DollhouseMCP is a comprehensive Model Context Protocol (MCP) server for managing, sharing, and customizing AI behaviors through dynamic personas and other AI customization elements. Key capabilities include:
AI Customization Management: Create, edit, validate, activate/deactivate, and manage personas, skills, templates, agents, memory, and ensembles through a portfolio system
Element-Specific Operations: Render content using templates with variables and execute autonomous agents for specific goals
GitHub Collection Integration: Browse, search, install, and submit AI customization elements to/from a community-driven GitHub collection with secure OAuth authentication
Import/Export & Sharing: Import personas from files/URLs, export to JSON format, and generate time-limited shareable URLs
User Identity Management: Set, retrieve, and clear user identity for content attribution
Server Management: Check status, perform automated updates with rollback capabilities and built-in safety features
Customization Options: Configure how persona indicators are displayed in AI responses
Offers containerized deployment options with production and development configurations, supporting volume mounts for custom personas and environment variable configuration
Provides a complete GitHub-powered marketplace integration for browsing, searching, installing, and submitting personas, with support for authentication and automated submission workflows
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@DollhouseMCPactivate the 'helpful assistant' persona from the community collection"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
DollhouseMCP
Open-source AI customization through modular elements.
Website · Browse the Collection · NPM Package · Discord
How It Works
CREATE or EDIT PORTFOLIO ACTIVATE → USE
─────────────────────────────────────────────────────────────────────────────
"Create a skill for 📁 ~/.dollhouse/portfolio/ "Activate the Dollhouse
writing blog posts" Expert ensemble"
38 starter elements:
"Edit the code review ──▶ personas · skills · ──▶ Your AI now has
persona to add security" templates · agents · new behavior,
memories · ensembles capabilities, and
persona · skill · template permission policies
agent · memory · ensemble + everything you create
+ community installsPick any path to start:
Activate a starter element from your portfolio — your AI immediately changes
Create any element type (persona, skill, template, agent, memory, ensemble) by describing what you want in plain English
Edit any existing element to refine it
Browse the community collection and install elements made by other users
Your portfolio (~/.dollhouse/portfolio/) is a local folder that holds all your Dollhouse elements. It ships with 38 starters — including the dollhouse-expert-suite ensemble (persona + knowledge base) you can activate for guided help. Everything you create or install lands here. Share back to the community or sync to GitHub whenever you're ready.
Related MCP server: GCP MCP
Quick Start
v2.0.0-rc.2 is now available. This is a release candidate — install with the
@rctag. Once stable, v2 will become the default. Release notes | Migration guide | Report issues
DollhouseMCP installs on any MCP-compatible AI client — Claude Code, Claude Desktop, Cursor, Gemini, Codex, and local LLMs. Core element management (create, activate, search, browse) works across all platforms. Advanced features (Gatekeeper confirmation flows, agentic loop execution) have been tested extensively on Claude Code and should work on any client that supports standard MCP tool call/response patterns.
Claude Desktop (one-click install):
Download the DollhouseMCP Desktop Extension (.mcpb file) and open it. Claude Desktop handles the rest — no terminal required.
Claude Code (one command):
All projects (recommended):
claude mcp add -s user dollhousemcp -- npx -y @dollhousemcp/mcp-server@rcCurrent project only:
claude mcp add dollhousemcp -- npx -y @dollhousemcp/mcp-server@rcOther platforms — see the Quick Start Guide for Claude Desktop manual config, Gemini, Cursor, Codex, local LLMs, and more.
Then start a conversation:
"What DollhouseMCP tools do you have available?"
"List all available Dollhouse personas"
"Activate the Dollhouse debug detective persona"DollhouseMCP ships with 38 Dollhouse elements across all 6 types. Just describe what you want in natural language.
First time? The Public Beta Onboarding Guide walks you from install to your first activated Dollhouse persona in under 10 minutes.
Dollhouse Elements: Behavior, Capabilities, and Permissions
Dollhouse elements are modular building blocks that customize your AI. When you activate a Dollhouse element, you're not just changing a prompt — you're changing what tools the AI can access, what commands it can run, and what operations require your approval.
Dollhouse Element | What It Does |
Dollhouse Personas | Shape behavior, tone, expertise, and priorities. Act as security principals with permission policies that control what the AI can do. |
Dollhouse Skills* | Add discrete capabilities the AI can activate on demand. Code review, data analysis, penetration testing, translation, and more. |
Dollhouse Templates | Standardize outputs with variable substitution. Reports, emails, briefs, documentation — consistent structure every time. |
Dollhouse Agents | Execute multi-step goals autonomously. State tracking, resilience policies, autonomy evaluation, and an execution lifecycle. |
Dollhouse Memories | Persist structured context across sessions. Facts, preferences, project state. Can auto-load on startup. |
Dollhouse Ensembles | Bundle multiple elements into one activatable unit. Activation strategies, conflict resolution, and coordinated permission policies. |
*Skills Compatibility
Dollhouse Skills (introduced July 2025) predate the agent skills format later adopted by Claude/Anthropic. DollhouseMCP includes a built-in lossless bidirectional converter between the two formats.
Import: Convert agent skills → Dollhouse Skills via
convert_skill_format. Once converted, they're first-class Dollhouse elements — combinable with Personas, Templates, and other Skills inside Ensembles, managed by Dollhouse Agents, and protected by Gatekeeper policies.Export: Convert Dollhouse Skills → agent skills for platforms that don't have DollhouseMCP installed.
Roundtrip: The converter supports a lossless mode that preserves everything in both directions. A safe mode is also available that sanitizes potentially risky patterns during conversion.
All Dollhouse elements are readable markdown or YAML files stored in your local portfolio. You own them, you control them. When interacting with your AI, use "Dollhouse" to disambiguate — say "activate the Dollhouse code review persona" or "run the Dollhouse research agent" to ensure the AI uses DollhouseMCP elements rather than native platform features.
MCP-AQL: How Your AI Talks to DollhouseMCP
Most MCP servers expose dozens of individual tools, each consuming context tokens and forcing the LLM to pick the right one from a flat list. DollhouseMCP takes a different approach.
MCP-AQL (Model Context Protocol – Advanced Agent API Adapter Query Language) organizes all operations into 5 semantic endpoints — CRUDE: Create, Read, Update, Delete, Execute. The A pulls quadruple duty: Advanced query capabilities, Agent-first design, API consolidation, and Adapter layer to bridge other MCP servers and APIs to work directly with LLMs. Each endpoint groups operations by what they do to state, giving the LLM clear semantic signals about the consequences of each action:
Endpoint | Purpose | Permission Level |
Create | Add new elements, install from collection, add memory entries | Confirm once per session |
Read | List, search, get details, activate, introspect | Auto-approved (safe, no side effects) |
Update | Edit existing elements | Confirm each time |
Delete | Remove elements, clear entries | Confirm each time |
Execute | Run agents, manage execution lifecycle, confirm operations | Confirm each time |
Why This Matters
Semantic clarity — The LLM knows that calling
mcp_aql_readis always safe. Callingmcp_aql_deleteis always destructive. No guessing.Host-level permission control — MCP clients like Claude Code can set different approval policies per endpoint (auto-approve reads, require confirmation for deletes).
Progressive disclosure through introspection — The LLM starts with just 5 tool endpoints. It discovers operations, parameters, element formats, and usage examples at runtime by asking the server:
{ "operation": "introspect", "params": { "query": "operations" } } { "operation": "introspect", "params": { "query": "format", "name": "persona" } }This is progressive disclosure built into the protocol — the LLM only loads what it needs, when it needs it. Unlike client-side solutions that require special harness support (like Claude Code's deferred tool loading), MCP-AQL's introspection works on any MCP client because it's just a standard tool call that returns structured data. No fancy client features required. The server describes itself.
Elements use the same principle: YAML frontmatter provides metadata for quick scanning, full markdown content loads only when activated. The LLM can list 200 elements at a glance and deep-dive into the ones it needs.
Token efficiency — 5 endpoints at ~4,300 tokens vs ~29,600 for ~40 discrete tools (85% reduction). Single mode reduces further to ~350 tokens.
Full MCP-AQL documentation — protocol design, CRUDE pattern rationale, introspection system, endpoint modes, and debugging.
The Gatekeeper: Elements Control Permissions
Every MCP-AQL operation passes through the Gatekeeper — a server-side permission system that Dollhouse elements directly control. When you activate a Dollhouse Persona, Skill, or Ensemble, its permission policies take effect immediately.
Example: Activate a "read-only analyst" persona
┌─────────────────────────────────────────────────────────────────┐
│ Persona: read-only-analyst │
│ │
│ gatekeeper: │
│ allow: [list_elements, search, get_element, introspect] │
│ deny: [create_element, edit_element, delete_element, │
│ execute_agent, confirm_operation] │
└─────────────────────────────────────────────────────────────────┘
│
▼
┌─────────────────────────────────────────────────────────────────┐
│ What the LLM CAN do: What the LLM CANNOT do: │
│ │
│ ✓ List and search elements ✗ Create new elements │
│ ✓ Read element details ✗ Edit existing elements │
│ ✓ Introspect operations ✗ Delete anything │
│ ✓ Activate/deactivate ✗ Run agents │
│ ✗ Confirm any gated operation │
└─────────────────────────────────────────────────────────────────┘This works even if the MCP client has "Always Allow" enabled. The Gatekeeper runs server-side — after the client approves the tool call, the Gatekeeper still enforces the active element's policies. A deny from any active element cannot be overridden by the LLM or the client.
How Policy Resolution Works
deny > confirm > allow > route default
(highest priority) (lowest priority)Element deny — hard-blocked, cannot be confirmed or bypassed
Element confirm — requires user confirmation even if the route default is auto-approve
Element allow — auto-approves operations that would normally require confirmation
Route default — the endpoint's built-in permission level (reads auto-approve, deletes confirm)
Policies stack across all active elements. If one persona allows an operation but another denies it, deny wins. This lets you compose elements with confidence — a security-focused persona can lock down operations while a skill adds capabilities.
What This Means in Practice
Activate a read-only persona → the LLM can only browse and search, even if you've given the MCP client full access
Activate a security analyst ensemble →
delete_elementandrm -rf *are denied, but code review tools work normallyDeactivate the restrictive element → full access returns immediately
Nuclear sandbox →
deny: ['confirm_operation']blocks ALL confirmations, making the session completely read-only until the element is deactivated
Platform compatibility: The Gatekeeper enforces policies server-side — deny and allow decisions work on any MCP client. The confirmation flow (where the LLM calls
confirm_operationin response to a block) has been tested extensively on Claude Code and the DollhouseMCP Bridge. It should work on any MCP client where the LLM can interpret structured tool responses and make follow-up tool calls, but has not been rigorously verified on all platforms.
Gatekeeper documentation — confirmation flows, element policy syntax, sandbox model, external tool restrictions, and the session-allow problem.
Portfolio
Your Dollhouse elements live in a local portfolio at ~/.dollhouse/portfolio/. Ask your AI to "open the portfolio browser" (or call open_portfolio_browser via MCP-AQL) to browse them visually. Activation is done through the LLM — ask it to "activate the Dollhouse code review persona" and it handles the rest.
Local-first — Everything works offline. No account required.
38 bundled elements — 7 personas, 7 skills, 8 templates, 7 agents, 4 memories, 5 ensembles ship with the server as starter content. Includes the dollhouse-expert-suite ensemble (persona + knowledge base memory) for guided help, and a Session Monitor agent that keeps your LLM synchronized with server state changes.
GitHub sync — Optionally back up your portfolio to a GitHub repository and share elements with others.
Community Collection — Browse the collection to see what's available, then install elements directly from your AI. Or submit your own.
GitHub Portfolio Sync Guide — back up to GitHub, sync between machines, submit to the community.
Dollhouse Agent Execution
Dollhouse Agents don't just run — every step passes through the MCP server, back to the LLM, and through the Gatekeeper. The LLM makes semantic decisions; the server handles programmatic enforcement. Neither side operates alone.
┌───────────────┐
│ HUMAN │
│ (optional) │◄──── LLM asks for guidance
│ │ when autonomy evaluator
│ Approve, deny,│ says "pause"
│ or guide │
└───────┬───────┘
│ responds to LLM
▼
┌─────────────┐ ┌─────────────────────────────┐ ┌─────────────┐
│ │ │ DollhouseMCP MCP Server │ │ │
│ LLM │────▶│ │────▶│ LLM │
│ │ │ 1. Gatekeeper checks policy │ │ │
│ Decides │ │ 2. Autonomy Evaluator scores │ │ Records │
│ next │ │ 3. Danger Zone enforcement │ │ step and │
│ action │ │ 4. Execute or block │ │ continues │
│ │ │ 5. Return result + autonomy │ │ or pauses │
│ │◀────│ guidance to LLM │◀────│ │
└─────────────┘ └─────────────────────────────┘ └─────────────┘
│ │
└──────────────── repeats every step ───────────────────┘Each step in the loop:
Gatekeeper checks every operation against active element policies — deny, confirm, or allow
Autonomy Evaluator scores whether the agent should continue autonomously or pause for human input
Danger Zone enforces hard blocks on high-risk operations (file deletion, external API calls, system commands)
Step recording creates an audit trail of every decision and outcome
The LLM receives autonomy guidance with each response — continue, pause, or escalate — so it never operates unmonitored
This means a Dollhouse Agent can't silently escalate. Every action is visible, every step is evaluated, and active element policies are enforced throughout the entire execution.
Platform note: The agentic loop relies on the LLM making sequential MCP tool calls and interpreting structured responses — standard MCP behavior. It has been tested extensively on Claude Code and the DollhouseMCP Bridge. The server-side enforcement (Gatekeeper, Danger Zone, step recording) is platform-independent. The LLM's ability to follow autonomy guidance (continue/pause/escalate) depends on the LLM's capability to interpret structured tool responses, which may vary across platforms.
Full Agent Execution documentation — the agentic loop, security enforcement, human-in-the-loop control, agent composition, resilience policies, and execution lifecycle operations.
More Features
Web Portfolio Browser — Built-in web console for browsing and managing your portfolio visually. Ask your AI to "open the portfolio browser" or run
npm run webstandalone.Batch Operations — Execute multiple operations in a single MCP-AQL request for efficient workflows
Activation Persistence — Elements activated in a session are restored on server restart. No re-activation needed.
Universal Backup — Built-in backup service for portfolio elements with restore capability
Cache Memory Budget — Configurable memory budget for collection and index caches to control resource usage
NLP Discovery — Jaccard similarity and Shannon entropy scoring for intelligent element search and discovery
Cross-Element Relationships — GraphRAG-style mapping between elements for finding related content
Security Hardened — Input sanitization, path traversal prevention, YAML injection protection, file locking, DOMPurify sanitization, content validation against hundreds of attack vectors. Security docs
Cross-Platform — Tested on Windows, macOS, and Linux across Node.js 20+
Installation Options
The Quick Start above covers the fastest path. For more control:
Local Install (Recommended for Multiple Configs)
mkdir -p ~/mcp-servers && cd ~/mcp-servers
npm install @dollhousemcp/mcp-server@rcThen point your MCP client at node <path>/node_modules/@dollhousemcp/mcp-server/dist/index.js.
MCP-AQL Endpoint Modes
Mode | Endpoints | Tokens | Env Variable | Best For |
CRUDE (default) | 5 | ~4,300 |
| Most users. Semantic grouping with host-level permission control |
Single | 1 | ~350 |
| Multi-server setups with constrained context windows |
Discrete | ~40 | ~29,600 |
| Backward compatibility with v1 tool names |
Note: CRUDE and Single are controlled by
MCP_AQL_ENDPOINT_MODE. Discrete mode uses a different variable:MCP_INTERFACE_MODE=discrete.
Common Configuration
Variable | Default | Description |
|
| Endpoint mode: |
|
| Interface style: |
|
| Custom portfolio location |
| — | Personal access token for GitHub operations |
Full environment variable reference · MCP client setup for other platforms
Documentation
Guide | Description |
Platform-specific install for Claude Code, Desktop, Cursor, Gemini, Codex, local LLMs | |
Install to first persona in 10 minutes | |
Operation cheat sheet written for AI assistants | |
CRUDE protocol, introspection, endpoint modes | |
Permission layers, element policies, sandbox model | |
Back up to GitHub, sync between machines, community submission | |
Persistent context storage and retrieval | |
Bidirectional agent skills conversion | |
Agentic loop, security enforcement, human-in-the-loop, composition | |
System design, DI container, data flow | |
Threat model, testing, and vulnerability reporting | |
Complete MCP tool catalog and payload schemas | |
Upgrading from v1.x | |
Common issues and solutions |
Contributing
We welcome contributions — bug reports, feature requests, documentation, code, and community elements.
git clone https://github.com/DollhouseMCP/mcp-server.git
cd mcp-server
npm install && npm run build && npm testSee CONTRIBUTING.md for the full development workflow, branch strategy, and code style guide.
Community
GitHub Discussions — Questions, ideas, and showcase
GitHub Issues — Bug reports and feature requests
Discord — Real-time chat
Browse the Collection — Community-contributed Dollhouse elements you can install
Collection Repository — Source repo for submissions and contributions
License
AGPL-3.0-or-later — free to use, modify, and distribute. Network use requires source disclosure. See LICENSE for full terms.
Copyright 2024-2026 Mick Darling / DollhouseMCP