Here are two sketches in Python; one swap-based, the other non-swap-based. In the first, the idea is to keep track of where the indexes have moved and test if the next swap would be valid. An additional variable is added for the number of swaps to make.

```
from random import randint
def swap(a,b,L):
L[a], L[b] = L[b], L[a]
def magicFunction(L,d,numSwaps):
n = len(L)
new = list(range(0,n))
for i in xrange(0,numSwaps):
x = randint(0,n-1)
y = randint(max(0,x - d),min(n - 1,x + d))
while abs(new[x] - y) > d or abs(new[y] - x) > d:
y = randint(max(0,x - d),min(n - 1,x + d))
swap(x,y,new)
swap(x,y,L)
return L
print(magicFunction([1,2,3,4],2,3)) # [2, 1, 4, 3]
print(magicFunction([1,2,3,4,5,6,7,8,9],2,4)) # [2, 3, 1, 5, 4, 6, 8, 7, 9]
```

Using `print(collections.Counter(tuple(magicFunction([0, 1, 2], 1, 1)) for i in xrange(1000)))`

we find that the identity permutation comes up heavy with this code (the reason why is left as an exercise for the reader).

Alternatively, we can think about it as looking for a permutation matrix with interval restrictions, where `abs(i - j) <= d where M(i,j) would equal 1`

. We can construct a one-off random path by picking a random `j`

for each row from those still available. `x`

's in the following example represent matrix cells that would invalidate the solution (northwest to southeast diagonal would represent the identity permutation), `restrictions`

represent how many `i`

s are still available for each `j`

. (Adapted from my previous version to choose both the next i and the next j randomly, inspired by user2357112's answer):

```
n = 5, d = 2
Start:
0 0 0 x x
0 0 0 0 x
0 0 0 0 0
x 0 0 0 0
x x 0 0 0
restrictions = [3,4,5,4,3] # how many i's are still available for each j
1.
0 0 1 x x # random choice
0 0 0 0 x
0 0 0 0 0
x 0 0 0 0
x x 0 0 0
restrictions = [2,3,0,4,3] # update restrictions in the neighborhood of (i ± d)
2.
0 0 1 x x
0 0 0 0 x
0 0 0 0 0
x 0 0 0 0
x x 0 1 0 # random choice
restrictions = [2,3,0,0,2] # update restrictions in the neighborhood of (i ± d)
```

```
3.
0 0 1 x x
0 0 0 0 x
0 1 0 0 0 # random choice
x 0 0 0 0
x x 0 1 0
restrictions = [1,0,0,0,2] # update restrictions in the neighborhood of (i ± d)
only one choice for j = 0 so it must be chosen
4.
0 0 1 x x
1 0 0 0 x # dictated choice
0 1 0 0 0
x 0 0 0 0
x x 0 1 0
restrictions = [0,0,0,0,2] # update restrictions in the neighborhood of (i ± d)
Solution:
0 0 1 x x
1 0 0 0 x
0 1 0 0 0
x 0 0 0 1 # dictated choice
x x 0 1 0
[2,0,1,4,3]
```

Python code (adapted from my previous version to choose both the next `i`

and the next `j`

randomly, inspired by user2357112's answer):

```
from random import randint,choice
import collections
def magicFunction(L,d):
n = len(L)
restrictions = [None] * n
restrict = -1
solution = [None] * n
for i in xrange(0,n):
restrictions[i] = abs(max(0,i - d) - min(n - 1,i + d)) + 1
while True:
availableIs = filter(lambda x: solution[x] == None,[i for i in xrange(n)]) if restrict == -1 else filter(lambda x: solution[x] == None,[j for j in xrange(max(0,restrict - d),min(n,restrict + d + 1))])
if not availableIs:
L = [L[i] for i in solution]
return L
i = choice(availableIs)
availableJs = filter(lambda x: restrictions[x] <> 0,[j for j in xrange(max(0,i - d),min(n,i + d + 1))])
nextJ = restrict if restrict != -1 else choice(availableJs)
restrict = -1
solution[i] = nextJ
restrictions[ nextJ ] = 0
for j in xrange(max(0,i - d),min(n,i + d + 1)):
if j == nextJ or restrictions[j] == 0:
continue
restrictions[j] = restrictions[j] - 1
if restrictions[j] == 1:
restrict = j
print(collections.Counter(tuple(magicFunction([0, 1, 2], 1)) for i in xrange(1000)))
```

Using `print(collections.Counter(tuple(magicFunction([0, 1, 2], 1)) for i in xrange(1000)))`

we find that the identity permutation comes up light with this code (why is left as an exercise for the reader).

`[3, 1, 2, 4]`

not valid? And what distribution over possible outputs do you want to produce?`[3,1,2,4]`

is valid.33more comments