Multi Cluster Kubernetes MCP Server
@razvanmacovei
About Multi Cluster Kubernetes MCP Server
An MCP (Model Context Protocol) server application for Kubernetes operations, providing a standardized API to interact with multiple Kubernetes clusters simultaneously using multiple kubeconfig files.
Basic information
Category
Cloud & Infrastructure
License
Apache-2.0
Runtime
python
Transports
stdio
Publisher
razvanmacovei
Submitted by
Razvan Macovei
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"kubernetes": {
"command": "uv",
"args": [
"--directory",
"/servers/k8s-multicluster-mcp",
"run",
"app.py"
],
"env": {
"KUBECONFIG_DIR": "/kubeconfigs"
}
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Multi Cluster Kubernetes MCP Server?
An MCP (Model Context Protocol) server for managing multiple Kubernetes clusters simultaneously. It provides 60+ tools covering cluster operations, resource management, monitoring, RBAC, storage, networking, and more, accessible through AI assistants like Claude Desktop. Designed for DevOps engineers and platform teams managing multiple Kubernetes clusters.
How to use Multi Cluster Kubernetes MCP Server?
Install via Smithery with npx -y @smithery/cli install @razvanmacovei/k8s-multicluster-mcp --client claude, or clone the repository and run python3 app.py. Configure the KUBECONFIG_DIR environment variable to point to a directory with kubeconfig files; the server automatically discovers all contexts. Required: Python 3.11+, valid kubeconfig files, and metrics-server for monitoring tools.
Key features of Multi Cluster Kubernetes MCP Server
- Automatic discovery of all Kubernetes contexts across kubeconfig files.
- Partial name matching for cluster selection (e.g.,
prod). - 60+ tools for cluster health, resource CRUD, scaling, rollouts, RBAC, storage, networking.
- Cross-cluster operations: compare resources, health, and configurations.
- Context caching with 30-second TTL for performance.
Use cases of Multi Cluster Kubernetes MCP Server
- Get a health overview of a production cluster via an AI assistant.
- Compare pod counts in the
backendnamespace betweenprodandstaging. - Diagnose application issues in a deployment with automated recommendations.
- Scale a deployment to a specific number of replicas.
- Manage secrets, ConfigMaps, and RBAC across multiple clusters.
FAQ from Multi Cluster Kubernetes MCP Server
What is the difference between this server and using kubectl directly?
This server provides an MCP interface for AI assistants to manage multiple clusters simultaneously, with automatic context discovery and cross-cluster comparison capabilities, unlike direct kubectl usage.
What are the runtime requirements?
Python 3.11 or higher, one or more kubeconfig files with valid cluster credentials, and metrics-server installed in clusters for k8s_top_* and k8s_cluster_info tools.
Where are kubeconfig files located?
By default, the server reads from ~/.kube. You can set the KUBECONFIG_DIR environment variable to any directory containing kubeconfig files.
Are there any known limitations?
Namespace deletion protects system namespaces. The server requires metrics-server for monitoring tools. Pod exec supports quoted arguments fixed in v2.0.0.
What transport or authentication does it use?
The server uses the MCP protocol over stdio (local execution). Authentication relies on the Kubernetes credentials provided in the kubeconfig files.
More Cloud & Infrastructure MCP servers
Sample Serverless MCP Servers
aws-samplesSample implementations of AI Agents and MCP Servers running on AWS Serverless compute
Azure DevOps MCP Server
Tiberriver256An MCP server for Azure DevOps
GCP MCP
eniayomiA Model Context Protocol (MCP) server that enables AI assistants like Claude to interact with your Google Cloud Platform environment. This allows for natural language querying and management of your GCP resources during conversations.
MCP Server that interacts with Azure AI Foundry (experimental)
azure-ai-foundryA MCP Server for Azure AI Foundry: it's now moved to cloud, check the new Foundry MCP Server
Supabase MCP Server
coleam00Supabase MCP server created in Python.
Comments