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Comparative Study of Searching Algorithms for Databases and Present New Idea For Better Searching

Saeid Zoghi, Morteza Zahedi

Abstract


Meta-heuristics encompass a very wide range of algorithms, all having very different underlying principles. But all these algorithms are stochastic in nature. Big data is an emerging field. Big data has some of its own problem, some of them being the optimization problems. This paper gives a brief glimpse of Meta-heuristics and its algorithm, big data and its corresponding fields. In the last section we also explain how these algorithms can be incorporated with big data.

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DOI: https://doi.org/10.37628/jeset.v1i2.341

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