Skip to content

we-data-ch/workshops

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

11 Commits
 
 
 
 

Repository files navigation

The idea behind this page is to make available all the ressources we have gathered/created over the years make other people’s life easier.

Another purpose is to create a network of people interested in Data Science and a place for them to find information about it, so really feel free to ask for new stuff and comment on what is not working for you.

Moreover, if you are interested in the project don’t hesitate to share your stuff !

R Lunches

Tuesday (12pm-13pm), 28 February 2023, UniMail TBD Using vim with R - Fabrice Hategekimana (University of Geneva)


Tuesday (12pm-13pm), 7 March 2023, UniMail M3220 Recording Beautiful, easy-to-use, highly interactive data visualization with R: Leveraging Apache ECharts Jean Philippe Coene (Opifex)


Tuesday (12pm-13pm), 4 April 2023, UniMail M3220 Recroding Deploy Your R Code David Munoz Tord (We Data) Slides -->


Tuesday (12pm-13pm), 4 May 2023, Zoom Zoom link (soon) Unravelling the port of Lists in R: The creations of the CORESIDENCE Database Juan Galeano (Barcelona Center for Demographic Studies)


Tuesday (12pm-13pm), 4 May 2023, UniMail M4050 Zoom link (soon) {hayalbaz}: Scrapping dynamic web page without dependencies in R Vestin Hategekimana (University of Geneva)




Workshops

Dataviz with R and ggplot2. Data Viz Workshop

This practical will teach you the basics of ggplot2.

  • Correlation: scatterplot and bubble plot
  • Distribution: histogram, density and boxplot.
  • Ranking: barplot, lollipop and treemap.
  • Evolution: line plot and area chart

Data wrangling with R, Python and Matlab. Data Wrangling Workshop

The main goal of these workshop series is to create the oppurtunity for Neuroscience/Pscyhology master students to improve their skills in data wrangling through active problem solving (with hints and guidelines) that are representative of ‘real world’ problems that one will probably encounter in cogntive/affective neuroscience research.

A non exaustive list of skills/methods we are going to focus on:

  • Code reproducibility (dynamic programming)
  • Code understandability (comments, style, Rmarkdown, Jupyter notebook)
  • Version control and code availability (github)
  • Terminal familiarity
  • Automatisation (creating functions)
  • Data wrangling and vizualisation

Is this workshop suited for you ? check here


Rmarkdown Tips and Tricks. Rmarkdown Workshop


A gathering of tutorials to install and setup different tools to analyze data in psychology and neuroscience.. Software Workshop

Guides for installing and setting up diverse softwares, including:

  • How to install and/or setup R, Python (with Anaconda) and MATLAB/Octave
  • How to install and/or setup SPM (and some toolbox), FSL and AFNI
  • Basic of linux/Unix progamming, cools tips and tricks
  • Git setup and tips

Free ressources

Useful tutorials for data science in R, Pyhton and MATLAB: here


Other miscellaneous tutorials and slides about stats (bayesian and frequentist), machine learning (AI, Reinforcement learning, computational modeling), MRI (technicalities and analysis), onlines studies (pros and cons about different recruitment platforms and online experiment builders), Linux/server stuff, more data science/visualization stuff can be found here.

Releases

No releases published

Packages

No packages published

Languages