AIConductor

AIConductor

Orchestrates multi-stakeholder feature refinement and development execution workflows for AI-assisted software teams.

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README

AIConductor

An open-source Model Context Protocol (MCP) server that orchestrates multi-stakeholder feature refinement and development execution workflows for AI-assisted software teams.

License: MIT CI Docker Node.js TypeScript


Overview

AIConductor gives your AI coding agent a structured, auditable pipeline — from raw feature idea to merged code. It exposes 39 MCP tools that any MCP-compatible agent (Claude, Copilot, Cursor, Cline, etc.) can call to drive tasks through two workflows:

  1. Feature Refinement — Break a feature into discrete tasks, then route each task through a sequential stakeholder approval chain before any code is written.
  2. Development Execution — Drive approved tasks through a Developer → Code Reviewer → QA lifecycle with full audit history.

Features

Multi-Stakeholder Reviews Product Director → Architect → UI/UX Expert → Security Officer approval chain
Development Pipeline Developer → Code Reviewer → QA → Done with NeedsChanges feedback loops
Real-time Dashboard Kanban board at localhost:5111 with live WebSocket updates
Multi-Repository Manage tasks across multiple codebases from a single server
Refinement Reports Generate markdown/HTML/JSON reports of the full refinement process
Workflow Checkpoints Save and restore workflow state; rollback the last stakeholder decision
Task Execution Planning Dependency analysis with parallelisation suggestions
Zero External Dependencies Everything persisted in a local SQLite database

Prerequisites

  • Docker and Docker Compose
  • An MCP-compatible AI agent (Claude Desktop, VS Code Copilot, Cursor, Cline, etc.)

Quick Start

git clone https://github.com/your-org/aiconductor.git
cd aiconductor
docker compose up -d

The MCP server and dashboard are now running. Connect your AI agent by adding the following to your MCP config:

Claude Desktop~/Library/Application Support/Claude/claude_desktop_config.json

{
  "mcpServers": {
    "aiconductor": {
      "command": "docker",
      "args": ["exec", "-i", "-e", "DISABLE_DASHBOARD=true", "aiconductor-mcp", "node", "dist/bundle.js"]
    }
  }
}

VS Code.vscode/mcp.json or user settings

{
  "mcp.servers": {
    "aiconductor": {
      "command": "docker",
      "args": ["exec", "-i", "-e", "DISABLE_DASHBOARD=true", "aiconductor-mcp", "node", "dist/bundle.js"]
    }
  }
}

Restart your agent. Open the dashboard at http://localhost:5111.


Workflows

Two slash-command workflows are included in .github/prompts/ and can be invoked directly from your agent.

/refine-feature — Feature Refinement

Turns a plain-text feature description into stakeholder-approved, implementation-ready tasks.

Feature Description
  │
  ├─ Scope determination & context gathering
  ├─ Attachment analysis (images, docs, spreadsheets)
  ├─ Clarification questions
  ├─ SMART acceptance criteria generation
  ├─ Test scenario generation
  ├─ Task breakdown (5–8 tasks)
  │
  └─ Batched stakeholder review cycle
       │
       ├─ Product Director  →  Architect  →  UI/UX Expert  →  Security Officer
       │        │                  │               │                  │
       │     reject             reject          reject             reject
       │        └──────────────────┴───────────────┴──────────────────┘
       │                                  ▼
       │                         NeedsRefinement → restart
       │
       └─ All tasks reach ReadyForDevelopment ✓

Tasks are processed in batches per role — a single role adoption covers all tasks in one pass, dramatically reducing context overhead.

/dev-workflow — Development Execution

Drives ReadyForDevelopment tasks through implementation to Done.

ReadyForDevelopment
  └─→ InProgress ─→ InReview ─→ InQA ─→ Done ✓
           │             │          │
           └─────────────┴──────────┘
                    NeedsChanges → back to InProgress

Each stage is handled by a distinct role: Developer (implements & tests), Code Reviewer (approves or requests changes), QA (verifies acceptance criteria).


Dashboard

Open http://localhost:5111 in your browser.

Kanban Board Feature Details
AIConductor Kanban Board AIConductor Feature Details
  • Kanban board — Task cards arranged by workflow status; empty columns collapse to a slim strip so all columns fit on screen without horizontal scrolling
  • Real-time updates — WebSocket connection pushes task state changes instantly to all open browser tabs
  • Detail panel — Per-feature acceptance criteria, test scenarios, clarifications, and refinement step progress
  • Multi-repo switcher — Switch between registered repositories from the sidebar
  • Reviewer presence — See which reviewers are currently active on a feature

MCP Tools Reference

Orchestration

Tool Description
get_next_step Returns the next role, system prompt, and required output fields for a task — the primary orchestration driver
get_workflow_snapshot Compressed overview of all task statuses and roles for a feature (~5 KB vs ~50 KB for full fetch)
get_task_execution_plan Dependency analysis with optimal execution order and parallelisable phases
get_similar_tasks Find comparable tasks from past features to aid estimation
get_workflow_metrics Cycle time, throughput, and bottleneck statistics

Stakeholder Reviews

Tool Description
add_stakeholder_review Submit an approve/reject review with role-specific structured fields
validate_review_completeness Pre-flight check that all required fields are present before submitting
get_task_status Current status, completed/pending reviews, and allowed transitions
get_review_summary Completion percentage and stakeholder progress across all tasks
validate_workflow Dry-run validation — check if a transition can proceed
rollback_last_decision Undo the most recent stakeholder decision on a task

Development Pipeline

Tool Description
transition_task_status Move a task through development stages (InProgress → InReview → InQA → Done)
batch_transition_tasks Transition multiple tasks atomically in a single call
get_next_task Get the next task to work on, optionally filtered by status
get_tasks_by_status List all tasks matching a specific status
verify_all_tasks_complete Assert every task in a feature has reached Done
update_acceptance_criteria Mark individual acceptance criteria as verified
batch_update_acceptance_criteria Verify multiple criteria in one call

Feature & Task Management

Tool Description
create_feature Create a new feature with slug, name, and description
update_feature Update feature metadata (name, description)
get_feature Load full feature data including all tasks, criteria, and scenarios
list_features List all features in a repository with task counts
delete_feature Remove a feature and all associated tasks, reviews, and transitions
add_task Add a task to a feature with acceptance criteria and test scenarios
update_task Modify task properties (title, description, criteria, scenarios, dependencies)
delete_task Remove a task and all its data

Refinement Tracking

Tool Description
update_refinement_step Record progress through the 8-step refinement workflow
get_refinement_status Full refinement progress including step completion and criteria
add_feature_acceptance_criteria Add feature-level acceptance criteria (before tasks are created)
add_feature_test_scenarios Add feature-level test scenarios
add_clarification Record a clarification question and answer
add_attachment_analysis Store analysis results for an attached file or design
generate_refinement_report Export the full refinement process as markdown, HTML, or JSON

Checkpoint Management

Tool Description
save_workflow_checkpoint Save current workflow state with a description
list_workflow_checkpoints List all saved checkpoints for a feature
restore_workflow_checkpoint Resume from a previously saved checkpoint

Repository Management

Tool Description
register_repo Register a new repository namespace
list_repos List all registered repositories with task counts
get_current_repo Auto-detect the repository from the current working directory

Stakeholder Roles

Role Focus Areas Key Output Fields
Product Director Market fit, user value, acceptance criteria quality marketAnalysis, competitorAnalysis, quickSummary
Architect Technical feasibility, design patterns, technology choices technologyRecommendations, designPatterns
UI/UX Expert Usability, accessibility, user behaviour usabilityFindings, accessibilityRequirements, userBehaviorInsights
Security Officer Security requirements, compliance, risk assessment securityRequirements, complianceNotes

Project Structure

src/
├── index.ts                 # MCP server — tool definitions and request handling
├── AIConductor.ts     # Business logic for all workflow operations
├── WorkflowValidator.ts     # State machine — validates transitions and returns role prompts
├── DatabaseHandler.ts       # SQLite CRUD operations
├── rolePrompts.ts           # System prompts for each stakeholder role
├── websocket.ts             # WebSocket server — real-time event broadcasting
├── dashboard.ts             # Express web server (port 5111)
├── types.ts                 # TypeScript interfaces
└── client/                  # React SPA (Vite)

.github/prompts/
├── refine-feature.prompt.md # Feature refinement workflow
└── dev-workflow.prompt.md   # Development execution workflow

Database:

  • Docker: /data/tasks.db (persistent volume task-review-data)
  • Local: ./tasks.db in project root

Local Development

npm install
npm run dev          # Watch mode — recompiles on change
npm run build        # Production build (server + client)
npm test             # Run all tests with coverage
npm run lint         # TypeScript and code quality lint
npm run dashboard    # Start dashboard standalone (port 5111)

To rebuild the Docker image after code changes:

docker compose up -d --build

CI/CD Pipeline

All pull requests automatically run through our GitHub Actions CI workflow, which includes:

  • Build — TypeScript compilation with npm run build
  • Lint — Code quality checks with npm run lint
  • Test — Jest tests with coverage tracking via npm test
  • Coverage — Coverage metrics uploaded to Codecov

See CONTRIBUTING.md for details on running these checks locally, understanding failures, and our branch protection rules.


Configuration

Variable Default Description
DATABASE_PATH ./tasks.db SQLite file location (/data/tasks.db in Docker)

To reset all data:

docker compose down -v && docker compose up -d

License

MIT

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