Skip to main content

CDK Constructs for S3 Tables

Project description

Amazon S3 Tables Construct Library

---

cdk-constructs: Experimental

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 This means that while you may use them, you may need to update your source code when upgrading to a newer version of this package.


Amazon S3 Tables

Amazon S3 Tables deliver the first cloud object store with built-in Apache Iceberg support and streamline storing tabular data at scale.

Product Page | User Guide

Usage

Define an S3 Table Bucket

from aws_cdk.aws_s3tables_alpha import UnreferencedFileRemoval
# Build a Table bucket
sample_table_bucket = TableBucket(scope, "ExampleTableBucket",
    table_bucket_name="example-bucket-1",
    # optional fields:
    unreferenced_file_removal=UnreferencedFileRemoval(
        status=UnreferencedFileRemovalStatus.ENABLED,
        noncurrent_days=20,
        unreferenced_days=20
    )
)

Define an S3 Tables Namespace

# Build a namespace
sample_namespace = Namespace(scope, "ExampleNamespace",
    namespace_name="example-namespace-1",
    table_bucket=table_bucket
)

Define an S3 Table

from aws_cdk.aws_s3tables_alpha import IcebergMetadataProperty, IcebergSchemaProperty, SchemaFieldProperty, SchemaFieldProperty, CompactionProperty, SnapshotManagementProperty
# Build a table
sample_table = Table(scope, "ExampleTable",
    table_name="example_table",
    namespace=namespace,
    open_table_format=OpenTableFormat.ICEBERG,
    without_metadata=True
)

# Build a table with an Iceberg Schema
sample_table_with_schema = Table(scope, "ExampleSchemaTable",
    table_name="example_table_with_schema",
    namespace=namespace,
    open_table_format=OpenTableFormat.ICEBERG,
    iceberg_metadata=IcebergMetadataProperty(
        iceberg_schema=IcebergSchemaProperty(
            schema_field_list=[SchemaFieldProperty(
                name="id",
                type="int",
                required=True
            ), SchemaFieldProperty(
                name="name",
                type="string"
            )
            ]
        )
    ),
    compaction=CompactionProperty(
        status=Status.ENABLED,
        target_file_size_mb=128
    ),
    snapshot_management=SnapshotManagementProperty(
        status=Status.ENABLED,
        max_snapshot_age_hours=48,
        min_snapshots_to_keep=5
    )
)

Learn more about table buckets maintenance operations and default behavior from the S3 Tables User Guide

Advanced Iceberg Table Configuration

You can configure partition specifications, sort orders, and table properties for optimized query performance.

The simplest way to add partitioning to your table:

from aws_cdk.aws_s3tables_alpha import IcebergMetadataProperty, IcebergSchemaProperty, SchemaFieldProperty, SchemaFieldProperty, IcebergPartitionSpec, IcebergPartitionField
# Build a table with partition spec (minimal configuration)
partitioned_table = Table(scope, "PartitionedTable",
    table_name="partitioned_table",
    namespace=namespace,
    open_table_format=OpenTableFormat.ICEBERG,
    iceberg_metadata=IcebergMetadataProperty(
        iceberg_schema=IcebergSchemaProperty(
            schema_field_list=[SchemaFieldProperty(name="event_date", type="date", required=True), SchemaFieldProperty(name="event_name", type="string")
            ]
        ),
        iceberg_partition_spec=IcebergPartitionSpec(
            fields=[IcebergPartitionField(
                source_id=1,
                transform=IcebergTransform.IDENTITY,
                name="date_partition"
            )
            ]
        )
    )
)

For full control, you can also configure sort orders and table properties:

from aws_cdk.aws_s3tables_alpha import IcebergMetadataProperty, IcebergSchemaProperty, SchemaFieldProperty, SchemaFieldProperty, IcebergPartitionSpec, IcebergPartitionField, IcebergSortOrder, IcebergSortField, TablePropertyEntry
# Build a table with partition spec, sort order, and table properties
advanced_table = Table(scope, "AdvancedTable",
    table_name="advanced_table",
    namespace=namespace,
    open_table_format=OpenTableFormat.ICEBERG,
    iceberg_metadata=IcebergMetadataProperty(
        iceberg_schema=IcebergSchemaProperty(
            schema_field_list=[SchemaFieldProperty(id=1, name="event_date", type="date", required=True), SchemaFieldProperty(id=2, name="user_id", type="string", required=True)
            ]
        ),
        iceberg_partition_spec=IcebergPartitionSpec(
            spec_id=0,
            fields=[IcebergPartitionField(
                source_id=1,
                transform=IcebergTransform.IDENTITY,
                name="date_partition",
                field_id=1000
            )
            ]
        ),
        iceberg_sort_order=IcebergSortOrder(
            order_id=1,
            fields=[IcebergSortField(
                source_id=1,
                transform=IcebergTransform.IDENTITY,
                direction=SortDirection.ASC,
                null_order=NullOrder.NULLS_LAST
            )
            ]
        ),
        table_properties=[TablePropertyEntry(key="write.format.default", value="parquet")
        ]
    )
)

Controlling Table Bucket Permissions

# Grant the principal read permissions to the bucket and all tables within
account_id = "123456789012"
table_bucket.grant_read(iam.AccountPrincipal(account_id), "*")

# Grant the role write permissions to the bucket and all tables within
role = iam.Role(stack, "MyRole", assumed_by=iam.ServicePrincipal("sample"))
table_bucket.grant_write(role, "*")

# Grant the user read and write permissions to the bucket and all tables within
table_bucket.grant_read_write(iam.User(stack, "MyUser"), "*")

# Grant permissions to the bucket and a particular table within it
table_id = "6ba046b2-26de-44cf-9144-0c7862593a7b"
table_bucket.grant_read_write(iam.AccountPrincipal(account_id), table_id)

# Add custom resource policy statements
permissions = iam.PolicyStatement(
    effect=iam.Effect.ALLOW,
    actions=["s3tables:*"],
    principals=[iam.ServicePrincipal("example.aws.internal")],
    resources=["*"]
)

table_bucket.add_to_resource_policy(permissions)

Controlling Table Bucket Encryption Settings

S3 TableBuckets have SSE (server-side encryption with AES-256) enabled by default with S3 managed keys. You can also bring your own KMS key for KMS-SSE or have S3 create a KMS key for you.

If a bucket is encrypted with KMS, grant functions on the bucket will also grant access to the TableBucket's associated KMS key.

# Provide a user defined KMS Key:
key = kms.Key(scope, "UserKey")
encrypted_bucket = TableBucket(scope, "EncryptedTableBucket",
    table_bucket_name="table-bucket-1",
    encryption=TableBucketEncryption.KMS,
    encryption_key=key
)
# This account principal will also receive kms:Decrypt access to the KMS key
encrypted_bucket.grant_read(iam.AccountPrincipal("123456789012"), "*")

# Use S3 managed server side encryption (default)
encrypted_bucket_default = TableBucket(scope, "EncryptedTableBucketDefault",
    table_bucket_name="table-bucket-3",
    encryption=TableBucketEncryption.S3_MANAGED
)

When using KMS encryption (TableBucketEncryption.KMS), if no encryption key is provided, CDK will automatically create a new KMS key for the table bucket with necessary permissions.

# If no key is provided, one will be created automatically
encrypted_bucket_auto = TableBucket(scope, "EncryptedTableBucketAuto",
    table_bucket_name="table-bucket-2",
    encryption=TableBucketEncryption.KMS
)

Enabling CloudWatch Request Metrics

You can enable CloudWatch request metrics for your table bucket. Request metrics provide insight into Amazon S3 Tables requests, helping you monitor and optimize your table bucket usage.

For more information about S3 Tables CloudWatch metrics, see the S3 Tables CloudWatch Metrics documentation.

# Enable CloudWatch request metrics for the table bucket
table_bucket_with_metrics = TableBucket(scope, "TableBucketWithMetrics",
    table_bucket_name="metrics-enabled-bucket",
    request_metrics_status=RequestMetricsStatus.ENABLED
)

Controlling Table Permissions

# Grant the principal read permissions to the table
account_id = "123456789012"
table.grant_read(iam.AccountPrincipal(account_id))

# Grant the role write permissions to the table
role = iam.Role(stack, "MyRole", assumed_by=iam.ServicePrincipal("sample"))
table.grant_write(role)

# Grant the user read and write permissions to the table
table.grant_read_write(iam.User(stack, "MyUser"))

# Grant an account permissions to the table
table.grant_read_write(iam.AccountPrincipal(account_id))

# Add custom resource policy statements
permissions = iam.PolicyStatement(
    effect=iam.Effect.ALLOW,
    actions=["s3tables:*"],
    principals=[iam.ServicePrincipal("example.aws.internal")],
    resources=["*"]
)

table.add_to_resource_policy(permissions)

Tagging

Both TableBucket and Table support tagging through CDK's standard tagging mechanism:

Tags.of(table_bucket).add("Environment", "Production")
Tags.of(table).add("Team", "DataEngineering")

# Stack-level tags propagate to all resources
Tags.of(stack).add("Project", "DataLake")

Coming Soon

L2 Construct support for:

  • KMS encryption support for Tables

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

aws_cdk_aws_s3tables_alpha-2.251.0a0.tar.gz (159.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

aws_cdk_aws_s3tables_alpha-2.251.0a0-py3-none-any.whl (157.8 kB view details)

Uploaded Python 3

File details

Details for the file aws_cdk_aws_s3tables_alpha-2.251.0a0.tar.gz.

File metadata

File hashes

Hashes for aws_cdk_aws_s3tables_alpha-2.251.0a0.tar.gz
Algorithm Hash digest
SHA256 2a06c7265780d5a3acd97c679a0b6368e58048519ec0fde884233b160f9d3a4f
MD5 4951d51339c2633e7742c6147e12fb94
BLAKE2b-256 3f0219304bdb41eb8b2a2384af73b127bdba4807209c84d42fce9bf1f9e4bb45

See more details on using hashes here.

File details

Details for the file aws_cdk_aws_s3tables_alpha-2.251.0a0-py3-none-any.whl.

File metadata

File hashes

Hashes for aws_cdk_aws_s3tables_alpha-2.251.0a0-py3-none-any.whl
Algorithm Hash digest
SHA256 1be55984ab9d6383c56bd8ed4efa5306f7c5390f1241de9c0dd5b87a2a2ca1fb
MD5 5085daeea68f1e71eea48ad8236bd01b
BLAKE2b-256 dcbbe741591c4c9cd16c419ff26e8816919d8729a01315108d8237cf3e3ea9b9

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page