From World-Gen to Quest-Line: A Dependency-Driven Prompt Pipeline for Coherent RPG Generation
arXiv cs.CL / 4/29/2026
📰 NewsModels & Research
Key Points
- The paper addresses challenges in using LLMs for complex RPG generation, focusing on coherence, controllability, and structural consistency across multi-layer worlds.
- It proposes a dependency-driven, multi-stage prompt pipeline that generates RPG elements in sequence (world, NPCs, player characters, quest planning, and quest expansion), conditioning each stage on structured JSON outputs from the previous one.
- By enforcing schemas and explicit data flow between stages, the method aims to reduce narrative drift and hallucinations while improving the internal consistency of generated content.
- Qualitative human-centered evaluation across multiple independent runs rates outputs on structural completeness, internal consistency, narrative coherence, diversity, and actionability, finding that quality does not degrade as complexity grows.
- The authors conclude that separating high-level campaign planning from detailed quest expansion strengthens both global structure and local storytelling, and the pattern may extend to other sequential-reasoning domains.
Related Articles

How I Use AI Agents to Maintain a Living Knowledge Base for My Team
Dev.to
IK_LLAMA now supports Qwen3.5 MTP Support :O
Reddit r/LocalLLaMA
OpenAI models, Codex, and Managed Agents come to AWS
Dev.to

Automatic Error Recovery in AI Agent Networks
Dev.to
AeroJAX: JAX-native CFD, differentiable end-to-end. ~560 FPS at 128x128 on CPU [P]
Reddit r/MachineLearning