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Collaborative Optimization of Service Composition for Data-Intensive Applications in a Hybrid Cloud

机译:混合云中数据密集型应用的服务组合的协作优化

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The multi-valued evaluations of quality of service (QoS), the complicated constraints between cloud services (CSs) and the collaborative resource assignments add many difficulties to the problem of CS composition for data-intensive applications (DiA) in a hybrid cloud (CSCD-HC). Solving the CSCD-HC problem has become a challenging task due to the uncertain QoS, the diverse hardware configurations and the flexible pricing about CSs. This paper proposes a collaborative optimization approach for CSCD-HC. This approach models a DiA as a role-based collaboration (RBC) system and employs the environments-classes, agents, roles, groups, and objects (E-CARGO) model to formalize the CSCD-HC problem with complicated constraints. To deal with the multi-valued QoS evaluations, this paper exploits the cloud model theory to analyze the performance of CSs, and presents a new method utilizing the Mahalanobis distance to improve the similarity calculation of QoS cloud models. Based on it, the qualification of candidate CSs can be precisely measured for supporting CS composition. A solution via the IBM ILOG CPLEX optimization package is put forward to solve the CSCD-HC problem. The experimental results demonstrate that the proposed approach is effective and feasible for optimizing CSCD-HC.
机译:服务质量(QoS)的多价评估,云服务(CSS)之间的复杂约束和协作资源分配在混合云中的数据密集型应用(Dia)的CS组合问题增加了许多困难(CSCD -HC)。解决CSCD-HC问题由于QoS不确定,多样化的硬件配置和CSS灵活定价而成为一个具有挑战性的任务。本文提出了CSCD-HC的协同优化方法。这种方法模拟DIA作为基于角色的协作(RBC)系统,并采用环境,代理,角色,组和对象(E-Cargo)模型来形成复杂的约束的CSCD-HC问题。要处理多价QoS评估,本文利用云模型理论分析CSS的性能,并提出了利用Mahalanobis距离来提高QoS云模型的相似性计算的新方法。基于它,可以精确测量候选CSS的资格以支持CS组成。提出了通过IBM ILOG CPLEX优化包的解决方案来解决CSCD-HC问题。实验结果表明,该方法可有效,可用于优化CSCD-HC。

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