I want to filter a Pyspark DataFrame with a SQL-like IN clause, as in

sc = SparkContext()
sqlc = SQLContext(sc)
df = sqlc.sql('SELECT * from my_df WHERE field1 IN a')

where a is the tuple (1, 2, 3). I am getting this error:

java.lang.RuntimeException: [1.67] failure: ``('' expected but identifier a found

which is basically saying it was expecting something like '(1, 2, 3)' instead of a. The problem is I can't manually write the values in a as it's extracted from another job.

How would I filter in this case?


String you pass to SQLContext it evaluated in the scope of the SQL environment. It doesn't capture the closure. If you want to pass a variable you'll have to do it explicitly using string formatting:

df = sc.parallelize([(1, "foo"), (2, "x"), (3, "bar")]).toDF(("k", "v"))
sqlContext.sql("SELECT * FROM df WHERE v IN {0}".format(("foo", "bar"))).count()
##  2 

Obviously this is not something you would use in a "real" SQL environment due to security considerations but it shouldn't matter here.

In practice DataFrame DSL is a much choice when you want to create dynamic queries:

from pyspark.sql.functions import col

df.where(col("v").isin({"foo", "bar"})).count()
## 2

It is easy to build and compose and handles all details of HiveQL / Spark SQL for you.

  • For the second method, you can achieve the same by doing df.where(df.v.isin({"foo", "bar"})).count() – mar tin Mar 9 '16 at 10:47
  • 3
    You can, but personally I don't like this approach. With col I can easily decouple SQL expression and particular DataFrame object. So you can for example keep a dictionary of useful expressions and just pick them when you need. With explicit DF object you'll have to put it inside a function and it doesn't compose that well. – zero323 Mar 9 '16 at 11:32
  • How can this be done with a list of tuples? If I have e.g. [(1,1), (1,2), (1,3)] where one is aid and the other is bid for example. It would have to be something like col(['aid', 'bid]).isin([(1,1), (1,2)]) – displayname Mar 26 '18 at 9:07

reiterating what @zero323 has mentioned above : we can do the same thing using a list as well (not only set) like below

from pyspark.sql.functions import col

df.where(col("v").isin(["foo", "bar"])).count()
  • @zero323 is there a negation of is in LIKE not in sparksql. – E B Apr 5 '18 at 21:29
  • 1
    Yes. You can use '~' – pissall Jun 8 '18 at 13:08

Just a little addition/update:

choice_list = ["foo", "bar", "jack", "joan"]

If you want to filter your dataframe "df", such that you want to keep rows based upon a column "v" taking only the values from choice_list, then

df_filtered = df.where( ( col("v").isin (choice_list) ) )

A slightly different approach that worked for me is to filter with a custom filter function.

def filter_func(a):
"""wrapper function to pass a in udf"""
    def filter_func_(col):
    """filtering function"""
        if col in a.value:
            return True

    return False

return udf(filter_func_, BooleanType())

# Broadcasting allows to pass large variables efficiently
a = sc.broadcast((1, 2, 3))
df = my_df.filter(filter_func(a)(col('field1'))) \

You can also do this for integer columns:

df_filtered = df.filter("field1 in (1,2,3)")

or this for string columns:

df_filtered = df.filter("field1 in ('a','b','c')")

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.