So, I have a DataFrame with a multiindex which looks like this:
info1 info2 info3 abc-8182 2012-05-08 10:00:00 1 6.0 "yeah!" 2012-05-08 10:01:00 2 25.0 ":(" pli-9230 2012-05-08 11:00:00 1 30.0 "see yah!" 2012-05-08 11:15:00 1 30.0 "see yah!" ...
The index is an id and a datetime representing when that info about that id was recorded. What we needed to do was to find, for each id, the earliest record. We tried a lot of options from the dataframe methods but we ended up doing it by looping through the DataFrame:
df = pandas.read_csv(...) empty = pandas.DataFrame() ids = df.index.get_level_values(0) for id in ids: minDate = df.xs(id).index.min() row = df.xs(id).xs(minDate) mindf = pandas.DataFrame(row).transpose() mindf.index = pandas.MultiIndex.from_tuples([(id, mindate)]) empty = empty.append(mindf) print empty.groupby(lambda x : x).first()
Which gives me:
x0 x1 x2 ('abc-8182', <Timestamp: 2012-05-08 10:00:00>) 1 6 yeah! ('pli-9230', <Timestamp: 2012-05-08 11:00:00>) 1 30 see yah!
I feel that there must be a simple, "pandas idiomatic", very immediate way to do this without looping though the data frame like this. Is there? :)