Massive data processing for effective trustworthiness modeling

This chapter focuses on the issue of handling user trustworthiness information, which involves large amounts of ill-structured data generated by various systems during learning activities. Processing this information is computationally costly, especially if required in real time. The chapter discusses and proposes a parallel processing approach for building relevant information modeling trustworthiness levels for e-Learning to support various intensive learning activities even in real time. In particular, the methods and techniques presented here involve the step of data processing within the knowledge management process in trustworthiness and security methodology (TSM) presented in Section 4.3.2 .

[1]  Borko Furht,et al.  Handbook of Cloud Computing , 2010 .

[2]  Luis Rodero-Merino,et al.  A break in the clouds: towards a cloud definition , 2008, CCRV.

[3]  Sanjay Ghemawat,et al.  MapReduce: Simplified Data Processing on Large Clusters , 2004, OSDI.

[4]  Sol Ji Kang,et al.  Performance Comparison of OpenMP, MPI, and MapReduce in Practical Problems , 2015, Adv. Multim..

[5]  Wolfgang Appelt What groupware functionality do users really use? Analysis of the usage of the BSCW system , 2001, Proceedings Ninth Euromicro Workshop on Parallel and Distributed Processing.

[6]  Roy T. Fielding,et al.  The Apache HTTP Server Project , 1997, IEEE Internet Comput..

[7]  Alexander S. Szalay,et al.  Data-Intensive Computing in the 21st Century , 2008, Computer.

[8]  Alfonso Niño,et al.  A Survey of Parallel Programming Models and Tools in the Multi and Many-core Era , 2022 .

[9]  H. James Hoover,et al.  Parallel computation: models and complexity issues , 2010 .

[10]  Fatos Xhafa,et al.  A Grid-Aware Implementation for Providing Effective Feedback to On-Line Learning Groups , 2005, OTM Workshops.

[11]  Fatos Xhafa,et al.  Distributed-based massive processing of activity logs for efficient user modeling in a Virtual Campus , 2013, Cluster Computing.

[12]  Fatos Xhafa,et al.  A parallel grid-based implementation for real-time processing of event log data of collaborative applications , 2010, Int. J. Web Grid Serv..

[13]  Samuel Williams,et al.  The Landscape of Parallel Computing Research: A View from Berkeley , 2006 .

[14]  Miroslaw Malek,et al.  Comprehensive logfiles for autonomic systems , 2004, 18th International Parallel and Distributed Processing Symposium, 2004. Proceedings..

[15]  Fatos Xhafa,et al.  A Grid Approach to Efficiently Embed Information and Knowledge about Group Activity into Collaborative Learning Applications , 2008, The Learning Grid Handbook.

[16]  Timothy Roscoe The PlanetLab Platform , 2005, Peer-to-Peer Systems and Applications.

[17]  J. Wenny Rahayu,et al.  Frontiers in intelligent cloud services , 2015, World Wide Web.

[18]  Ciprian Dobre,et al.  Parallel Programming Paradigms and Frameworks in Big Data Era , 2013, International Journal of Parallel Programming.

[19]  David B. Skillicorn,et al.  Models and languages for parallel computation , 1998, CSUR.

[20]  Sergei Vassilvitskii,et al.  A model of computation for MapReduce , 2010, SODA '10.

[21]  Tom White,et al.  Hadoop: The Definitive Guide , 2009 .