A community based topic aggregation platform built on atproto
AI Agent Guidelines for Coves#
Issue Tracking with bd (beads)#
IMPORTANT: This project uses bd (beads) for ALL issue tracking. Do NOT use markdown TODOs, task lists, or other tracking methods.
Why bd?#
- Dependency-aware: Track blockers and relationships between issues
- Git-friendly: Auto-syncs to JSONL for version control
- Agent-optimized: JSON output, ready work detection, discovered-from links
- Prevents duplicate tracking systems and confusion
Quick Start#
Check for ready work:
bd ready --json
Create new issues:
bd create "Issue title" -t bug|feature|task -p 0-4 --json
bd create "Issue title" -p 1 --deps discovered-from:bd-123 --json
Claim and update:
bd update bd-42 --status in_progress --json
bd update bd-42 --priority 1 --json
Complete work:
bd close bd-42 --reason "Completed" --json
Issue Types#
bug- Something brokenfeature- New functionalitytask- Work item (tests, docs, refactoring)epic- Large feature with subtaskschore- Maintenance (dependencies, tooling)
Priorities#
0- Critical (security, data loss, broken builds)1- High (major features, important bugs)2- Medium (default, nice-to-have)3- Low (polish, optimization)4- Backlog (future ideas)
Workflow for AI Agents#
- Check ready work:
bd readyshows unblocked issues - Claim your task:
bd update <id> --status in_progress - Work on it: Implement, test, document
- Discover new work? Create linked issue:
bd create "Found bug" -p 1 --deps discovered-from:<parent-id>
- Complete:
bd close <id> --reason "Done" - Commit together: Always commit the
.beads/issues.jsonlfile together with the code changes so issue state stays in sync with code state
Auto-Sync#
bd automatically syncs with git:
- Exports to
.beads/issues.jsonlafter changes (5s debounce) - Imports from JSONL when newer (e.g., after
git pull) - No manual export/import needed!
MCP Server (Recommended)#
If using Claude or MCP-compatible clients, install the beads MCP server:
pip install beads-mcp
Add to MCP config (e.g., ~/.config/claude/config.json):
{
"beads": {
"command": "beads-mcp",
"args": []
}
}
Then use mcp__beads__* functions instead of CLI commands.
Managing AI-Generated Planning Documents#
AI assistants often create planning and design documents during development:
- PLAN.md, IMPLEMENTATION.md, ARCHITECTURE.md
- DESIGN.md, CODEBASE_SUMMARY.md, INTEGRATION_PLAN.md
- TESTING_GUIDE.md, TECHNICAL_DESIGN.md, and similar files
Best Practice: Use a dedicated directory for these ephemeral files
Recommended approach:
- Create a
history/directory in the project root - Store ALL AI-generated planning/design docs in
history/ - Keep the repository root clean and focused on permanent project files
- Only access
history/when explicitly asked to review past planning
Example .gitignore entry (optional):
# AI planning documents (ephemeral)
history/
Benefits:
- ✅ Clean repository root
- ✅ Clear separation between ephemeral and permanent documentation
- ✅ Easy to exclude from version control if desired
- ✅ Preserves planning history for archeological research
- ✅ Reduces noise when browsing the project
Important Rules#
- ✅ Use bd for ALL task tracking
- ✅ Always use
--jsonflag for programmatic use - ✅ Link discovered work with
discovered-fromdependencies - ✅ Check
bd readybefore asking "what should I work on?" - ✅ Store AI planning docs in
history/directory - ❌ Do NOT create markdown TODO lists
- ❌ Do NOT use external issue trackers
- ❌ Do NOT duplicate tracking systems
- ❌ Do NOT clutter repo root with planning documents
For more details, see the beads repository.