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  • DOC: from examples to tutorials · 2 ✖

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  • CONTRIBUTOR · 2 ✖
id html_url issue_url node_id user created_at updated_at ▲ author_association body reactions performed_via_github_app issue
1190061811 https://github.com/pydata/xarray/issues/3564#issuecomment-1190061811 https://api.github.com/repos/pydata/xarray/issues/3564 IC_kwDOAMm_X85G7ubz alimanfoo 703554 2022-07-20T09:44:40Z 2022-07-20T09:44:40Z CONTRIBUTOR

Hi folks,

Just to mention that we've created a short tutorial on xarray which is meant as a gentle intro to folks coming from the malaria genetics field, who mostly have never heard of xarray before. We illustrate xarray first using outputs from a geostatistical model of how insecticide-treated bednets are used in Africa. We then give a couple of brief examples of how we use xarray for genomic data. There's video walkthroughs in French and English:

https://anopheles-genomic-surveillance.github.io/workshop-5/module-1-xarray.html

Please feel free to link to this in the xarray tutorial site if you'd like to :)

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  DOC: from examples to tutorials 527323165
812212847 https://github.com/pydata/xarray/issues/3564#issuecomment-812212847 https://api.github.com/repos/pydata/xarray/issues/3564 MDEyOklzc3VlQ29tbWVudDgxMjIxMjg0Nw== apkrelling 74330736 2021-04-01T22:33:57Z 2021-04-01T22:33:57Z CONTRIBUTOR

Hello everyone, is this issue still relevant? I could add a domain-use case for oceanography or meteorology, but it seems like that has already been done under

  • getting started -> examples -> ROMS Ocean Model Example
  • getting started -> examples -> Calculating Seasonal Averages from Time Series of Monthly Means

1) So there's no need to work on domain-use cases for oceanography or meteorology, is that correct?

2) Also, I'd be happy to contribute with something about how to migrate from numpy to xarray, if that is still needed.

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  DOC: from examples to tutorials 527323165

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