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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
1

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

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