Automatic model-driven recovery in distributed systems

2005 
Automatic system monitoring and recovery has the potential to provide a low-cost solution for high availability. However, automating recovery is difficult in practice because of the challenge of accurate fault diagnosis in the presence of low coverage, poor localization ability, and false positives that are inherent in many widely used monitoring techniques. In this paper, we present a holistic model-based approach that overcomes these challenges and enables automatic recovery in distributed systems. To do so, it uses theoretically sound techniques including Bayesian estimation and Markov decision theory to provide controllers that choose good, if not optimal, recovery actions according to a user-defined optimization criteria. By combining monitoring and recovery, the approach realizes benefits that could not have been obtained by using them in isolation. In this paper, we present two recovery algorithms with complementary properties and trade-offs, and validate our algorithms (through simulation) by fault injection on a realistic e-commerce system.
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