awslabs/mcp

awslabs/mcp

Specialized MCP servers for seamless AWS integration in AI and development environments.

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AWS MCP Servers is a suite of specialized servers implementing the open Model Context Protocol (MCP) to bridge large language model (LLM) applications with AWS services, tools, and data sources. It provides a standardized way for AI assistants, IDEs, and developer tools to access up-to-date AWS documentation, perform cloud operations, and automate workflows with context-aware intelligence. Featuring a broad catalog of domain-specific servers, quick installation for popular platforms, and both local and remote deployment options, it enhances cloud-native development, infrastructure management, and workflow automation for AI-driven tools. The project includes Docker, Lambda, and direct integration instructions for environments such as Amazon Q CLI, Cursor, Windsurf, Kiro, and VS Code.

Key Features

Implements the open Model Context Protocol for standardized AI-to-API communication
Catalog of specialized MCP servers covering AWS services, infra, analytics, security, and developer utilities
One-click installation and configuration for IDEs like VS Code, Cursor, Windsurf, Kiro, and Q Developer CLI
Supports both local and cloud-hosted (remote) deployment modes
Docker images and AWS Lambda handler modules for flexible deployment
Provides up-to-date AWS documentation and best practices through MCP servers
Enables automation of cloud infrastructure tasks (with CDK, Terraform, CloudFormation, etc.)
Workflow and team collaboration features via remote servers and shared settings
Built-in session management and security controls
Pluggable for use in conversational assistants, background agents, and AI-powered DevOps

Use Cases

Integrate AI coding assistants with AWS documentation and knowledge retrieval
Automate infrastructure provisioning and management with context-aware AI
Enable natural language database queries, analytics, and reporting for AWS data services
Embed AWS service best practices and security compliance into LLM chatbots and IDEs
Use AI for serverless function deployment and workflow automation
Streamline DevOps and developer workflows with MCP-powered assistants in IDEs
Monitor cloud infrastructure, analyze costs, and generate architectural diagrams via conversational agents
Build autonomous agents for ETL, data operations, and cloud monitoring
Provide private, secure access to AWS resources in enterprise environments
Accelerate healthcare and lifescience workflow development with HealthAI integrations

README

AWS MCP Servers

A suite of specialized MCP servers that help you get the most out of AWS, wherever you use MCP.

GitHub License Codecov OSSF-Scorecard Score

Table of Contents

What is the Model Context Protocol (MCP) and how does it work with AWS MCP Servers?

The Model Context Protocol (MCP) is an open protocol that enables seamless integration between LLM applications and external data sources and tools. Whether you're building an AI-powered IDE, enhancing a chat interface, or creating custom AI workflows, MCP provides a standardized way to connect LLMs with the context they need.

Model Context Protocol README

An MCP Server is a lightweight program that exposes specific capabilities through the standardized Model Context Protocol. Host applications (such as chatbots, IDEs, and other AI tools) have MCP clients that maintain 1:1 connections with MCP servers. Common MCP clients include agentic AI coding assistants (like Q Developer, Cline, Cursor, Windsurf) as well as chatbot applications like Claude Desktop, with more clients coming soon. MCP servers can access local data sources and remote services to provide additional context that improves the generated outputs from the models.

AWS MCP Servers use this protocol to provide AI applications access to AWS documentation, contextual guidance, and best practices. Through the standardized MCP client-server architecture, AWS capabilities become an intelligent extension of your development environment or AI application.

AWS MCP servers enable enhanced cloud-native development, infrastructure management, and development workflows—making AI-assisted cloud computing more accessible and efficient.

The Model Context Protocol is an open source project run by Anthropic, PBC. and open to contributions from the entire community. For more information on MCP, you can find further documentation here

Server Sent Events Support Removal

Important Notice: On May 26th, 2025, Server Sent Events (SSE) support was removed from all MCP servers in their latest major versions. This change aligns with the Model Context Protocol specification's backwards compatibility guidelines.

We are actively working towards supporting Streamable HTTP, which will provide improved transport capabilities for future versions.

For applications still requiring SSE support, please use the previous major version of the respective MCP server until you can migrate to alternative transport methods.

Why AWS MCP Servers?

MCP servers enhance the capabilities of foundation models (FMs) in several key ways:

  • Improved Output Quality: By providing relevant information directly in the model's context, MCP servers significantly improve model responses for specialized domains like AWS services. This approach reduces hallucinations, provides more accurate technical details, enables more precise code generation, and ensures recommendations align with current AWS best practices and service capabilities.

  • Access to Latest Documentation: FMs may not have knowledge of recent releases, APIs, or SDKs. MCP servers bridge this gap by pulling in up-to-date documentation, ensuring your AI assistant always works with the latest AWS capabilities.

  • Workflow Automation: MCP servers convert common workflows into tools that foundation models can use directly. Whether it's CDK, Terraform, or other AWS-specific workflows, these tools enable AI assistants to perform complex tasks with greater accuracy and efficiency.

  • Specialized Domain Knowledge: MCP servers provide deep, contextual knowledge about AWS services that might not be fully represented in foundation models' training data, enabling more accurate and helpful responses for cloud development tasks.

Available MCP Servers: Quick Installation

Get started quickly with one-click installation buttons for popular MCP clients. Click the buttons below to install servers directly in Cursor or VS Code:

🚀 Getting Started with AWS

For general AWS interactions and comprehensive API support, we recommend starting with:

Server Name Description Install
AWS API MCP Server Start here for general AWS interactions! Comprehensive AWS API support with command validation, security controls, and access to all AWS services. Perfect for managing infrastructure, exploring resources, and executing AWS operations through natural language. InstallInstall VS Code
AWS Knowledge MCP Server A remote, fully-managed MCP server hosted by AWS that provides access to the latest AWS docs, API references, What's New Posts, Getting Started information, Builder Center, Blog posts, Architectural references, and Well-Architected guidance. InstallInstall VS Code

Browse by What You're Building

📚 Real-time access to official AWS documentation

Server Name Description Install
AWS Knowledge MCP Server A remote, fully-managed MCP server hosted by AWS that provides access to the latest AWS docs, API references, What's New Posts, Getting Started information, Builder Center, Blog posts, Architectural references, and Well-Architected guidance. InstallInstall VS Code
AWS Documentation MCP Server Get latest AWS docs and API references Install Install on VS Code

🏗️ Infrastructure & Deployment

Build, deploy, and manage cloud infrastructure with Infrastructure as Code best practices.

Server Name Description Install
AWS Cloud Control API MCP Server Direct AWS resource management with security scanning and best practices Install Install on VS Code
AWS CDK MCP Server AWS CDK development with security compliance and best practices Install Install on VS Code
AWS Terraform MCP Server Terraform workflows with integrated security scanning Install Install on VS Code
AWS CloudFormation MCP Server Direct CloudFormation resource management via Cloud Control API Install Install on VS Code

Container Platforms

Server Name Description Install
Amazon EKS MCP Server Kubernetes cluster management and application deployment Install Install on VS Code
Amazon ECS MCP Server Container orchestration and ECS application deployment Install Install on VS Code
Finch MCP Server Local container building with ECR integration Install Install on VS Code

Serverless & Functions

Server Name Description Install
AWS Serverless MCP Server Complete serverless application lifecycle with SAM CLI Install Install on VS Code
AWS Lambda Tool MCP Server Execute Lambda functions as AI tools for private resource access Install Install on VS Code

Support

Server Name Description Install
AWS Support MCP Server Help users create and manage AWS Support cases Install Install on VS Code

🤖 AI & Machine Learning

Enhance AI applications with knowledge retrieval, content generation, and ML capabilities

Server Name Description Install
Amazon Bedrock Knowledge Bases Retrieval MCP Server Query enterprise knowledge bases with citation support Install Install on VS Code
Amazon Kendra Index MCP Server Enterprise search and RAG enhancement Install Install on VS Code
Amazon Q Business MCP Server AI assistant for your ingested content with anonymous access Install Install on VS Code
Amazon Q Index MCP Server Data accessors to search through enterprise's Q index Install Install on VS Code
Nova Canvas MCP Server AI image generation using Amazon Nova Canvas Install Install on VS Code
Amazon Rekognition MCP Server (deprecated) Analyze images using computer vision capabilities Install Install on VS Code
AWS Bedrock Data Automation MCP Server Analyze documents, images, videos, and audio files Install Install on VS Code
AWS Bedrock Custom Model Import MCP Server Manage custom models in Bedrock for on-demand inference Install Install on VS Code

📊 Data & Analytics

Work with databases, caching systems, and data processing workflows.

SQL & NoSQL Databases

Server Name Description Install
Amazon DynamoDB MCP Server Complete DynamoDB operations and table management Install Install on VS Code
Amazon Aurora PostgreSQL MCP Server PostgreSQL database operations via RDS Data API Install Install on VS Code
Amazon Aurora MySQL MCP Server MySQL database operations via RDS Data API Install Install on VS Code
Amazon Aurora DSQL MCP Server Distributed SQL with PostgreSQL compatibility Install Install on VS Code
Amazon DocumentDB MCP Server MongoDB-compatible document database operations Install Install on VS Code
Amazon Neptune MCP Server Graph database queries with openCypher and Gremlin Install Install on VS Code
Amazon Keyspaces MCP Server Apache Cassandra-compatible operations Install Install on VS Code
Amazon Timestream for InfluxDB MCP Server Time-series database operations and InfluxDB compatibility Install Install on VS Code
Amazon MSK MCP Server Managed Kafka cluster operations and streaming Install Install on VS Code
AWS S3 Tables MCP Server Manage S3 Tables for optimized analytics Install Install on VS Code
Amazon Redshift MCP Server Data warehouse operations and analytics queries Install Install on VS Code
Search & Analytics

Backend API Providers

Server Name Description Install
AWS AppSync MCP Server Manage and Interact with application backends powered by AWS AppSync Install Install on VS Code

Caching & Performance

Server Name Description Install
Amazon ElastiCache MCP Server Complete ElastiCache control plane operations Install Install on VS Code
Amazon ElastiCache / MemoryDB for Valkey MCP Server Advanced data structures and caching with Valkey Install Install on VS Code
Amazon ElastiCache for Memcached MCP Server High-speed caching with Memcached protocol Install Install on VS Code

🛠️ Developer Tools & Support

Accelerate development with code analysis, documentation, and testing utilities.

Server Name Description Install
AWS IAM MCP Server Comprehensive IAM user, role, group, and policy management with security best practices Install Install on VS Code
Git Repo Research MCP Server Semantic code search and repository analysis Install Install on VS Code
Code Documentation Generator MCP Server Automated documentation from code analysis Install Install on VS Code
AWS Diagram MCP Server Generate architecture diagrams and technical illustrations Install Install on VS Code
Frontend MCP Server React and modern web development guidance Install Install on VS Code
Synthetic Data MCP Server Generate realistic test data for development and ML Install Install on VS Code
OpenAPI MCP Server Dynamic API integration through OpenAPI specifications Install Install on VS Code

📡 Integration & Messaging

Connect systems with messaging, workflows, and location services.

Server Name Description Install
Amazon SNS / SQS MCP Server Event-driven messaging and queue management Install Install on VS Code
Amazon MQ MCP Server Message broker management for RabbitMQ and ActiveMQ Install Install on VS Code
AWS MSK MCP Server Managed Kafka cluster operations and streaming Install Install on VS Code
AWS Step Functions Tool MCP Server Execute complex workflows and business processes Install Install on VS Code
Amazon Location Service MCP Server Place search, geocoding, and route optimization Install Install on VS Code
OpenAPI MCP Server Dynamic API integration through OpenAPI specifications Install Install on VS Code

💰 Cost & Operations

Monitor, optimize, and manage your AWS infrastructure and costs.

Server Name Description Install
AWS Pricing MCP Server AWS service pricing and cost estimates Install Install on VS Code
AWS Cost Explorer MCP Server Detailed cost analysis and reporting Install Install on VS Code
Amazon CloudWatch MCP Server Metrics, Alarms, and Logs analysis and operational troubleshooting Install Install on VS Code
Amazon CloudWatch Logs MCP Server (deprecated) CloudWatch Logs analysis and monitoring Install Install on VS Code
AWS Managed Prometheus MCP Server Prometheus-compatible operations Install Install on VS Code
AWS Billing and Cost Management MCP Server Billing and cost management Install Install on VS Code

🧬 Healthcare & Lifesciences

Interact with AWS HealthAI services.

Server Name Description Install
AWS HealthOmics MCP Server Generate, run, debug and optimize lifescience workflows Install Install on VS Code
AWS HealthLake MCP Server Create, manage, search, and optimize FHIR healthcare data workflows with comprehensive AWS HealthLake integration, featuring automated resource discovery, advanced search capabilities, patient record management, and seamless import/export operations. Install Install on VS Code


Browse by How You're Working

👨‍💻 Vibe Coding & Development

AI coding assistants like Amazon Q Developer CLI, Cline, Cursor, and Claude Code helping you build faster

Core Development Workflow
Server Name Description Install
AWS API MCP Server Start here for general AWS interactions! Comprehensive AWS API support with command validation, security controls, and access to all AWS services. Perfect for managing infrastructure, exploring resources, and executing AWS operations through natural language. InstallInstall VS Code
Core MCP Server Start here: intelligent planning and MCP server orchestration Install Install on VS Code
AWS Knowledge MCP Server A remote, fully-managed MCP server hosted by AWS that provides access to the latest AWS docs, API references, What's New Posts, Getting Started information, Builder Center, Blog posts, Architectural references, and Well-Architected guidance. InstallInstall VS Code
AWS Documentation MCP Server Get latest AWS docs and API references Install Install on VS Code
Git Repo Research MCP Server Semantic search through codebases and repositories Install Install on VS Code
Infrastructure as Code
Server Name Description Install
AWS CDK MCP Server CDK development with security best practices and compliance Install Install on VS Code
AWS Terraform MCP Server Terraform with integrated security scanning and best practices Install Install on VS Code
AWS CloudFormation MCP Server Direct AWS resource management through Cloud Control API Install Install on VS Code
AWS Cloud Control API MCP Server Direct AWS resource management with security scanning and best practices Install Install on VS Code
Application Development
Server Name Description Install
Frontend MCP Server React and modern web development patterns with AWS integration Install Install on VS Code
AWS Diagram MCP Server Generate architecture diagrams as you design Install Install on VS Code
Code Documentation Generation MCP Server Auto-generate docs from your codebase Install Install on VS Code
OpenAPI MCP Server Dynamic API integration through OpenAPI specifications Install Install on VS Code
Container & Serverless Development
Server Name Description Install
Amazon EKS MCP Server Kubernetes cluster management and app deployment Install Install on VS Code
Amazon ECS MCP Server Containerize and deploy applications to ECS Install Install on VS Code
Finch MCP Server Local container building with ECR push Install Install on VS Code
AWS Serverless MCP Server Full serverless app lifecycle with SAM CLI Install Install on VS Code
Testing & Data
Server Name Description Install
Synthetic Data MCP Server Generate realistic test data for development and ML Install Install on VS Code
Lifesciences Workflow Development
Server Name Description Install
AWS HealthOmics MCP Server Generate, run, debug and optimize lifescience workflows Install Install on VS Code
Healthcare Data Management
Server Name Description Install
AWS HealthLake MCP Server Create, manage, search, and optimize FHIR healthcare data workflows with comprehensive AWS HealthLake integration, featuring automated resource discovery, advanced search capabilities, patient record management, and seamless import/export operations. Install Install on VS Code

💬 Conversational Assistants

Customer-facing chatbots, business agents, and interactive Q&A systems

Knowledge & Search
Server Name Description Install
Amazon Bedrock Knowledge Bases Retrieval MCP Server Query enterprise knowledge bases with citation support Install Install on VS Code
Amazon Kendra Index MCP Server Enterprise search and RAG enhancement Install Install on VS Code
Amazon Q Business MCP Server AI assistant for your ingested content with anonymous access Install Install on VS Code
Amazon Q Index MCP Server Data accessors to search through enterprise's Q index Install Install on VS Code
AWS Documentation MCP Server Get latest AWS docs and API references Install Install on VS Code
Content Processing & Generation
Server Name Description Install
Amazon Nova Canvas MCP Server Generate images from text descriptions and color palettes Install Install on VS Code
Amazon Rekognition MCP Server (deprecated) Analyze images using computer vision capabilities Install Install on VS Code
Amazon Bedrock Data Automation MCP Server Analyze uploaded documents, images, and media Install Install on VS Code
Business Services
Server Name Description Install
Amazon Location Service MCP Server Location search, geocoding, and business hours Install Install on VS Code
AWS Pricing MCP Server AWS service pricing and cost estimates Install Install on VS Code
AWS Cost Explorer MCP Server Detailed cost analysis and spend reports Install Install on VS Code

🤖 Autonomous Background Agents

Headless automation, ETL pipelines, and operational systems

Data Operations & ETL
Server Name Description Install
AWS Data Processing MCP Server Comprehensive data processing tools and real-time pipeline visibility across AWS Glue and Amazon EMR-EC2 Install Install on VS Code
Amazon DynamoDB MCP Server Complete DynamoDB operations and table management Install Install on VS Code
Amazon Aurora PostgreSQL MCP Server PostgreSQL database operations via RDS Data API Install Install on VS Code
Amazon Aurora MySQL MCP Server MySQL database operations via RDS Data API Install Install on VS Code
Amazon Aurora DSQL MCP Server Distributed SQL with PostgreSQL compatibility Install Install on VS Code
Amazon DocumentDB MCP Server MongoDB-compatible document database operations Install Install on VS Code
Amazon Neptune MCP Server Graph database queries with openCypher and Gremlin Install Install on VS Code
Amazon Keyspaces MCP Server Apache Cassandra-compatible operations Install Install on VS Code
Amazon Timestream for InfluxDB MCP Server Time-series database operations and InfluxDB compatibility Install Install on VS Code
Amazon MSK MCP Server Managed Kafka cluster operations and streaming Install Install on VS Code
Caching & Performance
Server Name Description Install
Amazon ElastiCache / MemoryDB for Valkey MCP Server Advanced data structures and caching with Valkey Install Install on VS Code
Amazon ElastiCache for Memcached MCP Server High-speed caching with Memcached protocol Install Install on VS Code
Workflow & Integration
Server Name Description Install
AWS Lambda Tool MCP Server Execute Lambda functions as AI tools for private resource access Install Install on VS Code
AWS Step Functions Tool MCP Server Execute complex workflows and business processes Install Install on VS Code
Amazon SNS/SQS MCP Server Event-driven messaging and queue management Install Install on VS Code
Amazon MQ MCP Server Message broker management for RabbitMQ and ActiveMQ Install Install on VS Code
AWS MSK MCP Server Managed Kafka cluster operations and streaming Install Install on VS Code
Operations & Monitoring
Server Name Description Install
Amazon CloudWatch MCP Server Metrics, Alarms, and Logs analysis and operational troubleshooting Install Install on VS Code
Amazon CloudWatch Logs MCP Server (deprecated) CloudWatch Logs analysis and monitoring Install Install on VS Code
Amazon CloudWatch Application Signals MCP Server Application monitoring and performance insights Install Install on VS Code
AWS Cost Explorer MCP Server Detailed cost analysis and reporting Install Install on VS Code
AWS Managed Prometheus MCP Server Prometheus-compatible operations and monitoring Install Install on VS Code
AWS Well-Architected Security Assessment Tool MCP Server Assess AWS environments against the Well-Architected Framework Security Pillar Install Install on VS Code
AWS CloudTrail MCP Server CloudTrail events querying and analysis Install Install on VS Code

MCP AWS Lambda Handler Module

A Python library for creating serverless HTTP handlers for the Model Context Protocol (MCP) using AWS Lambda. This module provides a flexible framework for building MCP HTTP endpoints with pluggable session management, including built-in DynamoDB support.

Features:

  • Easy serverless MCP HTTP handler creation using AWS Lambda
  • Pluggable session management system
  • Built-in DynamoDB session backend support
  • Customizable authentication and authorization
  • Example implementations and tests

See src/mcp-lambda-handler/README.md for full usage, installation, and development instructions.

When to use Local vs Remote MCP Servers?

AWS MCP servers can be run either locally on your development machine or remotely on the cloud. Here's when to use each approach:

Local MCP Servers

  • Development & Testing: Perfect for local development, testing, and debugging
  • Offline Work: Continue working when internet connectivity is limited
  • Data Privacy: Keep sensitive data and credentials on your local machine
  • Low Latency: Minimal network overhead for faster response times
  • Resource Control: Direct control over server resources and configuration

Remote MCP Servers

  • Team Collaboration: Share consistent server configurations across your team
  • Resource Intensive Tasks: Offload heavy processing to dedicated cloud resources
  • Always Available: Access your MCP servers from anywhere, any device
  • Automatic Updates: Get the latest features and security patches automatically
  • Scalability: Easily handle varying workloads without local resource constraints

Note: Some MCP servers, like AWS Knowledge MCP, are provided as fully managed services by AWS. These AWS-managed remote servers require no setup or infrastructure management on your part - just connect and start using them.

Use Cases for the Servers

For example, you can use the AWS Documentation MCP Server to help your AI assistant research and generate up-to-date code for any AWS service, like Amazon Bedrock Inline agents. Alternatively, you could use the CDK MCP Server or the Terraform MCP Server to have your AI assistant create infrastructure-as-code implementations that use the latest APIs and follow AWS best practices. With the AWS Pricing MCP Server, you could ask "What would be the estimated monthly cost for this CDK project before I deploy it?" or "Can you help me understand the potential AWS service expenses for this infrastructure design?" and receive detailed cost estimations and budget planning insights. The Valkey MCP Server enables natural language interaction with Valkey data stores, allowing AI assistants to efficiently manage data operations through a simple conversational interface.

Installation and Setup

Each server has specific installation instructions with one-click installs for Cursor and VSCode. Generally, you can:

  1. Install uv from Astral
  2. Install Python using uv python install 3.10
  3. Configure AWS credentials with access to required services
  4. Add the server to your MCP client configuration

Example configuration for Amazon Q CLI MCP (~/.aws/amazonq/mcp.json):

For macOS/Linux

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": [
        "awslabs.core-mcp-server@latest"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

See individual server READMEs for specific requirements and configuration options.

For Windows

When configuring MCP servers on Windows, you'll need to use a slightly different configuration format:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

If you have problems with MCP configuration or want to check if the appropriate parameters are in place, you can try the following:

shell
# Run MCP server manually with timeout 15s
$ timeout 15s uv tool run <MCP Name> <args> 2>&1 || echo "Command completed or timed out"

# Example (Aurora MySQL MCP Server)
$ timeout 15s uv tool run awslabs.mysql-mcp-server --resource_arn <Your Resource ARN> --secret_arn <Your Secret ARN> ... 2>&1 || echo "Command completed or timed out"

# If the arguments are not set appropriately, you may see the following message:
usage: awslabs.mysql-mcp-server [-h] --resource_arn RESOURCE_ARN --secret_arn SECRET_ARN --database DATABASE
                                --region REGION --readonly READONLY
awslabs.mysql-mcp-server: error: the following arguments are required: --resource_arn, --secret_arn, --database, --region, --readonly

Note about performance when using uvx "@latest" suffix:

Using the "@latest" suffix checks and downloads the latest MCP server package from pypi every time you start your MCP clients, but it comes with a cost of increased initial load times. If you want to minimize the initial load time, remove "@latest" and manage your uv cache yourself using one of these approaches:

  • uv cache clean <tool>: where {tool} is the mcp server you want to delete from cache and install again (e.g.: "awslabs.lambda-tool-mcp-server") (remember to remove the '<>').
  • uvx <tool>@latest: this will refresh the tool with the latest version and add it to the uv cache.

Running MCP servers in containers

Docker images for each MCP server are published to the public AWS ECR registry.

This example uses docker with the "awslabs.nova-canvas-mcp-server and can be repeated for each MCP server

  • Optionally save sensitive environmental variables in a file:

    .env
    # contents of a .env file with fictitious AWS temporary credentials
    AWS_ACCESS_KEY_ID=ASIAIOSFODNN7EXAMPLE
    AWS_SECRET_ACCESS_KEY=wJalrXUtnFEMI/K7MDENG/bPxRfiCYEXAMPLEKEY
    AWS_SESSION_TOKEN=AQoEXAMPLEH4aoAH0gNCAPy...truncated...zrkuWJOgQs8IZZaIv2BXIa2R4Olgk
    
  • Use the docker options: --env, --env-file, and --volume as needed because the "env": {} are not available within the container.

    json
    {
      "mcpServers": {
        "awslabs.nova-canvas-mcp-server": {
          "command": "docker",
          "args": [
            "run",
            "--rm",
            "--interactive",
            "--env",
            "FASTMCP_LOG_LEVEL=ERROR",
            "--env",
            "AWS_REGION=us-east-1",
            "--env-file",
            "/full/path/to/.env",
            "--volume",
            "/full/path/to/.aws:/app/.aws",
            "public.ecr.aws/awslabs-mcp/awslabs/nova-canvas-mcp-server:latest"
          ],
          "env": {}
        }
      }
    }
    
  • For testing local changes you can build and tag the image. You have to update the MCP configuration to use this tag instead of the ECR image.

    base
    cd src/nova-canvas-mcp-server
    docker build -t awslabs/nova-canvas-mcp-server .
    

Getting Started with Amazon Q Developer CLI

See Amazon Q Developer CLI documentation for details.

  1. Access MCP Settings

    • Open the Q Developer panel and open the Chat panel.
    • Choose the tools icon to access to MCP configuration.
  2. Add MCP Servers

    • Choose the plus (+) symbol.
    • Select the scope: global or local. If you select global scope, the MCP server configuration is stored in ~/.aws/amazonq/mcp.json and available across all your projects. If you select local scope, the configuration is stored in .amazonq/mcp.json within your current project.
    • Fill in values as applicable.
  3. Manual Configuration

    • You can also manually edit the MCP configuration file located at ~/.aws/amazonq/mcp.json globally or .amazonq/mcp.json locally.

~/.aws/amazonq/mcp.json

For macOS/Linux:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

Getting Started with Kiro

See Kiro Model Context Protocol Documentation for details.

  1. Navigate Kiro > MCP Servers
  2. Add a new MCP server by clicking the + Add button.
  3. Paste the configuration given below:

kiro_mcp_settings.json

For macOS/Linux:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

Getting Started with Cline and Amazon Bedrock

IMPORTANT: Following these instructions may incur costs and are subject to the Amazon Bedrock Pricing. You are responsible for any associated costs. In addition to selecting the desired model in the Cline settings, ensure you have your selected model (e.g. anthropic.claude-3-7-sonnet) also enabled in Amazon Bedrock. For more information on this, see these AWS docs on enabling model access to Amazon Bedrock Foundation Models (FMs).

  1. Follow the steps above in the Installation and Setup section to install uv from Astral, install Python, and configure AWS credentials with the required services.

  2. If using Visual Studio Code, install the Cline VS Code Extension (or equivalent extension for your preferred IDE). Once installed, click the extension to open it. When prompted, select the tier that you wish. In this case, we will be using Amazon Bedrock, so the free tier of Cline is fine as we will be sending requests using the Amazon Bedrock API instead of the Cline API.

  1. Select the MCP Servers button.
  1. Select the Installed tab, then click Configure MCP Servers to open the cline_mcp_settings.json file.
  1. In the cline_mcp_settings.json file, add your desired MCP servers in the mcpServers object. See the following example that will use some of the current AWS MCP servers that are available in this repository. Ensure you save the file to install the MCP servers.

cline_mcp_settings.json

For macOS/Linux:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR",
        "MCP_SETTINGS_PATH": "path to your mcp settings file"
      }
    }
   }
 }

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR",
        "MCP_SETTINGS_PATH": "path to your mcp settings file"
      }
    }
  }
}
  1. Once installed, you should see a list of your MCP Servers under the MCP Server Installed tab, and they should have a green slider to show that they are enabled. See the following for an example with two of the possible AWS MCP Servers. Click Done when finished. You should now see the Cline chat interface.
  1. By default, Cline will be set as the API provider, which has limits for the free tier. Next, let's update the API provider to be AWS Bedrock, so we can use the LLMs through Bedrock, which would have billing go through your connected AWS account.

  2. Click the settings gear to open up the Cline settings. Then under API Provider, switch this from Cline to AWS Bedrock and select AWS Profile for the authentication type. As a note, the AWS Credentials option works as well, however it uses a static credentials (Access Key ID and Secret Access Key) instead of temporary credentials that are automatically redistributed when the token expires, so the temporary credentials with an AWS Profile is the more secure and recommended method.

  1. Fill out the configuration based on the existing AWS Profile you wish to use, select the desired AWS Region, and enable cross-region inference.
  1. Next, scroll down on the settings page until you reach the text box that says Custom Instructions. Paste in the following snippet to ensure the mcp-core server is used as the starting point for every prompt:
For every new project, always look at your MCP servers and use mcp-core as the starting point every time. Also after a task completion include the list of MCP servers used in the operation.
  1. Once the custom prompt is pasted in, click Done to return to the chat interface.

  2. Now you can begin asking questions and testing out the functionality of your installed AWS MCP Servers. The default option in the chat interface is is Plan which will provide the output for you to take manual action on (e.g. providing you a sample configuration that you copy and paste into a file). However, you can optionally toggle this to Act which will allow Cline to act on your behalf (e.g. searching for content using a web browser, cloning a repository, executing code, etc). You can optionally toggle on the "Auto-approve" section to avoid having to click to approve the suggestions, however we recommend leaving this off during testing, especially if you have the Act toggle selected.

Note: For the best results, please prompt Cline to use the desired AWS MCP Server you wish to use. For example, Using the Terraform MCP Server, do...

Getting Started with Cursor

  1. Follow the steps above in the Installation and Setup section to install uv from Astral, install Python, and configure AWS credentials with the required services.

  2. You can place MCP configuration in two locations, depending on your use case:

A. Project Configuration - For tools specific to a project, create a .cursor/mcp.json file in your project directory. - This allows you to define MCP servers that are only available within that specific project.

B. Global Configuration - For tools that you want to use across all projects, create a ~/.cursor/mcp.json file in your home directory. - This makes MCP servers available in all your Cursor workspaces.

.cursor/mcp.json

For macOS/Linux:

json
 {
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}
  1. Using MCP in Chat The Composer Agent will automatically use any MCP tools that are listed under Available Tools on the MCP settings page if it determines them to be relevant. To prompt tool usage intentionally, please prompt Cursor to use the desired AWS MCP Server you wish to use. For example, Using the Terraform MCP Server, do...

  2. Tool Approval By default, when Agent wants to use an MCP tool, it will display a message asking for your approval. You can use the arrow next to the tool name to expand the message and see what arguments the Agent is calling the tool with.

Getting Started with Windsurf

  1. Follow the steps above in the Installation and Setup section to install uv from Astral, install Python, and configure AWS credentials with the required services.

  2. Access MCP Settings

    • Navigate to Windsurf - Settings > Advanced Settings or use the Command Palette > Open Windsurf Settings Page
    • Look for the "Model Context Protocol (MCP) Servers" section
  3. Add MCP Servers

    • Click "Add Server" to add a new MCP server
    • You can choose from available templates like GitHub, Puppeteer, PostgreSQL, etc.
    • Alternatively, click "Add custom server" to configure your own server
  4. Manual Configuration

    • You can also manually edit the MCP configuration file located at ~/.codeium/windsurf/mcp_config.json

~/.codeium/windsurf/mcp_config.json

For macOS/Linux:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR",
        "MCP_SETTINGS_PATH": "path to your mcp settings file"
      }
    }
   }
 }

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR",
        "MCP_SETTINGS_PATH": "path to your mcp settings file"
      }
    }
  }
}

Getting Started with VS Code

Configure MCP servers in VS Code settings or in .vscode/mcp.json (see VS Code MCP docs for more info.):

.vscode/mcp.json

For macOS/Linux:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.core-mcp-server@latest"],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

For Windows:

json
{
  "mcpServers": {
    "awslabs.core-mcp-server": {
      "disabled": false,
      "timeout": 60,
      "type": "stdio",
      "command": "uv",
      "args": [
        "tool",
        "run",
        "--from",
        "awslabs.core-mcp-server@latest",
        "awslabs.core-mcp-server.exe"
      ],
      "env": {
        "FASTMCP_LOG_LEVEL": "ERROR"
      }
    }
  }
}

Samples

Ready-to-use examples of AWS MCP Servers in action are available in the samples directory. These samples provide working code and step-by-step guides to help you get started with each MCP server.

Vibe coding

You can use these MCP servers with your AI coding assistant to vibe code. For tips and tricks on how to improve your vibe coding experience, please refer to our guide.

Additional Resources

Security

See CONTRIBUTING for more information.

Contributing

Big shout out to our awesome contributors! Thank you for making this project better!

contributors

Contributions of all kinds are welcome! Check out our contributor guide for more information.

Developer guide

If you want to add a new MCP Server to the library, check out our development guide and be sure to follow our design guidelines.

License

This project is licensed under the Apache-2.0 License.

Disclaimer

Before using an MCP Server, you should consider conducting your own independent assessment to ensure that your use would comply with your own specific security and quality control practices and standards, as well as the laws, rules, and regulations that govern you and your content.

Star History

Star History Chart

Repository Owner

awslabs
awslabs

Organization

Repository Details

Language Python
Default Branch main
Size 24,022 KB
Contributors 30
License Apache License 2.0
MCP Verified Sep 5, 2025

Programming Languages

Python
97.49%
Shell
1.18%
Dockerfile
0.88%
HTML
0.18%
TypeScript
0.11%
Jinja
0.11%
CSS
0.05%
MDX
0%

Tags

Topics

aws mcp mcp-client mcp-clients mcp-host mcp-server mcp-servers mcp-tools modelcontextprotocol

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