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Recent Advances of Deep Learning in Bioinformatics

Souradipto Choudhuri

Abstract


Deep Learning (DL) is a new term in the current field of data science. DL works by imitating the human brain. By a set of neural networks (NN), DL makes its decision. If the logical implementation is good enough, it can pretty much do anything. But DL is mainly used in data analytics. In this paper, we will discuss DL, NN, and their application in the current field of bioinformatics. In the latter part of the paper, we will see an implementation of ML for finding if a person is diabetic, based on some attributes.


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