0
votes
1answer
33 views

Applying a function to a MultiIndex pandas.DataFrame column

I have a MultiIndex pandas DataFrame in which I want to apply a function to one of its columns and assign the result to that same column. In [1]: import numpy as np import pandas as pd ...
2
votes
1answer
30 views

Debug Pandas Dataframe Apply

New to Pandas and I have the following question: I want to apply my_func (a custom created function) to each row of a dataframe. res = df.apply(lambda x: my_func(x, par1, par2) When I debug and I ...
0
votes
1answer
34 views

getting time delta from pandas data frame

I have a a pandas dataframe containing timestamps like this time_0 time_1 time_2 time_3 21/03/2014 16:17 21/03/2014 15:40 21/03/2014 14:55 21/03/2014 12:50 ...
0
votes
0answers
39 views

Apply to each element in a Pandas dataframe

Since each series in the data frame is of tuple, I need to convert them into one number. Basically I have something like this: price_table['Col1'].apply(lambda x: x[0]) But I actually need to do ...
0
votes
1answer
28 views

Combining different functions into One , Python

I need to combine different functions into one and use the apply function(of those individual functions) within the main function itself. My case is something more complex so i'll use a basic example ...
0
votes
1answer
39 views

Binning values and using the binning labels to refer to the index of another dataframe

I am struggling with this task: What I did so far:I have 8760 values in which I binned them according to certain intervals. The number of intervals is 10.Then I grouped the values. Problem:Now I ...
-1
votes
1answer
29 views

cannot correctly use DataFrame.Apply

I have the following problem, I have a Panda data frame and I want to process each row ny using the apply method. Each row should be processed by using a function (static method) within the same ...
0
votes
1answer
107 views

Broadcast pandas.Series.div column-wise to a DataFrame

I have an operation that works fine, but is generating a: FutureWarning: TimeSeries broadcasting along DataFrame index by default is deprecated. So I'd like to do the calculation in a way that is ...
1
vote
1answer
41 views

Why does pandas apply calculate twice

I'm using the apply method on a panda's DataFrame object. When my DataFrame has a single column, it appears that the applied function is being called twice. The questions are why? And, can I stop ...
2
votes
1answer
214 views

python pandas: apply a function with arguments to a series. Update

I would like to apply a function with argument to a pandas series: I have found two different solution of SO: python pandas: apply a function with arguments to a series and Passing multiple ...
5
votes
2answers
62 views

Duplicating some rows and changing some values in pandas

I have a pandas DataFrame looking like this: From To Val GE VD 1000 GE VS 1600 VS VD 1500 VS GE 600 VD GE 1200 VD VS 1300 I would like to ...
1
vote
2answers
52 views

Using 2 pandas columns as arguments for np.timedelta

Simple question: In [1]: df = DataFrame({'value':[4,4,4],'unit':['D','W','Y']}) df Out[1]: unit value 0 D 4 1 W 4 2 Y 4 I can create timedeltas this way (of course): ...
2
votes
2answers
70 views

How to create a column by applying a function to the (non-trivial) index?

I may get downvoted by this question, but so far I have been unable to wrap my head around this problem. I have a DataFrame which looks like this: Hits ...
1
vote
2answers
78 views

apply a function to a groupby function

I want to count how many consistent increase, and the difference between the first element and the last element, on a groupby. But I can't apply the function on the groupby. After groupby, is it a ...
6
votes
2answers
5k views

Pandas: How to use apply function to multiple columns

I have some problems with the Pandas apply function, when using multiple columns with the following dataframe df = DataFrame ({'a' : np.random.randn(6), 'b' : ['foo', 'bar'] * 3, ...
7
votes
3answers
2k views

Apply different functions to different items in group object: Python pandas

Suppose I have a dataframe as follows: In [1]: test_dup_df Out[1]: exe_price exe_vol flag 2008-03-13 14:41:07 84.5 200 yes 2008-03-13 14:41:37 85.0 10000 yes ...
0
votes
1answer
161 views

problems with apply function in pandas after update

I'm having some problems when running a certain piece of code soon after update at version 0.9.1 of Pandas (under Python 2.7) from previous version. Basically, the code I run is the following: myfunc ...
1
vote
1answer
303 views

Python Pandas: What causes slowdown in different column selection methods?

After seeing this question about replicating SQL select-statement-like behavior in Pandas, I added this answer showing two ways that could shorten the verbose syntax given in the accepted answer to ...
0
votes
2answers
298 views

python pandas unbound local error while calling a function 'df.apply'

I am trying to use df.apply() function in pandas but getting the following error. The function is trying to convert every entry into 0 if it is less than 'threshold' from pandas import * import ...
8
votes
1answer
4k views

Normalize data in pandas

Suppose I have a pandas data frame df: I want to calculate the column wise mean of a data frame, This is easy: df.apply(average) then the column wise range max(col) - min (col). this is easy ...
3
votes
1answer
2k views

How to use Pandas groupby apply() without adding an extra index

I very often want to create a new DataFrame by combining multiple columns of a grouped DataFrame. The apply() function allows me to do that, but it requires that I create an unneeded index: In ...
2
votes
3answers
688 views

Python Pandas: How to broadcast an operation using apply without writing a secondary function

I have a column of data that contains strings, and I want to create a new column that takes only the first two characters from the corresponding data string. It seems logical to use the apply ...
9
votes
1answer
3k views

python pandas: apply a function with arguments to a series

I want to apply a function with arguments to a series in python pandas: x = my_series.apply(my_function, more_arguments_1) y = my_series.apply(my_function, more_arguments_2) ... The documentation ...