I'm trying to use multiprocessing with pandas dataframe, that is split the dataframe to 8 parts. apply some function to each part using apply (with each part processed in different process).
EDIT: Here's the solution I finally found:
import multiprocessing as mp
import pandas.util.testing as pdt
def process_apply(x):
# do some stuff to data here
def process(df):
res = df.apply(process_apply, axis=1)
return res
if __name__ == '__main__':
p = mp.Pool(processes=8)
split_dfs = np.array_split(big_df,8)
pool_results = p.map(aoi_proc, split_dfs)
p.close()
p.join()
# merging parts processed by different processes
parts = pd.concat(pool_results, axis=0)
# merging newly calculated parts to big_df
big_df = pd.concat([big_df, parts], axis=1)
# checking if the dfs were merged correctly
pdt.assert_series_equal(parts['id'], big_df['id'])
You can use https://github.com/nalepae/pandarallel, as in the following example:
from pandarallel import pandarallel
from math import sin
pandarallel.initialize()
def func(x):
return sin(x**2)
df.parallel_apply(func, axis=1)