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What are general best-practices to filtering a dataframe in pyspark by a given list of values? Specifically:

Depending on the size of the given list of values, then with respect to runtime when is it best to use isin vs inner join vs broadcast?

This question is the spark analogue of the following question in Pig:

Pig: efficient filtering by loaded list

Additional context:

Pyspark isin function

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Considering

import pyspark.sql.functions as psf

There are two types of broadcasting:

  • sc.broadcast() to copy python objects to every node for a more efficient use of psf.isin
  • psf.broadcast inside a join to copy your pyspark dataframe to every node when the dataframe is small: df1.join(psf.broadcast(df2)). It is usually used for cartesian products (CROSS JOIN in pig).

In the context question, the filtering was done using the column of another dataframe, hence the possible solution with a join.

Keep in mind that if your filtering list is relatively big the operation of searching through it will take a while, and since it has do be done for each row it can quickly get costly.

Joins on the other hand involve two dataframes that will be sorted before matching, so if your list is small enough you might not want to have to sort a huge dataframe just for a filter.

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    I get the two different types of broadcast, but I'm not sure I am clear on the answer to the original question about efficiently filtering a dataframe in pyspark by a given list of values. Can I simplify this by saying if the list of values is "small", use isin and if the list of values is "big" use inner join with the values in a DataFrame? – Scott Willeke Feb 6 '18 at 6:00
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    This is what I meant yes: isin if the filtering list is small, join if it's big . Broadcasting allows you to make your isin or join (whichever one you chose) even more performant – MaFF Feb 7 '18 at 7:09

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