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- Optimize ndrolling nanreduce · 1 ✖
| id | html_url | issue_url | node_id | user | created_at | updated_at ▲ | author_association | body | reactions | performed_via_github_app | issue |
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1507213204 | https://github.com/pydata/xarray/issues/4325#issuecomment-1507213204 | https://api.github.com/repos/pydata/xarray/issues/4325 | IC_kwDOAMm_X85Z1j-U | dcherian 2448579 | 2023-04-13T15:56:51Z | 2023-04-13T15:56:51Z | MEMBER | Over in https://github.com/pydata/xarray/issues/7344#issuecomment-1336299057 @shoyer
After some digging, this would involve using "summed area tables" which have been generalized to nD, and can be used to compute all our built-in reductions (except median). Basically we'd store the summed area table (repeated This would be an intermediate level project but we could implement it incrementally (start with cc @aulemahal |
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Optimize ndrolling nanreduce 675482176 |
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