aws-cdk.aws-s3-deployment 1.204.0

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awscdk.awss3deployment 1.204.0

AWS S3 Deployment Construct Library
---


AWS CDK v1 has reached End-of-Support on 2023-06-01.
This package is no longer being updated, and users should migrate to AWS CDK v2.
For more information on how to migrate, see the Migrating to AWS CDK v2 guide.



This library allows populating an S3 bucket with the contents of .zip files
from other S3 buckets or from local disk.
The following example defines a publicly accessible S3 bucket with web hosting
enabled and populates it from a local directory on disk.
website_bucket = s3.Bucket(self, "WebsiteBucket",
website_index_document="index.html",
public_read_access=True
)

s3deploy.BucketDeployment(self, "DeployWebsite",
sources=[s3deploy.Source.asset("./website-dist")],
destination_bucket=website_bucket,
destination_key_prefix="web/static"
)

This is what happens under the hood:

When this stack is deployed (either via cdk deploy or via CI/CD), the
contents of the local website-dist directory will be archived and uploaded
to an intermediary assets bucket. If there is more than one source, they will
be individually uploaded.
The BucketDeployment construct synthesizes a custom CloudFormation resource
of type Custom::CDKBucketDeployment into the template. The source bucket/key
is set to point to the assets bucket.
The custom resource downloads the .zip archive, extracts it and issues aws s3 sync --delete against the destination bucket (in this case
websiteBucket). If there is more than one source, the sources will be
downloaded and merged pre-deployment at this step.

If you are referencing the filled bucket in another construct that depends on
the files already be there, be sure to use deployment.deployedBucket. This
will ensure the bucket deployment has finished before the resource that uses
the bucket is created:
# website_bucket: s3.Bucket


deployment = s3deploy.BucketDeployment(self, "DeployWebsite",
sources=[s3deploy.Source.asset(path.join(__dirname, "my-website"))],
destination_bucket=website_bucket
)

ConstructThatReadsFromTheBucket(self, "Consumer", {
# Use 'deployment.deployedBucket' instead of 'websiteBucket' here
"bucket": deployment.deployed_bucket
})

Supported sources
The following source types are supported for bucket deployments:

Local .zip file: s3deploy.Source.asset('/path/to/local/file.zip')
Local directory: s3deploy.Source.asset('/path/to/local/directory')
Another bucket: s3deploy.Source.bucket(bucket, zipObjectKey)
String data: s3deploy.Source.data('object-key.txt', 'hello, world!')
(supports deploy-time values)
JSON data: s3deploy.Source.jsonData('object-key.json', { json: 'object' })
(supports deploy-time values)

To create a source from a single file, you can pass AssetOptions to exclude
all but a single file:

Single file: s3deploy.Source.asset('/path/to/local/directory', { exclude: ['**', '!onlyThisFile.txt'] })

IMPORTANT The aws-s3-deployment module is only intended to be used with
zip files from trusted sources. Directories bundled by the CDK CLI (by using
Source.asset() on a directory) are safe. If you are using Source.asset() or
Source.bucket() to reference an existing zip file, make sure you trust the
file you are referencing. Zips from untrusted sources might be able to execute
arbitrary code in the Lambda Function used by this module, and use its permissions
to read or write unexpected files in the S3 bucket.
Retain on Delete
By default, the contents of the destination bucket will not be deleted when the
BucketDeployment resource is removed from the stack or when the destination is
changed. You can use the option retainOnDelete: false to disable this behavior,
in which case the contents will be deleted.
Configuring this has a few implications you should be aware of:


Logical ID Changes
Changing the logical ID of the BucketDeployment construct, without changing the destination
(for example due to refactoring, or intentional ID change) will result in the deletion of the objects.
This is because CloudFormation will first create the new resource, which will have no affect,
followed by a deletion of the old resource, which will cause a deletion of the objects,
since the destination hasn't changed, and retainOnDelete is false.


Destination Changes
When the destination bucket or prefix is changed, all files in the previous destination will first be
deleted and then uploaded to the new destination location. This could have availability implications
on your users.


General Recommendations
Shared Bucket
If the destination bucket is not dedicated to the specific BucketDeployment construct (i.e shared by other entities),
we recommend to always configure the destinationKeyPrefix property. This will prevent the deployment from
accidentally deleting data that wasn't uploaded by it.
Dedicated Bucket
If the destination bucket is dedicated, it might be reasonable to skip the prefix configuration,
in which case, we recommend to remove retainOnDelete: false, and instead, configure the
autoDeleteObjects
property on the destination bucket. This will avoid the logical ID problem mentioned above.
Prune
By default, files in the destination bucket that don't exist in the source will be deleted
when the BucketDeployment resource is created or updated. You can use the option prune: false to disable
this behavior, in which case the files will not be deleted.
# destination_bucket: s3.Bucket

s3deploy.BucketDeployment(self, "DeployMeWithoutDeletingFilesOnDestination",
sources=[s3deploy.Source.asset(path.join(__dirname, "my-website"))],
destination_bucket=destination_bucket,
prune=False
)

This option also enables you to
multiple bucket deployments for the same destination bucket & prefix,
each with its own characteristics. For example, you can set different cache-control headers
based on file extensions:
# destination_bucket: s3.Bucket

s3deploy.BucketDeployment(self, "BucketDeployment",
sources=[s3deploy.Source.asset("./website", exclude=["index.html"])],
destination_bucket=destination_bucket,
cache_control=[s3deploy.CacheControl.from_string("max-age=31536000,public,immutable")],
prune=False
)

s3deploy.BucketDeployment(self, "HTMLBucketDeployment",
sources=[s3deploy.Source.asset("./website", exclude=["*", "!index.html"])],
destination_bucket=destination_bucket,
cache_control=[s3deploy.CacheControl.from_string("max-age=0,no-cache,no-store,must-revalidate")],
prune=False
)

Exclude and Include Filters
There are two points at which filters are evaluated in a deployment: asset bundling and the actual deployment. If you simply want to exclude files in the asset bundling process, you should leverage the exclude property of AssetOptions when defining your source:
# destination_bucket: s3.Bucket

s3deploy.BucketDeployment(self, "HTMLBucketDeployment",
sources=[s3deploy.Source.asset("./website", exclude=["*", "!index.html"])],
destination_bucket=destination_bucket
)

If you want to specify filters to be used in the deployment process, you can use the exclude and include filters on BucketDeployment. If excluded, these files will not be deployed to the destination bucket. In addition, if the file already exists in the destination bucket, it will not be deleted if you are using the prune option:
# destination_bucket: s3.Bucket

s3deploy.BucketDeployment(self, "DeployButExcludeSpecificFiles",
sources=[s3deploy.Source.asset(path.join(__dirname, "my-website"))],
destination_bucket=destination_bucket,
exclude=["*.txt"]
)

These filters follow the same format that is used for the AWS CLI. See the CLI documentation for information on Using Include and Exclude Filters.
Objects metadata
You can specify metadata to be set on all the objects in your deployment.
There are 2 types of metadata in S3: system-defined metadata and user-defined metadata.
System-defined metadata have a special purpose, for example cache-control defines how long to keep an object cached.
User-defined metadata are not used by S3 and keys always begin with x-amz-meta- (this prefix is added automatically).
System defined metadata keys include the following:

cache-control (--cache-control in aws s3 sync)
content-disposition (--content-disposition in aws s3 sync)
content-encoding (--content-encoding in aws s3 sync)
content-language (--content-language in aws s3 sync)
content-type (--content-type in aws s3 sync)
expires (--expires in aws s3 sync)
x-amz-storage-class (--storage-class in aws s3 sync)
x-amz-website-redirect-location (--website-redirect in aws s3 sync)
x-amz-server-side-encryption (--sse in aws s3 sync)
x-amz-server-side-encryption-aws-kms-key-id (--sse-kms-key-id in aws s3 sync)
x-amz-server-side-encryption-customer-algorithm (--sse-c-copy-source in aws s3 sync)
x-amz-acl (--acl in aws s3 sync)

You can find more information about system defined metadata keys in
S3 PutObject documentation
and aws s3 sync documentation.
website_bucket = s3.Bucket(self, "WebsiteBucket",
website_index_document="index.html",
public_read_access=True
)

s3deploy.BucketDeployment(self, "DeployWebsite",
sources=[s3deploy.Source.asset("./website-dist")],
destination_bucket=website_bucket,
destination_key_prefix="web/static", # optional prefix in destination bucket
metadata=s3deploy.UserDefinedObjectMetadata(A="1", b="2"), # user-defined metadata

# system-defined metadata
content_type="text/html",
content_language="en",
storage_class=s3deploy.StorageClass.INTELLIGENT_TIERING,
server_side_encryption=s3deploy.ServerSideEncryption.AES_256,
cache_control=[
s3deploy.CacheControl.set_public(),
s3deploy.CacheControl.max_age(Duration.hours(1))
],
access_control=s3.BucketAccessControl.BUCKET_OWNER_FULL_CONTROL
)

CloudFront Invalidation
You can provide a CloudFront distribution and optional paths to invalidate after the bucket deployment finishes.
import aws_cdk.aws_cloudfront as cloudfront
import aws_cdk.aws_cloudfront_origins as origins


bucket = s3.Bucket(self, "Destination")

# Handles buckets whether or not they are configured for website hosting.
distribution = cloudfront.Distribution(self, "Distribution",
default_behavior=cloudfront.BehaviorOptions(origin=origins.S3Origin(bucket))
)

s3deploy.BucketDeployment(self, "DeployWithInvalidation",
sources=[s3deploy.Source.asset("./website-dist")],
destination_bucket=bucket,
distribution=distribution,
distribution_paths=["/images/*.png"]
)

Size Limits
The default memory limit for the deployment resource is 128MiB. If you need to
copy larger files, you can use the memoryLimit configuration to increase the
size of the AWS Lambda resource handler.
The default ephemeral storage size for the deployment resource is 512MiB. If you
need to upload larger files, you may hit this limit. You can use the
ephemeralStorageSize configuration to increase the storage size of the AWS Lambda
resource handler.

NOTE: a new AWS Lambda handler will be created in your stack for each combination
of memory and storage size.

EFS Support
If your workflow needs more disk space than default (512 MB) disk space, you may attach an EFS storage to underlying
lambda function. To Enable EFS support set efs and vpc props for BucketDeployment.
Check sample usage below.
Please note that creating VPC inline may cause stack deletion failures. It is shown as below for simplicity.
To avoid such condition, keep your network infra (VPC) in a separate stack and pass as props.
# destination_bucket: s3.Bucket
# vpc: ec2.Vpc


s3deploy.BucketDeployment(self, "DeployMeWithEfsStorage",
sources=[s3deploy.Source.asset(path.join(__dirname, "my-website"))],
destination_bucket=destination_bucket,
destination_key_prefix="efs/",
use_efs=True,
vpc=vpc,
retain_on_delete=False
)

Data with deploy-time values
The content passed to Source.data() or Source.jsonData() can include
references that will get resolved only during deployment.
For example:
import aws_cdk.aws_sns as sns

# destination_bucket: s3.Bucket
# topic: sns.Topic


app_config = {
"topic_arn": topic.topic_arn,
"base_url": "https://my-endpoint"
}

s3deploy.BucketDeployment(self, "BucketDeployment",
sources=[s3deploy.Source.json_data("config.json", app_config)],
destination_bucket=destination_bucket
)

The value in topic.topicArn is a deploy-time value. It only gets resolved
during deployment by placing a marker in the generated source file and
substituting it when its deployed to the destination with the actual value.
Notes


This library uses an AWS CloudFormation custom resource which is about 10MiB in
size. The code of this resource is bundled with this library.


AWS Lambda execution time is limited to 15min. This limits the amount of data
which can be deployed into the bucket by this timeout.


When the BucketDeployment is removed from the stack, the contents are retained
in the destination bucket (#952).


If you are using s3deploy.Source.bucket() to take the file source from
another bucket: the deployed files will only be updated if the key (file name)
of the file in the source bucket changes. Mutating the file in place will not
be good enough: the custom resource will simply not run if the properties don't
change.

If you use assets (s3deploy.Source.asset()) you don't need to worry
about this: the asset system will make sure that if the files have changed,
the file name is unique and the deployment will run.



Development
The custom resource is implemented in Python 3.7 in order to be able to leverage
the AWS CLI for "aws s3 sync". The code is under lib/lambda and
unit tests are under test/lambda.
This package requires Python 3.7 during build time in order to create the custom
resource Lambda bundle and test it. It also relies on a few bash scripts, so
might be tricky to build on Windows.
Roadmap

Support "blue/green" deployments (#954)

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

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