--- title: Knowledge Value Lab emoji: 🔬 colorFrom: blue colorTo: indigo sdk: docker app_port: 7860 pinned: false license: apache-2.0 --- # Knowledge Value Lab (KVL) **Measuring the Marginal Value of Knowledge Assets for AI Systems** KVL quantifies how much a knowledge document contributes to AI systems across five dimensions, producing a single weighted **Knowledge Value Score (KVS)**. ## How to Use 1. Upload a Markdown (`.md`) document 2. Click **Evaluate Knowledge Value** 3. Review the scored report and download it ## Dimensions | Dimension | Weight | What it measures | |---|---|---| | Knowledge Novelty | 30% | How much of the document is unknown to the base model | | Retrieval Utility | 20% | How well the document surfaces in RAG search | | Generation Utility | 25% | How much RAG answers improve over baseline | | Attribution & Grounding | 15% | How faithfully answers are grounded in the document | | Demand Utility | 10% | How frequently this knowledge is needed by users | ## Score Classifications | Score | Classification | |---|---| | 81–100 | Transformational Value | | 61–80 | High Value | | 41–60 | Moderate Value | | 21–40 | Incremental Value | | 0–20 | Minimal Value | ## Important Note Knowledge Novelty and Generation Utility scores are **model-relative** — they measure value against specific AI models and will change when models are updated. Always report scores alongside the model names and evaluation date shown in each report.