Universität Wien
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570005 WS Methods in Bioinformatics (2022W)

Continuous assessment of course work
ON-SITE

Registration/Deregistration

Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).

Details

max. 25 participants
Language: English

Lecturers

Classes

The course takes place daily from 13.02.-24.02.2023 (Mo-Fr), 09:00-17:00h at the UBB SR 1.7.


Information

Aims, contents and method of the course

This course on PhD candidate level requires substantial knowledge in computational biology and bioinformatics from your master studies. In this course we focus on state-of-the art methods for omics data analysis (e.g. meta/genomics, meta/transcriptomics, meta/proteomics), integration of heterogeneous data, statistical analysis and machine learning, genome-scale modeling. We address all areas of life as well as viruses. Participants will learn basic concepts of machine learning, including an introduction to the Python data science stack, as well as several specific methods and evaluation strategies. The lectures are supplemented by practical examples and discussions on current literature in the field of applied machine learning for biological problems. After the course, participants will be able to decide, whether a given biological problem can be tackled with machine learning. Further, participants will be able to assess the quality of machine learning approaches in the scientific literature. We welcome students to bring their projects to the course, as these can provide starting points for practical experiments in the course. For the entire course we will work on notebooks and on the Life Science Compute Cluster.

Assessment and permitted materials

Continuous assessment during the course by presentations of literature and presentation of own results from practical experiments.

Minimum requirements and assessment criteria

Active participation in the entire course is required for a positive result. The course will not be graded.

Examination topics

Understanding of methods, practical experiments, analysis and interpretation of results.

Reading list

Literature and material will be provided during the course.

Association in the course directory

PhD 57

Last modified: Mo 13.02.2023 10:10