I have a dataframe gi_man_df where group can be n:
+------------------+-----------------+--------+--------------+
| group | number|rand_int| rand_double|
+------------------+-----------------+--------+--------------+
| 'GI_MAN'| 7| 3| 124.2|
| 'GI_MAN'| 7| 10| 121.15|
| 'GI_MAN'| 7| 11| 129.0|
| 'GI_MAN'| 7| 12| 125.0|
| 'GI_MAN'| 7| 13| 125.0|
| 'GI_MAN'| 7| 21| 127.0|
| 'GI_MAN'| 7| 22| 126.0|
+------------------+-----------------+--------+--------------+
and I am expecting a numpy nd_array i.e, gi_man_array:
[[[124.2],[121.15],[129.0],[125.0],[125.0],[127.0],[126.0]]]
where rand_double values after applying pivot.
I tried the following 2 approaches:
FIRST: I pivot the gi_man_df as follows:
gi_man_pivot = gi_man_df.groupBy("number").pivot('rand_int').sum("rand_double")
and the output I got is:
Row(number=7, group=u'GI_MAN', 3=124.2, 10=121.15, 11=129.0, 12=125.0, 13=125.0, 21=127.0, 23=126.0)
but here the problem is to get the desired output, I can't convert it to matrix then convert again to numpy array.
SECOND: I created the vector in the dataframe itself using:
assembler = VectorAssembler(inputCols=["rand_double"],outputCol="rand_double_vector")
gi_man_vector = assembler.transform(gi_man_df)
gi_man_vector.show(7)
and I got the following output:
+----------------+-----------------+--------+--------------+--------------+
| group| number|rand_int| rand_double| rand_dbl_Vect|
+----------------+-----------------+--------+--------------+--------------+
| GI_MAN| 7| 3| 124.2| [124.2]|
| GI_MAN| 7| 10| 121.15| [121.15]|
| GI_MAN| 7| 11| 129.0| [129.0]|
| GI_MAN| 7| 12| 125.0| [125.0]|
| GI_MAN| 7| 13| 125.0| [125.0]|
| GI_MAN| 7| 21| 127.0| [127.0]|
| GI_MAN| 7| 22| 126.0| [126.0]|
+----------------+-----------------+--------+--------------+--------------+
but problem here is I can't pivot it on rand_dbl_Vect.
So my question is:
1. Is any of the 2 approaches is correct way of achieving the desired output, if so then how can I proceed further to get the desired result?
2. What other way I can proceed with so the code is optimal and performance is good?
This
produces