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    Kubectl Mcp Server

    Chat with your Kubernetes Cluster using AI tools and IDEs like Claude and Cursor! for the Model Context Protocol. Enhance AI assistants with powerful integratio

    732 stars
    Python
    Updated Jul 14, 2025
    ai
    deployment
    devops
    genai
    kubernetes
    kubernetes-cluster
    llms
    mcp
    mcp-server

    Table of Contents

    • Installation
    • Quick Start with npx (Recommended - Zero Install)
    • Or install with pip (Python)
    • 📑 Table of Contents
    • What Can You Do?
    • Why kubectl-mcp-server?
    • Live Demos
    • Claude Desktop
    • Cursor AI
    • Windsurf
    • Installation
    • Quick Start with npx (Recommended - Zero Install)
    • Or install with pip (Python)
    • Install from GitHub Release
    • Prerequisites
    • Docker
    • Getting Started
    • 1. Test the Server (Optional)
    • 2. Connect to Your AI Assistant
    • Quick Setup with Your AI Assistant
    • Claude Desktop
    • Cursor AI
    • Windsurf
    • Using Python Instead of npx
    • 3. Restart Your AI Assistant
    • 4. Try These Commands
    • MCP Client Compatibility
    • All Supported AI Assistants
    • Claude Code
    • GitHub Copilot (VS Code)
    • Goose
    • Gemini CLI
    • Roo Code / Kilo Code
    • Complete Feature Set
    • 253 MCP Tools for Complete Kubernetes Management
    • MCP Resources
    • MCP Prompts
    • Key Capabilities
    • Using the CLI
    • CLI Features
    • Advanced Configuration
    • Transport Modes
    • Environment Variables
    • Optional: Interactive Dashboards (6 UI Tools)
    • Optional: Browser Automation (26 Tools)
    • Optional: kubectl-mcp-app (8 Interactive UI Dashboards)
    • Enterprise: OAuth 2.1 Authentication
    • Integrations & Ecosystem
    • Docker MCP Toolkit
    • agentregistry
    • agentgateway
    • In-Cluster Deployment
    • Option 1: kMCP (Recommended)
    • Option 2: Standard Kubernetes
    • Option 3: kagent (AI Agent Framework)
    • Architecture
    • Modular Structure
    • Agent Skills (25 Skills for AI Coding Agents)
    • Quick Install
    • Available Skills (25)
    • Convert to Other Agents
    • Multi-Cluster Support
    • Context Parameter (v1.15.0)
    • Context Management
    • How It Works
    • Development & Testing
    • Setup Development Environment
    • Running Tests
    • Test Structure
    • Code Quality
    • Contributing
    • Support & Community
    • License
    • Links & Resources

    Table of Contents

    • Installation
    • Quick Start with npx (Recommended - Zero Install)
    • Or install with pip (Python)
    • 📑 Table of Contents
    • What Can You Do?
    • Why kubectl-mcp-server?
    • Live Demos
    • Claude Desktop
    • Cursor AI
    • Windsurf
    • Installation
    • Quick Start with npx (Recommended - Zero Install)
    • Or install with pip (Python)
    • Install from GitHub Release
    • Prerequisites
    • Docker
    • Getting Started
    • 1. Test the Server (Optional)
    • 2. Connect to Your AI Assistant
    • Quick Setup with Your AI Assistant
    • Claude Desktop
    • Cursor AI
    • Windsurf
    • Using Python Instead of npx
    • 3. Restart Your AI Assistant
    • 4. Try These Commands
    • MCP Client Compatibility
    • All Supported AI Assistants
    • Claude Code
    • GitHub Copilot (VS Code)
    • Goose
    • Gemini CLI
    • Roo Code / Kilo Code
    • Complete Feature Set
    • 253 MCP Tools for Complete Kubernetes Management
    • MCP Resources
    • MCP Prompts
    • Key Capabilities
    • Using the CLI
    • CLI Features
    • Advanced Configuration
    • Transport Modes
    • Environment Variables
    • Optional: Interactive Dashboards (6 UI Tools)
    • Optional: Browser Automation (26 Tools)
    • Optional: kubectl-mcp-app (8 Interactive UI Dashboards)
    • Enterprise: OAuth 2.1 Authentication
    • Integrations & Ecosystem
    • Docker MCP Toolkit
    • agentregistry
    • agentgateway
    • In-Cluster Deployment
    • Option 1: kMCP (Recommended)
    • Option 2: Standard Kubernetes
    • Option 3: kagent (AI Agent Framework)
    • Architecture
    • Modular Structure
    • Agent Skills (25 Skills for AI Coding Agents)
    • Quick Install
    • Available Skills (25)
    • Convert to Other Agents
    • Multi-Cluster Support
    • Context Parameter (v1.15.0)
    • Context Management
    • How It Works
    • Development & Testing
    • Setup Development Environment
    • Running Tests
    • Test Structure
    • Code Quality
    • Contributing
    • Support & Community
    • License
    • Links & Resources

    Documentation

    kubectl-mcp-server

    Control your entire Kubernetes infrastructure through natural language conversations with AI.

    Talk to your clusters like you talk to a DevOps expert. Debug crashed pods, optimize costs, deploy applications, audit security, manage Helm charts, and visualize dashboards—all through natural language.

    ---

    Installation

    Quick Start with npx (Recommended - Zero Install)

    bash
    # Run directly without installation - works instantly!
    npx -y kubectl-mcp-server
    
    # Or install globally for faster startup
    npm install -g kubectl-mcp-server

    Or install with pip (Python)

    bash
    # Standard installation
    pip install kubectl-mcp-server
    
    # With interactive UI dashboards (recommended)
    pip install kubectl-mcp-server[ui]

    ---

    📑 Table of Contents

    • What Can You Do?
    • Why kubectl-mcp-server?
    • Live Demos
    • Installation
    • Quick Start with npx
    • Install with pip
    • Docker
    • Getting Started
    • Quick Setup with Your AI Assistant
    • All Supported AI Assistants
    • Complete Feature Set
    • Using the CLI
    • Advanced Configuration
    • Optional Features
    • Interactive Dashboards
    • Browser Automation
    • Enterprise
    • Integrations & Ecosystem
    • In-Cluster Deployment
    • Multi-Cluster Support
    • Architecture
    • Agent Skills
    • Development & Testing
    • Contributing
    • Support & Community

    ---

    What Can You Do?

    Simply ask your AI assistant in natural language:

    💬 "Why is my pod crashing?"

    • Instant crash diagnosis with logs, events, and resource analysis
    • Root cause identification with actionable recommendations

    💬 "Deploy a Redis cluster with 3 replicas"

    • Creates deployment with best practices
    • Configures services, persistent storage, and health checks

    💬 "Show me which pods are wasting resources"

    • AI-powered cost optimization analysis
    • Resource recommendations with potential savings

    💬 "Which services can't reach the database?"

    • Network connectivity diagnostics with DNS resolution
    • Service chain tracing from ingress to pods

    💬 "Audit security across all namespaces"

    • RBAC permission analysis
    • Secret security scanning and pod security policies

    💬 "Show me the cluster dashboard"

    • Interactive HTML dashboards with live metrics
    • Visual timeline of events and resource usage

    253 powerful tools | 8 workflow prompts | 8 data resources | Works with all major AI assistants

    Why kubectl-mcp-server?

    • 🚀 Stop context-switching - Manage Kubernetes directly from your AI assistant conversations
    • 🧠 AI-powered diagnostics - Get intelligent troubleshooting, not just raw data
    • 💰 Built-in cost optimization - Identify waste and get actionable savings recommendations
    • 🔒 Enterprise-ready - OAuth 2.1 auth, RBAC validation, non-destructive mode, secret masking
    • ⚡ Zero learning curve - Natural language instead of memorizing kubectl commands
    • 🌐 Universal compatibility - Works with Claude, Cursor, Windsurf, Copilot, and 15+ other AI tools
    • 📊 Visual insights - Interactive dashboards and browser automation for web-based tools
    • ☸️ Production-grade - Deploy in-cluster with kMCP, 216 passing tests, active maintenance

    From debugging crashed pods to optimizing cluster costs, kubectl-mcp-server is your AI-powered DevOps companion.

    Live Demos

    Claude Desktop

    Claude MCP

    Cursor AI

    Cursor MCP

    Windsurf

    Windsurf MCP

    Installation

    Quick Start with npx (Recommended - Zero Install)

    bash
    # Run directly without installation - works instantly!
    npx -y kubectl-mcp-server
    
    # Or install globally for faster startup
    npm install -g kubectl-mcp-server

    Or install with pip (Python)

    bash
    # Standard installation
    pip install kubectl-mcp-server
    
    # With interactive UI dashboards (recommended)
    pip install kubectl-mcp-server[ui]

    Install from GitHub Release

    bash
    # Install specific version directly from GitHub release (replace {VERSION} with desired version)
    pip install https://github.com/rohitg00/kubectl-mcp-server/releases/download/v{VERSION}/kubectl_mcp_server-{VERSION}-py3-none-any.whl
    
    # Example: Install v1.19.0
    pip install https://github.com/rohitg00/kubectl-mcp-server/releases/download/v1.19.0/kubectl_mcp_server-1.19.0-py3-none-any.whl
    
    # Or install latest from git
    pip install git+https://github.com/rohitg00/kubectl-mcp-server.git

    Prerequisites

    • Python 3.9+ (for pip installation)
    • Node.js 14+ (for npx installation)
    • kubectl installed and configured
    • Access to a Kubernetes cluster

    Docker

    bash
    # Pull from Docker Hub
    docker pull rohitghumare64/kubectl-mcp-server:latest
    
    # Or pull from GitHub Container Registry
    docker pull ghcr.io/rohitg00/kubectl-mcp-server:latest
    
    # Run with stdio transport
    docker run -i -v $HOME/.kube:/root/.kube:ro rohitghumare64/kubectl-mcp-server:latest
    
    # Run with HTTP transport
    docker run -p 8000:8000 -v $HOME/.kube:/root/.kube:ro rohitghumare64/kubectl-mcp-server:latest --transport sse

    Getting Started

    1. Test the Server (Optional)

    Before integrating with your AI assistant, verify the installation:

    bash
    # Check if kubectl is configured
    kubectl cluster-info
    
    # Test the MCP server directly
    kubectl-mcp-server info
    
    # List all available tools
    kubectl-mcp-server tools
    
    # Try calling a tool
    kubectl-mcp-server call get_pods '{"namespace": "kube-system"}'

    2. Connect to Your AI Assistant

    Choose your favorite AI assistant and add the configuration:

    Quick Setup with Your AI Assistant

    Claude Desktop

    Add to ~/Library/Application Support/Claude/claude_desktop_config.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    Cursor AI

    Add to ~/.cursor/mcp.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    Windsurf

    Add to ~/.config/windsurf/mcp.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    Using Python Instead of npx

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "python",
          "args": ["-m", "kubectl_mcp_tool.mcp_server"],
          "env": {
            "KUBECONFIG": "/path/to/.kube/config"
          }
        }
      }
    }

    More integrations: GitHub Copilot, Goose, Gemini CLI, Roo Code, and 15+ other clients —> see full configuration guide below.

    3. Restart Your AI Assistant

    After adding the configuration, restart your AI assistant (GitHub Copilot, Claude Code,Claude Desktop, Cursor, etc.) to load the MCP server.

    4. Try These Commands

    Start a conversation with your AI assistant and try these:

    Troubleshooting:

    code
    "Show me all pods in the kube-system namespace"
    "Why is the nginx-deployment pod crashing?"
    "Diagnose network connectivity issues in the default namespace"

    Deployments:

    code
    "Create a deployment for nginx with 3 replicas"
    "Scale my frontend deployment to 5 replicas"
    "Roll back the api-server deployment to the previous version"

    Cost & Optimization:

    code
    "Which pods are using the most resources?"
    "Show me idle resources that are wasting money"
    "Analyze cost optimization opportunities in the production namespace"

    Security:

    code
    "Audit RBAC permissions in all namespaces"
    "Check for insecure secrets and configurations"
    "Show me pods running with privileged access"

    Helm:

    code
    "List all Helm releases in the cluster"
    "Install Redis from the Bitnami chart repository"
    "Show me the values for my nginx-ingress Helm release"

    Multi-Cluster:

    code
    "List all available Kubernetes contexts"
    "Switch to the production cluster context"
    "Show me cluster information and version"

    MCP Client Compatibility

    Works seamlessly with all MCP-compatible AI assistants:

    ClientStatusClientStatus
    Claude Desktop✅ NativeClaude Code✅ Native
    Cursor✅ NativeWindsurf✅ Native
    GitHub Copilot✅ NativeOpenAI Codex✅ Native
    Gemini CLI✅ NativeGoose✅ Native
    Roo Code✅ NativeKilo Code✅ Native
    Amp✅ NativeTrae✅ Native
    OpenCode✅ NativeKiro CLI✅ Native
    Antigravity✅ NativeClawdbot✅ Native
    Droid (Factory)✅ NativeAny MCP Client✅ Compatible

    All Supported AI Assistants

    Claude Code

    Add to ~/.config/claude-code/mcp.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    GitHub Copilot (VS Code)

    Add to VS Code settings.json:

    json
    {
      "mcp": {
        "servers": {
          "kubernetes": {
            "command": "npx",
            "args": ["-y", "kubectl-mcp-server"]
          }
        }
      }
    }

    Goose

    Add to ~/.config/goose/config.yaml:

    yaml
    extensions:
      kubernetes:
        command: npx
        args:
          - -y
          - kubectl-mcp-server

    Gemini CLI

    Add to ~/.gemini/settings.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    Roo Code / Kilo Code

    Add to ~/.config/roo-code/mcp.json or ~/.config/kilo-code/mcp.json:

    json
    {
      "mcpServers": {
        "kubernetes": {
          "command": "npx",
          "args": ["-y", "kubectl-mcp-server"]
        }
      }
    }

    Complete Feature Set

    253 MCP Tools for Complete Kubernetes Management

    CategoryTools
    Podsget_pods, get_logs, get_pod_events, check_pod_health, exec_in_pod, cleanup_pods, get_pod_conditions, get_previous_logs
    Deploymentsget_deployments, create_deployment, scale_deployment, kubectl_rollout, restart_deployment
    Workloadsget_statefulsets, get_daemonsets, get_jobs, get_replicasets
    Services & Networkingget_services, get_ingress, get_endpoints, diagnose_network_connectivity, check_dns_resolution, trace_service_chain
    Storageget_persistent_volumes, get_pvcs, get_storage_classes
    Configget_configmaps, get_secrets, get_resource_quotas, get_limit_ranges
    Clusterget_nodes, get_namespaces, get_cluster_info, get_cluster_version, health_check, get_node_metrics, get_pod_metrics
    RBAC & Securityget_rbac_roles, get_cluster_roles, get_service_accounts, audit_rbac_permissions, check_secrets_security, get_pod_security_info, get_admission_webhooks
    CRDsget_crds, get_priority_classes
    Helm Releaseshelm_list, helm_status, helm_history, helm_get_values, helm_get_manifest, helm_get_notes, helm_get_hooks, helm_get_all
    Helm Chartshelm_show_chart, helm_show_values, helm_show_readme, helm_show_crds, helm_show_all, helm_search_repo, helm_search_hub
    Helm Reposhelm_repo_list, helm_repo_add, helm_repo_remove, helm_repo_update
    Helm Operationsinstall_helm_chart, upgrade_helm_chart, uninstall_helm_chart, helm_rollback, helm_test, helm_template, helm_template_apply
    Helm Developmenthelm_create, helm_lint, helm_package, helm_pull, helm_dependency_list, helm_dependency_update, helm_dependency_build, helm_version, helm_env
    Contextget_current_context, switch_context, list_contexts, list_kubeconfig_contexts
    Diagnosticsdiagnose_pod_crash, detect_pending_pods, get_evicted_pods, compare_namespaces
    Operationskubectl_apply, kubectl_create, kubectl_describe, kubectl_patch, delete_resource, kubectl_cp, backup_resource, label_resource, annotate_resource, taint_node, wait_for_condition
    Autoscalingget_hpa, get_pdb
    Cost Optimizationget_resource_recommendations, get_idle_resources, get_resource_quotas_usage, get_cost_analysis, get_overprovisioned_resources, get_resource_trends, get_namespace_cost_allocation, optimize_resource_requests
    Advancedkubectl_generic, kubectl_explain, get_api_resources, port_forward, get_resource_usage, node_management
    UI Dashboardsshow_pod_logs_ui, show_pods_dashboard_ui, show_resource_yaml_ui, show_cluster_overview_ui, show_events_timeline_ui, render_k8s_dashboard_screenshot
    GitOps (Flux/Argo)gitops_apps_list, gitops_app_get, gitops_app_sync, gitops_app_status, gitops_sources_list, gitops_source_get, gitops_detect_engine
    Cert-Managercerts_list, certs_get, certs_issuers_list, certs_issuer_get, certs_renew, certs_status_explain, certs_challenges_list, certs_requests_list, certs_detect
    Policy (Kyverno/Gatekeeper)policy_list, policy_get, policy_violations_list, policy_explain_denial, policy_audit, policy_detect
    Backup (Velero)backup_list, backup_get, backup_create, backup_delete, restore_list, restore_create, restore_get, backup_locations_list, backup_schedules_list, backup_schedule_create, backup_detect
    KEDA Autoscalingkeda_scaledobjects_list, keda_scaledobject_get, keda_scaledjobs_list, keda_triggerauths_list, keda_triggerauth_get, keda_hpa_list, keda_detect
    Cilium/Hubblecilium_policies_list, cilium_policy_get, cilium_endpoints_list, cilium_identities_list, cilium_nodes_list, cilium_status, hubble_flows_query, cilium_detect
    Argo Rollouts/Flaggerrollouts_list, rollout_get, rollout_status, rollout_promote, rollout_abort, rollout_retry, rollout_restart, analysis_runs_list, flagger_canaries_list, flagger_canary_get, rollouts_detect
    Cluster APIcapi_clusters_list, capi_cluster_get, capi_machines_list, capi_machine_get, capi_machinedeployments_list, capi_machinedeployment_scale, capi_machinesets_list, capi_machinehealthchecks_list, capi_clusterclasses_list, capi_cluster_kubeconfig, capi_detect
    KubeVirt VMskubevirt_vms_list, kubevirt_vm_get, kubevirt_vmis_list, kubevirt_vm_start, kubevirt_vm_stop, kubevirt_vm_restart, kubevirt_vm_pause, kubevirt_vm_unpause, kubevirt_vm_migrate, kubevirt_datasources_list, kubevirt_instancetypes_list, kubevirt_datavolumes_list, kubevirt_detect
    Istio/Kialiistio_virtualservices_list, istio_virtualservice_get, istio_destinationrules_list, istio_gateways_list, istio_peerauthentications_list, istio_authorizationpolicies_list, istio_proxy_status, istio_analyze, istio_sidecar_status, istio_detect
    vCluster (vind)vind_detect_tool, vind_list_clusters_tool, vind_status_tool, vind_get_kubeconfig_tool, vind_logs_tool, vind_create_cluster_tool, vind_delete_cluster_tool, vind_pause_tool, vind_resume_tool, vind_connect_tool, vind_disconnect_tool, vind_upgrade_tool, vind_describe_tool, vind_platform_start_tool
    kind (K8s in Docker)kind_detect_tool, kind_version_tool, kind_list_clusters_tool, kind_get_nodes_tool, kind_get_kubeconfig_tool, kind_export_logs_tool, kind_cluster_info_tool, kind_node_labels_tool, kind_create_cluster_tool, kind_delete_cluster_tool, kind_delete_all_clusters_tool, kind_load_image_tool, kind_load_image_archive_tool, kind_build_node_image_tool, kind_set_kubeconfig_tool

    MCP Resources

    Access Kubernetes data as browsable resources:

    Resource URIDescription
    kubeconfig://contextsList all available kubectl contexts
    kubeconfig://current-contextGet current active context
    namespace://currentGet current namespace
    namespace://listList all namespaces
    cluster://infoGet cluster information
    cluster://nodesGet detailed node information
    cluster://versionGet Kubernetes version
    cluster://api-resourcesList available API resources
    manifest://deployments/{ns}/{name}Get deployment YAML
    manifest://services/{ns}/{name}Get service YAML
    manifest://pods/{ns}/{name}Get pod YAML
    manifest://configmaps/{ns}/{name}Get ConfigMap YAML
    manifest://secrets/{ns}/{name}Get secret YAML (data masked)
    manifest://ingresses/{ns}/{name}Get ingress YAML

    MCP Prompts

    Pre-built workflow prompts for common Kubernetes operations:

    PromptDescription
    troubleshoot_workloadComprehensive troubleshooting guide for pods/deployments
    deploy_applicationStep-by-step deployment workflow
    security_auditSecurity scanning and RBAC analysis workflow
    cost_optimizationResource optimization and cost analysis workflow
    disaster_recoveryBackup and recovery planning workflow
    debug_networkingNetwork debugging for services and connectivity
    scale_applicationScaling guide with HPA/VPA best practices
    upgrade_clusterKubernetes cluster upgrade planning

    Key Capabilities

    • 🤖 253 Powerful Tools - Complete Kubernetes management from pods to security
    • 🎯 8 AI Workflow Prompts - Pre-built workflows for common operations
    • 📊 8 MCP Resources - Browsable Kubernetes data exposure
    • 🎨 6 Interactive Dashboards - HTML UI tools for visual cluster management
    • 🌐 26 Browser Tools - Web automation with cloud provider support
    • 🔄 107 Ecosystem Tools - GitOps, Cert-Manager, Policy, Backup, KEDA, Cilium, Rollouts, CAPI, KubeVirt, Istio, vCluster
    • ⚡ Multi-Transport - stdio, SSE, HTTP, streamable-http
    • 🔐 Security First - Non-destructive mode, secret masking, RBAC validation
    • 🏥 Advanced Diagnostics - AI-powered troubleshooting and cost optimization
    • ☸️ Multi-Cluster - Target any cluster via context parameter in every tool
    • 🎡 Full Helm v3 - Complete chart lifecycle management
    • 🔧 Powerful CLI - Shell-friendly tool discovery and direct calling
    • 🐳 Cloud Native - Deploy in-cluster with kMCP or kagent

    Using the CLI

    The built-in CLI lets you explore and test tools without an AI assistant:

    bash
    # List all tools with descriptions
    kubectl-mcp-server tools -d
    
    # Search for pod-related tools
    kubectl-mcp-server grep "*pod*"
    
    # Show specific tool schema
    kubectl-mcp-server tools get_pods
    
    # Call a tool directly
    kubectl-mcp-server call get_pods '{"namespace": "kube-system"}'
    
    # Pipe JSON from stdin
    echo '{"namespace": "default"}' | kubectl-mcp-server call get_pods
    
    # Check dependencies
    kubectl-mcp-server doctor
    
    # Show/switch Kubernetes context
    kubectl-mcp-server context
    kubectl-mcp-server context minikube
    
    # List resources and prompts
    kubectl-mcp-server resources
    kubectl-mcp-server prompts
    
    # Show server info
    kubectl-mcp-server info

    CLI Features

    • Structured errors: Actionable error messages with suggestions
    • Colorized output: Human-readable with JSON mode for scripting (--json)
    • NO_COLOR support: Respects NO_COLOR environment variable
    • Stdin support: Pipe JSON arguments to commands

    Advanced Configuration

    Transport Modes

    The server supports multiple transport protocols:

    bash
    # stdio (default) - Best for Claude Desktop, Cursor, Windsurf
    kubectl-mcp-server
    # or: python -m kubectl_mcp_tool.mcp_server
    
    # SSE - Server-Sent Events for web clients
    kubectl-mcp-server --transport sse --port 8000
    
    # HTTP - Standard HTTP for REST clients
    kubectl-mcp-server --transport http --port 8000
    
    # streamable-http - For agentgateway integration
    kubectl-mcp-server --transport streamable-http --port 8000

    Transport Options:

    • --transport: Choose from stdio, sse, http, streamable-http (default: stdio)
    • --host: Bind address (default: 0.0.0.0)
    • --port: Port for network transports (default: 8000)
    • --non-destructive: Enable read-only mode (blocks delete, apply, create operations)

    Environment Variables

    Core Settings:

    VariableDescriptionDefault
    KUBECONFIGPath to kubeconfig file~/.kube/config
    MCP_DEBUGEnable verbose loggingfalse
    MCP_LOG_FILELog file pathNone (stdout)

    Authentication (Enterprise):

    VariableDescriptionDefault
    MCP_AUTH_ENABLEDEnable OAuth 2.1 authenticationfalse
    MCP_AUTH_ISSUEROAuth 2.0 Authorization Server URL-
    MCP_AUTH_JWKS_URIJWKS endpoint URLAuto-derived
    MCP_AUTH_AUDIENCEExpected token audiencekubectl-mcp-server
    MCP_AUTH_REQUIRED_SCOPESRequired OAuth scopesmcp:tools

    Browser Automation (Optional):

    VariableDescriptionDefault
    MCP_BROWSER_ENABLEDEnable browser automation toolsfalse
    MCP_BROWSER_PROVIDERCloud provider (browserbase/browseruse)None
    MCP_BROWSER_PROFILEPersistent profile pathNone
    MCP_BROWSER_CDP_URLRemote CDP WebSocket URLNone
    MCP_BROWSER_PROXYProxy server URLNone

    Optional: Interactive Dashboards (6 UI Tools)

    Get beautiful HTML dashboards for visual cluster management.

    Installation:

    bash
    # Install with UI support
    pip install kubectl-mcp-server[ui]

    6 Dashboard Tools:

    • 📊 show_pods_dashboard_ui - Real-time pod status table
    • 📝 show_pod_logs_ui - Interactive log viewer with search
    • 🎯 show_cluster_overview_ui - Complete cluster dashboard
    • ⚡ show_events_timeline_ui - Events timeline with filtering
    • 📄 show_resource_yaml_ui - YAML viewer with syntax highlighting
    • 📸 render_k8s_dashboard_screenshot - Export dashboards as PNG

    Features:

    • 🎨 Dark theme optimized for terminals (Catppuccin)
    • 🔄 Graceful fallback to JSON for incompatible clients
    • 🖼️ Screenshot rendering for universal compatibility
    • 🚀 Zero external dependencies

    Works With: Goose, LibreChat, Nanobot (full HTML UI) | Claude Desktop, Cursor, others (JSON + screenshots)

    Optional: Browser Automation (26 Tools)

    Automate web-based Kubernetes operations with agent-browser integration.

    Quick Setup:

    bash
    # Install agent-browser
    npm install -g agent-browser
    agent-browser install
    
    # Enable browser tools
    export MCP_BROWSER_ENABLED=true
    kubectl-mcp-server

    What You Can Do:

    • 🌐 Test deployed apps via Ingress URLs
    • 📸 Screenshot Grafana, ArgoCD, or any K8s dashboard
    • ☁️ Automate cloud console operations (EKS, GKE, AKS)
    • 🏥 Health check web applications
    • 📄 Export monitoring dashboards as PDF
    • 🔐 Test authentication flows with persistent sessions

    26 Available Tools: browser_open, browser_screenshot, browser_click, browser_fill, browser_test_ingress, browser_screenshot_grafana, browser_health_check, and 19 more

    Advanced Features:

    • Cloud providers: Browserbase, Browser Use
    • Persistent browser profiles
    • Remote CDP connections
    • Session management

    Optional: kubectl-mcp-app (8 Interactive UI Dashboards)

    A standalone npm package that provides beautiful, interactive UI dashboards for Kubernetes management using the MCP ext-apps SDK.

    Installation:

    bash
    # Via npm
    npm install -g kubectl-mcp-app
    
    # Or via npx (no install)
    npx kubectl-mcp-app

    Claude Desktop Configuration:

    json
    {
      "mcpServers": {
        "kubectl-app": {
          "command": "npx",
          "args": ["kubectl-mcp-app"]
        }
      }
    }

    8 Interactive UI Tools:

    ToolDescription
    k8s-podsInteractive pod viewer with filtering, sorting, status indicators
    k8s-logsReal-time log viewer with syntax highlighting and search
    k8s-deployDeployment dashboard with rollout status, scaling, rollback
    k8s-helmHelm release manager with upgrade/rollback actions
    k8s-clusterCluster overview with node health and resource metrics
    k8s-costCost analyzer with waste detection and recommendations
    k8s-eventsEvents timeline with type filtering and grouping
    k8s-networkNetwork topology graph showing Services/Pods/Ingress

    Features:

    • 🎨 Dark/light theme support
    • 📊 Real-time data visualization
    • 🖱️ Interactive actions (scale, restart, delete)
    • 🔗 Seamless integration with kubectl-mcp-server

    More Info: See kubectl-mcp-app/README.md for full documentation.

    Enterprise: OAuth 2.1 Authentication

    Secure your MCP server with OAuth 2.1 authentication (RFC 9728).

    bash
    export MCP_AUTH_ENABLED=true
    export MCP_AUTH_ISSUER=https://your-idp.example.com
    export MCP_AUTH_AUDIENCE=kubectl-mcp-server
    kubectl-mcp-server --transport http --port 8000

    Supported Identity Providers: Okta, Auth0, Keycloak, Microsoft Entra ID, Google OAuth, and any OIDC-compliant provider.

    Use Case: Multi-tenant environments, compliance requirements, audit logging.

    Integrations & Ecosystem

    Docker MCP Toolkit

    Works with Docker MCP Toolkit:

    bash
    docker mcp server add kubectl-mcp-server mcp/kubectl-mcp-server:latest
    docker mcp server configure kubectl-mcp-server --volume "$HOME/.kube:/root/.kube:ro"
    docker mcp server enable kubectl-mcp-server
    docker mcp client connect claude

    agentregistry

    Install from the centralized agentregistry:

    bash
    # Install arctl CLI
    curl -fsSL https://raw.githubusercontent.com/agentregistry-dev/agentregistry/main/scripts/install.sh | bash
    
    # Install kubectl-mcp-server
    arctl mcp install io.github.rohitg00/kubectl-mcp-server

    Available via: PyPI (uvx), npm (npx), OCI (docker.io/rohitghumare64/kubectl-mcp-server)

    agentgateway

    Route to multiple MCP servers through agentgateway:

    bash
    # Start with streamable-http
    kubectl-mcp-server --transport streamable-http --port 8000
    
    # Configure gateway
    cat > gateway.yaml <<EOF
    binds:
    - port: 3000
      listeners:
      - routes:
        - backends:
          - mcp:
              targets:
              - name: kubectl-mcp-server
                mcp:
                  host: http://localhost:8000/mcp
    EOF
    
    # Start gateway
    agentgateway --config gateway.yaml

    Connect clients to http://localhost:3000/mcp for unified access to all 253 tools.

    In-Cluster Deployment

    Option 1: kMCP (Recommended)

    Deploy with kMCP - a control plane for MCP servers:

    bash
    # Install kMCP
    curl -fsSL https://raw.githubusercontent.com/kagent-dev/kmcp/refs/heads/main/scripts/get-kmcp.sh | bash
    kmcp install
    
    # Deploy kubectl-mcp-server (easiest)
    kmcp deploy package --deployment-name kubectl-mcp-server \
       --manager npx --args kubectl-mcp-server
    
    # Or with Docker image
    kmcp deploy --file deploy/kmcp/kmcp.yaml --image rohitghumare64/kubectl-mcp-server:latest

    See kMCP quickstart for details.

    Option 2: Standard Kubernetes

    Deploy with kubectl/kustomize:

    bash
    # Using kustomize (recommended)
    kubectl apply -k deploy/kubernetes/
    
    # Or individual manifests
    kubectl apply -f deploy/kubernetes/namespace.yaml
    kubectl apply -f deploy/kubernetes/rbac.yaml
    kubectl apply -f deploy/kubernetes/deployment.yaml
    kubectl apply -f deploy/kubernetes/service.yaml
    
    # Access via port-forward
    kubectl port-forward -n kubectl-mcp svc/kubectl-mcp-server 8000:8000

    See deploy/ directory for all manifests and configuration options.

    Option 3: kagent (AI Agent Framework)

    Integrate with kagent - a CNCF Kubernetes-native AI agent framework:

    bash
    # Install kagent
    brew install kagent
    kagent install --profile demo
    
    # Register as ToolServer
    kubectl apply -f deploy/kagent/toolserver-stdio.yaml
    
    # Open dashboard
    kagent dashboard

    Your AI agents now have access to all 253 Kubernetes tools. See kagent quickstart.

    Architecture

    code
    ┌─────────────────┐     ┌──────────────────┐     ┌─────────────────┐
    │   AI Assistant  │────▶│   MCP Server     │────▶│  Kubernetes API │
    │ (Claude/Cursor) │◀────│ (kubectl-mcp)    │◀────│    (kubectl)    │
    └─────────────────┘     └──────────────────┘     └─────────────────┘

    The MCP server implements the Model Context Protocol, translating natural language requests into kubectl operations.

    Modular Structure

    code
    kubectl_mcp_tool/
    ├── mcp_server.py          # Main server (FastMCP, transports)
    ├── tools/                  # 253 MCP tools organized by category
    │   ├── pods.py            # Pod management & diagnostics
    │   ├── deployments.py     # Deployments, StatefulSets, DaemonSets
    │   ├── core.py            # Namespaces, ConfigMaps, Secrets
    │   ├── cluster.py         # Context/cluster management
    │   ├── networking.py      # Services, Ingress, NetworkPolicies
    │   ├── storage.py         # PVCs, StorageClasses, PVs
    │   ├── security.py        # RBAC, ServiceAccounts, PodSecurity
    │   ├── helm.py            # Complete Helm v3 operations
    │   ├── operations.py      # kubectl apply/patch/describe/etc
    │   ├── diagnostics.py     # Metrics, namespace comparison
    │   ├── cost.py            # Resource optimization & cost analysis
    │   ├── ui.py              # MCP-UI interactive dashboards
    │   ├── gitops.py          # GitOps (Flux/ArgoCD)
    │   ├── certs.py           # Cert-Manager
    │   ├── policy.py          # Policy (Kyverno/Gatekeeper)
    │   ├── backup.py          # Backup (Velero)
    │   ├── keda.py            # KEDA autoscaling
    │   ├── cilium.py          # Cilium/Hubble network observability
    │   ├── rollouts.py        # Argo Rollouts/Flagger
    │   ├── capi.py            # Cluster API
    │   ├── kubevirt.py        # KubeVirt VMs
    │   ├── kiali.py           # Istio/Kiali service mesh
    │   └── vind.py            # vCluster (virtual clusters)
    ├── resources/              # 8 MCP Resources for data exposure
    ├── prompts/                # 8 MCP Prompts for workflows
    └── cli/                    # CLI interface

    Agent Skills (25 Skills for AI Coding Agents)

    Extend your AI coding agent with Kubernetes expertise using our Agent Skills library. Skills provide specialized knowledge and workflows that agents can load on demand.

    Quick Install

    bash
    # Copy all skills to Claude
    cp -r kubernetes-skills/claude/* ~/.claude/skills/
    
    # Or install specific skills
    cp -r kubernetes-skills/claude/k8s-helm ~/.claude/skills/

    Available Skills (25)

    CategorySkills
    Core Resourcesk8s-core, k8s-networking, k8s-storage
    Workloadsk8s-deploy, k8s-operations, k8s-helm
    Observabilityk8s-diagnostics, k8s-troubleshoot, k8s-incident
    Securityk8s-security, k8s-policy, k8s-certs
    GitOpsk8s-gitops, k8s-rollouts
    Scalingk8s-autoscaling, k8s-cost, k8s-backup
    Multi-Clusterk8s-multicluster, k8s-capi, k8s-kubevirt, k8s-vind
    Networkingk8s-service-mesh, k8s-cilium
    Toolsk8s-browser, k8s-cli

    Convert to Other Agents

    Use SkillKit to convert skills to your preferred AI agent format:

    bash
    npm install -g skillkit
    
    # Convert to Cursor format
    skillkit translate kubernetes-skills/claude --to cursor --output .cursor/rules/
    
    # Convert to Codex format
    skillkit translate kubernetes-skills/claude --to codex --output ./

    Supported agents: Claude, Cursor, Codex, Gemini CLI, GitHub Copilot, Goose, Windsurf, Roo, Amp, and more.

    See kubernetes-skills/README.md for full documentation.

    Multi-Cluster Support

    Seamlessly manage multiple Kubernetes clusters through natural language. Every tool supports an optional context parameter to target any cluster without switching contexts.

    Context Parameter (v1.15.0)

    Most kubectl-backed tools accept an optional context parameter to target specific clusters.

    Note: vCluster (vind) and kind tools run via their local CLIs and do not accept the context parameter.

    Talk to your AI assistant:

    code
    "List pods in the production cluster"
    "Get deployments from staging context"
    "Show logs from the api-pod in the dev cluster"
    "Compare namespaces between production and staging clusters"

    Direct tool calls with context:

    bash
    # Target a specific cluster context
    kubectl-mcp-server call get_pods '{"namespace": "default", "context": "production"}'
    
    # Get deployments from staging
    kubectl-mcp-server call get_deployments '{"namespace": "app", "context": "staging"}'
    
    # Install Helm chart to production cluster
    kubectl-mcp-server call install_helm_chart '{"name": "redis", "chart": "bitnami/redis", "namespace": "cache", "context": "production"}'
    
    # Compare resources across clusters
    kubectl-mcp-server call compare_namespaces '{"namespace1": "prod-ns", "namespace2": "staging-ns", "context": "production"}'

    Context Management

    Talk to your AI assistant:

    code
    "List all available Kubernetes contexts"
    "Switch to the production cluster"
    "Show me details about the staging context"
    "What's the current cluster I'm connected to?"

    Or use the CLI directly:

    bash
    kubectl-mcp-server context                    # Show current context
    kubectl-mcp-server context production         # Switch context
    kubectl-mcp-server call list_contexts_tool    # List all contexts via MCP

    How It Works

    • If context is omitted, the tool uses your current kubectl context
    • If context is specified, the tool targets that cluster directly
    • Response includes "context": "production" or "context": "current" for clarity
    • Works with all kubeconfig setups and respects KUBECONFIG environment variable
    • No need to switch contexts for cross-cluster operations

    Development & Testing

    Setup Development Environment

    bash
    # Clone the repository
    git clone https://github.com/rohitg00/kubectl-mcp-server.git
    cd kubectl-mcp-server
    
    # Create virtual environment
    python -m venv venv
    source venv/bin/activate  # On Windows: venv\Scripts\activate
    
    # Install development dependencies
    pip install -r requirements-dev.txt

    Running Tests

    bash
    # Run all tests
    pytest tests/ -v
    
    # Run specific test file
    pytest tests/test_tools.py -v
    
    # Run with coverage
    pytest tests/ --cov=kubectl_mcp_tool --cov-report=html
    
    # Run only unit tests
    pytest tests/ -v -m unit

    Test Structure

    code
    tests/
    ├── __init__.py          # Test package
    ├── conftest.py          # Shared fixtures and mocks
    ├── test_tools.py        # Unit tests for 253 MCP tools
    ├── test_resources.py    # Tests for 8 MCP Resources
    ├── test_prompts.py      # Tests for 8 MCP Prompts
    └── test_server.py       # Server initialization tests

    234 tests covering: tool registration, resource exposure, prompt generation, server initialization, non-destructive mode, secret masking, error handling, transport methods, CLI commands, browser automation, and ecosystem tools.

    Code Quality

    bash
    # Format code
    black kubectl_mcp_tool tests
    
    # Sort imports
    isort kubectl_mcp_tool tests
    
    # Lint
    flake8 kubectl_mcp_tool tests
    
    # Type checking
    mypy kubectl_mcp_tool

    Contributing

    We ❤️ contributions! Whether it's bug reports, feature requests, documentation improvements, or code contributions.

    Ways to contribute:

    • 🐛 Report bugs via GitHub Issues
    • 💡 Suggest features or improvements
    • 📝 Improve documentation
    • 🔧 Submit pull requests
    • ⭐ Star the project if you find it useful!

    Development setup: See Development & Testing section above.

    Before submitting a PR:

    1. Run tests: pytest tests/ -v

    2. Format code: black kubectl_mcp_tool tests

    3. Check linting: flake8 kubectl_mcp_tool tests

    Support & Community

    • 📖 Documentation
    • 💬 GitHub Discussions
    • 🐛 Issue Tracker
    • 🎯 Feature Requests
    • 🌟 agentregistry Profile

    License

    MIT License - see LICENSE for details.

    Links & Resources

    Package Repositories:

    • 🐍 PyPI Package
    • 📦 npm Package
    • 🐳 Docker Hub

    Project:

    • 🔧 GitHub Repository
    • 🐛 Issue Tracker
    • 📋 Changelog

    Ecosystem:

    • 📚 Model Context Protocol
    • ☸️ Kubernetes Documentation

    ---

    Made with ❤️ for the Kubernetes and AI community

    If kubectl-mcp-server makes your DevOps life easier, give it a ⭐ on GitHub!

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