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

November 24, 2024 Β· Declared Dead Β· πŸ› Design, Automation and Test in Europe

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Authors Mohanad Odema, Luke Chen, Hyoukjun Kwon, Mohammad Abdullah Al Faruque arXiv ID 2411.16007 Category cs.AR: Hardware Architecture Cross-listed cs.AI, cs.DC, cs.PF Citations 1 Venue Design, Automation and Test in Europe Last Checked 3 months ago
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 trade-off 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 2.8x increase in throughput and processing engines utilization compared to monolithic accelerator designs.
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