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SETUP.md

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Setup Guide

This document describes how to setup all the dependencies, and optionally create a virtual machine, to run the notebooks in this repository.

Table of Contents

  1. Installation
  2. System Requirements
  3. Compute Environment
  4. Tunneling

Installation

To install the repository and its dependencies follow these simple steps:

  1. (optional) Install Anaconda with Python >= 3.6. Miniconda. This step can be skipped if working on a Data Science Virtual Machine (see the compute environment section).

  2. Clone the repository

    git clone https://github.com/Microsoft/computervision-recipes
    
  3. Install the conda environment, you'll find the environment.yml file in the root directory. To build the conda environment:

    cd computervision-recipes
    conda env create -f environment.yml
    
  4. Activate the conda environment and register it with Jupyter:

    conda activate cv
    python -m ipykernel install --user --name cv --display-name "Python (cv)"
    
  5. Start the Jupyter notebook server

    jupyter notebook
    
  6. At this point, you should be able to run the notebooks within the various scenarios folders.

pip install

As an alternative to the steps above, and if you only want to install the 'utils_cv' library (without creating a new conda environment), this can be done using pip install. Note that this does not download the notebooks.

pip install git+https://github.com/microsoft/ComputerVision.git@master#egg=utils_cv

System Requirement

Requirements

  • A machine running Linux (suggested) >= 16.04 LTS or Windows
  • Miniconda or Anaconda with Python version >= 3.6.
    • This is pre-installed on Azure DSVM such that one can run the following steps directly.
    • It is recommended to update conda to the latest version: conda update -n base -c defaults conda

Note that PyTorch runs slower on Windows than on Linux. This is a known issue which affects model training and is due to parallelized data loading. For compute-heavy training tasks (e.g. Object Detection) and on standard GPUs this difference is typically below 10%. For image classification however, with fast GPU (e.g. V100) and potentially large images, training on Windows can be multiple times slower than on Linux.

Dependencies

Make sure you have CUDA Toolkit version 9.0 or above installed on your machine. You can run the command below in your terminal to check.

nvcc --version

If you don't have CUDA Toolkit or don't have the right version, please download it from here: CUDA Toolkit

Compute Environments

Many computer visions scenarios are extremely computationally heavy. Training a model often requires a machine that has a strong GPU, and would otherwise be too slow.

The easiest way to get started is to use the Azure Data Science Virtual Machine (DSVM). This VM will come installed with all the system requirements that are needed to run the notebooks in this repository. If you choose this option, you can skip the System Requirements step in this guide as those requirements come pre-installed on the DSVM.

Before creating your Azure DSVM, you need to decide what kind of VM Size you want. Some VMs have GPUs, some have multiple GPUs, and some don't have any GPUs at all. For this repo, we recommend selecting an Ubuntu VM of the size Standard_NC6_v3. The Standard_NC6_v3 uses the Nvidia Tesla V100 which will help us train our computer vision models and iterate quickly.

For users new to Azure, your subscription may not come with a quota for GPUs. You may need to go into the Azure portal to increase your quota for GPU vms. Learn more about how to do this here: https://docs.microsoft.com/en-us/azure/azure-subscription-service-limits.

Here are some ways you can create the DSVM:

Provision a Data Science VM with the Azure Portal or CLI

You can also spin up a Data Science VM directly using the Azure portal. To do so, follow this link that shows you how to provision your Data Science VM through the portal.

You can alternatively use the Azure command line (CLI) as well. Follow this link to learn more about the Azure CLI and how it can be used to provision resources.

Virtual Machine Builder

One easy way to create your DSVM is to use the VM Builder tool located inside of the 'contrib' folder in the root directory of the repo. Note that this tool only runs on Linux and Mac, and is not well maintained and might stop working. Simply run python contrib/vm_builder/vm_builder.py at the root level of the repo and this tool will preconfigure your virtual machine with the appropriate settings for working with this repository.

Tunneling

If your compute environment is on a Linux VM in the cloud, you can open a tunnel from your VM to your local machine using the following command:

$ssh -L local_port:remote_address:remote_port  <username>@<server-ip>

For example, if I want to run jupyter notebook --port 8888 on my VM and I wish to run the Jupyter notebooks on my local broswer on localhost:9999, I would ssh into my VM using the following command:

$ssh -L 9999:localhost:8888 <username>@<server-ip>

This command will allow your local machine's port 9999 to access your remote machine's port 8888.