I am doing gradient descent (100 iterations to be precise). Each data point can be analyzed in parallel, there are 50 data points. Since I have 4 cores, I create a pool of 4 workers using
multiprocessing.Pool. The core of the program looks like following:
# Read the sgf files (total 50) (intermediateBoards, finalizedBoards) = read_sgf_files() # Create a pool of processes to analyze game boards in parallel with as # many processes as number of cores pool = Pool(processes=cpu_count()) # Initialize the parameter object param = Param() # maxItr = 100 iterations of gradient descent for itr in range(maxItr): args =  # Prepare argument vector for each file for i in range(len(intermediateBoards)): args.append((intermediateBoards[i], finalizedBoards[i], param)) # 4 processes analyze 50 data points in parallel in each iteration of # gradient descent result = pool.map_async(train_go_crf_mcmc, args)
Now, I haven't included definition for the function
train_go_crf, but the very first line in the function is a print statement. So, when I execute this function the print statement should get executed 100*50 times. But that does not happen. What's more, I get different number of console outputs different number of times.