Connects Claude to the Pickaxe platform for managing AI agents and their supporting infrastructure. You get tools to pull chat history for conversation analysis, CRUD operations on knowledge base documents, user management including invitations and access control, and memory schema inspection for personalization auditing. The multi-studio configuration lets you work across production, staging, and dev environments in one session by prefixing tool calls with studio names. Particularly solid for KB maintenance workflows where you analyze agent conversations to spot knowledge gaps, then create and connect documents to fix them. The source includes production examples like n8n pipelines that poll chat history hourly for prompt injection detection and automated fact-checking workflows that keep 31+ KB articles current.

An MCP (Model Context Protocol) server that connects AI assistants like Claude to the Pickaxe platform. Manage your AI agents, knowledge bases, users, and analytics directly through natural language.
If you're building AI agents on Pickaxe, this MCP server lets you:
| Category | Tools |
|---|---|
| Studios | List configured studios, switch between them |
| Chat History | Fetch and analyze agent conversation logs |
| Documents | Create, list, get, delete, connect/disconnect to agents |
| Users | Create, list, get, update, delete, invite |
| Products | List available products and bundles |
| Memory | List memory schemas, retrieve user memories |
npx mcp-pickaxe
Or install globally:
npm install -g mcp-pickaxe
git clone https://github.com/aplaceforallmystuff/mcp-pickaxe.git
cd mcp-pickaxe
npm install
npm run build
studio-)Add to your Claude Desktop config file:
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"pickaxe": {
"command": "node",
"args": ["/path/to/mcp-pickaxe/dist/index.js"],
"env": {
"PICKAXE_STUDIO_MAIN": "studio-your-api-key-here"
}
}
}
}
Add to ~/.claude.json:
{
"mcpServers": {
"pickaxe": {
"command": "node",
"args": ["/path/to/mcp-pickaxe/dist/index.js"],
"env": {
"PICKAXE_STUDIO_MAIN": "studio-your-api-key-here"
}
}
}
}
To work with multiple Pickaxe studios, add multiple environment variables:
{
"env": {
"PICKAXE_STUDIO_PRODUCTION": "studio-xxx-xxx-xxx",
"PICKAXE_STUDIO_STAGING": "studio-yyy-yyy-yyy",
"PICKAXE_STUDIO_DEV": "studio-zzz-zzz-zzz",
"PICKAXE_DEFAULT_STUDIO": "PRODUCTION"
}
}
Then specify which studio to use in your requests:
PICKAXE_DEFAULT_STUDIO, that studio is used when none is specifiedstudio="STAGING" (or similar) to any toolThese are real workflows built with mcp-pickaxe in production environments.
Scenario: Detect prompt injection attempts across 29+ AI agents in real-time.
Implementation:
An n8n workflow polls chat_history hourly for all agents, runs messages against injection detection patterns (stored in Notion), and routes alerts by severity:
n8n Schedule (hourly)
→ Fetch patterns from Notion
→ Loop through 29 pickaxe IDs
→ Fetch chat_history for each
→ Detect injections (regex patterns)
→ Route by severity → Alert/Log
Tools used: chat_history, studios_list
Result: Real-time security monitoring across an entire studio with dynamic pattern management and severity-based alerting.
Scenario: Automatically fact-check and maintain 31+ knowledge base articles.
Implementation: An n8n workflow queries KB articles from Notion, extracts key claims, fact-checks via Perplexity API, classifies changes by risk level, and routes to auto-update or human review.
Daily Schedule (2am)
→ Query KB articles from Notion
→ Filter by day (hash-based, ~1/7th daily)
→ Extract key claims
→ Perplexity fact-check
→ Classify: none/low/major risk
→ Route: auto-update or create review task
Tools used: doc_list, doc_get, doc_create, doc_connect
Result: KB content stays current with automated fact-checking and human-in-the-loop for major changes.
Scenario: Quarterly review of a training studio to identify KB gaps and user pain points.
Workflow:
1. "Fetch chat history from my training agents"
2. "Analyze: which questions got unclear or uncertain responses?"
3. "List all KB documents - which topics are missing?"
4. "Check user stats - who's most active, who's churning?"
5. "Create KB documents addressing the top 3 gaps"
6. "Connect new documents to the relevant agents"
Tools used: chat_history, doc_list, doc_create, doc_connect, user_list
Result: Data-driven KB improvements based on actual user conversations rather than guesswork.
Scenario: Managing multiple Pickaxe studios from a single Claude session.
Configuration:
{
"env": {
"PICKAXE_STUDIO_PRODUCTION": "studio-xxx",
"PICKAXE_STUDIO_STAGING": "studio-yyy",
"PICKAXE_STUDIO_DEV": "studio-zzz",
"PICKAXE_DEFAULT_STUDIO": "PRODUCTION"
}
}
Workflow:
1. "List users in PRODUCTION - how many signups this month?"
2. "Switch to STAGING - list products"
3. "Compare KB document counts across all studios"
4. "Find which studio has the most chat activity"
Tools used: studios_list, user_list, doc_list, products_list
Result: Cross-studio visibility without switching contexts or API keys manually.
Scenario: Review what your agents remember about users for personalization and privacy compliance.
Workflow:
1. "List all memory schemas defined in the studio"
2. "Get memories for user@example.com"
3. "What does the system know about this user's situation?"
4. "Which memory fields are most populated across users?"
Example output:
User: maria.example@email.com
Nickname: "Cautious Educator from Madrid"
Summary: "Teaching [language] for [platform] at low hourly rate,
considering self-employment status due to
uncertain income"
Memories: 1 stored
Tools used: memory_list, memory_get_user, user_list
Result: Visibility into personalization data for both product improvement and GDPR compliance.
Once configured, you can interact with Pickaxe through natural language:
"Show me the last 20 conversations from my support agent"
"What questions are users asking that my agent can't answer?"
"Create a new document called 'FAQ' with this content: [your content]"
"Connect the FAQ document to my customer support agent"
"List all documents in my knowledge base"
"Show me all users and their usage stats"
"Create a new user with email user@example.com and give them access to the Pro product"
"Send invitations to these emails: [list of emails]"
"List all users in my staging studio"
"Compare the documents between production and staging"
studios_list - List all configured studios and the current defaultchat_history - Fetch conversation history for an agent
pickaxeId, skip, limit, format ("messages" or "raw"), studiodoc_create - Create document from content or URLdoc_list - List all documents (with pagination)doc_get - Get a specific documentdoc_delete - Delete a documentdoc_connect - Link document to an agentdoc_disconnect - Unlink document from an agentuser_list - List all users with access and usage infouser_get - Get a specific user by emailuser_create - Create a new useruser_update - Update user details, products, or usageuser_delete - Delete a useruser_invite - Send email invitationsproducts_list - List available products/bundlesmemory_list - List memory schemasmemory_get_user - Get collected memories for a user# Run in development mode (auto-reloads)
npm run dev
# Build for production
npm run build
# Run the built version
npm start
Ensure you have at least one PICKAXE_STUDIO_* environment variable set in your MCP config.
Check that the studio name matches exactly (case-insensitive). Run studios_list to see available options.
Your API key is invalid or expired. Get a new one from Pickaxe Studio settings.
Your API key doesn't have permission for this operation. Check your Pickaxe account permissions.
Contributions are welcome! Please see CONTRIBUTING.md for guidelines.
MIT License - see LICENSE for details.
PICKAXE_API_KEY*secretYour Pickaxe studio API key
PICKAXE_STUDIO_ID*Your Pickaxe studio ID
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