If I try to compile a function, containing an array of conditions, with numba's jit-compiler, it takes very long. The program looks essentially like

```
from numba import jit
import numpy as np
@jit(nopython=True)
def foo(a, b):
valid = [
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0),
(a - 1 >= 0) and (b - 1 >= 0)
]
foo(1, 1)
```

where I have excluded everything that will not alter the compilation time significantly. The problem arises if I use more than 20 elements.

```
| elements | time |
-------------------
| 21 | 2.7s |
| 22 | 5.1s |
| 23 | 10s |
| ... | ... |
-------------------
```

Despite that, the function workes well. Does anybody know, why it takes so long, to compile such function with numba? Creating arrays in a similar way with combinations of integers or floats causes no problem.