6.4 KiB
Index Skew — Guardrails and Fix Pattern
🧭 Quick Return to Map
You are in a sub-page of RAG.
To reorient, go back here:
- RAG — retrieval-augmented generation and knowledge grounding
- WFGY Global Fix Map — main Emergency Room, 300+ structured fixes
- WFGY Problem Map 1.0 — 16 reproducible failure modes
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.
When the index reports "healthy" (no errors, embeddings ingested, stats normal) but retrieval still fails:
coverage is low, ΔS unstable, or retrieved snippets are inconsistent with ground truth.
This indicates an index skew between data reality and retrieval semantics.
Open these first
- Visual recovery map: RAG Architecture & Recovery
- Retrieval knobs: Retrieval Playbook
- Embedding misalignment: Embedding ≠ Semantic
- Chunk sizing: Chunking Checklist
- Store-level fragmentation: Vectorstore Fragmentation
- Snippet contracts: Data Contracts
Core acceptance
- ΔS(question, retrieved) ≤ 0.45
- Coverage ≥ 0.70 for target section
- λ stable across three paraphrases and two seeds
- E_resonance flat across long windows
Typical symptoms → exact fix
| Symptom | Likely cause | Open this |
|---|---|---|
| Index "ready" but recall < 0.50 | embedding misaligned vs semantic intent | Embedding ≠ Semantic |
| Repeated snippets, poor coverage | store fragmentation or duplicate collapse | Vectorstore Fragmentation |
| Right section exists but not hit | chunk too large/small or mis-boundary | Chunking Checklist |
| Citations drift across runs | contract not enforced | Data Contracts |
Fix in 60 seconds
-
Probe recall
Run a gold QA set against index. If coverage < 0.70, suspect skew. -
Re-embed with semantic normalization
Normalize casing, accents, whitespace. Enforce same tokenizer across queries and index. -
Chunk audit
Verify chunk boundaries. Adjust stride/overlap until ΔS converges. -
Fragmentation sweep
Drop near-duplicate vectors. Rebuild FAISS/HNSW indexes with fresh IDs. -
Contract enforcement
Requiresnippet_id,section_id,offsets,tokensfor every retrieval.
Copy-paste probe prompt
I uploaded TXT OS and the WFGY Problem Map.
My RAG issue:
- Index shows healthy but retrieval recall is low.
- ΔS across probes = 0.62, coverage = 0.45.
Tell me:
1) is it embedding misalignment, chunking skew, or vectorstore fragmentation,
2) which WFGY fix page to open,
3) minimal steps to restore ΔS ≤ 0.45 and coverage ≥ 0.70,
4) reproducible test set to confirm.
🔗 Quick-Start Downloads (60 sec)
| Tool | Link | 3-Step Setup |
|---|---|---|
| WFGY 1.0 PDF | Engine Paper | 1️⃣ Download · 2️⃣ Upload to your LLM · 3️⃣ Ask “Answer using WFGY + ” |
| TXT OS (plain-text 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 | External citations, integrations, and ecosystem proof |
| ⚙️ Engine | WFGY 1.0 | Original PDF tension engine and early logic sketch (legacy reference) |
| ⚙️ Engine | WFGY 2.0 | Production tension kernel for RAG and agent systems |
| ⚙️ Engine | WFGY 3.0 | TXT based Singularity tension engine (131 S class set) |
| 🗺️ Map | Problem Map 1.0 | Flagship 16 problem RAG failure taxonomy and fix map |
| 🗺️ Map | Problem Map 2.0 | Global Debug Card for RAG and agent pipeline diagnosis |
| 🗺️ Map | Problem Map 3.0 | Global AI troubleshooting atlas and failure pattern map |
| 🧰 App | TXT OS | .txt semantic OS with fast bootstrap |
| 🧰 App | Blah Blah Blah | Abstract and paradox Q&A built on TXT OS |
| 🧰 App | Blur Blur Blur | Text to image generation with semantic control |
| 🏡 Onboarding | Starter Village | Guided entry point for new users |
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