carpentries-incubator / managing-computational-projects

Managing Open and Reproducible Computational Projects
https://carpentries-incubator.github.io/managing-computational-projects
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Include feedback and examples from external experts in the lessson #19

Open malvikasharan opened 2 years ago

malvikasharan commented 2 years ago

In this repository, we are developing training material for bioscience researchers who are interested in managing and supervising computational projects. We are creating a first draft in February-March 2022 therefore the repository and webpage would look empty. We want to take this chance to invite more opinions, examples and interest to collaborate. 🌸

Especially, we are looking for some help in integrating biological contexts and examples from computational biology and use of data science in life science contexts in our materials. Please reply below to share your thoughts and resources with us.

This project is led by me as a part of our work in The Turing Way and hence, we apply community and acknowledgement practices from The Turing Way, see details.

Everyone who contributes to this repository is acknowledged using 'all contributors bot': see Contributors table in README.

jcolomb commented 2 years ago

I have been trying to implement the use of GIN (a gitlab-similar tool) for RDM in the lab. See https://github.com/tonic-team/tonic.homerepository for the vision (template+git + synchronisation scripts + maybe submodules).

Issues are:

I am now seriously thinking submodules are needed, and look into using datalad in the background.

PS: There is a 95% chance that I will run a long retreat next year to train people on exactly these subjects, will be happy to contribute here.

malvikasharan commented 2 years ago

Thank you so much @jcolomb. This is fantastic case study and will be helpful for the RDM chapter (and maybe implementation as well). CC-ing @LydiaFrance who has been collating notes from interviews we have had in the last week.

Crossreferencing the summary of interview from the project management repo here for reference: https://github.com/alan-turing-institute/data-training-for-bioscience/issues/23

malvikasharan commented 2 years ago

Add following members as contributors:

  1. Victor Tybulewicz:

  2. Radoslav Enchev:

  3. Francesca Ciccarelli:

  4. Florencia Iacaruso:

  5. Evangenline Corcoran

    • Lab: Improving predictions of the impact of climate change on UK agriculture and food security by applying machine learning-based models to image data at various scales (phenotyping for individual plants, satellite imagery for field scale) https://research.qut.edu.au/qase/members/evangeline-corcoran/
    • References shared: Example notebooks for classifying plant patches with MapReader models (https://github.com/Living-with-machines/MapReader/tree/main/examples/classification_plant_phenotype). Demonstrates with a fairly simple use case (classifying patches with plant vs. patches without plant) how a model developed for image analysis in a very different scientific domain (historical maps) can be applied in an agricultural context to extract information that could improve models of plant development.
  6. Jim Maas: