@Stability(value=Experimental)
See: Description
| Interface | Description |
|---|---|
| BundlingOptions |
(experimental) Options for bundling.
|
| PythonFunctionProps |
(experimental) Properties for a PythonFunction.
|
| PythonLayerVersionProps |
(experimental) Properties for PythonLayerVersion.
|
| Class | Description |
|---|---|
| BundlingOptions.Builder |
A builder for
BundlingOptions |
| BundlingOptions.Jsii$Proxy |
An implementation for
BundlingOptions |
| PythonFunction |
(experimental) A Python Lambda function.
|
| PythonFunction.Builder |
(experimental) A fluent builder for
PythonFunction. |
| PythonFunctionProps.Builder |
A builder for
PythonFunctionProps |
| PythonFunctionProps.Jsii$Proxy |
An implementation for
PythonFunctionProps |
| PythonLayerVersion |
(experimental) A lambda layer version.
|
| PythonLayerVersion.Builder |
(experimental) A fluent builder for
PythonLayerVersion. |
| PythonLayerVersionProps.Builder |
A builder for
PythonLayerVersionProps |
| PythonLayerVersionProps.Jsii$Proxy |
An implementation for
PythonLayerVersionProps |
---
The APIs of higher level constructs in this module are experimental and under active development. They are subject to non-backward compatible changes or removal in any future version. These are not subject to the Semantic Versioning model and breaking changes will be announced in the release notes. This means that while you may use them, you may need to update your source code when upgrading to a newer version of this package.
This library provides constructs for Python Lambda functions.
To use this module, you will need to have Docker installed.
Define a PythonFunction:
PythonFunction.Builder.create(this, "MyFunction")
.entry("/path/to/my/function") // required
.runtime(Runtime.PYTHON_3_8) // required
.index("my_index.py") // optional, defaults to 'index.py'
.handler("my_exported_func")
.build();
All other properties of lambda.Function are supported, see also the AWS Lambda construct library.
You may create a python-based lambda layer with PythonLayerVersion. If PythonLayerVersion detects a requirements.txt
or Pipfile or poetry.lock with the associated pyproject.toml at the entry path, then PythonLayerVersion will include the dependencies inline with your code in the
layer.
Define a PythonLayerVersion:
PythonLayerVersion.Builder.create(this, "MyLayer")
.entry("/path/to/my/layer")
.build();
A layer can also be used as a part of a PythonFunction:
PythonFunction.Builder.create(this, "MyFunction")
.entry("/path/to/my/function")
.runtime(Runtime.PYTHON_3_8)
.layers(List.of(
PythonLayerVersion.Builder.create(this, "MyLayer")
.entry("/path/to/my/layer")
.build()))
.build();
If requirements.txt, Pipfile or poetry.lock exists at the entry path, the construct will handle installing all required modules in a Lambda compatible Docker container according to the runtime and with the Docker platform based on the target architecture of the Lambda function.
Python bundles are only recreated and published when a file in a source directory has changed. Therefore (and as a general best-practice), it is highly recommended to commit a lockfile with a list of all transitive dependencies and their exact versions. This will ensure that when any dependency version is updated, the bundle asset is recreated and uploaded.
To that end, we recommend using [pipenv] or [poetry] which have lockfile support.
Packaging is executed using the Packaging class, which:
Pipfile or a poetry.lock file, it exports it to a compatible requirements.txt file with credentials (if they're available in the source files or in the bundling container).pip.Lambda with a requirements.txt
. ├── lambda_function.py # exports a function named 'handler' ├── requirements.txt # has to be present at the entry path
Lambda with a Pipfile
. ├── lambda_function.py # exports a function named 'handler' ├── Pipfile # has to be present at the entry path ├── Pipfile.lock # your lock file
Lambda with a poetry.lock
. ├── lambda_function.py # exports a function named 'handler' ├── pyproject.toml # your poetry project definition ├── poetry.lock # your poetry lock file has to be present at the entry path
Custom bundling can be performed by passing in additional build arguments that point to index URLs to private repos, or by using an entirely custom Docker images for bundling dependencies. The build args currently supported are:
PIP_INDEX_URLPIP_EXTRA_INDEX_URLHTTPS_PROXYAdditional build args for bundling that refer to PyPI indexes can be specified as:
String entry = "/path/to/function";
DockerImage image = DockerImage.fromBuild(entry);
PythonFunction.Builder.create(this, "function")
.entry(entry)
.runtime(Runtime.PYTHON_3_8)
.bundling(BundlingOptions.builder()
.buildArgs(Map.of("PIP_INDEX_URL", "https://your.index.url/simple/", "PIP_EXTRA_INDEX_URL", "https://your.extra-index.url/simple/"))
.build())
.build();
If using a custom Docker image for bundling, the dependencies are installed with pip, pipenv or poetry by using the Packaging class. A different bundling Docker image that is in the same directory as the function can be specified as:
String entry = "/path/to/function";
DockerImage image = DockerImage.fromBuild(entry);
PythonFunction.Builder.create(this, "function")
.entry(entry)
.runtime(Runtime.PYTHON_3_8)
.bundling(BundlingOptions.builder().image(image).build())
.build();
To use a Code Artifact PyPI repo, the PIP_INDEX_URL for bundling the function can be customized (requires AWS CLI in the build environment):
import child.process.execSync;
String entry = "/path/to/function";
DockerImage image = DockerImage.fromBuild(entry);
String domain = "my-domain";
String domainOwner = "111122223333";
String repoName = "my_repo";
String region = "us-east-1";
String codeArtifactAuthToken = execSync(String.format("aws codeartifact get-authorization-token --domain %s --domain-owner %s --query authorizationToken --output text", domain, domainOwner)).toString().trim();
String indexUrl = String.format("https://aws:%s@%s-%s.d.codeartifact.%s.amazonaws.com/pypi/%s/simple/", codeArtifactAuthToken, domain, domainOwner, region, repoName);
PythonFunction.Builder.create(this, "function")
.entry(entry)
.runtime(Runtime.PYTHON_3_8)
.bundling(BundlingOptions.builder()
.environment(Map.of("PIP_INDEX_URL", indexUrl))
.build())
.build();
The index URL or the token are only used during bundling and thus not included in the final asset. Setting only environment variable for PIP_INDEX_URL or PIP_EXTRA_INDEX_URL should work for accesing private Python repositories with pip, pipenv and poetry based dependencies.
If you also want to use the Code Artifact repo for building the base Docker image for bundling, use buildArgs. However, note that setting custom build args for bundling will force the base bundling image to be rebuilt every time (i.e. skip the Docker cache). Build args can be customized as:
import child.process.execSync;
String entry = "/path/to/function";
DockerImage image = DockerImage.fromBuild(entry);
String domain = "my-domain";
String domainOwner = "111122223333";
String repoName = "my_repo";
String region = "us-east-1";
String codeArtifactAuthToken = execSync(String.format("aws codeartifact get-authorization-token --domain %s --domain-owner %s --query authorizationToken --output text", domain, domainOwner)).toString().trim();
String indexUrl = String.format("https://aws:%s@%s-%s.d.codeartifact.%s.amazonaws.com/pypi/%s/simple/", codeArtifactAuthToken, domain, domainOwner, region, repoName);
PythonFunction.Builder.create(this, "function")
.entry(entry)
.runtime(Runtime.PYTHON_3_8)
.bundling(BundlingOptions.builder()
.buildArgs(Map.of("PIP_INDEX_URL", indexUrl))
.build())
.build();
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