Volume : 11, Issue : 02, February – 2024

Title:

ARTIFICIAL INTELLIGENCE AND ITS ROLE IN PHARMACEUTICAL INDUSTRY.

Authors :

Dr. M. Sri Ramachandra*, Priyadarshini

Abstract :

Artificial intelligence is an area of computer science that deals with ability to Slove problems using symbolic programming. It can help to solve health care issues with large scale applications. It is technology-based system that uses variety of advanced tools & networks to stimulate human intelligence1. It makes use of systems & software, can read and learn from data & to make independent judgement in order to achieve certain goals. AI the ability of a digital computer or computer-controlled robot to perform tasks commonly associated with intelligent beings.
Artificial intelligence use in pharmaceutical technology has increased over the years, and the use of technology can save time and money while providing a better understanding of the relationships between different formulations and processes parameters.
AI in the clinical data management system is widely used to manage the data that is collected during the clinical trials. This system offers various comfortable methods via which the data can be collected, managed and stored easily for further use. As an endpoint, various future challenges and options are considered which give a detailed idea about the growth of clinical data management in the Pharmaceutical Industry.
Keywords: Artificial Intelligence, Innovation, drug design and development, transforming pharma, Global Market.

Cite This Article:

Please cite this article in press Priyadarshini et al., Artificial Intelligence And Its Role In Pharmaceutical Industry, Indo Am. J. P. Sci, 2024; 11 (02).

Number of Downloads : 10

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