H2O.ai

H2O.ai MCP Connector for Claude

A+

Manage AI models via H2O.ai — track data frames, monitor machine learning models and training jobs, and audit cloud cluster status directly from any AI agent.

6 tools Official Updated Jun 28, 2026 Official Vinkius Partner

Connect your H2O.ai instance to any AI agent and take full control of your machine learning lifecycle, automated data processing, and cluster monitoring through natural conversation.

What you can do

  • Data Frame Orchestration — List structured datasets securely loaded into H2O clusters and retrieve specific dimensional data mapping explicit frame columns natively
  • Model Inventory Auditing — Iterate through tracked machine learning models previously generated inside your cloud instance to verify performance metrics and versions
  • Inference Monitoring — Access detailed configuration blocks for active model architectures to verify deployment boundaries and parameters synchronously
  • Training Job Oversight — Query timeline nodes tracking long-running tasks and model training jobs queued on the cluster to monitor execution progress
  • Cloud Cluster Auditing — Ping root endpoints defining hardware architecture health and memory utilization within your H2O instances flawlessly
  • MLOps Command Center — Verify available frames and models to orchestrate complex data science workflows and model evaluations using natural language
  • Status Verification — Identify precise executing statuses of ongoing jobs to ensure your AI pipeline is operational and within resource limits securely

How it works

  1. Subscribe to this server
  2. Enter your H2O.ai Base URL (found in your H2O cluster settings or cloud dashboard)
  3. Start managing your machine learning models from Claude, Cursor, or any MCP-compatible client

Who is this for?

  • Data Scientists — monitor model training jobs and verify frame data without manual cluster dashboard checks
  • ML Engineers — audit model architectures and track deployment statuses using natural language conversation
  • Product Teams — verify available AI models and monitor cluster health in real-time
  • Developers — test and debug H2O.ai integrations and verify data schemas through the chat interface
machine-learningmodel-lifecycledata-framespredictive-modelingcluster-monitoring

6 tools expose this connector's capabilities to your AI agent.

list_frames

List frames

get_frame

Get frame

list_models

List models

get_model

Get model

list_jobs

List jobs

cloud_status

Get cloud status

See how to talk to your AI agent using H2O.ai.

List all machine learning models in my H2O cluster

Retrieving models... I found 5 models including 'GBM_model_1', 'DeepLearning_v2', and 'AutoML_leader'. Would you like the detailed performance metrics for the AutoML leader model?

What is the current status of the H2O cloud cluster?

Checking cloud status... Your H2O cluster is 'Healthy' with 4 active nodes. Memory usage is at 35% (14GB used out of 40GB total). All hardware architecture endpoints are operational.

Show me the last 3 training jobs

Retrieving jobs... I found 3 recent tasks: 1. GBM Training (Completed, 10m ago). 2. XGBoost Grid Search (Running, 45% complete). 3. Data Parsing (Completed, 1h ago). I can provide more details for any of these jobs.

Yes. Use the 'list_frames' tool. The agent retrieves the list of structured datasets securely loaded into memory, including their IDs and basic metadata, allowing you to browse available data flawlessly.

Related Connectors