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First, I create a DataFrame

In [61]: import pandas as pd
In [62]: df = pd.DataFrame([[1], [2], [3]])

Then, I deeply copy it by copy

In [63]: df2 = df.copy(deep=True)

Now the DataFrame are different.

In [64]: id(df), id(df2)
Out[64]: (4385185040, 4385183312)

However, the index are still the same.

In [65]: id(df.index), id(df2.index)
Out[65]: (4385175264, 4385175264)

Same thing happen in columns, is there any way that I can easily deeply copy it not only values but also index and columns?

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1 Answer 1

I wonder whether this is a bug in pandas... it's interesting because Index/MultiIndex (index and columns) are in some sense supposed to be immutable (however I think these should be copies).

For now, it's easy to create your own method, and add it to DataFrame:

In [11]: def very_deep_copy(self):
    return pd.DataFrame(self.values.copy(), self.index.copy(), self.columns.copy())

In [12]: pd.DataFrame.very_deep_copy = very_deep_copy

In [13]: df2 = df.very_deep_copy()

As you can see this will create new objects (and preserve names):

In [14]: id(df.columns)
Out[14]: 4370636624

In [15]: id(df2.columns)
Out[15]: 4372118776
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Created github issue: github.com/pydata/pandas/issues/4202 –  Andy Hayden Jul 11 '13 at 10:56
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