conference paper

Performance Implications of Multi-Chiplet Neural Processing Units on Autonomous Driving Perception

2025 Design, Automation & Test in Europe Conference (DATE)

Publication Date

March 1, 2025

Author(s)

Mohanad Odema, Luke Chen, Hyoukjun Kwon, Mohammad Al Faruque

Abstract

We study the application of emerging chiplet-based Neural Processing Units to accelerate vehicular AI perception workloads in constrained automotive settings. The motivation stems from how chiplets technology is becoming integral to emerging vehicular architectures, providing a cost-effective tradeoff between performance, modularity, and customization; and from perception models being the most computationally demanding workloads in a autonomous driving system. Using the Tesla Autopilot perception pipeline as a case study, we first breakdown its constituent models and profile their performance on different chiplet accelerators. From the insights, we propose a novel scheduling strategy to efficiently deploy perception workloads on multi-chip AI accelerators. Our experiments using a standard DNN performance simulator, MAESTRO, show our approach realizes 82% and 2.8 × increase in throughput and processing engines utilization compared to monolithic accelerator designs.

Suggested Citation
Mohanad Odema, Luke Chen, Hyoukjun Kwon and Mohammad Abdullah Al Faruque (2025) “Performance Implications of Multi-Chiplet Neural Processing Units on Autonomous Driving Perception”, in 2025 Design, Automation & Test in Europe Conference (DATE). 2025 Design, Automation & Test in Europe Conference (DATE), pp. 1–7. Available at: 10.23919/DATE64628.2025.10993228.