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run-ab-test-models

pjt222
更新于 2 days ago
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测试aitestingdesigndata

关于

This skill enables A/B testing for ML models in production using traffic splitting and statistical significance testing. It supports canary/shadow deployments to measure performance differences before full rollout. Use it when validating new model versions, comparing algorithms, or meeting gradual rollout requirements.

快速安装

Claude Code

推荐
主要方式
npx skills add pjt222/agent-almanac -a claude-code
插件命令备选方式
/plugin add https://github.com/pjt222/agent-almanac
Git 克隆备选方式
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/run-ab-test-models

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

A/B-Tests fuer Modelle durchfuehren

See Extended Examples for complete configuration files and templates.

Ausfuehren controlled experiments comparing model versions using traffic splitting and statistical analysis.

Wann verwenden

  • Deploying new model version and want to validate improvement vor full rollout
  • Comparing multiple candidate models trained with different algorithms or features
  • Testing impact of hyperparameter changes on business metrics
  • Need to measure model performance in production ohne risking full traffic
  • Regulatory requirements for gradual rollout (e.g., medical ML systems)
  • Evaluating cost-performance tradeoffs zwischen model sizes

Eingaben

  • Erforderlich: Champion model (current production version)
  • Erforderlich: Challenger model(s) (new version to test)
  • Erforderlich: Traffic allocation percentage (e.g., 5% to challenger)
  • Erforderlich: Success metrics (business and ML metrics)
  • Erforderlich: Minimum sample size or test duration
  • Optional: Guardrail metrics (latency, error rate thresholds)
  • Optional: User segments for stratified testing

Vorgehensweise

Schritt 1: Entwerfen Experiment

Definieren test parameters, success criteria, and statistical requirements.

# ab_test/experiment_config.py
from dataclasses import dataclass
from typing import List, Dict
import numpy as np
from scipy.stats import norm


@dataclass
# ... (see EXAMPLES.md for complete implementation)

Erwartet: Experiment configuration with statistically sound sample size calculation, typischerweise 5-10k samples per variant for 5-10% MDE.

Bei Fehler: If required sample size too large, increase traffic allocation, extend test duration, or accept larger MDE; verify baseline metric estimate is accurate; consider sequential testing for continuous monitoring.

Schritt 2: Implementieren Traffic Splitting

Einrichten routing logic to randomly assign requests to models.

# ab_test/traffic_router.py
import hashlib
import random
from typing import Dict, Optional
from dataclasses import dataclass
import logging

logger = logging.getLogger(__name__)
# ... (see EXAMPLES.md for complete implementation)

Erwartet: Consistent user-to-variant assignment, accurate traffic split matching configured percentages, all assignments logged for analysis.

Bei Fehler: Verifizieren hash function produces uniform distribution (test with 10k user IDs), check that user_id is stable across requests (not session_id), ensure logs capture all prediction events, validate traffic split in first 1000 requests.

Schritt 3: Implementieren Shadow Deployment (Optional)

Ausfuehren challenger model in parallel ohne affecting users (shadow mode).

# ab_test/shadow_deployment.py
import asyncio
from typing import Dict, Any
import logging
from concurrent.futures import ThreadPoolExecutor
import time

logger = logging.getLogger(__name__)
# ... (see EXAMPLES.md for complete implementation)

Erwartet: Champion predictions served with normal latency, challenger predictions logged asynchronously ohne blocking, prediction differences captured for analysis.

Bei Fehler: Set challenger timeout < champion SLA to avoid blocking, handle challenger errors gracefully ohne affecting champion, monitor memory usage (two models loaded), consider sampling (log only 10% of shadow predictions).

Schritt 4: Sammeln and Analysieren Metrics

Sammeln experiment data and perform statistical tests.

# ab_test/analysis.py
import pandas as pd
import numpy as np
from scipy import stats
from typing import Dict, Tuple
import logging

logger = logging.getLogger(__name__)
# ... (see EXAMPLES.md for complete implementation)

Erwartet: Statistical test results with p-values, confidence intervals, and clear decision (rollout/keep/inconclusive), typischerweise nach 7-14 days or reaching sample size.

Bei Fehler: Verifizieren ground truth labels are available (may need delayed analysis), check for sample ratio mismatch (SRM) indicating assignment bugs, ensure sufficient sample size reached, look for novelty/primacy effects in early data, consider sequential testing if fixed-horizon test is too slow.

Schritt 5: Ueberwachen Guardrail Metrics

Continuously check that challenger doesn't violate safety thresholds.

# ab_test/guardrails.py
import pandas as pd
import logging
from typing import Dict, List

logger = logging.getLogger(__name__)


# ... (see EXAMPLES.md for complete implementation)

Erwartet: Guardrail violations detected innerhalb 5-15 minutes, automated experiment stop if critical thresholds breached (latency, errors), alerts sent to team.

Bei Fehler: Verifizieren guardrail thresholds are realistic (not too tight), ensure monitoring loop is running continuously, check that stop_experiment() function actually updates routing, test alert delivery channels.

Schritt 6: Make Rollout Decision

Based on experiment results, decide whether to rollout challenger.

# ab_test/rollout_decision.py
import logging
from typing import Dict
from dataclasses import dataclass

logger = logging.getLogger(__name__)


# ... (see EXAMPLES.md for complete implementation)

Erwartet: Clear decision (full/gradual rollout, keep champion, or extend test) with justification and action items.

Bei Fehler: If decision unclear, perform subgroup analysis (by user segment, time of day, device type), check for interaction effects, review business context (e.g., is 2% lift worth engineering cost?), consult with stakeholders.

Validierung

  • Traffic split matches configured percentages (innerhalb 1%)
  • Same user always assigned to same variant (consistency check)
  • Sample size calculation produces reasonable numbers (5-50k per variant)
  • Statistical tests produce p-values consistent with manual calculation
  • Guardrail violations trigger alerts innerhalb 5 minutes
  • Shadow deployment shows <5% prediction divergence zwischen models
  • Experiment reports include confidence intervals
  • Rollout decision documented with justification

Haeufige Stolperfallen

  • Sample ratio mismatch (SRM): If observed traffic split differs from configured (e.g., 95/5 becomes 92/8), indicates assignment bug; check hash function uniformity
  • Peeking: Checking results vor reaching sample size inflates Type I error; use sequential testing or wait for pre-determined end date
  • Novelty effect: Users respond differently to new model initially; run for 2+ weeks to see steady-state behavior
  • Carryover effects: Previous variant exposure affects current behavior; use new users or sufficient washout period
  • Multiple testing: Testing many metrics increases false positive risk; correct with Bonferroni or focus on single primary metric
  • Insufficient power: Small traffic allocation may require months to detect realistic effects; balance statistical power with risk tolerance
  • Ignoring segments: Aggregate lift may hide negative impact on important user segments; perform subgroup analysis
  • Attribution errors: Sicherstellen outcome metrics korrekt attributed to model predictions (not other system changes)

Verwandte Skills

  • deploy-ml-model-serving - Modellieren deployment infrastructure and versioning
  • monitor-model-drift - Ongoing performance monitoring post-rollout

GitHub 仓库

pjt222/agent-almanac
路径: i18n/de/skills/run-ab-test-models
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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