Kafka MCP
A natural language interface to manage Apache Kafka operations.
Kafka MCP
Overview
The Kafka MCP Server offers efficient way to convert prompts into actions into Kafka ecosystem. It is a natural language interface designed for agentic applications to efficiently manage Kafka operations and integrate seamlessly with MCP Clients enabling AI driven workflows to interact with processes in Kafka. Using this MCP Server, you can ask questions like:
- Publish message 'i am using kafka server' on the topic 'test-kafka'
- Consume the message from topic 'test-kafka'
- List all topics from the kafka environment
Features
- Natural Language Queries: Enables AI agents to query and update Redis using natural language.
- Seamless MCP Integration: Works with any MCP client for smooth communication.
- Full Kafka Support: Handles producer, consumer, topics, broker, partitions and offsets.
- Scalable & Lightweight: Designed for high-performance data operations.
Tools
This MCP Server offers various tools for Kafka:
consumer and producer tools allow to consumer and publish message on topics
topic tools allow to list, create, delete and describe topics in Kafka.
broker allows to get broker info.
partition tools allow to get partitions and partition offsets.
group_offset tools allow to get and reset offsets in Kafka.
Configurations
set the following in .env file or export manually
BOOTSTRAP_SERVERS=your_kafka_server
MCP_TRANSPORT=stdio
Local Development
Create a virtual environment
# Using venv (built-in)
python3 -m venv .venv
# Activate the virtual environment
# On Windows
.venv\Scripts\activate
# On macOS/Linux
source .venv/bin/activate
Install Dependencies
# Using pip
pip install -r requirements.txt
# Or using uv (faster)
uv pip install -r requirements.txt
Set Configurations in terminal/env
BOOTSTRAP_SERVERS=<your_kafka_url>
MCP_TRANSPORT=stdio
Run the application
python3 src/main.py
# OR
uv run python3 src/main.py
To interact with server,
Add the following configuration to your MCPO server's config.json file (e.g., in Claude Desktop):
{
"mcpServers": {
"kafka-mcp": {
"command": "python3",
"args": ["/Users/I528600/Desktop/mcp/kafka-mcp/src/main.py"],
"env": {
"BOOTSTRAP_SERVERS": "localhost:9092",
"MCP_TRANSPORT": "stdio"
}
}
}
}
Example prompts
- List all topics in the kafka cluster
- Create topic 'my-kafka' in kafka cluster
- Publish a message 'hello from mcp' to the topic 'my-kafka' in cluster
- Consume 2 messages from the topic 'my-kafka' in kafka cluster
- Describe the topic 'my-kafka'
Serveurs connexes
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Obsidian Claude Code
An Obsidian plugin that integrates Claude Code into your vaults via an MCP server.
Ghost MCP
An MCP server for the Ghost blogging platform with Server-Sent Events (SSE) transport support.
BloodHound-MCP
integration that connects BloodHound with AI through MCP, allowing security professionals to analyze Active Directory attack paths using natural language queries instead of Cypher.
OPNsense MCP Server
A comprehensive MCP server for managing OPNsense firewalls, offering over 300 tools for configuration and monitoring.
Roblox Studio MCP Server
Provides AI assistants with comprehensive access to Roblox Studio projects for exploration, script analysis, debugging, and bulk editing.
Praison AI
AI Agents framework with 64+ built-in MCP tools for search, memory, workflows, code execution, and file operations. Install via `uvx praisonai-mcp`
Raspberry Pi MCP Servers Collection
A collection of production-ready MCP servers optimized for Raspberry Pi and AI workloads.
Zip1
A free URL shortener
DevCycle
Turn your favourite AI tool into a feature management assistant. DevCycle's MCP works with your favourite coding assistant so you can create and monitor feature flags using natural language right in your workflow.
Interactive Feedback MCP
Provides interactive user feedback and command execution for AI-assisted development.