30

I have a df whose 'products' column are lists like below:

+----------+---------+--------------------+
|member_srl|click_day|            products|
+----------+---------+--------------------+
|        12| 20161223|  [2407, 5400021771]|
|        12| 20161226|        [7320, 2407]|
|        12| 20170104|              [2407]|
|        12| 20170106|              [2407]|
|        27| 20170104|        [2405, 2407]|
|        28| 20161212|              [2407]|
|        28| 20161213|      [2407, 100093]|
|        28| 20161215|           [1956119]|
|        28| 20161219|      [2407, 100093]|
|        28| 20161229|           [7905970]|
|       124| 20161011|        [5400021771]|
|      6963| 20160101|         [103825645]|
|      6963| 20160104|[3000014912, 6626...|
|      6963| 20160111|[99643224, 106032...|

How to add a new column product_cnt which are the length of products list? And how to filter df to get specified rows with condition of given products length ? Thanks.

2 Answers 2

33

Pyspark has a built-in function to achieve exactly what you want called size. http://spark.apache.org/docs/latest/api/python/pyspark.sql.html#pyspark.sql.functions.size . To add it as column, you can simply call it during your select statement.

from pyspark.sql.functions import size

countdf = df.select('*',size('products').alias('product_cnt'))

Filtering works exactly as @titiro89 described. Furthermore, you can use the size function in the filter. This will allow you to bypass adding the extra column (if you wish to do so) in the following way.

filterdf = df.filter(size('products')==given_products_length)
1
  • You can find the latest docs here. (Link in the answer is broken, @DavidWayne.)
    – Kim
    Jul 11 at 8:21
11

First question:

How to add a new column product_cnt which are the length of products list?

>>> a = [(12,20161223, [2407,5400021771]),(12,20161226,[7320,2407])]
>>> df = spark.createDataFrame(a,
["member_srl","click_day","products"])
>>> df.show()
+----------+---------+------------------+
|member_srl|click_day|          products|
+----------+---------+------------------+
|        12| 20161223|[2407, 5400021771]|
|        12| 20161226|[7320, 2407, 4344]|
+----------+---------+------------------+

You can find a similar example here

>>> from pyspark.sql.types import IntegerType
>>> from pyspark.sql.functions import udf

>>> slen = udf(lambda s: len(s), IntegerType())

>>> df2 = df.withColumn("product_cnt", slen(df.products))
>>> df2.show()
+----------+---------+------------------+-----------+
|member_srl|click_day|          products|product_cnt|
+----------+---------+------------------+-----------+
|        12| 20161223|[2407, 5400021771]|          2|
|        12| 20161226|[7320, 2407, 4344]|          3|
+----------+---------+------------------+-----------+

Second question:

And how to filter df to get specified rows with condition of given products length ?

You can use filter function docs here

>>> givenLength = 2
>>> df3 = df2.filter(df2.product_cnt==givenLength)
>>> df3.show()
+----------+---------+------------------+-----------+
|member_srl|click_day|          products|product_cnt|
+----------+---------+------------------+-----------+
|        12| 20161223|[2407, 5400021771]|          2|
+----------+---------+------------------+-----------+

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.