Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

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?

share|improve this question

Latest version of Pandas does not have this issue anymore

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

  df2 = df.copy(deep=True)

  id(df), id(df2)
  Out[3]: (136575472, 127792400)

  id(df.index), id(df2.index)
  Out[4]: (145820144, 127657008)
share|improve this answer

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
share|improve this answer
Created github issue: – Andy Hayden Jul 11 '13 at 10:56

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.