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Autonomic Cloud Placement of Mixed Workload: An Adaptive Bin Packing Algorithm

机译:混合工作负载的自主云放置:自适应装箱算法

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Cloud computing offers a platform where virtual entities, such as virtual machines, containers, and pods, are hosted in a physical infrastructure. Such virtual entities request resources, such as CPU, memory, and GPU, among other constraints. The cloud placement engine, also referred to as the scheduler, needs to place, in real time, such virtual entities in the cloud. Typically, resource demand is heterogeneous and the mix varies over time. Therefore, the scheduler needs to change its placement policy dynamically in order to accommodate the change in the mixed demand, resulting in lower rejection probability. A novel, autonomic, Adaptive Bin Packing (ABP) algorithm which attempts to equalize measures of variability in the demand and the allocated resources in the cloud, without the need to set any configuration, is introduced. ABP is compared to simplistic, extreme packing policies (spread and pack) as well an optimized packing policy. Experimental results based on simulations are presented, and the behavior of ABP and its adaptability to the demand mix is demonstrated. Further, ABP performs close to the optimized policy, yet evolves to an extreme policy as the mix becomes homogeneous.
机译:云计算提供了一个平台,在该平台上,虚拟实体(例如虚拟机,容器和容器)托管在物理基础架构中。此类虚拟实体会请求其他资源,例如CPU,内存和GPU。云放置引擎(也称为调度程序)需要实时将此类虚拟实体放置在云中。通常,资源需求是异构的,并且混合随时间而变化。因此,调度程序需要动态地更改其放置策略,以适应混合需求中的变化,从而导致较低的拒绝概率。引入了一种新颖的自主式自适应装箱(ABP)算法,该算法尝试使需求量和云中分配的资源的可变性度量相等,而无需设置任何配置。将ABP与简单,极端的打包策略(扩展和打包)以及优化的打包策略进行了比较。给出了基于仿真的实验结果,并证明了ABP的行为及其对需求组合的适应性。此外,ABP的性能接近优化策略,但随着混合变得同质,逐渐发展为极端策略。

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