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
```

`object`

? – EdChum Nov 5 '19 at 16:44`object`

– EdChum Nov 5 '19 at 16:47`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