We introduce Omniscient Intelligence (OI), a theoretical framework defining the next evolutionary paradigm of machine intelligence beyond the current Artificial Intelligence (AI) epoch. While the prevailing trajectory of AI development progresses through generative, reasoning, and agentic capabilities, we argue that all existing architectures share a single disqualifying structural limitation: they are extrinsically motivated, causally decomposable, stateless systems that operate on statistical association at the first rung of the Pearl Causal Hierarchy. We propose OI as a fundamentally distinct class of intelligence characterised by six necessary and jointly sufficient properties: Intrinsic Free-Energy Minimisation, Irreducible Causal Integration, Multi-Scale Distributed Cognition, a Living Causal Graph with Provenance-Weighted Failure Memory, Native Counterfactual Simulation, and Intrinsically Defined Goal States. We demonstrate formally that no existing architecture, including transformer-based LLMs, world models, agentic systems, or neuro-symbolic hybrids, satisfies all six properties simultaneously. This paper constitutes the first formal articulation of OI as a category distinct from ANI, AGI, and ASI.
neil brahmavar (Wed,) studied this question.