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This question already has an answer here:

For example, I have a table, which looks like:

Student_Id||Index_date||logging_date||Index_date+30day
1            2017-02-11   2017-02-01    2017-03-12
1            2017-02-11   2017-02-05    2017-03-12
1            2017-02-11   2017-03-01    2017-03-12
1            2017-02-11   2017-03-02    2017-03-12
1            2017-02-11   2017-03-03    2017-03-12
1            2017-02-11   2017-03-03    2017-03-12
1            2017-02-11   2017-03-04    2017-03-12
1            2017-02-11   2017-03-05    2017-03-12
1            2017-02-11   2017-03-07    2017-03-12
1            2017-02-11   2017-03-18    2017-03-12

I want to found the count of when this student's logging_date between index_date and index_date+30.

the output should be

student_id||in_30dayscount||notin_30dayscount
1             7             2

I try to code it, but could not find a way to do it.

I used to use hiveContext.sql().

but it is not allowed.

Is there a way to code this in pyspark without using SQL?

This is my code, and it is somewhere wrong

test2=test1.filter(col('logging_date').between('index_date','index_date+30day'))\
           .groupBy('student_id') \
           .agg(countDistinct('logging_date').alias('count')\
           .show(5)

marked as duplicate by pault, user6910411 apache-spark Jan 26 at 11:28

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • import pyspark.sql.functions.expr and try .filter(expr("logging_date between index_date and index_date+30day") – pault Jan 26 at 2:07
  • Hi, I tried the code, but the error pop out :Engine, line 2 test_2 =test1.filter(expr("svc_fr_dt between index_look_back and index_date") ^ SyntaxError: invalid syntax – yokielove Jan 26 at 2:59
  • There should be one more closing parentheses at the end – pault Jan 26 at 3:18