6

Say I have a .txt file with many rows and columns of data and a list containing integer values. How would I load the row numbers in the text file which match the integers in the list?

To illustrate, say I have a list of integers:

a = [1,3,5]

How would I read only rows 1,3 and 5 from a text file into an array?

The loadtxt routine in numpy let's you both skip rows and use particular columns. But I can't seem to find a way to do something along the lines of (ignoring incorrect syntax):

new_array = np.loadtxt('data.txt', userows=a, unpack='true')

Thank you.

9
  • Is the text file too big/take too long to load into memory?
    – wflynny
    Sep 24, 2013 at 20:54
  • Using numpy to achieve this is a requirement?
    – Bakuriu
    Sep 24, 2013 at 20:55
  • 5
    Can't you use a standard while open(file) as fd: for n, line in enumerate(fd) loop and if n equals anything in a do your stuff? Sep 24, 2013 at 20:58
  • The text file is not that big, but the array 'a' will change during the program so the rows to be read will change all the time. Numpy is not a strict requirement.
    – Paul
    Sep 24, 2013 at 20:58
  • 2
    @Paul, see the docs for the with statement. In Fredrik's comment, fd is an alias for the file object opened with open(file, 'r').
    – wflynny
    Sep 24, 2013 at 21:32

5 Answers 5

5

Given this file:

1,2,3
4,5,6
7,8,9
10,11,12
13,14,15
16,17,18
19,20,21

You can use the csv module to get the desired np array:

import csv
import numpy as np

desired=[1,3,5]
with open('/tmp/test.csv', 'r') as fin:
    reader=csv.reader(fin)
    result=[[int(s) for s in row] for i,row in enumerate(reader) if i in desired]

print(np.array(result))   

Prints:

[[ 4  5  6]
 [10 11 12]
 [16 17 18]]
1
  • He asked for a .txt file, not .csv
    – Edouard
    Sep 15, 2022 at 9:20
4

Just to expand on my comment

$ cat file.txt
line 0
line 1
line 2
line 3
line 4
line 5
line 6
line 7
line 8
line 9
line 10

Python:

#!/usr/bin/env python

a = [1, 4, 8]

with open('file.txt') as fd:
    for n, line in enumerate(fd):
        if n in a:
            print line.strip()

output:

$ ./l.py 
line 1
line 4
line 8
3

You can stick to using numpy's loadtxt method, except that you'll need to pass a generator object to the function instead of the file path.

First define a generator that accepts filename and row indices and yields only those lines at the specified indices

def generate_specific_rows(filePath, userows=[]):
    with open(filePath) as f:
        for i, line in enumerate(f):
            if i in userows:
                yield line

Now you can pass create a generator object and pass it to the loadtxt method

a = [1,3,5]
gen = generate_specific_rows('data.txt', userows=a)
new_array = np.loadtxt(gen, unpack='true')
0

I would suggest to use line.split () instead of line.strip(). line.split () returns the list, which can be easily converted to numpy.array by using np.asarray command.

0

Use CSV module and Files.xreadlines().

  • CSV module: implements classes to read and write tabular data in CSV format

  • Files.xreadlines(): Return an iterator over the keys of the dictionary. This is a shortcut for iterkeys(). Deprecated since version 2.3: Use for line in file instead.

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