Data mining on the grid for the grid

N. Chawla, D. Thain, Ryan Lichtenwalter, David A. Cieslak
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引用次数: 7

Abstract

Both users and administrators of computing grids are presented with enormous challenges in debugging and troubleshooting. Diagnosing a problem with one application on one machine is hard enough, but diagnosing problems in workloads of millions of jobs running on thousands of machines is a problem of a new order of magnitude. Suppose that a user submits one million jobs to a grid, only to discover some time later that half of them have failed, Users of large scale systems need tools that describe the overall situation, indicating what problems are commonplace versus occasional, and which are deterministic versus random. Machine learning techniques can be used to debug these kinds of problems in large scale systems. We present a comprehensive framework from data to knowledge discovery as an important step towards achieving this vision.
数据挖掘是对网格的挖掘
计算网格的用户和管理员在调试和故障排除方面都面临着巨大的挑战。诊断一台机器上的一个应用程序的问题已经很困难了,但是诊断在数千台机器上运行的数百万个作业的工作负载中的问题是一个新的数量级的问题。假设一个用户向网格提交了一百万个作业,过了一段时间才发现其中一半的作业失败了。大型系统的用户需要描述总体情况的工具,指出哪些问题是常见的,哪些是偶然的,哪些是确定性的,哪些是随机的。机器学习技术可用于在大型系统中调试这类问题。我们提出了一个从数据到知识发现的综合框架,作为实现这一愿景的重要一步。
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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