I have the following two pySpark dataframe:

> df_lag_pre.columns

> df_unmatched.columns
['alt_sku', 'alt_lag_quantity', 'country', 'ccy_code', 'name', 'usd_price']

Now I want to join them on common columns, so I try the following:

> df_lag_pre.join(df_unmatched, on=['name','country','ccy_code','usd_price'])

And I get the following error message:

AnalysisException: u'resolved attribute(s) price#3424 missing from country#3443,month#801,price#808,category#803,subcategory#804,page#805,date#280,link#809,name#806,quantity#807,ccy_code#3439,sku#3004,day#802 in operator !EvaluatePython PythonUDF#<lambda>(ccy_code#3439,price#3424), pythonUDF#811: string;'

Some of the columns that show up on this error, such as price, were part of another dataframe from which df_lag was built from. I can't find any info on how to interpret this message, so any help would be greatly appreciated.

  • And what is source of !EvaluatePython PythonUDF? Could you provide a minimal code example? – user6022341 Oct 15 '16 at 18:35
  • 1
    It seems there is an issue in lineage of df_lag_pre. If you could provide the complete set of transformations, we could be able to rectify the issue. – Abhishek Bansal Apr 9 '17 at 8:12

You can perform join this way in pyspark, Please see if this is useful for you:

join_both = df1.join(df2, (col("df1.name") == col("df2.name")) & (col("df1.country") == col("df2.country")) & (col("df1.ccy_code") == col("df2.ccy_code")) & (col("df1.usd_price") == col("df2.usd_price")), 'inner')

Update: If you are getting col not defined error, please use below import

from pyspark.sql.functions import col
  • You can use : from pyspark.sql.functions import col and df1 is the alias name. No need to define and df_lag_pre and df_unmatched already defined. Hope this will help! – Manu Gupta Sep 19 '18 at 6:23

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.