In addition, the projected hardware performance of Bayes2IMC surpasses that of most of the BNN architectures based on memristive devices reported in the literature, and achieves up to 20%20\% higher power efficiency compared to the state-of-the-art.

Keywords

Cite

@article{arxiv.2411.07902,
  title  = {Bayes2IMC: In-Memory Computing for Bayesian Binary Neural Networks},
  author = {Prabodh Katti and Clement Ruah and Osvaldo Simeone and Bashir M. Al-Hashimi and Bipin Rajendran},
  journal= {arXiv preprint arXiv:2411.07902},
  year   = {2025}
}

Comments

Accepted for publication in IEEE Transactions On Circuits and Systems I: Regular Papers

R2 v1 2026-06-28T19:57:15.637Z