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issue 1
- Low memory/out-of-core index? · 1 ✖
| id | html_url | issue_url | node_id | user | created_at | updated_at ▲ | author_association | body | reactions | performed_via_github_app | issue |
|---|---|---|---|---|---|---|---|---|---|---|---|
| 338779368 | https://github.com/pydata/xarray/issues/1650#issuecomment-338779368 | https://api.github.com/repos/pydata/xarray/issues/1650 | MDEyOklzc3VlQ29tbWVudDMzODc3OTM2OA== | shoyer 1217238 | 2017-10-23T20:02:12Z | 2017-10-23T20:02:12Z | MEMBER | This should be easier after the index/coordinates separation envisioned in https://github.com/pydata/xarray/issues/1603. We could potentially define a basic index API (based on what we currently use from pandas) and allow alternative index implementations. There are certainly other use cases where go beyond pandas makes sense -- a KDTree for indexing geospatial data is one obvious example. |
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Low memory/out-of-core index? 267628781 |
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