Kom is a Kubernetes operation management tool that provides functions such as multi-cluster management, resource creation, deletion, update, and query, Pod operations, and SQL queries. It supports CRD and built-in resource operations, simplifying the daily operation and maintenance of k8s.
3 points
9.0K

What is kom?

Kom is a Kubernetes operation management tool that encapsulates the core functions of kubectl and client-go, providing simpler and more user-friendly APIs to manage Kubernetes resources. It supports advanced functions such as multi-cluster management, custom resource operations, and SQL queries.

How to use kom?

You can operate Kubernetes resources through simple Go API calls, which support chained calls and callback mechanisms. It can be integrated into existing Go projects or provide HTTP interfaces through the MCP server.

Applicable scenarios

It is suitable for scenarios that require batch operations on Kubernetes resources, such as CI/CD pipelines, operation and maintenance automation tools, and Kubernetes management platforms. It is particularly suitable for scenarios that require multi-cluster management and custom resource operations.

Main Features

Multi-cluster Management
Supports managing multiple Kubernetes clusters simultaneously and allows easy switching between different clusters for operations.
CRD Support
Fully supports operations on Custom Resource Definitions (CRD), including creation, query, update, and deletion.
SQL Query
Supports querying Kubernetes resources using SQL syntax, simplifying complex query operations.
MCP Server
Provides a Model Context Protocol server, supporting both stdio and SSE modes, and can be integrated with AI tools.
Pod Operations
Supports common operations such as executing commands inside Pods, uploading and downloading files, and viewing logs.
Callback Mechanism
Provides a flexible callback mechanism, allowing custom logic to be executed before and after operations.
Advantages
Simplifies Kubernetes operations and provides a more friendly API interface
Supports multi-cluster management, facilitating cross-cluster operations
Built-in rich tool methods, such as Deployment scaling and Pod file operations
Supports SQL queries, reducing the learning cost
A complete callback mechanism, facilitating function expansion
Limitations
Requires a foundation in Go language to fully utilize the SDK functions
Some advanced functions require specific versions of the Kubernetes cluster
The SQL query function currently only supports simple conditional queries

How to Use

Install kom
Install the kom package through the go get command
Register a Kubernetes cluster
Register the Kubernetes cluster to be managed in the code
Execute operations
Use the APIs provided by kom to execute Kubernetes operations

Usage Examples

Get a list of Pods
Query all Pods in the default namespace
Scale a Deployment
Adjust the number of replicas of the Deployment named nginx to 3
Execute commands inside a Pod
Execute commands inside the container of a specified Pod

Frequently Asked Questions

What is the difference between kom and kubectl?
How to support multi-cluster?
Which resources does SQL query support?
How to integrate the MCP server into AI tools?

Related Resources

GitHub Repository
Source code of the kom project
k8m Tool
A lightweight Kubernetes management tool based on kom
Kubernetes Documentation
Official Kubernetes documentation

Installation

Copy the following command to your Client for configuration
{
  "mcpServers": {
    "kom": {
      "type": "sse",
      "url": "http://IP:9096/sse"
    }
  }
}

{
    "mcpServers": {
        "k8m": {
            "command": "path/to/kom",
            "args": []
        }
    }
}

{
  "mcpServers": {
    "k8m": {
      "command": "path/to/kom",
      "args": []
    }
  }
}
Note: Your key is sensitive information, do not share it with anyone.

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