Adaptive Domain Models: Bayesian Evolution, Warm Rotation, and Principled Training for Geometric and Neuromorphic AI
arXiv cs.AI / 3/20/2026
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Key Points
- The paper proposes an alternative AI training architecture grounded in the Dimensional Type System and Deterministic Memory Management, the Program Hypergraph, and the b-posit standard to enable verifiable gradient handling and memory-efficient training across hardware targets.
- It claims depth-independent training memory bounded to roughly twice the inference footprint, with grade-preserving weight updates and exact gradient accumulation applicable to both conventional loss-based models and spike-timing-dependent neuromorphic models.
- The work introduces Bayesian distillation to extract latent priors from general-purpose models to bootstrap domain-specific training in data-scarce regimes.
- For deployment, it presents warm rotation, a pattern allowing updated models to transition into active inference without service interruption, verified by PHG certificates and signed version records, resulting in smaller, more precise, continuously adaptive domain-specific AI systems that can initialize from existing models.
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