Configure Vercel across development, staging, and production environments. Use when setting up multi-environment deployments, configuring per-environment secrets, or implementing environment-specific Vercel configurations. Trigger with phrases like "vercel environments", "vercel staging", "vercel dev prod", "vercel environment setup", "vercel config by env".
Installation
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Usage
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name: vercel-multi-env-setup description: | Configure Vercel across development, staging, and production environments. Use when setting up multi-environment deployments, configuring per-environment secrets, or implementing environment-specific Vercel configurations. Trigger with phrases like "vercel environments", "vercel staging", "vercel dev prod", "vercel environment setup", "vercel config by env". allowed-tools: Read, Write, Edit, Bash(aws:), Bash(gcloud:), Bash(vault:*) version: 1.0.0 license: MIT author: Jeremy Longshore jeremy@intentsolutions.io
Vercel Multi Env Setup
Prerequisites
- Separate Vercel accounts or API keys per environment
- Secret management solution (Vault, AWS Secrets Manager, etc.)
- CI/CD pipeline with environment variables
- Environment detection in application
Instructions
Step 1: Create Config Structure
Set up the base and per-environment configuration files.
Step 2: Implement Environment Detection
Add logic to detect and load environment-specific config.
Step 3: Configure Secrets
Store API keys securely using your secret management solution.
Step 4: Add Environment Guards
Implement safeguards for production-only operations.
Output
- Multi-environment config structure
- Environment detection logic
- Secure secret management
- Production safeguards enabled
Error Handling
See {baseDir}/references/errors.md for comprehensive error handling.
Examples
See {baseDir}/references/examples.md for detailed examples.
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