Simplifying Big Data through Event Chain Manager

Big data is mainly characterized by the large volume, complex, growing datasets with multiple autonomous resources. With the fast development in storage and networking area, the reliability of big data has increased. As now a days, big data is used in many engineering and science domains especially in physical and biological science. This paper presents a concept of viewing the big data as a collection of the events and how to handle the advantage given by this view

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