自适应在线测试,有效检测硬故障

S. Gupta, Amin Ansari, Shuguang Feng, S. Mahlke
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引用次数: 25

摘要

随着半导体集成度的不断提高,预计在未来的技术世代中,单个晶体管的可靠性将迅速下降。在这种情况下,处理器需要配备容错机制来容忍现场硅缺陷。定期在线测试是检测此类故障的一种流行技术;然而,它倾向于施加沉重的测试惩罚。在本文中,我们提出了一个自适应在线测试框架,以显着降低测试开销。该方法的独特之处在于能够评估硬件运行状况并应用适当详细的测试。因此,可以为健康组件节省大量的测试时间。我们进一步扩展了该框架,使其与StageNet CMP结构一起工作,该结构提供了将具有相似健康状况的管道阶段组合在一起的灵活性,从而减少了总体测试负担。对于适度的2.6%传感器面积开销,所提出的方案能够在16核CMP的生命周期内实现软件测试指令减少80%。
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Adaptive online testing for efficient hard fault detection
With growing semiconductor integration, the reliability of individual transistors is expected to rapidly decline in future technology generations. In such a scenario, processors would need to be equipped with fault tolerance mechanisms to tolerate in-field silicon defects. Periodic online testing is a popular technique to detect such failures; however, it tends to impose a heavy testing penalty. In this paper, we propose an adaptive online testing framework to significantly reduce the testing overhead. The proposed approach is unique in its ability to assess the hardware health and apply suitably detailed tests. Thus, a significant chunk of the testing time can be saved for the healthy components. We further extend the framework to work with the StageNet CMP fabric, which provides the flexibility to group together pipeline stages with similar health conditions, thereby reducing the overall testing burden. For a modest 2.6% sensor area overhead, the proposed scheme was able to achieve an 80% reduction in software test instructions over the lifetime of a 16-core CMP.
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