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Hadoop-BAM is a Java library for the manipulation of files in common bioinformatics formats using the Hadoop MapReduce framework with the Picard SAM JDK, and command line tools similar to SAMtools.

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Hadoop-BAM

Hadoop-BAM: a library for the manipulation of files in common bioinformatics formats using the Hadoop MapReduce framework, and command line tools in the vein of SAMtools.

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The file formats currently supported are:

  • BAM (Binary Alignment/Map)
  • SAM (Sequence Alignment/Map)
  • FASTQ
  • FASTA (input only)
  • QSEQ
  • VCF (Variant Call Format)
  • BCF (Binary VCF) (output is always BGZF-compressed)

For a longer high-level description of Hadoop-BAM, refer to the article "Hadoop-BAM: directly manipulating next generation sequencing data in the cloud" in Bioinformatics Volume 28 Issue 6 pp. 876-877, also available online at: http://dx.doi.org/10.1093/bioinformatics/bts054

If you are interested in using Apache Pig (http://pig.apache.org/) with Hadoop-BAM, refer to SeqPig at: http://seqpig.sourceforge.net/

Note that the library part of Hadoop-BAM is primarily intended for developers with experience in using Hadoop. The command line tools of Hadoop-BAM should be understandable to all users, but they are limited in scope. SeqPig is a more versatile and higher-level interface to the file formats supported by Hadoop-BAM.

For examples of how to use Hadoop-BAM as a library to read data files in Hadoop see the examples/ directory.


Dependencies

Hadoop. Tested with 1.1.2, 1.2.1 and 2.2.0. Older stable versions as far back as 0.20.2 should also work. Version 4.2.0 of Cloudera's distribution, CDH, has also been tested. Use other versions at your own risk. You can change the version of Hadoop linked against by modifying the corresponding paramter in the pom.xml build file.

HTSJDK (formerly Picard SAM-JDK) Version 1.133 is required. Later versions may also work but have not been tested. A version of Picard is distributed via the unofficial maven repository (see below).

Availability:


Installation

If you're using Hadoop 2.2.0, a precompiled "hadoop-bam-X.Y.Z.jar" is available that you can use. Otherwise, you'll have to build Hadoop-BAM yourself by by using Maven (version 3.0.4 at least) and following the instructions below.

Hadoop version

You must set the <hadoop.version> tag in pom.xml appropriately for the version of hadoop you're using. Run "hadoop version" and copy the string from the output:

[luca@vm Hadoop-BAM]# hadoop version 2>/dev/null | grep Hadoop
Hadoop 2.0.0-cdh4.6.0

In the output above, the version string is "2.0.0-cdh4.6.0".

You should also set the value of the java.version property appropriately. The default is Java version 1.6.

Build

Build Hadoop-BAM with the following command:

mvn clean package -DskipTests

It will create two files:

target/hadoop-bam-X.Y.Z-SNAPSHOT.jar
target/hadoop-bam-X.Y.Z-SNAPSHOT-jar-with-dependencies.jar

The former contains only Hadoop-BAM whereas the latter one also contains all dependencies and can be run directly via

hadoop jar target/hadoop-bam-X.Y.Z-SNAPSHOT-jar-with-dependencies.jar

Javadoc documentation is generated automatically and can then be found in the target/apidocs subdirectory.

Finally, unit test can be run via:

mvn test

Library usage

Hadoop-BAM provides the standard set of Hadoop file format classes for the file formats it supports: a FileInputFormat and one or more RecordReaders for input, and a FileOutputFormat and one or more RecordWriters for output.

Note that Hadoop-BAM is based around the newer Hadoop API introduced in the 0.20 Hadoop releases instead of the older, deprecated API.

For examples of how to link to Hadoop-BAM in your own Maven project see the examples/ folder. There are example for reading and writing BAM as well as VCF files.

For more information see the Javadoc as well as the command line plugins' source code (in src/main/java/org/seqdoop/hadoop_bam/cli/plugins/*.java). In particular, for MapReduce usage, recommended examples are src/main/java/org/seqdoop/hadoop_bam/cli/plugins/FixMate.java and src/main/java/org/seqdoop/hadoop_bam/cli/plugins/VCFSort.java.

When using Hadoop-BAM as a library in your program, remember to have hadoop-bam-X.Y.Z.jar as well as the Picard .jars (including the Commons JEXL .jar) in your CLASSPATH and HADOOP_CLASSPATH; alternatively, use the *-jar-with-dependencies.jar which contains already all dependencies.

Linking against Hadoop-BAM

If your Maven project relies on Hadoop-BAM the easiest way to link against it is by relying on the OSS Sonatype repository:

<project>
...
    <dependencies>
        <dependency>
            <groupId>org.seqdoop</groupId>
            <artifactId>hadoop-bam</artifactId>
            <version>7.3.0</version>
        </dependency>
        ...
    </dependencies>
    ...
</project>

Command-line usage

Hadoop-BAM can be used as a command-line tool, with functionality in the form of plugins that provide commands to which hadoop-bam-X.Y.Z.jar is a frontend. Hadoop-BAM provides some commands of its own, but any others found in the Java class path will be used as well.

Running under Hadoop

To use Hadoop-BAM under Hadoop, the easiest method is to use the jar that comes packaged with all dependencies via

hadoop jar hadoop-bam-X.Y.Z-jar-with-dependencies.jar

Alternatively, you can use the "-libjars" command line argument when running Hadoop-BAM to provide different versions of dependencies as follows:

hadoop jar hadoop-bam-X.Y.Z.jar \
  -libjars htsjdk-1.118.jar,commons-jexl-2.1.1.jar

Finally, all jar files can also be added to HADOOP_CLASSPATH in the Hadoop configuration's hadoop-env.sh.

The command used should print a brief help message listing the Hadoop-BAM commands available. To run a command, give it as the first command-line argument. For example, the provided SAM/BAM sorting command, "sort":

hadoop jar hadoop-bam-X.Y.Z-jar-with-dependencies.jar sort

This will give a help message specific to that command.

File paths under Hadoop

When running under Hadoop, keep in mind that file paths refer to the distributed file system, HDFS. To explicitly access a local file, instead of using the plain path such as "/foo/bar", you must use a file: URI, such as "file:/foo/bar". Note that paths in file: URIs must be absolute.

Output of MapReduce-using commands

An example of a MapReduce-using command is "sort". Like all such commands should, it takes a working directory argument in which to place its output in parts. Each part is the output of one reduce task. By default, these parts are not complete and usable files! They are /not/ BAM or SAM files, they are only parts of BAM or SAM files containing output records, but lacking headers and footers.

For convenience, the provided MapReduce-using commands support a "-o" parameter to output single complete files instead of the individual parts.

For concatenating the outputs of tools that wish to output complete SAM and BAM files from each reducer, the "cat" command is provided.

Note that some commands, such as the provided "view" and "index" commands, do not use MapReduce: they are merely useful to operate directly on files stored in HDFS.

Running without Hadoop

Hadoop-BAM can be run directly, outside Hadoop, as long as it and the Picard and Hadoop .jar files as well as the Apache Commons CLI .jar provided by Hadoop ("lib/commons-cli-1.2.jar" for version 1.1.2) are in the Java class path. Alternatively use the bundled jar (hadoop-bam-jar-with-dependencies-X.Y.Z.jar). In addition, depending on the Hadoop version, there may be more dependencies from the Hadoop lib/ directory. A command such as the following:

java org.seqdoop.hadoop_bam.cli.Frontend

Is equivalent to the "hadoop jar hadoop-bam-X.Y.Z.jar" command used earlier. This has limited application, but it can be used e.g. for testing purposes.

Note that the "-libjars" way of passing the paths to the Picard .jars will not work when running Hadoop-BAM like this.


Summarizer plugins

This part explains some behaviour of the summarizing plugins, available in the command line interface as "hadoop jar hadoop-bam-X.Y.Z.jar summarize" and "hadoop jar hadoop-bam-X.Y.Z.jar summarysort". Unless you are a Chipster user, this section is unlikely to be relevant to you, and even then, this is not likely to be something you are interested in.

Summarization is typically best done with the "hadoop jar hadoop-bam-X.Y.Z.jar summarize --sort -o output-directory" command. Then there is no need to worry about concatenating nor sorting the output, as both are done automatically in this one command. But if you do not pass the "--sort" option, do remember that Chipster needs the outputs sorted before it can make use of them. For this, you need to run a separate "hadoop jar hadoop-bam-X.Y.Z.jar summarysort" command for each summary file output by "summarize".

Output format

The summarizer's output format is tabix-compatible. It is composed of rows of tab-separated data:

<reference sequence ID> <left coordinate> <right coordinate> <count>

The coordinate columns are 1-based and both ends are inclusive.

The 'count' field represents the number of alignments that have been summarized into that single range. Note that it may not exactly match any of the 'level' arguments passed to Summarize, due to Hadoop splitting the file at a boundary which is not an even multiple of the requested level.

Note that the output files are BGZF-compressed, but do not include the empty terminating block which would make them valid BGZF files. This is to avoid having to remove it from the end of each output file in distributed usage (when not using the "-o" convenience parameter): it's much simpler to put an empty gzip block to the end of the output.

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Hadoop-BAM is a Java library for the manipulation of files in common bioinformatics formats using the Hadoop MapReduce framework with the Picard SAM JDK, and command line tools similar to SAMtools.

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