modellekig
Modellekig is a term used in theoretical discussions of model integration in data science, describing a modular framework for combining multiple predictive models into a single, coherent system. The concept emphasizes interoperability among components and the reusability of submodels, rather than a single end-to-end algorithm.
Architecture and principles: A modellekig system typically comprises four layers: data processing, a model layer with
Origins and use: The term does not refer to a specific product or standard; it appears in
Evaluation and limitations: Critics caution that modellekig can introduce complexity, risk of information leakage across components,
Relation to related ideas: It is related to ensemble learning, modular AI, and mixture-of-experts approaches, but