# Metric Mismatch — Guardrails and Fix Pattern
🧭 Quick Return to Map
> You are in a sub-page of **RAG_VectorDB**. > To reorient, go back here: > > - [**RAG_VectorDB** — vector databases for retrieval and grounding](./README.md) > - [**WFGY Global Fix Map** — main Emergency Room, 300+ structured fixes](../README.md) > - [**WFGY Problem Map 1.0** — 16 reproducible failure modes](../../README.md) > > Think of this page as a desk within a ward. > If you need the full triage and all prescriptions, return to the Emergency Room lobby.
Use this page when **nearest neighbors look similar in cosine space but your VectorDB runs L2 or dot**, or the reverse. This failure appears often in FAISS, Milvus, pgvector, Weaviate, Redis, Vespa, and similar stores. --- ## Open these first - Visual map and recovery: [RAG Architecture & Recovery](https://github.com/onestardao/WFGY/blob/main/ProblemMap/rag-architecture-and-recovery.md) - End-to-end retrieval knobs: [Retrieval Playbook](https://github.com/onestardao/WFGY/blob/main/ProblemMap/retrieval-playbook.md) - Embedding vs meaning: [embedding-vs-semantic.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/embedding-vs-semantic.md) - Chunking checklist: [chunking-checklist.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/chunking-checklist.md) --- ## Core acceptance - ΔS(question, retrieved) ≤ 0.45 - Coverage ≥ 0.70 for the target section - λ remains convergent across three paraphrases and two seeds - Store metric matches embedding training metric (cosine ↔ cosine, L2 ↔ L2, dot ↔ dot) --- ## Typical breakpoints and the right fix - **High cosine similarity in logs but wrong meaning** → [embedding-vs-semantic.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/embedding-vs-semantic.md) - **Top-k neighbors inconsistent across runs** (vector drift between L2 and cosine) → [retrieval-playbook.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/retrieval-playbook.md) - **Switching embedding models breaks index** (new default metric not aligned with store) → [predeploy-collapse.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/predeploy-collapse.md) - **Hybrid dense+BM25 loses semantic signal** (wrong weighting due to metric scaling) → [hybrid_failure.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/RAG/hybrid_failure.md) --- ## Store defaults reference | Store | Default metric | Notes | |---------------|----------------------|----------------------------------------| | FAISS | L2 (can set IP or cosine) | Normalize vectors before cosine search | | Milvus | L2 / IP | Cosine requires explicit normalization | | pgvector | L2 / cosine / IP | Must choose at index creation | | Weaviate | cosine | Dot/IP optional | | Redis-Vector | cosine | Normalize mandatory | | Vespa | dot | Needs scaling to emulate cosine | --- ## Fix in 60 seconds 1. **Log current metric** Run a probe query (`SELECT metric FROM index_metadata`). Verify it matches embedding doc. 2. **Check normalization** If metric=cosine but vectors are raw, ΔS will inflate. Normalize to unit length. 3. **Re-index with explicit metric** Drop and rebuild index with the same metric as embedding training. 4. **Hybrid sanity check** If using BM25+dense, reweight so ΔS ≤ 0.45 and coverage ≥ 0.70. --- ## Copy-paste test query ```sql -- Example: pgvector SELECT id, embedding <=> query_embedding FROM documents ORDER BY embedding <=> query_embedding LIMIT 5; ```` Ensure `<=>` operator matches the chosen metric (`cosine`, `L2`, or `IP`). --- ### 🔗 Quick-Start Downloads (60 sec) | Tool | Link | 3-Step Setup | | -------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------ | ---------------------------------------------------------------------------------------- | | **WFGY 1.0 PDF** | [Engine Paper](https://github.com/onestardao/WFGY/blob/main/I_am_not_lizardman/WFGY_All_Principles_Return_to_One_v1.0_PSBigBig_Public.pdf) | 1️⃣ Download · 2️⃣ Upload to your LLM · 3️⃣ Ask “Answer using WFGY + \” | | **TXT OS (plain-text OS)** | [TXTOS.txt](https://github.com/onestardao/WFGY/blob/main/OS/TXTOS.txt) | 1️⃣ Download · 2️⃣ Paste into any LLM chat · 3️⃣ Type “hello world” — OS boots instantly | --- ### Explore More | Layer | Page | What it’s for | | --- | --- | --- | | ⭐ Proof | [WFGY Recognition Map](/recognition/README.md) | External citations, integrations, and ecosystem proof | | ⚙️ Engine | [WFGY 1.0](/legacy/README.md) | Original PDF tension engine and early logic sketch (legacy reference) | | ⚙️ Engine | [WFGY 2.0](/core/README.md) | Production tension kernel for RAG and agent systems | | ⚙️ Engine | [WFGY 3.0](/TensionUniverse/EventHorizon/README.md) | TXT based Singularity tension engine (131 S class set) | | 🗺️ Map | [Problem Map 1.0](/ProblemMap/README.md) | Flagship 16 problem RAG failure taxonomy and fix map | | 🗺️ Map | [Problem Map 2.0](/ProblemMap/wfgy-rag-16-problem-map-global-debug-card.md) | Global Debug Card for RAG and agent pipeline diagnosis | | 🗺️ Map | [Problem Map 3.0](/ProblemMap/wfgy-ai-problem-map-troubleshooting-atlas.md) | Global AI troubleshooting atlas and failure pattern map | | 🧰 App | [TXT OS](/OS/README.md) | .txt semantic OS with fast bootstrap | | 🧰 App | [Blah Blah Blah](/OS/BlahBlahBlah/README.md) | Abstract and paradox Q&A built on TXT OS | | 🧰 App | [Blur Blur Blur](/OS/BlurBlurBlur/README.md) | Text to image generation with semantic control | | 🏡 Onboarding | [Starter Village](/StarterVillage/README.md) | Guided entry point for new users | If this repository helped, starring it improves discovery so more builders can find the docs and tools. 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