The Function Model: Human-Like Learning Through Streaming Functional Updates
Description
Traditional machine learning systems rely on gradient-based optimization, batch training, and high computational cost. The Function Model, renamed from Morph Model, represents a fundamentally different paradigm, where learning is expressed as localized functional updates, applied instantly and deterministically. This enables continuous adaptation, streaming training, drift-free behavior, and human-like incremental refinement. This paper provides a conceptual overview of the architecture, using simple examples to illustrate patch behavior, inference structure, and stability properties. Implementation details are omitted and available under NDA for organizations evaluating deployment.
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FunctionModel_Simple.pdf
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Additional details
Related works
- Is supplement to
- Publication: 10.5281/zenodo.17786610 (DOI)
Dates
- Updated
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2025-12-19Fixed and clarified delay and skip learning/training