A. Ruospo, G. Gavarini, A. Porsia, M. Reorda, Ernesto Sánchez, R. Mariani, J. Aribido, J. Athavale
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引用次数: 1
摘要
基于人工智能(AI)的系统的广泛使用引发了人们对其在安全关键系统中的部署的担忧。汽车行业的ISO26262等标准要求在设备执行任务期间检测硬件故障。同样,有关人工智能系统功能安全的新标准正在发布(例如,ISO/IEC CD TR 5469)。已经提出了硬件解决方案,用于执行AI应用程序的硬件的内场测试;然而,当在图像处理任务中使用卷积神经网络(cnn)等应用时,它们的使用可能会增加硬件成本并影响应用性能。本文首次提出了一种开发高质量测试图像的方法,该图像与CNN应用的正常推理过程交织在一起。针对GPU功能单元的在线测试,开发了图像测试库(ITL)。所提出的方法不需要改变实际的CNN(从而导致昂贵的内存加载操作),因为它能够利用实际的CNN结构。实验结果表明,6幅图像的ITL能够在GPU的浮点乘法器上达到95%的卡滞测试覆盖率。获得的ITL需要非常低的测试应用程序时间,以及用于存储测试图像和黄金测试响应的非常低的内存空间。
Image Test Libraries for the on-line self-test of functional units in GPUs running CNNs
The widespread use of artificial intelligence (AI)-based systems has raised several concerns about their deployment in safety-critical systems. Industry standards, such as ISO26262 for automotive, require detecting hardware faults during the mission of the device. Similarly, new standards are being released concerning the functional safety of AI systems (e.g., ISO/IEC CD TR 5469). Hardware solutions have been proposed for the infield testing of the hardware executing AI applications; however, when used in applications such as Convolutional Neural Networks (CNNs) in image processing tasks, their usage may increase the hardware cost and affect the application performances. In this paper, for the very first time, a methodology to develop high-quality test images, to be interleaved with the normal inference process of the CNN application is proposed. An Image Test Library (ITL) is developed targeting the on-line test of GPU functional units. The proposed approach does not require changing the actual CNN (thus incurring in costly memory loading operations) since it is able to exploit the actual CNN structure. Experimental results show that a 6-image ITL is able to achieve about 95% of stuck-at test coverage on the floating-point multipliers in a GPU. The obtained ITL requires a very low test application time, as well as a very low memory space for storing the test images and the golden test responses.