hypergenerering
Hypergenerering is a term used in discussions of generative artificial intelligence to describe the practice or phenomenon of producing an extremely large quantity of outputs from a generative model. The concept focuses on scale and variety, with aims such as expanding coverage of possible ideas, creating diverse training data, or stress-testing systems against unexpected inputs. The term is not universally standardized and appears mainly in industry commentary and some research discussions, where it may overlap with data augmentation, exploration in reinforcement learning, and automated content generation.
In practice, hypergenerering can be implemented through a combination of prompts and decoding settings that encourage
Applications include synthetic data creation for training or evaluation, rapid prototyping of text, dialogue, or code,
See also: Generative AI, data augmentation, synthetic data, prompt engineering.