This Course is created to be a template that can be used as a starting point to create eLena Courses with certificates and feedback form for LUMI courses.

- Teacher
Tiina Leiponen
This two-day course aims at giving the fundamental, essential concepts
of machine learning. The course focuses on simplified key concepts from
statistical, probabilistic and computational principles, and their
relation to machine learning. This will aid in interpreting and
explaining, to an extent, a models behavior, and helping in evaluating
is a machine learning approach feasible to a particular application. The
course focuses on supervised and unsupervised approaches, and model
selection.
The course is organized on site at CSC. A Zoom option
will be provided for those whom register to course but cannot make it on
site. Hands-on exercises will be done using the Python language in CSC
Notebooks environment (https://notebooks.csc.fi/).
Learning outcomes: To
obtain ideas on what to look out for when a given problem can be solved
using supervised or unsupervised learning tools, is a machine learning
suitable to your application, and focus on interpreting and explaining
models.
This course is for students, researchers or in industry
that are new and wants to get into applying machine learning methods in
their applications. Also those whom have been using machine learning
might also benefit from this course.
Prerequisites:
Basics of the Python language is assumed but not mandatory.
Additionally basic notions of statistics and probability will be
beneficial, however basic notions will be explained as methods and
approaches are introduced.
- Teacher
Billy Braithwaite