ARYA: A Physics-Constrained Composable & Deterministic World Model Architecture

arXiv cs.AI / 2026/3/24

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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.”

Abstract

This paper presents ARYA, a composable, physics-constrained, deterministic world model architecture built on five foundational principles: nano models, composability, causal reasoning, determinism, and architectural AI safety. We demonstrate that ARYA satisfies all canonical world model requirements, including state representation, dynamic prediction, causal and physical awareness, temporal consistency, generalization, learnability, and planning and control. Unlike monolithic foundation models, the ARYA foundation model implements these capabilities through a hierarchical system-of-system-of-systems of specialized nano models, orchestrated by AARA (ARYA Autonomous Research Agent), an always-on cognitive daemon that executes a continuous sense-decide-act-learn loop. The nano model architecture provides linear scaling, sparse activation, selective untraining, and sub-20-second training cycles, resolving the traditional tension between capability and computational efficiency. A central contribution is the Unfireable Safety Kernel: an architecturally immutable safety boundary that cannot be disabled or circumvented by any system component, including its own self-improvement engine. This is not a social or ethical alignment statement; it is a technical framework ensuring human control persists as autonomy increases. Safety is an architectural constraint governing every operation, not a policy layer applied after the fact. We present formal alignment between ARYA's architecture and canonical world model requirements, and report summarizing its state-of-the-art performance across 6 of 9 competitive benchmarks head-to-head with GPT-5.2, Opus 4.6, and V-JEPA-2. All with zero neural network parameters, across seven active industry domain nodes spanning aerospace, pharma manufacturing, oil and gas, smart cities, biotech, defense, and medical devices.