home / github

Menu
  • Search all tables
  • GraphQL API

issue_comments

Table actions
  • GraphQL API for issue_comments

3 rows where author_association = "MEMBER", issue = 267826297 and user = 1217238 sorted by updated_at descending

✎ View and edit SQL

This data as json, CSV (advanced)

These facets timed out: author_association, issue

user 1

  • shoyer · 3 ✖
id html_url issue_url node_id user created_at updated_at ▲ author_association body reactions performed_via_github_app issue
338860711 https://github.com/pydata/xarray/issues/1651#issuecomment-338860711 https://api.github.com/repos/pydata/xarray/issues/1651 MDEyOklzc3VlQ29tbWVudDMzODg2MDcxMQ== shoyer 1217238 2017-10-24T03:18:37Z 2017-10-24T03:18:37Z MEMBER

Other numpy functions, e.g., flip check for some attributes and then assume duck type compatibility if found. For example, flip is turned into an indexing call.

{
    "total_count": 0,
    "+1": 0,
    "-1": 0,
    "laugh": 0,
    "hooray": 0,
    "confused": 0,
    "heart": 0,
    "rocket": 0,
    "eyes": 0
}
  ENH: Forward & back fill methods 267826297
338860305 https://github.com/pydata/xarray/issues/1651#issuecomment-338860305 https://api.github.com/repos/pydata/xarray/issues/1651 MDEyOklzc3VlQ29tbWVudDMzODg2MDMwNQ== shoyer 1217238 2017-10-24T03:16:00Z 2017-10-24T03:16:00Z MEMBER

Right, but numpy functions return the original type?

Not quite -- many numpy functions check for a method of the same name on their argument and call it instead of the numpy routine. If you look at the source of np.sum, it first checks for a sum method on its argument and calls that method instead if found. Otherwise, it coerces the argument to a numpy array and calls the numpy method.

{
    "total_count": 0,
    "+1": 0,
    "-1": 0,
    "laugh": 0,
    "hooray": 0,
    "confused": 0,
    "heart": 0,
    "rocket": 0,
    "eyes": 0
}
  ENH: Forward & back fill methods 267826297
338822929 https://github.com/pydata/xarray/issues/1651#issuecomment-338822929 https://api.github.com/repos/pydata/xarray/issues/1651 MDEyOklzc3VlQ29tbWVudDMzODgyMjkyOQ== shoyer 1217238 2017-10-23T23:11:03Z 2017-10-23T23:11:03Z MEMBER

One small issue, I wonder if anyone has come across this: bottleneck returns the numpy array rather than the DataArray - is that because it's not operating with the correct numpy interface?

Can you explain? I don't think bottleneck is xarray aware, so I'm not surprised by this. NumPy doesn't have a generic interface for external functions (only ufuncs).

{
    "total_count": 0,
    "+1": 0,
    "-1": 0,
    "laugh": 0,
    "hooray": 0,
    "confused": 0,
    "heart": 0,
    "rocket": 0,
    "eyes": 0
}
  ENH: Forward & back fill methods 267826297

Advanced export

JSON shape: default, array, newline-delimited, object

CSV options:

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]);
Powered by Datasette · Queries took 6478.896ms · About: xarray-datasette