Connectors

Reading from file systems

Flink has build-in support for the following file systems:

Filesystem Scheme Notes
Hadoop Distributed File System (HDFS)   hdfs:// All HDFS versions are supported
Amazon S3 s3:// Support through Hadoop file system implementation (see below)
MapR file system maprfs:// The user has to manually place the required jar files in the lib/ dir
Alluxio alluxio://   Support through Hadoop file system implementation (see below)

Using Hadoop file system implementations

Apache Flink allows users to use any file system implementing the org.apache.hadoop.fs.FileSystem interface. There are Hadoop FileSystem implementations for

In order to use a Hadoop file system with Flink, make sure that

  • the flink-conf.yaml has set the fs.hdfs.hadoopconf property set to the Hadoop configuration directory.
  • the Hadoop configuration (in that directory) has an entry for the required file system. Examples for S3 and Alluxio are shown below.
  • the required classes for using the file system are available in the lib/ folder of the Flink installation (on all machines running Flink). If putting the files into the directory is not possible, Flink is also respecting the HADOOP_CLASSPATH environment variable to add Hadoop jar files to the classpath.

Amazon S3

For Amazon S3 support add the following entries into the core-site.xml file:

<!-- configure the file system implementation -->
<property>
  <name>fs.s3.impl</name>
  <value>org.apache.hadoop.fs.s3native.NativeS3FileSystem</value>
</property>

<!-- set your AWS ID -->
<property>
  <name>fs.s3.awsAccessKeyId</name>
  <value>putKeyHere</value>
</property>

<!-- set your AWS access key -->
<property>
  <name>fs.s3.awsSecretAccessKey</name>
  <value>putSecretHere</value>
</property>

Alluxio

For Alluxio support add the following entry into the core-site.xml file:

<property>
  <name>fs.alluxio.impl</name>
  <value>alluxio.hadoop.FileSystem</value>
</property>

Connecting to other systems using Input/OutputFormat wrappers for Hadoop

Apache Flink allows users to access many different systems as data sources or sinks. The system is designed for very easy extensibility. Similar to Apache Hadoop, Flink has the concept of so called InputFormats and OutputFormats.

One implementation of these InputFormats is the HadoopInputFormat. This is a wrapper that allows users to use all existing Hadoop input formats with Flink.

This section shows some examples for connecting Flink to other systems. Read more about Hadoop compatibility in Flink.

Flink has extensive build-in support for Apache Avro. This allows to easily read from Avro files with Flink. Also, the serialization framework of Flink is able to handle classes generated from Avro schemas.

In order to read data from an Avro file, you have to specify an AvroInputFormat.

Example:

AvroInputFormat<User> users = new AvroInputFormat<User>(in, User.class);
DataSet<User> usersDS = env.createInput(users);

Note that User is a POJO generated by Avro. Flink also allows to perform string-based key selection of these POJOs. For example:

usersDS.groupBy("name")

Note that using the GenericData.Record type is possible with Flink, but not recommended. Since the record contains the full schema, its very data intensive and thus probably slow to use.

Flink’s POJO field selection also works with POJOs generated from Avro. However, the usage is only possible if the field types are written correctly to the generated class. If a field is of type Object you can not use the field as a join or grouping key. Specifying a field in Avro like this {"name": "type_double_test", "type": "double"}, works fine, however specifying it as a UNION-type with only one field ({"name": "type_double_test", "type": ["double"]},) will generate a field of type Object. Note that specifying nullable types ({"name": "type_double_test", "type": ["null", "double"]},) is possible!

Access Microsoft Azure Table Storage

Note: This example works starting from Flink 0.6-incubating

This example is using the HadoopInputFormat wrapper to use an existing Hadoop input format implementation for accessing Azure’s Table Storage.

  1. Download and compile the azure-tables-hadoop project. The input format developed by the project is not yet available in Maven Central, therefore, we have to build the project ourselves. Execute the following commands:

    git clone https://github.com/mooso/azure-tables-hadoop.git
    cd azure-tables-hadoop
    mvn clean install
  2. Setup a new Flink project using the quickstarts:

    curl https://flink.apache.org/q/quickstart.sh | bash
  3. Add the following dependencies (in the <dependencies> section) to your pom.xml file:

    <dependency>
        <groupId>org.apache.flink</groupId>
        <artifactId>flink-hadoop-compatibility_2.10</artifactId>
        <version>1.2-SNAPSHOT</version>
    </dependency>
    <dependency>
      <groupId>com.microsoft.hadoop</groupId>
      <artifactId>microsoft-hadoop-azure</artifactId>
      <version>0.0.4</version>
    </dependency>

    flink-hadoop-compatibility is a Flink package that provides the Hadoop input format wrappers. microsoft-hadoop-azure is adding the project we’ve build before to our project.

The project is now prepared for starting to code. We recommend to import the project into an IDE, such as Eclipse or IntelliJ. (Import as a Maven project!). Browse to the code of the Job.java file. Its an empty skeleton for a Flink job.

Paste the following code into it:

import java.util.Map;
import org.apache.flink.api.common.functions.MapFunction;
import org.apache.flink.api.java.DataSet;
import org.apache.flink.api.java.ExecutionEnvironment;
import org.apache.flink.api.java.tuple.Tuple2;
import org.apache.flink.hadoopcompatibility.mapreduce.HadoopInputFormat;
import org.apache.hadoop.io.Text;
import org.apache.hadoop.mapreduce.Job;
import com.microsoft.hadoop.azure.AzureTableConfiguration;
import com.microsoft.hadoop.azure.AzureTableInputFormat;
import com.microsoft.hadoop.azure.WritableEntity;
import com.microsoft.windowsazure.storage.table.EntityProperty;

public class AzureTableExample {

  public static void main(String[] args) throws Exception {
    // set up the execution environment
    final ExecutionEnvironment env = ExecutionEnvironment.getExecutionEnvironment();

    // create a  AzureTableInputFormat, using a Hadoop input format wrapper
    HadoopInputFormat<Text, WritableEntity> hdIf = new HadoopInputFormat<Text, WritableEntity>(new AzureTableInputFormat(), Text.class, WritableEntity.class, new Job());

    // set the Account URI, something like: https://apacheflink.table.core.windows.net
    hdIf.getConfiguration().set(AzureTableConfiguration.Keys.ACCOUNT_URI.getKey(), "TODO");
    // set the secret storage key here
    hdIf.getConfiguration().set(AzureTableConfiguration.Keys.STORAGE_KEY.getKey(), "TODO");
    // set the table name here
    hdIf.getConfiguration().set(AzureTableConfiguration.Keys.TABLE_NAME.getKey(), "TODO");

    DataSet<Tuple2<Text, WritableEntity>> input = env.createInput(hdIf);
    // a little example how to use the data in a mapper.
    DataSet<String> fin = input.map(new MapFunction<Tuple2<Text,WritableEntity>, String>() {
      @Override
      public String map(Tuple2<Text, WritableEntity> arg0) throws Exception {
        System.err.println("--------------------------------\nKey = "+arg0.f0);
        WritableEntity we = arg0.f1;

        for(Map.Entry<String, EntityProperty> prop : we.getProperties().entrySet()) {
          System.err.println("key="+prop.getKey() + " ; value (asString)="+prop.getValue().getValueAsString());
        }

        return arg0.f0.toString();
      }
    });

    // emit result (this works only locally)
    fin.print();

    // execute program
    env.execute("Azure Example");
  }
}

The example shows how to access an Azure table and turn data into Flink’s DataSet (more specifically, the type of the set is DataSet<Tuple2<Text, WritableEntity>>). With the DataSet, you can apply all known transformations to the DataSet.

Access MongoDB

This GitHub repository documents how to use MongoDB with Apache Flink (starting from 0.7-incubating).