I have two data frames.
DF1
column1 column2 column3 column4
agree strongly agree disagree null
null disagree strongly disagree agree
disagree null strongly agree disagree
DF2
col1 col2 col3 col4 cluster
disagree agree strongly disagree disagree 1
agree strongly agree disagree null 2
disagree null strongly agree disagree 5
disagree agree strongly agree disagree 3
null disagree strongly disagree agree 5
disagree null strongly agree disagree 6
Expected output
column1 column2 column3 column4 Cluster
agree strongly agree disagree null 2
null disagree strongly disagree agree 5
disagree null strongly agree disagree 6
I have already did this in R but I could not implement the same in PySpark. Can anyone please tell me how to implement in PySpark
Code I used in R(where it worked):
# my columns names were same here
merged <- left_join(df1,df2,by=c('column1','column2','column3','column4'))
Required Result: All rows of df1 and the last column of df2 joined.