Description: Operationalization is the process of making a model or system operational and usable in a production environment. This concept is fundamental in various disciplines, including data science, artificial intelligence, and statistics. It involves transforming theories, models, or algorithms into practical applications that can be implemented and used by end-users. Operationalization refers not only to the technical implementation but also to the integration of these models into existing workflows, ensuring they are accessible and useful for decision-making. This process includes model validation, performance monitoring, and adaptation to changes in data or the operational environment. The ability to effectively operationalize models is crucial for maximizing the value of data and technology investments, enabling organizations to leverage their analytical and artificial intelligence resources.