SageMaker AI Server
FreeNot checkedEnables AI assistants to manage Amazon SageMaker AI resources including endpoints, jobs, pipelines, MLflow tracking servers, domains, models, model cards, and a
About
Enables AI assistants to manage Amazon SageMaker AI resources including endpoints, jobs, pipelines, MLflow tracking servers, domains, models, model cards, and apps.
README
A Model Context Protocol (MCP) server for Amazon SageMaker AI that enables AI assistants to access, work and manage SageMaker AI resources.
Features
- Managing and working with SageMaker AI endpoint resources
- Managing and working with SageMaker AI training, processing and transform jobs
- Managing and working with SageMaker AI pipelines
- CRUD operations for SageMaker AI Managed MLflow Tracking Server
- CRUD operations for SageMaker AI Domain
- Managing and working with Models and Model Cards
- CRUD operatioons for SageMaker AI Recommender Jobs
- CRUD operations for SageMaker AI Apps
Prerequisites
- Install
uvfrom Astral or the GitHub README - Install Python using
uv python install 3.10 - Set up AWS credentials with access to Amazon SageMaker AI resources.
- You need an AWS account with Amazon SageMaker AI enabled
- Configure AWS credentials with
aws configureor environment variables - Ensure your IAM role/user has permissions to use Amazon SageMaker AI
- Create a SageMaker Execution Role with the necessary permissions for SageMaker AI operations
Installation
WIP
Environment Variables
AWS_PROFILE: AWS CLI profile to use for credentialsAWS_REGION: AWS region to use (default: us-east-1)SAGEMAKER_EXECUTION_ROLE_ARN: ARN of the SageMaker execution role
AWS Authentication
The server uses the AWS profile specified in the AWS_PROFILE environment variable. If not provided, it defaults to the default credential provider chain.
"env": {
"AWS_PROFILE": "your-aws-profile",
"AWS_REGION": "us-east-1",
"SAGEMAKER_EXECUTION_ROLE_ARN": "arn:aws:iam::123456789012:role/SageMakerExecutionRole"
}
Make sure the AWS profile has permissions to access Amazon SageMaker AI services. The MCP server creates a boto3 session using the specified profile to authenticate with AWS services.
Tools
List of Tools for SageMaker AI Endpoints and Endpoint Configurations
- list_endpoints_sagemaker (List all SageMaker AI Endpoints)
- list_endpoint_configs_sagemaker (List all SageMaker AI Endpoint Configurations)
- describe_endpoint_sagemaker (Describe a SageMaker AI Endpoint)
- describe_endpoint_config_sagemaker (Describe a SageMaker AI Endpoint Configuration)
- delete_endpoint_sagemaker (Delete a SageMaker AI Endpoint)
- delete_endpoint_config_sagemaker (Delete a SageMaker AI Endpoint Configuration)
List of Tools for SageMaker AI Jobs
- list_training_jobs_sagemaker (List all SageMaker AI Training Jobs)
- list_processing_jobs_sagemaker (List all SageMaker AI Processing Jobs)
- list_transform_jobs_sagemaker (List all SageMaker AI Transform Jobs)
- list_inference_recommender_jobs_sagemaker (List all SageMaker AI Inference Recommender Jobs)
- list_inference_recommender_job_steps_sagemaker (List all steps for a SageMaker AI Inference Recommender Job)
- describe_training_job_sagemaker (Describe a SageMaker AI Training Job)
- describe_processing_job_sagemaker (Describe a SageMaker AI Processing Job)
- describe_transform_job_sagemaker (Describe a SageMaker AI Transform Job)
- describe_inference_recommender_job_sagemaker (Describe a SageMaker AI Inference Recommender Job)
- stop_training_job_sagemaker (Stop a SageMaker AI Training Job)
- stop_processing_job_sagemaker (Stop a SageMaker AI Processing Job)
- stop_transform_job_sagemaker (Stop a SageMaker AI Transform Job)
- stop_inference_recommender_job_sagemaker (Stop a SageMaker AI Inference Recommender Job)
List of Tools for SageMaker AI Pipelines
- list_pipelines_sagemaker (List all SageMaker AI Pipelines)
- list_pipeline_executions_sagemaker (List all Pipeline Executions for a SageMaker AI Pipeline)
- list_pipeline_execution_steps_sagemaker (List all steps for a SageMaker AI Pipeline Execution)
- list_pipeline_parameters_for_execution_sagemaker (List all parameters for a SageMaker AI Pipeline Execution)
- describe_pipeline_sagemaker (Describe a SageMaker AI Pipeline)
- describe_pipeline_execution_sagemaker (Describe a SageMaker AI Pipeline Execution)
- describe_pipeline_definition_for_execution_sagemaker (Describe a SageMaker AI Pipeline Definition for Execution)
- start_pipeline_execution_sagemaker (Start a SageMaker AI Pipeline Execution)
- stop_pipeline_execution_sagemaker (Stop a SageMaker AI Pipeline Execution)
- delete_pipeline_sagemaker (Delete a SageMaker AI Pipeline)
List of Tools for SageMaker AI User Profiles and Spaces
- list_user_profiles_sagemaker (List all SageMaker AI User Profiles)
- list_spaces_sagemaker (List all SageMaker AI Spaces)
List of Tools for SageMaker AI MLflow Managed Tracking Servers
- list_mlflow_tracking_servers_sagemaker (List all MLflow Tracking Servers)
- create_mlflow_tracking_server_sagemaker (Create a new MLflow Tracking Server)
- create_presigned_mlflow_tracking_server_url_sagemaker (Create a presigned URL for an MLflow Tracking Server)
- describe_mlflow_tracking_server_sagemaker (Describe an MLflow Tracking Server)
- start_mlflow_tracking_server_sagemaker (Start an MLflow Tracking Server)
- stop_mlflow_tracking_server_sagemaker (Stop an MLflow Tracking Server)
- delete_mlflow_tracking_server_sagemaker (Delete an MLflow Tracking Server)
List of Tools for SageMaker AI Domains
- list_domains_sagemaker (List all SageMaker AI Domains)
- create_presigned_domain_url_sagemaker (Create a presigned URL for a SageMaker Domain)
- describe_domain_sagemaker (Describe a SageMaker AI Domain)
- delete_domain_sagemaker (Delete a SageMaker AI Domain)
List of Tools for SageMaker AI Models
- list_models_sagemaker (List all SageMaker AI Models)
- describe_model_sagemaker (Describe a SageMaker AI Model)
- delete_model_sagemaker (Delete a SageMaker AI Model)
List of Tools for SageMaker AI Model Cards
- list_model_cards_sagemaker (List all SageMaker AI Model Cards)
- list_model_card_export_jobs_sagemaker (List all SageMaker AI Model Card Export Jobs)
- list_model_card_versions_sagemaker (List all versions of a SageMaker AI Model Card)
- describe_model_card_sagemaker (Describe a SageMaker AI Model Card)
- delete_model_card_sagemaker (Delete a SageMaker AI Model Card)
List of Tools for SageMaker AI Apps
- list_apps_sagemaker (List all SageMaker AI Apps)
- create_app_sagemaker (Create a SageMaker AI App)
- create_presigned_notebook_instance_url_sagemaker (Create a presigned URL for a SageMaker Notebook Instance)
- describe_app_sagemaker (Describe a SageMaker AI App)
- describe_app_image_config_sagemaker (Describe a SageMaker AI App Image Config)
- delete_app_sagemaker (Delete a SageMaker AI App)
- delete_app_image_config_sagemaker (Delete a SageMaker AI App Image Config)
Security Considerations
- Use AWS IAM roles with appropriate permissions
- Store credentials securely
- Use temporary credentials when possible
License
This project is licensed under the Apache License, Version 2.0. See the LICENSE file for details.
Installing SageMaker AI Server
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/dgallitelli/sagemaker-ai-mcp-serverFAQ
Is SageMaker AI Server MCP free?
Yes, SageMaker AI Server MCP is free — one-click install via Unyly at no cost.
Does SageMaker AI Server need an API key?
No, SageMaker AI Server runs without API keys or environment variables.
Is SageMaker AI Server hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install SageMaker AI Server in Claude Desktop, Claude Code or Cursor?
Open SageMaker AI Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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