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  • shoyer · 1 ✖

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  • Allow .attrs to use dict-likes · 1 ✖

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id html_url issue_url node_id user created_at updated_at ▲ author_association body reactions performed_via_github_app issue
892275313 https://github.com/pydata/xarray/issues/5655#issuecomment-892275313 https://api.github.com/repos/pydata/xarray/issues/5655 IC_kwDOAMm_X841Lwpx shoyer 1217238 2021-08-04T00:55:40Z 2021-08-04T00:55:40Z MEMBER

I appreciate the concern here, but I'm not sure we want to relax this constraint. Using built-in Python dict objects simplifies Xarray's internal logic considerably.

Could you talk a little bit more about your use-case and why you need lazy attributes? How many attributes are in your HDF5 files and how slow are they to load? Have you considered alternative file formats?

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  Allow .attrs to use dict-likes 957201551

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