I need to be able to read a csv file and sum a few columns per day and then generate a new csv file with the solutions. I am brand new to Python and I have figured out how to read the csv but now I must figure out how to sum the columns based on the date/time column.


1058,20140612 13:29:59.042,BRK/B,NQBX,1000,61.25,SELL_SHORT,A
1059,20140612 13:29:59.043,JNJ,NQBX,185,31.94,SELL_SHORT,A
1153,20140612 13:30:00.117,AAPL,NQBX,77,43.64,SELL,A
1201,20140612 13:30:00.190,WFC,NQBX,100,49.92,SELL,A
1720,20140612 13:30:04.003,JPM,NQBX,100,50.16,SELL,A
1738,20140613 13:30:04.254,PFE,NQBX,600,43.89,SELL_SHORT,A
108167,20140613 13:30:04.809,VZ,NSDQ,2000,61.23,SELL_SHORT,R
1799,20140613 13:30:05.252,MSFT,NQBX,11,43.76,BUY,A
1879,20140612 13:30:06.393,CVX,NQBX,40,70.58,BUY,A
1908,20140612 13:30:06.803,INTC,NQBX,100,56.52,SELL_SHORT,A
1989,201406117 13:30:08.003,GE,NQBX,100,50.14,SELL,A
2008,20140619 13:30:08.169,JNJ,NQBX,97,15.18,SELL,A
2021,20140619 13:30:08.393,PFE,NQBX,38,43.89,SELL_SHORT,A
2197,20140619 13:30:10.599,WFC,NQBX,100,30.34,BUY,A
2302,20140620 13:30:12.002,GE,NQBX,100,50.14,SELL,A
2368,20140620 13:30:12.931,INTC,NQBX,500,31.44,SELL,A

I need to sum the volume column per day and then create a new csv with the summary.


You can use csv.DictReader with itertools.groupby to achieve what you want.

import csv
import itertools

def sum_volumes_by_date(yourcsvfile, writetocsv):
    # it will read all your data and pairing the header to values into a dictionary
    results = [line for line in csv.DictReader(open(yourcsvfile))]

    with open(writetocsv, 'w') as f:    

        # use groupby to group a sorted list of the dictionary by its 'date'
        for k, g in itertools.groupby(sorted(results, key=lambda x: x['date']), \
                                      lambda each: each['date'][:8]):
            # then sum its relative 'volume' values
            f.write("{},{}\n".format(k, sum([int(each['volume']) for each in g])))


>>> sum_volumes_by_date('in.csv', 'out.csv')
>>> cat out.csv

This can be done fairly easily using dictionaries, check out this example:

import csv

with open('csv.csv', 'rb') as csv_file:

    # initiate csv reader
    csv_reader = csv.reader(csv_file)   

    # initiate empty dictionary
    daily_volumes = {}

    # iterate through each column
    for row in csv_reader:
        # attempt to add to an existing date key (this will fail the first time we get a new date)
            # add the new volume to this day
            daily_volumes[row[1].split(' ')[0]] += int(row[4])
        except KeyError:
                # this date does not exist as a key yet, so now we create it
                daily_volumes[row[1].split(' ')[0]] = int(row[4])
            except ValueError:
                # the header will error out on the int() function, so just skip it

    # This will give us a dictionary like so:
    daily_volumes = {
        '20140619': 235, 
        '20140612': 1602, 
        '20140613': 2611, 
        '201406117': 100, 
        '20140620': 600

    # Now create a new CSV and write these values to it
    with open('new_csv.csv', 'wb') as new_csv_file:
        # initiate csv writer
        csv_writer = csv.writer(new_csv_file)

        # write each key as a row
        for date, volume in daily_volumes.iteritems():
            csv_writer.writerow([date, volume])

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.