Difference between revisions of "LU-pysem/CourseProject"
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Revision as of 15:16, 7 September 2020
Course Project
During the course, students are required to complete a project that accomplishes a non-trivial programming / data processing task using Python tools.
- projects can be developed in teams of 2-3 people or individually.
 
Possible project topics: 
- process, analyze, and/or visualize one or more datasets
 - develop a simple game
 - web or desktop application
 - ... other ideas ...
 
Data sets can come from a variety of sources, such as kaggle.com, data.gov.lv, or faculty.
All processing and visualization will have to be done in the Python programming language with the appropriate Pyhon libraries.
- you can use libraries covered in the course or/and from outside the course.
 
Other topics may also be selected with prior agreement with the faculty.
Submit your project topic:
Final project topic sign-up form (Autumn 2020):
Final project presentations
Project presentation = during the last class
Project presentation = 5-10 min. presentation consisting of:
- Introduction (what the work is about)
 - Project realization (what was programmed, what software was used)
 - Demonstrations of results
 
You have to show what the project has done in practice = show code and results.
Before presenting: each group should send an email to uldis.bojars(at)lu.lv (with text "Python seminar" in the subject line) containing:
- project description (including a list of group members + info about the role of each participant)
 - developed source code (or its URL at Github, Gitlab etc)
 - work results (e.g. Jupyter notebook)