Agentic-qe qe-learning-optimization
Optimizes QE agent performance through transfer learning, hyperparameter tuning, and pattern distillation across test domains. Use when improving agent accuracy, applying learned patterns to new projects, tuning quality thresholds, or implementing continuous improvement loops for AI-powered testing.
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 "$T/assets/skills/qe-learning-optimization" ~/.claude/skills/proffesor-for-testing-agentic-qe-qe-learning-optimization-cd1b2a && rm -rf "$T"
manifest:
assets/skills/qe-learning-optimization/SKILL.mdsource content
QE Learning Optimization
Purpose
Guide the use of v3's learning optimization capabilities including transfer learning between agents, hyperparameter tuning, A/B testing, and continuous performance improvement.
Activation
- When optimizing agent performance
- When transferring knowledge between agents
- When tuning learning parameters
- When running A/B tests
- When analyzing learning metrics
Quick Start
# Transfer knowledge between agents aqe learn transfer --from jest-generator --to vitest-generator # Tune hyperparameters aqe learn tune --agent defect-predictor --metric accuracy # Run A/B test aqe learn ab-test --hypothesis "new-algorithm" --duration 7d # View learning metrics aqe learn metrics --agent test-generator --period 30d
Agent Workflow
// Transfer learning Task("Transfer test patterns", ` Transfer learned patterns from Jest test generator to Vitest: - Map framework-specific syntax - Adapt assertion styles - Preserve test structure patterns - Validate transfer accuracy `, "qe-transfer-specialist") // Metrics optimization Task("Optimize prediction accuracy", ` Tune defect-predictor agent: - Analyze current performance metrics - Run Bayesian hyperparameter search - Validate improvements on holdout set - Deploy if accuracy improves >5% `, "qe-metrics-optimizer")
Learning Operations
1. Transfer Learning
await transferSpecialist.transfer({ source: { agent: 'qe-jest-generator', knowledge: ['patterns', 'heuristics', 'optimizations'] }, target: { agent: 'qe-vitest-generator', adaptations: ['framework-syntax', 'api-differences'] }, strategy: 'fine-tuning', validation: { testSet: 'validation-samples', minAccuracy: 0.9 } });
2. Hyperparameter Tuning
await metricsOptimizer.tune({ agent: 'defect-predictor', parameters: { learningRate: { min: 0.001, max: 0.1, type: 'log' }, batchSize: { values: [16, 32, 64, 128] }, patternThreshold: { min: 0.5, max: 0.95 } }, optimization: { method: 'bayesian', objective: 'accuracy', trials: 50, parallelism: 4 } });
3. A/B Testing
await metricsOptimizer.abTest({ hypothesis: 'ML pattern matching improves test quality', variants: { control: { algorithm: 'rule-based' }, treatment: { algorithm: 'ml-enhanced' } }, metrics: ['test-quality-score', 'generation-time'], traffic: { split: 50, minSampleSize: 1000 }, duration: '7d', significance: 0.05 });
4. Feedback Loop
await metricsOptimizer.feedbackLoop({ agent: 'test-generator', feedback: { sources: ['user-corrections', 'test-results', 'code-reviews'], aggregation: 'weighted', frequency: 'real-time' }, learning: { strategy: 'incremental', validationSplit: 0.2, earlyStoppingPatience: 5 } });
Learning Metrics Dashboard
interface LearningDashboard { agent: string; period: DateRange; performance: { current: MetricValues; trend: 'improving' | 'stable' | 'declining'; percentile: number; }; learning: { samplesProcessed: number; patternsLearned: number; improvementRate: number; }; experiments: { active: Experiment[]; completed: ExperimentResult[]; }; recommendations: { action: string; expectedImpact: number; confidence: number; }[]; }
Cross-Framework Transfer
transfer_mappings: jest_to_vitest: syntax: "describe": "describe" "it": "it" "expect": "expect" "jest.mock": "vi.mock" "jest.fn": "vi.fn" patterns: - mock-module - async-testing - snapshot-testing mocha_to_jest: syntax: "describe": "describe" "it": "it" "chai.expect": "expect" "sinon.stub": "jest.fn" adaptations: - assertion-style - hook-naming
Continuous Improvement
await learningOptimizer.continuousImprovement({ agents: ['test-generator', 'coverage-analyzer', 'defect-predictor'], schedule: { metricCollection: 'hourly', tuning: 'weekly', majorUpdates: 'monthly' }, thresholds: { degradationAlert: 5, // percent improvementTarget: 2, // percent per week }, automation: { autoTune: true, autoRollback: true, requireApproval: ['major-changes'] } });
Pattern Learning
await patternLearner.learn({ sources: { codeExamples: 'examples/**/*.ts', testExamples: 'tests/**/*.test.ts', userFeedback: 'feedback/*.json' }, extraction: { syntacticPatterns: true, semanticPatterns: true, contextualPatterns: true }, storage: { vectorDB: 'agentdb', versioning: true } });
Coordination
Primary Agents: qe-transfer-specialist, qe-metrics-optimizer, qe-pattern-learner Coordinator: qe-learning-coordinator Related Skills: qe-test-generation, qe-defect-intelligence