Go to file
2016-10-12 23:11:38 +01:00
data Adding CCPP data and data provider. 2016-09-28 05:07:01 +01:00
mlp Bug fix: incorrect use of zip in MomentumLearningRule. 2016-10-12 23:11:38 +01:00
notebooks Fixing softmax index typo. 2016-10-11 15:39:35 +01:00
.gitignore 1st labs 2015-09-27 22:00:09 +01:00
environment-set-up.md Further clarifying reload vs. import note. 2016-09-27 19:15:28 +01:00
getting-started-in-a-lab.md Adding lab start up instructions. 2016-10-06 12:30:05 +01:00
quota-issue.md Changing to using remove rather than clean in quota issue fix based on lab feedback. 2016-09-27 19:02:22 +01:00
README.md Small fixes to initial description. 2016-09-20 12:54:51 +01:00
setup.py Adding additional authors to metadata. 2016-09-21 00:53:52 +01:00

Machine Learning Practical

This repository contains the code for the University of Edinburgh School of Informatics course Machine Learning Practical.

This assignment-based course is focused on the implementation and evaluation of machine learning systems. Students who do this course will have experience in the design, implementation, training, and evaluation of machine learning systems.

The code in this repository is split into:

  • a Python package mlp, a NumPy based neural network package designed specifically for the course that students will implement parts of and extend during the course labs and assignments,
  • a series of Jupyter notebooks in the notebooks directory containing explanatory material and coding exercises to be completed during the course labs.

Getting set up

Detailed instructions for setting up a development environment for the course are given in this file. Students doing the course will spend part of the first lab getting their own environment set up.