利用新兴的人工智能硬件加速基于仿真的推理

S. Kulkarni, A. Tsyplikhin, M. M. Krell, C. A. Moritz
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引用次数: 5

摘要

通过捕捉它们潜在的复杂相互作用来发展自然现象的模型是各种科学学科的核心原则。这些模型是有用的模拟器,可以帮助理解正在研究的自然过程。在这一过程中,一个关键的挑战是实现对这些模型的统计推断,这将允许这些基于模拟的模型从现实世界的观察中学习。最近的努力,如近似贝叶斯计算(ABC),显示了在执行一种新的推理来利用这些模型的希望。虽然这些推理算法的适用范围受到当代计算硬件能力的限制,但它们显示出极大并行化的潜力。在这项工作中,我们通过将大规模并行ABC推理算法与独特适合于此目的的尖端AI芯片解决方案相结合,探索基于概率模型的硬件加速仿真推理。作为概念验证,我们对用于预测COVID-19传播的概率流行病学模型进行了推断。比较了两种硬件加速平台——Tesla V100 GPU和Graphcore Mark1 IPU。我们的结果表明,虽然这两个平台的性能都优于多核cpu,但Mk1 ipu在此工作负载下比Tesla V100 gpu快7.5倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Simulation-based Inference with Emerging AI Hardware
Developing models of natural phenomena by capturing their underlying complex interactions is a core tenet of various scientific disciplines. These models are useful as simulators and can help in understanding the natural processes being studied. One key challenge in this pursuit has been to enable statistical inference over these models, which would allow these simulation-based models to learn from real-world observations. Recent efforts, such as Approximate Bayesian Computation (ABC), show promise in performing a new kind of inference to leverage these models. While the scope of applicability of these inference algorithms is limited by the capabilities of contemporary computational hardware, they show potential of being greatly parallelized. In this work, we explore hardware accelerated simulation-based inference over probabilistic models, by combining massively parallelized ABC inference algorithm with the cutting-edge AI chip solutions that are uniquely suited for this purpose. As a proof-of-concept, we demonstrate inference over a probabilistic epidemiology model used to predict the spread of COVID-19. Two hardware acceleration platforms are compared - the Tesla V100 GPU and the Graphcore Mark1 IPU. Our results show that while both of these platforms outperform multi-core CPUs, the Mk1 IPUs are 7.5x faster than the Tesla V100 GPUs for this workload.
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