计算机科学
操作系统
Linux内核
配置FS
负载平衡(电力)
核(代数)
并行计算
数学
几何学
组合数学
网格
作者
Jingde Chen,Subho S. Banerjee,Zbigniew Kalbarczyk,Ravishankar K. Iyer
标识
DOI:10.1145/3409963.3410492
摘要
The OS load balancing algorithm governs the performance gains provided by a multiprocessor computer system. The Linux's Completely Fair Scheduler (CFS) scheduler tracks process loads by average CPU utilization to balance workload between processor cores. That approach maximizes the utilization of processing time but overlooks the contention for lower-level hardware resources. In servers running compute-intensive workloads, an imbalanced need for limited computing resources hinders execution performance. This paper solves the above problem using a machine learning (ML)-based resource-aware load balancer. We describe (1) low-overhead methods for collecting training data; (2) an ML model based on a multi-layer perceptron model that imitates the CFS load balancer based on the collected training data; and (3) an in-kernel implementation of inference on the model. Our experiments demonstrate that the proposed model has an accuracy of 99% in making migration decisions and while only increasing the latency by 1.9 μs.
科研通智能强力驱动
Strongly Powered by AbleSci AI