Seminar + Softwareproject: Data Science in the Life Sciences - Welcome!

About

This course offers an introduction to various types of data and analysis techniques which are typically used in the life sciences (e.g. omics technologies). The goal is to get a deeper understanding of advanced concepts and data analytical methods in the area of life sciences.

The focus will be on the following topics:

  • acquisition and pre-processing of data from the area of life sciences,
  • explorative analysis techniques,
  • concepts and tools for reproducible research,
  • theory and practice of methods and models for the analysis of data from the life sciences (statistical inference, regression models, methods of machine learning),
  • introduction to methods of big data analysis.

After successful completion of this course, participants are able to evaluate, plan and conduct investigations in the life sciences using common methods.

 

SoSe21 focus: Data Science for fighting COVID-19

The COVID-19 pandemic is changing our lives globally. Although this is not the first time that humanity deals with a pandemic what is different today is the role of the technology in understanding how the virus is spreading, how it is mutating and what effects it is having in human lives across the world.

This is possible thanks, in part, to new datasets, advances in machine learning and analytical methods and computer power. Data science is a powerful tool that helps us fight this virus with applications such as early detection and diagnosis, contact tracing, projection of cases and mortality, development of drugs and vaccines, etc. However learning from data is a multi-step process which involves many assumptions associated with the data, learning algorithms, experimental evaluation, interpretation etc. It is important therefore to be aware of these assumptions and their potential impact on the conclusions drawn.

 

Schedule

Seminar

A combination of i) class-wide meetings (see first session slides for the exact plan) and ii) mentor-group meetings.

You need to participate in all class-wide meetings (formal requirement "Aktive Teilnahme")

For the class-wide meetings, please use the following:

Link: https://fu-berlin.webex.com/fu-berlin-en/j.php?MTID=m9dc16fea118cd5b260a537641b82b583

Meeting number: 124 213 9900

Meeting password: yvF9RvfUy82

 

Softwareproject

Weekly meeting Tuesday 2:15-5:45pm

Meeting link:
https://fu-berlin.webex.com/fu-berlin-en/j.php?MTID=m0b2d705bd5fba03f6337dd59e12dc432
Meeting number:
124 150 4845
Password:
NVdwB8kGH55

 

  Seminar Project
6.7.2021 Final presentations groups 1, 7, 8, 9  Final presentations groups 1, 8, 12
13.7.2021 Final presentations groups 11, 12, 13, 14  Final presentations groups 7, 9, 11, 13, 14
End of July 2021   Final report due

Literature

A good understanding of basic AI/ML models and algorithms is expected.

Based on class composition and background, impulse lectures might be offered to give an introduction to central content, like working with data, key (learning) methods and algorithms, how to read and present a paper, literature search etc - this will be discussed in the first session.