650.020 (21W) Introduction to Artificial Intelligence
Überblick
Weitere Informationen zum Lehrbetrieb vor Ort finden Sie unter: https://www.aau.at/corona.
- Lehrende/r
- LV-Titel englisch Introduction to Artificial Intelligence
- LV-Art Vorlesung-Kurs (prüfungsimmanente LV )
- LV-Modell Präsenzlehrveranstaltung
- Semesterstunde/n 5.0
- ECTS-Anrechnungspunkte 8.0
- Anmeldungen 31 (30 max.)
- Organisationseinheit
- Unterrichtssprache Englisch
- mögliche Sprache/n der Leistungserbringung Englisch
- LV-Beginn 04.10.2021
- eLearning zum Moodle-Kurs
Zeit und Ort
LV-Beschreibung
Intendierte Lernergebnisse
Being able to explain what Artificial Intelligence (AI) is and what its major subfields are
Know major approaches (theory and methods) in AI, in particular Logic-based AI
Being able to apply some approaches to concrete settings
Lehrmethodik
Slides, workshops, exercises to prepare at home and present in class
Inhalt/e
In this course we present an overview of the field of artificial intelligence and provide a detailed account of some of its traditional areas. In particular, we will focus on knowledge representation and reasoning, give an introduction or reminder of logic and cover methods in heuristic search, which can be used for planning, constraint satisfaction, and similar tasks. These techniques usually require full knowledge or complete observability of the domain of discourse. We will then move towards settings with uncertainty and identify different sources of uncertainty. We will examine how to deal with an adversarial agent, for example in two-player games, will cover reasoning with incomplete knowledge and also cover probabilistic reasoning. Machine learning will be covered in detail in a separate course and will therefore only be touched on.
Prüfungsinformationen
Prüfungsmethode/n
There will be three online assessments and a mini-project.
Prüfungsinhalt/e
Topics covered in the module, but in particular logic, planning, constraint satisfaction, heuristic search, uncertain reasoning.
Beurteilungskriterien/-maßstäbe
Points obtained from assessments and project(s) will form the final grade. All assessments and project(s) should be delivered for passing.
Beurteilungsschema
Note BenotungsschemaPosition im Curriculum
- Masterstudium Informatics
(SKZ: 911, Version: 19W.2)
-
Fach: Artificial Intelligence
(Wahlfach)
-
Weitere LVen aus dem gewählten Spezialisierungsfach (
0.0h XX / 12.0 ECTS)
- 650.020 Introduction to Artificial Intelligence (5.0h VC / 8.0 ECTS) Absolvierung im 1., 2. Semester empfohlen
-
Weitere LVen aus dem gewählten Spezialisierungsfach (
0.0h XX / 12.0 ECTS)
-
Fach: Artificial Intelligence
(Wahlfach)
- Masterstudium Artificial Intelligence and Cybersecurity
(SKZ: 993, Version: 20W.1)
-
Fach: Artificial Intelligence
(Pflichtfach)
-
2.1 Introduction to Artificial Intelligence (
0.0h VC / 8.0 ECTS)
- 650.020 Introduction to Artificial Intelligence (5.0h VC / 8.0 ECTS) Absolvierung im 1. Semester empfohlen
-
2.1 Introduction to Artificial Intelligence (
0.0h VC / 8.0 ECTS)
-
Fach: Artificial Intelligence
(Pflichtfach)