Performance Analysis Skill
Comprehensive performance analysis suite for identifying bottlenecks, profiling swarm operations, generating detailed reports, and providing actionable optimization recommendations.
Overview
This skill consolidates all performance analysis capabilities:
- •Bottleneck Detection: Identify performance bottlenecks across communication, processing, memory, and network
- •Performance Profiling: Real-time monitoring and historical analysis of swarm operations
- •Report Generation: Create comprehensive performance reports in multiple formats
- •Optimization Recommendations: AI-powered suggestions for improving performance
Quick Start
Basic Bottleneck Detection
npx claude-flow bottleneck detect
Generate Performance Report
npx claude-flow analysis performance-report --format html --include-metrics
Analyze and Auto-Fix
npx claude-flow bottleneck detect --fix --threshold 15
Core Capabilities
1. Bottleneck Detection
Command Syntax
npx claude-flow bottleneck detect [options]
Options
- •
--swarm-id, -s <id>- Analyze specific swarm (default: current) - •
--time-range, -t <range>- Analysis period: 1h, 24h, 7d, all (default: 1h) - •
--threshold <percent>- Bottleneck threshold percentage (default: 20) - •
--export, -e <file>- Export analysis to file - •
--fix- Apply automatic optimizations
Usage Examples
# Basic detection for current swarm npx claude-flow bottleneck detect # Analyze specific swarm over 24 hours npx claude-flow bottleneck detect --swarm-id swarm-123 -t 24h # Export detailed analysis npx claude-flow bottleneck detect -t 24h -e bottlenecks.json # Auto-fix detected issues npx claude-flow bottleneck detect --fix --threshold 15 # Low threshold for sensitive detection npx claude-flow bottleneck detect --threshold 10 --export critical-issues.json
Metrics Analyzed
Communication Bottlenecks:
- •Message queue delays
- •Agent response times
- •Coordination overhead
- •Memory access patterns
- •Inter-agent communication latency
Processing Bottlenecks:
- •Task completion times
- •Agent utilization rates
- •Parallel execution efficiency
- •Resource contention
- •CPU/memory usage patterns
Memory Bottlenecks:
- •Cache hit rates
- •Memory access patterns
- •Storage I/O performance
- •Neural pattern loading times
- •Memory allocation efficiency
Network Bottlenecks:
- •API call latency
- •MCP communication delays
- •External service timeouts
- •Concurrent request limits
- •Network throughput issues
Output Format
🔍 Bottleneck Analysis Report ━━━━━━━━━━━━━━━━━━━━━━━━━━━ 📊 Summary ├── Time Range: Last 1 hour ├── Agents Analyzed: 6 ├── Tasks Processed: 42 └── Critical Issues: 2 🚨 Critical Bottlenecks 1. Agent Communication (35% impact) └── coordinator → coder-1 messages delayed by 2.3s avg 2. Memory Access (28% impact) └── Neural pattern loading taking 1.8s per access ⚠️ Warning Bottlenecks 1. Task Queue (18% impact) └── 5 tasks waiting > 10s for assignment 💡 Recommendations 1. Switch to hierarchical topology (est. 40% improvement) 2. Enable memory caching (est. 25% improvement) 3. Increase agent concurrency to 8 (est. 20% improvement) ✅ Quick Fixes Available Run with --fix to apply: - Enable smart caching - Optimize message routing - Adjust agent priorities
2. Performance Profiling
Real-time Detection
Automatic analysis during task execution:
- •Execution time vs. complexity
- •Agent utilization rates
- •Resource constraints
- •Operation patterns
Common Bottleneck Patterns
Time Bottlenecks:
- •Tasks taking > 5 minutes
- •Sequential operations that could parallelize
- •Redundant file operations
- •Inefficient algorithm implementations
Coordination Bottlenecks:
- •Single agent for complex tasks
- •Unbalanced agent workloads
- •Poor topology selection
- •Excessive synchronization points
Resource Bottlenecks:
- •High operation count (> 100)
- •Memory constraints
- •I/O limitations
- •Thread pool saturation
MCP Integration
// Check for bottlenecks in Claude Code
mcp__claude-flow__bottleneck_detect({
timeRange: "1h",
threshold: 20,
autoFix: false
})
// Get detailed task results with bottleneck analysis
mcp__claude-flow__task_results({
taskId: "task-123",
format: "detailed"
})
Result Format:
{
"bottlenecks": [
{
"type": "coordination",
"severity": "high",
"description": "Single agent used for complex task",
"recommendation": "Spawn specialized agents for parallel work",
"impact": "35%",
"affectedComponents": ["coordinator", "coder-1"]
}
],
"improvements": [
{
"area": "execution_time",
"suggestion": "Use parallel task execution",
"expectedImprovement": "30-50% time reduction",
"implementationSteps": [
"Split task into smaller units",
"Spawn 3-4 specialized agents",
"Use mesh topology for coordination"
]
}
],
"metrics": {
"avgExecutionTime": "142s",
"agentUtilization": "67%",
"cacheHitRate": "82%",
"parallelizationFactor": 1.2
}
}
3. Report Generation
Command Syntax
npx claude-flow analysis performance-report [options]
Options
- •
--format <type>- Report format: json, html, markdown (default: markdown) - •
--include-metrics- Include detailed metrics and charts - •
--compare <id>- Compare with previous swarm - •
--time-range <range>- Analysis period: 1h, 24h, 7d, 30d, all - •
--output <file>- Output file path - •
--sections <list>- Comma-separated sections to include
Report Sections
- •
Executive Summary
- •Overall performance score
- •Key metrics overview
- •Critical findings
- •
Swarm Overview
- •Topology configuration
- •Agent distribution
- •Task statistics
- •
Performance Metrics
- •Execution times
- •Throughput analysis
- •Resource utilization
- •Latency breakdown
- •
Bottleneck Analysis
- •Identified bottlenecks
- •Impact assessment
- •Optimization priorities
- •
Comparative Analysis (when --compare used)
- •Performance trends
- •Improvement metrics
- •Regression detection
- •
Recommendations
- •Prioritized action items
- •Expected improvements
- •Implementation guidance
Usage Examples
# Generate HTML report with all metrics npx claude-flow analysis performance-report --format html --include-metrics # Compare current swarm with previous npx claude-flow analysis performance-report --compare swarm-123 --format markdown # Custom output with specific sections npx claude-flow analysis performance-report \ --sections summary,metrics,recommendations \ --output reports/perf-analysis.html \ --format html # Weekly performance report npx claude-flow analysis performance-report \ --time-range 7d \ --include-metrics \ --format markdown \ --output docs/weekly-performance.md # JSON format for CI/CD integration npx claude-flow analysis performance-report \ --format json \ --output build/performance.json
Sample Markdown Report
# Performance Analysis Report ## Executive Summary - **Overall Score**: 87/100 - **Analysis Period**: Last 24 hours - **Swarms Analyzed**: 3 - **Critical Issues**: 1 ## Key Metrics | Metric | Value | Trend | Target | |--------|-------|-------|--------| | Avg Task Time | 42s | ↓ 12% | 35s | | Agent Utilization | 78% | ↑ 5% | 85% | | Cache Hit Rate | 91% | → | 90% | | Parallel Efficiency | 2.3x | ↑ 0.4x | 2.5x | ## Bottleneck Analysis ### Critical 1. **Agent Communication Delay** (Impact: 35%) - Coordinator → Coder messages delayed by 2.3s avg - **Fix**: Switch to hierarchical topology ### Warnings 1. **Memory Access Pattern** (Impact: 18%) - Neural pattern loading: 1.8s per access - **Fix**: Enable memory caching ## Recommendations 1. **High Priority**: Switch to hierarchical topology (40% improvement) 2. **Medium Priority**: Enable memory caching (25% improvement) 3. **Low Priority**: Increase agent concurrency to 8 (20% improvement)
4. Optimization Recommendations
Automatic Fixes
When using --fix, the following optimizations may be applied:
1. Topology Optimization
- •Switch to more efficient topology (mesh → hierarchical)
- •Adjust communication patterns
- •Reduce coordination overhead
- •Optimize message routing
2. Caching Enhancement
- •Enable memory caching
- •Optimize cache strategies
- •Preload common patterns
- •Implement cache warming
3. Concurrency Tuning
- •Adjust agent counts
- •Optimize parallel execution
- •Balance workload distribution
- •Implement load balancing
4. Priority Adjustment
- •Reorder task queues
- •Prioritize critical paths
- •Reduce wait times
- •Implement fair scheduling
5. Resource Optimization
- •Optimize memory usage
- •Reduce I/O operations
- •Batch API calls
- •Implement connection pooling
Performance Impact
Typical improvements after bottleneck resolution:
- •Communication: 30-50% faster message delivery
- •Processing: 20-40% reduced task completion time
- •Memory: 40-60% fewer cache misses
- •Network: 25-45% reduced API latency
- •Overall: 25-45% total performance improvement
Advanced Usage
Continuous Monitoring
# Monitor performance in real-time
npx claude-flow swarm monitor --interval 5
# Generate hourly reports
while true; do
npx claude-flow analysis performance-report \
--format json \
--output logs/perf-$(date +%Y%m%d-%H%M).json
sleep 3600
done
CI/CD Integration
# .github/workflows/performance.yml
name: Performance Analysis
on: [push, pull_request]
jobs:
analyze:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v2
- name: Run Performance Analysis
run: |
npx claude-flow analysis performance-report \
--format json \
--output performance.json
- name: Check Performance Thresholds
run: |
npx claude-flow bottleneck detect \
--threshold 15 \
--export bottlenecks.json
- name: Upload Reports
uses: actions/upload-artifact@v2
with:
name: performance-reports
path: |
performance.json
bottlenecks.json
Custom Analysis Scripts
// scripts/analyze-performance.js
const { exec } = require('child_process');
const fs = require('fs');
async function analyzePerformance() {
// Run bottleneck detection
const bottlenecks = await runCommand(
'npx claude-flow bottleneck detect --format json'
);
// Generate performance report
const report = await runCommand(
'npx claude-flow analysis performance-report --format json'
);
// Analyze results
const analysis = {
bottlenecks: JSON.parse(bottlenecks),
performance: JSON.parse(report),
timestamp: new Date().toISOString()
};
// Save combined analysis
fs.writeFileSync(
'analysis/combined-report.json',
JSON.stringify(analysis, null, 2)
);
// Generate alerts if needed
if (analysis.bottlenecks.critical.length > 0) {
console.error('CRITICAL: Performance bottlenecks detected!');
process.exit(1);
}
}
function runCommand(cmd) {
return new Promise((resolve, reject) => {
exec(cmd, (error, stdout, stderr) => {
if (error) reject(error);
else resolve(stdout);
});
});
}
analyzePerformance().catch(console.error);
Best Practices
1. Regular Analysis
- •Run bottleneck detection after major changes
- •Generate weekly performance reports
- •Monitor trends over time
- •Set up automated alerts
2. Threshold Tuning
- •Start with default threshold (20%)
- •Lower for production systems (10-15%)
- •Higher for development (25-30%)
- •Adjust based on requirements
3. Fix Strategy
- •Always review before applying --fix
- •Test fixes in development first
- •Apply fixes incrementally
- •Monitor impact after changes
4. Report Integration
- •Include in documentation
- •Share with team regularly
- •Track improvements over time
- •Use for capacity planning
5. Continuous Optimization
- •Learn from each analysis
- •Build performance budgets
- •Establish baselines
- •Set improvement goals
Troubleshooting
Common Issues
High Memory Usage
# Analyze memory bottlenecks npx claude-flow bottleneck detect --threshold 10 # Check cache performance npx claude-flow cache manage --action stats # Review memory metrics npx claude-flow memory usage
Slow Task Execution
# Identify slow tasks npx claude-flow task status --detailed # Analyze coordination overhead npx claude-flow bottleneck detect --time-range 1h # Check agent utilization npx claude-flow agent metrics
Poor Cache Performance
# Analyze cache hit rates npx claude-flow analysis performance-report --sections metrics # Review cache strategy npx claude-flow cache manage --action analyze # Enable cache warming npx claude-flow bottleneck detect --fix
Integration with Other Skills
- •swarm: Use performance data to optimize topology
- •memory-management: Improve cache strategies based on analysis
- •task-coordination: Adjust scheduling based on bottlenecks
- •neural-training: Train patterns from performance data
Related Commands
- •
npx claude-flow swarm monitor- Real-time monitoring - •
npx claude-flow token usage- Token optimization analysis - •
npx claude-flow cache manage- Cache optimization - •
npx claude-flow agent metrics- Agent performance metrics - •
npx claude-flow task status- Task execution analysis
See Also
- •Bottleneck Detection Guide
- •Performance Report Guide
- •Performance Bottlenecks Overview
- •Swarm Monitoring Documentation
- •Memory Management Documentation
Version: 1.0.0 Last Updated: 2025-10-19 Maintainer: Claude Flow Team