1

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
    Radar_rain=np.array(infile_Radar.variables['rain'][:])

    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.

5
  • 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
0

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 ) )
   threads[i].start();

for t in threads:
   t.join()

# 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.

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