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Characterizing Fault Tolerance in Genetic Programming

机译:在遗传编程中表征容错的特征

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Evolutionary Algorithms (Eas), and particularly Genetic Programming (GP), are techniques frequently employed to solve difficult real-life problems, which can require up to days or months of computation. One approach to reduce the time to solution is to use parallel computing on distributed platforms. Distributed platforms are prone to failures, and when these platforms are large and/or low-cost, failures are expected events rather than catastrophic exceptions. Therefore, fault tolerance and recovery techniques often become necessary. It turns out that Parallel GP (PGP) applications have an inherent ability to tolerate failures. This ability is quantified via simulation experiments performed using failure traces from real-world distributed platforms, namely, desktop grids (DGs), for two well-known GP problems. A simple technique is then proposed by which PGP applications can better tolerate the different, and often high, failures rates seen in different platforms.
机译:进化算法(EAS),特别是遗传编程(GP),是经常用于解决困难的现实问题的技术,这可能需要多达几天或数月的计算。一种减少解决时间的方法是在分布式平台上使用并行计算。分布式平台容易发生故障,并且当这些平台大和/或低成本时,预期事件的失败是灾难性的例外。因此,通常需要容错和恢复技术。事实证明,并行GP(PGP)应用程序具有容忍故障的固有能力。通过使用来自现实世界分布式平台的故障迹线,即桌面网格(DGS)进行的仿真实验,可以通过仿真实验来量化此能力,用于两个众所周知的GP问题。然后提出了一种简单的技术,通过该技术,通过该技术,PGP应用程序可以更好地容忍在不同平台中看到的不同和通常高的失败率。

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