I am using numpy and my model involves intensive matrix-matrix multiplication. To speed up, I use OpenBLAS multi-threaded library to parallelize the numpy.dot function.

My setting is as follows,

- OS : CentOS 6.2 server #CPUs = 12, #MEM = 96GB
- python version: Python2.7.6
- numpy : numpy 1.8.0
- OpenBLAS + IntelMKL

`$ OMP_NUM_THREADS=8 python test_mul.py`

code, of which I took from https://gist.github.com/osdf/

`test_mul.py`

:

```
import numpy
import sys
import timeit
try:
import numpy.core._dotblas
print 'FAST BLAS'
except ImportError:
print 'slow blas'
print "version:", numpy.__version__
print "maxint:", sys.maxint
print
x = numpy.random.random((1000,1000))
setup = "import numpy; x = numpy.random.random((1000,1000))"
count = 5
t = timeit.Timer("numpy.dot(x, x.T)", setup=setup)
print "dot:", t.timeit(count)/count, "sec"
```

when I use OMP_NUM_THREADS=1 python test_mul.py, the result is

```
dot: 0.200172233582 sec
```

OMP_NUM_THREADS=2

```
dot: 0.103047609329 sec
```

OMP_NUM_THREADS=4

```
dot: 0.0533880233765 sec
```

things go well.

However, when I set `OMP_NUM_THREADS=8`

.... the code starts to "occasionally works".

sometimes it works, sometimes it does not even run and and gives me core dumps.

when `OMP_NUM_THREADS > 10`

. the code seems to break all the time..
I am wondering what is happening here ? Is there something like a MAXIMUM number threads that each process can use ? Can I raise that limit, given that I have 12 CPUs in my machine ?

Thanks