Author:
Jadhav N. R.,Bhutada Sunil,Sagavkar S. R.,Pawar Rohit,Kanwade Archana Bajirao,Mange Purva
Abstract
The Integrating AI into pharmaceutical production processes represents a paradigm change for the pharmaceutical sector. This article examines the role of AI in pharmaceutical production, focusing on its potential to improve productivity, cut costs, and guarantee the highest standards of product quality and safety in quality control and process optimization. AI technologies, including machine learning, computer vision, and natural language processing, are increasingly being employed to analyze large volumes of data generated throughout the pharmaceutical manufacturing lifecycle. Risks related to production anomalies can be reduced and regulatory compliance can be ensured with the help of these smart systems’ real-time monitoring, early identification of deviations, and predictive maintenance. AI-driven technologies are revolutionizing quality control processes by allowing for the automated screening of pharmaceutical items at lightning speeds and with pinpoint accuracy. Better product quality and fewer cases of batch rejection are the results of AI systems’ superiority over conventional approaches for detecting tiny faults, ensuring uniformity, and identifying potential contamination. In addition, AI is improving manufacturing processes by analyzing large data sets for trends, tweaking settings, and maximizing output. Pharmaceutical companies save money as a result of streamlined production processes, shorter cycle times, and better resource utilization.