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引用次数: 29
摘要
全顺序广播(Total Order Broadcast, TOB)是许多强一致性、容错复制方案的核心组成部分。虽然众所周知,现有TOB算法的性能会因工作负载和部署场景的不同而有很大差异,但如何在现实环境中预测其性能的问题,目前仍在很大程度上未被探索。在本文中,我们通过探索利用机器学习技术以完全分散的方式构建TOB协议性能模型的可能性来解决这个问题。基于一项广泛的实验研究,考虑了异构工作负载和多种TOB协议,我们评估了替代机器学习方法的准确性和效率,包括神经网络、支持向量机和基于决策树的回归模型。我们为特征选择阶段提出了两种启发式方法,可以在非常有限的预测精度损失的情况下将其执行时间减少两个数量级。
A Machine Learning Approach to Performance Prediction of Total Order Broadcast Protocols
Total Order Broadcast (TOB) is a fundamental building block at the core of a number of strongly consistent, fault-tolerant replication schemes. While it is widely known that the performance of existing TOB algorithms varies greatly depending on the workload and deployment scenarios, the problem of how to forecast their performance in realistic settings is, at current date, still largely unexplored. In this paper we address this problem by exploring the possibility of leveraging on machine learning techniques for building, in a fully decentralized fashion, performance models of TOB protocols. Based on an extensive experimental study considering heterogeneous workloads and multiple TOB protocols, we assess the accuracy and efficiency of alternative machine learning methods including neural networks, support vector machines, and decision tree-based regression models. We propose two heuristics for the feature selection phase, that allow to reduce its execution time up to two orders of magnitude incurring in a very limited loss of prediction accuracy.