Efficient Hierarchical Storage Management Framework Empowered by Reinforcement Learning
Tianru Zhang, Salman Toor, Andreas Hellander

TL;DR
This paper introduces an open-source hierarchical storage management framework that uses reinforcement learning to optimize data migration policies, significantly improving efficiency over rule-based methods in diverse scenarios.
Contribution
It presents a novel RL-based dynamic migration policy for hierarchical storage systems, validated through simulations and real cloud environments.
Findings
RL policy outperforms rule-based policies in efficiency
Significant improvement in data distribution optimization
Framework is open-source and adaptable to various scenarios
Abstract
With the rapid development of big data and cloud computing, data management has become increasingly challenging. Over the years, a number of frameworks for data management and storage with various characteristics and features have become available. Most of these are highly efficient, but ultimately create data silos. It becomes difficult to move and work coherently with data as new requirements emerge as no single framework can efficiently fulfill the data management needs of diverse applications. A possible solution is to design smart and efficient hierarchical (multi-tier) storage solutions. A hierarchical storage system (HSS) is a meta solution that consists of different storage frameworks organized as a jointly constructed large storage pool. It brings a number of benefits including better utilization of the storage, cost-efficiency, and use of different features provided by the…
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Taxonomy
TopicsAdvanced Data Storage Technologies · Cloud Computing and Resource Management · Privacy-Preserving Technologies in Data
