Numpy seems to make a distinction between str and object types. For instance I can do ::

>>> import pandas as pd
>>> import numpy as np
>>> np.dtype(str)
>>> np.dtype(object)

Where dtype('S') and dtype('O') corresponds to str and object respectively.

However pandas seem to lack that distinction and coerce str to object. ::

>>> df = pd.DataFrame({'a': np.arange(5)})
>>> df.a.dtype
>>> df.a.astype(str).dtype
>>> df.a.astype(object).dtype

Forcing the type to dtype('S') does not help either. ::

>>> df.a.astype(np.dtype(str)).dtype
>>> df.a.astype(np.dtype('S')).dtype

Is there any explanation for this behavior?

  • 4
    As a very brief explanation that isn't a full answer: If you use a string dtype in numpy, it's fundamentally a fixed-width c-like string. In pandas, they're "normal" python strings, thus the object type. – Joe Kington Jan 19 '16 at 15:55
  • 2
    This might address your question - stackoverflow.com/questions/21018654/… - basically they store object ndarray, not strings in ndarray. However, I do support that they could have be more clear when it comes to distinguishing types - for example having an ability to distinguish 'str' from 'mixed' columns which are also reported as 'O'. – Sereger Jan 19 '16 at 16:00

Numpy's string dtypes aren't python strings.

Therefore, pandas deliberately uses native python strings, which require an object dtype.

First off, let me demonstrate a bit of what I mean by numpy's strings being different:

In [1]: import numpy as np
In [2]: x = np.array(['Testing', 'a', 'string'], dtype='|S7')
In [3]: y = np.array(['Testing', 'a', 'string'], dtype=object)

Now, 'x' is a numpy string dtype (fixed-width, c-like string) and y is an array of native python strings.

If we try to go beyond 7 characters, we'll see an immediate difference. The string dtype versions will be truncated:

In [4]: x[1] = 'a really really really long'
In [5]: x
array(['Testing', 'a reall', 'string'],

While the object dtype versions can be arbitrary length:

In [6]: y[1] = 'a really really really long'

In [7]: y
Out[7]: array(['Testing', 'a really really really long', 'string'], dtype=object)

Next, the |S dtype strings can't hold unicode properly, though there is a unicode fixed-length string dtype, as well. I'll skip an example, for the moment.

Finally, numpy's strings are actually mutable, while Python strings are not. For example:

In [8]: z = x.view(np.uint8)
In [9]: z += 1
In [10]: x
array(['Uftujoh', 'b!sfbmm', 'tusjoh\x01'],

For all of these reasons, pandas chose not to ever allow C-like, fixed-length strings as a datatype. As you noticed, attempting to coerce a python string into a fixed-with numpy string won't work in pandas. Instead, it always uses native python strings, which behave in a more intuitive way for most users.

  • 7
    Actually, pandas does allow numpy-like fixed-length byte strings, although they are little used, e.g., pd.Series(['a', 'b', 'c'], dtype='S1') – mdurant Nov 16 '16 at 22:22
  • @mdurant Pandas will accept that statement as valid, but the dtype will be changed from 'S1' to 'O' (object). – James Cropcho Mar 20 '19 at 20:08
  • It used to be possible, maybe no more. – mdurant Mar 20 '19 at 21:32

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