I strongly suggest that you consider sticking with Python. Learning a new language, at the same time as you start tackling parallel / distributed computing, may well throw a spanner in your works that you just don't need. I believe that your time will be better spent tackling the issues of building the neural net you want, rather than learning the peculiarities of a new language. And, by reputation, Python is eminently suitable for what you plan. It does, of course, fail your requirement that it should compile to binary but I'm not sure where that is coming from.
When you write parallel programming over multiple machines without clustering I'm thinking oh, he means distributed programming. I tend towards the view that parallel computing is a niche within distributed computing, in part defined by the homogeneity (from the programmer's point of view) of the resources used. This apparent homogeneity is aided tremendously if it is supported by homogeneity of hardware so that there is little gap between vision and reality.
If what you really have is an assortment of computers of different specs and different OSes and communicating over a non-dedicated network then I fear that you will find it difficult building the illusion of homogeneity for the programmer (ie for yourself) and would be better setting out to build a distributed system from the get go.
I just plain disagree with the answer telling you to pick up C and MPI, I think you'll make progress much faster much quicker with Python.
Good luck with your studies.
Oh, and if you just won't take my advice to forget about a new programming language, consider Haskell and Erlang.