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Introduction to Artificial Intelligence
30.2662

Description
Learning objectives:
   The students
  • know the different areas of Artificial Intelligence and their corresponding basic approaches and strategies
  • understand how AI applications are structured in principle
  • know for each of these areas the basic methods and algorithms
    The students
  • are able to use the appropriate technologies for given problems in order to solve non-trivial problem
  • scan estimate where AI solutions are appropriate
    The students
  • can adapt methods to develop and realize proposals for solutions
  • can develop a critical view of progression in AI against the background of philosophical foundations and ethical questions as well as recognize and assess risks and possible technological consequences of the development of systems with AI technologies 

Content:
The lecture provides an overview of the areas of AI with references to in-depth courses. The following content is covered:
  • Machine learning (ML): Basic ML procedures based on prominent examples such as artificial neural networks or decision trees; Metrics / evaluation procedures for measuring the quality of ML predictions. Relation to symbolic and non-symbolic AI
  • Representation and processing of knowledge: basic procedures, e.g. Ontologies and linked data; Query languages and reasoning. Relation to symbolic and non-symbolic AI
  • Natural language processing (NLP): Application areas of NLP such as document classification, machine translation or human-machine communication, as well as current technologies for their implementation; Relation to symbolic and non-symbolic AI.
  • Computer vision: areas of application such as object recognition on images, as well as current technologies for implementing them; Relation to non-symbolic AI.
  • Cross-cutting issues: philosophical foundations and ethical questions of AI; Opportunities and risks of autonomous systems; Bias in AI applications; Effects of AI applications on society and working life.

    All content is practiced in the practical.

Crédits ECTS
5

Langue d'enseignement
English/Deutsch

Langue d'examen
English/Deutsch

Langue des supports pédagogiques
English/Deutsch

Acquis d'apprentissage fondamentaux

Entité de gestion (faculté)
Computer Science Department (HDA)