Triage: diagnosing production run failures at the user's site

Joseph A. Tucek, Shan Lu, Chengdu Huang, S. Xanthos, Yuanyuan Zhou
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引用次数: 157

Abstract

Diagnosing production run failures is a challenging yet importanttask. Most previous work focuses on offsite diagnosis, i.e.development site diagnosis with the programmers present. This is insufficient for production-run failures as: (1) it is difficult to reproduce failures offsite for diagnosis; (2) offsite diagnosis cannot provide timely guidance for recovery or security purposes; (3)it is infeasible to provide a programmer to diagnose every production run failure; and (4) privacy concerns limit the release of information(e.g. coredumps) to programmers. To address production-run failures, we propose a system, called Triage, that automatically performs onsite software failure diagnosis at the very moment of failure. It provides a detailed diagnosis report, including the failure nature, triggering conditions, related code and variables, the fault propagation chain, and potential fixes. Triage achieves this by leveraging lightweight reexecution support to efficiently capture the failure environment and repeatedly replay the moment of failure, and dynamically--using different diagnosis techniques--analyze an occurring failure. Triage employs afailure diagnosis protocol that mimics the steps a human takes in debugging. This extensible protocol provides a framework to enable the use of various existing and new diagnosis techniques. We also propose a new failure diagnosis technique, delta analysis, to identify failure related conditions, code, and variables. We evaluate these ideas in real system experiments with 10 real software failures from 9 open source applications including four servers. Triage accurately diagnoses the evaluated failures, providing likely root causes and even the fault propagation chain, while keeping normal-run overhead to under 5%. Finally, our user study of the diagnosis and repair of real bugs shows that Triagesaves time (99.99% confidence), reducing the total time to fix by almost half.
分类:诊断用户站点上的生产运行故障
诊断生产运行故障是一项具有挑战性但又很重要的任务。大多数以前的工作集中于非现场诊断,即与在场的程序员进行开发现场诊断。这对于生产运行故障是不够的,因为:(1)很难在场外重现故障以进行诊断;(2)非现场诊断不能为恢复或安全提供及时指导的;(3)提供一个程序员来诊断每一个生产运行故障是不可行的;(4)隐私问题限制了信息的发布(例如:核心转储)给程序员。为了解决生产运行故障,我们提出了一个称为Triage的系统,它可以在故障发生的那一刻自动执行现场软件故障诊断。它提供了详细的诊断报告,包括故障性质、触发条件、相关代码和变量、故障传播链和潜在的修复。Triage通过利用轻量级重执行支持来有效地捕获故障环境,反复重放故障时刻,并动态地(使用不同的诊断技术)分析发生的故障,从而实现了这一点。Triage使用故障诊断协议,该协议模仿人类在调试过程中采取的步骤。这个可扩展协议提供了一个框架,使各种现有的和新的诊断技术的使用成为可能。我们还提出了一种新的故障诊断技术,delta分析,以识别故障相关的条件,代码和变量。我们在真实的系统实验中评估了这些想法,其中包括9个开源应用程序(包括4个服务器)的10个真实软件故障。Triage准确地诊断评估的故障,提供可能的根本原因,甚至故障传播链,同时将正常运行开销保持在5%以下。最后,我们对真实bug的诊断和修复的用户研究表明,triages节省了时间(99.99%的置信度),将修复的总时间减少了近一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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