Monitoring High Performance Networks in Large-scale Clusters

F. Gadaud
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Abstract

The number of large-scale clusters is rising. They are included into grids or become key components of large structures. As more users and projects rely on RFC clusters, high availability and security are requirements for a fast growing adoption and use. In this paper, we, focus on high performance networks. All HPC clusters are built on top of them. We demonstrate that classical instrumentations are inefficient in HPC environment, they do not scale or cause a significant loss of performance. Based on this fact, we highlight clusters properties; nodes have assigned roles and are coupled at various levels. Moreover, we study the main characteristics of resource usage for each type of node and propose an instrumentation that can be effectively deployed. It results in fine-grained mechanisms adapted to system architecture, and performance constraints. Relevant information is collected over time. Two properties are verified online and dynamically: coherency and containment. Each induces a type of verification and both aim at reducing recovery time from failure and security risk of a whole cluster. We illustrate our methodology on QsNet by K. Magontis et al. (2001) network and provide a way to increase safety of high performance networks and clusters
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监控大规模集群中的高性能网络
大规模集群的数量正在上升。它们被纳入网格或成为大型结构的关键部件。随着越来越多的用户和项目依赖于RFC集群,高可用性和安全性是快速增长的采用和使用的需求。在本文中,我们专注于高性能网络。所有的HPC集群都建立在它们之上。我们证明了经典仪器在HPC环境中效率低下,它们不能扩展或导致显著的性能损失。基于这一事实,我们强调集群的属性;节点已经分配了角色,并在不同级别上进行了耦合。此外,我们研究了每种类型节点的资源使用的主要特征,并提出了一种可以有效部署的工具。它产生了适合系统架构和性能约束的细粒度机制。随着时间的推移收集相关信息。在线和动态地验证了两个特性:相干性和包容性。每种方法都包含一种类型的验证,并且都旨在减少整个集群的故障恢复时间和安全风险。我们在K. Magontis等人(2001)的QsNet网络上说明了我们的方法,并提供了一种提高高性能网络和集群安全性的方法
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