260072 VU Data Science for Physicists (2022S)
Continuous assessment of course work
Labels
Registration/Deregistration
Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).
- Registration is open from Tu 01.02.2022 08:00 to Th 24.02.2022 12:00
- Deregistration possible until Fr 25.03.2022 23:59
Details
max. 75 participants
Language: English
Lecturers
- Michele Reticcioli
- Giorgio Domenichini
- Dominik Lemm
- Carolin Faller (Student Tutor)
Classes
Theoretical lectures: Thursdays 10:15 – 11:30 (Ludwig-Boltzmann-Hörsaal)
Practice in groups (see below).During the Kickoff Lecture (March the 10th) students will be divide in 4 groups:Group 1: Tue 15.03.2022 to 21.06.2022 08.30-09.30
Group 2: Tue 15.03.2022 to 21.06.2022 09.45-10.45
Group 3: Tue 15.03.2022 to 21.06.2022 11.00-12.00
Group 4: Tue 15.03.2022 to 21.06.2022 9.45-10.45Groups 1-3: Kurt-Gödel-Hörsaal, Boltzmanngasse 5 (ground floor).
Group 4: PC-Seminarraum 1, Kolingasse 14-16 (first floor).
Information
Aims, contents and method of the course
The course focuses on the application of Data Science methods in Physics, that is the combination of interdisciplinary activities (such as scientific, statistical and computational tools) required to elaborate data-centered analysis on relevant physical quantities. Data Science is a topic of increasing interest in the scientific community, due to the growing power of modern computational machines and the associated creation of large databases: The valuable information stored in such large databases can be extracted by Data Science methods, i.e., by combining statistics with advanced computational methods, including machine learning.This course aims to guide students through the basic theoretical concepts regarding Data Science in Physics, and to provide them with the ability to successfully face practical applications in this field. Specifically, the lectures cover the following topics: (i) collection and manipulation of data via computational tools (mostly in python environments), (ii) effective visualization of relevant information extracted from data, (iii) scientific analysis and physical interpretation of data, (iv) advanced computational techniques.The course is structured in theoretical lectures (on Thursdays), followed by practical lectures (on Tuesdays).
Assessment and permitted materials
The evaluation of the students takes place continuously, during the practical lectures (on Tuesdays), and by means of Mid-term and End-term tests (on pre-defined Thursdays).
Minimum requirements and assessment criteria
Minimum requirements (before registration):
- Basic but solid knowledge of python coding (e.g., as obtained by the previous programming course in the Bachelor curriculum).Please note also that UNEXCUSED ABSENCE from the kick-off lecture will lead to immediate deregistration.
- Basic but solid knowledge of python coding (e.g., as obtained by the previous programming course in the Bachelor curriculum).Please note also that UNEXCUSED ABSENCE from the kick-off lecture will lead to immediate deregistration.
Examination topics
At the end of the course, the students are expected to be familiar with the topic discussed during lectures and to be able to collect data from unstructured sources, to store and efficiently manipulate data, to visually represent the relevant information, to perform rigorous physical interpretation, to reproduce simple machine learning models.
Reading list
S. L. Brunton, and J. N. Kutz, Cambridge University Press (2019), DOI:10.1017/9781108380690
https://doi.org/10.1017/9781108380690P. Mehta, et al., Physics Reports 810, 1-124 (2019), DOI:10.1016/j.physrep.2019.03.001
https://doi.org/10.1016/j.physrep.2019.03.001M. Nielsen, "Neural Networks and Deep Learning", Determination Press (2015),
http://neuralnetworksanddeeplearning.com/
https://doi.org/10.1017/9781108380690P. Mehta, et al., Physics Reports 810, 1-124 (2019), DOI:10.1016/j.physrep.2019.03.001
https://doi.org/10.1016/j.physrep.2019.03.001M. Nielsen, "Neural Networks and Deep Learning", Determination Press (2015),
http://neuralnetworksanddeeplearning.com/
Association in the course directory
DSC, UF MA PHYS 01a, UF MA PHYS 01b
Last modified: Fr 21.10.2022 08:49