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Cache contention aware Virtual Machine placement and migration in cloud datacenters

机译:缓存争用感知型虚拟机在云数据中心中的放置和迁移

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In cloud datacenters, multiple Virtual Machines (VMs) are co-located in a Physical Machine (PM) to serve different applications. Prior VM consolidation methods for cloud datacenters schedule VMs mainly based on resource (CPU and memory) constraints in PMs but neglect serious shared Last Level cache contention between VMs. This may cause severe VM performance degradation due to cache thrashing and starvation for VMs. Current cache contention aware VM consolidation strategies either estimate cache contention by coarse VM classification for each individual VM without considering co-location and (or) require the aid of hardware to monitor the online miss rate of each VM. Therefore, these strategies are insufficiently accurate and (or) difficult to adopt for VM consolidation in clouds. In this paper, we formalize the problem of cache contention aware VM placement and migration in cloud datacenters using integer linear programming. We then propose a cache contention aware VM placement and migration algorithm (CacheVM). It estimates the total cache contention degree of co-locating a given VM with a group of VMs in a PM based on the cache stack distance profiles of the VMs. Then, it places the VM to the PM with the minimum cache contention degree and chooses the VM from a PM that generates the maximum cache contention degree to migrate out. We implemented CacheVM and its comparison methods on a supercomputing cluster. Trace-driven simulation and real-testbed experiments show that CacheVM outperforms other methods in terms of the number of cache misses, execution time and throughput.
机译:在云数据中心中,多个虚拟机(VM)共同位于物理机(PM)中,以服务于不同的应用程序。先前用于云数据中心的VM整合方法主要根据PM中的资源(CPU和内存)约束来调度VM,但忽略了VM之间严重的共享“最后一级”缓存争用。由于虚拟机的缓存抖动和不足,这可能会导致虚拟机性能严重下降。当前了解缓存争用的VM合并策略要么通过对每个单独的VM进行粗略的VM分类来估计缓存争用,而无需考虑主机托管,并且(或)需要借助硬件来监视每个VM的在线丢失率。因此,这些策略不够准确,并且(或)难以用于云中的VM整合。在本文中,我们使用整数线性规划形式化了在云数据中心中了解缓存争用的VM放置和迁移的问题。然后,我们提出了一种了解缓存争用的VM放置和迁移算法(CacheVM)。它基于VM的缓存堆栈距离配置文件,估算将给定VM与PM中的一组VM共同定位的总缓存争用程度。然后,它将VM放置到缓存争用程度最小的PM上,并从产生最大缓存争用程度的PM中选择VM进行迁移。我们在超级计算集群上实现了CacheVM及其比较方法。跟踪驱动的仿真和实际测试实验表明,CacheVM在缓存未命中的数量,执行时间和吞吐量方面都优于其他方法。

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