So after long considerations and try-outs, I'm once again asking the pros. My scenario looks like that: I want to compare two datasets (np arrays, ca. 2000^3) with some function. This comparison has to be done for ca 1000 random points with 300 different settings each. The second dataset holds values for a breaking condition of this measurements, so that every worker has to know the whole dataset and the mask.
My idea, as I have 64 CPUs and 200+GB of RAM looks like that
def compare(point,setting,data,mask): if mask[point]==somevalue: for i in setting: do.something(data) def parallel(): pool = mp.Pool(processes=4) for i in range(points): pool.apply_async(compare, args = (point,setting,data,mask), callback = some_call) pool.close() pool.join() if __name__ == '__main__': parallel()
which seems to work for small datasets, but not for datasets in the range desired. The workers seem to be applied to the pool and the pool is closed, but then nothing happens. I think, that there should be a way, to have the data and mask array somehow stored, so that every worker can access them, without passing them explicitly to each worker(maybe memory mapping?). Or is the problem something else?
I hope, to have explained the problem well enough, if not, I'm trying my best to clarify.