- I would question any benchmark which doesn't show the source for each implementation (or did I miss something)? It's entirely possible that either or both of those solutions are coded badly which would result in an unfair appraisal of either or both language's perfoemance.
- As far as I know, the vast majority of NumPy and SciPy is written in C and wrapped in Python for ease of use.
- It probably depends what you're doing in any of those languages as to how much overhead there is for a particular application.
I've used Python for data processing and analysis for a couple of years now so I would say it's certainly fit for purpose.
What are you trying to achieve at the end of the day? If you want a fast way to develop readable code, Python is an excellent option and certainly fast enough for a first stab at whatever it is you're trying to solve.
Why not have a bash at each for a small subset of your problem and benchmark the results in terms of development time and run time? Then you can make an objective decision based on some relevent data ...or at least that's what I'd do :-)
[Edit] Oops, now I see the source. As others have pointed out though, it's not using the NumPy/SciPy libraries so those benchmarks are not going to help you make a decision.