This is a sink Apache Kafka Connect connector that stores Kafka messages in a Google Cloud Storage (GCS) bucket.
The connector requires Java 11 or newer for development and production.
The connector subscribes to the specified Kafka topics and collects messages coming in them and periodically dumps the collected data to the specified bucket in GCS.
Sometimes—for example, on reprocessing of some data—the connector will overwrite files that are already in the bucket. You need to ensure the bucket doesn't have a retention policy that prohibits overwriting.
The following object permissions must be enabled in the bucket:
storage.objects.create
;storage.objects.delete
(needed for overwriting).
The connector uses the following format for output files (blobs):
<prefix><filename>
.
<prefix>
is the optional prefix that can be used, for example, for
subdirectories in the bucket.
<filename>
is the file name. The connector has the configurable
template for file names. It supports placeholders with variable names:
{{ variable_name }}
. Currently, supported variables are:
topic
- the Kafka topic;partition:padding=true|false
- the Kafka partition, ifpadding
set totrue
it will set leading zeroes for offset, the default value isfalse
;start_offset:padding=true|false
- the Kafka offset of the first record in the file, ifpadding
set totrue
it will set leading zeroes for offset, the default value isfalse
;timestamp:unit=yyyy|MM|dd|HH
- the timestamp of when the Kafka record has been processed by the connector.unit
parameter values:yyyy
- year, e.g.2020
(please note thatYYYY
is deprecated and is interpreted asyyyy
)MM
- month, e.g.03
dd
- day, e.g.01
HH
- hour, e.g.24
key
- the Kafka key.
To add zero padding to Kafka offsets, you need to add additional parameter padding
in the start_offset
variable,
which value can be true
or false
(the default).
For example: {{topic}}-{{partition}}-{{start_offset:padding=true}}.gz
will produce file names like mytopic-1-00000000000000000001.gz
.
To add zero padding to partition number, you need to add additional parameter padding
in the partition
variable,
which value can be true
or false
(the default).
For example: {{topic}}-{{partition:padding=true}}-{{start_offset}}.gz
will produce file names like mytopic-0000000001-1.gz
.
To add formatted timestamps, use timestamp
variable.
For example: {{topic}}-{{partition}}-{{start_offset}}-{{timestamp:unit=yyyy}}{{timestamp:unit=MM}}{{timestamp:unit=dd}}.gz
will produce file names like mytopic-2-1-20200301.gz
.
To configure the time zone for the timestamp
variable,
use file.name.timestamp.timezone
property.
Please see the description of properties in the "Configuration" section.
Only the certain combinations of variables and parameters are allowed in the file name template (however, variables in a template can be in any order). Each combination determines the mode of record grouping the connector will use. Currently, supported combinations of variables and the corresponding record grouping modes are:
topic
,partition
,start_offset
, andtimestamp
- grouping by the topic, partition, and timestamp;key
- grouping by the key.
If the file name template is not specified, the default value is
{{topic}}-{{partition}}-{{start_offset}}
(+ .gz
when compression is
enabled).
Incoming records are being grouped until flushed.
In this mode, the connector groups records by the topic and partition. When a file is written, an offset of the first record in it is added to its name.
For example, let's say the template is
{{topic}}-part{{partition}}-off{{start_offset}}
. If the connector
receives records like
topic:topicB partition:0 offset:0
topic:topicA partition:0 offset:0
topic:topicA partition:0 offset:1
topic:topicB partition:0 offset:1
flush
there will be two files topicA-part0-off0
and topicB-part0-off0
with
two records in each.
Each flush
produces a new set of files. For example:
topic:topicA partition:0 offset:0
topic:topicA partition:0 offset:1
flush
topic:topicA partition:0 offset:2
topic:topicA partition:0 offset:3
flush
In this case, there will be two files topicA-part0-off0
and
topicA-part0-off2
with two records in each.
In this mode, the connector groups records by the Kafka key. It always puts one record in a file, the latest record that arrived before a flush for each key. Also, it overwrites files if later new records with the same keys arrive.
This mode is good for maintaining the latest values per key as files on GCS.
Let's say the template is k{{key}}
. For example, when the following
records arrive
key:0 value:0
key:1 value:1
key:0 value:2
key:1 value:3
flush
there will be two files k0
(containing value 2
) and k1
(containing
value 3
).
After a flush, previously written files might be overwritten:
key:0 value:0
key:1 value:1
key:0 value:2
key:1 value:3
flush
key:0 value:4
flush
In this case, there will be two files k0
(containing value 4
) and
k1
(containing value 3
).
The connector in this mode uses the following algorithm to create the string representation of a key:
- If
key
isnull
, the string value is"null"
(i.e., string literalnull
). - If
key
schema type isSTRING
, it's used directly. - Otherwise, Java
.toString()
is applied.
If keys of you records are strings, you may want to use
org.apache.kafka.connect.storage.StringConverter
as key.converter
.
The group by key
mode primarily targets scenarios where each key
appears in one partition only. If the same key appears in multiple
partitions the result may be unexpected.
For example:
topic:topicA partition:0 key:x value:aaa
topic:topicA partition:1 key:x value:bbb
flush
file kx
may contain aaa
or bbb
, i.e. the behavior is
non-deterministic.
Output files are text files that contain one record per line (i.e.,
they're separated by \n
) except PARQUET
format
There are four types of data format available:
-
[Default] Flat structure, where field values are separated by comma (
csv
)Configuration:
format.output.type=csv
. Also, this is the default if the property is not present in the configuration. -
Complex structure, where file is in format of JSON lines. It contains one record per line and each line is a valid JSON object(
jsonl
)Configuration:
format.output.type=jsonl
. -
Complex structure, where file is a valid JSON array of record objects.
Configuration:
format.output.type=json
. -
Complex structure, where file is in Apache Parquet file format.
Configuration:
format.output.type=parquet
.
The connector can output the following fields from records into the output: the key, the value, the timestamp, the offset and headers. (The set of these output fields is configurable.) The field values are separated by comma.
It is possible to control the number of records to be put in a
particular output file by setting file.max.records
. By default, it is
0
, which is interpreted as "unlimited".
The key and the value—if they're output—are stored as binaries encoded in Base64.
For example, if we output key,value,offset,timestamp
, a record line might look like:
a2V5,TG9yZW0gaXBzdW0gZG9sb3Igc2l0IGFtZXQ=,1232155,1554210895
It is possible to control the encoding of the value
field by setting
format.output.fields.value.encoding
to base64
or none
.
If the key, the value or the timestamp is null, an empty string will be output instead:
,,,1554210895
NB!
-
The
key.converter
property must be set toorg.apache.kafka.connect.converters.ByteArrayConverter
ororg.apache.kafka.connect.storage.StringConverter
for this data format. -
The
value.converter
property must be set toorg.apache.kafka.connect.converters.ByteArrayConverter
for this data format.
For example, if we output key,value,offset,timestamp
, a record line might look like:
{ "key": "k1", "value": "v0", "offset": 1232155, "timestamp":"2020-01-01T00:00:01Z" }
OR
{ "key": "user1", "value": {"name": "John", "address": {"city": "London"}}, "offset": 1232155, "timestamp":"2020-01-01T00:00:01Z" }
It is recommended to use
org.apache.kafka.connect.storage.StringConverter
,org.apache.kafka.connect.json.JsonConverter
, orio.confluent.connect.avro.AvroConverter
.
as key.converter
and/or value.converter
to make output files human-readable.
NB!
- The value of the
format.output.fields.value.encoding
property is ignored for this data format. - Value/Key schema will not be presented in output file, even if
value.converter.schemas.enable
property istrue
. But, it is still important to set this property correctly, so that connector could read records correctly.
For example, if we output key,value,offset,timestamp
, an output file might look like:
[
{ "key": "k1", "value": "v0", "offset": 1232155, "timestamp":"2020-01-01T00:00:01Z" },
{ "key": "k2", "value": "v1", "offset": 1232156, "timestamp":"2020-01-01T00:00:05Z" }
]
OR
[
{ "key": "user1", "value": {"name": "John", "address": {"city": "London"}}, "offset": 1232155, "timestamp":"2020-01-01T00:00:01Z" }
]
It is recommended to use
org.apache.kafka.connect.storage.StringConverter
,org.apache.kafka.connect.json.JsonConverter
, orio.confluent.connect.avro.AvroConverter
.
as key.converter
and/or value.converter
to make output files human-readable.
NB!
- The value of the
format.output.fields.value.encoding
property is ignored for this data format. - Value/Key schema will not be presented in output file, even if
value.converter.schemas.enable
property istrue
. But, it is still important to set this property correctly, so that connector could read records correctly.
For both JSON and JSONL another example could be for a single field output e.g. value
, a record line might look like:
{ "value": "v0" }
OR
{ "value": {"name": "John", "address": {"city": "London"}} }
In this case it sometimes make sense to get rid of additional JSON object wrapping the actual value using format.output.envelope
.
Having format.output.envelope=false
can produce the following output:
"v0"
OR
{"name": "John", "address": {"city": "London"}}
For example, if we output key,offset,timestamp,headers,value
, an output Parquet schema might look like this:
{
"type": "record", "fields": [
{"name": "key", "type": "RecordKeySchema"},
{"name": "offset", "type": "long"},
{"name": "timestamp", "type": "long"},
{"name": "headers", "type": "map"},
{"name": "value", "type": "RecordValueSchema"}
]
}
where RecordKeySchema
- a key schema and RecordValueSchema
- a record value schema.
This means that in case you have the record and key schema like:
Key schema:
{
"type": "string"
}
Record schema:
{
"type": "record", "fields": [
{"name": "foo", "type": "string"},
{"name": "bar", "type": "long"}
]
}
the final Avro
schema for Parquet
is:
{
"type": "record", "fields": [
{"name": "key", "type": "string"},
{"name": "offset", "type": "long"},
{"name": "timestamp", "type": "long"},
{"name": "headers", "type": "map", "values": "long"},
{ "name": "value",
"type": "record",
"fields": [
{"name": "foo", "type": "string"},
{"name": "bar", "type": "long"}
]
}
]
}
For a single-field output e.g. value
, a record line might look like:
{ "value": {"name": "John", "address": {"city": "London"}} }
In this case it sometimes make sense to get rid of additional JSON object wrapping the actual value using format.output.envelope
.
Having format.output.envelope=false
can produce the following output:
{"name": "John", "address": {"city": "London"}}
NB!
- The value of the
format.output.fields.value.encoding
property is ignored for this data format. - Due to Avro limitation message headers values must be the same datatype
- If you use
org.apache.kafka.connect.json.JsonConverter
be sure that you message contains schema. E.g. possibleJSON
message:{ "schema": { "type": "struct", "fields": [ {"type":"string", "field": "name"} ] }, "payload": {"name": "foo"} }
- Connector works just fine with and without Schema Registry
format.output.envelope=false
is ignored if the value is not of typeorg.apache.avro.Schema.Type.RECORD
ororg.apache.avro.Schema.Type.MAP
.
There are six configuration properties to configure retry strategy exist.
kafka.retry.backoff.ms
- The retry backoff in milliseconds. This config is used to notify Apache Kafka Connect to retry delivering a message batch or performing recovery in case of transient exceptions. Maximum value is24
hours.
gcs.retry.backoff.initial.delay.ms
- Initial retry delay in milliseconds. This config controls the delay before the first retry. Subsequent retries will use this value adjusted according to thegcs.retry.backoff.delay.multiplier
. The default value is1000 ms
.gcs.retry.backoff.delay.multiplier
- Retry delay multiplier. This config controls the change in retry delay. The retry delay of the previous call is multiplied by it to calculate the retry delay for the next call. The default value is2.0
.gcs.retry.backoff.max.delay.ms
- Maximum retry delay in milliseconds. This config puts a limit on the value of the retry delay, so that thegcs.retry.backoff.delay.multiplier
value can't increase the retry delay higher than this amount. The default value is32 000
ms.gcs.retry.backoff.total.timeout.ms
- Retry total timeout in milliseconds. This config controls over how long the logic should keep trying the remote call until it gives up completely. The default value is50 000
ms. The maximum value is24
hours.gcs.retry.backoff.max.attempts
- Retry max attempts. This config defines the maximum number of attempts to perform. The default value is6
.
Here you can read about the Connect workers configuration and here, about the connector Configuration.
Here is an example connector configuration with descriptions:
### Standard connector configuration
## Fill in your values in these:
# Unique name for the connector.
# Attempting to register again with the same name will fail.
name=my-gcs-connector
## These must have exactly these values:
# The Java class for the connector
connector.class=io.aiven.kafka.connect.gcs.GcsSinkConnector
# The key converter for this connector
key.converter=org.apache.kafka.connect.storage.StringConverter
# The value converter for this connector
value.converter=org.apache.kafka.connect.json.JsonConverter
# Identify, if value contains a schema.
# Required value converter is `org.apache.kafka.connect.json.JsonConverter`.
value.converter.schemas.enable=false
# The type of data format used to write data to the GCS output files.
# The supported values are: `csv`, `json`, `jsonl` and `parquet`.
# Optional, the default is `csv`.
format.output.type=jsonl
# A comma-separated list of topics to use as input for this connector
# Also a regular expression version `topics.regex` is supported.
# See https://kafka.apache.org/documentation/#connect_configuring
topics=topic1,topic2
### Connector-specific configuration
### Fill in you values
# The name of the GCS bucket to use
# Required.
gcs.bucket.name=my-gcs-bucket
## The following two options are used to specify GCP credentials.
## See the overview of GCP authentication:
## - https://cloud.google.com/docs/authentication/
## - https://cloud.google.com/docs/authentication/production
## If they both are not present, the connector will try to detect
## the credentials automatically.
## If only one is present, the connector will use it to get the credentials.
## If both are present, this is an error.
# The path to a GCP credentials file.
# Optional, the default is null.
gcs.credentials.path=/some/path/google_credentials.json
# GCP credentials as a JSON object.
# Optional, the default is null.
gcs.credentials.json={"type":"...", ...}
##
# The set of the fields that are to be output, comma separated.
# Supported values are: `key`, `value`, `offset`, `timestamp`, and `headers`.
# Optional, the default is `value`.
format.output.fields=key,value,offset,timestamp,headers
# The option to enable/disable wrapping of plain values into additional JSON object(aka envelope)
# Optional, the default value is `true`.
format.output.envelope=true
# The prefix to be added to the name of each file put on GCS.
# See the GCS naming requirements https://cloud.google.com/storage/docs/naming
# Optional, the default is empty.
file.name.prefix=some-prefix/
# The compression type used for files put on GCS.
# The supported values are: `gzip`, `snappy`, `zstd`, `none`.
# Optional, the default is `none`.
file.compression.type=gzip
# The time zone in which timestamps are represented.
# Accepts short and long standard names like: `UTC`, `PST`, `ECT`,
# `Europe/Berlin`, `Europe/Helsinki`, or `America/New_York`.
# For more information please refer to https://docs.oracle.com/javase/tutorial/datetime/iso/timezones.html.
# The default is `UTC`.
file.name.timestamp.timezone=Europe/Berlin
# The source of timestamps.
# Supports only `wallclock` which is the default value.
file.name.timestamp.source=wallclock
# The file name template.
# See "File name format" section.
# Optional, the default is `{{topic}}-{{partition:padding=false}}-{{start_offset:padding=false}}` or
# `{{topic}}-{{partition:padding=false}}-{{start_offset:padding=false}}.gz` if the compression is enabled.
file.name.template={{topic}}-{{partition:padding=true}}-{{start_offset:padding=true}}.gz
The connector releases are available in the Releases section.
Release JARs are available in Maven Central:
<dependency>
<groupId>io.aiven</groupId>
<artifactId>gcs-connector-for-apache-kafka</artifactId>
<version>x.y.z</version>
</dependency>
This project depends on Common Module for Apache Kafka Connect. Normally, an artifact from a globally accessible repository is used. However, if you need to introduce changes to both this connector and Common Module for Apache Kafka Connect library at the same time, you should short-circuit the development loop via locally published artifacts. Please follow these steps:
- Checkout the
main
HEAD
of Common Module for Apache Kafka Connect. - Ensure the version here is with
-SNAPSHOT
prefix. - Make changes to Common Module for Apache Kafka Connect.
- Publish it locally with
./gradlew publishToMavenLocal
. - Change the version in the connector's
build.gradle
(ext.aivenConnectCommonsVersion
) to match the published snapshot version of Common Module for Apache Kafka Connect.
After that, the latest changes you've done to Common Module for Apache Kafka Connect will be used.
When you finish developing the feature and is sure Common Module for Apacha Kafka Connect won't need to change:
- Make a proper release of Common Module for Apache Kafka Connect.
- Publish the artifact to the currently used globally accessible repository.
- Change the version of Common Module for Apache Kafka Connect in the connector to the published one.
Integration tests are implemented using JUnit, Gradle and Docker.
To run them, you need:
- a GCS bucket with the read-write permissions;
- Docker installed.
In order to run the integration tests, execute from the project root directory:
./gradlew clean integrationTest -PtestGcsBucket=test-bucket-name
where PtestGcsBucket
is the name of the GCS bucket to use.
The default GCP credentials will be used during the test (see the GCP documentation and the comment in GCP SDK code). This can be overridden either by setting the path to the GCP credentials file or by setting the credentials JSON string explicitly. (See Configuration section for details).
To specify the GCS credentials path, use gcsCredentialsPath
property:
./gradlew clean integrationTest -PtestGcsBucket=test-bucket-name \
-PgcsCredentialsPath=/path/to/credentials.json
To specify the GCS credentials JSON, use gcsCredentialsJson
property:
./gradlew clean integrationTest -PtestGcsBucket=test-bucket-name \
-PgcsCredentialsJson='{type":"...", ...}'
Gradle allows setting properties using environment variables, for
example, ORG_GRADLE_PROJECT_testGcsBucket=test-bucket-name
. See more
about the ways to set properties
here.
TBD
This project is licensed under the Apache License, Version 2.0.
Apache Kafka, Apache Kafka Connect are either registered trademarks or trademarks of the Apache Software Foundation in the United States and/or other countries. Google Cloud Storage (GCS) is a trademark and property of their respective owners. All product and service names used in this website are for identification purposes only and do not imply endorsement.