I've got a DataFrame df, which I've 'groupby'ed. I'm looking for a function which is similar to get_group(name) except that rather than throwing a KeyError if the name doesn't exist, returns an empty DataFrame (or some other value), similar to how dict.get works:
g = df.groupby('x') # doesn't work, but would be nice: i = g.get_group(1, default=) # does work, but is hard to read: i = g.obj.take(g.indices.get(1, ), g.axis)
Is there already a function which provides this?
In many ways, the GroupBy object is represented by a dict (.indicies, .groups), and this 'get with default' functionality was core enough to the concept of a dict that it is included in the Python language itself. It seemed that if a dict-like thing doesn't have a get with default, maybe I'm not understanding it correctly? Why would a dict like thing not have a 'get with default'?
An abbreviated example of what I want to do is:
df1_bymid = df1.groupby('mid') df2_bymid = df2.groupby('mid') for mid in set(df1_bymid.groups) | set(df2_bymid.groups) : rows1 = df1_bymid.get_group(mid, ) rows2 = df1_bymid.get_group(mid, ) for row1, row2 in itertools.product(rows1, rows2) : yield row1, row2
Of course I could creating a function, and I might, it just seemed that if I have to go this far out of my way, maybe I'm not using the GroupBy object the way it was intended:
def get_group(df, name, obj=None, default=None) : if obj is None : obj = df.obj try : inds = df.indices[name] except KeyError, e : if default is None : raise e inds = default return df.obj.take(inds, df.axis)