9

Consider the dataframe df

df = pd.DataFrame(dict(A=[1, 2], B=['X', 'Y']))

df

   A  B
0  1  X
1  2  Y

If I shift along axis=0 (the default)

df.shift()

     A    B
0  NaN  NaN
1  1.0    X

It pushes all rows downwards one row as expected.

But when I shift along axis=1

df.shift(axis=1)

    A    B
0 NaN  NaN
1 NaN  NaN

Everything is null when I expected

     A  B
0  NaN  1
1  NaN  2

I understand why this happened. For axis=0, Pandas is operating column by column where each column is a single dtype and when shifting, there is clear protocol on how to deal with the introduced NaN value at the beginning or end. But when shifting along axis=1 we introduce potential ambiguity of dtype from one column to the next. In this case, I'm trying for force int64 into an object column and Pandas decides to just null the values.

This becomes more problematic when the dtypes are int64 and float64

df = pd.DataFrame(dict(A=[1, 2], B=[1., 2.]))

df

   A    B
0  1  1.0
1  2  2.0

And the same thing happens

df.shift(axis=1)

    A   B
0 NaN NaN
1 NaN NaN

My Question

What are good options for creating a dataframe that is shifted along axis=1 in which the result has shifted values and dtypes?

For the int64/float64 case the result would look like:

df_shifted

     A  B
0  NaN  1
1  NaN  2

and

df_shifted.dtypes

A    object
B     int64
dtype: object

A more comprehensive example

df = pd.DataFrame(dict(A=[1, 2], B=[1., 2.], C=['X', 'Y'], D=[4., 5.], E=[4, 5]))

df

   A    B  C    D  E
0  1  1.0  X  4.0  4
1  2  2.0  Y  5.0  5

Should look like this

df_shifted

     A  B    C  D    E
0  NaN  1  1.0  X  4.0
1  NaN  2  2.0  Y  5.0

df_shifted.dtypes

A     object
B      int64
C    float64
D     object
E    float64
dtype: object
  • Looks like a bug to me, what happens if you make the dtypes of all columns object? – EdChum Nov 5 '19 at 16:44
  • It works. I've already got a couple of work arounds. I'm just poking the community for some ideas. – piRSquared Nov 5 '19 at 16:45
  • I'd file this as an issue, they should at least offer an option for dtype promotion to a mixed dtype such as object – EdChum Nov 5 '19 at 16:47
  • I'll do that now. – piRSquared Nov 5 '19 at 16:48
  • 1
    @EdChum-ReinstateMonica Wait a minute! The shift happens over blocks >.< Use this instead and see df = pd.DataFrame(dict(A=[1, 2], B=[3., 4.], C=['X', 'Y'], D=[5., 6.], E=[7, 8], F=['W', 'Z'])) – piRSquared Nov 5 '19 at 16:52
7

It turns out that Pandas is shifting over blocks of similar dtypes

Define df as

df = pd.DataFrame(dict(
    A=[1, 2], B=[3., 4.], C=['X', 'Y'],
    D=[5., 6.], E=[7, 8], F=['W', 'Z']
))

df

#  i    f  o    f  i  o
#  n    l  b    l  n  b
#  t    t  j    t  t  j
#
   A    B  C    D  E  F
0  1  3.0  X  5.0  7  W
1  2  4.0  Y  6.0  8  Z

It will shift the integers to the next integer column, the floats to the next float column and the objects to the next object column

df.shift(axis=1)

    A   B    C    D    E  F
0 NaN NaN  NaN  3.0  1.0  X
1 NaN NaN  NaN  4.0  2.0  Y

I don't know if that's a good idea, but that is what is happening.


Approaches

astype(object) first

dtypes = df.dtypes.shift(fill_value=object)
df_shifted = df.astype(object).shift(1, axis=1).astype(dtypes)

df_shifted

     A  B    C  D    E  F
0  NaN  1  3.0  X  5.0  7
1  NaN  2  4.0  Y  6.0  8

transpose

Will make it object

dtypes = df.dtypes.shift(fill_value=object)
df_shifted = df.T.shift().T.astype(dtypes)

df_shifted

     A  B    C  D    E  F
0  NaN  1  3.0  X  5.0  7
1  NaN  2  4.0  Y  6.0  8

itertuples

pd.DataFrame([(np.nan, *t[1:-1]) for t in df.itertuples()], columns=[*df])

     A  B    C  D    E  F
0  NaN  1  3.0  X  5.0  7
1  NaN  2  4.0  Y  6.0  8

Though I'd probably do this

pd.DataFrame([
    (np.nan, *t[:-1]) for t in
    df.itertuples(index=False, name=None)
], columns=[*df])
| improve this answer | |
  • 4
    This is definitely a bug to me, this invalidates the whole point of having keyed columns and shifting by N positions column-wise – EdChum Nov 5 '19 at 16:58
  • 1
    I'll post an issue after my meeting. – piRSquared Nov 5 '19 at 16:58
  • If it's all str dytpes then it works correctly, if you do the same on this df df = pd.DataFrame(dict(C=['X', 'Y'], D=[5., 6.], E=[7, 8], F=['W', 'Z'])) it shifts the 'XY' column all the way to 'F' column, this is definitely wrong to me, my pandas version is 0.24.2, it shoudl do dtype promotion and not shift the columns in such a way – EdChum Nov 5 '19 at 17:01
  • Issue Opened – piRSquared Nov 5 '19 at 18:09
1

I tried using a numpy method. The method works as long as you keep your data in a numpy array:

def shift_df(data, n):
    shifted = np.roll(data, n)
    shifted[:, :n] = np.NaN

    return shifted

shifted(df, 1)

array([[nan, 1, 1.0, 'X', 4.0],
       [nan, 2, 2.0, 'Y', 5.0]], dtype=object)

But when you call the DataFrame constructer, all columns are converted to object although the values in the array are float, int, object:

def shift_df(data, n):
    shifted = np.roll(data, n)
    shifted[:, :n] = np.NaN
    shifted = pd.DataFrame(shifted)

    return shifted

print(shift_df(df, 1),'\n')
print(shift_df(df, 1).dtypes)

     0  1  2  3  4
0  NaN  1  1  X  4
1  NaN  2  2  Y  5 

0    object
1    object
2    object
3    object
4    object
dtype: object
| improve this answer | |

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