Claude Code Plugins

Community-maintained marketplace

Feedback

performance-testing

@aj-geddes/useful-ai-prompts
37
10

Design and execute performance tests to measure response times, throughput, and resource utilization. Use for performance test, load test, JMeter, k6, benchmark, latency testing, and scalability analysis.

Install Skill

1Download skill
2Enable skills in Claude

Open claude.ai/settings/capabilities and find the "Skills" section

3Upload to Claude

Click "Upload skill" and select the downloaded ZIP file

Note: Please verify skill by going through its instructions before using it.

SKILL.md

name performance-testing
description Design and execute performance tests to measure response times, throughput, and resource utilization. Use for performance test, load test, JMeter, k6, benchmark, latency testing, and scalability analysis.

Performance Testing

Table of Contents

Overview

Performance testing measures how systems behave under various load conditions, including response times, throughput, resource utilization, and scalability. It helps identify bottlenecks, validate performance requirements, and ensure systems can handle expected loads.

When to Use

  • Validating response time requirements
  • Measuring API throughput and latency
  • Testing database query performance
  • Identifying performance bottlenecks
  • Comparing algorithm efficiency
  • Benchmarking before/after optimizations
  • Validating caching effectiveness
  • Testing concurrent user capacity

Quick Start

Minimal working example:

// load-test.js
import http from "k6/http";
import { check, sleep } from "k6";
import { Rate, Trend } from "k6/metrics";

// Custom metrics
const errorRate = new Rate("errors");
const orderDuration = new Trend("order_duration");

// Test configuration
export const options = {
  stages: [
    { duration: "2m", target: 10 }, // Ramp up to 10 users
    { duration: "5m", target: 10 }, // Stay at 10 users
    { duration: "2m", target: 50 }, // Ramp up to 50 users
    { duration: "5m", target: 50 }, // Stay at 50 users
    { duration: "2m", target: 0 }, // Ramp down to 0
  ],
  thresholds: {
    http_req_duration: ["p(95)<500"], // 95% of requests under 500ms
    http_req_failed: ["rate<0.01"], // Error rate under 1%
    errors: ["rate<0.1"], // Custom error rate under 10%
  },
};

// ... (see reference guides for full implementation)

Reference Guides

Detailed implementations in the references/ directory:

Guide Contents
k6 for API Load Testing k6 for API Load Testing
Apache JMeter Apache JMeter
pytest-benchmark for Python pytest-benchmark for Python
JMH for Java Benchmarking JMH for Java Benchmarking
Database Query Performance Database Query Performance
Real-Time Monitoring Real-Time Monitoring

Best Practices

✅ DO

  • Define clear performance requirements (SLAs)
  • Test with realistic data volumes
  • Monitor resource utilization
  • Test caching effectiveness
  • Use percentiles (P95, P99) over averages
  • Warm up before measuring
  • Run tests in production-like environment
  • Identify and fix N+1 query problems

❌ DON'T

  • Test only with small datasets
  • Ignore memory leaks
  • Test in unrealistic environments
  • Focus only on average response times
  • Skip database indexing analysis
  • Test only happy paths
  • Ignore network latency
  • Compare without statistical significance