agent-performance-optimizer

Agent skill for performance-optimizer - invoke with $agent-performance-optimizer

INSTALLATION
npx skills add https://github.com/ruvnet/ruflo --skill agent-performance-optimizer
Run in your project or agent environment. Adjust flags if your CLI version differs.

SKILL.md

$27

Optimization Strategies

  • Resource Allocation: Optimize allocation of computational resources
  • Load Balancing: Implement optimal load balancing strategies
  • Caching Optimization: Optimize caching strategies and hit rates
  • Algorithm Optimization: Optimize algorithms for specific performance characteristics

Primary MCP Tools

  • mcp__sublinear-time-solver__solve - Optimize resource allocation problems
  • mcp__sublinear-time-solver__analyzeMatrix - Analyze performance matrices
  • mcp__sublinear-time-solver__estimateEntry - Estimate performance metrics
  • mcp__sublinear-time-solver__validateTemporalAdvantage - Validate optimization advantages

Usage Scenarios

1. Resource Allocation Optimization

// Optimize computational resource allocation

class ResourceOptimizer {

  async optimizeAllocation(resources, demands, constraints) {

    // Create resource allocation matrix

    const allocationMatrix = this.buildAllocationMatrix(resources, constraints);

    // Solve optimization problem

    const optimization = await mcp__sublinear-time-solver__solve({

      matrix: allocationMatrix,

      vector: demands,

      method: "neumann",

      epsilon: 1e-8,

      maxIterations: 1000

    });

    return {

      allocation: this.extractAllocation(optimization.solution),

      efficiency: this.calculateEfficiency(optimization),

      utilization: this.calculateUtilization(optimization),

      bottlenecks: this.identifyBottlenecks(optimization)

    };

  }

  async analyzeSystemPerformance(systemMetrics, performanceTargets) {

    // Analyze current system performance

    const analysis = await mcp__sublinear-time-solver__analyzeMatrix({

      matrix: systemMetrics,

      checkDominance: true,

      estimateCondition: true,

      computeGap: true

    });

    return {

      performanceScore: this.calculateScore(analysis),

      recommendations: this.generateOptimizations(analysis, performanceTargets),

      bottlenecks: this.identifyPerformanceBottlenecks(analysis)

    };

  }

}

2. Load Balancing Optimization

// Optimize load distribution across compute nodes

async function optimizeLoadBalancing(nodes, workloads, capacities) {

  // Create load balancing matrix

  const loadMatrix = {

    rows: nodes.length,

    cols: workloads.length,

    format: "dense",

    data: createLoadBalancingMatrix(nodes, workloads, capacities)

  };

  // Solve load balancing optimization

  const balancing = await mcp__sublinear-time-solver__solve({

    matrix: loadMatrix,

    vector: workloads,

    method: "random-walk",

    epsilon: 1e-6,

    maxIterations: 500

  });

  return {

    loadDistribution: extractLoadDistribution(balancing.solution),

    balanceScore: calculateBalanceScore(balancing),

    nodeUtilization: calculateNodeUtilization(balancing),

    recommendations: generateLoadBalancingRecommendations(balancing)

  };

}

3. Performance Bottleneck Analysis

// Analyze and resolve performance bottlenecks

class BottleneckAnalyzer {

  async analyzeBottlenecks(performanceData, systemTopology) {

    // Estimate critical performance metrics

    const criticalMetrics = await Promise.all(

      performanceData.map(async (metric, index) => {

        return await mcp__sublinear-time-solver__estimateEntry({

          matrix: systemTopology,

          vector: performanceData,

          row: index,

          column: index,

          method: "random-walk",

          epsilon: 1e-6,

          confidence: 0.95

        });

      })

    );

    return {

      bottlenecks: this.identifyBottlenecks(criticalMetrics),

      severity: this.assessSeverity(criticalMetrics),

      solutions: this.generateSolutions(criticalMetrics),

      priority: this.prioritizeOptimizations(criticalMetrics)

    };

  }

  async validateOptimizations(originalMetrics, optimizedMetrics) {

    // Validate performance improvements

    const validation = await mcp__sublinear-time-solver__validateTemporalAdvantage({

      size: originalMetrics.length,

      distanceKm: 1000 // Symbolic distance for comparison

    });

    return {

      improvementFactor: this.calculateImprovement(originalMetrics, optimizedMetrics),

      validationResult: validation,

      confidence: this.calculateConfidence(validation)

    };

  }

}

Integration with Claude Flow

Swarm Performance Optimization

  • Agent Performance Monitoring: Monitor individual agent performance
  • Swarm Efficiency Optimization: Optimize overall swarm efficiency
  • Communication Optimization: Optimize inter-agent communication patterns
  • Resource Distribution: Optimize resource distribution across agents

Dynamic Performance Tuning

  • Real-time Optimization: Continuously optimize performance in real-time
  • Adaptive Scaling: Implement adaptive scaling based on performance metrics
  • Predictive Optimization: Use predictive algorithms for proactive optimization

Integration with Flow Nexus

Cloud Performance Optimization

// Deploy performance optimization in Flow Nexus

const optimizationSandbox = await mcp__flow-nexus__sandbox_create({

  template: "python",

  name: "performance-optimizer",

  env_vars: {

    OPTIMIZATION_MODE: "realtime",

    MONITORING_INTERVAL: "1000",

    RESOURCE_THRESHOLD: "80"

  },

  install_packages: ["numpy", "scipy", "psutil", "prometheus_client"]

});

// Execute performance optimization

const optimizationResult = await mcp__flow-nexus__sandbox_execute({

  sandbox_id: optimizationSandbox.id,

  code: `

    import psutil

    import numpy as np

    from datetime import datetime

    import asyncio

    class RealTimeOptimizer:

        def __init__(self):

            self.metrics_history = []

            self.optimization_interval = 1.0  # seconds

        async def monitor_and_optimize(self):

            while True:

                # Collect system metrics

                metrics = {

                    'cpu_percent': psutil.cpu_percent(interval=1),

                    'memory_percent': psutil.virtual_memory().percent,

                    'disk_io': psutil.disk_io_counters()._asdict(),

                    'network_io': psutil.net_io_counters()._asdict(),

                    'timestamp': datetime.now().isoformat()

                }

                # Add to history

                self.metrics_history.append(metrics)

                # Perform optimization if needed

                if self.needs_optimization(metrics):

                    await self.optimize_system(metrics)

                await asyncio.sleep(self.optimization_interval)

        def needs_optimization(self, metrics):

            threshold = float(os.environ.get('RESOURCE_THRESHOLD', 80))

            return (metrics['cpu_percent'] > threshold or

                    metrics['memory_percent'] > threshold)

        async def optimize_system(self, metrics):

            print(f"Optimizing system - CPU: {metrics['cpu_percent']}%, "

                  f"Memory: {metrics['memory_percent']}%")

            # Implement optimization strategies

            await self.optimize_cpu_usage()

            await self.optimize_memory_usage()

            await self.optimize_io_operations()

        async def optimize_cpu_usage(self):

            # CPU optimization logic

            print("Optimizing CPU usage...")

        async def optimize_memory_usage(self):

            # Memory optimization logic

            print("Optimizing memory usage...")

        async def optimize_io_operations(self):

            # I/O optimization logic

            print("Optimizing I/O operations...")

    # Start real-time optimization

    optimizer = RealTimeOptimizer()

    await optimizer.monitor_and_optimize()

  `,

  language: "python"

});

Neural Performance Modeling

// Train neural networks for performance prediction

const performanceModel = await mcp__flow-nexus__neural_train({

  config: {

    architecture: {

      type: "lstm",

      layers: [

        { type: "lstm", units: 128, return_sequences: true },

        { type: "dropout", rate: 0.3 },

        { type: "lstm", units: 64, return_sequences: false },

        { type: "dense", units: 32, activation: "relu" },

        { type: "dense", units: 1, activation: "linear" }

      ]

    },

    training: {

      epochs: 50,

      batch_size: 32,

      learning_rate: 0.001,

      optimizer: "adam"

    }

  },

  tier: "medium"

});

Advanced Optimization Techniques

Machine Learning-Based Optimization

  • Performance Prediction: Predict future performance based on historical data
  • Anomaly Detection: Detect performance anomalies and outliers
  • Adaptive Optimization: Adapt optimization strategies based on learning

Multi-Objective Optimization

  • Pareto Optimization: Find Pareto-optimal solutions for multiple objectives
  • Trade-off Analysis: Analyze trade-offs between different performance metrics
  • Constraint Optimization: Optimize under multiple constraints

Real-Time Optimization

  • Stream Processing: Optimize streaming data processing systems
  • Online Algorithms: Implement online optimization algorithms
  • Reactive Optimization: React to performance changes in real-time

Performance Metrics and KPIs

System Performance Metrics

  • Throughput: Measure system throughput and processing capacity
  • Latency: Monitor response times and latency characteristics
  • Resource Utilization: Track CPU, memory, disk, and network utilization
  • Availability: Monitor system availability and uptime

Application Performance Metrics

  • Response Time: Monitor application response times
  • Error Rates: Track error rates and failure patterns
  • Scalability: Measure application scalability characteristics
  • User Experience: Monitor user experience metrics

Infrastructure Performance Metrics

  • Network Performance: Monitor network bandwidth, latency, and packet loss
  • Storage Performance: Track storage IOPS, throughput, and latency
  • Compute Performance: Monitor compute resource utilization and efficiency
  • Energy Efficiency: Track energy consumption and efficiency

Optimization Strategies

Algorithmic Optimization

  • Algorithm Selection: Select optimal algorithms for specific use cases
  • Complexity Reduction: Reduce algorithmic complexity where possible
  • Parallelization: Parallelize algorithms for better performance
  • Approximation: Use approximation algorithms for near-optimal solutions

System-Level Optimization

  • Resource Provisioning: Optimize resource provisioning strategies
  • Configuration Tuning: Tune system and application configurations
  • Architecture Optimization: Optimize system architecture for performance
  • Scaling Strategies: Implement optimal scaling strategies

Application-Level Optimization

  • Code Optimization: Optimize application code for performance
  • Database Optimization: Optimize database queries and structures
  • Caching Strategies: Implement optimal caching strategies
  • Asynchronous Processing: Use asynchronous processing for better performance

Integration Patterns

With Matrix Optimizer

  • Performance Matrix Analysis: Analyze performance matrices
  • Resource Allocation Matrices: Optimize resource allocation matrices
  • Bottleneck Detection: Use matrix analysis for bottleneck detection

With Consensus Coordinator

  • Distributed Optimization: Coordinate distributed optimization efforts
  • Consensus-Based Decisions: Use consensus for optimization decisions
  • Multi-Agent Coordination: Coordinate optimization across multiple agents

With Trading Predictor

  • Financial Performance Optimization: Optimize financial system performance
  • Trading System Optimization: Optimize trading system performance
  • Risk-Adjusted Optimization: Optimize performance while managing risk

Example Workflows

Cloud Infrastructure Optimization

  • Baseline Assessment: Assess current infrastructure performance
  • Bottleneck Identification: Identify performance bottlenecks
  • Optimization Planning: Plan optimization strategies
  • Implementation: Implement optimization measures
  • Monitoring: Monitor optimization results and iterate

Application Performance Tuning

  • Performance Profiling: Profile application performance
  • Code Analysis: Analyze code for optimization opportunities
  • Database Optimization: Optimize database performance
  • Caching Implementation: Implement optimal caching strategies
  • Load Testing: Test optimized application under load

System-Wide Performance Enhancement

  • Comprehensive Analysis: Analyze entire system performance
  • Multi-Level Optimization: Optimize at multiple system levels
  • Resource Reallocation: Reallocate resources for optimal performance
  • Continuous Monitoring: Implement continuous performance monitoring
  • Adaptive Optimization: Implement adaptive optimization mechanisms

The Performance Optimizer Agent serves as the central hub for all performance optimization activities, ensuring optimal system performance, resource utilization, and user experience across various computing environments and applications.

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