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Kernel and layer vulnerability factor to evaluate object detection reliability in GPUs

机译:内核和层漏洞因素,用于评估GPU中对象检测的可靠性

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Video recognition applications running on Graphics Processing Unit are composed of heterogeneous software portions, such as kernels or layers for neural networks. The authors propose the concepts of kernel vulnerability factor (KVF) and layer vulnerability factor (LVF), which indicate the probability of faults in a kernel or layer to affect the computation. KVF and LVF indicate the high-level portions of code that are more likely, if corrupted, to impact the application's output. KVF and LVF restrict the architecture/program vulnerability factor analysis to specific portions of the algorithm, easing the criticality analysis and the implementation of selective hardening. We apply the proposed metrics to two Histogram of Oriented Gradients (HOG), and You Only Look Once (YOLO) benchmarks. We measure the KVF for HOG by using fault-injection at both the architectural level and high level. We propose for HOG an efficient selective hardening technique able to detect 85% of critical errors with an overhead in performance as low as 11.8%. For YOLO, we study the LVF with architectural-level fault-injection. We qualify the observed corrupted outputs, distinguishing between tolerable and critical errors. Then, we proposed a smart layer duplication that detects more than 90% of errors, with an overhead lower than 60%.
机译:在图形处理单元上运行的视频识别应用程序由异构软件部分组成,例如内核或神经网络层。作者提出了内核脆弱性因子(KVF)和层脆弱性因子(LVF)的概念,这些概念指示了内核或层中的故障影响计算的可能性。 KVF和LVF指示代码的高级部分,如果被破坏,则更有可能影响应用程序的输出。 KVF和LVF将体系结构/程序脆弱性因素分析限制在算法的特定部分,从而简化了关键性分析和选择性强化的实现。我们将拟议的指标应用于两个“定向梯度直方图(HOG)”和“仅查看一次”(YOLO)基准。我们通过在体系结构级别和高层使用故障注入来测量HOG的KVF。我们为HOG提出了一种有效的选择性硬化技术,该技术能够检测85%的关键错误,而性能开销却低至11.8%。对于YOLO,我们研究具有体系结构级故障注入的LVF。我们对观察到的损坏输出进行鉴定,以区分可容忍的错误和严重错误。然后,我们提出了一种智能层复制功能,该功能可以检测90%以上的错误,而开销却低于60%。

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