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Hanary MCP Server - Task management for Claude Code, OpenCode & OpenAI Codex

Project description

Hanary MCP Server

Hanary MCP Server for Claude Code & OpenCode - task management that keeps new work outside the priority list until the user decides.

What Hanary MCP Is For

Hanary MCP is an operating layer for AI coding assistants. It lets agents read, start, update, and complete work from Hanary while preserving the user's priority decisions.

The key rule is: agents may capture and organize new work, but they should not silently insert it into the active priority order. New tasks default to needs_decision, staying outside top-task, start, and complete candidates until the user explicitly chooses to prioritize them.

Use Hanary MCP when you want Claude Code, OpenCode, or Codex to work from your confirmed Hanary task structure instead of inventing its own task order.

Mental model:

  • Hanary owns the user's task hierarchy and priority order.
  • The AI assistant follows that order.
  • New work is captured safely as needs_decision.
  • Only explicit user intent promotes work into the active priority list.
  • executor_type: "ai" means user-approved execution delegation, not AI-owned priority judgment.
  • Meaning, priority, and completion judgment stay with the user.

API vs MCP

Hanary's REST API remains the canonical product API. Use it for first-party apps, mobile or desktop clients, custom integrations, and any workflow where you control the application code that calls Hanary.

MCP is the AI-assistant integration surface on top of that API. Use it when you want tools like Claude Code, OpenCode, or Codex to discover Hanary actions automatically through tools/list, call them through tools/call, and receive the priority-boundary guidance directly in tool schemas and server instructions.

In practice:

  • REST API is for application integrations.
  • MCP is for agent integrations.
  • hanary-mcp is the installable stdio bridge plus commands, skills, and agent guidance for local coding assistants.

MCP is not required to perform Hanary operations, but it avoids rebuilding the same tool wrapper for every AI host and keeps the assistant's behavior aligned with Hanary's user-owned priority model.

Features

  • MCP Server: Direct tool integration with Claude Code and OpenCode
  • Slash Commands: /hanary-status, /hanary-start, /hanary-done
  • Skills: Task management workflow with estimation patterns
  • Agents: Task planner that drafts complex work decomposition for user review
  • Project Sync: Safe checks, diffs, and updates for generated assistant files
  • Full Compatibility: Works with both Claude Code and OpenCode

Installation

# Using uvx (recommended)
uvx hanary-mcp --squad my-project

# Or install globally
uv tool install hanary-mcp

Configuration

Project-Scoped Setup (Recommended)

Use project-scoped setup when different repositories should bind to different Hanary squads. Run this from the project root:

uvx hanary-mcp init --squad your-squad-slug .

This creates project-local integration files:

  • .mcp.json for Claude Code
  • opencode.json for OpenCode
  • .codex/config.toml for OpenAI Codex

Repeat the command in each project with that project's squad slug. This keeps AI assistants working inside the right Hanary squad without sharing one global --squad value across all projects.

After setup, verify the local binding:

uvx hanary-mcp doctor --squad your-squad-slug

Inside an AI assistant, use get_current_scope when the active project or squad is unclear before creating, starting, completing, or reordering tasks. In project-scoped squad mode, the MCP server exposes the squad as the working boundary: use get_top_task for "what should I do next" inside that project. get_overall_top_task is intentionally not exposed in squad mode; use a separate personal/global Hanary MCP only when the user explicitly asks to leave the project scope.

Keeping Project Files Synced

Use hanary-mcp sync after upgrading hanary-mcp when an existing project should receive updated commands, skills, agents, or generated MCP config.

Start with a status check:

uvx hanary-mcp sync --squad your-squad-slug .

Review diffs before writing:

uvx hanary-mcp sync --squad your-squad-slug --dry-run .

Write only safe changes:

uvx hanary-mcp sync --squad your-squad-slug --write .

sync --write creates missing files and updates files that still match the last managed template hash. It does not overwrite user-modified files. Local config files such as .mcp.json, opencode.json, and .codex/config.toml are marked for review instead of being overwritten, because they may contain squad slugs, tokens, uv cache settings, or other project-specific choices.

The sync manifest is stored in .hanary-mcp-sync.json. It records template hashes for files managed by hanary-mcp, so future upgrades can distinguish safe generated-file updates from user edits. AI guidance changes are listed separately in sync output because they affect assistant judgment boundaries.

Claude Code Setup

  1. Set your API token as a system environment variable:
export HANARY_API_TOKEN='your-token-here'
  1. Prefer hanary-mcp init above, or add this to your project's .mcp.json manually:
{
  "mcpServers": {
    "hanary": {
      "command": "uvx",
      "args": ["hanary-mcp", "--squad", "your-squad-slug"]
    }
  }
}

Global CLI registration is useful only when one Hanary squad should be used everywhere:

claude mcp add hanary -- uvx hanary-mcp --squad your-squad-slug

Do not use global CLI registration with --squad when you need project-by-project squad separation. In that case, keep the --squad binding in each project's .mcp.json or .codex/config.toml instead.

Environment Variables

Set these in your shell profile (.bashrc, .zshrc, etc.):

Variable Required Description
HANARY_API_TOKEN Yes Your Hanary API token
HANARY_API_URL No API URL (default: https://hanary.org)

Available Tools

Default Agent Workflow

Use Hanary MCP around one confirmed focus at a time:

get_top_task -> get_task/update_task for context and notes -> start_task
-> do the work -> stop_task/complete_task against user-defined criteria
-> get_top_task for the next focus

list_tasks, search_tasks, get_tasks_summary, and get_task_tree are context tools. They help inspect related work, duplicates, blockers, hierarchy, or review state, but they should not replace get_top_task as the source of current focus. When this server is started with --squad, get_top_task is the project focus boundary. Do not switch to overall/global focus unless the user explicitly asks to work outside the current project squad.

If get_top_task returns is_llm_boundary=true, treat it as a judgment boundary, not as permission to pick from a list. The response may include human_prioritized_candidates: these are user-prioritized tasks that are still marked executor_type: "human". Report that prioritized work exists but has not been delegated to AI. Do not start the task, change executor_type, or skip to a lower-priority AI task unless the user explicitly delegates AI execution or explicitly chooses that lower-priority work.

Task Management

  • get_current_scope - Show whether this MCP server is in personal mode or bound to a project squad
  • get_top_task - Get the current AI focus without bypassing the user's confirmed priority order
  • get_overall_top_task - Personal mode only: get the user's highest-priority task across personal and accessible squad work. This tool is not exposed when the MCP server is bound to a project squad.
  • get_task - Inspect a specific task with its purpose, process notes, children, ancestors, and time summary
  • list_tasks - List tasks as supporting context; use get_tasks_summary for overviews
  • search_tasks - Find related tasks, duplicates, or blockers without choosing focus automatically
  • get_task_tree - Inspect hierarchy and decomposition without treating the tree as a new priority order
  • create_task - Create a new task. Defaults to needs_decision; use planning_status: "prioritized" only when the user explicitly wants immediate priority placement.
  • update_task - Update task title, description, completion criteria, or notes
  • complete_task - Mark task as completed against user-defined completion criteria
  • uncomplete_task - Mark task as incomplete
  • delete_task - Soft delete a task
  • reorder_task / batch_reorder_tasks - Change priority order only after explicit user-confirmed placement
  • move_task / batch_move_tasks - Clarify hierarchy after user confirmation; moving does not make work executable by itself
  • hold_task / unhold_task - Pause or resume focus eligibility only after explicit user intent

Squad

  • list_my_squads - List squads the current user belongs to so the user can choose a project-scoped squad slug
  • get_squad - Get squad details and shared-problem context
  • list_squad_members - List members who share the squad problem context
  • list_squad_events - List events and deadlines for shared-problem coordination
  • get_online_members - Check current presence when coordination is needed

Messages

  • list_messages - List squad messages for recent decisions, blockers, and shared context
  • create_message - Send a squad message around the shared problem, decisions, or blockers

Inquiry

  • list_questions / get_question - Review questions used for Socratic analysis
  • add_claim / add_premise - Draft claims and premises for user review; AI drafts are not final judgment

Task Creation Policy

create_task records new work without assuming it belongs in the priority list. By default, new tasks are created as needs_decision, so they stay outside top-task, start, or complete candidates until the user decides whether to break them down or place them into priority. Use planning_status: "prioritized" only when the user explicitly wants the task placed in the priority order now, and provide rank with it. rank is ignored unless planning_status: "prioritized" is explicit, and required when it is explicit.

executor_type: "ai" does not mean the assistant decided the work is important. It means the user has approved AI execution for that task. Use it only when the user explicitly wants AI to do the work; otherwise omit it and let Hanary classify or leave the task waiting for human decision.

Priority placement and AI delegation are separate decisions. A task can be planning_status: "prioritized" and still remain a human task. In that case get_top_task should stop at the boundary and explain that the user must explicitly delegate AI execution or explicitly choose lower-priority AI work before the assistant changes executor_type, starts work, or moves down the priority list.

Completion Policy

complete_task should be called against user-defined completion criteria. If the criteria are clear and verifiable, the agent may judge completion from evidence such as tests, deployment status, or document changes. If the criteria are missing, vague, or depend on taste, values, social agreement, or priority judgment, ask the user to define or confirm them. completion_criteria is required when completing through MCP so the user's completion standard is recorded; do not invent that criterion on the user's behalf.

Development

# Clone and install
git clone https://github.com/hanary/hanary-mcp.git
cd hanary-mcp
uv sync

# Run locally
HANARY_API_TOKEN=your_token uv run hanary-mcp --squad test

# Run tests
uv run --with pytest python -m pytest

Enhanced Features

Beyond the MCP tools, this project includes commands, skills, and agents for better UX.

Slash Commands

Command Description
/hanary-status Show current task status and squad overview
/hanary-start Begin working on top priority task
/hanary-done Complete current task against user-defined completion criteria and get next

Skills

  • hanary-workflow: Complete task management workflow with estimation patterns and best practices

Agents

  • task-planner: Drafts structured subtasks and estimates for user review

Platform Setup

Claude Code

Files auto-discovered from .claude/ directory:

.claude/
├── commands/          # /hanary-status, /hanary-start, /hanary-done
├── skills/
│   └── hanary-workflow/
│       └── SKILL.md
└── agents/
    └── task-planner.md

For project-specific squad separation, use the .mcp.json generated by hanary-mcp init --squad ... in each project. Global CLI registration binds hanary to one squad across projects, so use it only for a single shared default:

claude mcp add hanary -- uvx hanary-mcp

OpenCode

Files auto-discovered from .opencode/ directory:

.opencode/
├── commands/          # /hanary-status, /hanary-start, /hanary-done
└── agents/
    └── task-planner.md

Skills are shared via .claude/skills/ (OpenCode reads both .opencode/skills/ and .claude/skills/).

Configuration in opencode.json:

{
  "$schema": "https://opencode.ai/config.json",
  "mcpServers": {
    "hanary": {
      "command": "uvx",
      "args": ["hanary-mcp"]
    }
  }
}

Note: HANARY_API_TOKEN must be set as a system environment variable.

Directory Structure

hanary-mcp/
├── .claude/                    # Claude Code files
│   ├── commands/
│   │   ├── hanary-status.md
│   │   ├── hanary-start.md
│   │   └── hanary-done.md
│   ├── skills/
│   │   └── hanary-workflow/
│   │       ├── SKILL.md
│   │       └── references/
│   └── agents/
│       └── task-planner.md
├── .opencode/                  # OpenCode files
│   ├── commands/
│   │   ├── hanary-status.md
│   │   ├── hanary-start.md
│   │   └── hanary-done.md
│   └── agents/
│       └── task-planner.md
├── .mcp.json                   # MCP server config
├── opencode.json               # OpenCode config
└── src/hanary_mcp/             # MCP Server implementation

License

MIT

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