Based on @Seberg and @yann-dubois answers in the non-nan case, I've written a method that:

- Is faster than the current answer
- Works on ndarrays of any shape (specify the row-axis using the
`axis`

argument)
- Allows for setting
`fill`

to either np.nan, any other "fill value" or False to allow regular rolling across the array edge.

### Benchmarking

```
cols, rows = 1024, 2048
arr = np.stack(rows*(np.arange(cols,dtype=float),))
shifts = np.random.randint(-cols, cols, rows)
np.testing.assert_array_almost_equal(row_roll(arr, shifts), strided_indexing_roll(arr, shifts))
# True
%timeit row_roll(arr, shifts)
# 25.9 ms ± 161 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)
%timeit strided_indexing_roll(arr, shifts)
# 29.7 ms ± 446 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)
```

```
def row_roll(arr, shifts, axis=1, fill=np.nan):
"""Apply an independent roll for each dimensions of a single axis.
Parameters
----------
arr : np.ndarray
Array of any shape.
shifts : np.ndarray, dtype int. Shape: `(arr.shape[:axis],)`.
Amount to roll each row by. Positive shifts row right.
axis : int
Axis along which elements are shifted.
fill: bool or float
If True, value to be filled at missing values. Otherwise just rolls across edges.
"""
if np.issubdtype(arr.dtype, int) and isinstance(fill, float):
arr = arr.astype(float)
shifts2 = shifts.copy()
arr = np.swapaxes(arr,axis,-1)
all_idcs = np.ogrid[[slice(0,n) for n in arr.shape]]
# Convert to a positive shift
shifts2[shifts2 < 0] += arr.shape[-1]
all_idcs[-1] = all_idcs[-1] - shifts2[:, np.newaxis]
result = arr[tuple(all_idcs)]
if fill is not False:
# Create mask of row positions above negative shifts
# or below positive shifts. Then set them to np.nan.
*_, nrows, ncols = arr.shape
mask_neg = shifts < 0
mask_pos = shifts >= 0
shifts_pos = shifts.copy()
shifts_pos[mask_neg] = 0
shifts_neg = shifts.copy()
shifts_neg[mask_pos] = ncols+1 # need to be bigger than the biggest positive shift
shifts_neg[mask_neg] = shifts[mask_neg] % ncols
indices = np.stack(nrows*(np.arange(ncols),))
nanmask = (indices < shifts_pos[:, None]) | (indices >= shifts_neg[:, None])
result[nanmask] = fill
arr = np.swapaxes(result,-1,axis)
return arr
```

mightbe more efficient to do this in two steps so you don't need to pad: first roll the rows as in the previous question, then set the r leftmost (and -r rightmost) values of each row to NaN.`r[r < 0] += A.shape[1]`

) EDIT: Also tricky how to figure out how to do this without looping through r`nan`

filled array, and then use indexing like this to copy rolled values to it. But your`I want to do`

matrix doesn't show this`nan`

fill!