The Apache Mahout™ project's goal is to build an environment for quickly creating scalable performant machine learning applications.
For additional information about Mahout, visit the Mahout Home Page
Whether you are using Mahout's Shell, running command line jobs or using it as a library to build your own apps you'll need to setup several environment variables. Edit your environment in ~/.bash_profile
for Mac or ~/.bashrc
for many linux distributions. Add the following
export MAHOUT_HOME=/path/to/mahout
export MAHOUT_LOCAL=true # for running standalone on your dev machine,
# unset MAHOUT_LOCAL for running on a cluster
You will need a $JAVA_HOME
, and if you are running on Spark, you will also need $SPARK_HOME
Running any application that uses Mahout will require installing a binary or source version and setting the environment. To compile from source:
mvn -DskipTests clean install
- To run tests do
mvn test
- To set up your IDE, do
mvn eclipse:eclipse
ormvn idea:idea
To use maven, add the appropriate setting to your pom.xml or build.sbt following the template below.
To use the Samsara environment you'll need to include both the engine neutral math-scala dependency:
<dependency>
<groupId>org.apache.mahout</groupId>
<artifactId>mahout-math-scala_2.10</artifactId>
<version>${mahout.version}</version>
</dependency>
and a dependency for back end engine translation, e.g:
<dependency>
<groupId>org.apache.mahout</groupId>
<artifactId>mahout-spark_2.10</artifactId>
<version>${mahout.version}</version>
</dependency>
Linux Environment (preferably Ubuntu 16.04.x) Note: Currently only the JVM-only build will work on a Mac. gcc > 4.x NVIDIA Card (installed with OpenCL drivers alongside usual GPU drivers)
Install java 1.7+ in an easily accessible directory (for this example, ~/java/) http://www.oracle.com/technetwork/java/javase/downloads/jdk8-downloads-2133151.html
Create a directory ~/apache/ .
Download apache Maven 3.3.9 and un-tar/gunzip to ~/apache/apache-maven-3.3.9/ . https://maven.apache.org/download.cgi
Download and un-tar/gunzip Hadoop 2.4.1 to ~/apache/hadoop-2.4.1/ . https://archive.apache.org/dist/hadoop/common/hadoop-2.4.1/
Download and un-tar/gunzip spark-1.6.3-bin-hadoop2.4 to ~/apache/ . http://spark.apache.org/downloads.html Choose release: Spark-1.6.3 (Nov 07 2016) Choose package type: Pre-Built for Hadoop 2.4
Install ViennaCL 1.7.0+ If running Ubuntu 16.04+
sudo apt-get install libviennacl-dev
Otherwise if your distribution’s package manager does not have a viennniacl-dev package >1.7.0, clone it directly into the directory which will be included in when being compiled by Mahout:
mkdir ~/tmp
cd ~/tmp && git clone https://github.com/viennacl/viennacl-dev.git
cp -r viennacl/ /usr/local/
cp -r CL/ /usr/local/
Ensure that the OpenCL 1.2+ drivers are installed (packed with most consumer grade NVIDIA drivers). Not sure about higher end cards.
Clone mahout repository into ~/apache
.
git clone https://github.com/apache/mahout.git
When building mahout for a spark backend, we need four System Environment variables set:
export MAHOUT_HOME=/home/<user>/apache/mahout
export HADOOP_HOME=/home/<user>/apache/hadoop-2.4.1
export SPARK_HOME=/home/<user>/apache/spark-1.6.3-bin-hadoop2.4
export JAVA_HOME=/home/<user>/java/jdk-1.8.121
Mahout on Spark regularly uses one more env variable, the IP of the Spark cluster’s master node (usually the node which one would be logged into).
To use 4 local cores (Spark master need not be running)
export MASTER=local[4]
To use all available local cores (again, Spark master need not be running)
export MASTER=local[*]
To point to a cluster with spark running:
export MASTER=spark://master.ip.address:7077
We then add these to the path:
PATH=$PATH$:MAHOUT_HOME/bin:$HADOOP_HOME/bin:$SPARK_HOME/bin:$JAVA_HOME/bin
These should be added to the your ~/.bashrc file.
Currently Mahout has 3 builds. From the $MAHOUT_HOME directory we may issue the commands to build each using mvn profiles.
JVM only:
mvn clean install -DskipTests
JVM with native OpenMP level 2 and level 3 matrix/vector Multiplication
mvn clean install -Pviennacl-omp -Phadoop2 -DskipTests
JVM with native OpenMP and OpenCL for Level 2 and level 3 matrix/vector Multiplication. (GPU errors fall back to OpenMP, currently only a single GPU/node is supported).
mvn clean install -Pviennacl -Phadoop2 -DskipTests
Mahout provides an extension to the spark-shell, which is good for getting to know the language, testing partition loads, prototyping algorithms, etc..
To launch the shell in local mode with 2 threads: simply do the following:
$ MASTER=local[2] mahout spark-shell
After a very verbose startup, a Mahout welcome screen will appear:
Loading /home/andy/sandbox/apache-mahout-distribution-0.13.0/bin/load-shell.scala...
import org.apache.mahout.math._
import org.apache.mahout.math.scalabindings._
import org.apache.mahout.math.drm._
import org.apache.mahout.math.scalabindings.RLikeOps._
import org.apache.mahout.math.drm.RLikeDrmOps._
import org.apache.mahout.sparkbindings._
sdc: org.apache.mahout.sparkbindings.SparkDistributedContext = org.apache.mahout.sparkbindings.SparkDistributedContext@3ca1f0a4
_ _
_ __ ___ __ _| |__ ___ _ _| |_
'_ ` _ \ / _` | '_ \ / _ \| | | | __|
| | | | (_| | | | | (_) | |_| | |_
_| |_| |_|\__,_|_| |_|\___/ \__,_|\__| version 0.13.0
That file does not exist
scala>
At the scala> prompt, enter:
scala> :load /home/<andy>/apache/mahout/examples
/bin/SparseSparseDrmTimer.mscala
Which will load a matrix multiplication timer function definition. To run the matrix timer:
scala> timeSparseDRMMMul(1000,1000,1000,1,.02,1234L)
{...} res3: Long = 16321
We can see that the JVM only version is rather slow, thus our motive for GPU and Native Multithreading support.
To get an idea of what’s going on under the hood of the timer, we may examine the .mscala (mahout scala) code which is both fully functional scala and the Mahout R-Like DSL for tensor algebra:
def timeSparseDRMMMul(m: Int, n: Int, s: Int, para: Int, pctDense: Double = .20, seed: Long = 1234L): Long = {
val drmA = drmParallelizeEmpty(m , s, para).mapBlock(){
case (keys,block:Matrix) =>
val R = scala.util.Random
R.setSeed(seed)
val blockB = new SparseRowMatrix(block.nrow, block.ncol)
blockB := {x => if (R.nextDouble < pctDense) R.nextDouble else x }
(keys -> blockB)
}
val drmB = drmParallelizeEmpty(s , n, para).mapBlock(){
case (keys,block:Matrix) =>
val R = scala.util.Random
R.setSeed(seed + 1)
val blockB = new SparseRowMatrix(block.nrow, block.ncol)
blockB := {x => if (R.nextDouble < pctDense) R.nextDouble else x }
(keys -> blockB)
}
var time = System.currentTimeMillis()
val drmC = drmA %*% drmB
// trigger computation
drmC.numRows()
time = System.currentTimeMillis() - time
time
}
For more information please see the following references:
http://mahout.apache.org/users/environment/in-core-reference.html
http://mahout.apache.org/users/environment/out-of-core-reference.html
http://mahout.apache.org/users/sparkbindings/play-with-shell.html
http://mahout.apache.org/users/environment/classify-a-doc-from-the-shell.html
Note that due to an intermittent out-of-memory bug in a Flink test we have disabled it from the binary releases. To use Flink please uncomment the line in the root pom.xml in the <modules>
block so it reads <module>flink</module>
.
For examples of how to use Mahout, see the examples directory located in examples/bin
For information on how to contribute, visit the How to Contribute Page
Please see the NOTICE.txt
included in this directory for more information.