面向算力网络的跨域数据管理方法
doaj(2024)
中国人民大学大型科学仪器共享平台
Abstract
跨域算力网络希望整合多个算力中心的计算和数据资源,但现有的方案对跨域文件和数据管理关注不够。提出了一种轻量级的跨域算力网络数据管理方案:通过文件系统协议转换,接入远程算力中心的并行文件系统存储资源;算力中心内部的存储资源作为一种补充,应对高IOPS应用;通过容器绑定技术,将远程存储挂载并绑定到指定目录。基于该方案的原型系统已经在高校校级计算平台部署运行。实测数据和用户体验显示,该方案能够满足常见高性能计算应用需求。
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Key words
computing power network,parallel file system,data management,heterogeneous storage resource
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