General Aspect of (Big) Data Migration Methdologies

International Journal of Computer Science and Engineering
© 2014 by SSRG - IJCSE Journal
Volume 1 Issue 9
Year of Publication : 2014
Authors : V.Rathika, Dr.L.Arockiam

pdf
How to Cite?

V.Rathika, Dr.L.Arockiam, "General Aspect of (Big) Data Migration Methdologies," SSRG International Journal of Computer Science and Engineering , vol. 1,  no. 9, pp. 1-5, 2014. Crossref, https://doi.org/10.14445/23488387/IJCSE-V1I9P108

Abstract:

The process of moving vast amount of data from one place to another is called big data migration. This is bundled with number of issues and challenges. It is important when upgrade and relocation of existing systems. It has unique tools, techniques, architectures, algorithms and methodologies. Methodology explains the steps which are followed to do successful migration from source to destination. Businesses are creating significant data management challenges by increasing volumes of data. They should be able to access and organize volumes of data stored in a variety formats. This paper is going to provide important and common aspects of some methodologies.

Keywords:

Big Data, Migration, Methodology, General aspects.

References:

[1] Anuradha Bhatia and Gaurav Vaswani. 2013. Big Data – An Overview. International Journal of Advanced Research in Computer Science and Software Engineering, Volume 2, Issue 8. 
[2] Klaus Haller.2008. Data Migration project management and standard software experiences in analog implementation projects. Proceedings of DW2008 Conference. 
[3] C.Bizer, P.Bonez, M.L.Bordie and O.Erling. 2011. The meaningful use of Big Data : Four Perspective – Four Challenges. SIGMOD, Vol. 40, No.4. 
[4] Philip Russom. 2006. Best Practices in Data Migration. TDWI (Informatica). 
[5] Seagate Recovery Services white paper, “What is Data Migration”, 2013. 
[6] Cisco Data Center. 2011. Cisco Data Center Migration Service. Cisco Public Information. 
[7] Klaus Haller. 2009. Towards the industrialization of data migration: concepts and patterns for standard software implementation projects. Proceedings of CAISE. 
[8] Ch.Sai Krishna Manohar. 2013. A Greener Approach to Cloud Computing using Virtual Migration. International Journal of Advanced Research in Computer Science and Software Engineering, Volume 3, Issue 8. 
[9] Dylan Jones. 2009. Some Common Data Migration risks (and how to avoid them). Data Migration. 
[10] Atul Srivastav. 2010. Data Migration - Case Study. www.enterprise data migration.com. 
[11] Bing Wu, Deirdre Lawless, Jesus Bisbal, Jane Grimson. 1997. Lagacy System Migration: A Legacy Data Migration Engine. 17th International Database Conference. 
[12] Gershon Pick, “Data Migration Concepts and Challenges”, White Paper, 2001. 
[13] Martin Wagner, Tim Wellhausen. 2011. Patterns for Data Migration Projects. www.TNGTECH.com. 
[14]A Dell Technical’s White paper, “Methodologies for Data Migration to Dell Fluid Architecture”. 
[15] An Oracle’s White Paper. 2011. Successful Data Migration. www.oracle.com. 
[16] Kam Woods, Geoffrey Brown. 2008. Migration performance for legacy Data Access. The International Journal of Digital Curation, Issue 2, Volume 3. 
[17] Nasuni’s White Paper. 2012. Bulk Data Migration in the Cloud. www.nasuni.com.