Title :
An Anomaly Detection Approach for Scale-Out Storage Systems
Author :
Silvestre, Guthemberg ; Sauvanaud, Carla ; Kaaniche, M. ; Kanoun, Karama
Author_Institution :
LAAS, Toulouse, France
Abstract :
Scale-out storage systems (SoSS) have become increasingly important for meeting availability requirements of web services in cloud platforms. To enhance data availability, SoSS rely on a variety of built-in fault-tolerant mechanisms, including replication, redundant network topologies, advanced request scheduling, and other failover techniques. However, performance issues in cloud services still remain one of the main causes of discontentment among their tenants. In this paper, we propose an anomaly detection approach for SoSS that predicts cloud anomalies caused by memory and network faults. To evaluate our prediction model, we built a testbed simulating a virtual data center using VMware. Experimental results confirm that the injected faults are likely to undermine the data availability in SoSS. They suggest that although unsupervised learning has been the most common method for anomaly detection, a supervisedbased implementation of the same model reduces the false positive rate by roughly 10%. Our analysis also points out that probing SoSS-specific monitoring data at the VM-level contributes to improve the anomaly prediction efficiency.
Keywords :
Web services; cloud computing; fault tolerant computing; security of data; storage management; unsupervised learning; virtualisation; SoSS; VMware; Web services; anomaly detection approach; anomaly prediction efficiency; availability requirements; built-in fault-tolerant mechanisms; cloud platforms; cloud services; data availability; failover techniques; faults injection; memory faults; network faults; prediction model; redundant network topologies; replication; request scheduling; scale-out storage systems; unsupervised learning; virtual data center; Availability; Loss measurement; Monitoring; Predictive models; Throughput; Training; Unsupervised learning;
Conference_Titel :
Computer Architecture and High Performance Computing (SBAC-PAD), 2014 IEEE 26th International Symposium on
Conference_Location :
Jussieu
DOI :
10.1109/SBAC-PAD.2014.42