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On the in-field test of the GPGPU scheduler memory

机译:关于GPGPU调度器内存的现场测试

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摘要

GPGPUs have been increasingly successful in the past years in many application domains, due to their high parallel processing capabilities and energy performance. More recently, they started to be used in areas (such as automotive) where safety is also an important parameter. However, their architectural complexity and advanced technology level create challenges when matching the required reliability targets. This requires devising solutions to perform in-field test, thus allowing the systematic detection of possible permanent faults. These faults are caused by aging or external factors that affect the application execution and potentially generate critical misbehaviors. Moreover, effective in-field test techniques oriented to verify the integrity of GPGPU modules during in-field operation are still missed. In this work, we propose a method to generate self-test procedures able to detect all static faults affecting the scheduler memory existing in each streaming multiprocessor (SM) of a GPGPU. NVIDIA CUDA-C is selected as high-level programing language. The experimental results are obtained employing the NVIDIA Nsight Debugger on a NVIDIA-GEFORCE GTX GPU and a memory fault simulator.
机译:由于其高并行处理能力和能源性能,GPGPU在许多应用领域的过去几年中越来越成功。最近,他们开始在安全性也是一个重要参数的区域(如汽车)中使用。然而,当匹配所需的可靠性目标时,它们的架构复杂性和先进的技术水平会产生挑战。这需要设计的解决方案来执行现场测试,从而允许系统地检测可能的永久性故障。这些故障是由影响应用程序执行的老化或外部因素引起的,并且可能产生批判性的不端行为者。此外,仍然错过了以验证在现场操作期间GPGPU模块的完整性的现场测试技术。在这项工作中,我们提出了一种方法来生成能够检测到影响GPGPU的每个流多处理器(SM)中存在的调度器存储器的所有静态故障的方法。 NVIDIA CUDA-C被选为高级编程语言。在NVIDIA-GeForce GTX GPU和存储故障模拟器上使用NVIDIA NSIGHT调试器获得实验结果。

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