Agentic World Modeling for 6G: Near-Real-Time Generative State-Space Reasoning
Farhad Rezazadeh, Hatim Chergui, Merouane Debbah, Houbing Song, Dusit Niyato, and Lingjia Liu

TL;DR
This paper introduces a generative world model for 6G network control that enables real-time scenario simulation, uncertainty modeling, and decision-making, improving accuracy and efficiency over existing methods.
Contribution
It presents a novel agentic world modeling framework with causal, action-conditioned generative state space and an MPC-based planner for 6G network management.
Findings
Reduces MAE by 1.69% with fewer parameters
Achieves 35-80% lower RMSE than baselines
Enables fast, accurate rare-event simulation
Abstract
We argue that sixth-generation (6G) intelligence is not fluent token prediction but the capacity to imagine and choose -- to simulate future scenarios, weigh trade-offs, and act with calibrated uncertainty. We reframe open radio access network (O-RAN) near-real-time (Near-RT) control via counterfactual dynamics and a world modeling (WM) paradigm that learns an action-conditioned generative state space. This enables quantitative "what-if" forecasting beyond large language models (LLMs) as the primary modeling primitive. Actions such as physical resource blocks (PRBs) are treated as first-class control inputs in a causal world model, and both aleatoric and epistemic uncertainty are modeled for prediction and what-if analysis. An agentic, model predictive control (MPC)-based cross-entropy method (CEM) planner operates over short horizons, using prior-mean rollouts within data-driven PRB…
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Taxonomy
TopicsAge of Information Optimization · Advanced MIMO Systems Optimization · Software-Defined Networks and 5G
