I'd like to get an `NxM`

matrix where numbers in each row are random samples generated from different normal distributions(same `mean`

but different standard deviations). The following code works:

```
import numpy as np
mean = 0.0 # same mean
stds = [1.0, 2.0, 3.0] # different stds
matrix = np.random.random((3,10))
for i,std in enumerate(stds):
matrix[i] = np.random.normal(mean, std, matrix.shape[1])
```

However, this code is not quite efficient as there is a `for`

loop involved. Is there a faster way to do this?