REVOLUTIONIZING CHEMISTRY WITH ARTIFICIAL INTELLIGENCE: ADVANCEMENTS IN RESEARCH AND APPLICATIONS
Keywords:
Artificial Intelligence, chemistry, prediction and innovationAbstract
Artificial Intelligence (AI) is revolutionizing the field of chemistry by accelerating discovery, optimizing processes, and enabling complex analyses. This paper explores key applications of AI in chemistry, including molecular design, reaction prediction, drug discovery, and materials science. Emphasis is placed on recent advancements, challenges, and future prospects. By integrating AI with experimental and theoretical chemistry, researchers are pioneering a new era of efficiency and innovation.
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