Liquid Interfaces: A Dynamic Ontology for the Interoperability of Autonomous Systems
- URL: http://arxiv.org/abs/2601.21993v1
- Date: Thu, 29 Jan 2026 17:04:13 GMT
- Title: Liquid Interfaces: A Dynamic Ontology for the Interoperability of Autonomous Systems
- Authors: Dhiogo de Sá, Carlos Schmiedel, Carlos Pereira Lopes,
- Abstract summary: Liquid Interfaces is a coordination paradigm in which interfaces are not persistent technical artifacts.<n>Liquid Interface Protocol governs intention-driven interaction, negotiated execution, and enforce ephemerality under semantic uncertainty.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Contemporary software architectures struggle to support autonomous agents whose reasoning is adaptive, probabilistic, and context-dependent, while system integration remains dominated by static interfaces and deterministic contracts. This paper introduces Liquid Interfaces, a coordination paradigm in which interfaces are not persistent technical artifacts, but ephemeral relational events that emerge through intention articulation and semantic negotiation at runtime.We formalize this model and present the Liquid Interface Protocol (LIP),which governs intention-driven interaction, negotiated execution, and enforce ephemerality under semantic uncertainty. We further discuss the governance implications of this approach and describe a reference architecture that demonstrates practical feasibility. Liquid Interfaces provide a principled foundation for adaptive coordination in agent-based systems
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