mcp-k8s-eye
mcp-k8s-eye is a tool that can manage kubernetes cluster and analyze workload status.
Features
Core Kubernetes Operations
- [x] Connect to a Kubernetes cluster
- [x] Generic Kubernetes Resources management capabilities
- Support all navtie resources: Pod, Deployment, Service, StatefulSet, Ingress...
- Support CustomResourceDefinition resources
- Operations include: list, get, create, update, delete
- [x] Pod management capabilities (exec, logs)
- [x] Deployment management capabilities (scale)
- [x] Describe Kubernetes resources
- [ ] Explain Kubernetes resources
Diagnostics
- [x] Pod diagnostics (analyze pod status, container status, pod resource utilization)
- [x] Service diagnostics (analyze service selector configuration, not ready endpoints, events)
- [x] Deployment diagnostics (analyze available replicas)
- [x] StatefulSet diagnostics (analyze statefulset service if exists, pvc if exists, available replicas)
- [x] CronJob diagnostics (analyze cronjob schedule, starting deadline, last schedule time)
- [x] Ingress diagnostics (analyze ingress class configuration, related services, tls secrets)
- [x] NetworkPolicy diagnostics (analyze networkpolicy configuration, affected pods)
- [x] ValidatingWebhook diagnostics (analyze webhook configuration, referenced services and pods)
- [x] MutatingWebhook diagnostics (analyze webhook configuration, referenced services and pods)
- [x] Node diagnostics (analyze node conditions)
- [ ] Cluster diagnostics and troubleshooting
Monitoring
- [x] Pod, Deployment, ReplicaSet, StatefulSet, DaemonSet workload resource usage (cpu, memory)
- [ ] Node capacity, utilization (cpu, memory)
- [ ] Cluster capacity, utilization (cpu, memory)
Advanced Features
- [x] Multiple transport protocols support (Stdio, SSE)
- [x] Support multiple AI Clients
Tools Usage
Resource Operation Tools
resource_get: Get detailed resource information about a specific resource in a namespaceresource_list: List detailed resource information about all resources in a namespaceresource_create_or_update: Create or update a resource in a namespaceresource_delete: Delete a resource in a namespaceresource_describe: Describe a resource detailed information in a namespacedeployment_scale: Scale a deployment in a namespacepod_exec: Execute a command in a pod in a namespace`pod_logs: Get logs from a pod in a namespace
Diagnostics Tools
pod_analyze: Diagnose all pods in a namespacedeployment_analyze: Diagnose all deployments in a namespacestatefulset_analyze: Diagnose all statefulsets in a namespaceservice_analyze: Diagnose all services in a namespacecronjob_analyze: Diagnose all cronjobs in a namespaceingress_analyze: Diagnose all ingresses in a namespacenetworkpolicy_analyze: Diagnose all networkpolicies in a namespacevalidatingwebhook_analyze: Diagnose all validatingwebhooksmutatingwebhook_analyze: Diagnose all mutatingwebhooksnode_analyze: Diagnose all nodes in cluster
Monitoring Tools
workload_resource_usage: Get pod/deployment/replicaset/statefulset resource usage in a namepace (cpu, memory)
Requirements
- Go 1.23 or higher
- kubectl configured
Installation
# clone the repository
git clone https://github.com/wenhuwang/mcp-k8s-eye.git
cd mcp-k8s-eye
# build the binary
go build -o mcp-k8s-eye
Usage
Stdio mode
{
"mcpServers": {
"k8s eye": {
"command": "YOUR mcp-k8s-eye PATH",
"env": {
"HOME": "USER HOME DIR"
},
}
}
}
env.HOME is used to set the HOME directory for kubeconfig file.
SSE mode
- start your mcp sse server
- config your mcp server
{
"mcpServers": {
"k8s eye": {
"url": "http://localhost:8080/sse",
"env": {}
}
}
}
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