193.106 Intelligent User Interfaces
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2022W, VU, 2.0h, 3.0EC
TUWEL

Properties

  • Semester hours: 2.0
  • Credits: 3.0
  • Type: VU Lecture and Exercise
  • Format: Presence

Learning outcomes

After successful completion of the course, students are able to apply basic knowledge of user interfaces, “human in the loop” systems, and artificial intelligence (supervised & unsupervised learning, reinforcement learning). Students further learn about various human-AI interaction domains (recommender systems, chatbots, intelligent text entry, explainable artificial intelligence, user modeling, personalized and adaptive user interfaces). After successful completion, students are able to apply AI techniques to their own (and potentially other novel) interaction scenarios, and in combination with the human-centered design process. 

Subject of course

The course conveys methodological knowledge about the design and implementation of AI systems supporting or cooperating with human users.

Conveyance of fundamental knowledge:

-        User interface basics and key terms

-        Basics of AI systems (supervised, unsupervised, and reinforcement learning)

-        Recommender systems (definitions, collaborative filtering, similarity measures)

-        Natural language processing (syntax, semantics, tokenization, normalization, stemming, corpus, chatbot interaction)

-        Gesture recognition (sequence classification, Markov property, gesture and pose from video)

-        Implicit interaction and physiological sensing

-        User Modeling (imitation learning, generative methods)

-        Adaptive User Interfaces (automated optimization towards human factor parameters)

-        Explainable AI (local & global interpretability, LIME, SHAP, automated rationale generation)

Conveyance and practice of abilities and skill

-        AI-adapted human-centered design process (data collection – model development – evaluation)

-        Tensorflow, Unity ML-Agents

-        User data collection

-        Parameter estimation and model choice appropriate for the scenario

-        Human-centered evaluation of human-AI interaction scenarios

-        Practical implementation of key scenarios (gesture recognition, recommendations, etc.)

Teaching methods

Intelligent User Interfaces conveys methods and knowledge for the design of AI-supported human-machine interfaces. The course integrates theoretical and practical knowledge at the intersection of human-computer interaction, human factors, and artificial intelligence. 

Mode of examination

Immanent

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu14:00 - 16:0020.10.2022 - 26.01.2023EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Intelligent User Interfaces - Single appointments
DayDateTimeLocationDescription
Thu20.10.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu27.10.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu03.11.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu10.11.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu17.11.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu24.11.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu01.12.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu15.12.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu22.12.202214:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu12.01.202314:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu19.01.202314:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture
Thu26.01.202314:00 - 16:00EI 11 Geodäsie HS - GEO Intelligent User Interfaces Lecture

Examination modalities

The final compulsory proof of performance is given the final exam and small assignments. In groups of 2, students will be handed out 5 assignments covering different practical exercises related to the lecture content. Student groups will have to complete the work, document, and present their results.

The overall assessment is based on the following ECTS-Breakdown:

-        Lecture content: 25h

-        Exercise content: 25h

-        Group assignments: 25h

Course registration

Begin End Deregistration end
20.09.2022 00:00 16.10.2022 23:59 30.10.2022 23:59

Registration modalities

-

Curricula

Study CodeObligationSemesterPrecon.Info
066 517 Manufacturing and Robotics Not specifiedSTEOP
Course requires the completion of the introductory and orientation phase
066 935 Media and Human-Centered Computing Mandatory elective

Literature

No lecture notes are available.

Language

German