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Let's say I create a simple DataFrame like so:

import pandas as pd
import datetime as dt
import heapq

a = [1371215933513120, 1371215933513121]
b = [1,2]
d = ['h','h']
df = pd.DataFrame({'a':a, 'b':b, 'c':[dt.datetime.fromtimestamp(t/1000000.) for t in a], 'd':d})

d = OrderedDict()
d['x'] = df
p = pd.Panel(d)
p['x']['b'] = p['x']['b'].astype(int)

counter = 0
for dt in p.major_axis:
    print "a", counter, p['x'].dtypes
    df_s = p.major_xs(dt)
    print "b", counter, p['x'].dtypes
    print "-------------"
    counter += 1

It consists of three columns, one of which is made the index. If start iterating over the major axis values, the data type of the int column changes to object after the first iteration.

a 0 a    object
b     int64
c    object
d    object
dtype: object
b 0 a    object
b    object
c    object
d    object
dtype: object
a 1 a    object
b    object
c    object
d    object
dtype: object
b 1 a    object
b    object
c    object
d    object
dtype: object

Is there a way of avoiding this so that columns retain their type while iterating?

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dtype preservation is not guaranteed - try a multi level frame as your repr to have more control. –  Jeff Jun 28 '13 at 12:07
May I ask why? It seems kind of strange to change the underlying dtype when simply iterating over the entries, doesn't it? –  juniper- Jun 28 '13 at 12:32
you are not simply iterating; you are slicing (that's what major_xs) does. data are stored in 3-d dtype blocks; you are slicing across blocks. –  Jeff Jun 28 '13 at 12:46
Ahh, I see. But then why can't data types be guaranteed? It seems to me like if I have a chunk of objects, all of which are type x, then any subset of them must also contain only type x. –  juniper- Jun 28 '13 at 13:31
you are essentially doing a transposition type of operation (e.g. slicing on axis 1, yield a dataframe from axis 0 and 2). dtypes are column based, so this mixes things up. if you really want to do this, try convert_objects() on the resulting frame, it will clean this up. –  Jeff Jun 28 '13 at 18:17

1 Answer 1

up vote 2 down vote accepted

Your construction does not preserve the dtypes; if you construct this way, you will preserve them in the first place.

In [18]: df.set_index(['x','b']).to_panel()
<class 'pandas.core.panel.Panel'>
Dimensions: 3 (items) x 1 (major_axis) x 2 (minor_axis)
Items axis: a to d
Major_axis axis: x to x
Minor_axis axis: 1 to 2

In [19]: p1 = df.set_index(['x','b']).to_panel()

This is the internal structure; dtypes are separated into blocks.

In [20]: p1._data
Items: Index([u'a', u'c', u'd'], dtype=object)
Axis 1: Index([u'x'], dtype=object)
Axis 2: Int64Index([1, 2], dtype=int64)
DatetimeBlock: [c], 1 x 1 x 2, dtype datetime64[ns]
ObjectBlock: [d], 1 x 1 x 2, dtype object
IntBlock: [a], 1 x 1 x 2, dtype int64

Using iloc on various axes you can see that dtypes are preserved

In [21]: p1.iloc[0].dtypes
1    int64
2    int64
dtype: object

In [22]: p1.iloc[:,0].dtypes
a             int64
c    datetime64[ns]
d            object
dtype: object

In [23]: p1.iloc[:,:,0].dtypes
a             int64
c    datetime64[ns]
d            object
dtype: object

In [24]: p1.iloc[:,:,0]
                  a                          c  d
x  1371215933513120 2013-06-14 09:18:53.513120  h
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