This paper presents a layered architecture for execution control in Relationship-Aware AI systems. Conventional AI architectures implicitly assume that inference should always execute once input is received. This paper shows that such response-centric architectures fundamentally lack a mechanism for determining whether execution should occur at all. To address this limitation, the paper introduces a relationship layer — a pre-inference architectural layer governing execution validity under relational conditions. The framework establishes:- relationship-based execution control,- relationally conditioned execution gating,- execution eligibility determination,- relationship-conditioned input construction,- and non-intervention as a valid architectural outcome. Execution decisions are conditionally determined through relational state, relational dynamics, temporal structure, and interaction history, producing execution outcomes including:- Execute- Delay- Delegate- Do Not Act Crucially, inference is not a default operation, but a conditionally permitted process governed by relational conditions. The proposed architecture is model-agnostic and operates as a pre-inference execution layer for existing AI systems. This publication serves as a foundational systems architecture paper for the Relationship-Aware AI Research initiative, establishing the relationship layer as the governing structure for execution control in AI systems.
伊東 治己 (Wed,) studied this question.