generating-docker-compose-files
About
This skill generates Docker Compose files and provides guidance for multi-container applications. It automates configuration and can be triggered with phrases like "generate docker-compose" or "configure multi-container app." Developers can use it to quickly set up and manage containerized environments with comprehensive tool support.
Quick Install
Claude Code
Recommended/plugin add https://github.com/jeremylongshore/claude-code-plugins-plusgit clone https://github.com/jeremylongshore/claude-code-plugins-plus.git ~/.claude/skills/generating-docker-compose-filesCopy and paste this command in Claude Code to install this skill
Documentation
Prerequisites
Before using this skill, ensure:
- Required credentials and permissions for the operations
- Understanding of the system architecture and dependencies
- Backup of critical data before making structural changes
- Access to relevant documentation and configuration files
- Monitoring tools configured for observability
- Development or staging environment available for testing
Instructions
Step 1: Assess Current State
- Review current configuration, setup, and baseline metrics
- Identify specific requirements, goals, and constraints
- Document existing patterns, issues, and pain points
- Analyze dependencies and integration points
- Validate all prerequisites are met before proceeding
Step 2: Design Solution
- Define optimal approach based on best practices
- Create detailed implementation plan with clear steps
- Identify potential risks and mitigation strategies
- Document expected outcomes and success criteria
- Review plan with team or stakeholders if needed
Step 3: Implement Changes
- Execute implementation in non-production environment first
- Verify changes work as expected with thorough testing
- Monitor for any issues, errors, or performance impacts
- Document all changes, decisions, and configurations
- Prepare rollback plan and recovery procedures
Step 4: Validate Implementation
- Run comprehensive tests to verify all functionality
- Compare performance metrics against baseline
- Confirm no unintended side effects or regressions
- Update all relevant documentation
- Obtain approval before production deployment
Step 5: Deploy to Production
- Schedule deployment during appropriate maintenance window
- Execute implementation with real-time monitoring
- Watch closely for any issues or anomalies
- Verify successful deployment and functionality
- Document completion, metrics, and lessons learned
Output
This skill produces:
Implementation Artifacts: Scripts, configuration files, code, and automation tools
Documentation: Comprehensive documentation of changes, procedures, and architecture
Test Results: Validation reports, test coverage, and quality metrics
Monitoring Configuration: Dashboards, alerts, metrics, and observability setup
Runbooks: Operational procedures for maintenance, troubleshooting, and incident response
Error Handling
Permission and Access Issues:
- Verify credentials and permissions for all operations
- Request elevated access if required for specific tasks
- Document all permission requirements for automation
- Use separate service accounts for privileged operations
- Implement least-privilege access principles
Connection and Network Failures:
- Check network connectivity, firewalls, and security groups
- Verify service endpoints, DNS resolution, and routing
- Test connections using diagnostic and troubleshooting tools
- Review network policies, ACLs, and security configurations
- Implement retry logic with exponential backoff
Resource Constraints:
- Monitor resource usage (CPU, memory, disk, network)
- Implement throttling, rate limiting, or queue mechanisms
- Schedule resource-intensive tasks during low-traffic periods
- Scale infrastructure resources if consistently hitting limits
- Optimize queries, code, or configurations for efficiency
Configuration and Syntax Errors:
- Validate all configuration syntax before applying changes
- Test configurations thoroughly in non-production first
- Implement automated configuration validation checks
- Maintain version control for all configuration files
- Keep previous working configuration for quick rollback
Resources
Configuration Templates: {baseDir}/templates/docker-compose-generator/
Documentation and Guides: {baseDir}/docs/docker-compose-generator/
Example Scripts and Code: {baseDir}/examples/docker-compose-generator/
Troubleshooting Guide: {baseDir}/docs/docker-compose-generator-troubleshooting.md
Best Practices: {baseDir}/docs/docker-compose-generator-best-practices.md
Monitoring Setup: {baseDir}/monitoring/docker-compose-generator-dashboard.json
GitHub Repository
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