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Kubeflow Server

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AI-powered interface for Kubeflow Training via MCP, enabling AI assistants to manage distributed training jobs, fine-tune LLMs, and monitor workloads on Kuberne

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Описание

AI-powered interface for Kubeflow Training via MCP, enabling AI assistants to manage distributed training jobs, fine-tune LLMs, and monitor workloads on Kubernetes through natural language.

README

Python 3.10+ Kubeflow SDK License MCP Status

AI-powered interface for Kubeflow Training via Model Context Protocol (MCP). Enable your AI assistants to manage distributed training jobs, fine-tune LLMs, and monitor workloads on Kubernetes — all through natural language.

Note: This project is in early development. APIs may change between versions.

Quick Overview

Table of Contents

Overview

The Kubeflow MCP Server bridges AI assistants/agents with Kubeflow's training infrastructure. Instead of writing YAML manifests or learning Kubernetes APIs, simply describe what you want to train and let AI handle the complexity.

Key Benefits

  • Natural Language Interface: Describe training jobs in plain English — "fine-tune Llama-3 on my dataset with 4 GPUs"
  • Smart Resource Planning: AI estimates GPU/memory requirements before job submission
  • Real-time Monitoring: Stream logs, track progress, and debug failures conversationally
  • Safe by Design: Preview configurations before submission, built-in validation and guardrails
  • Multi-Client Support: Works with Claude Desktop, Cursor IDE, MCP Inspector, or custom agents

Compatibility

Component Version Notes
Kubeflow SDK ≥0.4.0 TrainerClient API for training jobs
Kubernetes ≥1.28 With TrainJob CRD installed
Python ≥3.10 Async support required

This MCP server wraps the Kubeflow Training SDK TrainerClient API. All training operations (fine-tuning, custom scripts, container jobs) use SDK types like BuiltinTrainer, CustomTrainer, TorchTuneConfig, and LoraConfig.

Quick Start

Installation

pip install kubeflow-mcp

Configuration

Add to your MCP client configuration:

{
  "mcpServers": {
    "kubeflow": {
      "command": "kubeflow-mcp",
      "args": ["serve", "--persona", "ml-engineer"]
    }
  }
}
Option Values Default
--persona readonly, data-scientist, ml-engineer, platform-admin ml-engineer
--transport stdio, http stdio
--log-level DEBUG, INFO, WARNING, ERROR INFO
Config file locations
Client Config Path
Cursor IDE ~/.cursor/mcp.json
Claude Desktop (macOS) ~/Library/Application Support/Claude/claude_desktop_config.json
Claude Desktop (Windows) %APPDATA%\Claude\claude_desktop_config.json
Container deployment
{
  "mcpServers": {
    "kubeflow": {
      "command": "podman",
      "args": [
        "run", "--rm", "-i",
        "-v", "${HOME}/.kube:/home/mcp/.kube:ro",
        "ghcr.io/kubeflow/mcp-server:latest",
        "serve"
      ]
    }
  }
}

Replace podman with docker if needed.

MCP Inspector (debugging)
npx @modelcontextprotocol/inspector uv run kubeflow-mcp serve

Try It

"What training jobs are running in my cluster?"
"Fine-tune google/gemma-2b on squad dataset with 2 GPUs"
"Show me logs for the failed training job"

Tools

Category Tools Description
Planning get_cluster_resources, estimate_resources Check capacity, estimate requirements
Training fine_tune, run_custom_training, run_container_training Submit training jobs
Discovery list_training_jobs, get_training_job, list_runtimes, get_runtime Browse jobs and runtimes
Monitoring get_training_logs, get_training_events, wait_for_training Logs, events, status
Lifecycle delete_training_job, suspend_training_job, resume_training_job Manage job lifecycle
Example: Fine-tune an LLM
fine_tune(
    model="google/gemma-2b",
    dataset="squad",
    num_nodes=2,
    gpu_per_node=1,
    confirmed=True
)
Example: Resource Estimation

Ask: "How much GPU memory do I need for Llama-3-70B?"

{
  "model": "meta-llama/Llama-3-70B",
  "parameters": "70B",
  "estimated_memory_gb": 140,
  "recommended_gpus": 4,
  "gpu_type": "A100-80GB"
}

Prompts

MCP prompts provide structured guidance for common workflows. MCP clients can discover and use these prompts:

Prompt Description
fine_tuning_workflow Step-by-step guide for fine-tuning LLMs with LoRA
custom_training_workflow Guide for custom scripts or container training
troubleshooting_guide Diagnose and fix common job failures
resource_planning Plan resources before training
monitoring_workflow Monitor jobs and debug issues
Using prompts in MCP clients

MCP clients that support prompts (like Claude Desktop) can list and invoke these prompts directly. The prompts provide detailed, parameterized guidance that helps ensure successful training operations.

Example with parameters:

fine_tuning_workflow(model="meta-llama/Llama-3.2-3B", dataset="tatsu-lab/alpaca")

Resources

MCP resources provide read-only reference data that clients can fetch without consuming tool calls:

Resource URI Content
trainer://models/supported Tested model configurations with GPU requirements
trainer://runtimes/info Runtime documentation and patches
trainer://guides/quickstart Quick start guide for new users
trainer://guides/troubleshooting Troubleshooting quick reference

CLI

# Server
kubeflow-mcp serve                              # Start MCP server
kubeflow-mcp serve --clients trainer            # Specify client
kubeflow-mcp serve --persona ml-engineer        # Set persona
kubeflow-mcp status                             # Show server status

# Agent
kubeflow-mcp agent --backend ollama --model qwen3:8b
kubeflow-mcp agent --backend ollama --mode progressive
kubeflow-mcp agent --backend ollama --thinking  # Enable thinking output

Local Agent

Run a fully local AI agent with Ollama — no cloud APIs required:

pip install kubeflow-mcp[agents]
ollama pull qwen3:8b
kubeflow-mcp agent --backend ollama --model qwen3:8b

Ollama Agent

Tool loading modes
Mode Description
full All tools via MCP protocol (default)
progressive 3 meta-tools for hierarchical discovery
semantic 2 meta-tools with embedding-based search
kubeflow-mcp agent --backend ollama                    # Full mode (default)
kubeflow-mcp agent --backend ollama --mode progressive # Hierarchical discovery
kubeflow-mcp agent --backend ollama --mode semantic    # requires sentence-transformers

Full mode connects via the standard MCP stdio protocol, identical to Cursor and Claude Desktop.

Recommended models
Model Context RAM Tool Calling
qwen3:8b 32K 8GB
qwen2.5:7b 32K 7GB
llama3.2:3b 8K 3GB

For 8K context models, use --mode progressive or --mode semantic.

Agent commands
Command Description
/tools List available tools
/mode [name] Switch tool mode
/file <path> Read and analyze a file
/clear Clear conversation
exit Quit

Development

make dev           # Install dev dependencies
make check         # Lint + type check
make test          # Run tests
make pre-commit    # All checks before commit

See make help for all commands. For detailed setup, see docs/DEVELOPMENT.md.

Roadmap

Component Status Description
TrainerClient ✅ Available 16 training tools
OptimizerClient 🔲 Planned Katib hyperparameter tuning
ModelRegistryClient 🔲 Planned Model versioning

See ROADMAP.md for details.

For MCP clients, agent frameworks, and production Kubernetes companions (Kyverno, ingress/OIDC, observability) — and what this project supports in-repo vs at deploy time — see Ecosystem and platform integrations in the roadmap.

Contributing

git clone https://github.com/kubeflow/mcp-server.git
cd mcp-server
make dev && make pre-commit

Look for good first issue labels.

Doc Description
CONTRIBUTING.md Guidelines, DCO, code style
ARCHITECTURE.md System design
docs/DEVELOPMENT.md Local setup, testing
SECURITY.md Security policy
ROADMAP.md Phases, priorities, ecosystem integrations

Community

License

Apache-2.0

from github.com/abhijeet-dhumal/mcp-server

Установка Kubeflow Server

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/abhijeet-dhumal/mcp-server

FAQ

Kubeflow Server MCP бесплатный?

Да, Kubeflow Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Kubeflow Server?

Нет, Kubeflow Server работает без API-ключей и переменных окружения.

Kubeflow Server — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Kubeflow Server в Claude Desktop, Claude Code или Cursor?

Открой Kubeflow Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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