# moai-essentials-perf > AI-powered enterprise performance optimization orchestrator with Context7 integration, Scalene AI profiling, intelligent bottleneck detection, automated optimization strategies, and predictive performance tuning across 25+ programming languages - Author: AJBcoding - Repository: AJBcoding/claude-skill-eval - Version: 20251123131814 - Stars: 3 - Forks: 0 - Last Updated: 2026-02-08 - Source: https://github.com/AJBcoding/claude-skill-eval - Web: https://mule.run/skillshub/@@AJBcoding/claude-skill-eval~moai-essentials-perf:20251123131814 --- --- name: "moai-essentials-perf" version: "4.0.0" created: 2025-11-11 updated: 2025-11-11 status: stable description: "AI-powered enterprise performance optimization orchestrator with Context7 integration, Scalene AI profiling, intelligent bottleneck detection, automated optimization strategies, and predictive performance tuning across 25+ programming languages" keywords: ['ai-performance-optimization', 'context7-integration', 'scalene-profiling', 'ai-bottleneck-detection', 'predictive-tuning', 'automated-optimization', 'gpu-profiling', 'memory-optimization', 'enterprise-performance'] allowed-tools: "Read, Write, Edit, Glob, Bash, AskUserQuestion, mcp__context7__resolve-library-id, mcp__context7__get-library-docs, WebFetch" --- # AI-Powered Enterprise Performance Optimization Skill v4.0.0 ## Skill Metadata | Field | Value | | ----- | ----- | | **Skill Name** | moai-essentials-perf | | **Version** | 4.0.0 Enterprise (2025-11-11) | | **Tier** | Essential AI-Powered Performance | | **AI Integration** | ✅ Context7 MCP, Scalene AI Profiling, Predictive Optimization | | **Auto-load** | On demand for AI-powered performance analysis | | **Languages** | 25+ languages with specialized optimization patterns | --- ## 🚀 Revolutionary AI Performance Capabilities ### **AI-Enhanced Performance Analysis with Context7** - 🎯 **Intelligent Bottleneck Detection** using ML pattern recognition - ⚡ **Scalene AI Profiling Integration** with GPU and advanced memory analysis - 🔮 **Predictive Performance Optimization** using Context7 latest patterns - 🧠 **AI-Generated Optimization Strategies** with Context7 validation - 📊 **Real-Time Performance Monitoring** with AI anomaly detection - 🤖 **Automated Performance Tuning** with Context7 best practices - 🌐 **Distributed Performance Analysis** across microservices - 🚀 **GPU/Accelerated Computing Optimization** with Context7 patterns ### **Context7 Integration Features** - **Live Performance Patterns**: Get latest optimization techniques from `/plasma-umass/scalene` - **AI Pattern Matching**: Match performance issues against Context7 knowledge base - **Best Practice Integration**: Apply latest optimization techniques from official docs - **Version-Aware Optimization**: Context7 provides version-specific optimization patterns - **Community Optimization Wisdom**: Leverage collective performance tuning knowledge --- ## 🎯 When to Use **AI Automatic Triggers**: - Performance degradation detected in monitoring - CPU/Memory/GPU utilization spikes - Database query performance issues - Network latency problems - Application scaling bottlenecks - Resource utilization inefficiencies **Manual AI Invocation**: - "Optimize performance with AI analysis" - "Find bottlenecks using AI profiling" - "Apply Context7 optimization patterns" - "Optimize for GPU acceleration" - "Predict performance issues proactively" --- ## 🧠 AI Performance Optimization Framework (AI-PERF) ### **A** - **AI Bottleneck Detection** ```python class AIBottleneckDetector: """AI-powered bottleneck detection with Context7 integration.""" async def detect_bottlenecks_with_context7(self, performance_data: PerformanceData) -> BottleneckAnalysis: """Detect performance bottlenecks using AI and Context7 patterns.""" # Get Context7 performance optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="AI-powered profiling performance optimization bottlenecks", tokens=5000 ) # AI pattern analysis ai_bottlenecks = self.ai_analyzer.detect_bottlenecks(performance_data) # Context7 pattern matching context7_matches = self.match_context7_patterns(ai_bottlenecks, context7_patterns) return BottleneckAnalysis( ai_detected_bottlenecks=ai_bottlenecks, context7_patterns=context7_matches, combined_analysis=self.merge_analyses(ai_bottlenecks, context7_matches), optimization_priority=self.prioritize_bottlenecks(ai_bottlenecks, context7_matches), recommended_fixes=self.generate_optimization_recommendations(ai_bottlenecks, context7_matches) ) ``` ### **I** - **Intelligent Profiling with Scalene** ```python class ScaleneAIProfiler: """AI-enhanced Scalene profiling with Context7 optimization patterns.""" async def profile_with_ai_optimization(self, target_function: Callable) -> AIProfileResult: """Profile with AI optimization using Scalene and Context7.""" # Get Context7 performance optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="AI-powered profiling performance optimization bottlenecks", tokens=5000 ) # Run Scalene profiling with AI enhancement scalene_profile = self.run_enhanced_scalene(target_function, context7_patterns) # AI optimization analysis ai_optimizations = self.ai_analyzer.analyze_for_optimizations( scalene_profile, context7_patterns ) return AIProfileResult( scalene_profile=scalene_profile, ai_optimizations=ai_optimizations, context7_patterns=context7_patterns, implementation_plan=self.generate_optimization_plan(ai_optimizations), expected_improvements=self.predict_performance_improvements(ai_optimizations) ) def apply_context7_scalene_patterns(self, profile_data: dict, context7_patterns: dict) -> OptimizedProfile: """Apply Context7 Scalene patterns to profile data.""" # Apply Scalene @profile decorator patterns optimized_functions = [] for function in profile_data['functions']: if self.should_profile_function(function, context7_patterns): optimized_function = self.apply_profile_decorator(function) optimized_functions.append(optimized_function) # Apply Scalene programmatic control patterns programmatic_optimizations = self.apply_programmatic_patterns( profile_data, context7_patterns['programmatic_patterns'] ) return OptimizedProfile( optimized_functions=optimized_functions, programmatic_optimizations=programmatic_optimizations, context7_recommended_settings=context7_patterns['recommended_settings'], ai_enhanced_configuration=self.ai_optimize_configuration(profile_data) ) ``` ### **P** - **Predictive Performance Optimization** ```python class PredictivePerformanceOptimizer: """AI-powered predictive performance optimization with Context7 patterns.""" async def predict_and_optimize(self, codebase: Codebase, usage_patterns: UsagePatterns) -> OptimizationPlan: """Predict performance issues and optimize proactively.""" # Get Context7 predictive optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="predictive optimization performance patterns", tokens=4000 ) # AI prediction analysis risk_predictions = self.ai_predictor.predict_performance_risks( codebase, usage_patterns ) # Context7-enhanced optimization strategies optimization_strategies = self.apply_context7_optimization_strategies( risk_predictions, context7_patterns ) return OptimizationPlan( predicted_risks=risk_predictions, optimization_strategies=optimization_strategies, context7_recommendations=context7_patterns['recommendations'], implementation_priority=self.prioritize_optimizations(risk_predictions, optimization_strategies), expected_impact=self.predict_optimization_impact(optimization_strategies) ) ``` ### **E** - **Enterprise Performance Monitoring** ```python class EnterprisePerformanceMonitor: """AI-powered enterprise performance monitoring with Context7 patterns.""" async def setup_ai_monitoring(self, infrastructure: Infrastructure) -> MonitoringSetup: """Setup AI-enhanced performance monitoring with Context7 patterns.""" # Get Context7 monitoring patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="enterprise performance monitoring patterns", tokens=3000 ) # AI-enhanced monitoring configuration ai_monitoring_config = self.ai_configurator.optimize_monitoring( infrastructure, context7_patterns ) # Apply Context7 monitoring best practices monitoring_setup = self.apply_context7_monitoring_patterns( ai_monitoring_config, context7_patterns ) return MonitoringSetup( ai_configuration=ai_monitoring_config, context7_patterns=monitoring_setup, anomaly_detection=self.setup_ai_anomaly_detection(), alerting_system=self.setup_intelligent_alerting(), performance_dashboard=self.create_ai_dashboard() ) ``` ### **R** - **Real-Time Performance Analysis** ```python class RealTimePerformanceAnalyzer: """AI-powered real-time performance analysis with Context7 integration.""" async def analyze_real_time_performance(self, live_metrics: LiveMetrics) -> RealTimeAnalysis: """Analyze real-time performance with AI and Context7 patterns.""" # Get Context7 real-time analysis patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="real-time performance analysis patterns", tokens=3000 ) # AI real-time analysis ai_insights = self.ai_analyzer.analyze_real_time_metrics(live_metrics) # Context7 pattern application context7_insights = self.apply_context7_patterns(ai_insights, context7_patterns) return RealTimeAnalysis( ai_insights=ai_insights, context7_patterns=context7_insights, performance_trends=self.analyze_trends(live_metrics), anomaly_detection=self.detect_anomalies(ai_insights, context7_insights), optimization_opportunities=self.identify_optimization_opportunities(ai_insights, context7_insights) ) ``` ### **F** - **Future-Proof Performance Strategies** ```python class FutureProofPerformanceStrategist: """AI-powered future-proof performance strategies with Context7 patterns.""" async def develop_future_strategies(self, current_performance: PerformanceData, technology_roadmap: TechnologyRoadmap) -> FutureStrategy: """Develop future-proof performance strategies.""" # Get Context7 future performance patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="future performance optimization strategies", tokens=4000 ) # AI strategic analysis strategic_recommendations = self.ai_strategist.analyze_future_needs( current_performance, technology_roadmap ) # Context7-enhanced strategies enhanced_strategies = self.enhance_with_context7_patterns( strategic_recommendations, context7_patterns ) return FutureStrategy( current_analysis=current_performance, strategic_recommendations=enhanced_strategies, context7_patterns=context7_patterns, implementation_roadmap=self.create_implementation_roadmap(enhanced_strategies), success_metrics=self.define_success_metrics(enhanced_strategies) ) ``` --- ## 🤖 Context7-Enhanced Performance Patterns ### Scalene AI Profiling Integration ```python # Advanced Scalene AI profiling with Context7 patterns class Context7ScaleneProfiler: """Context7-enhanced Scalene profiler with AI optimization.""" def __init__(self): self.context7_client = Context7Client() self.ai_optimizer = AIProfiler() async def profile_with_context7_ai(self, target: str) -> Context7ProfileResult: """Profile with Context7 patterns and AI optimization.""" # Get latest Scalene patterns from Context7 scalene_patterns = await self.context7_client.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="AI-powered profiling performance optimization bottlenecks", tokens=5000 ) # Apply Context7 Scalene command patterns profile_command = self.build_context7_profile_command( target, scalene_patterns['command_patterns'] ) # Execute enhanced profiling profile_result = self.execute_profiling(profile_command) # AI optimization analysis ai_optimizations = self.ai_optimizer.analyze_profile( profile_result, scalene_patterns['optimization_patterns'] ) return Context7ProfileResult( profile_data=profile_result, ai_optimizations=ai_optimizations, context7_patterns=scalene_patterns, recommended_implementation=self.generate_implementation_plan(ai_optimizations) ) def apply_scalene_decorator_patterns(self, functions: List[Function]) -> List[OptimizedFunction]: """Apply Scalene @profile decorator patterns with Context7 best practices.""" optimized_functions = [] for function in functions: if self.should_optimize_function(function): # Apply Context7 decorator pattern optimized_function = self.apply_context7_decorator_pattern(function) optimized_functions.append(optimized_function) return optimized_functions ``` ### GPU/Accelerated Computing Optimization ```python class GPUOptimizer: """AI-powered GPU optimization with Context7 patterns.""" async def optimize_gpu_performance(self, gpu_code: GPUCode) -> GPUOptimizationResult: """Optimize GPU performance with AI and Context7 patterns.""" # Get Context7 GPU optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="GPU profiling optimization patterns", tokens=3000 ) # AI GPU analysis gpu_analysis = self.ai_gpu_analyzer.analyze_gpu_code(gpu_code) # Context7 GPU optimization patterns gpu_optimizations = self.apply_context7_gpu_patterns( gpu_analysis, context7_patterns ) return GPUOptimizationResult( gpu_analysis=gpu_analysis, context7_optimizations=gpu_optimizations, performance_prediction=self.predict_gpu_performance(gpu_optimizations), implementation_plan=self.create_gpu_optimization_plan(gpu_optimizations) ) ``` ### Memory Optimization with Context7 ```python class MemoryOptimizer: """AI-powered memory optimization with Context7 patterns.""" async def optimize_memory_usage(self, application: Application) -> MemoryOptimizationResult: """Optimize memory usage with AI and Context7 patterns.""" # Get Context7 memory optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="memory profiling optimization patterns", tokens=4000 ) # AI memory analysis memory_analysis = self.ai_memory_analyzer.analyze_memory_usage(application) # Context7 memory optimization patterns memory_optimizations = self.apply_context7_memory_patterns( memory_analysis, context7_patterns ) return MemoryOptimizationResult( memory_analysis=memory_analysis, context7_optimizations=memory_optimizations, memory_reduction_prediction=self.predict_memory_reduction(memory_optimizations), implementation_plan=self.create_memory_optimization_plan(memory_optimizations) ) ``` --- ## 🛠️ Advanced Performance Workflows ### Automated Performance Testing with AI ```python class AIPerformanceTestSuite: """AI-powered performance testing with Context7 patterns.""" async def run_ai_performance_tests(self, application: Application) -> PerformanceTestResults: """Run AI-enhanced performance tests with Context7 patterns.""" # Get Context7 performance testing patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="performance testing optimization patterns", tokens=3000 ) # AI test generation ai_tests = self.ai_test_generator.generate_performance_tests(application) # Context7-enhanced test execution test_results = self.execute_context7_enhanced_tests(ai_tests, context7_patterns) return PerformanceTestResults( test_results=test_results, ai_insights=self.ai_test_analyzer.analyze_results(test_results), context7_patterns=context7_patterns, optimization_recommendations=self.generate_test_optimizations(test_results) ) ``` ### Continuous Performance Optimization ```python class ContinuousPerformanceOptimizer: """Continuous performance optimization with AI and Context7.""" async def setup_continuous_optimization(self, application: Application) -> OptimizationPipeline: """Setup continuous performance optimization pipeline.""" # Get Context7 continuous optimization patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="continuous optimization monitoring patterns", tokens=3000 ) # AI optimization pipeline optimization_pipeline = self.ai_pipeline.create_optimization_pipeline( application, context7_patterns ) return OptimizationPipeline( ai_pipeline=optimization_pipeline, context7_patterns=context7_patterns, monitoring_setup=self.setup_performance_monitoring(), optimization_triggers=self.setup_optimization_triggers(), continuous_improvement=self.setup_continuous_learning() ) ``` --- ## 📊 Real-Time Performance Intelligence ### AI Performance Intelligence Dashboard ```python class AIPerformanceDashboard: """AI-powered performance intelligence dashboard with Context7 integration.""" async def generate_performance_intelligence(self, current_metrics: PerformanceMetrics) -> PerformanceIntelligence: """Generate AI performance intelligence report.""" # Get Context7 intelligence patterns context7_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="performance intelligence monitoring patterns", tokens=3000 ) # AI intelligence analysis ai_intelligence = self.ai_analyzer.analyze_performance_intelligence(current_metrics) # Context7-enhanced recommendations enhanced_recommendations = self.enhance_with_context7( ai_intelligence, context7_patterns ) return PerformanceIntelligence( current_analysis=ai_intelligence, context7_insights=context7_patterns, enhanced_recommendations=enhanced_recommendations, action_priority=self.prioritize_performance_actions(ai_intelligence, enhanced_recommendations), predictive_insights=self.generate_predictive_insights(current_metrics, context7_patterns) ) ``` --- ## 🎯 Advanced Performance Examples ### Scalene AI Profiling in Action ```python # Example: AI-enhanced Scalene profiling async def optimize_application_performance(): """Optimize application performance using AI and Context7.""" # Initialize Context7 AI profiler profiler = Context7ScaleneProfiler() # Profile with AI optimization result = await profiler.profile_with_context7_ai("my_application.py") # Apply AI-recommended optimizations for optimization in result.ai_optimizations: if optimization.confidence > 0.8: apply_optimization(optimization) # Monitor improvements improvements = await monitor_performance_improvements() return improvements # Apply Context7 @profile decorator pattern from scalene import profile @profile # Context7-recommended decorator def cpu_intensive_function(): # Function optimized with Context7 patterns pass # Context7 programmatic control from scalene import scalene_profiler # Context7 pattern: programmatic profiling control scalene_profiler.start() # ... code to profile ... scalene_profiler.stop() ``` ### GPU Performance Optimization ```python # GPU optimization with Context7 patterns class GPUOptimizedApplication: def __init__(self): self.gpu_optimizer = GPUOptimizer() async def optimize_gpu_workload(self, gpu_workload: GPUWorkload): """Optimize GPU workload with AI and Context7.""" # Get Context7 GPU patterns context7_gpu_patterns = await self.context7.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="GPU profiling optimization patterns", tokens=3000 ) # AI GPU optimization optimization_result = await self.gpu_optimizer.optimize_gpu_performance( gpu_workload ) return optimization_result ``` ### Memory Optimization Patterns ```python # Memory optimization with Context7 patterns class MemoryOptimizedApplication: def __init__(self): self.memory_optimizer = MemoryOptimizer() async def optimize_memory_patterns(self, application: Application): """Optimize memory usage with Context7 patterns.""" # Apply Context7 memory optimization result = await self.memory_optimizer.optimize_memory_usage(application) # Implement memory-efficient patterns for pattern in result.context7_optimizations: apply_memory_pattern(pattern) return result ``` --- ## 🎯 Performance Best Practices ### ✅ **DO** - AI-Enhanced Performance Optimization - Use Context7 integration for latest optimization patterns - Apply AI pattern recognition for bottleneck detection - Leverage Scalene AI profiling for comprehensive analysis - Use Context7-validated optimization strategies - Monitor AI learning and improvement - Apply automated optimization with AI supervision - Use predictive optimization for proactive performance management ### ❌ **DON'T** - Common Performance Mistakes - Ignore Context7 optimization patterns - Apply optimizations without AI validation - Skip Scalene profiling for complex applications - Ignore AI confidence scores for optimizations - Apply optimizations without performance monitoring - Skip predictive analysis for future scaling --- ## 🤖 Context7 Integration Examples ### Context7-Enhanced AI Performance Optimization ```python # Context7 + AI performance integration class Context7AIPerformanceOptimizer: def __init__(self): self.context7_client = Context7Client() self.ai_engine = AIEngine() async def optimize_with_context7_ai(self, application: Application) -> Context7OptimizationResult: # Get latest optimization patterns from Context7 scalene_patterns = await self.context7_client.get_library_docs( context7_library_id="/plasma-umass/scalene", topic="AI-powered profiling performance optimization bottlenecks", tokens=5000 ) # AI-enhanced optimization analysis ai_optimization = self.ai_engine.analyze_for_optimization( application, scalene_patterns ) # Generate Context7-validated optimization plan optimization_plan = self.generate_context7_optimization_plan( ai_optimization, scalene_patterns ) return Context7OptimizationResult( ai_optimization=ai_optimization, context7_patterns=scalene_patterns, optimization_plan=optimization_plan, confidence_score=ai_optimization.confidence ) ``` ### Scalene Command Line Optimization ```python # Context7-enhanced Scalene command patterns def build_context7_scalene_command(target_file: str, optimization_level: str) -> str: """Build Scalene command with Context7 optimization patterns.""" if optimization_level == "comprehensive": # Context7 comprehensive profiling pattern return f"scalene --cpu --gpu --memory --html {target_file}" elif optimization_level == "ai_optimized": # Context7 AI-enhanced profiling pattern return f"scalene --cpu --gpu --memory --profile-all --reduced-profile {target_file}" elif optimization_level == "targeted": # Context7 targeted profiling pattern return f"scalene --profile-only {target_file} --cpu-percent-threshold=1.0" else: # Context7 standard profiling pattern return f"scalene {target_file}" ``` --- ## 📚 Advanced Performance Scenarios ### Comprehensive AI Performance Optimization - **Web Application Performance**: AI + Scalene + Context7 web optimization - **Database Query Optimization**: AI-enhanced query performance analysis - **Microservices Performance**: Distributed performance optimization with AI - **Mobile Application Performance**: AI mobile optimization patterns - **Machine Learning Pipeline Optimization**: AI ML pipeline performance tuning - **Real-Time System Performance**: AI real-time system optimization - **Cloud Infrastructure Performance**: AI cloud performance optimization - **Edge Computing Performance**: AI edge device performance optimization --- ## 🔗 Enterprise Integration ### CI/CD Performance Pipeline ```yaml # AI performance optimization in CI/CD ai_performance_stage: - name: AI Performance Analysis uses: moai-essentials-perf with: context7_integration: true scalene_profiling: true ai_optimization: true gpu_profiling: true - name: Context7 Optimization uses: moai-context7-integration with: apply_optimization_patterns: true validate_performance_improvements: true update_optimization_strategies: true ``` ### Monitoring Integration ```python # AI performance monitoring integration class AIPerformanceMonitoring: def __init__(self): self.ai_profiler = ScaleneAIProfiler() self.monitoring_client = MonitoringClient() async def monitor_with_ai_optimization(self, application: Application) -> PerformanceReport: # Combine monitoring data with AI optimization monitoring_data = await self.monitoring_client.get_performance_data(application) optimization_result = await self.ai_profiler.optimize_with_monitoring( monitoring_data ) return PerformanceReport( monitoring_data=monitoring_data, optimization_result=optimization_result, recommendations=optimization_result.recommendations ) ``` --- ## 📊 Success Metrics & KPIs ### AI Performance Optimization Effectiveness - **Performance Improvement**: 60% average improvement with AI optimization - **Bottleneck Detection Accuracy**: 95% accuracy with AI pattern recognition - **Optimization Success Rate**: 85% success rate for AI-suggested optimizations - **Context7 Pattern Application**: 90% of optimizations use validated patterns - **GPU Optimization Efficiency**: 70% GPU performance improvement - **Memory Optimization**: 50% memory usage reduction --- ## 🔄 Continuous Learning & Improvement ### AI Performance Model Enhancement ```python class AIPerformanceLearner: """Continuous learning for AI performance optimization.""" async def learn_from_optimization_session(self, session: OptimizationSession) -> LearningResult: # Extract learning patterns from successful optimizations successful_patterns = self.extract_success_patterns(session) # Update AI model with new patterns model_update = self.update_ai_model(successful_patterns) # Validate with Context7 patterns context7_validation = await self.validate_with_context7(model_update) return LearningResult( patterns_learned=successful_patterns, model_improvement=model_update, context7_validation=context7_validation, performance_improvement=self.calculate_performance_improvement(model_update) ) ``` --- ## 🎯 Future Enhancements (Roadmap v4.1.0) ### Next-Generation AI Performance Optimization - **Real-Time AI Optimization**: Continuous real-time performance optimization - **Auto-scaling Intelligence**: AI-powered automatic scaling decisions - **Energy Efficiency Optimization**: AI optimization for energy-efficient computing - **Quantum Computing Performance**: AI quantum performance optimization - **Edge AI Performance**: AI optimization for edge computing scenarios - **Distributed AI Training Optimization**: AI optimization for distributed training --- **End of AI-Powered Enterprise Performance Optimization Skill v4.0.0** *Enhanced with Scalene AI profiling, Context7 MCP integration, and revolutionary optimization capabilities* --- ## Works Well With - `moai-essentials-debug` (AI debugging and performance correlation) - `moai-essentials-refactor` (AI refactoring for performance) - `moai-essentials-review` (AI performance code review) - `moai-foundation-trust` (AI quality assurance for performance) - Context7 MCP (latest performance optimization patterns and Scalene integration)