create-github-issues-feature-from-implementation-plan
$
npx mdskill add github/awesome-copilot/create-github-issues-feature-from-implementation-planCreates GitHub Issues from implementation plan phases using templates for feature or chore requests.
- Helps automate issue creation from structured implementation plans to streamline project management.
- Integrates with GitHub APIs to search, create, and update issues using specified templates.
- Analyzes plan files to identify phases and checks for existing issues to avoid duplicates.
- Presents results as new or updated issues with clear titles, descriptions, and labels.
SKILL.md
.github/skills/create-github-issues-feature-from-implementation-planView on GitHub ↗
---
name: create-github-issues-feature-from-implementation-plan
description: 'Create GitHub Issues from implementation plan phases using feature_request.yml or chore_request.yml templates.'
---
# Create GitHub Issue from Implementation Plan
Create GitHub Issues for the implementation plan at `${file}`.
## Process
1. Analyze plan file to identify phases
2. Check existing issues using `search_issues`
3. Create new issue per phase using `create_issue` or update existing with `update_issue`
4. Use `feature_request.yml` or `chore_request.yml` templates (fallback to default)
## Requirements
- One issue per implementation phase
- Clear, structured titles and descriptions
- Include only changes required by the plan
- Verify against existing issues before creation
## Issue Content
- Title: Phase name from implementation plan
- Description: Phase details, requirements, and context
- Labels: Appropriate for issue type (feature/chore)
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