Revolutionizing Pharma: Unveiling the AI and LLM Trends in the
Pharmaceutical Industry
- URL: http://arxiv.org/abs/2401.10273v2
- Date: Mon, 22 Jan 2024 04:47:20 GMT
- Title: Revolutionizing Pharma: Unveiling the AI and LLM Trends in the
Pharmaceutical Industry
- Authors: Yu Han, Jingwen Tao
- Abstract summary: The paper categorically examines AI's role in each sector.
Special emphasis is placed on cutting-edge AI technologies like machine learning algorithms.
The paper highlights the transformative potential of AI in reshaping the pharmaceutical industry's future.
- Score: 4.566863428278876
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This document offers a critical overview of the emerging trends and
significant advancements in artificial intelligence (AI) within the
pharmaceutical industry. Detailing its application across key operational
areas, including research and development, animal testing, clinical trials,
hospital clinical stages, production, regulatory affairs, quality control and
other supporting areas, the paper categorically examines AI's role in each
sector. Special emphasis is placed on cutting-edge AI technologies like machine
learning algorithms and their contributions to various aspects of
pharmaceutical operations. Through this comprehensive analysis, the paper
highlights the transformative potential of AI in reshaping the pharmaceutical
industry's future.
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