Skip to content
/ ML-DA Public

Repository for "Machine Learning and Data Analytics" course @ university of Trieste, A.Y. 2017/2018

Notifications You must be signed in to change notification settings

bebosudo/ML-DA

Folders and files

NameName
Last commit message
Last commit date
Oct 11, 2017
Oct 11, 2017
Oct 12, 2017
Oct 12, 2017
Oct 17, 2017
Oct 22, 2017
Nov 14, 2017
Nov 14, 2017
Dec 12, 2017
Dec 12, 2017
Dec 14, 2017
Oct 11, 2017
Oct 12, 2017
Mar 30, 2020

Repository files navigation

ML-DA

Repository for "Machine Learning and Data Analytics" course @ university of Trieste, A.Y. 2017/2018

Datasets usually are either provided along with the python jupyter notebooks, or they are taken from the repository ferdas's faraway repository, which is a collections of datasets converted from the faraway R package.

"First time only" config

Python3 is required: if you installed python 3 using your distribution package manager or by compiling it from source you should already have pip3 installed, otherwise install it following these instructions.

I suggest to use a virtual-environment (virtualenv) to set up a dedicated sandbox for this project. Moreover, to better manage different virtualenvs, I suggest to use virtualenvwrapper.

These are the instructions to follow:

  1. install virtualenvwrapper for every user on your pc, with root permissions:
# pip3 install virtualenvwrapper
  1. add the needed config to your .profile or .bash_profile file:
VIRTUALENVWRAPPER_PYTHON=/usr/bin/python3
export WORKON_HOME=$HOME/.venvs
source $(which virtualenvwrapper.sh)
  1. then reload your .profile or .bash_profile file:
$ source ~/.bashrc
  1. and eventually create a virtualenv for this project, using python3 as the python executable:
$ mkvirtualenv -p $(which python3) ML_DA

Normal usage

For a daily usage, activate the virtualenv created before:

$ workon ML_DA

Now you can manage it as a normal virtualenv.

To install the requirements use pip (and a virtualenv isolated sandbox is suggested to avoid messing up different packages from different projects), paste:

$ pip3 install -r python_requirements.txt

Enable the jupyter notebook

In the repository base folder just type:

$ jupyter-notebook

About

Repository for "Machine Learning and Data Analytics" course @ university of Trieste, A.Y. 2017/2018

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages