WFGY/ProblemMap/GlobalFixMap/Eval/README.md
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Evaluation & Guardrails — Global Fix Map

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If you want full consultation and prescriptions, go back to the Emergency Room lobby.

A hub to prove fixes actually work and wont regress.
Use this folder when you want to validate that your RAG / LLM pipeline changes are stable, measurable, and reproducible.
The goal is to prevent “double hallucination,” enforce acceptance gates, and keep evaluation pipelines auditable.


What this page is

  • A compact playbook to evaluate RAG quality and reasoning stability
  • Drop-in guardrails that catch failures before users see them
  • CI/CD-ready acceptance targets you can copy directly

When to use

  • You shipped a fix but cannot show measurable improvement
  • Answers look plausible but citations or snippets dont match
  • Performance flips between seeds, sessions, or agent mixes
  • Latency tuning silently changes accuracy
  • Your team disagrees on whether a fix is “actually better”

Open these first


Common evaluation pitfalls

  • Double hallucination → Metrics look good (BLEU, ROUGE) but answers cite the wrong snippet
  • Recall illusion → Top-k recall seems fine, yet ΔS(question, context) is still unstable
  • Seed lottery → Success on one random seed hides instability across paraphrases
  • Hybrid flapping → HyDE + BM25 mixes reorder results differently every run
  • Over-clamping → Filters enforce tone but fail to fix logical drift
  • Benchmark mismatch → Eval set ignores OCR noise or multilingual inputs
  • No trace table → You cannot audit which snippet was cited

Fix in 60 seconds

  1. Adopt acceptance gates

    • Retrieval sanity: token overlap ≥ 0.70 to the gold section
    • ΔS(question, context) ≤ 0.45 on median across suite
    • λ_observe stays convergent across 3 paraphrases
  2. Require citations first

    • Enforce cite-then-answer with data-contracts.md
    • Log: question, retrieved ids, snippet spans, ΔS, λ
  3. Stability before speed

  4. Cross-agent cross-check

  5. Regression fence in CI


Minimal checklist

  • Trace table saved (citations + snippet spans)
  • ΔS computed per item; λ recorded at retrieval & reasoning
  • Coverage ≥ 0.70 to gold snippet
  • Cross-agent agreement tested
  • Latency vs accuracy chart archived with run id

Acceptance targets

  • ΔS(question, context) median ≤ 0.45
  • λ convergent across 3 paraphrases
  • Token overlap ≥ 0.70 to gold snippet
  • No unexplained rank flips on hybrid retrievers
  • CI blocks merges when targets fail

FAQ

Q: What is ΔS and why does it matter?
A: ΔS measures semantic distance between your query and retrieved context. Values above 0.45 indicate unstable retrieval, even if the snippet looks similar.

Q: Why not just trust BLEU/ROUGE?
A: They score surface similarity, not factual correctness. A fluent but wrong answer can pass BLEU. WFGY gates enforce snippet fidelity.

Q: What does λ_observe mean?
A: λ_observe tracks whether paraphrased queries converge on the same retrieval. Divergence shows instability that will confuse users.

Q: How do I build a trace table?
A: For every eval item, log question, retrieved ids, snippet spans, ΔS, λ_state. This makes your pipeline auditable later.

Q: Do I need a big eval set?
A: No. Start with 20 smoke-test items, including multilingual or noisy samples. Scale up only after you pass basic gates.

Q: What if latency tuning drops accuracy?
A: Always plot latency vs accuracy. Use the knee point of the curve, not the fastest or slowest configuration.


🔗 Quick-Start Downloads (60 sec)

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WFGY 1.0 PDF Engine Paper 1 Download · 2 Upload to your LLM · 3 Ask “Answer using WFGY + <your question>”
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🧭 Explore More

Module Description Link
WFGY Core WFGY 2.0 engine is live: full symbolic reasoning architecture and math stack View →
Problem Map 1.0 Initial 16-mode diagnostic and symbolic fix framework View →
Problem Map 2.0 RAG-focused failure tree, modular fixes, and pipelines View →
Semantic Clinic Index Expanded failure catalog: prompt injection, memory bugs, logic drift View →
Semantic Blueprint Layer-based symbolic reasoning & semantic modulations View →
Benchmark vs GPT-5 Stress test GPT-5 with full WFGY reasoning suite View →
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