修改代理策略以更好地在地理分布的数据中心上分配负载

Louai Sheikhani, Weichao Ding, J. Talwana, C. Gu
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引用次数: 0

摘要

随着越来越多的企业转向基于云的服务,诸如减少响应时间、优化成本和数据中心负载平衡等问题是需要研究的重要因素。选择合适的数据中心来处理用户请求直接影响到这些因素。Broker策略确定哪个数据中心应该为来自每个用户群的请求提供服务;因此,选择合适的策略可以显著提高性能。基准策略之一是基于服务接近性的策略,它将请求路由到数据中心,这具有最低的网络延迟或来自用户群的最小传输延迟。如果在邻近的区域中有多个数据中心,则随机选择其中一个数据中心来处理传入的请求。但是,没有考虑其他因素,如成本、工作负载、虚拟机数量、处理时间等。随机选择的数据中心在响应时间、数据处理时间、成本和其他参数方面会产生不理想的结果。本文提出了采用新的调度算法来控制负载平衡的策略。结果表明,使用该算法代替随机选择可以明显改善工作负载在可用数据中心上的分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modifying Broker Policy for Better Distribution of the Load Over Geo-distributed Datacenters
As an increasing number of businesses move toward Cloud based services, issues such as reduce response time, optimize cost, and load balance over data centers are important factor that need to be studied. Selecting the suitable data center to handle the user request is affecting those factors directly. The Broker policy determines which data center should service the request from each user base; so choosing appropriate policy can improve the performance noticeably. One of the benchmarks policies is service proximity-based that routing the request to the data center, which has lowest network latency or minimum transmission delay from a user base. If there are more than one data centers in a region in close proximity, then one of the data centers is selected at random to service the incoming request. However, other factors such as cost, workload, number of virtual machines, processing time etc., are not taken into consideration. Randomly selected data center gives undesirable results in terms of response time, data processing time, cost, and other parameters. this work propose modifying that policy by applying new schedule algorithm that control the load balance. the results showed that the using of this algorithm instead of the random selection would improve the distribution of the workload over the available datacenters noticeably.
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