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Introduction to Python for Healthcare


Dozent/in Ass.-Prof. Christian Frederik Baumgartner
Veranstaltungsart Vorlesung
Code HS241684
Semester Herbstsemester 2024
Durchführender Fachbereich Gesundheitswissenschaften
Studienstufe Master
Termin/e Di, 17.09.2024, 14:15 - 18:00 Uhr, HS 3
Di, 24.09.2024, 14:15 - 18:00 Uhr, HS 3
Di, 01.10.2024, 14:15 - 18:00 Uhr, HS 3
Di, 08.10.2024, 14:15 - 18:00 Uhr, HS 3
Di, 15.10.2024, 14:15 - 18:00 Uhr, HS 3
Di, 22.10.2024, 14:15 - 18:00 Uhr, HS 3
Di, 29.10.2024, 14:15 - 18:00 Uhr, HS 3
Di, 05.11.2024, 14:15 - 18:00 Uhr, HS 3
Di, 12.11.2024, 14:15 - 18:00 Uhr, HS 3
Di, 19.11.2024, 14:15 - 18:00 Uhr, HS 3
Di, 26.11.2024, 14:15 - 18:00 Uhr, HS 3
Di, 03.12.2024, 14:15 - 18:00 Uhr, HS 3
Di, 10.12.2024, 14:15 - 18:00 Uhr, HS 3
Di, 17.12.2024, 14:15 - 18:00 Uhr, HS 3
Do, 16.01.2025, 13:15 - 15:15 Uhr, HS 10 (Prüfung)
Umfang 4 Semesterwochenstunden
Lernziele • Understand the fundamentals of Python programming, including syntax, data types, and control structures.
• Develop the ability to write Python scripts for basic data manipulation and analysis.
• Gain proficiency in using Python libraries such as Pandas, Matplotlib, and Scikit-Learn for healthcare data analysis.
• Apply Python programming skills to real-world healthcare problems and datasets.

Note: Basic Python skills will be a requirement for the Advanced Machine Learning course which is planned for FS 2025
Sprache Englisch
Anmeldung https://elearning.hsm-unilu.ch/course/view.php?id=807
Prüfung Course assessment. The course will be assessed with three types of learning evaluations:
- Completion of weekly hands-on exercises (20%)
- Written exam on the basics of Python (50%)
- Quality of work and presentation of the final project (30%)
Abschlussform / Credits Exercises, exam, presentation / 6 Credits
Hinweise Teaching methods:
• Lectures: Weekly lectures to introduce and explain core concepts.
• Weekly Hands-On Sessions: Practical exercises and coding sessions to apply concepts learned in lectures.
• Project Work: A final project to synthesize learning and demonstrate practical application in a healthcare context. The final project will be conducted in the format of a machine learning competition where students will try to obtain the best possible prediction performance on a real-world medical dataset. Please note that the course will *not* be graded based on the ranking in this competition.
• Presentations: Opportunities for students to present their final project and receive feedback
Hörer-/innen Nein
Kontakt christian.baumgartner@unilu.ch
Material The lecture slides, exercise sheets as well as the student presentations will be made available to all students.
Literatur The course is loosely based on the book “Python for Data Analysis” by Wes McKinney (3rd edition). However, students are not required to purchase the book.