So the thing to understand is that MPI and OpenCL for your purposes are completely orthogonal. MPI is for communicating between your GPU nodes; OpenCL is for accelerating your local computation on a single node by using the GPU (or multiple CPU cores). For any of these problems, you'd start with writing a serial C++ version of the code. The next step would be to (in any order) work on an OpenCL implementation for a single node, and work on an MPI version which decomposes the problems (you don't want to user master-slave for any of the above listed problems) onto multiple processes, with each process doing their local part of the computation which contributes to the global solution. Once both of those parts are done, you'd merge the two and have a distributed-memory (the MPI part) GPU (the OpenCL part) version of a code to solve this problem.
It won't quite be that easy, of course, and combining the two will take a fair bit of work, but that's the basic approach to keep in mind. Start with one problem, get it working on a single processor in C++, then try it with one or the other. Don't try to do everything at once or you'll never get anywhere.
For problems like matrix multiplication, there are many many examples on the internet of both GPU and MPI implementations to learn from.