WFGY/ProblemMap/GlobalFixMap/VectorDBs_and_Stores/faiss.md

8.1 KiB
Raw Blame History

FAISS: Guardrails and Fix Patterns

🧭 Quick Return to Map

You are in a sub-page of VectorDBs_and_Stores.
To reorient, go back here:

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.

A compact repair guide for FAISS retrieval stacks. Use this when recall looks fine but meaning drifts, or when IVF/HNSW tuning flips answers across seeds. The checks below route you to the exact WFGY fix pages and give a minimal recipe you can paste into a runbook.

Open these first

Fix in 60 seconds

  1. Measure ΔS

    • Compute ΔS(question, retrieved) and ΔS(retrieved, expected anchor).
    • Thresholds: stable < 0.40, transitional 0.400.60, risk ≥ 0.60.
  2. Probe with λ_observe

    • Sweep k ∈ {5, 10, 20} and for IVF sweep nprobe ∈ {1, 4, 8, 16}.
    • For HNSW, sweep efSearch ∈ {32, 64, 128}.
    • If ΔS flattens high across k, suspect metric/index mismatch.
  3. Apply the module

  4. Verify

    • Coverage to target section ≥ 0.70, ΔS ≤ 0.45 on three paraphrases, λ stays convergent across seeds.

Typical breakpoints and the right fix

Symptom Likely cause Open this Minimal fix
High cosine similarity but wrong meaning IP vs L2 mixup, un-normalized embeddings Embedding vs Semantic Normalize vectors; match metric to embedder; re-index
Good recall, messy top-k order Rerank missing or weak Rerankers Add cross-encoder rerank, k=50→top-10
Some facts never show up Shards or label fragmentation Vectorstore Fragmentation Merge shards; rebuild IVF lists; verify dim
Answers flip between runs IVF nlist/nprobe underfit, PQ over-aggressive FAISS Pitfalls Raise nprobe, enlarge training set, reduce PQ
Hybrid gets worse than single retriever Query split and prompt coupling Query Parsing Split Split semantic vs lexical prompts; fuse post-retrieval

FAISS quick checklist

  • Confirm dimension matches the embedding model output exactly.
  • Confirm metric: IP with normalized vectors, or L2 with raw vectors. Do not mix.
  • For IVF, set nlist based on corpus size, train with at least 100× nlist examples.
  • Start with nprobe ≈ sqrt(nlist) and tune upward until ΔS stabilizes.
  • For HNSW, raise efConstruction and efSearch until ΔS stops improving.
  • Rebuild the index after changing normalization or metric.
  • Lock the snippet schema and citations using Data Contracts.

Copy-paste repair prompt


audit FAISS retrieval with ΔS and λ\_observe.
report: metric choice (IP/L2), normalization, dim, index type, nlist/nprobe or HNSW ef.
run three paraphrases, k in {5,10,20}. if ΔS stays >0.45, switch to normalized IP and rebuild.
apply BBMC + Data Contracts; add reranker for top-50→10. show before/after ΔS table.

Acceptance targets

  • Coverage ≥ 0.70 to the target section.
  • ΔS ≤ 0.45 across three paraphrases.
  • λ remains convergent across seeds.
  • E_resonance flat under long windows.

🔗 Quick-Start Downloads (60 sec)

Tool Link 3-Step Setup
WFGY 1.0 PDF Engine Paper 1 Download · 2 Upload to your LLM · 3 Ask “Answer using WFGY + ”
TXT OS (plain-text OS) TXTOS.txt 1 Download · 2 Paste into any LLM chat · 3 Type “hello world” — OS boots instantly

Explore More

Layer Page What its for
Proof WFGY Recognition Map External citations, integrations, and ecosystem proof
Engine WFGY 1.0 Original PDF based tension engine
Engine WFGY 2.0 Production tension kernel and math engine for RAG and agents
Engine WFGY 3.0 TXT based Singularity tension engine, 131 S class set
Map Problem Map 1.0 Flagship 16 problem RAG failure checklist and fix map
Map Problem Map 2.0 RAG focused recovery pipeline
Map Problem Map 3.0 Global Debug Card, image as a debug protocol layer
Map Semantic Clinic Symptom to family to exact fix
Map Grandmas Clinic Plain language stories mapped to Problem Map 1.0
Onboarding Starter Village Guided tour for newcomers
App TXT OS TXT semantic OS, fast boot
App Blah Blah Blah Abstract and paradox Q and A built on TXT OS
App Blur Blur Blur Text to image with semantic control
App Blow Blow Blow Reasoning game engine and memory demo

If this repository helped, starring it improves discovery so more builders can find the docs and tools. GitHub Repo stars