Exercise notebooks for CVND.
This repository contains code exercises and materials for Udacity's Computer Vision Nanodegree program. It consists of tutorial notebooks that demonstrate, or challenge you to complete, various computer vision applications and techniques. These notebooks depend on a number of software packages to run, and so, we suggest that you create a local environment with these dependencies by following the instructions below.
Per the Anaconda docs:
Conda is an open source package management system and environment management system for installing multiple versions of software packages and their dependencies and switching easily between them. It works on Linux, OS X and Windows, and was created for Python programs but can package and distribute any software.
Using Anaconda consists of the following:
miniconda
on your computer, by selecting the latest Python version for your operating system. If you already have conda
or miniconda
installed, you should be able to skip this step and move on to step 2.conda
environment.* Each time you wish to work on any exercises, activate your conda
environment!
Download the latest version of miniconda
that matches your system.
NOTE: There have been reports of issues creating an environment using miniconda v4.3.13
. If it gives you issues try versions 4.3.11
or 4.2.12
from here.
Linux | Mac | Windows | |
---|---|---|---|
64-bit | 64-bit (bash installer) | 64-bit (bash installer) | 64-bit (exe installer) |
32-bit | 32-bit (bash installer) | 32-bit (exe installer) |
Install miniconda on your machine. Detailed instructions:
For Windows users, these following commands need to be executed from the Anaconda prompt as opposed to a Windows terminal window. For Mac, a normal terminal window will work.
These instructions also assume you have git
installed for working with Github from a terminal window, but if you do not, you can download that first with the command:
conda install git
If you'd like to learn more about version control and using git
from the command line, take a look at our free course: Version Control with Git.
Now, we're ready to create our local environment!
git clone https://github.com/udacity/CVND_Exercises.git
cd CVND_Exercises
Create (and activate) a new environment, named cv-nd
with Python 3.6. If prompted to proceed with the install (Proceed [y]/n)
type y.
conda create -n cv-nd python=3.6
source activate cv-nd
conda create --name cv-nd python=3.6
activate cv-nd
At this point your command line should look something like: (cv-nd) <User>:CVND_Exercises <user>$
. The (cv-nd)
indicates that your environment has been activated, and you can proceed with further package installations.
Install PyTorch and torchvision; this should install the latest version of PyTorch.
conda install pytorch torchvision -c pytorch
conda install pytorch-cpu -c pytorch
pip install torchvision
Install a few required pip packages, which are specified in the requirements text file (including OpenCV).
pip install -r requirements.txt
Now all of the cv-nd
libraries are available to you. Assuming your environment is still activated, you can navigate to the Exercises repo and start looking at the notebooks:
cd
cd CVND_Exercises
jupyter notebook
To exit the environment when you have completed your work session, simply close the terminal window.
Verify that the cv-nd
environment was created in your environments:
conda info --envs
Cleanup downloaded libraries (remove tarballs, zip files, etc):
conda clean -tp
Uninstall the environment (if you want); you can remove it by name:
conda env remove -n cv-nd