Generative Flow

Description: Generative flow is an innovative method in the field of machine learning that allows for generating samples from a complex distribution by transforming a simple distribution through a series of invertible functions. This approach is based on the idea that by applying a sequence of transformations, one can map a simple distribution, such as a normal distribution, to a more complex distribution that represents real data. The main characteristics of generative flow include its ability to model high-dimensional distributions and its invertible nature, which allows for both data generation and density estimation. This method has become relevant in various contexts, including large language models, where the goal is to generate coherent and relevant text from patterns learned in large volumes of data. Additionally, its flexibility and efficiency make it a valuable tool for multiple applications in artificial intelligence, ranging from image generation to voice synthesis, highlighting its potential in creating original content and enhancing human-computer interaction.

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