WFGY/ProblemMap/GlobalFixMap/Eval_Observability/variance_and_drift.md

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Eval Observability — Variance and Drift

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Variance and drift checks detect when evaluation scores are unstable across runs or when semantic meaning slowly shifts without clear boundary failures.
These probes prevent "false confidence" in benchmarks by catching hidden instability.


Why variance and drift matter

  • Variance: Scores fluctuate heavily depending on seed, paraphrase, or retriever order. Averages hide the volatility.
  • Drift: Performance declines slowly across sessions, data refreshes, or version bumps. Looks fine short-term but collapses long-term.
  • Silent regressions: Systems pass local tests but fail in production due to unmonitored entropy rise.

Acceptance targets

  • Variance (σ/μ) ≤ 0.15 across 3 seeds and 3 paraphrases.
  • Drift slope: Δscore per batch ≤ 0.02 absolute over 5+ eval windows.
  • No monotonic downward slope longer than 3 consecutive windows.
  • Drift alerts fire if ΔS average increases ≥ 0.10 compared to gold anchors.

Detection workflow

  1. Collect runs across seeds

    • At least 3 seeds, 3 paraphrases.
    • Log ΔS, λ, coverage, citations.
  2. Compute variance

    • Calculate σ/μ for each metric.
    • High variance = unstable eval → rerun with schema locks.
  3. Track drift over time

    • Compare eval batch N vs N-1.
    • Plot moving average.
    • Alert if slope exceeds tolerance.
  4. Root-cause analysis

    • If variance high → check retriever metrics, random seeding, rerankers.
    • If drift detected → audit embeddings, re-chunk, verify data refresh.

Common pitfalls

  • Single-run evals: Hides high variance. Always run multi-seed.
  • Averages without spread: Mean looks fine, variance reveals collapse.
  • Ignoring slow drift: Short tests OK, but 12 weeks later accuracy dies.
  • Cross-store drift: One vector DB stable, another drifts. Must track both.

Example reporting schema

{
  "metric": "ΔS",
  "seed_runs": [0.38, 0.42, 0.44],
  "variance_ratio": 0.14,
  "drift_slope": +0.03,
  "alert": true
}

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