I'm working with a data set that contains information on anti-human trafficking organizations. The organizations are identified by either the organization names or the web address of the organization's home page. I'd like to conditionally collapse this data frame on a case-by-case basis so that I'm left with a unique set of identifiers (in the case of my data, either the name of an organization or the organization's web address) for each case along with about 1000+ numeric attributes for these cases that are either the highest or lowest value of however many rows the identifier was associated with before the collapse. To exemplify this, I want to turn:
> df1 x y z Item1 0 3 Item1 1 4 Item2 1 2 Item3 1 3 Item2 1 5 Item3 1 2 Item4 0 2
Into something like
> df2 x y z Item1 1 3 Item2 1 2 Item3 1 2 Item4 0 2
In this example, of course, I want to keep the max for Var2 and the min for Var3 and preserve only unique Var1 values.
Can anyone suggest a systematic way to do this for a large data set? Thanks in advance for your help!