回归验证中基于聚类的修正调试

Djordje Maksimovic, A. Veneris, Zissis Poulos
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引用次数: 8

摘要

现代数字系统的规模和复杂性都在不断增长,在设计周期中引入了重大的组织和验证挑战。今天的验证花费了多达70%的设计时间,调试只占一半的时间。自动化减轻了部分纠正错误设计的资源密集型性质。然而,大多数工具都是孤立地针对故障的。由于回归验证可以在一次运行中发现无数的故障,因此还需要自动化来指导工程师对它们进行排序并加快调试。为了解决这种日益增长的回归痛苦,本文提出了一个利用传统机器学习技术以及版本控制系统中的历史数据和功能调试结果的框架。其目的是根据修订对特定失败负责的可能性对其进行排名。排序对应该首先定位的修订进行优先级排序,因此它加快了错误源的定位。这有效地减少了调试迭代的次数。工业设计的实验表明,与通过现有工业方法获得的排名相比,实际错误修订的排名提高了68%。这种好处可以忽略运行时开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering-based revision debug in regression verification
Modern digital systems are growing in size and complexity, introducing significant organizational and verification challenges in the design cycle. Verification today takes as much as 70% of the design time with debugging being responsible for half of this effort. Automation has mitigated part of the resource-intensive nature of rectifying erroneous designs. Nevertheless, most tools target failures in isolation. Since regression verification can discover myriads of failures in one run, automation is also required to guide an engineer to rank them and expedite debugging. To address this growing regression pain, this paper presents a framework that utilizes traditional machine learning techniques along with historical data in version control systems and the results of functional debugging. Its aim is to rank revisions based on their likelihood of being responsible for a particular failure. Ranking prioritizes revisions that ought to be targeted first, and therefore it speeds-up the localization of the error source. This effectively reduces the number of debug iterations. Experiments on industrial designs demonstrate a 68% improvement in the ranking of actual erroneous revisions versus the ranking obtained through existing industrial methodologies. This benefit arrives with negligible run-time overhead.
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