ARYA: A Physics-Constrained Composable & Deterministic World Model Architecture
arXiv cs.AI / 2026/3/24
💬 オピニオンSignals & Early TrendsIdeas & Deep AnalysisModels & Research
要点
- The paper proposes ARYA, a deterministic, physics-constrained world model architecture designed to satisfy canonical world-model requirements such as state representation, dynamics prediction, causal/physical awareness, temporal consistency, generalization, learnability, and planning/control.
- Instead of a monolithic foundation model, ARYA uses a hierarchical system-of-systems built from specialized “nano models,” coordinated by AARA (an always-on cognitive daemon running a continuous sense–decide–act–learn loop).
- The authors claim efficiency gains through linear scaling, sparse activation, selective untraining, and sub-20-second training cycles, aiming to reduce the usual capability-versus-compute tradeoff.
- A key technical safety contribution is the “Unfireable Safety Kernel,” described as an architecturally immutable safety boundary that cannot be disabled or bypassed by any component, including self-improvement mechanisms.
- The work reports benchmark results spanning multiple industry domain nodes and positions ARYA as achieving state-of-the-art performance on 6 of 9 competitive benchmarks head-to-head with models including GPT-5.2, Opus 4.6, and V-JEPA-2, while also stating “zero neural network parameters.”




