Implement Vercel load testing, auto-scaling, and capacity planning strategies. Use when running performance tests, configuring horizontal scaling, or planning capacity for Vercel integrations. Trigger with phrases like "vercel load test", "vercel scale", "vercel performance test", "vercel capacity", "vercel k6", "vercel benchmark".
Installation
Details
Usage
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skills listSkill Instructions
name: vercel-load-scale description: | Implement Vercel load testing, auto-scaling, and capacity planning strategies. Use when running performance tests, configuring horizontal scaling, or planning capacity for Vercel integrations. Trigger with phrases like "vercel load test", "vercel scale", "vercel performance test", "vercel capacity", "vercel k6", "vercel benchmark". allowed-tools: Read, Write, Edit, Bash(k6:), Bash(kubectl:) version: 1.0.0 license: MIT author: Jeremy Longshore jeremy@intentsolutions.io
Vercel Load Scale
Prerequisites
- k6 load testing tool installed
- Kubernetes cluster with HPA configured
- Prometheus for metrics collection
- Test environment API keys
Instructions
Step 1: Create Load Test Script
Write k6 test script with appropriate thresholds.
Step 2: Configure Auto-Scaling
Set up HPA with CPU and custom metrics.
Step 3: Run Load Test
Execute test and collect metrics.
Step 4: Analyze and Document
Record results in benchmark template.
Output
- Load test script created
- HPA configured
- Benchmark results documented
- Capacity recommendations defined
Error Handling
See {baseDir}/references/errors.md for comprehensive error handling.
Examples
See {baseDir}/references/examples.md for detailed examples.
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