I want to pass numpy.memmap array to np.cov function, because I have MemoryError when working with ordinary numpy array.

something like

```
np.cov(data_c,rowvar=0,out=fcov)
```

here is my code snippet:

```
M= data.shape[0]
N= data.shape[1]
print data.shape
#get mean
mean= np.mean(data,axis=0)
print mean.shape
# print mean
#M x N
data_c= (data-mean)
print data_c.shape
# print data_c
#N x N
#calculate covariance matrix
# covData=np.cov(data_c,rowvar=0) # must be memmaped array
fcov= np.memmap('cov.npy', dtype='float32', mode='w+', shape=(N,N))
np.cov(data_c,rowvar=0,out=fcov)
print covData.shape
```

but the problem is np.cov has no out= parameter.

and when I use

```
fcov= np.cov(data_c,rowvar=0)
```

it seems inside np.cov is created temporary in memory copy of array or something.

I managed to replace np.cov function, but I don't understand why I must multiply by 2, because according to this it's just (A.T*A)/(n-1) and also it requires matrix transposition so it seems not very good solution.

```
def cov_mat(fmat):
#if fmat centered then 2*(A.T*A)/(n-1) covariance matrix
M= fmat.shape[0]
N= fmat.shape[1]
fcov= np.memmap('cov.npy', dtype='float32', mode='w+', shape=(N,N))
fmat_tr= np.memmap('A_tr.npy', dtype='float32', mode='w+', shape=(N,M))
fmat_tr= fmat.T
np.dot(fmat_tr,fmat,out=fcov)
fcov= 2*fcov/(N-1)
return fcov
```

`fcov *= 2/(N-1)`

– Saullo Castro May 23 '14 at 12:21`memmap`

, but for a "normal" array if you do`a = a*2`

it will return a new array, but`a*=2`

will multiply in place (you can check the id of the objects to prove that... – Saullo Castro May 23 '14 at 13:05