Clustering error messages produced by distributed computing infrastructure during the processing of high energy physics data

Author:

Grigorieva Maria12,Grin Dmitry3

Affiliation:

1. Lomonosov Moscow State University, Leninskie Gory, 1, p.4, Moscow, 119234, Russian Federation, Russia

2. Moscow Center of Fundamental and Applied Mathematics, Leninskie Gory, 1, Moscow, 119234, Russian Federation, Russia

3. National Research Center “Kurchatov Institute”, 1, Akademika Kurchatova pl, Moscow, 123182, Russian Federation, Russia

Abstract

Large-scale distributed computing infrastructures ensure the operation and maintenance of scientific experiments at the LHC: more than 160 computing centers all over the world execute tens of millions of computing jobs per day. ATLAS — the largest experiment at the LHC — creates an enormous flow of data which has to be recorded and analyzed by a complex heterogeneous and distributed computing environment. Statistically, about 10–12% of computing jobs end with a failure: network faults, service failures, authorization failures, and other error conditions trigger error messages which provide detailed information about the issue, which can be used for diagnosis and proactive fault handling. However, this analysis is complicated by the sheer scale of textual log data, and often exacerbated by the lack of a well-defined structure: human experts have to interpret the detected messages and create parsing rules manually, which is time-consuming and does not allow identifying previously unknown error conditions without further human intervention. This paper is dedicated to the description of a pipeline of methods for the unsupervised clustering of multi-source error messages. The pipeline is data-driven, based on machine learning algorithms, and executed fully automatically, allowing categorizing error messages according to textual patterns and meaning.

Funder

Russian Science Foundation

Publisher

World Scientific Pub Co Pte Lt

Subject

Astronomy and Astrophysics,Nuclear and High Energy Physics,Atomic and Molecular Physics, and Optics

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