Year: 2017 | Month: June | Volume 5 | Issue 1

Ad-Hoc Data Processing and its Relation with Cloud Computing in Finance Sector


DOI:10.5958/2322-0465.2017.00003.X

Abstract:

Ad-hoc data processing has cloven to be a laborious illustration for Internet companies who process large quantities of unstructured data. However, the accuracy of cloud-based computing, where storage are outsourced to multiple third-parties across the world, expounded large gathered of highly distributed and evermore detonates data. Our secretion combines the power and ingeniousness of the MapReduce abstraction with a wide-scale of distributed stream processor. While our incremental MapReduce operators avoid data re-processing, the stream processor manages the allocation and anatomical data flow of the operators across the large volume of area. We display a distributed web indexing engine against which users can dedicate and spread continuous MapReduce jobs. An integration element illustrates both the incremental indexing and index searches in tangible time. I also discuss the factors that make cloud computing a striking option for financial services firm, argue the advantages of cloud computing by providing some examples of assumption by financial services firms, and provide our aspects on the ideal types of financial services systems that should be moved to a cloud



© This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited





Print This Article Email This Article to Your Friend

International Journal of Applied Science & Engineering(IJASE)| Printed by New Delhi Publishers

18447611 - Visitors since December 11, 2019