Agentic-qe qe-defect-intelligence
AI-powered defect prediction, pattern learning, and root cause analysis for proactive quality management.
install
source · Clone the upstream repo
git clone https://github.com/proffesor-for-testing/agentic-qe
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/proffesor-for-testing/agentic-qe "$T" && mkdir -p ~/.claude/skills && cp -r "$T/.kiro/skills/qe-defect-intelligence" ~/.claude/skills/proffesor-for-testing-agentic-qe-qe-defect-intelligence-1ed6f4 && rm -rf "$T"
manifest:
.kiro/skills/qe-defect-intelligence/SKILL.mdsource content
QE Defect Intelligence
Purpose
Guide the use of v3's defect intelligence capabilities including ML-based defect prediction, pattern recognition from historical data, and automated root cause analysis.
Activation
- When predicting defect-prone code
- When analyzing failure patterns
- When performing root cause analysis
- When learning from past defects
- When prioritizing testing based on risk
Quick Start
# Predict defects in changed code aqe defect predict --changes HEAD~5..HEAD # Analyze failure patterns aqe defect patterns --period 90d --min-occurrences 3 # Root cause analysis aqe defect rca --failure "test/auth.test.ts:45" # Learn from resolved defects aqe defect learn --source jira --status resolved
Agent Workflow
// Defect prediction Task("Predict defect-prone code", ` Analyze PR #456 changes and predict defect likelihood: - Historical defect correlation - Code complexity factors - Author experience with module - Test coverage gaps Flag high-risk changes requiring extra review. `, "qe-defect-predictor") // Root cause analysis Task("Analyze test failure", ` Investigate recurring failure in AuthService tests: - Collect failure history (last 30 days) - Identify common patterns - Trace to potential root causes - Suggest fixes using 5-whys analysis `, "qe-root-cause-analyzer")
Prediction Models
1. Change-Based Prediction
await defectPredictor.predictFromChanges({ changes: prChanges, factors: { codeChurn: { weight: 0.2 }, complexity: { weight: 0.25 }, authorExperience: { weight: 0.15 }, fileHistory: { weight: 0.2 }, testCoverage: { weight: 0.2 } }, threshold: { high: 0.7, medium: 0.4, low: 0.2 } });
2. Pattern Learning
await patternLearner.learnPatterns({ source: { defects: 'jira:project=MYAPP&type=bug', commits: 'git:last-6-months', tests: 'test-results:last-1000-runs' }, patterns: [ 'code-smell-to-defect', 'change-coupling', 'test-gap-correlation', 'complexity-defect-density' ], output: { rules: true, visualizations: true, recommendations: true } });
3. Root Cause Analysis
await rootCauseAnalyzer.analyze({ failure: testFailure, methods: [ 'five-whys', 'fishbone-diagram', 'fault-tree', 'change-impact' ], context: { recentChanges: true, environmentDiff: true, dependencyChanges: true, similarFailures: true } });
Defect Prediction Report
interface DefectPrediction { file: string; riskScore: number; // 0-1 riskLevel: 'critical' | 'high' | 'medium' | 'low'; factors: { name: string; contribution: number; details: string; }[]; historicalDefects: { count: number; recent: Defect[]; patterns: string[]; }; recommendations: { action: string; priority: string; expectedRiskReduction: number; }[]; }
Pattern Categories
| Pattern | Detection | Prevention |
|---|---|---|
| Null pointer | Static analysis | Null checks, Optional |
| Race condition | Concurrency analysis | Locks, atomic ops |
| Memory leak | Heap analysis | Resource cleanup |
| Off-by-one | Boundary analysis | Loop invariants |
| Injection | Taint analysis | Input validation |
Root Cause Templates
root_cause_analysis: five_whys: max_depth: 5 prompt_template: "Why did {effect} happen?" fishbone: categories: - people - process - tools - environment - materials - measurement fault_tree: top_event: "Test Failure" gate_types: [AND, OR, NOT] basic_events: true
Integration with Issue Tracking
await defectIntelligence.syncWithTracker({ source: 'jira', project: 'MYAPP', sync: { defectData: 'bidirectional', predictions: 'create-tasks', patterns: 'update-labels' }, automation: { flagHighRisk: true, suggestAssignee: true, linkRelated: true } });
Coordination
Primary Agents: qe-defect-predictor, qe-pattern-learner, qe-root-cause-analyzer Coordinator: qe-defect-intelligence-coordinator Related Skills: qe-coverage-analysis, qe-quality-assessment