基于成本感知的数据密集型服务提供的改进蚁群算法

Lijuan Wang, Jun Shen, G. Beydoun
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引用次数: 25

摘要

近年来产生了大量的数据。云计算已被广泛接受为解决数据扩散问题的下一代解决方案。由于数字数据的爆炸式增长和云的分布式特性,以及市场上越来越多的提供商,为组成数据密集型服务提供有效的成本模型将成为这个动态市场的核心。用户、服务创建者、服务提供者和数据提供者的位置将影响服务提供的总成本。不同的供应商将需要就如何定价和支付资源做出决定。他们每个人都想最大化自己的利润,并保持自己在市场上的地位。在前人研究的基础上,研究了数据强度和海量数据传输的通信成本对服务构成的影响,提出了一种基于增强蚁群系统的数据密集型服务选择算法。本文将数据密集型服务组合问题建模为AND/OR图,不仅能够处理序列关系和切换关系,还能够处理服务之间的并行关系。此外,通过仿真对服务选择算法的性能进行了评价。
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Enhanced Ant Colony Algorithm for Cost-Aware Data-Intensive Service Provision
Huge collections of data have been created in recent years. Cloud computing has been widely accepted as the next-generation solution to addressing data-proliferation problems. Because of the explosion in digital data and the distributed nature of the cloud, as well as the increasingly large number of providers in the market, providing efficient cost models for composing data-intensive services will become central to this dynamic market. The location of users, service composers, service providers, and data providers will affect the total cost of service provision. Different providers will need to make decisions about how to price and pay for resources. Each of them wants to maximize its profit as well as retain its position in the marketplace. Based on our earlier work, this paper addresses the effect of data intensity and the communication cost of mass data transfer on service composition, and proposes a service selection algorithm based on an enhanced ant colony system for data-intensive service provision. In this paper, the data-intensive service composition problem is modeled as an AND/OR graph, which is not only able to deal with sequence relations and switch relations, but is also able to deal with parallel relations between services. In addition, the performance of the service selection algorithm is evaluated by simulations.
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