Vorlesung im Detail
Applied Numerical Computing and Deep Learning in Python
Nummer011062, SS26Dozentinnen und DozentenVeranstaltungstyp (SWS)Vorlesung (2+1)Ort und ZeitModul-Zugehörigkeit (ohne Gewähr)- DPL:B:-:2
- MABA:-:4:MAT-443
- DPL:A:-:-
- DPL:F:-:1
- DPL:E:-:-
- TMABA:-:4:MAT-443
- WIMABA:-:4:MAT-443
- MAMA:-:4:MAT-443
- TMAMA:-:4:MAT-443
- WIMAMA:-:4:MAT-443
Sprechstunde zur Veranstaltungnach VereinbarungAnmeldung?ohne AngabeErforderliche VoraussetzungenStudents are expected to have a solid understanding in Numerical methods IInhalt The course introduces students to programming in Python, numerical methods, and basic concepts of artificial intelligence. Students learn to implement algorithms such as solving linear systems, interpolation, and matrix decompositions in Python. In the final part, these skills are applied to simple deep learning models and practical tasks such as image recognition.Aktuelle InformationenStudents are recommended to have their own laptop with Python environments installed, preferably version 3 or higher, and a Python editor such as Jupyter Notebook, Visual Studio Code, or a similar tool. It is also desirable to have Git-related software installed.BemerkungenLink zum Modulhandbuch Mathematik
Link zu den Modulbeschreibungen im ServiceEmpfohlene Literatur- - Numerical Python: Scientific Computing and Data Science Applications with NumPy, SciPy and Matplotlib (Second Edition) by Robert Johansson, Apress, 2018.
- Available online: https://jrjohansson.github.io/numericalpython.html
- - Deep Learning by Ian Goodfellow and Yoshua Bengio and Aaron Courville, 2016. Available online: https://www.deeplearningbook.org
- - Algorithmic Mathematics in Machine Learning by Bastian Bohn, Jochen Garcke and Michael Griebel, 2024
Übung zur Veranstaltung
Nummer der Übung011603Dozentinnen und DozentenÜbungsgruppen « (zurück) zum Vorlesungsverzeichnis