I have started using numpy along with pysparse package which interfaces UMFPACK, however there is a problem with the floating point results with numpy. By the way, this is a lanczos eigenvalue solver for structural problems.

When I do the same operations in MATLAB I get different results, well the results are on the order of 1e-6,1e-8 and with MATLAB's representation, I get the right eigenvalues. NumPy and PySparse results are also not that far, at least on the order level, however using them to create a triadiagonal matrix on which to find the eigenvalues is the source of the problem. I could not understand what is going wrong, well the issue is the floating point representation, but how to fix this if possible? I tried to use 'Float64' as my datatype but that does not make a change on the results of the problem. Such as

```
q = ones(n, dtype = 'Float64')
```

One more, what is the most mature sparse package for python, and what kind of interfaces are provided, if any? As told, PySparse seemed fine to me at first sight...