Ensuring accuracy and efficiency in packaging and labeling is critical for maintaining product quality, regulatory compliance, and consumer trust. Traditional quality control methods, often reliant on manual inspection and rule-based automation, struggle to address the increasing complexity and scale of modern production lines. Recent advancements in Artificial Intelligence (AI) have introduced transformative solutions that enhance defect detection, label verification, and real-time monitoring in packaging processes. This paper explores the integration of AI-driven methodologies—such as computer vision, machine learning, and natural language processing—for improving quality control in packaging and labeling. Key applications include automated identification of defects, verification of labeling accuracy and compliance, and predictive analytics to mitigate errors before they occur. The study further discusses the benefits, challenges, and future directions of AI adoption in this domain, emphasizing its potential to reduce costs, enhance operational efficiency, and strengthen consumer confidence.
Yevheniia Kovalchuk (Wed,) studied this question.