A Review on Contribution of Big data over social media
Keywords:
Big data, volumeAbstract
The phenomenon of Big Data refers to the exponential growth in the volume of data available in digital form as well as in business on the internet. This is a set of technologies and algorithms to sort in real time a considerable amount of data on the Web, and to identify more subtle user behavior. Each individual involved in this phenomenon by dispersing data on their actions accumulated by social networks, applications, mobile or connected objects. The increment in information accumulation over the socialnetwork has increment from a modest KB to PB. This data collection has no positive mass for memory requestforstorage. The current graphs from various sites showgreat variations for data collection. So we can't stick to one particular technique to resolve the data storage issue. We need to compress on various level. In this paper, I am clarifying different progressing pattern for Big-data handling over the Social networks.
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