issue_comments
1 row where issue = 1517575123 and user = 44147817 sorted by updated_at descending
This data as json, CSV (advanced)
Suggested facets: created_at (date), updated_at (date)
issue 1
- Implement `DataArray.to_dask_dataframe()` · 1 ✖
id | html_url | issue_url | node_id | user | created_at | updated_at ▲ | author_association | body | reactions | performed_via_github_app | issue |
---|---|---|---|---|---|---|---|---|---|---|---|
1398072586 | https://github.com/pydata/xarray/issues/7409#issuecomment-1398072586 | https://api.github.com/repos/pydata/xarray/issues/7409 | IC_kwDOAMm_X85TVOUK | gcaria 44147817 | 2023-01-20T08:39:31Z | 2023-01-20T08:39:31Z | CONTRIBUTOR | Yes I did, but unfortunately I didn't think about the trick of converting to Dataset. My only thought then is that it'd be nice to also get a dask Series, so something like Feel free to close this. |
{ "total_count": 0, "+1": 0, "-1": 0, "laugh": 0, "hooray": 0, "confused": 0, "heart": 0, "rocket": 0, "eyes": 0 } |
Implement `DataArray.to_dask_dataframe()` 1517575123 |
Advanced export
JSON shape: default, array, newline-delimited, object
CREATE TABLE [issue_comments] ( [html_url] TEXT, [issue_url] TEXT, [id] INTEGER PRIMARY KEY, [node_id] TEXT, [user] INTEGER REFERENCES [users]([id]), [created_at] TEXT, [updated_at] TEXT, [author_association] TEXT, [body] TEXT, [reactions] TEXT, [performed_via_github_app] TEXT, [issue] INTEGER REFERENCES [issues]([id]) ); CREATE INDEX [idx_issue_comments_issue] ON [issue_comments] ([issue]); CREATE INDEX [idx_issue_comments_user] ON [issue_comments] ([user]);
user 1