Decidable By Construction: Design-Time Verification for Trustworthy AI
Houston Haynes

TL;DR
This paper introduces a design-time verification framework for AI models that ensures properties like stability and correctness are verified before training, reducing overhead and increasing reliability.
Contribution
It presents a novel algebraic framework combining type systems, hypergraph inference, and domain models to verify AI properties at design time with polynomial-time decidability.
Findings
Properties are expressible as constraints over finitely generated abelian groups.
The framework composes prior results to enable verification before training.
It eliminates runtime overhead associated with reliability checks.
Abstract
A prevailing assumption in machine learning is that model correctness must be enforced after the fact. We observe that the properties determining whether an AI model is numerically stable, computationally correct, or consistent with a physical domain do not necessarily demand post hoc enforcement. They can be verified at design time, before training begins, at marginal computational cost, with particular relevance to models deployed in high-leverage decision support and scientifically constrained settings. These properties share a specific algebraic structure: they are expressible as constraints over finitely generated abelian groups , where inference is decidable in polynomial time and the principal type is unique. A framework built on this observation composes three prior results (arXiv:2603.16437, arXiv:2603.17627, arXiv:2603.18104): a dimensional type system carrying…
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