Azure Marketplace
Browse Sell Learn
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Icons/Large.png

Data Science Virtual Machine for Linux (Ubuntu)

Microsoft
Virtual machine with deep learning frameworks and tools for machine learning and data science
You'll receive an email to take the free Test Drive on your computer.
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot1.png
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot1.png
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot2.png
Support
Support

Data Science Virtual Machine for Linux (Ubuntu)

Microsoft
Virtual machine with deep learning frameworks and tools for machine learning and data science

The Data Science Virtual Machine for Linux is an Ubuntu-based virtual machine image that makes it easy to get started with deep learning on Azure. The Microsoft Cognitive Toolkit, TensorFlow, MXNet, Caffe, Caffe2, Chainer, DIGITS, H2O, Keras, Theano, Torch, and PyTorch are built, installed, and configured so they are ready to run immediately. The NVIDIA driver, CUDA 8, and cuDNN 6 are also included. All frameworks are the GPU versions but work on the CPU as well. Many sample Jupyter notebooks are included.

The Data Science Virtual Machine for Linux also contains popular tools for data science and development activities, including:

  • Microsoft R Server 9.2.1 with Microsoft R Open 3.4.1, MicrosoftML package with machine learning algorithms, RevoScaleR and revoscalepy for distributed and remote computing, and R and Python Operationalization
  • Anaconda Python 2.7 and 3.5
  • JupyterHub with sample notebooks
  • Apache Drill for querying non-relational data using SQL
  • Spark local 2.2.0 with PySpark and SparkR Jupyter kernels
  • Single node local Hadoop
  • Azure command-line interface
  • Visual Studio Code, IntelliJ IDEA, PyCharm, and Atom
  • H2O, Deep Water, and Sparkling Water
  • Julia
  • Vowpal Wabbit for online learning
  • xgboost for gradient boosting
  • SQL Server 2017
  • Intel Math Kernel Library

You can view a full list of installed tools for the Linux edition here.

https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot1.png
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot1.png
https://106c4.wpc.azureedge.net/80106C4/Gallery-Prod/cdn/2015-02-24/prod20161101-microsoft-windowsazure-gallery/microsoft-ads.linux-data-science-vm-ubuntulinuxdsvmubuntu.1.0.8/Screenshots/Screenshot2.png