I am writing a python script that essentially does the following

  1. Reads a CSV file as a dataframe object.
  2. Selects some columns based on names and stores them in a new DF object.
  3. Does some math and string manipulation on the values in cells. I use the for loop and the iterrows() method here.
  4. Writes the modified DF to a CSV
  5. Writes the CSV to json using a for loop.

This code takes forever to run. I am trying to understand why this is taking so long, and if I should do my tasks differently to speed up the execution.

import pandas
import json
import pendulum
import csv
import os
import time

start_time = time.time()
print("--- %s seconds ---" % (time.time() - start_time))

df11 = pandas.read_csv('RTP_Gap_2018-01-21.csv') ### Reads the CSV FILE

print df11.shape ### Prints the shape of the DF

### Filter the initial DF by selecting some columns based on NAME
df1 = df11[['ENODEB','DAY','HR','SITE','RTP_Gap_Length_Total_sec','RTP_Session_Duration_Total_sec','RTP_Gap_Duration_Ratio_Avg%']]

print df1.shape ## Prints Shape

#### Math and String manupulation stuff ###
for index, row in df1.iterrows():
    if row['DAY'] == 'Total':
        df1.drop(index, inplace=True)
        stamp = row['DAY'] + ' ' + str(row['HR']) + ':00:00'
        sitename = str(row['ENODEB'])+'_'+row['SITE']
        if row['RTP_Session_Duration_Total_sec'] == 0:
            rtp_gap = 0
            rtp_gap = row['RTP_Gap_Length_Total_sec']/row['RTP_Session_Duration_Total_sec']
        time1 = pendulum.parse(stamp,tz='America/Chicago').isoformat()
        df1.loc[index,'DAY'] = time1
        df1.loc[index,'SITE'] = sitename
        df1.loc[index,'HR'] = rtp_gap

### Write DF to CSV ###
json_file_ind = 'RTP_json.json'
file = open(json_file_ind, 'w')

#### Write CSV to JSON ###
with open('RTP_json.csv', 'r') as csvfile:
    reader_ind = csv.DictReader(csvfile)
    for row in reader_ind:         
        row["RTP_Gap_Length_Total_sec"] = float(row["RTP_Gap_Length_Total_sec"])
        row["RTP_Session_Duration_Total_sec"] = float(row["RTP_Session_Duration_Total_sec"])
        row["HR"] = float(row["HR"])
        with open('RTP_json.json', 'a') as json_file_ind:
            json.dump(row, json_file_ind)

 end_time = time.time()
 print("--- %s seconds ---" % (time.time() - end_time))


    --- 2018-01-23T12:25:07.411691-06:00 seconds ---### START TIME
    (2055, 36) ### SIZE of initial DF
    (2055, 7) ### Size of Filtered DF
    --- 2018-01-23T12:31:54.480568-06:00 seconds --- --- ### END TIME
  • Yes, index, row in df1.iterrows() is going to be inherently slow, furthermore, youroperations inside the loop (like dropping individual indices) are resulting in polynomial runtime. Assigning to individual rows in a loop, e.g. df.loc[index, <whatever>] = 'foo' is going to be very slow. – juanpa.arrivillaga Jan 23 '18 at 18:01
  • the time calculation is wrong here. it should be start_time - end_time – Usernamenotfound Jan 23 '18 at 18:03
  • Working on getting accurate time stamps. – rfguy Jan 23 '18 at 18:06
  • is the desired result lines of json? – Usernamenotfound Jan 23 '18 at 18:06
  • this doesn't need to be iterated through IMO – Usernamenotfound Jan 23 '18 at 18:06

This piece should speed up your dataframe calcuations significantly

import numpy as np

df1 = df11[['ENODEB','DAY','HR','SITE','RTP_Gap_Length_Total_sec','RTP_Session_Duration_Total_sec','RTP_Gap_Duration_Ratio_Avg%']]

print df1.shape ## Prints Shape

df1 = df1[df1.DAY != 'Total'].reset_index()
df1['DAY'] = pendulum.parse(df1['DAY'] + ' ' + str(df1['HR']) + ':00:00',tz='America/Chicago').isoformat()
df1['SITE'] = str(df1['ENODEB'])+'_'+df1['SITE']
df1['HR'] = np.where(df1['RTP_Session_Duration_Total_sec']==0,0,df1['RTP_Gap_Length_Total_sec']/df1['RTP_Session_Duration_Total_sec'])

Also, why bother writing to a csv and reading from it again.

to get the df to a json format

format_json =  df1.to_json(orient='records') # converts df to json list
json_file_ind = 'RTP_json.json'
file = open(json_file_ind, 'w')
for i in format_json:

This should speed up your code significantly

| improve this answer | |
  • Yeah that seems to have helped a lot. Seeing the error below now when using pendulum to parse. df1['DAY'] = pendulum.parse(df1['DAY'],tz='America/Chicago') File "/home/User/anaconda2/lib/python2.7/site-packages/pendulum/parser.py", line 75, in parse ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all(). – rfguy Jan 23 '18 at 18:38
  • that's a warning. An error makes the code stop running – Usernamenotfound Jan 23 '18 at 18:52
  • Looks like there is more to using pendulum with pandas - stackoverflow.com/questions/47849342/… – rfguy Jan 23 '18 at 18:55

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.