A Load-Aware Data Migration Scheme for Distributed Surveillance Video Processing with Hybrid Storage Architecture
2017
The large-scale surveillance video processing workloads are gradually migrated to cloud computing platforms. Meanwhile, the hybrid storage architecture, integrating both HDD and SSD storage devices, is increasingly used in the current cloud platforms. However, the computing and storage capabilities of the nodes are constantly changing, and this requires the delicate design of the data layout strategy for avoiding the serious load skew in the distributed computing nodes with the hybrid storage architecture. In this paper, we propose a Load-Aware Data Migration (LADM) scheme for distributed surveillance video processing with hybrid storage architecture. Specifically, according to the proposed the load estimation model and the storage capacity constraint, the Node-Level Data Migration (NLDM) strategy is used to periodically migrate the appropriate video chunks from the local HDD to the local SSD for improving the node processing performance, and the Cluster-Level Data Migration (CLDM) strategy is used to periodically migrate the appropriate video chunks from the high load nodes to the low load nodes for achieving the overall load balance of cluster. We conduct the extensive experiments based on the distributed surveillance video processing platform we developed, and the experimental results show that the proposed LADM scheme outperforms the current methods.
Keywords:
- Correction
- Source
- Cite
- Save
- Machine Reading By IdeaReader
18
References
4
Citations
NaN
KQI