--- title: Agentic World Model Explorer colorFrom: blue colorTo: purple sdk: gradio sdk_version: 4.36.0 app_file: app.py pinned: false --- # Agentic World Model Explorer An interactive exploration of the "levels x laws" taxonomy from the Agentic World Modeling paper (2604.22748). ## What This Does Demonstrates the three capability levels of world models: - **L1 Predictor**: One-step local transitions - **L2 Simulator**: Multi-step action-conditioned rollouts - **L3 Evolver**: Self-revising models that update from prediction failures Across four law regimes: - Physical (object manipulation, physics) - Digital (web/GUI agents, software) - Social (multi-agent coordination) - Scientific (experimental design) ## Hypothesis World models with explicit structured state representations (L2+) demonstrate better compositional generalization than pure next-token predictors when evaluated on out-of-distribution scenarios within the same law regime. ## Findings See the live demo for interactive examples of state representation strategies and their impact on generalization.