Review and Prospects of Artificial Intelligence Applications in Machine Learning

Review and Prospects of Artificial Intelligence Applications in Machine Learning

Authors

  • PAWAN WHIG

Abstract

Machine learning is one of the most interesting new Artificial Intelligence technologies. Many programmes that we use on a daily basis involve learning algorithms. When an online search engine, such as Google or Bing, is used to search the internet, one of the reasons it works so effectively is that a learning algorithm, such as one built by Google or Microsoft, has learnt how to rank web pages. Machine learning occurs whenever Facebook is used and detects friends' images. Spam filters in email spare users from having to go through mountains of spam email; this is also a learning algorithm. This article provides a quick overview and outlook on the several uses of machine learning.

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Published

2022-01-01

How to Cite

WHIG, P. (2022). Review and Prospects of Artificial Intelligence Applications in Machine Learning. International Scientific Journal for Research, 4(4). Retrieved from https://isjr.co.in/index.php/ISJR/article/view/1

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