Enabling Transparent Asynchronous I/O using Background Threads

Houjun Tang, Q. Koziol, S. Byna, J. Mainzer, Tonglin Li
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引用次数: 11

Abstract

With scientific applications moving toward exascale levels, an increasing amount of data is being produced and analyzed. Providing efficient data access is crucial to the productivity of the scientific discovery process. Compared to improvements in CPU and network speeds, I/O performance lags far behind, such that moving data across the storage hierarchy can take longer than data generation or analysis. To alleviate this I/O bottleneck, asynchronous read and write operations have been provided by the POSIX and MPI-I/O interfaces and can overlap I/O operations with computation, and thus hide I/O latency. However, these standards lack support for non-data operations such as file open, stat, and close, and their read and write operations require users to both manually manage data dependencies and use low-level byte offsets. This requires significant effort and expertise for applications to utilize. To overcome these issues, we present an asynchronous I/O framework that provides support for all I/O operations and manages data dependencies transparently and automatically. Our prototype asynchronous I/O implementation as an HDF5 VOL connector demonstrates the effectiveness of hiding the I/O cost from the application with low overhead and easy-to-use programming interface.
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使用后台线程启用透明异步I/O
随着科学应用向百亿亿级发展,越来越多的数据被产生和分析。提供有效的数据访问对科学发现过程的生产力至关重要。与CPU和网络速度的改进相比,I/O性能远远落后,因此跨存储层次移动数据可能比数据生成或分析花费的时间更长。为了缓解这种I/O瓶颈,POSIX和MPI-I/O接口提供了异步读写操作,可以将I/O操作与计算重叠,从而隐藏I/O延迟。然而,这些标准缺乏对非数据操作(如文件打开、stat和关闭)的支持,并且它们的读写操作要求用户手动管理数据依赖关系并使用低级字节偏移量。这需要大量的工作和专业知识来供应用程序利用。为了克服这些问题,我们提出了一个异步I/O框架,它为所有I/O操作提供支持,并透明、自动地管理数据依赖关系。我们作为HDF5 VOL连接器的原型异步I/O实现演示了通过低开销和易于使用的编程接口向应用程序隐藏I/O成本的有效性。
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[Copyright notice] Applying Machine Learning to Understand Write Performance of Large-scale Parallel Filesystems Towards Physical Design Management in Storage Systems Profiling Platform Storage Using IO500 and Mistral Active Learning-based Automatic Tuning and Prediction of Parallel I/O Performance
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