The CDK Construct Library for AWS::KinesisFirehose
Project description
Amazon Data Firehose Construct Library
---The APIs of higher level constructs in this module are in developer preview before they become stable. We will only make breaking changes to address unforeseen API issues. Therefore, these APIs are not subject to Semantic Versioning, and breaking changes will be announced in 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 This means that while you may use them, you may need to update your source code when upgrading to a newer version of this package.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 Data Firehose, formerly known as Amazon Kinesis Data Firehose, is a service for fully-managed delivery of real-time streaming data to storage services such as Amazon S3, Amazon Redshift, Amazon Elasticsearch, Splunk, or any custom HTTP endpoint or third-party services such as Datadog, Dynatrace, LogicMonitor, MongoDB, New Relic, and Sumo Logic.
Amazon Data Firehose delivery streams are distinguished from Kinesis data streams in their models of consumption. Whereas consumers read from a data stream by actively pulling data from the stream, a delivery stream pushes data to its destination on a regular cadence. This means that data streams are intended to have consumers that do on-demand processing, like AWS Lambda or Amazon EC2. On the other hand, delivery streams are intended to have destinations that are sources for offline processing and analytics, such as Amazon S3 and Amazon Redshift.
This module is part of the AWS Cloud Development Kit project. It allows you to define Amazon Data Firehose delivery streams.
Defining a Delivery Stream
In order to define a Delivery Stream, you must specify a destination. An S3 bucket can be used as a destination. Currently the CDK supports only S3 as a destination which is covered below.
bucket = s3.Bucket(self, "Bucket")
firehose.DeliveryStream(self, "Delivery Stream",
destination=destinations.S3Bucket(bucket)
)
The above example defines the following resources:
- An S3 bucket
- An Amazon Data Firehose delivery stream with Direct PUT as the source and CloudWatch error logging turned on.
- An IAM role which gives the delivery stream permission to write to the S3 bucket.
Sources
An Amazon Data Firehose delivery stream can accept data from three main sources: Kinesis Data Streams, Managed Streaming for Apache Kafka (MSK), or via a "direct put" (API calls). Currently only Kinesis Data Streams and direct put are supported in the CDK.
See: Sending Data to a Delivery Stream in the Amazon Data Firehose Developer Guide.
Kinesis Data Stream
A delivery stream can read directly from a Kinesis data stream as a consumer of the data
stream. Configure this behaviour by passing in a data stream in the source
property via the KinesisStreamSource
class when constructing a delivery stream:
# destination: firehose.IDestination
source_stream = kinesis.Stream(self, "Source Stream")
firehose.DeliveryStream(self, "Delivery Stream",
source=firehose.KinesisStreamSource(source_stream),
destination=destination
)
Direct Put
Data must be provided via "direct put", ie., by using a PutRecord
or
PutRecordBatch
API call. There are a number of ways of doing so, such as:
- Kinesis Agent: a standalone Java application that monitors and delivers files while handling file rotation, checkpointing, and retries. See: Writing to Amazon Data Firehose Using Kinesis Agent in the Amazon Data Firehose Developer Guide.
- AWS SDK: a general purpose solution that allows you to deliver data to a delivery stream from anywhere using Java, .NET, Node.js, Python, or Ruby. See: Writing to Amazon Data Firehose Using the AWS SDK in the Amazon Data Firehose Developer Guide.
- CloudWatch Logs: subscribe to a log group and receive filtered log events directly into a delivery stream. See: logs-destinations.
- Eventbridge: add an event rule target to send events to a delivery stream based on the rule filtering. See: events-targets.
- SNS: add a subscription to send all notifications from the topic to a delivery stream. See: sns-subscriptions.
- IoT: add an action to an IoT rule to send various IoT information to a delivery stream
Destinations
Amazon Data Firehose supports multiple AWS and third-party services as destinations, including Amazon S3, Amazon Redshift, and more. You can find the full list of supported destination here.
Currently in the AWS CDK, only S3 is implemented as an L2 construct destination. Other destinations can still be configured using L1 constructs. See kinesisfirehose-destinations for the implementations of these destinations.
S3
Defining a delivery stream with an S3 bucket destination:
# bucket: s3.Bucket
s3_destination = destinations.S3Bucket(bucket)
firehose.DeliveryStream(self, "Delivery Stream",
destination=s3_destination
)
The S3 destination also supports custom dynamic prefixes. dataOutputPrefix
will be used for files successfully delivered to S3. errorOutputPrefix
will be added to
failed records before writing them to S3.
# bucket: s3.Bucket
s3_destination = destinations.S3Bucket(bucket,
data_output_prefix="myFirehose/DeliveredYear=!{timestamp:yyyy}/anyMonth/rand=!{firehose:random-string}",
error_output_prefix="myFirehoseFailures/!{firehose:error-output-type}/!{timestamp:yyyy}/anyMonth/!{timestamp:dd}"
)
See: Custom S3 Prefixes in the Amazon Data Firehose Developer Guide.
Server-side Encryption
Enabling server-side encryption (SSE) requires Amazon Data Firehose to encrypt all data sent to delivery stream when it is stored at rest. This means that data is encrypted before being written to the service's internal storage layer and decrypted after it is received from the internal storage layer. The service manages keys and cryptographic operations so that sources and destinations do not need to, as the data is encrypted and decrypted at the boundaries of the service (i.e., before the data is delivered to a destination). By default, delivery streams do not have SSE enabled.
The Key Management Service keys (KMS keys) used for SSE can either be AWS-owned or customer-managed. AWS-owned KMS keys are created, owned and managed by AWS for use in multiple AWS accounts. As a customer, you cannot view, use, track, or manage these keys, and you are not charged for their use. On the other hand, customer-managed KMS keys are created and owned within your account and managed entirely by you. As a customer, you are responsible for managing access, rotation, aliases, and deletion for these keys, and you are changed for their use.
See: AWS KMS keys in the KMS Developer Guide.
# destination: firehose.IDestination
# SSE with an customer-managed key that is explicitly specified
# key: kms.Key
# SSE with an AWS-owned key
firehose.DeliveryStream(self, "Delivery Stream with AWS Owned Key",
encryption=firehose.StreamEncryption.aws_owned_key(),
destination=destination
)
# SSE with an customer-managed key that is created automatically by the CDK
firehose.DeliveryStream(self, "Delivery Stream with Customer Managed Key",
encryption=firehose.StreamEncryption.customer_managed_key(),
destination=destination
)
firehose.DeliveryStream(self, "Delivery Stream with Customer Managed and Provided Key",
encryption=firehose.StreamEncryption.customer_managed_key(key),
destination=destination
)
See: Data Protection in the Amazon Data Firehose Developer Guide.
Monitoring
Amazon Data Firehose is integrated with CloudWatch, so you can monitor the performance of your delivery streams via logs and metrics.
Logs
Amazon Data Firehose will send logs to CloudWatch when data transformation or data delivery fails. The CDK will enable logging by default and create a CloudWatch LogGroup and LogStream with default settings for your Delivery Stream.
When creating a destination, you can provide an ILoggingConfig
, which can either be an EnableLogging
or DisableLogging
instance.
If you use EnableLogging
, the CDK will create a CloudWatch LogGroup and LogStream with all CloudFormation default settings for you, or you can optionally
specify your own log group to be used for capturing and storing log events. For example:
import aws_cdk.aws_logs as logs
# bucket: s3.Bucket
log_group = logs.LogGroup(self, "Log Group")
destination = destinations.S3Bucket(bucket,
logging_config=destinations.EnableLogging(log_group)
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=destination
)
Logging can also be disabled:
# bucket: s3.Bucket
destination = destinations.S3Bucket(bucket,
logging_config=destinations.DisableLogging()
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=destination
)
See: Monitoring using CloudWatch Logs in the Amazon Data Firehose Developer Guide.
Metrics
Amazon Data Firehose sends metrics to CloudWatch so that you can collect and analyze the performance of the delivery stream, including data delivery, data ingestion, data transformation, format conversion, API usage, encryption, and resource usage. You can then use CloudWatch alarms to alert you, for example, when data freshness (the age of the oldest record in the delivery stream) exceeds the buffering limit (indicating that data is not being delivered to your destination), or when the rate of incoming records exceeds the limit of records per second (indicating data is flowing into your delivery stream faster than it is configured to process).
CDK provides methods for accessing delivery stream metrics with default configuration,
such as metricIncomingBytes
, and metricIncomingRecords
(see IDeliveryStream
for a full list). CDK also provides a generic metric
method that can be used to produce
metric configurations for any metric provided by Amazon Data Firehose; the configurations
are pre-populated with the correct dimensions for the delivery stream.
import aws_cdk.aws_cloudwatch as cloudwatch
# delivery_stream: firehose.DeliveryStream
# Alarm that triggers when the per-second average of incoming bytes exceeds 90% of the current service limit
incoming_bytes_percent_of_limit = cloudwatch.MathExpression(
expression="incomingBytes / 300 / bytePerSecLimit",
using_metrics={
"incoming_bytes": delivery_stream.metric_incoming_bytes(statistic=cloudwatch.Statistic.SUM),
"byte_per_sec_limit": delivery_stream.metric("BytesPerSecondLimit")
}
)
cloudwatch.Alarm(self, "Alarm",
metric=incoming_bytes_percent_of_limit,
threshold=0.9,
evaluation_periods=3
)
See: Monitoring Using CloudWatch Metrics in the Amazon Data Firehose Developer Guide.
Compression
Your data can automatically be compressed when it is delivered to S3 as either a final or an intermediary/backup destination. Supported compression formats are: gzip, Snappy, Hadoop-compatible Snappy, and ZIP, except for Redshift destinations, where Snappy (regardless of Hadoop-compatibility) and ZIP are not supported. By default, data is delivered to S3 without compression.
# Compress data delivered to S3 using Snappy
# bucket: s3.Bucket
s3_destination = destinations.S3Bucket(bucket,
compression=destinations.Compression.SNAPPY
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=s3_destination
)
Buffering
Incoming data is buffered before it is delivered to the specified destination. The delivery stream will wait until the amount of incoming data has exceeded some threshold (the "buffer size") or until the time since the last data delivery occurred exceeds some threshold (the "buffer interval"), whichever happens first. You can configure these thresholds based on the capabilities of the destination and your use-case. By default, the buffer size is 5 MiB and the buffer interval is 5 minutes.
# Increase the buffer interval and size to 10 minutes and 8 MiB, respectively
# bucket: s3.Bucket
destination = destinations.S3Bucket(bucket,
buffering_interval=Duration.minutes(10),
buffering_size=Size.mebibytes(8)
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=destination
)
See: Data Delivery Frequency in the Amazon Data Firehose Developer Guide.
Zero buffering, where Amazon Data Firehose stream can be configured to not buffer data before delivery, is supported by setting the "buffer interval" to 0.
# Setup zero buffering
# bucket: s3.Bucket
destination = destinations.S3Bucket(bucket,
buffering_interval=Duration.seconds(0)
)
firehose.DeliveryStream(self, "ZeroBufferDeliveryStream",
destination=destination
)
See: Buffering Hints.
Destination Encryption
Your data can be automatically encrypted when it is delivered to S3 as a final or an intermediary/backup destination. Amazon Data Firehose supports Amazon S3 server-side encryption with AWS Key Management Service (AWS KMS) for encrypting delivered data in Amazon S3. You can choose to not encrypt the data or to encrypt with a key from the list of AWS KMS keys that you own. For more information, see Protecting Data Using Server-Side Encryption with AWS KMS–Managed Keys (SSE-KMS). By default, encryption isn’t directly enabled on the delivery stream; instead, it uses the default encryption settings of the destination S3 bucket.
# bucket: s3.Bucket
# key: kms.Key
destination = destinations.S3Bucket(bucket,
encryption_key=key
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=destination
)
Backup
A delivery stream can be configured to back up data to S3 that it attempted to deliver to the configured destination. Backed up data can be all the data that the delivery stream attempted to deliver or just data that it failed to deliver (Redshift and S3 destinations can only back up all data). CDK can create a new S3 bucket where it will back up data, or you can provide a bucket where data will be backed up. You can also provide a prefix under which your backed-up data will be placed within the bucket. By default, source data is not backed up to S3.
# Enable backup of all source records (to an S3 bucket created by CDK).
# bucket: s3.Bucket
# Explicitly provide an S3 bucket to which all source records will be backed up.
# backup_bucket: s3.Bucket
firehose.DeliveryStream(self, "Delivery Stream Backup All",
destination=
destinations.S3Bucket(bucket,
s3_backup=destinations.DestinationS3BackupProps(
mode=destinations.BackupMode.ALL
)
)
)
firehose.DeliveryStream(self, "Delivery Stream Backup All Explicit Bucket",
destination=
destinations.S3Bucket(bucket,
s3_backup=destinations.DestinationS3BackupProps(
bucket=backup_bucket
)
)
)
# Explicitly provide an S3 prefix under which all source records will be backed up.
firehose.DeliveryStream(self, "Delivery Stream Backup All Explicit Prefix",
destination=
destinations.S3Bucket(bucket,
s3_backup=destinations.DestinationS3BackupProps(
mode=destinations.BackupMode.ALL,
data_output_prefix="mybackup"
)
)
)
If any Data Processing or Transformation is configured on your Delivery Stream, the source records will be backed up in their original format.
Data Processing/Transformation
Data can be transformed before being delivered to destinations. There are two types of data processing for delivery streams: record transformation with AWS Lambda, and record format conversion using a schema stored in an AWS Glue table. If both types of data processing are configured, then the Lambda transformation is performed first. By default, no data processing occurs. This construct library currently only supports data transformation with AWS Lambda. See #15501 to track the status of adding support for record format conversion.
Data transformation with AWS Lambda
To transform the data, Amazon Data Firehose will call a Lambda function that you provide and deliver the data returned in place of the source record. The function must return a result that contains records in a specific format, including the following fields:
recordId
-- the ID of the input record that corresponds the results.result
-- the status of the transformation of the record: "Ok" (success), "Dropped" (not processed intentionally), or "ProcessingFailed" (not processed due to an error).data
-- the transformed data, Base64-encoded.
The data is buffered up to 1 minute and up to 3 MiB by default before being sent to the
function, but can be configured using bufferInterval
and bufferSize
in the processor configuration (see: Buffering). If the function invocation
fails due to a network timeout or because of hitting an invocation limit, the invocation
is retried 3 times by default, but can be configured using retries
in the processor
configuration.
# bucket: s3.Bucket
# Provide a Lambda function that will transform records before delivery, with custom
# buffering and retry configuration
lambda_function = lambda_.Function(self, "Processor",
runtime=lambda_.Runtime.NODEJS_LATEST,
handler="index.handler",
code=lambda_.Code.from_asset(path.join(__dirname, "process-records"))
)
lambda_processor = firehose.LambdaFunctionProcessor(lambda_function,
buffer_interval=Duration.minutes(5),
buffer_size=Size.mebibytes(5),
retries=5
)
s3_destination = destinations.S3Bucket(bucket,
processor=lambda_processor
)
firehose.DeliveryStream(self, "Delivery Stream",
destination=s3_destination
)
import path as path
import aws_cdk.aws_kinesisfirehose_alpha as firehose
import aws_cdk.aws_kms as kms
import aws_cdk.aws_lambda_nodejs as lambdanodejs
import aws_cdk.aws_logs as logs
import aws_cdk.aws_s3 as s3
import aws_cdk as cdk
import aws_cdk.aws_kinesisfirehose_destinations_alpha as destinations
app = cdk.App()
stack = cdk.Stack(app, "aws-cdk-firehose-delivery-stream-s3-all-properties")
bucket = s3.Bucket(stack, "Bucket",
removal_policy=cdk.RemovalPolicy.DESTROY,
auto_delete_objects=True
)
backup_bucket = s3.Bucket(stack, "BackupBucket",
removal_policy=cdk.RemovalPolicy.DESTROY,
auto_delete_objects=True
)
log_group = logs.LogGroup(stack, "LogGroup",
removal_policy=cdk.RemovalPolicy.DESTROY
)
data_processor_function = lambdanodejs.NodejsFunction(stack, "DataProcessorFunction",
entry=path.join(__dirname, "lambda-data-processor.js"),
timeout=cdk.Duration.minutes(1)
)
processor = firehose.LambdaFunctionProcessor(data_processor_function,
buffer_interval=cdk.Duration.seconds(60),
buffer_size=cdk.Size.mebibytes(1),
retries=1
)
key = kms.Key(stack, "Key",
removal_policy=cdk.RemovalPolicy.DESTROY
)
backup_key = kms.Key(stack, "BackupKey",
removal_policy=cdk.RemovalPolicy.DESTROY
)
firehose.DeliveryStream(stack, "Delivery Stream",
destination=destinations.S3Bucket(bucket,
logging_config=destinations.EnableLogging(log_group),
processor=processor,
compression=destinations.Compression.GZIP,
data_output_prefix="regularPrefix",
error_output_prefix="errorPrefix",
buffering_interval=cdk.Duration.seconds(60),
buffering_size=cdk.Size.mebibytes(1),
encryption_key=key,
s3_backup=destinations.DestinationS3BackupProps(
mode=destinations.BackupMode.ALL,
bucket=backup_bucket,
compression=destinations.Compression.ZIP,
data_output_prefix="backupPrefix",
error_output_prefix="backupErrorPrefix",
buffering_interval=cdk.Duration.seconds(60),
buffering_size=cdk.Size.mebibytes(1),
encryption_key=backup_key
)
)
)
firehose.DeliveryStream(stack, "ZeroBufferingDeliveryStream",
destination=destinations.S3Bucket(bucket,
compression=destinations.Compression.GZIP,
data_output_prefix="regularPrefix",
error_output_prefix="errorPrefix",
buffering_interval=cdk.Duration.seconds(0)
)
)
app.synth()
See: Data Transformation in the Amazon Data Firehose Developer Guide.
Specifying an IAM role
The DeliveryStream class automatically creates IAM service roles with all the minimum
necessary permissions for Amazon Data Firehose to access the resources referenced by your
delivery stream. One service role is created for the delivery stream that allows Amazon
Data Firehose to read from a Kinesis data stream (if one is configured as the delivery
stream source) and for server-side encryption. Note that if the DeliveryStream is created
without specifying a source
or encryptionKey
, this role is not created as it is not needed.
Another service role is created for each destination, which gives Amazon Data Firehose write access to the destination resource, as well as the ability to invoke data transformers and read schemas for record format conversion. If you wish, you may specify your own IAM role for either the delivery stream or the destination service role, or both. It must have the correct trust policy (it must allow Amazon Data Firehose to assume it) or delivery stream creation or data delivery will fail. Other required permissions to destination resources, encryption keys, etc., will be provided automatically.
# Specify the roles created above when defining the destination and delivery stream.
# bucket: s3.Bucket
# Create service roles for the delivery stream and destination.
# These can be used for other purposes and granted access to different resources.
# They must include the Amazon Data Firehose service principal in their trust policies.
# Two separate roles are shown below, but the same role can be used for both purposes.
delivery_stream_role = iam.Role(self, "Delivery Stream Role",
assumed_by=iam.ServicePrincipal("firehose.amazonaws.com")
)
destination_role = iam.Role(self, "Destination Role",
assumed_by=iam.ServicePrincipal("firehose.amazonaws.com")
)
destination = destinations.S3Bucket(bucket, role=destination_role)
firehose.DeliveryStream(self, "Delivery Stream",
destination=destination,
role=delivery_stream_role
)
See Controlling Access in the Amazon Data Firehose Developer Guide.
Granting application access to a delivery stream
IAM roles, users or groups which need to be able to work with delivery streams should be granted IAM permissions.
Any object that implements the IGrantable
interface (i.e., has an associated principal)
can be granted permissions to a delivery stream by calling:
grantPutRecords(principal)
- grants the principal the ability to put records onto the delivery streamgrant(principal, ...actions)
- grants the principal permission to a custom set of actions
# Give the role permissions to write data to the delivery stream
# delivery_stream: firehose.DeliveryStream
lambda_role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
delivery_stream.grant_put_records(lambda_role)
The following write permissions are provided to a service principal by the
grantPutRecords()
method:
firehose:PutRecord
firehose:PutRecordBatch
Granting a delivery stream access to a resource
Conversely to the above, Amazon Data Firehose requires permissions in order for delivery
streams to interact with resources that you own. For example, if an S3 bucket is specified
as a destination of a delivery stream, the delivery stream must be granted permissions to
put and get objects from the bucket. When using the built-in AWS service destinations
found in the @aws-cdk/aws-kinesisfirehose-destinations-alpha
module, the CDK grants the
permissions automatically. However, custom or third-party destinations may require custom
permissions. In this case, use the delivery stream as an IGrantable
, as follows:
# delivery_stream: firehose.DeliveryStream
fn = lambda_.Function(self, "Function",
code=lambda_.Code.from_inline("exports.handler = (event) => {}"),
runtime=lambda_.Runtime.NODEJS_LATEST,
handler="index.handler"
)
fn.grant_invoke(delivery_stream)
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