The following simple four-line code produces a memory leak in my Python 2.6.6 / NumPy 1.7.0 / MKL 10.3.6 setup:

```
import numpy as np
t = np.random.rand(10,10)
while True:
t = t / np.trace(t)
```

With each operation, the used memory grows by the size of a 10x10 matrix. However, there is no such behaviour when I use a NumPy 1.4.1/ATLAS setup.

I have read about MKL not necessarily freeing memory automatically, so I guess this is the reason for the blowup. Is there a simple way to modify NumPy (before or after compilation), such that this four-liner will work fine?

Output of np.show_config()

```
numpy 1.7.0
lapack_opt_info:
libraries = ['mkl_rt', 'pthread']
library_dirs = ['$MKLPATH/lib/intel64']
define_macros = [('SCIPY_MKL_H', None)]
include_dirs = ['$MKLPATH/include']
blas_opt_info:
libraries = ['mkl_rt', 'pthread']
library_dirs = ['$MKLPATH/lib/intel64']
define_macros = [('SCIPY_MKL_H', None)]
include_dirs = ['$MKLPATH/include']
lapack_mkl_info:
libraries = ['mkl_rt', 'pthread']
library_dirs = ['$MKLPATH/lib/intel64']
define_macros = [('SCIPY_MKL_H', None)]
include_dirs = ['$MKLPATH/include']
blas_mkl_info:
libraries = ['mkl_rt', 'pthread']
library_dirs = ['$MKLPATH/lib/intel64']
define_macros = [('SCIPY_MKL_H', None)]
include_dirs = ['$MKLPATH/include']
mkl_info:
libraries = ['mkl_rt', 'pthread']
library_dirs = ['$MKLPATH/lib/intel64']
define_macros = [('SCIPY_MKL_H', None)]
include_dirs = ['$MKLPATH/include']
```

`gc.collect`

in the loop (gc - garbage collection) pointing to a numpy bug. Maybe worth raising on their issue tracker? – danodonovan Mar 3 '13 at 22:58