Online teaching
Published
(Updated )
Helsingin yliopisto
Data Analysis with Python, MOOC, Data Analysis with Python
Online teaching
5 cr
OnlineParticipation in teaching
Schedule
Check on the university's website
Registration or application for course
Time reserved for studying
Description
OU: Participation in teaching, OU: Data Analysis with Python
Working methods
Study the course materials, complete exercises, work on the peer-reviewed project, and do the exam in the MOOC online learning environment(Opens in a new tab) (the link will work as the course starts).
The course is
- a MOOC (Massive Open Online Course) that is completed online (fully distance learning) in the online learning environment.
- There are no attendance requirements.
- You can study the contents at your own pace, except for project and exam deadlines.
- The MOOC environment contains the materials and instructions necessary for completing the course.
The course is completed in three stages:
- Exercises
- Peer-reviewed project work, and
- Multiple-choice exam.
- the first part of the course.
- done in the online learning environment (TMC),
- automatically assessed.
- divided into 6 parts and you need to pass 80% of the exercises in each part to proceed to the next part.
- can be completed at your own pace.
- scheduled due to peer-review.
- multiple project topic options.
- solutions returned in Jupyter notebook format.
- You can take the exam once you have passed all parts of TMC exercises.
- a multiple-choice exam.
- Check the exam dates in the MOOC environment.
See Course unit description (below) for:
- Prerequisites
- Contents
- Learning outcomes
- Assessment practices and criteria
Additional information and registration
Price and registration period
Check on the university's website
Additional information:
Dates
Fields
Information and communication technologies
Languages of instruction
English
Additional information