I am writing a multi-threaded application and as of now I have this idea. I have a
n is a number determined at runtime. I open all the n files for reading and then multiple threads can access to read it. The computation on the data of each file is equivalent i.e. if serial execution is supposed then each file will remain in memory for the same time.
Each files can be arbitrarily large so on should not assume that they can be loaded in memory.
Now in such a scenario I want to reduce the number of disk IO's that occur. It would be great if someone can suggest any shared memory model for such scenario (I don't know if I am using one because I have very less idea of how things are implemented) .I am not sure how should I achieve this. In other words i just want to know what is the most efficient model to implement such a scenario. I am using
EDIT: A more detailed scenario.
The actual problem is I have n bloom filters for data contained in n files and once all the elements from a file are inserted in the corresponding bloom filter I need to need to do membership testing. Since membership testing is a read-only process on data file I can read file from multiple threads and this problem can be easily parallelized. Now the number of files having data are fairly large(around 20k and note that number of files equals number of bloom filter) so I choose to spawn a thread for testing against a bloom-filter i.e. each bloom filter will have its own thread and that will read every other file one by one and test the membership of data against the bloom filter. I wan to minimize disk IO in such a case.