skills/sharing-skills/SKILL.md
Use when you've developed a broadly useful skill and want to contribute it upstream via pull request - guides process of branching, committing, pushing, and creating PR to contribute skills back to upstream repository
npx skillsauth add enuno/claude-command-and-control sharing-skillsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Contribute skills from your local branch back to the upstream repository.
Workflow: Branch → Edit/Create skill → Commit → Push → PR
Share when:
Keep personal when:
gh CLI installed and authenticated~/.config/superpowers/skills/ (your local clone)cd ~/.config/superpowers/skills/
git checkout main
git pull upstream main
git push origin main # Push to your fork
# Branch name: add-skillname-skill
skill_name="your-skill-name"
git checkout -b "add-${skill_name}-skill"
# Work on your skill in skills/
# Create new skill or edit existing one
# Skill should be in skills/category/skill-name/SKILL.md
# Add and commit
git add skills/your-skill-name/
git commit -m "Add ${skill_name} skill
$(cat <<'EOF'
Brief description of what this skill does and why it's useful.
Tested with: [describe testing approach]
EOF
)"
git push -u origin "add-${skill_name}-skill"
# Create PR to upstream using gh CLI
gh pr create \
--repo upstream-org/upstream-repo \
--title "Add ${skill_name} skill" \
--body "$(cat <<'EOF'
## Summary
Brief description of the skill and what problem it solves.
## Testing
Describe how you tested this skill (pressure scenarios, baseline tests, etc.).
## Context
Any additional context about why this skill is needed and how it should be used.
EOF
)"
Here's a complete example of sharing a skill called "async-patterns":
# 1. Sync with upstream
cd ~/.config/superpowers/skills/
git checkout main
git pull upstream main
git push origin main
# 2. Create branch
git checkout -b "add-async-patterns-skill"
# 3. Create/edit the skill
# (Work on skills/async-patterns/SKILL.md)
# 4. Commit
git add skills/async-patterns/
git commit -m "Add async-patterns skill
Patterns for handling asynchronous operations in tests and application code.
Tested with: Multiple pressure scenarios testing agent compliance."
# 5. Push
git push -u origin "add-async-patterns-skill"
# 6. Create PR
gh pr create \
--repo upstream-org/upstream-repo \
--title "Add async-patterns skill" \
--body "## Summary
Patterns for handling asynchronous operations correctly in tests and application code.
## Testing
Tested with multiple application scenarios. Agents successfully apply patterns to new code.
## Context
Addresses common async pitfalls like race conditions, improper error handling, and timing issues."
Once your PR is merged:
cd ~/.config/superpowers/skills/
git checkout main
git pull upstream main
git push origin main
git branch -d "add-${skill_name}-skill"
git push origin --delete "add-${skill_name}-skill"
"gh: command not found"
gh auth login"Permission denied (publickey)"
gh auth status"Skill already exists"
PR merge conflicts
git fetch upstream && git rebase upstream/maingit push -f origin your-branchDo NOT batch multiple skills in one PR.
Each skill should:
Why? Individual skills can be reviewed, iterated, and merged independently.
tools
MemPalace local-first AI memory system. Use when setting up persistent memory for Claude Code sessions, mining project files or conversation transcripts, querying past context, configuring MCP tools, managing the knowledge graph, or troubleshooting palace operations.
tools
LangSmith Python SDK — trace, evaluate, and monitor LLM applications. Covers @traceable decorator, trace context manager, Client API, evaluate() / aevaluate(), comparative evaluation, custom evaluators, dataset management, prompt caching, ASGI middleware, and pytest plugin.
development
LangGraph (Python) — build stateful, controllable agent graphs with checkpointing, streaming, persistence, interrupts, fault tolerance, and durable execution. Covers both Graph API (StateGraph) and Functional API (@entrypoint/@task).
development
LangGraph Graph API (Python) — build explicit DAG agent workflows with StateGraph, typed state, nodes, edges, Command routing, Send fan-out, checkpointers, interrupts, and streaming. Use when you need explicit control flow and graph topology.