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Block2Vec: A Deep Learning Strategy on Mining Block Correlations in Storage Systems

机译:Block2VEC:存储系统中挖掘块相关性的深度学习策略

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Block correlations represent the semantic patterns in storage systems. These correlations can be exploited for data caching, pre-fetching, layout optimization, I/O scheduling, etc. In this paper, we introduce Block2Vec, a deep learning based strategy to mine the block correlations in storage systems. The core idea of Block2Vec is twofold. First, it proposes a new way to abstract blocks, which are considered as multi-dimensional vectors instead of traditional block Ids. In this way, we are able to capture similarity between blocks through the distances of their vectors. Second, based on vector representation of blocks, it further trains a deep neural network to learn the best vector assignment for each block. We leverage the recently advanced word embedding technique in natural language processing to efficiently train the neural network. To demonstrate the effectiveness of Block2Vec, we design a demonstrative block prediction algorithm based on mined correlations. Empirical comparison based on the simulation of real system traces shows that Block2Vec is capable of mining block-level correlations efficiently and accurately. This research and trial show that the deep learning strategy is a promising direction in optimizing storage system performance.
机译:块相关代表存储系统中的语义模式。这些相关性可以用于数据缓存,预取,布局优化,I / O调度等。在本文中,我们引入Block2VEC,基于深度学习的策略来挖掘存储系统中的块相关性。 Block2Vec的核心概念是双重的。首先,它提出了一种向抽象块的新方法,被认为是多维向量而不是传统的块ID。通过这种方式,我们能够通过其向量的距离捕获块之间的相似性。其次,基于块的矢量表示,它进一步列举了深度神经网络,以学习每个块的最佳矢量分配。我们利用自然语言处理中最近先进的单词嵌入技术,以有效地训练神经网络。为了证明Block2VEC的有效性,我们设计了一种基于所挖掘相关性的演示预测算法。基于真实系统迹线的仿真的经验比较显示,Block2VEC能够有效准确地挖掘块级相关性。这项研究和试验表明,深度学习策略在优化存储系统性能方面是一个有希望的方向。

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