I have a class that I'd like to speed up with Numba. The class employs a "random number generator" for each instance by simply creating an instance of NumPy's RandomState with a particular seed (thus I can replicate my work later). When I use Numba's autojit, I get a strange error which doesn't arise in "regular" Python.

Fortunately this behavior is extremely simple to replicate. Here's a simple example which illustrates the error:

```
from numpy.random import RandomState
from numba import autojit
# ------- This works in "regular Python" ------------
class SillyClass1(object):
def __init__(self, seed):
self.RNG = RandomState(seed)
def draw_uniform(self):
return self.RNG.uniform(0,1)
test1 = SillyClass1(123456)
test1.draw_uniform()
# Output:
# 0.12696983303810094
# The following code -- exactly the same as above, but with the @autojit
# decorator, doesn't work, and throws an error which I am having a hard
# time understanding how to fix:
@autojit
class SillyClass2(object):
def __init__(self, seed):
self.RNG = RandomState(seed)
def draw_uniform(self):
return self.RNG.uniform(0,1)
test2 = SillyClass2(123456)
test2.draw_uniform()
# Output:
#
# ValueError Traceback (most recent call last)
# <ipython-input-86-a18f95c11a1b> in <module>()
# 10
# 11
# ---> 12 test2 = SillyClass2(123456)
# 13
# 14 test2.draw_uniform()
#
# ...
#
# ValueError: object of too small depth for desired array
```

I'm using the Anaconda distributionon Ubuntu 13.10.

Any thoughts?

*Edit*: I found a work-around, which is to simply use Python's standard "random.Random" instead of NumPys' "numpy.random.RandomState"

Example:

```
from random import Random
@autojit
class SillyClass3(object):
def __init__(self, seed):
self.RNG = Random(seed)
def draw_uniform(self):
return self.RNG.uniform(0,1)
test3 = SillyClass3(123456)
test3.draw_uniform()
# Output:
# 0.8056271362589
```

This works for my immediate application (although other problems arose immediately, hurray).

However, this fix will not work for future algorithms for which I know I will need to use numpy.random.RandomState. So my question still stands -- does anyone have any insight regarding the original error, and/or workarounds for using numy.random.RandomState in Numba?