Overcome Heterogeneity Impact in Modeled Fork-Join Queuing Networks for Tail Prediction

Sami Alesawi, Sakher Ghanem
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引用次数: 1

Abstract

Inspired by the potential power of random scheduling at data centers, a novel approach for combining arbitrary dispatching policy and tail-latency prediction in heterogeneous fork-join network environments is proposed. Tail prediction is of practical importance in commercial data centers, where the need for sharing resources between many applications is desired at most, to ensure client satisfaction with guaranteed service level objectives (SLOs). Lots of research works in parallel scheduling were presented using event-based simulations, but none of them were able to implant dynamic variation of tasks numbers and maintain the determined load region using a precise, and reliable approach. In this paper, we propose extensive case studies for the presented prediction model in heterogeneous black-box using model-driven simulations. Experimental results show that by using random scheduling algorithm accompanied with inserted effects of different requests fan-out, tail latency can be predicted and stay consistent with relative errors of 10% at high load regions.
克服模型分叉连接排队网络的异质性影响,用于尾部预测
受数据中心随机调度的潜在威力的启发,提出了一种在异构分叉连接网络环境下将任意调度策略与尾延迟预测相结合的新方法。尾部预测在商业数据中心中具有实际重要性,在商业数据中心中,最多需要在许多应用程序之间共享资源,以确保客户满意所保证的服务水平目标(slo)。基于事件仿真的并行调度研究成果很多,但没有一种方法能够准确、可靠地植入任务数量的动态变化,并维持既定的负载区域。在本文中,我们提出了广泛的案例研究,利用模型驱动的模拟在异构黑箱中提出预测模型。实验结果表明,采用随机调度算法结合不同请求扇出插入效应,可以预测高负载区域的尾部延迟,且相对误差保持在10%以内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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