HDFS Connector¶
The HDFS connector allows you to export data from Kafka topics to HDFS files in a variety of formats and integrates with Hive to make data immediately available for querying with HiveQL.
The connector periodically polls data from Kafka and writes them to HDFS. The data from each Kafka topic is partitioned by the provided partitioner and divided into chunks. Each chunk of data is represented as an HDFS file with topic, kafka partition, start and end offsets of this data chunk in the filename. If no partitioner is specified in the configuration, the default partitioner which preserves the Kafka partitioning is used. The size of each data chunk is determined by the number of records written to HDFS, the time written to HDFS and schema compatibility.
The HDFS connector integrates with Hive and when it is enabled, the connector automatically creates an external Hive partitioned table for each Kafka topic and updates the table according to the available data in HDFS.
Quickstart¶
In this Quickstart, we use the HDFS connector to export data produced by the Avro console producer to HDFS.
Before you start the Confluent services, make sure Hadoop is running locally or remotely and that you know the HDFS url. For Hive integration, you need to have Hive installed and to know the metastore thrift uri.
This Quickstart assumes that you started the required services with the default configurations and you should make necessary changes according to the actual configurations used.
Note
You need to make sure the connector user have write access to the directories
specified in topics.dir
and logs.dir
. The default value of topics.dir
is
/topics
and the default value of logs.dir
is /logs
, if you don’t specify the two
configurations, make sure that the connector user has write access to /topics
and /logs
.
You may need to create /topics
and /logs
before running the connector as the connector
usually don’t have write access to /
.
Also, this Quickstart assumes that security is not configured for HDFS and Hive metastore, please make the necessary configurations change following Secure HDFS and Hive Metastore section.
First, start all the necessary services using Confluent CLI.
Tip
If not already in your PATH, add Confluent’s bin
directory by running: export PATH=<path-to-confluent>/bin:$PATH
$ confluent start
Every service will start in order, printing a message with its status:
Starting zookeeper
zookeeper is [UP]
Starting kafka
kafka is [UP]
Starting schema-registry
schema-registry is [UP]
Starting kafka-rest
kafka-rest is [UP]
Starting connect
connect is [UP]
Next, start the Avro console producer to import a few records to Kafka:
$ ./bin/kafka-avro-console-producer --broker-list localhost:9092 --topic test_hdfs \
--property value.schema='{"type":"record","name":"myrecord","fields":[{"name":"f1","type":"string"}]}'
Then in the console producer, type in:
{"f1": "value1"}
{"f1": "value2"}
{"f1": "value3"}
The three records entered are published to the Kafka topic test_hdfs
in Avro format.
Before starting the connector, please make sure that the configurations in
etc/kafka-connect-hdfs/quickstart-hdfs.properties
are properly set to your configurations of
Hadoop, e.g. hdfs.url
points to the proper HDFS and using FQDN in the host. Then start connector by loading its
configuration with the following command:
$ confluent load hdfs-sink -d etc/kafka-connect-hdfs/quickstart-hdfs.properties
{
"name": "hdfs-sink",
"config": {
"connector.class": "io.confluent.connect.hdfs.HdfsSinkConnector",
"tasks.max": "1",
"topics": "test_hdfs",
"hdfs.url": "hdfs://localhost:9000",
"flush.size": "3",
"name": "hdfs-sink"
},
"tasks": []
}
To check that the connector started successfully view the Connect worker’s log by running:
$ confluent log connect
Towards the end of the log you should see that the connector starts, logs a few messages, and then exports data from Kafka to HDFS. Once the connector finishes ingesting data to HDFS, check that the data is available in HDFS:
$ hadoop fs -ls /topics/test_hdfs/partition=0
You should see a file with name /topics/test_hdfs/partition=0/test_hdfs+0+0000000000+0000000002.avro
The file name is encoded as topic+kafkaPartition+startOffset+endOffset.format
.
You can use avro-tools-1.8.2.jar
(available in Apache mirrors)
to extract the content of the file. Run avro-tools
directly on Hadoop as:
$ hadoop jar avro-tools-1.8.2.jar tojson \
hdfs://<namenode>/topics/test_hdfs/partition=0/test_hdfs+0+0000000000+0000000002.avro
where “<namenode>” is the HDFS name node hostname.
or, if you experience issues, first copy the avro file from HDFS to the local filesystem and try again with java:
$ hadoop fs -copyToLocal /topics/test_hdfs/partition=0/test_hdfs+0+0000000000+0000000002.avro \
/tmp/test_hdfs+0+0000000000+0000000002.avro
$ java -jar avro-tools-1.8.2.jar tojson /tmp/test_hdfs+0+0000000000+0000000002.avro
You should see the following output:
{"f1":"value1"}
{"f1":"value2"}
{"f1":"value3"}
Finally, stop the Connect worker as well as all the rest of the Confluent services by running:
$ confluent stop
Stopping connect
connect is [DOWN]
Stopping kafka-rest
kafka-rest is [DOWN]
Stopping schema-registry
schema-registry is [DOWN]
Stopping kafka
kafka is [DOWN]
Stopping zookeeper
zookeeper is [DOWN]
or stop all the services and additionally wipe out any data generated during this quickstart by running:
$ confluent destroy
Stopping connect
connect is [DOWN]
Stopping kafka-rest
kafka-rest is [DOWN]
Stopping schema-registry
schema-registry is [DOWN]
Stopping kafka
kafka is [DOWN]
Stopping zookeeper
zookeeper is [DOWN]
Deleting: /tmp/confluent.w1CpYsaI
Note
If you want to run the Quickstart with Hive integration, before starting the connector,
you need to add the following configurations to
etc/kafka-connect-hdfs/quickstart-hdfs.properties
:
hive.integration=true
hive.metastore.uris=thrift uri to your Hive metastore
schema.compatibility=BACKWARD
After the connector finishes ingesting data to HDFS, you can use Hive to check the data:
$hive>SELECT * FROM test_hdfs;
Note
If you leave the hive.metastore.uris
empty, an embedded Hive metastore will be
created in the directory the connector is started. You need to start Hive in that specific
directory to query the data.
Features¶
The HDFS connector offers a bunch of features:
- Exactly Once Delivery: The connector uses a write ahead log to ensure each record exports to HDFS exactly once. Also, the connector manages offsets commit by encoding the Kafka offset information into the file so that the we can start from the last committed offsets in case of failures and task restarts.
- Extensible Data Format: Out of the box, the connector supports writing data to HDFS in Avro
and Parquet format. Also, you can write other formats to HDFS by extending the
Format
class. - Hive Integration: The connector supports Hive integration out of the box, and when it is enabled, the connector automatically creates a Hive external partitioned table for each topic exported to HDFS.
- Schema Evolution: The connector supports schema evolution and different schema compatibility
levels. When the connector observes a schema change, it projects to the proper schema according
to the
schema.compatibility
configuration. Hive integration is supported ifBACKWARD
,FORWARD
andFULL
is specified forschema.compatibility
and Hive tables have the table schema that are able to query the whole data under a topic written with different schemas. - Secure HDFS and Hive Metastore Support: The connector supports Kerberos authentication and thus works with secure HDFS and Hive metastore.
- Pluggable Partitioner: The connector supports default partitioner, field partitioner, and
time based partitioner including daily and hourly partitioner out of the box. You can implement
your own partitioner by extending the
Partitioner
class. Plus, you can customize time based partitioner by extending theTimeBasedPartitioner
class.
Configuration¶
This section gives example configurations that cover common scenarios, then provides an exhaustive description of the available configuration options.
Example¶
Here is the content of etc/kafka-connect-hdfs/quickstart-hdfs.properties
:
name=hdfs-sink
connector.class=io.confluent.connect.hdfs.HdfsSinkConnector
tasks.max=1
topics=test_hdfs
hdfs.url=hdfs://localhost:9000
flush.size=3
The first few settings are common settings you’ll specify for all connectors. The topics
specifies the topics we want to export data from, in this case test_hdfs
. The hdfs.url
specifies the HDFS we are writing data to and you should set this according to your configuration.
The flush.size
specifies the number of records the connector need to write before invoking file
commits.
Note
For HA HDFS deployments you will need to include hadoop.conf.dir
, setting it to a directory which includes hdfs-site.xml. Once hdfs-site.xml is in place and hadoop.conf.dir
has been set, hdfs.url
may be set to the namenodes nameservice id. i.e. ‘nameservice1’ .
Format and Partitioner¶
You need to specify the format.class
and partitioner.class
if you want to write other
formats to HDFS or use other partitioners. The following example configurations demonstrates how to
write Parquet format and use hourly partitioner:
format.class=io.confluent.connect.hdfs.parquet.ParquetFormat
partitioner.class=io.confluent.connect.hdfs.partitioner.HourlyPartitioner
Note
If you want to use the field partitioner, you need to specify the partition.field.name
configuration as well to specify the field name of the record.
Hive Integration¶
At minimum, you need to specify hive.integration
, hive.metastore.uris
and
schema.compatibility
when integrating Hive. Here is an example configuration:
hive.integration=true
hive.metastore.uris=thrift://localhost:9083 # FQDN for the host part
schema.compatibility=BACKWARD
You should adjust the hive.metastore.uris
according to your Hive configurations.
Note
If you don’t specify the hive.metastore.uris
, the connector will use a local metastore
with Derby in the directory running the connector. You need to run Hive in this directory
in order to see the Hive metadata change.
Note
As connector tasks are long running, the connections to Hive metastore are kept open
until tasks are stopped. In the default Hive configuration, reconnecting to Hive metastore creates
a new connection. When the number of tasks is large, it is possible that the retries can cause
the number of open connections to exceed the max allowed connections in the operating system.
Thus it is recommended to set hcatalog.hive.client.cache.disabled
to true
in hive.xml
.
Also, to support schema evolution, the schema.compatibility
to be BACKWARD
, FORWARD
and
FULL
. This ensures that Hive can query the data written to HDFS with different schemas using the
latest Hive table schema. Please find more information on schema compatibility in the
Schema Evolution section.
Secure HDFS and Hive Metastore¶
To work with secure HDFS and Hive metastore, you need to specify hdfs.authentication.kerberos
,
connect.hdfs.principal
, connect.keytab
, hdfs.namenode.principal
:
hdfs.authentication.kerberos=true
connect.hdfs.principal=connect-hdfs/[email protected]
connect.hdfs.keytab=path to the connector keytab
hdfs.namenode.principal=namenode principal
You need to create the Kafka connect principals and keytab files via Kerberos and distribute the keytab file to all hosts that running the connector and ensures that only the connector user has read access to the keytab file.
Note
When security is enabled, you need to use FQDN for the host part of
hdfs.url
and hive.metastore.uris
.
Note
Currently, the connector requires that the principal and the keytab path to be the same
on all the hosts running the connector. The host part of the hdfs.namenode.prinicipal
needs
to be the actual FQDN of the Namenode host instead of the _HOST
placeholder.
Schema Evolution¶
The HDFS connector supports schema evolution and reacts to schema changes of data according to the
schema.compatibility
configuration. In this section, we will explain how the
connector reacts to schema evolution under different values of schema.compatibility
. The
schema.compatibility
can be set to NONE
, BACKWARD
, FORWARD
and FULL
, which means
NO compatibility, BACKWARD compatibility, FORWARD compatibility and FULL compatibility respectively.
NO Compatibility: By default, the
schema.compatibility
is set toNONE
. In this case, the connector ensures that each file written to HDFS has the proper schema. When the connector observes a schema change in data, it commits the current set of files for the affected topic partitions and writes the data with new schema in new files.BACKWARD Compatibility: If a schema is evolved in a backward compatible way, we can always use the latest schema to query all the data uniformly. For example, removing fields is backward compatible change to a schema, since when we encounter records written with the old schema that contain these fields we can just ignore them. Adding a field with a default value is also backward compatible.
If
BACKWARD
is specified in theschema.compatibility
, the connector keeps track of the latest schema used in writing data to HDFS, and if a data record with a schema version larger than current latest schema arrives, the connector commits the current set of files and writes the data record with new schema to new files. For data records arriving at a later time with schema of an earlier version, the connector projects the data record to the latest schema before writing to the same set of files in HDFS.FORWARD Compatibility: If a schema is evolved in a forward compatible way, we can always use the oldest schema to query all the data uniformly. Removing a field that had a default value is forward compatible, since the old schema will use the default value when the field is missing.
If
FORWARD
is specified in theschema.compatibility
, the connector projects the data to the oldest schema before writing to the same set of files in HDFS.Full Compatibility: Full compatibility means that old data can be read with the new schema and new data can also be read with the old schema.
If
FULL
is specified in theschema.compatibility
, the connector performs the same action asBACKWARD
.
If Hive integration is enabled, we need to specify the schema.compatibility
to be BACKWARD
,
FORWARD
or FULL
. This ensures that the Hive table schema is able to query all the data under
a topic written with different schemas. If the schema.compatibility
is set to BACKWARD
or
FULL
, the Hive table schema for a topic will be equivalent to the latest schema in the HDFS files
under that topic that can query the whole data of that topic. If the schema.compatibility
is
set to FORWARD
, the Hive table schema of a topic is equivalent to the oldest schema of the HFDS
files under that topic that can query the whole data of that topic.