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I have a text file with the format (date, time, resistance):

12/11/2013  13:20:38    28.321930E+3
...         ...             ...

I need to extract the value of resistance (third column) from every 6 seconds after the first data entry. To start I wanted to import the text file using:

date, time, resistance = loadtxt('Thermometers.txt', unpack=True, usecols=[0,1,2])

However before I've hardly begun my program, I get the error:

ValueError: invalid literal for float(): 12/11/2013

-ALSO-

I am not sure how to also iterate through time given that the date changes as it's an over-night data run. Elegant solutions to my problem(s) would be much appreciated.

share|improve this question
    
Is there a problem in opening a text file object and doing readline and finally doing the_line.split()? – Jack_of_All_Trades Nov 14 '13 at 13:29
    
I need to extract data from a time interval, which also requires considering the date. – user2992169 Nov 14 '13 at 13:32
    
Show the definition of the loadTxt function, please. – aga Nov 14 '13 at 13:39
    
numpy.loadtxt(fname, dtype=<type 'float'>, comments='#', delimiter=None, converters=None, skiprows=0, usecols=None, unpack=False, ndmin=0) Load data from a text file. Each row in the text file must have the same number of values. – user2992169 Nov 14 '13 at 13:53
    
Are the data taken at constant time intervals? Further, I think @Jack_of_All_Trades is on the right track - why not just read and split the line using standard Python read/string operations, instead of through numpy? – darthbith Nov 14 '13 at 14:07

I think this code will do what you want to do. And also, you don't have to worry about the overnight data and changing date since this converts it to datetime object.

    import datetime

    filtered_data=[]

    my_data=open(my_file,'r')
    for line in my_data:

        data_arr=line.split()
        dte=data_arr[0].split("/") r
        tme=data_arr[1].split(":") 
        new_date=datetime.datetime((int(dte[2]),int(dte[0]),int(dte[1]),
                                    int(tme[0]),int(tme[1]),int(tme[2]))

        if filtered_data==[]:
           filtered_data.append(data_arr)

        else:
           if (new_date-old_date).seconds==6:
                filtered_data.append(data_arr)

        old_date=new_date

This will give you a list where the items are filtered as per your situation ( in every 6 seconds). Now if you just want the array of your resistance which are distributed at 6 seconds interval, using simple loop or list comprehension like below will suffice:

R_in_six_sec_interval=[R[2] for R in filtered_data]
share|improve this answer
    
hmm how about new_date=dateutil.parser.parse(' '.join(data_arr[:2]),dayfirst=True) parse the date? – staticd Nov 14 '13 at 15:07
    
A few ideas... I think you need to convert the dte values to numbers to keep datetime happy. Also, wouldn't a conditional of >= 6 be more appropriate? Another idea is to split the line just once using re.compile(r'[/:\s]+'). If you initialize old_date to a really old value, you can drop the check for empty filtered_data. – FMc Nov 14 '13 at 15:07
    
@FMc: You are absolutely right. I remembered at first but forgot it later since it is since int(...). I just commented in my answer. I am being lazy now. I think OP gets the idea now. – Jack_of_All_Trades Nov 14 '13 at 15:13
    
@FMc: For >= 6, I think the OP wants exactly 6 seconds interval from the previous data. – Jack_of_All_Trades Nov 14 '13 at 15:49

you might want to have a look at this if you want to do stick to numpy for other reasons.

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