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Credit scheduling and prefetching in hypervisors using Hidden Markov Models

机译:使用隐马尔可夫模型在虚拟机管理程序中进行信用调度和预取

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The advances in data storage technologies like Storage Area Networking (SAN), virtualization of servers and storage, cloud computing have revolutionized the way the data is stored. A large number of business organizations, universities, hospitals, research organizations are now deploying SAN, not as a luxury but as a necessity. Scientific research organizations like NASA process terabytes of data every day. Accurate analysis and processing of the experimental data call for a need to efficiently store and retrieve the data to and from data storage media. Similarly social websites like YouTube, FaceBook handle large amounts of data every minute. So, the robust performance of any computing and retrieval applications demands a reduction in the latency of data access. Hidden Markov Models (HMM) have been successfully used by researchers to predict data patterns in the areas of speech recognition, gene prediction, cryptanalysis etc. The goal of this research is to reduce the scheduling delay in hypervisors and the latency of reading blocks of data from the disk array using Hidden Markov Models (HMM) in a server virtualized environment. HMM was implemented to identify patterns of read requests issued and exploited to reduce the overall read response time of a server. A Gaussian HMM is used to reduce the scheduling delay and a discrete HMM is used to reduce the read response time. Results observed using HMM were very promising compared to results without HMM in decreasing the overall latency in data access.
机译:诸如存储区域网络(SAN),服务器和存储的虚拟化以及云计算等数据存储技术的进步彻底改变了数据的存储方式。现在,许多商业组织,大学,医院,研究组织都在部署SAN,这并不是奢侈,而是必需。像NASA这样的科研组织每天都要处理TB级的数据。对实验数据的准确分析和处理要求有效地将数据存储到数据存储介质中以及从数据存储介质中检索数据。类似的社交网站,例如YouTube,FaceBook,每分钟处理大量数据。因此,任何计算和检索应用程序的强大性能都要求减少数据访问的延迟。研究人员已成功地使用隐马尔可夫模型(HMM)来预测语音识别,基因预测,密码分析等领域的数据模式。此研究的目的是减少虚拟机管理程序中的调度延迟和读取数据块的延迟在服务器虚拟化环境中使用隐马尔可夫模型(HMM)从磁盘阵列中删除数据。 HMM的实现是为了识别发出和利用的读取请求模式,以减少服务器的总体读取响应时间。高斯HMM用于减少调度延迟,而离散HMM用于减少读取响应时间。与没有HMM的结果相比,使用HMM观察到的结果在减少数据访问的整体延迟方面非常有希望。

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