Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a pandas DataFrame, st containing multiple columns:

<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 53732 entries, 1993-01-07 12:23:58 to 2012-12-02 20:06:23
Data columns:
Date(dd-mm-yy)_Time(hh-mm-ss)       53732  non-null values
Julian_Day                          53732  non-null values
AOT_1020                            53716  non-null values
AOT_870                             53732  non-null values
AOT_675                             53188  non-null values
AOT_500                             51687  non-null values
AOT_440                             53727  non-null values
AOT_380                             51864  non-null values
AOT_340                             52852  non-null values
Water(cm)                           51687  non-null values
%TripletVar_1020                    53710  non-null values
%TripletVar_870                     53726  non-null values
%TripletVar_675                     53182  non-null values
%TripletVar_500                     51683  non-null values
%TripletVar_440                     53721  non-null values
%TripletVar_380                     51860  non-null values
%TripletVar_340                     52846  non-null values
440-870Angstrom                     53732  non-null values
380-500Angstrom                     52253  non-null values
440-675Angstrom                     53732  non-null values
500-870Angstrom                     53732  non-null values
340-440Angstrom                     53277  non-null values
Last_Processing_Date(dd/mm/yyyy)    53732  non-null values
Solar_Zenith_Angle                  53732  non-null values
dtypes: datetime64[ns](1), float64(22), object(1)

I want to create two new columns for this dataframe based on applying a function to each row of the dataframe. I don't want to have to call the function multiple times (eg. by doing two separate apply calls) as it is rather computationally intensive. I have tried doing this in two ways, and neither of them work:

Using apply:

I have written a function which takes a Series and returns a tuple of the values I want:

def calculate(s):
    a = s['path'] + 2*s['row'] # Simple calc for example
    b = s['path'] * 0.153
    return (a, b)

Trying to apply this to the DataFrame gives an error:

st.apply(calculate, axis=1)
AssertionError                            Traceback (most recent call last)
<ipython-input-248-acb7a44054a7> in <module>()
----> 1 st.apply(calculate, axis=1)

C:\Python27\lib\site-packages\pandas\core\frame.pyc in apply(self, func, axis, broadcast, raw, args, **kwds)
   4191                     return self._apply_raw(f, axis)
   4192                 else:
-> 4193                     return self._apply_standard(f, axis)
   4194             else:
   4195                 return self._apply_broadcast(f, axis)

C:\Python27\lib\site-packages\pandas\core\frame.pyc in _apply_standard(self, func, axis, ignore_failures)
   4274                 index = None
-> 4276             result = self._constructor(data=results, index=index)
   4277             result.rename(columns=dict(zip(range(len(res_index)), res_index)),
   4278                           inplace=True)

C:\Python27\lib\site-packages\pandas\core\frame.pyc in __init__(self, data, index, columns, dtype, copy)
    390             mgr = self._init_mgr(data, index, columns, dtype=dtype, copy=copy)
    391         elif isinstance(data, dict):
--> 392             mgr = self._init_dict(data, index, columns, dtype=dtype)
    393         elif isinstance(data, ma.MaskedArray):
    394             mask = ma.getmaskarray(data)

C:\Python27\lib\site-packages\pandas\core\frame.pyc in _init_dict(self, data, index, columns, dtype)
    522         return _arrays_to_mgr(arrays, data_names, index, columns,
--> 523                               dtype=dtype)
    525     def _init_ndarray(self, values, index, columns, dtype=None,

C:\Python27\lib\site-packages\pandas\core\frame.pyc in _arrays_to_mgr(arrays, arr_names, index, columns, dtype)
   5412     # consolidate for now
-> 5413     mgr = BlockManager(blocks, axes)
   5414     return mgr.consolidate()

C:\Python27\lib\site-packages\pandas\core\internals.pyc in __init__(self, blocks, axes, do_integrity_check)
    803         if do_integrity_check:
--> 804             self._verify_integrity()
    806         self._consolidate_check()

C:\Python27\lib\site-packages\pandas\core\internals.pyc in _verify_integrity(self)
    892                                      "items")
    893             if block.values.shape[1:] != mgr_shape[1:]:
--> 894                 raise AssertionError('Block shape incompatible with manager')
    895         tot_items = sum(len(x.items) for x in self.blocks)
    896         if len(self.items) != tot_items:

AssertionError: Block shape incompatible with manager

I was then going to assign the values returned from apply to two new columns using the method shown in this question. However, I can't even get to this point! This all works fine if I just return one value.

Using a loop:

I first created two new columns of the dataframe and set them to None:

st['a'] = None
st['b'] = None

Then looped over all of the indices and tried to modify these None values that I'd got in there, but the modifications I did didn't seem to work. That is, no error was generated, but the DataFrame didn't seem to be modified.

for i in st.index:
    # do calc here
    st.ix[i]['a'] = a
    st.ix[i]['b'] = b

I thought that both of these methods would work, but neither of them did. So, what am I doing wrong here? And what is the best, most 'pythonic' and 'pandaonic' way to do this?

share|improve this question

3 Answers 3

up vote 6 down vote accepted

To make the first approach work, try returning a Series instead of a tuple (apply is throwing an exception because it doesn't know how to glue the rows back together as the number of columns doesn't match the original frame).

def calculate(s):
    a = s['path'] + 2*s['row'] # Simple calc for example
    b = s['path'] * 0.153
    return pd.Series(dict(col1=a, col2=b))

The second approach should work if you replace:

st.ix[i]['a'] = a


st.ix[i, 'a'] = a
share|improve this answer
The solution to the second approach works - thanks :-). However, I can't get the first approach to work. Returning a series works, and I get a 'mini-df' returned, but I can't seem to get the values returned from the apply function into the original dataframe. Using st['a'], st['b'] = st.apply(calculate, axis=1) doesn't work, and neither does wrapping the right-hand side in zip(*). Any ideas about what I'm doing wrong here? –  robintw Feb 28 '13 at 9:26
You can concatenate the 'mini' df's columns to the original DataFrame with pd.concat([df, new_df], axis=1). You may also want to consider column-based operations, rather than row-based, e.g., compute and add column 'a' with df['a'] = df['path'] + 2 * df['row'] –  Garrett Mar 1 '13 at 4:56

I always use lambdas and the built-in map() function to create new rows by combining other rows:

st['a'] = map(lambda path, row: path + 2 * row, st['path'], st['row'])

It might be slightly more complicated than necessary for doing linear combinations of numerical columns. On the other hand, I feel it's good to adopt as a convention as it can be used with more complicated combinations of rows (e.g. working with strings) or filling missing data in a column using functions of the other columns.

For example, lets say you have a table with columns gender, and title, and some of the titles are missing. You can fill them with a function as follows:

title_dict = {'male': 'mr.', 'female': 'ms.'}
table['title'] = map(lambda title,
    gender: title if title != None else title_dict[gender],
    table['title'], table['gender'])
share|improve this answer

This was solved here: Apply pandas function which returns multiple values?

Applied to your question this should work:

def calculate(s):
    a = s['path'] + 2*s['row'] # Simple calc for example
    b = s['path'] * 0.153
    return pd.Series({'col1'=a, 'col2'=b})

df = df.merge(df.apply(calculate, axis=1), left_index=True, right_index=True)
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.