Description: The Quasi-Temporal Generative Model is an innovative approach in the field of generative models that integrates the temporal dimension into data generation. Unlike traditional generative models, which typically generate data statically, this model considers how data can evolve over time, allowing for a richer and more dynamic representation of information. This type of model is particularly relevant in contexts where temporality is a critical factor, such as in time series prediction, sequential data generation, or simulating processes that depend on time. The main characteristics of Quasi-Temporal Generative Models include the ability to capture temporal patterns, flexibility in generating data at different moments, and the capability to model complex interactions between variables over time. This integration of temporality not only enhances the quality of generated data but also opens new opportunities for applications in various fields, such as economics, health, and artificial intelligence, where understanding the temporal evolution of data is essential for informed decision-making.