discover-deployment
About
This skill automatically activates when working with deployment-related tasks like CI/CD, releases, or platforms such as Netlify and Heroku. It provides access to six specialized deployment skills covering deployment, troubleshooting, and optimization. Developers can load full category details to see complete descriptions, usage triggers, and workflow combinations.
Quick Install
Claude Code
Recommended/plugin add https://github.com/rand/cc-polymathgit clone https://github.com/rand/cc-polymath.git ~/.claude/skills/discover-deploymentCopy and paste this command in Claude Code to install this skill
Documentation
Deployment Skills Discovery
Provides automatic access to comprehensive deployment skills.
When This Skill Activates
This skill auto-activates when you're working with:
- deployment
- Netlify
- Heroku
- CI/CD
- production
- releases
- rollback
- deployment strategies
Available Skills
Quick Reference
The Deployment category contains 6 skills:
- heroku-addons
- heroku-deployment
- heroku-troubleshooting
- netlify-deployment
- netlify-functions
- netlify-optimization
Load Full Category Details
For complete descriptions and workflows:
cat skills/deployment/INDEX.md
This loads the full Deployment category index with:
- Detailed skill descriptions
- Usage triggers for each skill
- Common workflow combinations
- Cross-references to related skills
Load Specific Skills
Load individual skills as needed:
cat skills/deployment/heroku-addons.md
cat skills/deployment/heroku-deployment.md
cat skills/deployment/heroku-troubleshooting.md
cat skills/deployment/netlify-deployment.md
cat skills/deployment/netlify-functions.md
Progressive Loading
This gateway skill enables progressive loading:
- Level 1: Gateway loads automatically (you're here now)
- Level 2: Load category INDEX.md for full overview
- Level 3: Load specific skills as needed
Usage Instructions
- Auto-activation: This skill loads automatically when Claude Code detects deployment work
- Browse skills: Run
cat skills/deployment/INDEX.mdfor full category overview - Load specific skills: Use bash commands above to load individual skills
Next Steps: Run cat skills/deployment/INDEX.md to see full category details.
GitHub Repository
Related Skills
sglang
MetaSGLang is a high-performance LLM serving framework that specializes in fast, structured generation for JSON, regex, and agentic workflows using its RadixAttention prefix caching. It delivers significantly faster inference, especially for tasks with repeated prefixes, making it ideal for complex, structured outputs and multi-turn conversations. Choose SGLang over alternatives like vLLM when you need constrained decoding or are building applications with extensive prefix sharing.
Algorithmic Art Generation
MetaThis skill helps developers create algorithmic art using p5.js, focusing on generative art, computational aesthetics, and interactive visualizations. It automatically activates for topics like "generative art" or "p5.js visualization" and guides you through creating unique algorithms with features like seeded randomness, flow fields, and particle systems. Use it when you need to build reproducible, code-driven artistic patterns.
business-rule-documentation
MetaThis skill provides standardized templates for systematically documenting business logic and domain knowledge following Domain-Driven Design principles. It helps developers capture business rules, process flows, decision trees, and terminology glossaries to maintain consistency between requirements and implementation. Use it when documenting domain models, creating business rule repositories, or bridging communication between business and technical teams.
huggingface-accelerate
DevelopmentHuggingFace Accelerate provides the simplest API for adding distributed training to PyTorch scripts with just 4 lines of code. It offers a unified interface for multiple distributed training frameworks like DeepSpeed, FSDP, and DDP while handling automatic device placement and mixed precision. This makes it ideal for developers who want to quickly scale their PyTorch training across multiple GPUs or nodes without complex configuration.
