Artificial Intelligence and Machine Learning‐Based Manufacturing and Drug Product Marketing
07 Feb 2023
pp 197-231
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TL;DR: In this article , the authors describe how AI and ML can be used in various aspects of pharmaceutical manufacturing and marketing, including product cost, predictive analytics, market segmentation, etc. Hurdles in the way of full-fledged applications of AI ML have also been mentioned.
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Abstract: Artificial Intelligence (AI) and Machine Learning (ML) are the new drivers for the industry 4.0 revolution. Its use is becoming widespread across society. The dawn of AI and ML can also be witnessed in the pharmaceutical industry. The manufacturing sector has been significantly impacted by AI-ML. The ability of ML strategies to predict future events has allowed for the deciphering of complicated patterns in manufacturing patterns. This has opened the avenues for an intelligent decision support system in different manufacturing tasks like intuitive and continual inspection, fault detection, quality enhancement, process improvement, management of supply chain, and much more. ML approaches allow for the development of actionable intelligence to improve productivity without huge change in the required resources. AI and ML also have the potential to revolutionize marketing. It can assist in different aspects of marketing, like product cost, predictive analytics, market segmentation, etc. This chapter describes how AI and ML can be used in various aspects of pharmaceutical manufacturing and marketing. Different tools have been highlighted. Hurdles in the way of full-fledged applications of AI ML have also been mentioned.
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