Kintone Lite
A lightweight server to connect AI assistants with Kintone applications and data.
mcp-kintone-lite
Simple and lightweight Kintone MCP server for connecting AI assistants to Kintone applications and data. Perfect for automating workflows and integrating Kintone with AI tools.
📦 Install from PyPI: pip install mcp-kintone-lite
🔗 PyPI Package: https://pypi.org/project/mcp-kintone-lite/
📚 GitHub Repository: https://github.com/luvl/mcp-kintone-lite
Demo
See the MCP Kintone Lite server in action with Claude Desktop:

The demo shows Claude Desktop using the MCP server to interact with Kintone data - querying apps, retrieving records, and performing CRUD operations seamlessly.
Overview
This MCP (Model Context Protocol) server provides AI assistants like Claude with secure access to Kintone applications and data. It implements the MCP standard to enable seamless integration between AI applications and Kintone's business process platform.
Features
- 🔐 Secure Kintone authentication via Basic Authentication (username/password)
- 📊 Access to all Kintone apps (based on user permissions)
- 🔍 Query execution with filtering and pagination
- 📝 CRUD operations on Kintone records
- 🛡️ Built-in security and validation
- 🚀 Easy setup and configuration
Quick Usage
# Install the package
pip install mcp-kintone-lite
# Use with Claude Desktop (recommended)
uvx --from mcp-kintone-lite mcp-kintone-lite
# Or run directly
mcp-kintone-lite
Works with: Claude Desktop, any MCP-compatible AI assistant
Quick Start with Claude Desktop
Production Usage (Recommended)
The easiest way to use this MCP server is to install it directly from PyPI and configure it with Claude Desktop.
Step 1: Configure Claude Desktop
Add the following configuration to your Claude Desktop settings file:
Configuration File Location:
- macOS/Linux:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
Configuration:
{
"mcpServers": {
"kintone-lite": {
"command": "uvx",
"args": [
"--from",
"mcp-kintone-lite",
"mcp-kintone-lite"
],
"env": {
"KINTONE_SUBDOMAIN": "your-subdomain",
"KINTONE_USERNAME": "your-username",
"KINTONE_PASSWORD": "your-password"
}
}
}
}
Step 2: Set Up Kintone Credentials
Replace the environment variables in the configuration:
KINTONE_SUBDOMAIN: Your Kintone subdomain (e.g.,mycompanyformycompany.cybozu.com)KINTONE_USERNAME: Your Kintone usernameKINTONE_PASSWORD: Your Kintone password
Step 3: Restart Claude Desktop
After saving the configuration, restart Claude Desktop. You should see a hammer icon indicating that tools are available.
Step 4: Test the Integration
Try asking Claude:
- "List available Kintone apps"
- "Get form fields for app 123"
- "Get records from app 456 with status 'Active'"
Prerequisites
- Python 3.10 or higher
- Kintone account with username and password
- Kintone subdomain (e.g.,
yourcompany.cybozu.com)
Development Setup
If you want to modify or contribute to this MCP server, follow these development setup instructions.
Installation
Option 1: Using uv (Recommended for development)
# Install uv if you haven't already
brew install uv # macOS
# or
curl -LsSf https://astral.sh/uv/install.sh | sh # Linux/macOS
# Clone and install the server
git clone https://github.com/luvl/mcp-kintone-lite.git
cd mcp-kintone-lite
uv sync
Option 2: Using Poetry
git clone https://github.com/luvl/mcp-kintone-lite.git
cd mcp-kintone-lite
poetry install
Kintone Development Setup
Create a .env file in the project root:
KINTONE_SUBDOMAIN=your-subdomain
KINTONE_USERNAME=your-username
KINTONE_PASSWORD=your-password
Usage
Development Mode
First, make sure you have your Kintone credentials configured in your .env file.
Method 1: Direct Python Execution
# Run the server directly
python src/mcp_kintone_lite/server.py
Method 2: Using Poetry
# Run with Poetry
poetry run python src/mcp_kintone_lite/server.py
Method 3: Using UV (Recommended)
# Run with UV
uv run python src/mcp_kintone_lite/server.py
Testing with MCP Inspector
If you have the MCP CLI installed, you can test your server:
# Test with MCP Inspector
mcp inspector
# Or run in development mode
mcp dev src/mcp_kintone_lite/server.py
Publishing Process
- Test on TestPyPI first:
# Build the package
uv build
# or: poetry build
# Upload to TestPyPI
twine upload --repository testpypi --config-file .pypirc dist/*
# Test install from TestPyPI
pip install --index-url https://test.pypi.org/simple/ --extra-index-url https://pypi.org/simple/ mcp-kintone-lite
- Publish to Production PyPI:
# Upload to production PyPI
twine upload --repository pypi --config-file .pypirc dist/*
# Test install from production PyPI
pip install mcp-kintone-lite
Version Management
To publish a new version:
- Update the version in
pyproject.toml - Rebuild:
uv buildorpoetry build - Upload:
twine upload --repository pypi --config-file .pypirc dist/*
Related Servers
DX MCP Server
Query your organizational data in DX Data Cloud using natural language.
Redshift Utils MCP Server
Perform database actions on Amazon Redshift via its Data API.
Claude Conversation Memory System
Provides searchable local storage for Claude conversation history, enabling context retrieval during sessions.
bricks and context
Production-grade MCP server for Databricks: SQL Warehouses, Jobs API, multi-workspace support.
Metabase MCP Server
Integrates AI assistants with the Metabase business intelligence and analytics platform.
CData SAP Netweaver Gateway
Connect to SAP Netweaver Gateway data using CData's MCP Server. Requires a separately licensed CData JDBC Driver.
InfluxDB MCP Server
An MCP server for interacting with InfluxDB time-series databases, enabling AI assistants to work with time-series data.
Iceberg MCP Server (via Impala)
Provides read-only access to Apache Iceberg tables via Apache Impala, allowing LLMs to inspect schemas and execute queries.
MCP Helius
Access Solana blockchain data using the Helius API.
Fabi Analyst Agent MCP
Fabi MCP is an autonomous agent that handles end-to-end data analysis tasks from natural language requests, automatically discovering data schemas, generating sql or python code, executing queries, and presenting insights.