performance-analysis

Comprehensive performance analysis, bottleneck detection, and optimization recommendations for Claude Flow swarms

153 stars

Best use case

performance-analysis is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Comprehensive performance analysis, bottleneck detection, and optimization recommendations for Claude Flow swarms

Teams using performance-analysis should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/performance-analysis/SKILL.md --create-dirs "https://raw.githubusercontent.com/Microck/ordinary-claude-skills/main/skills_all/performance-analysis/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/performance-analysis/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How performance-analysis Compares

Feature / Agentperformance-analysisStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Comprehensive performance analysis, bottleneck detection, and optimization recommendations for Claude Flow swarms

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# 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
```bash
npx claude-flow bottleneck detect
```

### Generate Performance Report
```bash
npx claude-flow analysis performance-report --format html --include-metrics
```

### Analyze and Auto-Fix
```bash
npx claude-flow bottleneck detect --fix --threshold 15
```

## Core Capabilities

### 1. Bottleneck Detection

#### Command Syntax
```bash
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
```bash
# 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
```javascript
// 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:**
```json
{
  "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
```bash
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
1. **Executive Summary**
   - Overall performance score
   - Key metrics overview
   - Critical findings

2. **Swarm Overview**
   - Topology configuration
   - Agent distribution
   - Task statistics

3. **Performance Metrics**
   - Execution times
   - Throughput analysis
   - Resource utilization
   - Latency breakdown

4. **Bottleneck Analysis**
   - Identified bottlenecks
   - Impact assessment
   - Optimization priorities

5. **Comparative Analysis** (when --compare used)
   - Performance trends
   - Improvement metrics
   - Regression detection

6. **Recommendations**
   - Prioritized action items
   - Expected improvements
   - Implementation guidance

#### Usage Examples
```bash
# 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
```markdown
# 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
```bash
# 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
```yaml
# .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
```javascript
// 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**
```bash
# 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**
```bash
# 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**
```bash
# 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-orchestration**: 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](/workspaces/claude-code-flow/.claude/commands/analysis/bottleneck-detect.md)
- [Performance Report Guide](/workspaces/claude-code-flow/.claude/commands/analysis/performance-report.md)
- [Performance Bottlenecks Overview](/workspaces/claude-code-flow/.claude/commands/analysis/performance-bottlenecks.md)
- [Swarm Monitoring Documentation](../swarm-orchestration/SKILL.md)
- [Memory Management Documentation](../memory-management/SKILL.md)

---

**Version**: 1.0.0
**Last Updated**: 2025-10-19
**Maintainer**: Claude Flow Team

Related Skills

Excel Analysis

153
from Microck/ordinary-claude-skills

Analyze Excel spreadsheets, create pivot tables, generate charts, and perform data analysis. Use when analyzing Excel files, spreadsheets, tabular data, or .xlsx files.

developer-growth-analysis

153
from Microck/ordinary-claude-skills

Analyzes your recent Claude Code chat history to identify coding patterns, development gaps, and areas for improvement, curates relevant learning resources from HackerNews, and automatically sends a personalized growth report to your Slack DMs.

statistical-analysis

153
from Microck/ordinary-claude-skills

Statistical analysis toolkit. Hypothesis tests (t-test, ANOVA, chi-square), regression, correlation, Bayesian stats, power analysis, assumption checks, APA reporting, for academic research.

exploratory-data-analysis

153
from Microck/ordinary-claude-skills

Perform comprehensive exploratory data analysis on scientific data files across 200+ file formats. This skill should be used when analyzing any scientific data file to understand its structure, content, quality, and characteristics. Automatically detects file type and generates detailed markdown reports with format-specific analysis, quality metrics, and downstream analysis recommendations. Covers chemistry, bioinformatics, microscopy, spectroscopy, proteomics, metabolomics, and general scientific data formats.

AgentDB Performance Optimization

153
from Microck/ordinary-claude-skills

Optimize AgentDB performance with quantization (4-32x memory reduction), HNSW indexing (150x faster search), caching, and batch operations. Use when optimizing memory usage, improving search speed, or scaling to millions of vectors.

zapier-workflows

153
from Microck/ordinary-claude-skills

Manage and trigger pre-built Zapier workflows and MCP tool orchestration. Use when user mentions workflows, Zaps, automations, daily digest, research, search, lead tracking, expenses, or asks to "run" any process. Also handles Perplexity-based research and Google Sheets data tracking.

writing-skills

153
from Microck/ordinary-claude-skills

Create and manage Claude Code skills in HASH repository following Anthropic best practices. Use when creating new skills, modifying skill-rules.json, understanding trigger patterns, working with hooks, debugging skill activation, or implementing progressive disclosure. Covers skill structure, YAML frontmatter, trigger types (keywords, intent patterns), UserPromptSubmit hook, and the 500-line rule. Includes validation and debugging with SKILL_DEBUG. Examples include rust-error-stack, cargo-dependencies, and rust-documentation skills.

writing-plans

153
from Microck/ordinary-claude-skills

Use when design is complete and you need detailed implementation tasks for engineers with zero codebase context - creates comprehensive implementation plans with exact file paths, complete code examples, and verification steps assuming engineer has minimal domain knowledge

workflow-orchestration-patterns

153
from Microck/ordinary-claude-skills

Design durable workflows with Temporal for distributed systems. Covers workflow vs activity separation, saga patterns, state management, and determinism constraints. Use when building long-running processes, distributed transactions, or microservice orchestration.

workflow-management

153
from Microck/ordinary-claude-skills

Create, debug, or modify QStash workflows for data updates and social media posting in the API service. Use when adding new automated jobs, fixing workflow errors, or updating scheduling logic.

workflow-interactive-dev

153
from Microck/ordinary-claude-skills

用于开发 FastGPT 工作流中的交互响应。详细说明了交互节点的架构、开发流程和需要修改的文件。

woocommerce-dev-cycle

153
from Microck/ordinary-claude-skills

Run tests, linting, and quality checks for WooCommerce development. Use when running tests, fixing code style, or following the development workflow.