You can package your Lambda function code and dependencies as a container image, using tools such as the Docker CLI. You can then upload the image to your container registry hosted on Amazon Elastic Container Registry (Amazon ECR).
AWS provides a set of open-source base images that you can use to create your container image. These base images include a runtime interface client to manage the interaction between Lambda and your function code.
You can also use an alternative base image from another container registry. Lambda provides open-source runtime interface clients that you add to an alternative base image to make it compatible with Lambda.
For example applications, including a Node.js example and a Python example, see Container image support for Lambda on the AWS Blog.
After you create a container image in the Amazon ECR container registry, you can create and run the Lambda function.
Topics
- Image types
- Container tools
- Lambda requirements for container images
- Container image settings
- Create an image from an AWS base image for Lambda
- Create an image from an alternative base image
- Create an image using the AWS SAM toolkit
You can use an AWS provided base image or an alternative base image, such as Alpine or Debian. Lambda supports any image that conforms to one of the following image manifest formats:
- Docker image manifest V2, schema 2 (used with Docker version 1.10 and newer)
- Open Container Initiative (OCI) Specifications (v1.0.0 and up)
Lambda supports images up to 10 GB in size.
To create your container image, you can use any development tool that supports one of the following container image manifest formats:
- Docker image manifest V2, schema 2 (used with Docker version 1.10 and newer)
- OCI Specifications (v1.0.0 and up)
For example, you can use the Docker CLI to build, test, and deploy your container images.
To deploy a container image to Lambda, note the following requirements:
-
The container image must implement the Lambda Runtime API. The AWS open-source runtime interface clients implement the API. You can add a runtime interface client to your preferred base image to make it compatible with Lambda.
-
The container image must be able to run on a read-only file system. Your function code can access a writable
/tmp
directory with 512 MB of storage. -
The default Lambda user must be able to read all the files required to run your function code. Lambda follows security best practices by defining a default Linux user with least-privileged permissions. Verify that your application code does not rely on files that other Linux users are restricted from running.
-
Lambda supports only Linux-based container images.
-
Lambda provides multi-architecture base images. However, the image you build for your function must target only one of the architectures. Lambda does not support functions that use multi-architecture container images.
Lambda supports the following container image settings in the Dockerfile:
- ENTRYPOINT – Specifies the absolute path to the entry point of the application.
- CMD – Specifies parameters that you want to pass in with ENTRYPOINT.
- WORKDIR – Specifies the absolute path to the working directory.
- ENV – Specifies an environment variable for the Lambda function.
Note
Lambda ignores the values of any unsupported container image settings in the Dockerfile.
For more information about how Docker uses the container image settings, see ENTRYPOINT in the Dockerfile reference on the Docker Docs website. For more information about using ENTRYPOINT and CMD, see Demystifying ENTRYPOINT and CMD in Docker on the AWS Open Source Blog.
You can specify the container image settings in the Dockerfile when you build your image. You can also override these configurations using the Lambda console or Lambda API. This allows you to deploy multiple functions that deploy the same container image but with different runtime configurations.
Warning
When you specify ENTRYPOINT or CMD in the Dockerfile or as an override, make sure that you enter the absolute path. Also, do not use symlinks as the entry point to the container.
To build a container image for a new Lambda function, you can start with an AWS base image for Lambda. Lambda provides two types of base images:
-
Multi-architecture base image
Specify one of the main image tags (such as
python:3.9
orjava:11
) to choose this type of image. -
Architecture-specific base image
Specify an image tag with an architecture suffix. For example, specify
3.9-arm64
to choose the arm64 base image for Python 3.9.
Note
AWS periodically provides updates to the AWS base images for Lambda. If your Dockerfile includes the image name in the FROM property, your Docker client pulls the latest version of the image from Docker Hub. To use the updated base image, you must rebuild your container image and update the function code.
Prerequisites
-
The AWS Command Line Interface (AWS CLI)
The following instructions use the AWS CLI to call AWS service API operations. To install the AWS CLI, see Installing, updating, and uninstalling the AWS CLI in the AWS Command Line Interface User Guide.
-
Docker Desktop
The following instructions use Docker CLI commands to create the container image. To install the Docker CLI, see Get Docker on the Docker Docs website.
-
Your function code
To create an image from an AWS base image for Lambda
-
On your local machine, create a project directory for your new function.
-
Create a directory named app in in the project directory, and then add your function handler code to the app directory.
-
Use a text editor to create a new Dockerfile.
The AWS base images provide the following environment variables:
- LAMBDA_TASK_ROOT=/var/task
- LAMBDA_RUNTIME_DIR=/var/runtime
Install any dependencies under the ${LAMBDA_TASK_ROOT} directory alongside the function handler to ensure that the Lambda runtime can locate them when the function is invoked.
The following shows an example Dockerfile for Node.js, Python, and Ruby:
FROM public.ecr.aws/lambda/nodejs:14
# Alternatively, you can pull the base image from Docker Hub: amazon/aws-lambda-nodejs:12
# Assumes your function is named "app.js", and there is a package.json file in the app directory
COPY app.js package.json ${LAMBDA_TASK_ROOT}
# Install NPM dependencies for function
RUN npm install
# Set the CMD to your handler (could also be done as a parameter override outside of the Dockerfile)
CMD [ "app.handler" ]
FROM public.ecr.aws/lambda/python:3.8
# Copy function code
COPY app.py ${LAMBDA_TASK_ROOT}
# Install the function's dependencies using file requirements.txt
# from your project folder.
COPY requirements.txt .
RUN pip3 install -r requirements.txt --target "${LAMBDA_TASK_ROOT}"
# Set the CMD to your handler (could also be done as a parameter override outside of the Dockerfile)
CMD [ "app.handler" ]
FROM public.ecr.aws/lambda/ruby:2.7
# Copy function code
COPY app.rb ${LAMBDA_TASK_ROOT}
# Copy dependency management file
COPY Gemfile ${LAMBDA_TASK_ROOT}
# Install dependencies under LAMBDA_TASK_ROOT
ENV GEM_HOME=${LAMBDA_TASK_ROOT}
RUN bundle install
# Set the CMD to your handler (could also be done as a parameter override outside of the Dockerfile)
CMD [ "app.LambdaFunction::Handler.process" ]
-
Build your Docker image with the
docker build
command. Enter a name for the image. The following example names the imagehello-world
.docker build -t hello-world .
-
Start the Docker image with the
docker run
command. For this example, enterhello-world
as the image name.docker run -p 9000:8080 hello-world
-
(Optional) Test your application locally using the runtime interface emulator. From a new terminal window, post an event to the following endpoint using a
curl
command:curl -XPOST "http://localhost:9000/2015-03-31/functions/function/invocations" -d '{}'
This command invokes the function running in the container image and returns a response.
-
Authenticate the Docker CLI to your Amazon ECR registry.
aws ecr get-login-password --region us-east-1 | docker login --username AWS --password-stdin 123456789012.dkr.ecr.us-east-1.amazonaws.com
-
Create a repository in Amazon ECR using the
create-repository
command.aws ecr create-repository --repository-name hello-world --image-scanning-configuration scanOnPush=true --image-tag-mutability MUTABLE
-
Tag your image to match your repository name, and deploy the image to Amazon ECR using the
docker push
command.docker tag hello-world:latest 123456789012.dkr.ecr.us-east-1.amazonaws.com/hello-world:latest docker push 123456789012.dkr.ecr.us-east-1.amazonaws.com/hello-world:latest
Now that your container image resides in the Amazon ECR container registry, you can create and run the Lambda function.
Prerequisites
- The AWS CLI
- Docker Desktop
- Your function code
To create an image using an alternative base image
-
Choose a base image. Lambda supports all Linux distributions, such as Alpine, Debian, and Ubuntu.
-
On your local machine, create a project directory for your new function.
-
Create a directory named app in the project directory, and then add your function handler code to the app directory.
-
Use a text editor to create a new Dockerfile with the following configuration:
- Set the
FROM
property to the URI of the base image. - Add instructions to install the runtime interface client.
- Set the
ENTRYPOINT
property to invoke the runtime interface client. - Set the
CMD
argument to specify the Lambda function handler.
The following example shows a Dockerfile for Python:
# Define function directory ARG FUNCTION_DIR="/function" FROM python:buster as build-image # Install aws-lambda-cpp build dependencies RUN apt-get update && \ apt-get install -y \ g++ \ make \ cmake \ unzip \ libcurl4-openssl-dev # Include global arg in this stage of the build ARG FUNCTION_DIR # Create function directory RUN mkdir -p ${FUNCTION_DIR} # Copy function code COPY app/* ${FUNCTION_DIR} # Install the runtime interface client RUN pip install \ --target ${FUNCTION_DIR} \ awslambdaric # Multi-stage build: grab a fresh copy of the base image FROM python:buster # Include global arg in this stage of the build ARG FUNCTION_DIR # Set working directory to function root directory WORKDIR ${FUNCTION_DIR} # Copy in the build image dependencies COPY --from=build-image ${FUNCTION_DIR} ${FUNCTION_DIR} ENTRYPOINT [ "/usr/local/bin/python", "-m", "awslambdaric" ] CMD [ "app.handler" ]
- Set the
-
Build your Docker image with the
docker build
command. Enter a name for the image. The following example names the imagehello-world
.docker build -t hello-world .
-
(Optional) Test your application locally using the Runtime interface emulator.
-
Authenticate the Docker CLI to your Amazon ECR registry.
aws ecr get-login-password --region us-east-1 | docker login --username AWS --password-stdin 123456789012.dkr.ecr.us-east-1.amazonaws.com
-
Create a repository in Amazon ECR using the
create-repository
command.aws ecr create-repository --repository-name hello-world --image-scanning-configuration scanOnPush=true --image-tag-mutability MUTABLE
-
Tag your image to match your repository name, and deploy the image to Amazon ECR using the
docker push
command.docker tag hello-world:latest 123456789012.dkr.ecr.us-east-1.amazonaws.com/hello-world:latest docker push 123456789012.dkr.ecr.us-east-1.amazonaws.com/hello-world:latest
Now that your container image resides in the Amazon ECR container registry, you can create and run the Lambda function.
You can use the AWS Serverless Application Model (AWS SAM) toolkit to create and deploy a function defined as a container image. For a new project, you can use the AWS SAM CLI init
command to set up the scaffolding for your project in your preferred runtime.
In your AWS SAM template, you set the Runtime
type to Image
and provide the URI of the base image.
For more information, see Building applications in the AWS Serverless Application Model Developer Guide.