UnivIS
Informationssystem der Otto-Friedrich-Universität Bamberg © Config eG 
Zur Titelseite der Universität Bamberg
  Sammlung/Stundenplan Home  |  Anmelden  |  Kontakt  |  Hilfe 
Suche:      Semester:   
 
 Darstellung
 
kompakt

kurz

Druckansicht

 
 
Stundenplan

 
 
 Extras
 
alle markieren

alle Markierungen löschen

Ausgabe als XML

 
 
 Außerdem im UnivIS
 
Lehrveranstaltungen einzelner Einrichtungen

 
 
Vorlesungsverzeichnis >> Fakultät Wirtschaftsinformatik und Angewandte Informatik >> Bachelor-/Masterstudiengänge Angewandte Informatik, Computing in the Humanities, International Information Systems Management, Software Systems Science, International Software Systems Science, Wirtschaftsinformatik, Wirtschaftspädagogik mit Schwerpunkt Wirtschaftsinformatik >> Lehrveranstaltungen für Bachelor >> Angewandte Informatik >>

Erklärbares maschinelles Lernen

 

xAI-Proj-B: Bachelorprojekt Erklärbares Maschinelles Lernen

Dozent/in:
Sebastian Dörrich
Angaben:
Projektseminar, 4,00 SWS, ECTS: 6
Termine:
Do, 14:00 - 18:00, WE5/04.003

 

xAI-Sem-B1: Bachelorseminar Erklärbares Maschinelles Lernen

Dozent/in:
Christian Ledig
Angaben:
Seminar, 2,00 SWS, ECTS: 3
Termine:
Mo, 16:00 - 18:00, WE5/05.005
Voraussetzungen / Organisatorisches:
Interest and registration
Email with name, matriculation number, degree program to christian.ledig@uni-bamberg.de before 29.4.2024.

Eligibility B.Sc. AI, B.Sc. SoSySc, (B.Sc. WI only after prior consultation with the examination office), (potentially also as MSc CitH course)

VC Course https://vc.uni-bamberg.de/course/view.php?id=67941
Inhalt:
Focus Topic in SS 2024: Evaluation of AI models

Motivation
In this seminar, we will focus on approaches for evaluating different kinds of AI models. The careful quantitative assessment of the performance of an AI model is of critical importance to ensure its safe deployment in real-world settings. It is further the foundation of scientific research, enabling researchers to assess the impact of algorithmic changes and compare the performance of an AI system to the state of the art. Most importantly, objective, thorough evaluation allows the identification of biases and weaknesses in the system that would be problematic in practice, potentially putting the user or patient at risk.

Goals and Topics You will learn about established evaluation measures for different types of AI algorithms with a focus on the domain of computer vision and medical image processing. Specifically you will learn how to evaluate algorithms for: image classification, object detection and image segmentation. You will further have the opportunity to learn about common pitfalls, data biases, ground truthing, cross-validation and important considerations when creating datasets for evaluation.

Time and location
Monday (4-6pm) in WE5/05.005;
Initial Meeting (general info): 15.04;
Second Meeting (mandatory for participants): 22.04.



UnivIS ist ein Produkt der Config eG, Buckenhof