A Practical Fault Tolerance Approach in Cloud Computing Using Support Vector Machine

Gajendra Sharma
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Abstract

Fault tolerance is an important issue in the field of cloud computing which is concerned with the techniques or mechanism needed to enable a system to tolerate the faults that may encounter during its functioning. Fault tolerance policy can be categorized into three categories viz. proactive, reactive and adaptive. Providing a systematic solution the loss can be minimized and guarantee the availability and reliability of the critical services. The purpose and scope of this study is to recommend Support Vector Machine, a supervised machine learning algorithm to proactively monitor the fault so as to increase the availability and reliability by combining the strength of machine learning algorithm with cloud computing.
基于支持向量机的云计算容错方法
容错是云计算领域的一个重要问题,它涉及到使系统能够容忍在其运行过程中可能遇到的错误所需的技术或机制。容错策略可分为主动容错策略、被动容错策略和自适应容错策略。通过系统的解决方案,将损失降至最低,保证关键业务的可用性和可靠性。本研究的目的和范围是将机器学习算法的优势与云计算相结合,推荐支持向量机(Support Vector Machine)这一监督式机器学习算法主动监测故障,从而提高可用性和可靠性。
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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