In the following code:

```
@profile
def do():
import random
import numpy as np
image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))
print("Before assignment")
x = random.uniform(1000, 9000)
y = random.uniform(1000, 9000)
imin = int(x) - 128
imax = int(x) + 128
jmin = int(y) - 128
jmax = int(y) + 128
data = np.random.random((256,256))
image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data
del x, y, imin, imax, jmin, jmax, data
print("After assignment")
do()
```

The memory used at the second print statement is increased compared to at the end of the first print statement - here's the memory_profiler output:

```
Line # Mem usage Increment Line Contents
================================================
1 @profile
2 def do():
3 10.207 MB 0.000 MB
4 10.734 MB 0.527 MB import random
5 21.066 MB 10.332 MB import numpy as np
6
7 21.105 MB 0.039 MB image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))
8
9 21.109 MB 0.004 MB print("Before assignment")
10
11 21.109 MB 0.000 MB x = random.uniform(1000, 9000)
12 21.109 MB 0.000 MB y = random.uniform(1000, 9000)
13 21.109 MB 0.000 MB imin = int(x) - 128
14 21.109 MB 0.000 MB imax = int(x) + 128
15 21.113 MB 0.004 MB jmin = int(y) - 128
16 21.113 MB 0.000 MB jmax = int(y) + 128
17 21.625 MB 0.512 MB data = np.random.random((256,256))
18 23.574 MB 1.949 MB image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data
19
20 23.574 MB 0.000 MB del x, y, imin, imax, jmin, jmax, data
21
22 23.574 MB 0.000 MB print("After assigment")
```

The RAM has increased from 21.109Mb to 23.574Mb. This is causing issues if I put that block of code in a loop:

```
Line # Mem usage Increment Line Contents
================================================
1 @profile
2 def do():
3 10.207 MB 0.000 MB
4 10.734 MB 0.527 MB import random
5 21.066 MB 10.332 MB import numpy as np
6
7 21.105 MB 0.039 MB image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))
8
9 21.109 MB 0.004 MB print("Before assignment")
10
11 292.879 MB 271.770 MB for i in range(1000):
12
13 292.879 MB 0.000 MB x = random.uniform(1000, 9000)
14 292.879 MB 0.000 MB y = random.uniform(1000, 9000)
15 292.879 MB 0.000 MB imin = int(x) - 128
16 292.879 MB 0.000 MB imax = int(x) + 128
17 292.879 MB 0.000 MB jmin = int(y) - 128
18 292.879 MB 0.000 MB jmax = int(y) + 128
19 292.879 MB 0.000 MB data = np.random.random((256,256))
20 292.879 MB 0.000 MB image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data
21
22 292.879 MB 0.000 MB del x, y, imin, imax, jmin, jmax, data
23
24 292.879 MB 0.000 MB print("After assignment")
```

and the RAM used will increase at each iteration. Is there any way to avoid this issue? Is it a Numpy bug or am I doing something wrong?

EDIT: this is on MacOS X, and I see the issue with Python 2.7 and 3.2, with Numpy 1.6.2 and above (including dev version).

EDIT 2: I am also seeing the issue on Linux.