I have these two dataframe objects, with a single column each:

a = predictons_lr.select('prediction')
b = predictions_nb.select('prediction')

I would like to create a single resulting dataframe having a and b as columns. I have tried:

df_result = spark.createDataFrame([a, b])

but I get this error:

AssertionError: dataType py4j.java_gateway.JavaMember object at 0x000002260F3D4240 should be an instance of class 'pyspark.sql.types.DataType'

There is an efficient method to create a dataframe of this kind?

  • Do any of these answers fit the bill? They all seem to be getting after the joining of dataframes, which looks like the problem you're trying to solve. – jhelphenstine Jun 19 at 22:36

If this two column are same data type , you can just union

a = predictons_lr.select('prediction')
b = predictions_nb.select('prediction')

new_df = a.union(b)
  • I would a resulting dataframe having two distinct columns. Your method gives in output a single "joined" column. – Simone Jun 19 at 22:56
  • If you need two distinct columns, what's your join key ? – howie Jun 19 at 23:08
  • I am only trying to create a dataframe with two columns, in which each of these is a single column dataframe: a and b. I don't want to join these columns. – Simone Jun 19 at 23:15
  • If sequence doesn't matter, unless to columns are same size, and , you still need to deal with null – howie Jun 20 at 1:36
  • I don't understand why I get this kind of error. – Simone Jun 20 at 13:16

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.