On 11 Apr 2016, at 10:11, [email protected] wrote:

Will also help with graphics programs etc too! Often get crashes in matplotlib from this...

This is indeed another very good point. We’ve had issues with wxPython as well and I remember having to sandwich some call calling into wxPython with an enabling/disabling of traps. Note that I did write a long time ago a nice utility which can be used both in C++ and Python:

In Python, it uses a context:

      >>> import boost.python
      >>> from scitbx.array_family import flex
      >>> a = flex.double((0, 0, 0))
      >>> with boost.python.trapping(division_by_zero=False):
      >>>   b = 1/a
      >>> tuple(b)
      (inf, inf, inf)
      >>> 1/a
      ... CRASH ...

In C++, it uses the guard pattern:

#include <boost_adaptbx/floating_point_exception.h>

{
exception_trapping guard(exception_trapping::division_by_zero | exception_trapping::invalid);
// the computations in this scope will now trap division-by-zero and NaN
// when leaving the scope, trapping will go back to what it was before entering the scope
}