Reproducibility in computational research

September 25, 2015

(This article was first published on Hyndsight » R, and kindly contributed to R-bloggers)

Jane Frazier spoke at our research team meeting today on “Reproducibility in computational research”. We had a very stimulating and lively discussion about the issues involved. One interesting idea was that reproducibility is on a scale, and we can all aim to move further along the scale towards making our own research more reproducible. For example

  • Can you reproduce your results tomorrow on the same computer with the same software installed?
  • Could someone else on a different computer reproduce your results with the same software installed?
  • Could you reproduce your results in 3 years time after some of your software environment may have changed?
  • etc.

Think about what changes you need to make to move one step further along the reproducibility continuum, and do it.

Jane’s slides and handout are below.



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