The following returns "NameError: name 'times_2' is not defined", and I can't figure out why:

def pass_data(data): return times_2(data)

def times_2(data): return data*2

import multiprocessing
multiprocessing.pool = Pool()
pool.ncpus = 2
res = pool.map(pass_data, range(5))
print(res)

What I'm actually trying to do is apply a function to a pandas dataframe. However, because I can't use a lambda function to do this:

pool.map(lambda x: x.apply(get_weather, axis=1), df_split)

instead I have this with the following helper methods, but it throws a "NameError: name 'get_weather' is not defined":

def get_weather(df):
    *do stuff*
    return weather_df

def pass_dataframe(df):
    return df.apply(get_weather, axis=1)

results = pool.map(pass_dataframe, df_split)
up vote 0 down vote accepted

Try using Pool like this:

from multiprocessing import Pool

def pass_data(data): return times_2(data)

def times_2(data): return data*2

with Pool(processes=4) as pool:
    res = pool.map(pass_data, range(5))
    print(res)

On Windows:

from multiprocessing import Pool

def pass_data(data): return times_2(data)

def times_2(data): return data*2

if __name__ == '__main__':
    with Pool(processes=4) as pool:
        res = pool.map(pass_data, range(5))
        print(res)

See docs https://docs.python.org/3/library/multiprocessing.html#multiprocessing-programming

  • That never returns; I have to restart the python kernel to break out of it. – R Surdhar Dec 6 at 16:52
  • Maybe the dataframe is too big so your computer is running out of memory. You can verify if the process is running by executing "htop" on your command line. All of your cores should be working 100%. The latter code returns [0, 2, 4, 6, 8] to me. – Daniel Fonnegra García Dec 6 at 17:03
  • The code you provided, when I copy/paste it into Spyder, never returns. I'm using Python 3.6.5 (Anaconda distribution) on Windows 10. – R Surdhar Dec 6 at 17:08
  • oh I see, on windows you have to put with Pool(...)... inside an if name == 'main'. I'll edit the answer – Daniel Fonnegra García Dec 6 at 18:47
  • Got it, thank you! One more question: my program is slowing down with >1 process! It shouldn't be a synchronization issue, as there's no single object that each process is trying to share access to write to. There is an object that is shared between each process to read from: I have a dict of 134 dataframes that contains weather data, with each dataframe in the dict being a different airport. The code I'm trying to multiprocess takes a list of flights, and for each origin and destination airport, looks up the weather and returns it to a dataframe. That should be easy to multiprocess, right? – R Surdhar Dec 7 at 0:29

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