Optimized resource provisioning for dynamic flow on cloud infrastructure using meta heuristic technique

R. Prashanth, Mrs. S. Pushpalatha
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引用次数: 2

Abstract

The expansion of ubiquitous virtual and physical sensors, leading up to the Internet of Things, has accelerated the rate and quantity of data being generated continuously. Application QoS is also impacted by variability of resource performance exhibited through clouds and hence necessitates autonomic methods of provisioning elastic resources to support such applications on cloud infrastructure. The proposed work is to develop the concept of “dynamic dataflows” which utilize alternate tasks as additional control over the dataflow's cost and QoS. The application model is developed for dynamic dataflows as well as the infrastructure model for representation of IaaS cloud characteristics and an optimization problem is proposed for resource provisioning that balances the resource cost, improves application throughput and improves domain value based on user-defined constraints that are presented through a Particle Swarm Optimization (PSO) based heuristic for deployment and runtime adaptation of continuous dataflows to solve the optimization problem. Also the proposed efficient greedy heuristics can provide optimal solution over efficiency, which is critical for low latency streaming applications. Elasticity is to mitigate the effect on variability, both in input data rates and cloud resource performance, to meet the QoS of fast data applications.
使用元启发式技术优化云基础设施上动态流的资源配置
无处不在的虚拟和物理传感器的扩展,导致了物联网,加速了数据不断产生的速度和数量。应用程序QoS还受到通过云显示的资源性能可变性的影响,因此需要提供弹性资源的自主方法来支持云基础设施上的此类应用程序。建议的工作是开发“动态数据流”的概念,它利用备用任务作为对数据流成本和QoS的额外控制。为动态数据流开发了应用程序模型,为表示IaaS云特征开发了基础设施模型,并提出了平衡资源成本的资源配置优化问题。采用基于粒子群优化(PSO)的启发式算法对连续数据流进行部署和运行时自适应,从而提高应用程序吞吐量和基于用户自定义约束的域值,从而解决优化问题。此外,所提出的高效贪心启发式算法可以提供最优的效率解决方案,这对于低延迟流应用至关重要。弹性是为了减轻输入数据速率和云资源性能对可变性的影响,以满足快速数据应用程序的QoS。
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