General remarks
Motivation and goals
Articial Intelligence (AI) is becoming a basic innovation that is developing into a driver of digitalisation and autonomous systems in all areas of life.
- AI will change life, work, the economy and communication in a similar way to the internet.
- The release of openAI’s chatGPT at the end of 2022 was a milestone in the history of AI.
- Since then, most people have realised that AI will soon change the way we learn, work and live.
- But large language models are only one type of AI. There are many other AI types, each with their own applications.
This lecture will give you a clear understanding of different types of AI, what they do, and how they work.
Format of the lecture
This course will be taught using traditional synchronous lectures.
The focus of the classes is to briefly introduce major concepts.
The greatest amount of work is in preparing for and following up lectures in order to become sufficiently familiar with and understand the concepts.
The exercises are the recommended preparation for the exam. They must be completed independently at home, questions can be discussed in the lecture.
Please prepare your schedule accordingly.
Contents
AI is defined here as the study of agents that receive percepts from the environment and perform actions.
In this course, we will
- cover different types of agents (i.e., goal-based and utility-based agents)
- illuminate some concepts and major functions they implement,
- discuss, how to convert these agents into learning agents,
- identify and discuss real life use cases for these agents, and
- have a look at philosophical stances and ethical implications of AI.
Learning objectives
During this course, you should advance your skills in the following areas:
- Understanding of the origins, strengths and limitations of AI
- Basic knowledge of concepts, functions, and use cases of AI
- Basic knowledge of problem-solving algorithms, knowledge representation, probabilistic reasoning, machine learning, and natural language processing
- Capability to apply your knowledge and understanding of AI to different managerial and organizational contexts
- Ability to assess the potential of AI and use it in digital innovations
- Ability to evaluate new information and to question existing assumptions
- Capacity to assess social and ethical implications of AI applications
Supporting literature
Besides the literature cited in the lecture notes, Russel and Norvig (2022) is the recommended accompanying reading for rereading and deepening the concepts
Exam
There will we a written exam at the end of the semester.
The exam will
- take place during the examination weeks,
- will last 90 minutes,
- cover all contents discussed in lecture,
- focus on the application of the knowledge gained in the course.
Schedule
It is of importance that you reflect the contents of the session continually, do the exercises and ask questions.
Date | Topic | Preparation |
---|---|---|
20.03.2025 | Administrivia & Introduction | — |
27.03.2025 | Environments & Agents | Exercises |
03.04.2025 | Search & Planning | Exercises |
10.04.2025 | Knowledge & Inference | Exercises |
17.04.2025 | Modelling of Uncertainty I: Probability Theory | Exercises |
24.04.2025 | Modelling of Uncertainty II: Bayes Net | Exercises |
01.05.2025 | Public Holiday: Labour Day | — |
08.05.2025 | Excursion Week (no lecture) | Review of contents |
15.05.2025 | Machine Learning I: Basic Concepts | Exercises |
15.05.2025 | Machine Learning II: Decision Trees | — |
22.05.2025 | No lecture (moved to May 15) | — |
29.05.2025 | Public Holiday | — |
05.06.2025 | Machine Learning III: Neural Networks | Article1 |
12.06.2025 | Witsun Holidays | — |
19.06.2025 | Witsun Holidays | — |
26.06.2025 | AI Engineering & Ethics | Exercises |
03.07.2025 | Final Q&A & Exam Preparation | Questions |