Roadmap Analysis
by bartoszwarzocha
ROADMAP.md analysis and management. Use for finding pending tasks and updating completion status.
Skill Details
Repository Files
1 file in this skill directory
name: roadmap-analysis description: ROADMAP.md analysis and management. Use for finding pending tasks and updating completion status.
ROADMAP Analysis
1. ROADMAP.md Format
Checkboxes
[ ]- not done[x]- completed
NO task numbers in ROADMAP!
- Only feature/idea names
- OpenSpec numbers go in openspec/changes/
2. Finding Pending Items
Search pattern
[ ]
Check current phase
- Phase 0, Phase 1, etc.
- Priority: top to bottom within section
3. Proposing Tasks
When user has no idea:
- Read ROADMAP.md
- Find current phase section
- Select 3 uncompleted items
[ ] - Present to user:
Pending items from ROADMAP: 1. [Item name] - brief description 2. [Item name] - brief description 3. [Item name] - brief description Which one would you like to work on? - Wait for user selection
4. Updating ROADMAP
When feature is complete
Before:
- [ ] Add statistics panel
After:
- [x] Add statistics panel
Rules
- ONLY mark [x] when feature is fully done
- Do NOT add task numbers
- Do NOT add OpenSpec references
- Keep it simple: just checkboxes
5. ROADMAP Sections
Typical structure
# ROADMAP
## Phase 0 - Foundation
- [x] Project setup
- [x] Basic GUI
- [ ] Settings dialog
## Phase 1 - Core Editor
- [ ] Rich text editing
- [ ] Document structure
...
6. Cross-Reference with CHANGELOG
When updating ROADMAP:
- Also add entry to CHANGELOG.md [Unreleased]
- Use same feature name
- Keep descriptions consistent
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