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I have recently (1 week) decided to migrate my work to Python from matlab. Since I am used to matlab, I am finding it difficult sometimes to get the exact equivalent of what I want to do in python.

Here's my problem:

I have a set of csv files that I want to process. So far, I have succeeded in loading them into groups. Each column has a size of more 600000 x 1. In one of the columns in the csv file is the time which has a format of 'mm/dd/yy HH:MM:SS'. I want to convert the time column to number and I am using date2num from matplot lib for that. Is there a 'matrix' way of doing it? The command in matlab for doing that is datenum(time, 'mm/dd/yyyy HH:MM:SS') where time is a 600000 x 1 matrix.

Thanks

Here is an example of the code that I am talking about:

import csv
import time
import datetime from datetime
import date from matplotlib.dates
import date2num

time = []
otherColumns = []

for d in csv.DictReader(open('MyFile.csv')):
      time.append(str(d['time']))
      otherColumns.append(float(d['otherColumns']))

timeNumeric = date2num(datetime.datetime.strptime(time,"%d/%m/%y %H:%M:%S" ))
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3  
You may find scipy.org/NumPy_for_Matlab_Users very useful. –  mtrw Dec 23 '11 at 23:36
    
pandas.io.parsers.read_csv() might help –  J.F. Sebastian Dec 24 '11 at 10:42

2 Answers 2

up vote 0 down vote accepted

you could use a generator:

def pre_process(dict_sequence):
    for d in dict_sequence:
        d['time'] = date2num(datetime.datetime.strptime(d['time'],"%d/%m/%y %H:%M:%S" ))
    yield d

now you can process your csv:

for d in pre_process(csv.DictReader(open('MyFile.csv'))):
    process(d)

the advantage of this solution is that it doesn't copy sequences that are potentially large.

Edit:

So you the contents of the file in a numpy array?

reader = csv.DictReader(open('MyFile.csv'))
#you might want to get rid of the intermediate list if the file is really big.
data = numpy.array(list(d.values() for d in pre_process(reader)))

Now you have a nice big array that allows all kinds of operations. You want only the first column to get your 600000x1 matrix:

data[:,0]  # assuming time is the first column
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Thanks. I tried this solution, however this just gives me a numerical time with size of 1x1. What I was trying to do is to have an array of 600000x1 for the numerical time so that I can do the necessary matrix operations using numpy/scipy. Thanks. –  mikeP Dec 24 '11 at 1:25
    
Thanks a lot. This solves my problem. –  mikeP Dec 24 '11 at 13:17
    
do you mind to upvote my answer and mark it as solved? –  tback Dec 24 '11 at 13:55
    
Sorry, I do not have enough reputation yet to upvote you. I marked it however as an accepted answer. Thanks –  mikeP Dec 24 '11 at 19:11

The closest thing in Python for matlab's matrix/vector operation is list comprehension. If you would like to apply a Python function on each item in a list you could do:

new_list = [date2num(data) for data in old_list]

or

new_list = map(date2num, old_list)
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