conductor-setup
About
The conductor-setup skill initializes projects by generating Conductor artifacts like product definitions and tech stacks through interactive Q&A. Use it when starting conductor setup tasks to get guided best practices and foundational documentation. It includes pre-flight checks for existing configurations and provides actionable implementation steps.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/conductor-setupCopy and paste this command in Claude Code to install this skill
Documentation
Conductor Setup
Initialize or resume Conductor project setup. This command creates foundational project documentation through interactive Q&A.
Use this skill when
- Working on conductor setup tasks or workflows
- Needing guidance, best practices, or checklists for conductor setup
Do not use this skill when
- The task is unrelated to conductor setup
- You need a different domain or tool outside this scope
Instructions
- Clarify goals, constraints, and required inputs.
- Apply relevant best practices and validate outcomes.
- Provide actionable steps and verification.
- If detailed examples are required, open
resources/implementation-playbook.md.
Pre-flight Checks
-
Check if
conductor/directory already exists in the project root:- If
conductor/product.mdexists: Ask user whether to resume setup or reinitialize - If
conductor/setup_state.jsonexists with incomplete status: Offer to resume from last step
- If
-
Detect project type by checking for existing indicators:
- Greenfield (new project): No .git, no package.json, no requirements.txt, no go.mod, no src/ directory
- Brownfield (existing project): Any of the above exist
-
Load or create
conductor/setup_state.json:{ "status": "in_progress", "project_type": "greenfield|brownfield", "current_section": "product|guidelines|tech_stack|workflow|styleguides", "current_question": 1, "completed_sections": [], "answers": {}, "files_created": [], "started_at": "ISO_TIMESTAMP", "last_updated": "ISO_TIMESTAMP" }
Interactive Q&A Protocol
CRITICAL RULES:
- Ask ONE question per turn
- Wait for user response before proceeding
- Offer 2-3 suggested answers plus "Type your own" option
- Maximum 5 questions per section
- Update
setup_state.jsonafter each successful step - Validate file writes succeeded before continuing
Section 1: Product Definition (max 5 questions)
Q1: Project Name
What is your project name?
Suggested:
1. [Infer from directory name]
2. [Infer from package.json/go.mod if brownfield]
3. Type your own
Q2: Project Description
Describe your project in one sentence.
Suggested:
1. A web application that [does X]
2. A CLI tool for [doing Y]
3. Type your own
Q3: Problem Statement
What problem does this project solve?
Suggested:
1. Users struggle to [pain point]
2. There's no good way to [need]
3. Type your own
Q4: Target Users
Who are the primary users?
Suggested:
1. Developers building [X]
2. End users who need [Y]
3. Internal teams managing [Z]
4. Type your own
Q5: Key Goals (optional)
What are 2-3 key goals for this project? (Press enter to skip)
Section 2: Product Guidelines (max 3 questions)
Q1: Voice and Tone
What voice/tone should documentation and UI text use?
Suggested:
1. Professional and technical
2. Friendly and approachable
3. Concise and direct
4. Type your own
Q2: Design Principles
What design principles guide this project?
Suggested:
1. Simplicity over features
2. Performance first
3. Developer experience focused
4. User safety and reliability
5. Type your own (comma-separated)
Section 3: Tech Stack (max 5 questions)
For brownfield projects, first analyze existing code:
- Run
Globto find package.json, requirements.txt, go.mod, Cargo.toml, etc. - Parse detected files to pre-populate tech stack
- Present findings and ask for confirmation/additions
Q1: Primary Language(s)
What primary language(s) does this project use?
[For brownfield: "I detected: Python 3.11, JavaScript. Is this correct?"]
Suggested:
1. TypeScript
2. Python
3. Go
4. Rust
5. Type your own (comma-separated)
Q2: Frontend Framework (if applicable)
What frontend framework (if any)?
Suggested:
1. React
2. Vue
3. Next.js
4. None / CLI only
5. Type your own
Q3: Backend Framework (if applicable)
What backend framework (if any)?
Suggested:
1. Express / Fastify
2. Django / FastAPI
3. Go standard library
4. None / Frontend only
5. Type your own
Q4: Database (if applicable)
What database (if any)?
Suggested:
1. PostgreSQL
2. MongoDB
3. SQLite
4. None / Stateless
5. Type your own
Q5: Infrastructure
Where will this be deployed?
Suggested:
1. AWS (Lambda, ECS, etc.)
2. Vercel / Netlify
3. Self-hosted / Docker
4. Not decided yet
5. Type your own
Section 4: Workflow Preferences (max 4 questions)
Q1: TDD Strictness
How strictly should TDD be enforced?
Suggested:
1. Strict - tests required before implementation
2. Moderate - tests encouraged, not blocked
3. Flexible - tests recommended for complex logic
Q2: Commit Strategy
What commit strategy should be followed?
Suggested:
1. Conventional Commits (feat:, fix:, etc.)
2. Descriptive messages, no format required
3. Squash commits per task
Q3: Code Review Requirements
What code review policy?
Suggested:
1. Required for all changes
2. Required for non-trivial changes
3. Optional / self-review OK
Q4: Verification Checkpoints
When should manual verification be required?
Suggested:
1. After each phase completion
2. After each task completion
3. Only at track completion
Section 5: Code Style Guides (max 2 questions)
Q1: Languages to Include
Which language style guides should be generated?
[Based on detected languages, pre-select]
Options:
1. TypeScript/JavaScript
2. Python
3. Go
4. Rust
5. All detected languages
6. Skip style guides
Q2: Existing Conventions
Do you have existing linting/formatting configs to incorporate?
[For brownfield: "I found .eslintrc, .prettierrc. Should I incorporate these?"]
Suggested:
1. Yes, use existing configs
2. No, generate fresh guides
3. Skip this step
Artifact Generation
After completing Q&A, generate the following files:
1. conductor/index.md
# Conductor - [Project Name]
Navigation hub for project context.
## Quick Links
- [Product Definition](./product.md)
- [Product Guidelines](./product-guidelines.md)
- [Tech Stack](./tech-stack.md)
- [Workflow](./workflow.md)
- [Tracks](./tracks.md)
## Active Tracks
<!-- Auto-populated by /conductor:new-track -->
## Getting Started
Run `/conductor:new-track` to create your first feature track.
2. conductor/product.md
Template populated with Q&A answers for:
- Project name and description
- Problem statement
- Target users
- Key goals
3. conductor/product-guidelines.md
Template populated with:
- Voice and tone
- Design principles
- Any additional standards
4. conductor/tech-stack.md
Template populated with:
- Languages (with versions if detected)
- Frameworks (frontend, backend)
- Database
- Infrastructure
- Key dependencies (for brownfield, from package files)
5. conductor/workflow.md
Template populated with:
- TDD policy and strictness level
- Commit strategy and conventions
- Code review requirements
- Verification checkpoint rules
- Task lifecycle definition
6. conductor/tracks.md
# Tracks Registry
| Status | Track ID | Title | Created | Updated |
| ------ | -------- | ----- | ------- | ------- |
<!-- Tracks registered by /conductor:new-track -->
7. conductor/code_styleguides/
Generate selected style guides from $CLAUDE_PLUGIN_ROOT/templates/code_styleguides/
State Management
After each successful file creation:
- Update
setup_state.json:- Add filename to
files_createdarray - Update
last_updatedtimestamp - If section complete, add to
completed_sections
- Add filename to
- Verify file exists with
Readtool
Completion
When all files are created:
-
Set
setup_state.jsonstatus to "complete" -
Display summary:
Conductor setup complete! Created artifacts: - conductor/index.md - conductor/product.md - conductor/product-guidelines.md - conductor/tech-stack.md - conductor/workflow.md - conductor/tracks.md - conductor/code_styleguides/[languages] Next steps: 1. Review generated files and customize as needed 2. Run /conductor:new-track to create your first track
Resume Handling
If --resume argument or resuming from state:
- Load
setup_state.json - Skip completed sections
- Resume from
current_sectionandcurrent_question - Verify previously created files still exist
- If files missing, offer to regenerate
Error Handling
- If file write fails: Halt and report error, do not update state
- If user cancels: Save current state for future resume
- If state file corrupted: Offer to start fresh or attempt recovery
GitHub Repository
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