Please note! Course description is confirmed for two academic years, which means that in general, e.g. Learning outcomes, assessment methods and key content stays unchanged. However, via course syllabus, it is possible to specify or change the course execution in each realization of the course, such as how the contact sessions are organized, assessment methods weighted or materials used.

LEARNING OUTCOMES

After completion of the course you will be able to:

  • Have knowledge of different ML methods
  • Have practical experience of applying ML methods to materials science examples
  • Identify research questions in material science (MS) that can be solved by machine learning (ML)
  • Consider which ML methods might be best for tackling different MS problems

Credits: 3

Schedule: 05.09.2022 - 11.10.2022

Teacher in charge (valid for whole curriculum period):

Teacher in charge (applies in this implementation): Patrick Rinke, Armi Tiihonen, Matthias Stosiek

Contact information for the course (applies in this implementation):

CEFR level (valid for whole curriculum period):

Language of instruction and studies (applies in this implementation):

Teaching language: English. Languages of study attainment: English

CONTENT, ASSESSMENT AND WORKLOAD

Content
  • valid for whole curriculum period:

    Machine learning (ML) techniques enable us to infer relationships from a large amount of seemingly uncorrelated input data. Their predictive power has made them central to product development in IT and we already use them in daily life (Amazon, Netflix, etc.). Physical sciences have been slow to capitalize on the promise of ML, even though their computational implementation is suited to modern simulation techniques. Materials science has recently benefited from a number of ML applications to materials discovery and design (featuring neural networks, genetic algorithms, regression methods, compressed sensing and Bayesian optimisation), that promise to accelerate development of novel technologies. Machine learning for materials science is an exciting new discipline that is now being taught at Aalto University.

    "An Introduction to Machine learning in materials science" is a lecture and tutorial based course for graduate students who wish to acquire key skills in this cross-disciplinary research field. Lectures will introduce different machine learning methods and demonstrate their application in materials science. The lectures will be complemented by tutorial exercises that illustrate the use of machine learning methods on materials science data sets. 

Assessment Methods and Criteria
  • valid for whole curriculum period:

    The course grade is pass/fail. Attendance in the tutorials and successful completion of short learning quizes is a prerequisite for passing the course.

Workload
  • valid for whole curriculum period:

    • 12 x 1 h introductory lectures on machine learning in materials science
    • 6 x 2h hands-on tutorial sessions

    There is no homework for the course and no final exam.

DETAILS

Substitutes for Courses
Prerequisites
SDG: Sustainable Development Goals

    7 Affordable and Clean Energy

    12 Responsible Production and Consumption

    13 Climate Action

FURTHER INFORMATION

Further Information
  • valid for whole curriculum period:

    Teaching Language : English

    Teaching Period : 2022-2023 Autumn I
    2023-2024 Autumn I