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Working with different versions of Hadoop
Druid can interact with Hadoop in two ways:
- Use HDFS for deep storage using the druid-hdfs-storage extension.
- Batch-load data from Hadoop using Map/Reduce jobs.
These are not necessarily linked together; you can load data with Hadoop jobs into a non-HDFS deep storage (like S3), and you can use HDFS for deep storage even if you're loading data from streams rather than using Hadoop jobs.
For best results, use these tips when configuring Druid to interact with your favorite Hadoop distribution.
Tip #1: Place Hadoop XMLs on Druid classpath
Place your Hadoop configuration XMLs (core-site.xml, hdfs-site.xml, yarn-site.xml, mapred-site.xml) on the classpath
of your Druid nodes. You can do this by copying them into conf/druid/_common/core-site.xml
,
conf/druid/_common/hdfs-site.xml
, and so on. This allows Druid to find your Hadoop cluster and properly submit jobs.
Tip #2: Classloader modification on Hadoop (Map/Reduce jobs only)
Druid uses a number of libraries that are also likely present on your Hadoop cluster, and if these libraries conflict,
your Map/Reduce jobs can fail. This problem can be avoided by enabling classloader isolation using the Hadoop job
property mapreduce.job.classloader = true
. This instructs Hadoop to use a separate classloader for Druid dependencies
and for Hadoop's own dependencies.
If your version of Hadoop does not support this functionality, you can also try setting the property
mapreduce.job.user.classpath.first = true
. This instructs Hadoop to prefer loading Druid's version of a library when
there is a conflict.
Generally, you should only set one of these parameters, not both.
These properties can be set in either one of the following ways:
- Using the task definition, e.g. add
"mapreduce.job.classloader": "true"
to thejobProperties
of thetuningConfig
of your indexing task (see the batch ingestion documentation). - Using system properties, e.g. on the middleManager set
druid.indexer.runner.javaOpts=... -Dhadoop.mapreduce.job.classloader=true
.
Overriding specific classes
When mapreduce.job.classloader = true
, it is also possible to specifically define which classes should be loaded from the hadoop system classpath and which should be loaded from job-supplied JARs.
This is controlled by defining class inclusion/exclusion patterns in the mapreduce.job.classloader.system.classes
property in the jobProperties
of tuningConfig
.
For example, some community members have reported version incompatibility errors with the Validator class:
Error: java.lang.ClassNotFoundException: javax.validation.Validator
The following jobProperties
excludes javax.validation.
classes from being loaded from the system classpath, while including those from java.,javax.,org.apache.commons.logging.,org.apache.log4j.,org.apache.hadoop.
.
"jobProperties": {
"mapreduce.job.classloader": "true",
"mapreduce.job.classloader.system.classes": "-javax.validation.,java.,javax.,org.apache.commons.logging.,org.apache.log4j.,org.apache.hadoop."
}
mapred-default.xml documentation contains more information about this property.
Tip #3: Use specific versions of Hadoop libraries
Druid loads Hadoop client libraries from two different locations. Each set of libraries is loaded in an isolated classloader.
- HDFS deep storage uses jars from
extensions/druid-hdfs-storage/
to read and write Druid data on HDFS. - Batch ingestion uses jars from
hadoop-dependencies/
to submit Map/Reduce jobs (location customizable via thedruid.extensions.hadoopDependenciesDir
runtime property; see Configuration).
hadoop-client:2.3.0
is the default version of the Hadoop client bundled with Druid for both purposes. This works with
many Hadoop distributions (the version does not necessarily need to match), but if you run into issues, you can instead
have Druid load libraries that exactly match your distribution. To do this, either copy the jars from your Hadoop
cluster, or use the pull-deps
tool to download the jars from a Maven repository.
Preferred: Load using Druid's standard mechanism
If you have issues with HDFS deep storage, you can switch your Hadoop client libraries by recompiling the
druid-hdfs-storage extension using an alternate version of the Hadoop client libraries. You can do this by editing
the main Druid pom.xml and rebuilding the distribution by running mvn package
.
If you have issues with Map/Reduce jobs, you can switch your Hadoop client libraries without rebuilding Druid. You can
do this by adding a new set of libraries to the hadoop-dependencies/
directory (or another directory specified by
druid.extensions.hadoopDependenciesDir) and then using hadoopDependencyCoordinates
in the
Hadoop Index Task to specify the Hadoop dependencies you want Druid to load.
Example:
Suppose you specify druid.extensions.hadoopDependenciesDir=/usr/local/druid_tarball/hadoop-dependencies
, and you have downloaded
hadoop-client
2.3.0 and 2.4.0, either by copying them from your Hadoop cluster or by using pull-deps
to download
the jars from a Maven repository. Then underneath hadoop-dependencies
, your jars should look like this:
hadoop-dependencies/
└── hadoop-client
├── 2.3.0
│ ├── activation-1.1.jar
│ ├── avro-1.7.4.jar
│ ├── commons-beanutils-1.7.0.jar
│ ├── commons-beanutils-core-1.8.0.jar
│ ├── commons-cli-1.2.jar
│ ├── commons-codec-1.4.jar
..... lots of jars
└── 2.4.0
├── activation-1.1.jar
├── avro-1.7.4.jar
├── commons-beanutils-1.7.0.jar
├── commons-beanutils-core-1.8.0.jar
├── commons-cli-1.2.jar
├── commons-codec-1.4.jar
..... lots of jars
As you can see, under hadoop-client
, there are two sub-directories, each denotes a version of hadoop-client
.
Next, use hadoopDependencyCoordinates
in Hadoop Index Task to specify the Hadoop dependencies you want Druid to load.
For example, in your Hadoop Index Task spec file, you can write:
"hadoopDependencyCoordinates": ["org.apache.hadoop:hadoop-client:2.4.0"]
This instructs Druid to load hadoop-client 2.4.0 when processing the task. What happens behind the scene is that Druid first looks for a folder
called hadoop-client
underneath druid.extensions.hadoopDependenciesDir
, then looks for a folder called 2.4.0
underneath hadoop-client
, and upon successfully locating these folders, hadoop-client 2.4.0 is loaded.
Alternative: Append your Hadoop jars to the Druid classpath
You can also load Hadoop client libraries in Druid's main classloader, rather than an isolated classloader. This mechanism is relatively easy to reason about, but it also means that you have to ensure that all dependency jars on the classpath are compatible. That is, Druid makes no provisions while using this method to maintain class loader isolation so you must make sure that the jars on your classpath are mutually compatible.
- Set
druid.indexer.task.defaultHadoopCoordinates=[]
. By setting this to an empty list, Druid will not load any other Hadoop dependencies except the ones specified in the classpath. - Append your Hadoop jars to Druid's classpath. Druid will load them into the system.
Notes on specific Hadoop distributions
If the tips above do not solve any issues you are having with HDFS deep storage or Hadoop batch indexing, you may have luck with one of the following suggestions contributed by the Druid community.
CDH
Members of the community have reported dependency conflicts between the version of Jackson used in CDH and Druid when running a Mapreduce job like:
java.lang.VerifyError: class com.fasterxml.jackson.datatype.guava.deser.HostAndPortDeserializer overrides final method deserialize.(Lcom/fasterxml/jackson/core/JsonParser;Lcom/fasterxml/jackson/databind/DeserializationContext;)Ljava/lang/Object;
Preferred workaround
First, try the tip under "Classloader modification on Hadoop" above. More recent versions of CDH have been reported to
work with the classloader isolation option (mapreduce.job.classloader = true
).
Alternate workaround - 1
You can try editing Druid's pom.xml dependencies to match the version of Jackson in your Hadoop version and recompile Druid.
For more about building Druid, please see Building Druid.
Alternate workaround - 2
Another workaround solution is to build a custom fat jar of Druid using sbt, which manually excludes all the conflicting Jackson dependencies, and then put this fat jar in the classpath of the command that starts overlord indexing service. To do this, please follow the following steps.
(1) Download and install sbt.
(2) Make a new directory named 'druid_build'.
(3) Cd to 'druid_build' and create the build.sbt file with the content here.
You can always add more building targets or remove the ones you don't need.
(4) In the same directory create a new directory named 'project'.
(5) Put the druid source code into 'druid_build/project'.
(6) Create a file 'druid_build/project/assembly.sbt' with content as follows.
addSbtPlugin("com.eed3si9n" % "sbt-assembly" % "0.13.0")
(7) In the 'druid_build' directory, run 'sbt assembly'.
(8) In the 'druid_build/target/scala-2.10' folder, you will find the fat jar you just build.
(9) Make sure the jars you've uploaded has been completely removed. The HDFS directory is by default '/tmp/druid-indexing/classpath'.
(10) Include the fat jar in the classpath when you start the indexing service. Make sure you've removed 'lib/*' from your classpath because now the fat jar includes all you need.
Alternate workaround - 3
If sbt is not your choice, you can also use maven-shade-plugin
to make a fat jar: relocation all jackson packages will resolve it too. In this way, druid will not be affected by jackson library embedded in hadoop. Please follow the steps below:
(1) Add all extensions you needed to services/pom.xml
like
<dependency>
<groupId>io.druid.extensions</groupId>
<artifactId>druid-avro-extensions</artifactId>
<version>${project.parent.version}</version>
</dependency>
<dependency>
<groupId>io.druid.extensions.contrib</groupId>
<artifactId>druid-parquet-extensions</artifactId>
<version>${project.parent.version}</version>
</dependency>
<dependency>
<groupId>io.druid.extensions</groupId>
<artifactId>druid-hdfs-storage</artifactId>
<version>${project.parent.version}</version>
</dependency>
<dependency>
<groupId>io.druid.extensions</groupId>
<artifactId>mysql-metadata-storage</artifactId>
<version>${project.parent.version}</version>
</dependency>
(2) Shade jackson packages and assemble a fat jar.
<plugin>
<groupId>org.apache.maven.plugins</groupId>
<artifactId>maven-shade-plugin</artifactId>
<executions>
<execution>
<phase>package</phase>
<goals>
<goal>shade</goal>
</goals>
<configuration>
<outputFile>
${project.build.directory}/${project.artifactId}-${project.version}-selfcontained.jar
</outputFile>
<relocations>
<relocation>
<pattern>com.fasterxml.jackson</pattern>
<shadedPattern>shade.com.fasterxml.jackson</shadedPattern>
</relocation>
</relocations>
<artifactSet>
<includes>
<include>*:*</include>
</includes>
</artifactSet>
<filters>
<filter>
<artifact>*:*</artifact>
<excludes>
<exclude>META-INF/*.SF</exclude>
<exclude>META-INF/*.DSA</exclude>
<exclude>META-INF/*.RSA</exclude>
</excludes>
</filter>
</filters>
<transformers>
<transformer implementation="org.apache.maven.plugins.shade.resource.ServicesResourceTransformer"/>
</transformers>
</configuration>
</execution>
</executions>
</plugin>
Copy out services/target/xxxxx-selfcontained.jar
after mvn install
in project root for further usage.
(3) run hadoop indexer (post an indexing task is not possible now) as below. lib
is not needed anymore. As hadoop indexer is a standalone tool, you don't have to replace the jars of your running services:
java -Xmx32m \
-Dfile.encoding=UTF-8 -Duser.timezone=UTC \
-classpath config/hadoop:config/overlord:config/_common:$SELF_CONTAINED_JAR:$HADOOP_DISTRIBUTION/etc/hadoop \
-Djava.security.krb5.conf=$KRB5 \
io.druid.cli.Main index hadoop \
$config_path