569 reputation
316
bio website tba
location Berlin, Germany
age
visits member for 3 years
seen May 29 at 11:46

Online Marketing


Feb
14
comment Insert 0-values for missing dates within MultiIndex
Building the tuple list is something I want to avoid actually. For a MultiIndex this can quickly lead to memory errors(I had one) because it builds a list that grows with the number of levels and level_values and the operation itself is much easier (for each unique group key add all dates that are not present). Iterating through the groups and creating small dfs with all dates included and then concatenating is maybe more memory friendly.
Feb
13
asked Insert 0-values for missing dates within MultiIndex
Jan
11
accepted When does pandas (pandas.pydata.org) throw a memory error on df.sortlevel(k)?
Jan
10
comment When does pandas (pandas.pydata.org) throw a memory error on df.sortlevel(k)?
there are still a few things in 0.10 that make it hard for me to switch. I have to wait for 0.10.1 in this case. but are there specific changes with regard to this issue which could explain the behavior?
Jan
10
asked When does pandas (pandas.pydata.org) throw a memory error on df.sortlevel(k)?
Dec
14
awarded  Commentator
Dec
14
accepted Adding levels to MultiIndex, removing without losing
Oct
14
comment pandas: count things
I filed an issue because of the reindex error: github.com/pydata/pandas/issues/2067
Oct
14
comment pandas: count things
This is really surprising since there is a specific value count function in algorithms.py and I doubt Wes would have added this if it wasn't faster than groupby and then size. I get different results for a DataFrame I just loaded : In [20]: timeit df.groupby(df.columns[8]).size() 100 loops, best of 3: 13.4 ms per loop In [22]: timeit df[df.columns[8]].value_counts() 100 loops, best of 3: 5.62 ms per loop.
Oct
14
comment pandas: count things
It was my bad: "on" is only to be used when the columns occur in both DataFrames (so my code was referring to a join on both id and start_station_id which is wrong here). Here you have to use "left_on" and "right_on". For the reindex: non-unique indices are rather new in pandas. It could be that this isn't supported. Try df.ix[...] instead of df.reindex which doesn't throw this error.
Oct
14
revised pandas: count things
added 13 characters in body
Oct
13
revised pandas: count things
deleted 106 characters in body
Oct
13
revised pandas: count things
added 459 characters in body
Oct
13
answered pandas: count things
Sep
7
awarded  Teacher
Aug
14
comment Selecting rows from a Pandas dataframe with a compound (hierarchical) index
np.in1d(df.index.labels[0], match(['a','b', 'c'], df.index.levels[0])) seems to do the trick the way I understood the MultiIndex code (labels are created using Categorical.from_arrays(values) )
Aug
14
comment Selecting rows from a Pandas dataframe with a compound (hierarchical) index
I suspect though that np.in1d(df.index.labels[0], [label_of_a,label_of_b,label_of_c]) will be much faster and does the same job. Please correct me if I am wrong.
Aug
14
comment Selecting rows from a Pandas dataframe with a compound (hierarchical) index
df.index behaves like a tuple list here. So you iterate through the tuples, discarding group 2 (you assign the first element of each tuple to "group1" and the second to "group2" but only use "group1") and checking whether the first element of the tuple is in the list ['a', 'b', 'c']. This creates a boolean mask which is then used for the subsetting.
Jul
17
answered Adding levels to MultiIndex, removing without losing
Jun
29
asked Adding levels to MultiIndex, removing without losing