Biomedical Data Mining for Information Retrieval. Группа авторов. Читать онлайн. Newlib. NEWLIB.NET

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      1 *Corresponding author: [email protected]

      2

      Artificial Intelligence in Bioinformatics

       V. Samuel Raj, Anjali Priyadarshini*, Manoj Kumar Yadav, Ramendra Pati Pandey, Archana Gupta and Arpana Vibhuti

       SRM University, Delhi-NCR, Rajiv Gandhi Education City, Sonepat, India

       Abstract

      Artificial intelligence tries to replace human intelligence with machine intelligence to solve diverse biological problems. Recent developments in Artificial Intelligence (AI) are set to play a very essential role in the bioinformatics domain. Machine learning and deep learning, the emerging fields with respect to biological science have created a lot of excitement as research communities want to harness their robustness in the field of biomedical and health-informatics. In this book chapter,