International Workshop on Collaborative Big Data

Research Article

Biologically-inspired Network “Memory” for Smarter Networking

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  • @INPROCEEDINGS{10.4108/icst.collaboratecom.2012.250508,
        author={Bassem Mokhtar and Mohamed Eltoweissy},
        title={Biologically-inspired Network “Memory” for Smarter Networking},
        proceedings={International Workshop on Collaborative Big Data},
        publisher={IEEE},
        proceedings_a={C-BIG},
        year={2012},
        month={12},
        keywords={network semantics data virtualization cloud data storage distributed systems bio-inspired design},
        doi={10.4108/icst.collaboratecom.2012.250508}
    }
    
  • Bassem Mokhtar
    Mohamed Eltoweissy
    Year: 2012
    Biologically-inspired Network “Memory” for Smarter Networking
    C-BIG
    ICST
    DOI: 10.4108/icst.collaboratecom.2012.250508
Bassem Mokhtar1,*, Mohamed Eltoweissy1
  • 1: Virginia Tech
*Contact email: bmokhtar@vt.edu

Abstract

Emerging technologies such as the Internet of Things generate huge amounts of network traffic and data which lead to significant challenges in a) ensuring availability of resources on-demand and b) recognizing emergent and abnormal behavior. Network traffic data exhibit spatiotemporal patterns. Learning and maintaining the currently elusive rich semantics based on analyzing such patterns would help in mitigating those challenges. In this paper, we propose the concept of a network "memory" (or NetMem) to support smarter data-driven network operations as a foundational component of next generation networks. Guided by the fact that human activities exhibit spatiotemporal data patterns; and the human memory extracts and maintains semantics to enable accordingly learning and predicting new things, we design NetMem to mimic functionalities of that memory. NetMem provides capabilities for semantics management through uniquely integrating data virtualization for homogenizing massive data originating from heterogeneous sources, cloud-like scalable storage, associative rule learning to recognize data patterns, and hidden Markov models for reasoning and extracting semantics clarifying normal/abnormal behavior. NetMem provides associative access to data patterns and relevant derived semantics to enable enhancements in early anomaly detection and more accurate behavior prediction. Preliminary results demonstrate the positive impact of NetMem on various network management operations.