Is there a standard linux command for it? If not, can anyone describe a python script to do the same?

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I would not recomend doing that. The levenstein Distance function has a complexity of almost O(n*m) which is kind of O(n²) when the texts are similar.

But if you want to you could do it... pip install python-Levenshtein

and the code will be somethin like that:

form Levenshtein import *

txt1 = open("text1.txt").read()
txt2 = open("text2.txt").read()

print("distance:", distance(txt1,txt2)
  • Great. worked :). Do you have a better method then to compare two files? I am comparing output of two ocr programs. – blastoise Jun 15 '18 at 10:40

It depends. When the ocr Outputs are similar and there are one few differences to expect, yout could do a "split" and compare each word/line etc. And only use levenshtein distance for the part in wich diferences occur when the amount of lines are the same. eg:

def textLevi(txt1,txt2):
   lines = list(zip(txt1.split("\n"),txt2.split("\n")))
   distance = 0
   for i,ele in enumerate(lines,1):
        line1,line2 = ele
       if line1 != line2:
           actDistance = distance(line1,line2)
           print( "Distance of line %d: " %(i),actDistance)
           distance += actDistance

   print( "Sum of Lv Distances:",distance)

textLevi("Hello I \n like cheese","Hello I \n like cheddar")

would create the Output:

Distance of line 2: 4

Sum of Lv Distances: 4

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