The function of my python code is very straightforward. It reads the netCDF file through a file list and returns the mean value in this case.

However, it takes time to read the netCDF file. I am wondering can I speedup this process by Multiprocessing (parallel-processing) since my work station has 32-core processors.

The code looks like:

from netCDF4 import Dataset

for i in filerange:
    print "Reading the",i, "file", "Wait"
    infile_Radar = Dataset(file_list[i],'r')

    # Read the hourly Data

    for h in range(0,24):
        hourly_rain = Radar_rain[h,:]
        hourly_mean[i,h] = np.mean(hourly_rain)

np.savetxt('Hourly_Spatial_mean.txt', hourly_mean, delimiter='\t')

Since the reading file is independet to each other, so how can make the best of my work station? Thanks.

  • Threading, rather than multiprocessing, seems more appropriate for an IO-bound task. Apr 20 '17 at 17:30
  • There is many way to distribute the process, however, you must make sure the output doesn't overwrite each other .
    – mootmoot
    Apr 20 '17 at 17:37
  • I don't see where you read files. You can get some improvement by overlapping reads on one stream with processing another, but that scale-up only goes so far.
    – tdelaney
    Apr 20 '17 at 17:39
  • I edited the codes. @tdelaney. The overwrite can be fixed using a unique indicator. But I don't know the way to distribute the process. Could you give me some hints.@mootmoot
    – Yu Guo
    Apr 20 '17 at 18:02
  • Explain this more: "reading file is independet to each other".
    – stovfl
    Apr 21 '17 at 9:47

It seems like you're looking for a fairly standard threading implementation. Assuming that it's the Dataset constructor that's the blocking part you may want to do something like this:

from threading import Thread

def CreateDataset( offset, files, datasets ):
   datasets[offset] = Dataset( files[i], 'r' )

threads   = [None] * len( filerange )
data_sets = [None] * len( filerange )

for i in filerange:
   threads[i] = Thread( None, CreateDataset, None, ( i, file_list, data_sets ) )

for t in threads:

# Resume work with each item in the data_sets list
print "All Done";

Then for each dataset do the rest of the work you detailed. Wherever the actual "slow stuff" is, that's the basic approach.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.