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context-driven-development

majiayu000
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About

This skill helps developers implement and maintain Conductor's context-driven development methodology by managing key project artifacts like product.md, tech-stack.md, and workflow.md. It ensures consistent AI interactions and team alignment by treating project context as a first-class artifact managed alongside code. Use it when setting up new projects, onboarding team members, or maintaining consistency across AI-assisted development sessions.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/majiayu000/claude-skill-registry
Git CloneAlternative
git clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/context-driven-development

Copy and paste this command in Claude Code to install this skill

Documentation

Context-Driven Development

Guide for implementing and maintaining context as a managed artifact alongside code, enabling consistent AI interactions and team alignment through structured project documentation.

When to Use This Skill

  • Setting up new projects with Conductor
  • Understanding the relationship between context artifacts
  • Maintaining consistency across AI-assisted development sessions
  • Onboarding team members to an existing Conductor project
  • Deciding when to update context documents
  • Managing greenfield vs brownfield project contexts

Core Philosophy

Context-Driven Development treats project context as a first-class artifact managed alongside code. Instead of relying on ad-hoc prompts or scattered documentation, establish a persistent, structured foundation that informs all AI interactions.

Key principles:

  1. Context precedes code: Define what you're building and how before implementation
  2. Living documentation: Context artifacts evolve with the project
  3. Single source of truth: One canonical location for each type of information
  4. AI alignment: Consistent context produces consistent AI behavior

The Workflow

Follow the Context → Spec & Plan → Implement workflow:

  1. Context Phase: Establish or verify project context artifacts exist and are current
  2. Specification Phase: Define requirements and acceptance criteria for work units
  3. Planning Phase: Break specifications into phased, actionable tasks
  4. Implementation Phase: Execute tasks following established workflow patterns

Artifact Relationships

product.md - Defines WHAT and WHY

Purpose: Captures product vision, goals, target users, and business context.

Contents:

  • Product name and one-line description
  • Problem statement and solution approach
  • Target user personas
  • Core features and capabilities
  • Success metrics and KPIs
  • Product roadmap (high-level)

Update when:

  • Product vision or goals change
  • New major features are planned
  • Target audience shifts
  • Business priorities evolve

product-guidelines.md - Defines HOW to Communicate

Purpose: Establishes brand voice, messaging standards, and communication patterns.

Contents:

  • Brand voice and tone guidelines
  • Terminology and glossary
  • Error message conventions
  • User-facing copy standards
  • Documentation style

Update when:

  • Brand guidelines change
  • New terminology is introduced
  • Communication patterns need refinement

tech-stack.md - Defines WITH WHAT

Purpose: Documents technology choices, dependencies, and architectural decisions.

Contents:

  • Primary languages and frameworks
  • Key dependencies with versions
  • Infrastructure and deployment targets
  • Development tools and environment
  • Testing frameworks
  • Code quality tools

Update when:

  • Adding new dependencies
  • Upgrading major versions
  • Changing infrastructure
  • Adopting new tools or patterns

workflow.md - Defines HOW to Work

Purpose: Establishes development practices, quality gates, and team workflows.

Contents:

  • Development methodology (TDD, etc.)
  • Git workflow and commit conventions
  • Code review requirements
  • Testing requirements and coverage targets
  • Quality assurance gates
  • Deployment procedures

Update when:

  • Team practices evolve
  • Quality standards change
  • New workflow patterns are adopted

tracks.md - Tracks WHAT'S HAPPENING

Purpose: Registry of all work units with status and metadata.

Contents:

  • Active tracks with current status
  • Completed tracks with completion dates
  • Track metadata (type, priority, assignee)
  • Links to individual track directories

Update when:

  • New tracks are created
  • Track status changes
  • Tracks are completed or archived

Context Maintenance Principles

Keep Artifacts Synchronized

Ensure changes in one artifact reflect in related documents:

  • New feature in product.md → Update tech-stack.md if new dependencies needed
  • Completed track → Update product.md to reflect new capabilities
  • Workflow change → Update all affected track plans

Update tech-stack.md When Adding Dependencies

Before adding any new dependency:

  1. Check if existing dependencies solve the need
  2. Document the rationale for new dependencies
  3. Add version constraints
  4. Note any configuration requirements

Update product.md When Features Complete

After completing a feature track:

  1. Move feature from "planned" to "implemented" in product.md
  2. Update any affected success metrics
  3. Document any scope changes from original plan

Verify Context Before Implementation

Before starting any track:

  1. Read all context artifacts
  2. Flag any outdated information
  3. Propose updates before proceeding
  4. Confirm context accuracy with stakeholders

Greenfield vs Brownfield Handling

Greenfield Projects (New)

For new projects:

  1. Run /conductor:setup to create all artifacts interactively
  2. Answer questions about product vision, tech preferences, and workflow
  3. Generate initial style guides for chosen languages
  4. Create empty tracks registry

Characteristics:

  • Full control over context structure
  • Define standards before code exists
  • Establish patterns early

Brownfield Projects (Existing)

For existing codebases:

  1. Run /conductor:setup with existing codebase detection
  2. System analyzes existing code, configs, and documentation
  3. Pre-populate artifacts based on discovered patterns
  4. Review and refine generated context

Characteristics:

  • Extract implicit context from existing code
  • Reconcile existing patterns with desired patterns
  • Document technical debt and modernization plans
  • Preserve working patterns while establishing standards

Benefits

Team Alignment

  • New team members onboard faster with explicit context
  • Consistent terminology and conventions across the team
  • Shared understanding of product goals and technical decisions

AI Consistency

  • AI assistants produce aligned outputs across sessions
  • Reduced need to re-explain context in each interaction
  • Predictable behavior based on documented standards

Institutional Memory

  • Decisions and rationale are preserved
  • Context survives team changes
  • Historical context informs future decisions

Quality Assurance

  • Standards are explicit and verifiable
  • Deviations from context are detectable
  • Quality gates are documented and enforceable

Directory Structure

conductor/
├── index.md              # Navigation hub linking all artifacts
├── product.md            # Product vision and goals
├── product-guidelines.md # Communication standards
├── tech-stack.md         # Technology preferences
├── workflow.md           # Development practices
├── tracks.md             # Work unit registry
├── setup_state.json      # Resumable setup state
├── code_styleguides/     # Language-specific conventions
│   ├── python.md
│   ├── typescript.md
│   └── ...
└── tracks/
    └── <track-id>/
        ├── spec.md
        ├── plan.md
        ├── metadata.json
        └── index.md

Context Lifecycle

  1. Creation: Initial setup via /conductor:setup
  2. Validation: Verify before each track
  3. Evolution: Update as project grows
  4. Synchronization: Keep artifacts aligned
  5. Archival: Document historical decisions

Context Validation Checklist

Before starting implementation on any track, validate context:

Product Context

  • product.md reflects current product vision
  • Target users are accurately described
  • Feature list is up to date
  • Success metrics are defined

Technical Context

  • tech-stack.md lists all current dependencies
  • Version numbers are accurate
  • Infrastructure targets are correct
  • Development tools are documented

Workflow Context

  • workflow.md describes current practices
  • Quality gates are defined
  • Coverage targets are specified
  • Commit conventions are documented

Track Context

  • tracks.md shows all active work
  • No stale or abandoned tracks
  • Dependencies between tracks are noted

Common Anti-Patterns

Avoid these context management mistakes:

Stale Context

Problem: Context documents become outdated and misleading. Solution: Update context as part of each track's completion process.

Context Sprawl

Problem: Information scattered across multiple locations. Solution: Use the defined artifact structure; resist creating new document types.

Implicit Context

Problem: Relying on knowledge not captured in artifacts. Solution: If you reference something repeatedly, add it to the appropriate artifact.

Context Hoarding

Problem: One person maintains context without team input. Solution: Review context artifacts in pull requests; make updates collaborative.

Over-Specification

Problem: Context becomes so detailed it's impossible to maintain. Solution: Keep artifacts focused on decisions that affect AI behavior and team alignment.

Integration with Development Tools

IDE Integration

Configure your IDE to display context files prominently:

  • Pin conductor/product.md for quick reference
  • Add tech-stack.md to project notes
  • Create snippets for common patterns from style guides

Git Hooks

Consider pre-commit hooks that:

  • Warn when dependencies change without tech-stack.md update
  • Remind to update product.md when feature branches merge
  • Validate context artifact syntax

CI/CD Integration

Include context validation in pipelines:

  • Check tech-stack.md matches actual dependencies
  • Verify links in context documents resolve
  • Ensure tracks.md status matches git branch state

Session Continuity

Conductor supports multi-session development through context persistence:

Starting a New Session

  1. Read index.md to orient yourself
  2. Check tracks.md for active work
  3. Review relevant track's plan.md for current task
  4. Verify context artifacts are current

Ending a Session

  1. Update plan.md with current progress
  2. Note any blockers or decisions made
  3. Commit in-progress work with clear status
  4. Update tracks.md if status changed

Handling Interruptions

If interrupted mid-task:

  1. Mark task as [~] with note about stopping point
  2. Commit work-in-progress to feature branch
  3. Document any uncommitted decisions in plan.md

Best Practices

  1. Read context first: Always read relevant artifacts before starting work
  2. Small updates: Make incremental context changes, not massive rewrites
  3. Link decisions: Reference context when making implementation choices
  4. Version context: Commit context changes alongside code changes
  5. Review context: Include context artifact reviews in code reviews
  6. Validate regularly: Run context validation checklist before major work
  7. Communicate changes: Notify team when context artifacts change significantly
  8. Preserve history: Use git to track context evolution over time
  9. Question staleness: If context feels wrong, investigate and update
  10. Keep it actionable: Every context item should inform a decision or behavior

GitHub Repository

majiayu000/claude-skill-registry
Path: skills/context-driven-development

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