NIM: Scalable Distributed Stream Process System on Mobile Network Data

The amount of 3G MBB data has grown from 15 to 20 times in the past two years. Thus, real-time processing of these data is becoming increasingly necessary. The overhead of storage and file transfer to HDFS, delay in processing, and etc make off-line analysis inefficient. Analysis of these datasets are non-trivial, examples include personal recommendation, anomaly detection, and fault diagnosis. We describe NIM - Network Intelligence Miner, which is a scalable and elastic streaming solution that analyzes MBB statistics and traffic patterns in real-time, and provides information for real-time decision making. The design and the unique features (e.g., balanced data grouping, aging strategy) of NIM help not only the network data analysis tasks but also other applications like Intelligent Transportation System (ITS), etc.

[1]  Tim Edwards,et al.  Microscopic traffic simulation tool for Intelligent Transportation Systems , 2012, 2012 15th International IEEE Conference on Intelligent Transportation Systems.

[2]  Leonardo Neumeyer,et al.  S4: Distributed Stream Computing Platform , 2010, 2010 IEEE International Conference on Data Mining Workshops.

[3]  Vedat Topuz Hourly Traffic Flow Prediction Using Different ANN Models , 2010 .

[4]  Claudio Soriente,et al.  StreamCloud: An Elastic and Scalable Data Streaming System , 2012, IEEE Transactions on Parallel and Distributed Systems.

[5]  Li Qian,et al.  Characterization of 3G control-plane signaling overhead from a data-plane perspective , 2012, MSWiM '12.

[6]  HyunJu Kim,et al.  Abnormal traffic detection and its implementation , 2005, The 7th International Conference on Advanced Communication Technology, 2005, ICACT 2005..

[7]  Mischa Schwartz Network management and control issues in multimedia wireless networks , 1995, IEEE Wirel. Commun..

[8]  John C. S. Lui,et al.  A Panoramic View of 3G Data/Control-Plane Traffic: Mobile Device Perspective , 2012, Networking.

[9]  Van Jacobson,et al.  Congestion avoidance and control , 1988, SIGCOMM '88.