Yes, the groupby operations are possibly the most useful and in my opnion the worst explained in the documentation.
I think you were on to something when you decided to try to do this with a function. For me that is the best way, as the function is abstract and so can be used over and over again, if you want to vary what you are doing but change the parameters. The answer provided by Dan Allan is definitely how I would proceed and is the most elegant, but for your reference this is how you would achieve what you want to do using a function.
def GroupFunc(x, df, col, Value):
if df[col][x] == Value:
return "Group 1"
return "Group 2"
DFGrouped = df2.groupby(lambda x: GroupFunc(x, df2, 'X', 'A'))
The thing to understand is that any function passed as a group key is called once per index value with the return values being used as the group names. Therefore in this example when you call the function x is the index value, and then the remaining arguments are the dataframe you are interested in, the column you are working with and the value to test.
Note that the whole of the above could also be achieved in a single lineby using an anonymous function:
DFGrouped = df2.groupby(lambda x: 'Group 1' if df2.X[x] == 'A' else 'Group 2')
Hope this helps