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A Perspective on Test Methodologies for Supervised Machine Learning Accelerators

机译:监督机器学习加速器测试方法的观点

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Neural Network (NN) accelerators are essential in many emerging applications e.g., autonomous systems in making mission-critical decisions, health-care solutions to assist with diagnoses, etc. Any soft or hard failure during operation can potentially have catastrophic consequences in many of these applications. For instance, inaccurate classification during object recognition and tracking in autonomous vehicles can lead to crashes and subsequent injuries to the passengers. Therefore, testing Neural Network accelerators to ensure reliability and integrity of the underlying hardware is a crucial task to ensure the functionality, especially the ones that are used in mission-critical applications. Conventional functional, stuck-at and delay tests are not sufficient to characterize the ML systems since they face new test and validation challenges. This paper is aimed to provide a perspective on new test requirements and design for test techniques to cover ML features and detect various type of faults in NN accelerator. We discuss First-In-First-Out (FIFO) and Scratchpad based neural network hardware accelerators and propose test methods to detect the faults as well as fault location in different modules of the accelerator including MAC unit, Activation function module, and Processing Element (PE) registers.
机译:神经网络(NN)加速器在许多新兴应用中至关重要,例如在执行关键任务决策的自动系统,协助诊断的医疗保健解决方案等方面。操作过程中的任何软性或硬性故障都可能在许多此类应用中带来灾难性后果应用程序。例如,在自动驾驶汽车中物体识别和跟踪过程中分类不正确会导致撞车和随后对乘客的伤害。因此,测试神经网络加速器以确保基础硬件的可靠性和完整性是确保功能(尤其是用于关键任务应用程序的功能)的一项关键任务。常规的功能测试,卡住测试和延迟测试不足以表征ML系统,因为它们面临着新的测试和验证挑战。本文旨在为新的测试需求和测试技术设计提供一个视角,以涵盖ML功能并检测NN加速器中的各种类型的故障。我们讨论了基于先进先出(FIFO)和基于Scratchpad的神经网络硬件加速器,并提出了测试方法以检测加速器的不同模块(包括MAC单元,激活功能模块和处理元件)中的故障以及故障位置( PE)寄存器。

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