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The Era of Artificial Intelligence in Pharmaceutical Industries - A Review


Affiliations
1 Sagar Institute of Research and Technology - Pharmacy, Bhopal, MP., India
2 School of Pharmaceutical Science, SAGE University, Indore, M.P., India
     

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As a growing sector, the Era of Artificial Intelligence, Machine Learning and Data Science in the Pharmaceutical Industry contributes in the drug discovery process, giving emphasis on how new technologies have improved effectiveness. As in the current scenario artificial intelligence including machine learning may be considered the future for a wide range of disciplines and industries specially the pharmaceutical industry. As we know today pharmaceutical industries producing a single approved drug cost the company millions with many years of rigorous testing prior to its approval, reducing costs and time is of high interest. The involvement of Artificial Intelligence will be useful to the pharmaceutical industry and also be of interest to anyone doing research in chemical biology, computational chemistry, medicinal chemistry and bioinformatics.

Keywords

Artificial Intelligence, Pharmaceutical, Machine learning, Research, Chemistry.
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  • The Era of Artificial Intelligence in Pharmaceutical Industries - A Review

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Authors

Praveen Tahilani
Sagar Institute of Research and Technology - Pharmacy, Bhopal, MP., India
Hemant Swami
School of Pharmaceutical Science, SAGE University, Indore, M.P., India
Gaurav Goyanar
School of Pharmaceutical Science, SAGE University, Indore, M.P., India
Shivani Tiwari
Sagar Institute of Research and Technology - Pharmacy, Bhopal, MP., India

Abstract


As a growing sector, the Era of Artificial Intelligence, Machine Learning and Data Science in the Pharmaceutical Industry contributes in the drug discovery process, giving emphasis on how new technologies have improved effectiveness. As in the current scenario artificial intelligence including machine learning may be considered the future for a wide range of disciplines and industries specially the pharmaceutical industry. As we know today pharmaceutical industries producing a single approved drug cost the company millions with many years of rigorous testing prior to its approval, reducing costs and time is of high interest. The involvement of Artificial Intelligence will be useful to the pharmaceutical industry and also be of interest to anyone doing research in chemical biology, computational chemistry, medicinal chemistry and bioinformatics.

Keywords


Artificial Intelligence, Pharmaceutical, Machine learning, Research, Chemistry.

References