Deep Reinforcement Agent for Scheduling in HPC

Yuping Fan, Z. Lan, T. Childers, P. Rich, W. Allcock, M. Papka
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引用次数: 19

Abstract

Cluster scheduler is crucial in high-performance computing (HPC). It determines when and which user jobs should be allocated to available system resources. Existing cluster scheduling heuristics are developed by human experts based on their experience with specific HPC systems and workloads. However, the increasing complexity of computing systems and the highly dynamic nature of application workloads have placed tremendous burden on manually designed and tuned scheduling heuristics. More aggressive optimization and automation are needed for cluster scheduling in HPC. In this work, we present an automated HPC scheduling agent named DRAS (Deep Reinforcement Agent for Scheduling) by leveraging deep reinforcement learning. DRAS is built on a novel, hierarchical neural network incorporating special HPC scheduling features such as resource reservation and backfilling. A unique training strategy is presented to enable DRAS to rapidly learn the target environment. Once being provided a specific scheduling objective given by system manager, DRAS automatically learns to improve its policy through interaction with the scheduling environment and dynamically adjusts its policy as workload changes. The experiments with different production workloads demonstrate that DRAS outperforms the existing heuristic and optimization approaches by up to 45%.
用于高性能计算调度的深度增强剂
集群调度器在高性能计算(HPC)中至关重要。它决定何时以及哪些用户作业应该分配给可用的系统资源。现有的集群调度启发式算法是由人类专家根据他们对特定HPC系统和工作负载的经验开发的。然而,计算系统日益增加的复杂性和应用程序工作负载的高度动态性给人工设计和调优调度启发式带来了巨大的负担。HPC中的集群调度需要更积极的优化和自动化。在这项工作中,我们利用深度强化学习提出了一个名为DRAS (Deep Reinforcement agent for scheduling)的自动化HPC调度代理。DRAS是建立在一种新颖的、分层的神经网络上的,它结合了特殊的高性能计算调度特征,如资源预留和回填。提出了一种独特的训练策略,使DRAS能够快速学习目标环境。一旦系统管理员提供了特定的调度目标,DRAS就会通过与调度环境的交互自动学习改进策略,并随着工作负载的变化动态调整策略。在不同的生产工作负载下进行的实验表明,DRAS比现有的启发式和优化方法的性能高出45%。
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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