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https://issues.apache.org/jira/browse/ARROW-15474?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=17623362#comment-17623362
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Lance Dacey commented on ARROW-15474:
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Nice - I will give that a shot, thanks. I have been using a library called
`polars` to drop duplicates from a pyarrow table lately, but it would be nice
to have a native-pyarrow way to do it.
Can we sort the data before adding the `cumulative_sum`? My concern is that the
order of the raw data might be messed up and we might select the wrong row to
keep.
> [Python] Possibility of a table.drop_duplicates() function?
> -----------------------------------------------------------
>
> Key: ARROW-15474
> URL: https://issues.apache.org/jira/browse/ARROW-15474
> Project: Apache Arrow
> Issue Type: Wish
> Components: Python
> Affects Versions: 6.0.1
> Reporter: Lance Dacey
> Priority: Major
>
> I noticed that there is a group_by() and sort_by() function in the 7.0.0
> branch. Is it possible to include a drop_duplicates() function as well?
> ||id||updated_at||
> |1|2022-01-01 04:23:57|
> |2|2022-01-01 07:19:21|
> |2|2022-01-10 22:14:01|
> Something like this which would return a table without the second row in the
> example above would be great.
> I usually am reading an append-only dataset and then I need to report on
> latest version of each row. To drop duplicates, I am temporarily converting
> the append-only table to a pandas DataFrame, and then I convert it back to a
> table and save a separate "latest-version" dataset.
> {code:python}
> table.sort_by(sorting=[("id", "ascending"), ("updated_at",
> "ascending")]).drop_duplicates(subset=["id"] keep="last")
> {code}
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