Description: The Utility-Driven Generative Model is an innovative approach in the field of artificial intelligence and machine learning that focuses on generating data based on specific objectives that maximize utility. Unlike traditional generative models, which may create data without a clear purpose, this model is oriented towards producing outcomes that are directly applicable and beneficial for concrete tasks. This means that the model not only generates data but also evaluates its relevance and effectiveness based on predefined criteria. Key characteristics of this model include its ability to adapt to different contexts and its focus on optimizing results, making it especially useful in applications where the quality and applicability of the generated data are crucial. The relevance of this model lies in its potential to enhance decision-making across various fields, from scientific research to product development, by providing data that is not only creative but also aligned with specific strategic objectives.