Analysis, visualisation and statistics using R for Environmental Scientists

Analysis, visualisation and statistics using R for Environmental Scientists

Course Description:
This will be an introduction course intended to give students and doctoral researchers an overview and introduction to R applied to analysing environmental data, with specific emphasis on chemical datasets. The course will begin with a brief introduction to the R environment and basic function and then include an overview of statistical analyses that are valuable in environmental datasets. The doctoral researchers and master students will be able to use R efficiently and they will be able to improve their scientific work with the possibilities of R.

Tentative schedule with course content:

1.    Introduction to the R environment (R-Studio) 

  •  Projects handling
  •  Package management
  •  Data: Input / Output
  •  Workspace
  •  Installing and loading R packages, importing, manipulating, and exporting data.

2.    Pre-Processing and Data composition: Looking at the R data frame, cleaning up and compose data, dealing with missing data, data normalization, basic functions (mean and weighted mean, standard error, etc.)

3.    Visualizing Data in R.

  • ggplot
  • plotly
  • shiny    Scatter plots, bar plots, violin plots, etc. Interactive possibilities. 

4.    Data Reports and publishing with R markdown and Shiny.
        Reporting with markdown and Shiny.
5.    Basic Statistics and Statistical Analyses.
        Calculating and visualizing a PCA, PCoA, NMDS, ANOVA, linear models.
6.    Handling largescale server side data sets using the HPC-Cluster.
       Analyze and correlate large chemical data (e.g FT-ICR-MS).

Target group: Graduate level course, with specific aim at doctoral researchers and new master’s students who want to use R to analyse their data.


Requirements: All levels are welcome. Students should be familiar with basic concepts of data analysis. Students and doctoral researchers will need to bring a laptop with the current version of R and RStudio installed. It would be nice if the participant have already started to get familiar with RStudio.

Course instructors / Lecturers:
André El-Ama: andre.el-ama@uni-oldenburg.de
Priv.-Doz.Dr. Jan Freund: jan.freund@uni-oldenburg.de
Dr. Hannelore Waska: hannelore.waska@uni-oldenburg.de
Matthias Schröder: matthias.schroeder@uni-oldenburg.de
Dr. Ferdinand Esser: ferdinand.esser@uni-oldenburg.de

Time / Date / Format: 
Seminar is organised block wise at the following dates: 25.07., 26.07., and 27.07.2023 and 26.09., 27.09. and 28.09.2023.
Meeting time is 5 hours with 1 hours break. 10:00 – 15:00

Registration for the workshop via Stud.IP is required!


Room: W15 1-146 (ICBM building)

25.07.2023 10:00 – 28.09.2023 15:00

(Changed: 19 Jan 2024)  | 
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