Date of Publication :13th February 2018
Abstract: In this age of technological and advanced world big data is prominent as a world new currency. The term big data is not a framework, language and Technology. Actually Big data is nothing but a problem statement. In the current era number of IOT enable devices is using data in huge amount. The data is coming from different datasets at an enormous amount. As data is increasing exponentially every year, the traditional system to store and process the data become incapable to handle it. The existing technologies are not capable to handle the big data. In this digital world, the data is generated automatically by the online interactions of big data applications. The Big data is used in the evaluation of emerging form of information. In the last two years data is growing at an enormous speed exponentially as compare to last twenty years. In this current era human life is totally dependable on IOT. This paper presents the overall changes in big data analytics evaluation growth in the recent years. The innovations in the technology and greater affordability of digital devices with internet made a new world of data are called big data. The data captured by enterprises such ad rise of IOT and multimedia has produce an overwhelming of data in either structured or un-structured format. It is a fact that data that is too big to process is also too big to transfer anywhere. So it is just an analytical program which needs to be moved (not the data) and this is only possible with cloud computing.
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