So, the questions are: 1. Is mapreduce overhead too high for the following problem? Does anyone have an idea of how long each map/reduce cycle (in Disco for example) takes for a very light job? 2. Is there a better alternative to mapreduce for this problem?
In map reduce terms my program consists of 60 map phases and 60 reduce phases all of which together need to be completed in 1 second. One of the problems I need to solve this way is a minimum search with about 64000 variables. The hessian matrix for the search is a block matrix, 1000 blocks of size 64x64 along a diagonal, and one row of blocks on the extreme right and bottom. The last section of : block matrix inversion algorithm shows how this is done. Each of the Schur complements S_A and S_D can be computed in one mapreduce step. The computation of the inverse takes one more step.
From my research so far, mpi4py seems like a good bet. Each process can do a compute step and report back to the client after each step, and the client can report back with new state variables for the cycle to continue. This way the process state is not lost computation can be continued with any updates. http://mpi4py.scipy.org/docs/usrman/index.html
This wiki holds some suggestions, but does anyone have a direction on the most developed solution: http://wiki.python.org/moin/ParallelProcessing