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- Support multi-dimensional grouped operations and group_over · 1 ✖
id | html_url | issue_url | node_id | user | created_at | updated_at ▲ | author_association | body | reactions | performed_via_github_app | issue |
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131891348 | https://github.com/pydata/xarray/issues/324#issuecomment-131891348 | https://api.github.com/repos/pydata/xarray/issues/324 | MDEyOklzc3VlQ29tbWVudDEzMTg5MTM0OA== | clarkfitzg 5356122 | 2015-08-17T17:04:44Z | 2015-08-17T17:04:44Z | MEMBER | For (2) I think it makes sense to extend the existing groupby to deal with multiple dimensions. Ie, let it take an iterable of dimension names. ```
Then we'd have something similar to the SQL groupby, which is a good thing. By the way, in #527 we were considering using this approach to make the faceted plots on both rows and columns. |
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Support multi-dimensional grouped operations and group_over 58117200 |
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