Section 01
KGdLLM Framework Guide: Exploration of Discrete Diffusion Models in Knowledge Graph Reasoning
KGdLLM is an experimental research framework created by Tieumi221E, aiming to explore the knowledge acquisition and logical reasoning capabilities of discrete masked diffusion language models (MDM/LLaDA style) on knowledge graphs. This article will analyze its core content such as decoupled architecture, training pipeline, and evaluation methods, and discuss the potential of diffusion models in the field of structured knowledge reasoning.