Veranstaltungsverzeichnis

Veranstaltungsverzeichnis

Department für Informatik Click here for PDF-Download

Summer semester 2024 38 Seminars
VAK Course Number Title Type Lecture
Preliminary studies
Advanced courses
Practical course
Colloquium
Research group
Workgroup
Project group
Council conference
Internship
Language course
Subject didactics
Excursion
Tutorial
Committee
SWS Semester weekly hours Teachers Degree
2.01.515 Intelligente Energiesysteme Mittwoch: 10:00 - 14:00, wöchentlich (ab 03.04.2024)

Description:
Modern power grids face a multitude of challenges: A high share of renewables means a more sophisticated management of real power demand and supply, ancillary services are provided in an ever more decentralized manner, and power grids must become resilient instead of just being robust. Agent systems have established themselves as methodology for a decentralized and resilient operation of modern power grids. Especially learning agents based on Deep Reinforcement Learnings can react to unforseen events and find good strategies even in complex situations. In this lecture, we will introduce an approach for flexibility modelling as a way to provide an agent's view of the world, and will extensively concern ourselves with the application of Deep Reinforcement Learning in power grids, including approaches to explainability and learning from domain knowledge (offline learning). Modern power grids face a multitude of challenges: A high share of renewables means a more sophisticated management of real power demand and supply, ancillary services are provided in an ever more decentralized manner, and power grids must become resilient instead of just being robust. Agent systems have established themselves as methodology for a decentralized and resilient operation of modern power grids. Especially learning agents based on Deep Reinforcement Learnings can react to unforseen events and find good strategies even in complex situations. In this lecture, we will introduce an approach for flexibility modelling as a way to provide an agent's view of the world, and will extensively concern ourselves with the application of Deep Reinforcement Learning in power grids, including approaches to explainability and learning from domain knowledge (offline learning).
Lecture - Dr.-Ing. Eric Veith
Jörg Bremer
  • Master
2.01.591 Smart Grid Research Donnerstag: 12:00 - 14:00, wöchentlich (ab 04.04.2024)

Description:
Die Veranstaltung "Smart Grid Research" deckt ein breites Spektrum an Themen der Forschung im Bereich der intelligenten Stromnetze ab. Beginnend mit einer grundlegenden Einführung in Smart Grids, werden die Teilnehmenden mit den Zielen, der Bedeutung, der Geschichte und der Entwicklung von Smart Grids vertraut gemacht. Dies bildet die Grundlage für ein tieferes Verständnis der Schlüsseltechnologien und -komponenten, die in Smart Grids zum Einsatz kommen. In einem weiteren Teil der Veranstaltung lernen die Studierenden die Grundlagen von Forschung kennen und erlernen Kompetenzen, wie das effiziente Lesen von wissenschaftlichen Publikationen. Um den praktischen und aktuellen Bezug zu stärken, werden begleitend zu ausgewählten Schwerpunktthemen anschließend aktuelle Forschungsprojekte vorgestellt. Dies ermöglicht es den Studierenden, Einblicke in die neuesten Entwicklungen und Herausforderungen im Bereich der Smart Grids zu erhalten. Die Veranstaltung "Smart Grid Research" deckt ein breites Spektrum an Themen der Forschung im Bereich der intelligenten Stromnetze ab. Beginnend mit einer grundlegenden Einführung in Smart Grids, werden die Teilnehmenden mit den Zielen, der Bedeutung, der Geschichte und der Entwicklung von Smart Grids vertraut gemacht. Dies bildet die Grundlage für ein tieferes Verständnis der Schlüsseltechnologien und -komponenten, die in Smart Grids zum Einsatz kommen. In einem weiteren Teil der Veranstaltung lernen die Studierenden die Grundlagen von Forschung kennen und erlernen Kompetenzen, wie das effiziente Lesen von wissenschaftlichen Publikationen. Um den praktischen und aktuellen Bezug zu stärken, werden begleitend zu ausgewählten Schwerpunktthemen anschließend aktuelle Forschungsprojekte vorgestellt. Dies ermöglicht es den Studierenden, Einblicke in die neuesten Entwicklungen und Herausforderungen im Bereich der Smart Grids zu erhalten.
Seminar 2 Prof. Dr. Sebastian Lehnhoff
Malin Radtke, M. Sc.
Jörg Bremer
  • Bachelor
  • Master of Education
  • Master
2.01.334 System Level Design Montag: 12:00 - 14:00, wöchentlich (ab 08.04.2024)
Montag: 14:00 - 16:00, wöchentlich (ab 08.04.2024)

Description:
Lecture 4 Mahsa Moazez
Sven Niklas Mehlhop
Jörg Walter
Kim Grüttner
Henning Schlender, M.Sc.
  • Master
2.01.369-A Selected topics in nanomechanics and the mechanical characterization of nanomaterials using microscopy Donnerstag: 10:00 - 12:00, wöchentlich (ab 04.04.2024)

Description:
The functionality of biomimetic reversable adhesives, ultra-high strength nanocomposites, piezoelectric nanogenerators, electromechanical contact switches, mechanical resonators, as well as ultra-sensitive force and chemical sensors is dependent on nanomechanical phenomena. To experimentally investigate nanomechanical phenomena, nanorobotics and microscopy tools are combined and exploited. A variety of topics within the field of nanomechanics and related experimental methods and tools are presented in an introductory lecture. Students select a topic that they are most interested in to carry out individual work. Topics can be more theoretically or practically orientated depending on the curiosity of the student. Students can also propose their own topics. Students can also be provided with the opportunity to conduct laboratory work, including carrying out nanomanipulation using optical or scanning electron microscopes. In the second half of semester, each student will give a lecture or presentation on their selected topic, and will be provided feedback on both their content and communication skills. Learning objectives: • Acquire knowledge in the field of nanomechanics, including: o fundamental concepts in the mechanic properties of materials, o the advantages, challenges, and application of nanomaterials, o microscopy and nanohandling basics and their application towards studying the mechanics of nanomaterials o insights into the state of the art in nanomechanics research. • Further develop research and communication skills through self-directed reading and presentations. The functionality of biomimetic reversable adhesives, ultra-high strength nanocomposites, piezoelectric nanogenerators, electromechanical contact switches, mechanical resonators, as well as ultra-sensitive force and chemical sensors is dependent on nanomechanical phenomena. To experimentally investigate nanomechanical phenomena, nanorobotics and microscopy tools are combined and exploited. A variety of topics within the field of nanomechanics and related experimental methods and tools are presented in an introductory lecture. Students select a topic that they are most interested in to carry out individual work. Topics can be more theoretically or practically orientated depending on the curiosity of the student. Students can also propose their own topics. Students can also be provided with the opportunity to conduct laboratory work, including carrying out nanomanipulation using optical or scanning electron microscopes. In the second half of semester, each student will give a lecture or presentation on their selected topic, and will be provided feedback on both their content and communication skills. Learning objectives: • Acquire knowledge in the field of nanomechanics, including: o fundamental concepts in the mechanic properties of materials, o the advantages, challenges, and application of nanomaterials, o microscopy and nanohandling basics and their application towards studying the mechanics of nanomaterials o insights into the state of the art in nanomechanics research. • Further develop research and communication skills through self-directed reading and presentations.
Seminar 2 Dr. James Mead
  • Master
2.01.100 Human-Computer Interaction Mittwoch: 10:00 - 12:00, wöchentlich (ab 03.04.2024)
Freitag: 10:00 - 12:00, wöchentlich (ab 05.04.2024)

Description:
Lecture 4 Tobias Lunte
Prof. Dr. Susanne Boll-Westermann
  • Master
2.01.809 Selected Topics in IT-Security Donnerstag: 14:00 - 16:00, wöchentlich (ab 04.04.2024)

Description:
/// Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments within the field of IT-security, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific topic in the field of IT-security. There will be multiple topics, and each topic is to be tackled by an individual student. Students will be handed out material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. In the start of the course, all available topics will be introduced to the students so that they can pick a for them suitable topic. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// * Malicious software * Security operations centers and their performance * Weaknesses of the RSA cryptosystem * Zero-knowledge proofs (ZKPs) * Online tracking methods and countermeasures * Privacy in instant messaging * Privacy metrics and ways to achieve certain privacy levels * Your own topic More details will follow. /// Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments within the field of IT-security, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific topic in the field of IT-security. There will be multiple topics, and each topic is to be tackled by an individual student. Students will be handed out material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. In the start of the course, all available topics will be introduced to the students so that they can pick a for them suitable topic. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// * Malicious software * Security operations centers and their performance * Weaknesses of the RSA cryptosystem * Zero-knowledge proofs (ZKPs) * Online tracking methods and countermeasures * Privacy in instant messaging * Privacy metrics and ways to achieve certain privacy levels * Your own topic More details will follow.
Seminar 2 Prof. Dr. Andreas Peter
  • Bachelor
2.01.810 Explainable Artificial Intelligence - Introduction and Application Design Termine am Donnerstag, 11.04.2024 15:00 - 16:00, Montag, 26.08.2024 - Freitag, 30.08.2024 09:00 - 18:00, Montag, 30.09.2024 09:00 - 13:00
Description:
This course combines theoretical foundations from the field of Explainable Artificial Intelligence (XAI) with practical implementations for real-world problems. The course is stuctured in 4 parts: Part I includes the research of the theoretical background of Explainable Artificfial Intelligence (XAI). Part II is a 1-week programming block seminar covering the basics of XAI. In Part III, you will build and evaluate your own real-world XAI application and write a term paper. Part IV is a presentation and feedback session. Please download the instructions for the assignment to get a detailed overview of the course structure. This module will be held in cooperation with students from the Ruhr University Bochum (Prof. Dr. Christian Meske). The entire course takes place online. All course materials will be made available in the cloud storage of the Ruhr Universität Bochum. To access them, please create an account by following the steps below: 1. https://moodle.ruhr-uni-bochum.de/login/index.php 2. create a new account ("Neues Konto anlegen") 3. accept the "Terms of Use 4. accept the "Privacy Policy 5. fill in the document 5.1 Reason for creating an account Participation in a course (study outside the RUB) ("Grund für die Erstellung des Kontos: Teilnahme an einer Lehrveranstaltung (Studium außerhalb der RUB)") 6. confirm your email address via the link in RUB Moodle: Confirmation of access (mail may take a few minutes) 7. search for the course: 'Erklärbare Künstliche Intelligenz - Programmierpraktikum SS24 (SoSe 2024)' (Password: XaiSOse2024) This course combines theoretical foundations from the field of Explainable Artificial Intelligence (XAI) with practical implementations for real-world problems. The course is stuctured in 4 parts: Part I includes the research of the theoretical background of Explainable Artificfial Intelligence (XAI). Part II is a 1-week programming block seminar covering the basics of XAI. In Part III, you will build and evaluate your own real-world XAI application and write a term paper. Part IV is a presentation and feedback session. Please download the instructions for the assignment to get a detailed overview of the course structure. This module will be held in cooperation with students from the Ruhr University Bochum (Prof. Dr. Christian Meske). The entire course takes place online. All course materials will be made available in the cloud storage of the Ruhr Universität Bochum. To access them, please create an account by following the steps below: 1. https://moodle.ruhr-uni-bochum.de/login/index.php 2. create a new account ("Neues Konto anlegen") 3. accept the "Terms of Use 4. accept the "Privacy Policy 5. fill in the document 5.1 Reason for creating an account Participation in a course (study outside the RUB) ("Grund für die Erstellung des Kontos: Teilnahme an einer Lehrveranstaltung (Studium außerhalb der RUB)") 6. confirm your email address via the link in RUB Moodle: Confirmation of access (mail may take a few minutes) 7. search for the course: 'Erklärbare Künstliche Intelligenz - Programmierpraktikum SS24 (SoSe 2024)' (Password: XaiSOse2024)
Lecture - Prof. Dr. Daniel Sonntag
Hannes Kath
  • Master
2.01.5124 Research Project Digitalised Energy Systems Die Zeiten der Veranstaltung stehen nicht fest.
Description:
Lecture - Prof. Dr.-Ing. habil. Andreas Rauh
Prof. Dr. Sebastian Lehnhoff
Prof. Dr. Astrid Nieße
Jörg Bremer
  • Master
2.01.5118 Decentralised Nonlinear Model-Based Control in Digitalised Energy Systems Montag: 16:00 - 18:00, wöchentlich (ab 08.04.2024)
Freitag: 14:00 - 16:00, wöchentlich (ab 05.04.2024)

Description:
1. Fundamentals of control-oriented modeling 2. Special properties of nonlinear control systems · Finite escape time · Chaos · Limit cycles · Equilibria 3. Stability properties/ Stability analysis · Local vs. global stability · Lyapunov methods · Stability of limit cycles · Criteria for the proof of instability 4. Nonlinear control design · Control Lyapunov functions · Backstepping control · Feedback linearization · Flatness-based control 5. Nonlinear observer synthesis 1. Fundamentals of control-oriented modeling 2. Special properties of nonlinear control systems · Finite escape time · Chaos · Limit cycles · Equilibria 3. Stability properties/ Stability analysis · Local vs. global stability · Lyapunov methods · Stability of limit cycles · Criteria for the proof of instability 4. Nonlinear control design · Control Lyapunov functions · Backstepping control · Feedback linearization · Flatness-based control 5. Nonlinear observer synthesis
Lecture 4 Prof. Dr.-Ing. habil. Andreas Rauh
Marit Lahme
Oussama Benzinane
  • Master
2.01.5122 Learning-Based Control in Digitalised Energy Systems Dienstag: 16:00 - 18:00, wöchentlich (ab 02.04.2024), Ort: A14 1-113
Mittwoch: 10:00 - 12:00, wöchentlich (ab 03.04.2024), Ort: A04 2-221

Description:
1. Iterative learning control (ILC) · Fundamental 2D system structures · Stability criteria · Selected optimization approaches 2. Data-driven neural network model-ing vs. first-principle modeling · Static function approximations · NARX modeling 3. Design of neural network-based controllers 4. Stability of neural network-based controllers 1. Iterative learning control (ILC) · Fundamental 2D system structures · Stability criteria · Selected optimization approaches 2. Data-driven neural network model-ing vs. first-principle modeling · Static function approximations · NARX modeling 3. Design of neural network-based controllers 4. Stability of neural network-based controllers
Lecture 4 Prof. Dr.-Ing. habil. Andreas Rauh
Marit Lahme
Oussama Benzinane
  • Master
2.01.697 Current Issues on Digital Transformation in the Energy Sector and Green Information Systems Dienstag: 08:00 - 10:00, wöchentlich (ab 02.04.2024)

Description:
In diesem Modul werden aktuelle Beträge der Forschung zur Digitalen Transformation im Energiesektor sowie Green Information Systems gelehrt und deren Relevanz für die Wissenschaft und Praxis diskutiert. Durch die Diskussion und Reflexion verschiedener wissenschaftlicher Veröffentlichungen in den genannten Themenfeldern werden fundamentale Erkenntnisse zum Verständnis von wissenschaftlichen Ergebnissen und Methodenkompetenzen vermittelt. Im Einzelnen sind dies Beiträge zu folgenden Themenbereichen (unter anderem): • (Neue) Geschäftsmodelle im Energiesektor • Akzeptanz und (Nicht-)Nutzung von nachhaltigen Technologien • Digitalisierung der Energieforschung • Forschungsdatenmanagement im Energiesektor • Open Science in der Energieforschung In diesem Modul werden aktuelle Beträge der Forschung zur Digitalen Transformation im Energiesektor sowie Green Information Systems gelehrt und deren Relevanz für die Wissenschaft und Praxis diskutiert. Durch die Diskussion und Reflexion verschiedener wissenschaftlicher Veröffentlichungen in den genannten Themenfeldern werden fundamentale Erkenntnisse zum Verständnis von wissenschaftlichen Ergebnissen und Methodenkompetenzen vermittelt. Im Einzelnen sind dies Beiträge zu folgenden Themenbereichen (unter anderem): • (Neue) Geschäftsmodelle im Energiesektor • Akzeptanz und (Nicht-)Nutzung von nachhaltigen Technologien • Digitalisierung der Energieforschung • Forschungsdatenmanagement im Energiesektor • Open Science in der Energieforschung
Seminar 2 Dr. Oliver Werth
  • Master
2.01.5456 Applied AI - Multimodal-Multisensor Interfaces 1: Foundations, User Modeling, and Common Modality Combination Die Zeiten der Veranstaltung stehen nicht fest.
Description:
We look at relevant theory and neuroscience foundations for guiding the development of high-performance systems. We discuss approaches to user modeling, interface design that supports user choice, synergistic combination of modalities with sensors, and blending of multimodal input and output. We also highlight an in-depth look at the most common multimodal-multisensor combinations- for example, touch and pen input, haptic and non-speech audio output, and speech co-processed with visible lip movements, gaze, gestures, or pen input. A common theme throughout is support for mobility and individual differences among users-including the world's rapidly growing population of seniors. This seminar would be most appropriate for graduate students, and of primary interest to students studying computer science and information technology, human–computer interfaces, mobile and ubiquitous interfaces, and related multidisciplinary majors. Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Signal Processing, Architectures, and Detection of Emotion and Cognition - Volume 1" (https://dl.acm.org/doi/book/10.1145/3015783). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Ilira Troshani, ilira.troshani@uni-oldenburg.de We look at relevant theory and neuroscience foundations for guiding the development of high-performance systems. We discuss approaches to user modeling, interface design that supports user choice, synergistic combination of modalities with sensors, and blending of multimodal input and output. We also highlight an in-depth look at the most common multimodal-multisensor combinations- for example, touch and pen input, haptic and non-speech audio output, and speech co-processed with visible lip movements, gaze, gestures, or pen input. A common theme throughout is support for mobility and individual differences among users-including the world's rapidly growing population of seniors. This seminar would be most appropriate for graduate students, and of primary interest to students studying computer science and information technology, human–computer interfaces, mobile and ubiquitous interfaces, and related multidisciplinary majors. Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Signal Processing, Architectures, and Detection of Emotion and Cognition - Volume 1" (https://dl.acm.org/doi/book/10.1145/3015783). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Ilira Troshani, ilira.troshani@uni-oldenburg.de
Seminar - Rida Saghir
Ilira Troshani
Hannes Kath
Prof. Dr. Daniel Sonntag
  • Master
2.01.6602 Sustainable Information Systems Dienstag: 12:00 - 14:00, wöchentlich (ab 02.04.2024), Ort: A05 1-160
Donnerstag: 12:00 - 14:00, wöchentlich (ab 04.04.2024), Ort: A07 0-031

Description:
In dieser Veranstaltung werden Anwendungen digitaler Werkzeuge zum nachhaltigen Wirtschaften besprochen. In diesem Zusammenhang werden außerdem wirtschaftsinformatische Forschungsmethoden eingeführt und vertieft. Dazu gehören Labor- und Feldexperimente, Umfragen und Case Studies. Hörer:innen der Veranstaltung gewinnen so einen Zugang zum wissenschaftlichen Arbeiten in der nachhaltigen Wirtschaftsinformatikforschung. In dieser Veranstaltung werden Anwendungen digitaler Werkzeuge zum nachhaltigen Wirtschaften besprochen. In diesem Zusammenhang werden außerdem wirtschaftsinformatische Forschungsmethoden eingeführt und vertieft. Dazu gehören Labor- und Feldexperimente, Umfragen und Case Studies. Hörer:innen der Veranstaltung gewinnen so einen Zugang zum wissenschaftlichen Arbeiten in der nachhaltigen Wirtschaftsinformatikforschung.
Lecture - Prof. Dr. Philipp Staudt
  • Master
2.01.040 Data Science I Dienstag: 16:00 - 18:00, wöchentlich (ab 02.04.2024)
Donnerstag: 16:00 - 18:00, wöchentlich (ab 11.04.2024)

Description:
Data Science is an interdisciplinary science at the intersection of statistics, machine learning, data visualization, and mathematical modeling. This course is designed to provide a practical introduction to the field of Data Science by teaching theoretical principles while also applying them practically. Topics covered range from data collection and preparation (data sources & formats, data cleaning, data bias), mathematical foundations (statistical distributions, correlation analysis, significance) and methods for visualization (tables & plots, histograms, best practices) to the development of models for classifying or predicting values (linear regression, classification, clustering). Data Science is an interdisciplinary science at the intersection of statistics, machine learning, data visualization, and mathematical modeling. This course is designed to provide a practical introduction to the field of Data Science by teaching theoretical principles while also applying them practically. Topics covered range from data collection and preparation (data sources & formats, data cleaning, data bias), mathematical foundations (statistical distributions, correlation analysis, significance) and methods for visualization (tables & plots, histograms, best practices) to the development of models for classifying or predicting values (linear regression, classification, clustering).
Lecture 4 Prof. Dr. Wolfram Wingerath
  • Bachelor
  • Master of Education
  • Master
2.01.AM-56 Oberseminar Applied Artificial Intelligence Die Zeiten der Veranstaltung stehen nicht fest.
Description:
Your Advisor and Your Committee In order to write a bachelor’s or master’s thesis you must find a member of the IML lab who is willing to be your thesis advisor. You propose your thesis topic together with your advisor to Prof. Sonntag as the first reviewer in your committee. How Long Should it Be? How Long Does it Take? A bachelor’s thesis is generally 20-40 pages, not including the bibliography. A master’s thesis is generally 40-80 pages, not including the bibliography. However, the length will vary according to the topic and the method of analysis, so the appropriate length will be determined by you, your advisor, and your committee. Students who write a master’s thesis generally do so over two semesters, bachelor’s one semester. More information: https://iml.dfki.de/teaching/writing-a-thesis/ Your Advisor and Your Committee In order to write a bachelor’s or master’s thesis you must find a member of the IML lab who is willing to be your thesis advisor. You propose your thesis topic together with your advisor to Prof. Sonntag as the first reviewer in your committee. How Long Should it Be? How Long Does it Take? A bachelor’s thesis is generally 20-40 pages, not including the bibliography. A master’s thesis is generally 40-80 pages, not including the bibliography. However, the length will vary according to the topic and the method of analysis, so the appropriate length will be determined by you, your advisor, and your committee. Students who write a master’s thesis generally do so over two semesters, bachelor’s one semester. More information: https://iml.dfki.de/teaching/writing-a-thesis/
Seminar - Michael Barz, M. Sc.
Bengt Lüers
Prof. Dr. Daniel Sonntag
Ilira Troshani
  • Bachelor
  • Master of Education
  • Master
2.01.204 Eingebettete Systeme II Dienstag: 08:00 - 10:00, wöchentlich (ab 02.04.2024)
Mittwoch: 08:00 - 10:00, wöchentlich (ab 03.04.2024)

Description:
Lecture 4 Prof. Dr. Martin Georg Fränzle
Rabeaeh Kiaghadi
Akhila Bairy
  • Bachelor
  • Master of Education
  • Master
2.01.369 Selected Topics in Microwave-Microscopy and -Communication Systems Mittwoch: 10:00 - 12:00, wöchentlich (ab 03.04.2024)

Description:
Seminar 2 Dr. Muhammad Yasir
  • Master
2.01.175 Digital Design and Fabrication Donnerstag: 10:00 - 12:00, wöchentlich (ab 04.04.2024), VL
Donnerstag: 12:00 - 14:00, wöchentlich (ab 04.04.2024), Ü

Description:
Lecture 4 Mikolaj Wozniak
Dr. rer. nat. Marion Koelle
Tobias Lunte
  • Master
2.01.368 Microrobotics Selected Topics Freitag: 10:00 - 12:00, wöchentlich (ab 05.04.2024)

Description:
This seminar is an addition to the main lecture series “2.01.208 Mikrorobotik und Mikrosystemtechnik” Topics - Swimming MR - Flying MR - MR for surface locomotion - Gecko MR - Soft MR - On-chip MR - In-vivo MR - Bacteria- and Cell-MR - MR Swarms - Molecular MR This seminar is an addition to the main lecture series “2.01.208 Mikrorobotik und Mikrosystemtechnik” Topics - Swimming MR - Flying MR - MR for surface locomotion - Gecko MR - Soft MR - On-chip MR - In-vivo MR - Bacteria- and Cell-MR - MR Swarms - Molecular MR
Seminar 2 Prof. Dr. Sergej Fatikow
  • Master
2.01.5128 AI in Energy Systems Montag: 14:00 - 16:00, wöchentlich (ab 08.04.2024)

Description:
Seminar 2 Jörg Bremer
  • Master
2.01.814-B Computing on Encrypted Data Die Zeiten der Veranstaltung stehen nicht fest.
Description:
// Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments regarding secure computation methods on encrypted data, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific method of secure computation on encrypted data. Each available topic is to be tackled by an individual student. For this purpose students will be provided with material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Finally, students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. At the beginning of the course, all available topics will be introduced to the students so that they can pick a topic suitable for them. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// * Hardware Acceleration for Homomorpic Encryption; * Funtional Encryption; * NTRU-based Homomorphic Encryption; * Threshold and Multiparty Homomorphic Encryption; * Hybrid Homomorphic Encryption; * Functional Secret Sharing; * Your Own Topic; More details on the topics will follow. // Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments regarding secure computation methods on encrypted data, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific method of secure computation on encrypted data. Each available topic is to be tackled by an individual student. For this purpose students will be provided with material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Finally, students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. At the beginning of the course, all available topics will be introduced to the students so that they can pick a topic suitable for them. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// * Hardware Acceleration for Homomorpic Encryption; * Funtional Encryption; * NTRU-based Homomorphic Encryption; * Threshold and Multiparty Homomorphic Encryption; * Hybrid Homomorphic Encryption; * Functional Secret Sharing; * Your Own Topic; More details on the topics will follow.
Seminar - Valentin Reyes Häusler
Prof. Dr. Andreas Peter
  • Master
2.01.950 Exploring Research Data Management Mittwoch: 08:00 - 10:00, wöchentlich (ab 10.04.2024), Ort: A04 2-221
Donnerstag: 16:00 - 18:00, wöchentlich (ab 04.04.2024), Ort: A14 0-030

Description:
In this course students will learn about different methods of research data management. Students are introduced to the topics of: - research data, - digital research objects, - data management plans, - data management services, - the FAIR criteria (Findable, Accessible, Interoperable and Reusable) for digital research object and how to fulfill them, - Open Science. They will learn about the importance of data management when working together as groups, as well as when working alone, and how to plan their data management for different research scenarios. After the course, the students will be able to handle different types of digital research objects in a reproducible and FAIR way. They will know about different digital research objects such as electronic lab notes, csv, research software etc. Goals of the course: Students will be able to identify data in its different forms. They will be able to identify different types of digital research objects that will be collected in a research project and analyze the project to come up with a fitting data management plan. They will be able to identify the data lifecycle and plan accordingly to ensure that data is preserved when needed. Furthermore, students will be familiarized with the term research data management, research data services and different tools to aid in research data management. Students learn about the FAIR criteria and how to create digital research objects which fulfill these criteria. In this course students will learn about different methods of research data management. Students are introduced to the topics of: - research data, - digital research objects, - data management plans, - data management services, - the FAIR criteria (Findable, Accessible, Interoperable and Reusable) for digital research object and how to fulfill them, - Open Science. They will learn about the importance of data management when working together as groups, as well as when working alone, and how to plan their data management for different research scenarios. After the course, the students will be able to handle different types of digital research objects in a reproducible and FAIR way. They will know about different digital research objects such as electronic lab notes, csv, research software etc. Goals of the course: Students will be able to identify data in its different forms. They will be able to identify different types of digital research objects that will be collected in a research project and analyze the project to come up with a fitting data management plan. They will be able to identify the data lifecycle and plan accordingly to ensure that data is preserved when needed. Furthermore, students will be familiarized with the term research data management, research data services and different tools to aid in research data management. Students learn about the FAIR criteria and how to create digital research objects which fulfill these criteria.
Lecture 4 Prof. Dr. Astrid Nieße
Stephan Alexander Ferenz, M. Sc.
Thomas Wolgast, M. Sc.
M. Sc. Alexandro Steinert
Graduate School OLTECH
  • Master
2.01.5454 Current Topics in Artificial Intelligence for Health Freitag: 14:00 - 16:00, wöchentlich (ab 05.04.2024)

Description:
In diesem Seminar sollen aktuelle Publikationen/Themen im Bereich des Maschinellen Lernens behandelt werden mit besonderem Augenmerk auf Anwendungen im Bereich Gesundheitsdaten. Dabei sollen sowohl Bereiche mit hohem methodischen Fokus (wie z.B. self-supervised learning, Qualitätskriterien wie Interpretierbarkeit/Unsicherheitsquantifizierung) als auch medizinische Anwendungsthemen abgedeckt werden. Das Seminar wird in einem Format mit verteilten Rollen veranstaltet in dem in zweiwöchentlichen Treffen kurze Präsentationen zu ausgewählten Themenbereichen vorgestellt und gemeinsam diskutiert werden. In diesem Seminar sollen aktuelle Publikationen/Themen im Bereich des Maschinellen Lernens behandelt werden mit besonderem Augenmerk auf Anwendungen im Bereich Gesundheitsdaten. Dabei sollen sowohl Bereiche mit hohem methodischen Fokus (wie z.B. self-supervised learning, Qualitätskriterien wie Interpretierbarkeit/Unsicherheitsquantifizierung) als auch medizinische Anwendungsthemen abgedeckt werden. Das Seminar wird in einem Format mit verteilten Rollen veranstaltet in dem in zweiwöchentlichen Treffen kurze Präsentationen zu ausgewählten Themenbereichen vorgestellt und gemeinsam diskutiert werden.
Seminar 2 Prof. Dr. Nils Strodthoff
Juan Lopez Alcaraz
  • Master
2.01.586 Privacy-preserving Data-driven Optimization Donnerstag: 12:00 - 14:00, wöchentlich (ab 04.04.2024)

Description:
Seminar 2 Prof. Dr. Sebastian Lehnhoff
Jörg Bremer
  • Master
2.01.801-D Forschungsseminar Applied Artificial Intelligence (Bachelor/Masterseminar) Die Zeiten der Veranstaltung stehen nicht fest.
Description:
Seminar - Michael Barz, M. Sc.
Prof. Dr. Daniel Sonntag
Ilira Troshani
  • Bachelor
2.01.536 Convolutional Neural Networks Die Zeiten der Veranstaltung stehen nicht fest.
Description:
The lecture "Convolutional Neural Networks" gives an introduction to neural networks via MLP, Backpropagation, Convolutional Layers and ResNet. In the exercises the concepts will be programmed in Python and Keras. The lecture "Convolutional Neural Networks" gives an introduction to neural networks via MLP, Backpropagation, Convolutional Layers and ResNet. In the exercises the concepts will be programmed in Python and Keras.
Lecture - Prof. Dr. Oliver Kramer
  • Master
2.01.5120 Digitalised Energy System Co-Simulation Montag: 12:00 - 14:00, wöchentlich (ab 08.04.2024), Ort: A01 0-005
Freitag: 10:00 - 12:00, wöchentlich (ab 05.04.2024), Ort: A05 1-159

Description:
Lecture 4 Jörg Bremer
Prof. Dr. Sebastian Lehnhoff
  • Master
2.01.5458 Applied AI - Multimodal-Multisensor Interfaces 2: Signal Processing, Architectures, and Detection of Emotion and Cognition Die Zeiten der Veranstaltung stehen nicht fest.
Description:
We begin with multimodal signal processing, architectures, and machine learning. It includes recent deep-learning approaches for processing multisensorial and multimodal user data and interaction, as well as context-sensitivity. A further highlight is processing of information about users' states and traits, an exciting emerging capability in next-generation user interfaces. We discuss real-time multimodal analysis of emotion and social signals from various modalities and perception of affective expression by users. Then we discuss multimodal processing of cognitive state using behavioral and physiological signals to detect cognitive load, domain expertise, deception, and depression. This collection of chapters provides walk-through examples of system design and processing, information on tools and practical resources for developing and evaluating new systems, and terminology, and tutorial support for mastering this rapidly expanding field. Finally, we look at experts' exchange views on the timely and controversial challenge topic of multimodal deep learning. The discussion focuses on how multimodal-multisensor interfaces are most likely to advance human performance during the next decade. This seminar is most appropriate for graduate students and of primary interest to students studying computer science and information technology, human-computer interfaces, mobile and ubiquitous interfaces, affective and behavioral computing, machine learning, and related multidisciplinary majors. Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Signal Processing, Architectures, and Detection of Emotion and Cognition - Volume 2" (https://dl.acm.org/doi/book/10.1145/3107990). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Hannes Kath, hannes.kath@uni-oldenburg.de We begin with multimodal signal processing, architectures, and machine learning. It includes recent deep-learning approaches for processing multisensorial and multimodal user data and interaction, as well as context-sensitivity. A further highlight is processing of information about users' states and traits, an exciting emerging capability in next-generation user interfaces. We discuss real-time multimodal analysis of emotion and social signals from various modalities and perception of affective expression by users. Then we discuss multimodal processing of cognitive state using behavioral and physiological signals to detect cognitive load, domain expertise, deception, and depression. This collection of chapters provides walk-through examples of system design and processing, information on tools and practical resources for developing and evaluating new systems, and terminology, and tutorial support for mastering this rapidly expanding field. Finally, we look at experts' exchange views on the timely and controversial challenge topic of multimodal deep learning. The discussion focuses on how multimodal-multisensor interfaces are most likely to advance human performance during the next decade. This seminar is most appropriate for graduate students and of primary interest to students studying computer science and information technology, human-computer interfaces, mobile and ubiquitous interfaces, affective and behavioral computing, machine learning, and related multidisciplinary majors. Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Signal Processing, Architectures, and Detection of Emotion and Cognition - Volume 2" (https://dl.acm.org/doi/book/10.1145/3107990). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Hannes Kath, hannes.kath@uni-oldenburg.de
Seminar - Rida Saghir
Ilira Troshani
Hannes Kath
Prof. Dr. Daniel Sonntag
  • Master
2.01.5106 Optimal and Model-Predictive Control Dienstag: 12:00 - 14:00, wöchentlich (ab 02.04.2024), Ort: V02 0-002
Donnerstag: 08:00 - 10:00, wöchentlich (ab 04.04.2024), Ort: A05 1-160

Description:
1. Parameter optimization · Unconstrained optimisation · Optimisation under equality/ inequality constraints 2. Dynamic optimisation (structural optimi-sation) · Bellman’s optimality principle · Maximum principle of Pontryagin · Special optimisation problems: Mini-mum time problems, minimum energy, LQR 3. Linear model-predictive control 4. Nonlinear model-predictive control 5. Receding horizon state estimation 1. Parameter optimization · Unconstrained optimisation · Optimisation under equality/ inequality constraints 2. Dynamic optimisation (structural optimi-sation) · Bellman’s optimality principle · Maximum principle of Pontryagin · Special optimisation problems: Mini-mum time problems, minimum energy, LQR 3. Linear model-predictive control 4. Nonlinear model-predictive control 5. Receding horizon state estimation
Lecture 4 Prof. Dr.-Ing. habil. Andreas Rauh
Marit Lahme
Oussama Benzinane
Friederike Bruns, M. Sc.
  • Master
2.01.607 Business Intelligence II Die Zeiten der Veranstaltung stehen nicht fest.
Description:
Lecture - Viktor Dmitriyev
Dr.-Ing. Andreas Solsbach
  • Master
2.01.462 Cryptography Montag: 16:00 - 18:00, wöchentlich (ab 08.04.2024)
Donnerstag: 16:00 - 18:00, wöchentlich (ab 11.04.2024)

Description:
Lecture 4 Prof. Dr. Andreas Peter
Valentin Reyes Häusler
  • Master of Education
  • Master
2.01.5104 Introduction to Game Theory in Energy Systems Die Zeiten der Veranstaltung stehen nicht fest.
Description:
In diesem Modul werden theoretische Konzepte aus der Spieltheorie aufbereitet und in Ihren Bezügen zur Anwendung in cyber-physischen Energiesystemen (CPES) dargelegt. Dabei werden durchgängig anhand einfach nachvollziehbarer Beispiele fundamentale Konzepte vermittelt. Im einzelnen sind dies: Spieltheorie und Entscheidungstheorie Interdependenzen Kooperative und nicht-kooperative Systemtheorie Utility, diskrete und stetige Strategien, dominante Strategien Axiome der Spieltheorie Lösungskonzepte, u.a. iterierte Elimination, Rückwärtsinduktion Mehrstufige und wiederholte Spiel Teilspielperfektheit Diskontfaktor Mechanism Design, Märkte und Auktionen In CPES-Anwendungsbeispielen werden Bezüge zum zur verteilten künstlichen Intelligenz und Multi- Agentensystemen, zum Strategielernen und zum Agieren an Märkten in Energieanwendungen hergestellt. In diesem Modul werden theoretische Konzepte aus der Spieltheorie aufbereitet und in Ihren Bezügen zur Anwendung in cyber-physischen Energiesystemen (CPES) dargelegt. Dabei werden durchgängig anhand einfach nachvollziehbarer Beispiele fundamentale Konzepte vermittelt. Im einzelnen sind dies: Spieltheorie und Entscheidungstheorie Interdependenzen Kooperative und nicht-kooperative Systemtheorie Utility, diskrete und stetige Strategien, dominante Strategien Axiome der Spieltheorie Lösungskonzepte, u.a. iterierte Elimination, Rückwärtsinduktion Mehrstufige und wiederholte Spiel Teilspielperfektheit Diskontfaktor Mechanism Design, Märkte und Auktionen In CPES-Anwendungsbeispielen werden Bezüge zum zur verteilten künstlichen Intelligenz und Multi- Agentensystemen, zum Strategielernen und zum Agieren an Märkten in Energieanwendungen hergestellt.
Lecture - Prof. Dr. Astrid Nieße
  • Master
2.01.5450 Current topics in self-supervised and label-efficient learning Dienstag: 16:00 - 18:00, wöchentlich (ab 02.04.2024)

Description:
Dieses Seminar beschäftigt sich mit aktuellen Ansätzen zur Verbesserung der Label-Effizienz von maschinellen Lernverfahren in verschiedenen Anwendungsbereichen, von Computer Vision über Sprachverarbeitung bis hin zur Verarbeitung von Textdaten. Ein besonderer Fokus wird auf Methoden des selbst-überwachten Lernens liegen. Das Seminar wird in einem Format mit verteilten Rollen veranstaltet in dem in zweiwöchentlichen Treffen kurze Präsentationen zu ausgewählten Themenbereichen vorgestellt und gemeinsam diskutiert werden. Dieses Seminar beschäftigt sich mit aktuellen Ansätzen zur Verbesserung der Label-Effizienz von maschinellen Lernverfahren in verschiedenen Anwendungsbereichen, von Computer Vision über Sprachverarbeitung bis hin zur Verarbeitung von Textdaten. Ein besonderer Fokus wird auf Methoden des selbst-überwachten Lernens liegen. Das Seminar wird in einem Format mit verteilten Rollen veranstaltet in dem in zweiwöchentlichen Treffen kurze Präsentationen zu ausgewählten Themenbereichen vorgestellt und gemeinsam diskutiert werden.
Seminar 2 Prof. Dr. Nils Strodthoff
  • Master
2.01.814-A Advances in Security & Privacy Die Zeiten der Veranstaltung stehen nicht fest.
Description:
// Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments within the field of IT-security, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific topic from the fields of security and/or privacy. There will be multiple topics, and each topic is to be tackled by an individual student. Students will be handed out material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. In the start of the course, all available topics will be introduced to the students so that they can pick a for them suitable topic. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// Explainable Machine Learning in Security Attacks on Searchable Encrypted Databases and Countermeasures (Semi-)Automated Security Event Handling in Security Operations Centers Post-Quantum Encryption Algorithms Interplay of Safety and Security Mobile-App Fingerprinting on Encrypted Network Traffic Biometric Template Protection Automated Extraction of Tactics, Techniques, and Procedures from Cyber Threat Reports Your Own Topic More details on the topics will follow. // Goals of the course /// At the end of the course, students will be able to * analyze the technical merits of specific developments within the field of IT-security, * substantiate their analyses using existing and scientific documented knowledge, * clearly write up those analyses in a concise scientific report, and * further develop an attitude in which being able to clearly explain matters is geared to optimize the quality of feedback. /// Course contents /// The course contents consist of studying and assessing a specific topic from the fields of security and/or privacy. There will be multiple topics, and each topic is to be tackled by an individual student. Students will be handed out material such as scientific articles to help them understand the topic at hand. Part of the course consists of discovering additional material. Students will dig deep into the selected topic. Students will present their analyses and findings in two ways: in a concise scientific report as well as in a 20 min. presentation, which is followed by a discussion and a round of feedback. In the start of the course, all available topics will be introduced to the students so that they can pick a for them suitable topic. /// Assessment /// Students will be assessed on the basis of their written scientific report (high weight), their presentation and consequent discussion (medium to high weight), and the general process (low weight; includes: independence, planning, active involvement, …) /// Topics /// Explainable Machine Learning in Security Attacks on Searchable Encrypted Databases and Countermeasures (Semi-)Automated Security Event Handling in Security Operations Centers Post-Quantum Encryption Algorithms Interplay of Safety and Security Mobile-App Fingerprinting on Encrypted Network Traffic Biometric Template Protection Automated Extraction of Tactics, Techniques, and Procedures from Cyber Threat Reports Your Own Topic More details on the topics will follow.
Seminar - Prof. Dr. Andreas Peter
  • Master
2.01.5402 Trustworthy Machine Learning Montag: 12:00 - 14:00, wöchentlich (ab 08.04.2024)
Donnerstag: 08:00 - 10:00, wöchentlich (ab 04.04.2024)

Description:
Maschinelle Lernalgorithmen finden zunehmend breite Anwendung in verschiedensten insbesondere auch sicherheitskritischen Anwendungsbereichen, doch die Qualität dieser Algorithmen wird in den seltensten Fällen systematisch untersucht. Der Schwerpunkt dieser Veranstaltung liegt auf verschiedensten Qualitätsdimensionen für maschinelle Lernalgorithmen, insbesondere tiefe neuronale Netzwerke, angefangen von der Messung der Leistungsfähigkeit, über Interpretierbarkeit/Erklärbarkeit (XAI), Robustheit (adversarial robustness, Robustheit gegen Störung im Input), Unsicherheitsquantifizierung, Distribution Shift, Domain Adaptation, Fairness/Bias bis hin zu Privacy. Die Methoden werden in der Vorlesung theoretisch eingeführt und in den Übungen praktisch implementiert und angewendet. Inhaltliche Voraussetzungen sind grundlegende theoretische Kenntnisse im Bereich des maschinellen Lernens, praktische Programmierkenntnisse in Python und im Idealfall Grundkenntnisse im Training tiefer neuronaler Netzwerke. Maschinelle Lernalgorithmen finden zunehmend breite Anwendung in verschiedensten insbesondere auch sicherheitskritischen Anwendungsbereichen, doch die Qualität dieser Algorithmen wird in den seltensten Fällen systematisch untersucht. Der Schwerpunkt dieser Veranstaltung liegt auf verschiedensten Qualitätsdimensionen für maschinelle Lernalgorithmen, insbesondere tiefe neuronale Netzwerke, angefangen von der Messung der Leistungsfähigkeit, über Interpretierbarkeit/Erklärbarkeit (XAI), Robustheit (adversarial robustness, Robustheit gegen Störung im Input), Unsicherheitsquantifizierung, Distribution Shift, Domain Adaptation, Fairness/Bias bis hin zu Privacy. Die Methoden werden in der Vorlesung theoretisch eingeführt und in den Übungen praktisch implementiert und angewendet. Inhaltliche Voraussetzungen sind grundlegende theoretische Kenntnisse im Bereich des maschinellen Lernens, praktische Programmierkenntnisse in Python und im Idealfall Grundkenntnisse im Training tiefer neuronaler Netzwerke.
Lecture 4 Prof. Dr. Nils Strodthoff
Tiezhi Wang
  • Master
2.01.965 Foundations of STS Eng.: Systems Engineering Freitag: 12:00 - 14:00, wöchentlich (ab 05.04.2024)

Description:
Lecture 2 Rabeaeh Kiaghadi
Prof. Dr. Martin Georg Fränzle
  • Master
2.01.300 Hybride Systeme Dienstag: 14:00 - 16:00, wöchentlich (ab 02.04.2024)
Freitag: 08:00 - 10:00, wöchentlich (ab 05.04.2024)

Description:
Lecture 4 Janis Kröger, M. Sc.
Prof. Dr. Martin Georg Fränzle
Paul Kröger
  • Master
2.01.5460 Applied AI - Multimodal-Multisensor Interfaces 3: Language Processing, Software, Commercialization, and Emerging Directions Die Zeiten der Veranstaltung stehen nicht fest.
Description:
This third seminar takes the contents of the first two seminars—namely, the motivations, foundational concepts, basic modality combinations, component analyses, and recognition and fusion techniques—to the next level. MMI 3 discusses how to design and build functioning multimodal-multisensor systems that can sustain real-world use. This seminar is most appropriate for graduate students and of primary interest to students studying computer science and information technology, human-computer interfaces, mobile and ubiquitous interfaces, affective and behavioral computing, machine learning, and related multidisciplinary majors. It is very useful if you want to work on practical applications, transfer of AI technology to application domains such as medicine and healthcare, and industrial prototypes. Afterward, students might engage in a hands-on project in which they design, build, and evaluate the performance of a multimodal system in our project group MMI II (https://elearning.uni-oldenburg.de/dispatch.php/course/details?sem_id=098bd500a63e723551364c7f921755b5&again=yes). Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Language Processing, Software, Commercialization, and Emerging Directions - Volume 3" (https://dl.acm.org/doi/book/10.1145/3233795). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Rida Saghir, rida.saghir@uni-oldenburg.de This third seminar takes the contents of the first two seminars—namely, the motivations, foundational concepts, basic modality combinations, component analyses, and recognition and fusion techniques—to the next level. MMI 3 discusses how to design and build functioning multimodal-multisensor systems that can sustain real-world use. This seminar is most appropriate for graduate students and of primary interest to students studying computer science and information technology, human-computer interfaces, mobile and ubiquitous interfaces, affective and behavioral computing, machine learning, and related multidisciplinary majors. It is very useful if you want to work on practical applications, transfer of AI technology to application domains such as medicine and healthcare, and industrial prototypes. Afterward, students might engage in a hands-on project in which they design, build, and evaluate the performance of a multimodal system in our project group MMI II (https://elearning.uni-oldenburg.de/dispatch.php/course/details?sem_id=098bd500a63e723551364c7f921755b5&again=yes). Central part of the seminar is the reference book "The Handbook of Multimodal-Multisensor Interfaces: Language Processing, Software, Commercialization, and Emerging Directions - Volume 3" (https://dl.acm.org/doi/book/10.1145/3233795). At the beginning there will be an introduction to the subject. Everyone will receive a chapter, for which a presentation (30 min. + 30 min. discussion) and a written elaboration (5-10 pages) are to be prepared. Contact: Rida Saghir, rida.saghir@uni-oldenburg.de
Seminar - Rida Saghir
Ilira Troshani
Hannes Kath
Prof. Dr. Daniel Sonntag
  • Master
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