American Journal of Information Science and Computer Engineering
Articles Information
American Journal of Information Science and Computer Engineering, Vol.1, No.2, Jul. 2015, Pub. Date: Jun. 10, 2015
BIG-Data Challenges: A Review on Existing Solutions
Pages: 38-43 Views: 3189 Downloads: 1931
Authors
[01] Sheikh Muhammad Saqib, Institute of Computing and information Technology, Gomal University, Dera Ismail Khan, Pakistan.
[02] Hamid Masood Khan, Institute of Computing and information Technology, Gomal University, Dera Ismail Khan, Pakistan.
[03] Khalid Mahmood, Institute of Computing and information Technology, Gomal University, Dera Ismail Khan, Pakistan.
[04] Tariq Naeem, Institute of Computing and information Technology, Gomal University, Dera Ismail Khan, Pakistan.
Abstract
Big Data is a new term in today technology era. Data generation rate is turning as well as exceeding from Peta byte to Exa byte. Companies take major decisions emphasizing their Big Data. To take decisions, there is need of management of such data. Although Map Reduce and Hadoop is playing a vital role in management but there are still some challenges to be managed. Normally 3Vs (Volume, Velocity and Variety) has been focused. Besides these 3Vs authors have explored many other challenges related to Big Data and as a result, they provided the description and existing solutions related to each issue. Results would be very fruit full for all those working on Big Data.
Keywords
Big Data, Big Data Challenges, Volume of data, Velocity of data, Variety of Data, Map Reduce and Hadoop
References
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