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I've created a pandas DataFrame

df=DataFrame(index=['A','B','C'], columns=['x','y'])

and got this

    x    y
A  NaN  NaN
B  NaN  NaN
C  NaN  NaN


Then I want to assign value to particular cell, for example for row 'C' and column 'x'. I've expected to get such result:

    x    y
A  NaN  NaN
B  NaN  NaN
C  10  NaN

with this code:

df.xs('C')['x']=10

but contents of df haven't changed. It's again only Nan's in dataframe.

Any suggestions?

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Don't use 'chained indexing' (df['x']['C']), use df.ix['x','C']. –  Yariv Jan 22 at 15:55
    
The order of index access needs to be: dataframe[column (series)] [row (Series index)], whereas many people (including myself) are more used to the dataframe[row][column] order. As a Matlab and R programmer the latter feels more intuitive to me but that apparently is not the way Pandas works.. –  Zhubarb Jan 31 at 11:24

3 Answers 3

up vote 18 down vote accepted

Warning: It is sometimes difficult to predict if an operation returns a copy or a view. For this reason the docs recommend avoiding using "chained indexing".


Why df.xs('C')['x']=10 does not work:

df.xs('C') by default, returns a new dataframe with a copy of the data, so

df.xs('C')['x']=10

modifies this new dataframe only.

df['x'] returns a view of the df dataframe, so

df['x']['C']=10

modifies df itself.


Alternatively,

df.xs('C', copy = False)['x']=10

does modify df.


Although it may be convenient to use df.ix['C','x'] = 10, note that as of version 0.13, df['x']['C'] = 10 is significantly quicker than df.ix['C','x'] = 10:

In [20]: %timeit df['x']['C'] = 10
100000 loops, best of 3: 6.31 µs per loop

In [19]: %timeit df.ix['C','x'] = 10
10000 loops, best of 3: 104 µs per loop

In [32]: %timeit df.xs('C', copy=False)['x'] = 10
10000 loops, best of 3: 89.2 µs per loop
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There's no such thing as df.x in the API. What did you mean? –  smci May 20 '13 at 2:21
    
And what version of pandas? –  smci May 20 '13 at 2:28
    
@smci: 'x' is the name of a column in df. df.x returns a Series with the values in column x. I'll change it to df['x'] since this notation will work with any column name (unlike the dot notation) and I think is clearer. –  unutbu May 20 '13 at 11:58
    
I knew that, I thought you were saying df.x was some unknown new method alongside df.xs, df.ix –  smci May 20 '13 at 23:27
1  
According to the maintainers, this is not the recommended way to set a value. See stackoverflow.com/a/21287235/1579844 and my answer. –  Yariv Jan 22 at 15:45

The recommended way (according to the maintainers) to set a value is:

df.ix['x','C']=10

Using 'chained indexing' (df['x']['C']) may lead to problems.

See:

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The fastest way to do this using the df.set_value('x','C', 10) This method is ~100 times faster than .ix method

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