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An AWS Labs Model Context Protocol (MCP) server for AWS Lambda Tools

Project description

AWS Lambda Tool MCP Server

A Model Context Protocol (MCP) server for AWS Lambda to select and run Lambda function as MCP tools without code changes.

Features

This MCP server acts as a bridge between MCP clients and AWS Lambda functions, allowing generative AI models to access and run Lambda functions as tools. This is useful, for example, to access private resources such as internal applications and databases without the need to provide public network access. This approach allows the model to use other AWS services, private networks, and the public internet.

graph LR
    A[Model] <--> B[MCP Client]
    B <--> C["MCP2Lambda<br>(MCP Server)"]
    C <--> D[Lambda Function]
    D <--> E[Other AWS Services]
    D <--> F[Internet]
    D <--> G[VPC]

    style A fill:#f9f,stroke:#333,stroke-width:2px
    style B fill:#bbf,stroke:#333,stroke-width:2px
    style C fill:#bfb,stroke:#333,stroke-width:4px
    style D fill:#fbb,stroke:#333,stroke-width:2px
    style E fill:#fbf,stroke:#333,stroke-width:2px
    style F fill:#dff,stroke:#333,stroke-width:2px
    style G fill:#ffd,stroke:#333,stroke-width:2px

From a security perspective, this approach implements segregation of duties by allowing the model to invoke the Lambda functions but not to access the other AWS services directly. The client only needs AWS credentials to invoke the Lambda functions. The Lambda functions can then interact with other AWS services (using the function role) and access public or private networks.

Prerequisites

  1. Install uv from Astral or the GitHub README
  2. Install Python using uv python install 3.10

Installation

Here are some ways you can work with MCP across AWS, and we'll be adding support to more products including Amazon Q Developer CLI soon: (e.g. for Amazon Q Developer CLI MCP, ~/.aws/amazonq/mcp.json):

{
  "mcpServers": {
    "awslabs.lambda-tool-mcp-server": {
      "command": "uvx",
      "args": ["awslabs.lambda-tool-mcp-server@latest"],
      "env": {
        "AWS_PROFILE": "your-aws-profile",
        "AWS_REGION": "us-east-1",
        "FUNCTION_PREFIX": "your-function-prefix",
        "FUNCTION_LIST": "your-first-function, your-second-function",
        "FUNCTION_TAG_KEY": "your-tag-key",
        "FUNCTION_TAG_VALUE": "your-tag-value",
        "FUNCTION_INPUT_SCHEMA_ARN_TAG_KEY": "your-function-tag-for-input-schema"
      }
    }
  }
}

or docker after a successful docker build -t awslabs/bedrock-kb-retrieval-mcp-server .:

# fictitious `.env` file with AWS temporary credentials
AWS_ACCESS_KEY_ID=ASIAIOSFODNN7EXAMPLE
AWS_SECRET_ACCESS_KEY=wJalrXUtnFEMI/K7MDENG/bPxRfiCYEXAMPLEKEY
AWS_SESSION_TOKEN=AQoEXAMPLEH4aoAH0gNCAPy...truncated...zrkuWJOgQs8IZZaIv2BXIa2R4Olgk
  {
    "mcpServers": {
      "awslabs.lambda-tool-mcp-server": {
        "command": "docker",
        "args": [
          "run",
          "--rm",
          "--interactive",
          "--env",
          "AWS_REGION=us-east-1",
          "--env",
          "FUNCTION_PREFIX=your-function-prefix",
          "--env",
          "FUNCTION_LIST=your-first-function,your-second-function",
          "--env",
          "FUNCTION_TAG_KEY=your-tag-key",
          "--env",
          "FUNCTION_TAG_VALUE=your-tag-value",
          "--env",
          "FUNCTION_INPUT_SCHEMA_ARN_TAG_KEY=your-function-tag-for-input-schema",
          "--env-file",
          "/full/path/to/file/above/.env",
          "awslabs/lambda-tool-mcp-server:latest"
        ],
        "env": {},
        "disabled": false,
        "autoApprove": []
      }
    }
  }

NOTE: Your credentials will need to be kept refreshed from your host

The AWS_PROFILE and the AWS_REGION are optional, their default values are default and us-east-1.

You can specify FUNCTION_PREFIX, FUNCTION_LIST, or both. If both are empty, all functions pass the name check. After the name check, if both FUNCTION_TAG_KEY and FUNCTION_TAG_VALUE are set, functions are further filtered by tag (with key=value). If only one of FUNCTION_TAG_KEY and FUNCTION_TAG_VALUE, then no function is selected and a warning is displayed.

IMPORTANT: The function name is used as MCP tool name. The function description in AWS Lambda is used as MCP tool description. The function description should clarify when to use the function (what it provides) and how (which parameters). For example, a function that gives access to an internal Customer Relationship Management (CRM) system can use this description:

Retrieve customer status on the CRM system based on { 'customerId' } or { 'customerEmail' }

The lambda function parameters can also be provided through the EventBridge Schema Registry, which provides formal JSON Schema. See Schema Support below.

Sample functions that can be deployed via AWS SAM are provided in the examples folder.

Schema Support

The Lambda MCP Server supports input schema through AWS EventBridge Schema Registry. This provides formal JSON Schema documentation for your Lambda function inputs.

Configuration

To use schema validation:

  1. Create your schema in EventBridge Schema Registry
  2. Tag your Lambda function with the schema ARN:
    Key: FUNCTION_INPUT_SCHEMA_ARN_TAG_KEY (configurable)
    Value: arn:aws:schemas:region:account:schema/registry-name/schema-name
    
  3. Configure the MCP server with the tag key:
    {
      "env": {
        "FUNCTION_INPUT_SCHEMA_ARN_TAG_KEY": "your-schema-arn-tag-key"
      }
    }
    

When a Lambda function has a schema tag, the MCP server will:

  1. Fetch the schema from EventBridge Schema Registry
  2. Add the schema to the tool's documentation

This provides better documentation compared to describing parameters in the function description.

Best practices

  • Use the FUNCTION_LIST to specify the functions that are available as MCP tools.
  • Use the FUNCTION_PREFIX to specify the prefix of the functions that are available as MCP tools.
  • Use the FUNCTION_TAG_KEY and FUNCTION_TAG_VALUE to specify the tag key and value of the functions that are available as MCP tools.
  • AWS Lambda Description property: the description of the function is used as MCP tool description, so it should be very detailed to help the model understand when and how to use the function
  • Use EventBridge Schema Registry to provide formal input validation:
    • Create JSON Schema definitions for your function inputs
    • Tag functions with their schema ARNs
    • Configure FUNCTION_INPUT_SCHEMA_ARN_TAG_KEY in the MCP server

Security Considerations

When using this MCP server, you should consider:

  • Only Lambda functions that are in the provided list or with a name starting with the prefix are imported as MCP tools.
  • The MCP server needs permissions to invoke the Lambda functions.
  • Each Lambda function has its own permissions to optionally access other AWS resources.

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