home / github

Menu
  • GraphQL API
  • Search all tables

issues

Table actions
  • GraphQL API for issues

1 row where "created_at" is on date 2022-08-09, state = "closed" and user = 2448579 sorted by updated_at descending

✎ View and edit SQL

This data as json, CSV (advanced)

Suggested facets: created_at (date), updated_at (date), closed_at (date)

type 1

  • issue 1

state 1

  • closed · 1 ✖

repo 1

  • xarray 1
id node_id number title user state locked assignee milestone comments created_at updated_at ▲ closed_at author_association active_lock_reason draft pull_request body reactions performed_via_github_app state_reason repo type
1333514579 I_kwDOAMm_X85Pe9FT 6902 Flox based groupby operations don't support `dtype` in mean method dcherian 2448579 closed 0     3 2022-08-09T16:38:25Z 2022-10-11T17:45:27Z 2022-10-11T17:45:27Z MEMBER      

Discussed in https://github.com/pydata/xarray/discussions/6901

<sup>Originally posted by **tasansal** August 9, 2022</sup> We have been using the new groupby logic with Flox and numpy_groupies; however, when we run the following, the dtype is not recognized as a valid argument. This breaks API compatibility for cases where you may not have the acceleration libraries installed. Not sure if this has to be upstream in In addition to base Xarray we have the following extras installed: Flox numpy_groupies Bottleneck We do this because our data is `float32` but we want the accumulator in mean to be `float64` for accuracy. One solution is to cast the variable to float64 before mean, which may cause a copy and spike in memory usage. When Flox and numpy_groupies are not installed, it works as expected. We are working with multi-dimensional time-series of weather forecast models. ```python da = xr.load_mfdataset(...) da.groupby("time.month").mean(dtype='float64').compute() ``` Here is the end of the traceback and it appears it is on Flox. ```shell File "/home/altay_sansal_tgs_com/miniconda3/envs/wind-data-mos/lib/python3.10/site-packages/flox/core.py", line 786, in _aggregate return _finalize_results(results, agg, axis, expected_groups, fill_value, reindex) File "/home/altay_sansal_tgs_com/miniconda3/envs/wind-data-mos/lib/python3.10/site-packages/flox/core.py", line 747, in _finalize_results finalized[agg.name] = agg.finalize(*squeezed["intermediates"], **agg.finalize_kwargs) TypeError: <lambda>() got an unexpected keyword argument 'dtype' ``` What is the best way to handle this, maybe fix it in Flox?
{
    "url": "https://api.github.com/repos/pydata/xarray/issues/6902/reactions",
    "total_count": 0,
    "+1": 0,
    "-1": 0,
    "laugh": 0,
    "hooray": 0,
    "confused": 0,
    "heart": 0,
    "rocket": 0,
    "eyes": 0
}
  completed xarray 13221727 issue

Advanced export

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

CSV options:

CREATE TABLE [issues] (
   [id] INTEGER PRIMARY KEY,
   [node_id] TEXT,
   [number] INTEGER,
   [title] TEXT,
   [user] INTEGER REFERENCES [users]([id]),
   [state] TEXT,
   [locked] INTEGER,
   [assignee] INTEGER REFERENCES [users]([id]),
   [milestone] INTEGER REFERENCES [milestones]([id]),
   [comments] INTEGER,
   [created_at] TEXT,
   [updated_at] TEXT,
   [closed_at] TEXT,
   [author_association] TEXT,
   [active_lock_reason] TEXT,
   [draft] INTEGER,
   [pull_request] TEXT,
   [body] TEXT,
   [reactions] TEXT,
   [performed_via_github_app] TEXT,
   [state_reason] TEXT,
   [repo] INTEGER REFERENCES [repos]([id]),
   [type] TEXT
);
CREATE INDEX [idx_issues_repo]
    ON [issues] ([repo]);
CREATE INDEX [idx_issues_milestone]
    ON [issues] ([milestone]);
CREATE INDEX [idx_issues_assignee]
    ON [issues] ([assignee]);
CREATE INDEX [idx_issues_user]
    ON [issues] ([user]);
Powered by Datasette · Queries took 43.206ms · About: xarray-datasette