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How can I avoid taking a copy of the dictionary supplied when creating a Pandas DataFrame?

>>> a = np.arange(10)
>>> b = np.arange(10.0)
>>> df1 = pd.DataFrame(a)
>>> a[0] = 100
>>> df1
     0
0  100
1    1
2    2
3    3
4    4
5    5
6    6
7    7
8    8
9    9
>>> d = {'a':a, 'b':b}
>>> df2 = pd.DataFrame(d)
>>> a[1] = 200
>>> d
{'a': array([100, 200,   2,   3,   4,   5,   6,   7,   8,   9]), 'b': array([ 0.,  1.,  2.,  3.,  4.,  5.,  6.,  7.,  8.,  9.])}
>>> df2
     a  b
0  100  0
1    1  1
2    2  2
3    3  3
4    4  4
5    5  5
6    6  6
7    7  7
8    8  8
9    9  9

If I create the dataframe from just a then changes to a are reflected in df (and vice versa).

Is there any way of making this work when supplying a dictionary?

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1  
I totally did not realise it did this. –  Andy Hayden Apr 30 '13 at 21:23

1 Answer 1

There is no way to 'share' a dict and have the frame update based on the dict changes. The copy argument is not relevant for a dict, data is always copied, because it is transformed to an ndarray.

However, there is a way to get this type of dynamic behavior in a limited way.

In [9]: arr = np.array(np.random.rand(5,2))

In [10]: df = DataFrame(arr)

In [11]: arr[0,0] = 0

In [12]: df
Out[12]: 
          0         1
0  0.000000  0.192056
1  0.847185  0.609028
2  0.833997  0.422521
3  0.937638  0.711856
4  0.047569  0.033282

Thus a passed ndarray will at construction time be a view onto the underlying numpy array. Depending on how you operate on the DataFrame you could trigger a copy (e.g. if you assign say a new column, or change a columns dtype). This will also only work for a single dtyped frame.

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