I have a mongodb with thousands of records holding very long vectors. I am looking for correlations between an input vector with my MDB data set using a certain algorithm.
function find_best_correlation(input_vector) max_correlation = 0 return_vector =  foreach reference_vector in dataset: if calculateCorrelation(input_vector,reference_vector) > max_correlation then: return_vector = reference_vector return return_vector
This is a very good candidate for map-reduce pattern as I don't care for the order the calculations are run in.
The issue is that my database is on one node. I would like to run many mappings simultaneously (I have an 8 core machine)
From what I understand, MongoDb only uses one thread of execution per node - in practice I am running my data set serially. Is this correct?
If so can I configure the number of processes/threads per map-reduce run? If I manage multiple threads running map-reduce in parallel and then aggregate the results will I have substantial performance increase (Has anybody tried)? If not - can i have multiple replications of my DB on the same node and "trick" mongoDb to run on 2 replications?