In NumPy, I'm trying to use `linalg`

to compute matrix inverses at each step of a Newton-Raphson scheme (the problem size is small intentionally so that we can invert analytically computed Hessian matrices). However, after I get far along towards convergence, the Hessian gets close to singular.

Is there any method within NumPy that lets me test whether a matrix is considered singular (computing determinant is not robust enough)? Ideally, it would be nice if there's a way to use a `try`

`except`

block to catch NumPy's singular array error.

How would I do this? The NumPy error given at the terminal is:

```
raise LinAlgError, 'Singular matrix'
numpy.linalg.linalg.LinAlgError: Singular matrix
```