The increasing decentralization of data processing across the computing continuum poses significant challenges for traditional storage infrastructures, which must now operate seamlessly across heterogeneous, geographically distributed environments. Wide-area storage systems address this need by providing a unified data layer that spans multiple physical locations; however, their management becomes increasingly complex as they evolve dynamically in response to workload, infrastructure, and policy changes. This paper addresses the malleability problem in wide-area storage systems, which refers to a system's ability to continuously adapt to changing operational conditions. We propose a knowledge-driven approach based on Knowledge Graphs (KGs) to enable adaptive and intelligent management. The proposed approach models both data and infrastructure layers through a semantic ontology, supports malleability analysis using graph-based metrics, and enables self-adaptive workflows for system reconfiguration. The approach is validated through its integration into DynoStore, a wide-area storage system that manages workloads across multiple locations. Experimental results demonstrate that the KG-based workflow effectively identifies data popularity and infrastructure imbalance, guiding reconfiguration decisions that improve load distribution and resource utilization.
On modeling knowledge graphs for representing and explaining wide-area distributed storage system
Morabito, Gabriele;Fazio, Maria;
2026-01-01
Abstract
The increasing decentralization of data processing across the computing continuum poses significant challenges for traditional storage infrastructures, which must now operate seamlessly across heterogeneous, geographically distributed environments. Wide-area storage systems address this need by providing a unified data layer that spans multiple physical locations; however, their management becomes increasingly complex as they evolve dynamically in response to workload, infrastructure, and policy changes. This paper addresses the malleability problem in wide-area storage systems, which refers to a system's ability to continuously adapt to changing operational conditions. We propose a knowledge-driven approach based on Knowledge Graphs (KGs) to enable adaptive and intelligent management. The proposed approach models both data and infrastructure layers through a semantic ontology, supports malleability analysis using graph-based metrics, and enables self-adaptive workflows for system reconfiguration. The approach is validated through its integration into DynoStore, a wide-area storage system that manages workloads across multiple locations. Experimental results demonstrate that the KG-based workflow effectively identifies data popularity and infrastructure imbalance, guiding reconfiguration decisions that improve load distribution and resource utilization.Pubblicazioni consigliate
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