Streaming Machine Learning for Supporting Data Prefetching in Modern Data Storage Systems

Edson Ramiro Lucas Filho, Lun Yang, Kebo Fu, H. Herodotou
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Abstract

Modern data storage systems optimize data access by distributing data across multiple storage tiers and caches, based on numerous tiering and caching policies. The policies' decisions, and in particular the ones related to data prefetching, can severely impact the performance of the entire storage system. In recent years, various machine learning algorithms have been employed to model access patterns in complex data storage workloads. Even though data storage systems handle a constantly changing stream of file requests, current approaches continue to train their models offline in a batch-based approach. In this paper, we investigate the use of streaming machine learning to support data prefetching decisions in data storage systems as it introduces various advantages such as high training efficiency, high prediction accuracy, and high adaptability to changing workload patterns. After extracting a representative set of features in an online fashion, streaming machine learning models can be trained and tested while the system is running. To validate our methodology, we present one streaming classification model to predict the next file offset to be read in a file. We assess the model's performance using production traces provided by Huawei Technologies and demonstrate that streaming machine learning is a feasible approach with low memory consumption and minimal training delay, facilitating accurate predictions in real-time.
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现代数据存储系统中支持数据预取的流机器学习
现代数据存储系统基于多种分级和缓存策略,通过将数据分布在多个存储层和缓存中来优化数据访问。策略的决策,特别是与数据预取相关的决策,可能会严重影响整个存储系统的性能。近年来,各种机器学习算法被用于复杂数据存储工作负载中的访问模式建模。即使数据存储系统处理不断变化的文件请求流,当前的方法仍然是基于批处理的方法离线训练它们的模型。在本文中,我们研究了使用流机器学习来支持数据存储系统中的数据预取决策,因为它引入了各种优势,如高训练效率、高预测精度和对不断变化的工作负载模式的高适应性。在以在线方式提取一组具有代表性的特征后,流机器学习模型可以在系统运行时进行训练和测试。为了验证我们的方法,我们提出了一个流分类模型来预测文件中要读取的下一个文件偏移量。我们使用华为技术公司提供的生产轨迹来评估模型的性能,并证明流机器学习是一种可行的方法,具有低内存消耗和最小的训练延迟,有助于实时准确预测。
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Towards Practical Machine Learning Frameworks for Performance Diagnostics in Supercomputers Anomaly Detection in Scientific Datasets using Sparse Representation Streaming Machine Learning for Supporting Data Prefetching in Modern Data Storage Systems Proceedings of the First Workshop on AI for Systems
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