Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I am loading an array using numpy.genfromtxt. I extract a variable from the array and save it into another .txt file, however the output will have many trailing digits. Here is an example of my script:

import numpy as np
import csv

data_points = np.genfromtxt('input_arrray.txt', dtype = None)
# dtype = None since the array contains numbers and strings      

csvfile = "/home/User/Desktop/output_array.txt"
with open(csvfile, "w") as output:
    writer = csv.writer(output, delimiter='\t')
    for row in range(len(data_points)):
        parameter = data_points[row][5]
        writer.writerow([parameter])

Let's say the value in the input_array was 0.33625 in the output_array.txt it will be 0.33624999999999999'

To fix this problem I am using:

writer.writerow(['%1.5f' % parameter])

However, I am not satisfied by the results. My original array is made of 1900 rows and 38 columns. I want to extract 10 columns out of the 38. But when I use the '%2.5f% parameter my data is not aligned.

Is there another way to fix this problem?

share|improve this question
    
If you parse the file yourself, you should be able to avoid this problem e.g. a = '1.225'; float(a) == 1.225. Maybe you want to know how to configure numpy.genfromtxt to not have the rounding error? –  confused_at_times Mar 7 '14 at 10:36
    
since I haven't heard from you, did the answer below work fine? –  Saullo Castro Mar 26 at 22:35

1 Answer 1

up vote 0 down vote accepted

You can force to keep the original data as string:

data_points = np.gengromtxt('input_array.txt', dtype=str)

and then write using np.savetxt with fmt='%s`` to avoid the conversionstring -> float` that is causing the round error:

np.savetxt('output.txt', data_points, fmt='%s')
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.