Decision making with artificial intelligence

1BM120

About this course

In modern businesses, the extraction of information from the data in the information systems has become a competitive advantage. The availability of large amounts of data of different modalities (i.e. big data), such as time series, images, or network-structured data, often requires the use of advanced analytics and intelligent methods for discovering the relevant information that a business needs. In this course, students are introduced to the advanced data analysis methods from artificial intelligence. Many models must be adaptive to the data and the underlying processes that generate the data. Adaptive and learning models based on deep neural networks are discussed for exploiting the past information in order to improve the design of information systems for business processes by providing them with knowledge about past business experience and, consequently, to improve their decision support capability. In this context, we will also discuss different approaches to learning, including automated machine learning and generative AI. Optimization of operational processes through planning algorithms and nature-inspired meta-heuristics (based on evolutionary algorithms, swarm intelligence, and multi-objective optimization techniques) is considered.

Learning outcomes

After following this course, the student is able to:

  • Discuss how artificial intelligence techniques can support decision making frameworks in different business environments;
  • Use deep neural networks, automated machine learning, and generative AI to learn from past business experiences;
  • Generate new understanding and knowledge regarding AI for business problems
  • Apply planning algorithms and nature-inspired meta-heuristics, such as evolutionary algorithms, for optimization of operational processes.

Prior knowledge

You must meet one of the following collections of requirements

  • Collection 1
  • Completed Final examination Bsc program
  • Collection 2
  • Completed Pre-Master

Resources

  • Python (Anaconda)
  • Scientific papers and book chapters (links available via TU/e library)

Additional information

course
5 ECTS • broadening
  • Level
    master
If anything remains unclear, please check the FAQ of TU Eindhoven.

Starting dates

  • 21 Apr 2025

    ends 22 Jun 2025

    LocationEindhoven
    LanguageEnglish
    Term *Block GS4
    Tuesday 08:45 - 12:45, Friday 13:30 - 17:30
    Enrolment period closed
  • 20 Apr 2026

    ends 21 Jun 2026

    LocationEindhoven
    LanguageEnglish
    Term *Block GS4
    Tuesday 08:45 - 12:45, Friday 13:30 - 17:30