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Website of our Carpentries-based workshop from July 2018 (former contact: @katrinleinweber)

Home Page: https://tibhannover.github.io/2018-07-09-FAIR-Data-and-Software/

License: Other

Makefile 1.73% HTML 10.47% CSS 4.57% JavaScript 0.56% R 1.96% Shell 0.12% Python 51.27% Ruby 0.13% TeX 1.91% Jupyter Notebook 27.30%
fair-data sustainable-software fair-principles research-data-management hannover workshop-website research-software-engineering tibfds

2018-07-09-fair-data-and-software's People

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2018-07-09-fair-data-and-software's Issues

Integrate workshop material into Library Carpentry?

@libcce suggested we discuss how our workshop material can best be reused. First off: presentation slides are under CC-BY 3.0 DE.

Opinions are welcome :-) Please comment below.

Tasks that should be completed before a decision

Other things to consider & related work that already started

This also affects #3 & swcarpentry/r-novice-inflammation#309. The latter is intended for moving some material from TIBHannover/FAIR-R upstream.

Brainstorming topic ideas for follow-up events / study group

On the first meeting the consensus seemed to be to spend the August meetings without specific topics, bringing in new people who may be interested in participating regularly and deciding on a medium to organise the events in (see #11).

After a vacation-induced break during September, we'll start with weekly topics in October. In each case, one or two volunteers prepare an introduction to the topic, and we then dig into with the group, discussing, applying it to own projects, etc.

So, this issue thread is for collecting topics ideas, even just keywords:

  • RStudio tricks, .rprojects
  • Which other R statements besides function(), for, return(), etc. are there?
  • Data visualisation:
    • animations
    • interactions
  • Shiny apps
  • re3data.org curation
  • improving reproducibility in projects, analyses, documents, etc. (rrtools & its addin)
  • How to organise ones browser bookmarks to improve re-findability?
  • Watching a conference recording / webinar & discussing it.
  • Bring a current problem that you tried solving, present it and we try to find a solution together (rubber-ducking; This may be a permanent theme of the meetings)

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