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Important
This content is being retired and may not be updated in the future. The support for Machine Learning Server will end on July 1, 2022. For more information, see What's happening to Machine Learning Server?
Applies to: Machine Learning Server 9.2.1 | 9.3 | 9.4
By default, installers connect to Microsoft download sites to get required and updated components for Machine Learning Server 9.x for Linux. If firewall constraints prevent the installer from reaching these sites, you can use an internet-connected device to download files, transfer files to an offline server, and then run setup.
Before you start, review the following article for general information about setup: Install Machine Learning Server on Linux.
Package managers
In contrast with previous releases, there is no install.sh script. Package managers are used for installation.
| Package manager | Platform | 
|---|---|
| yum | RHEL, CentOS | 
| apt | Ubuntu online | 
| dpkg | Ubuntu offline | 
| zypper | SUSE | 
| rpm | RHEL, CentOS, SUSE | 
Package location
Packages for all supported versions of Linux can be found at packages.microsoft.com.
- https://packages.microsoft.com/rhel/6/prod/ (CentOS 6)
 - https://packages.microsoft.com/rhel/7/prod/ (CentOS 7)
 - https://packages.microsoft.com/sles/11/prod/ (SLES 11)
 - https://packages.microsoft.com/ubuntu/14.04/prod/pool/main/m/ (Ubuntu 14.04)
 - https://packages.microsoft.com/ubuntu/16.04/prod/pool/main/m/ (Ubuntu 16.04)
 
Package list
The following packages comprise a full Machine Learning Server installation:
 microsoft-mlserver-packages-r-9.4.7        ** core
 microsoft-mlserver-python-9.4.7            ** core
 microsoft-mlserver-packages-py-9.4.7       ** core
 microsoft-mlserver-mlm-r-9.4.7             ** pre-trained models
 microsoft-mlserver-mlm-py-9.4.7            ** pre-trained models
 microsoft-mlserver-hadoop-9.4.7            ** hadoop (required for hadoop)
 microsoft-mlserver-adminutil-9.4.7         ** operationalization (optional)
 microsoft-mlserver-computenode-9.4.7       ** operationalization (optional)
 microsoft-mlserver-config-rserve-9.4.7     ** operationalization (optional) 
 microsoft-mlserver-webnode-9.4.7           ** operationalization (optional)
 azure-cli_2.0.25-1.el7.x86_64              ** operationalization (optional)
The microsoft-mlserver-python-9.4.7 package provides Python 3.7.1, executing as mlserver-python, found in /opt/microsoft/mlserver/9.4.7/bin/python/python
Microsoft R Open is required for R execution:
 microsoft-r-open-mkl-3.5.2
 microsoft-r-open-mro-3.5.2 
Microsoft .NET Core 2.0, used for operationalization, must be added to Ubuntu:
 dotnet-host-2.0.0
 dotnet-hostfxr-2.0.0
 dotnet-runtime-2.0.0  
Additional open-source packages must be installed if a package is required but not found on the system. This list varies for each installation. Here is one example of the additional packages that were added to a clean RHEL image during a connected (online) setup:
 cairo
 fontconfig 
 fontpackages-filesystem
 graphite2 
 harfbuzz 
 libICE  
 libSM   
 libXdamage  
 libXext  
 libXfixes  
 libXft  
 libXrender  
 libXt    
 libXxf86vm  
 libicu      
 libpng12   
 libthai
 libunwind     
 libxshmfence   
 mesa-libEGL
 mesa-libGL     
 mesa-libgbm    
 mesa-libglapi 
 pango   
 paratype-pt-sans-caption-fonts  
 pixman  
Download packages
If your system provides a graphical user interface, you can click a file to download it. Otherwise, use wget. We recommend downloading all packages to a single directory so that you can install all of them in a single command. By default, wget uses the working directory, but you can specify an alternative path using the -outfile parameter.
The following example is for the first package. Each command references the version number of the platform. Remember to change the number if your version is different. For more information, see Linux Software Repository for Microsoft Products.
- Download to CentOS or RHEL: 
wget https://packages.microsoft.com/rhel/7/prod/microsoft-mlserver-packages-r-9.4.7.rpm - Download to Ubuntu 16.04: 
wget https://packages.microsoft.com/ubuntu/16.04/prod/pool/main/m/microsoft-mlserver-packages-r-9.4.7/microsoft-mlserver-packages-r-9.4.0.deb - Download to SUSE: 
wget https://packages.microsoft.com/sles/11/prod/microsoft-mlserver-packages-r-9.4.7.rpm 
Repeat for each package in the package list.
Install packages
The package manager determines the installation order. Assuming all packages are in the same folder:
- Install on CentOS or RHEL: 
yum install *.rpm - Install on Ubuntu: 
dpkg -i *.deb - Install on SUSE: 
zypper install *.rpm 
This step completes installation.
Activate the server
Run the activation script from either the R or Python directory:
/opt/microsoft/mlserver/9.4.7/bin/R/activate.sh- or 
/opt/microsoft/mlserver/9.4.7/bin/python/activate.sh 
Connect and validate
List installed packages:
- On CentOS and RHEL: 
rpm -qa | grep microsoft - On Ubuntu: 
apt list --installed | grep microsoft - On SLES11: 
zypper se microsoft 
- On CentOS and RHEL: 
 Once you have a package name, you can obtain verbose version information. For example:
- On CentOS and RHEL: 
$ rpm -qi microsoft-mlserver-packages-r-9.4.7 - On Ubuntu: 
$ dpkg --status microsoft-mlserver-packages-r-9.4.7 - On SLES: 
zypper info microsoft-mlserver-packages-r-9.4.7 
Output on Ubuntu is as follows:
Package: microsoft-mlserver-packages-r-9.4.7 Status: install ok installed Priority: optional Section: devel Installed-Size: 195249 Maintainer: revobuil@microsoft.com Architecture: amd64 Version: 9.4.7 Depends: microsoft-r-open-mro-3.5.2, microsoft-r-open-mkl-3.5.2, microsoft-r-open-foreachiterators-3.5.2 Description: Microsoft Machine Learning Server . . .- On CentOS and RHEL: 
 
Set a MKL_CBWR variable
Set an MKL_CBWR environment variable to ensure consistent output from Intel Math Kernel Library (MKL) calculations.
Edit or create a file named .bash_profile in your user home directory, adding the line
export MKL_CBWR="AUTO"to the file.Execute this file by typing source .bash_profile at a bash command prompt.
Start Revo64
As another verification step, run the Revo64 program. By default, Revo64 is linked to the /usr/bin directory, available to any user who can log in to the machine:
From /Home or any other working directory:
[<path>] $ Revo64Run a RevoScaleR function, such as rxSummary on a dataset. Many sample datasets, such as the iris dataset, are ready to use because they are installed with the software:
> rxSummary(~., iris)Output from the iris dataset should look similar to the following:
        Rows Read: 150, Total Rows Processed: 150, Total Chunk Time: 0.001 seconds
        Computation time: 0.005 seconds.
        Call:
        rxSummary(formula = ~., data = iris)
        Summary Statistics Results for: ~.
        Data: iris
        Number of valid observations: 150
         Name         Mean     StdDev    Min Max ValidObs MissingObs
         Sepal.Length 5.843333 0.8280661 4.3 7.9 150      0
         Sepal.Width  3.057333 0.4358663 2.0 4.4 150      0
         Petal.Length 3.758000 1.7652982 1.0 6.9 150      0
         Petal.Width  1.199333 0.7622377 0.1 2.5 150      0
        Category Counts for Species
        Number of categories: 3
        Number of valid observations: 150
        Number of missing observations: 0
         Species    Counts
         setosa     50
         versicolor 50
         virginica  50
To quit the program, type q() at the command line with no arguments.
Start Python
From Home or any other user directory:
[<path>] $ mlserver-pythonRun a revoscalepy function, such as rx_Summary on a dataset. Many sample datasets are built in. At the Python command prompt, paste the following script:
import os import revoscalepy sample_data_path = revoscalepy.RxOptions.get_option("sampleDataDir") ds = revoscalepy.RxXdfData(os.path.join(sample_data_path, "AirlineDemoSmall.xdf")) summary = revoscalepy.rx_summary("ArrDelay+DayOfWeek", ds) print(summary)Output from the sample dataset should look similar to the following:
Summary Statistics Results for: ArrDelay+DayOfWeek File name: /opt/microsoft/mlserver/9.4.7/libraries/PythonServer/revoscalepy/data/sample_data/AirlineDemoSmall.xdf Number of valid observations: 600000.0 Name Mean StdDev Min Max ValidObs MissingObs 0 ArrDelay 11.317935 40.688536 -86.0 1490.0 582628.0 17372.0 Category Counts for DayOfWeek Number of categories: 7 Counts DayOfWeek 1 97975.0 2 77725.0 3 78875.0 4 81304.0 5 82987.0 6 86159.0 7 94975.0
To quit the program, type quit() at the command line with no arguments.
Verify CLI
Open an Administrator command prompt.
Enter the following command to check availability of the CLI:
az ml admin --help. If you receive the following error:az: error argument _command_package: invalid choice: ml, follow the instructions to re-add the extension to the CLI.
Next steps
We recommend starting with any Quickstart tutorial listed in the contents pane.