揭开自动驾驶系统的动力和性能瓶颈之谜

P. H. E. Becker, J. Arnau, Antonio González
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引用次数: 11

摘要

自动驾驶汽车(AVs)有可能彻底改变汽车行业。然而,自动驾驶汽车的计算解决方案必须满足严格的性能和功率限制,以保证安全的驾驶体验。当前的解决方案要么表现出高成本和功耗,要么无法满足严格的延迟限制。因此,自动驾驶汽车的普及需要一个低成本、高效的计算系统。了解延迟和能耗的来源是改进自动驾驶系统的关键。在本文中,我们详细描述了Autoware,一个现代自动驾驶汽车系统。我们分析了不同组件的性能和功耗,并利用硬件计数器来识别主要瓶颈。我们的自动驾驶表征方法避免了以前工作的陷阱:孤立地分析单个组件并忽略与激光雷达相关的组件。我们将我们的描述建立在考虑整个软件堆栈的严格方法之上。对端到端系统的分析考虑了并行运行的不同组件之间的干扰和争用,还包括用于通信数据的内存传输。我们表明,所有这些因素都对延迟有很大的影响,并且不能通过分析孤立的模块来测量。我们的描述提供了新颖的见解,下面是一些有趣的发现。首先,不同模块之间的争用会极大地影响延迟和性能可预测性。其次,激光雷达相关组件是影响系统延迟的重要因素。最后,考虑到整个端到端系统,拥有高端CPU和GPU的现代平台无法实现实时性能。
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Demystifying Power and Performance Bottlenecks in Autonomous Driving Systems
Autonomous Vehicles (AVs) have the potential to radically change the automotive industry. However, computing solutions for AVs have to meet severe performance and power constraints to guarantee a safe driving experience. Current solutions either exhibit high cost and power dissipation or fail to meet the stringent latency constraints. Therefore, the popularization of AVs requires a low-cost yet effective computing system. Understanding the sources of latency and energy consumption is key in order to improve autonomous driving systems. In this paper, we present a detailed characterization of Autoware, a modern self-driving car system. We analyze the performance and power of the different components and leverage hardware counters to identify the main bottlenecks. Our approach to AV characterization avoids pitfalls of previous works: profiling individual components in isolation and neglecting LiDAR-related components. We base our characterization on a rigorous methodology that considers the entire software stack. Profiling the end-to-end system accounts for interference and contention among different components that run in parallel, also including memory transfers to communicate data. We show that all these factors have a high impact on latency and cannot be measured by profiling isolated modules. Our characterization provides novel insights, some of the interesting findings are the following. First, contention among different modules drastically impacts latency and performance predictability. Second, LiDAR-related components are important contributors to the latency of the system. Finally, a modern platform with a high-end CPU and GPU cannot achieve real-time performance when considering the entire end-to-end system.
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