As suggested in the title, I'd like to drop all empty columns\variables(where all records are empty or equal null or ""), so as to reduce time cost in later execution.
I have a dataset() with 1000 columns, some\lots of which are empty. Now I want to create a new dataset in which I need to add columns under some conditions of previous dataset.
data new; set old; if oldcol1 ne "" then newcol1='<a>'||strip(oldcol1)||'</a>'; end; if oldcol2 ne "" then newcol2='<a>'||strip(oldcol2)||'</a>'; end; ... ...; drop oldcol1 oldcol2.....oldcol1000; run;
It takes quite some time to execute given the following reason:
number of old columns is huge
in fact I need to do a loop in another dataset to set the number after oldcol
1 2 3
So you can imagine how many times to be executed in terms of searching, finding and setting values.
Hence one way I could think of to reduce time cost is drop all empty columns first. But any inputs regarding optimizing the algorithm is highly welcomed as well.