I have created 2 lists, which contain log files coming from different machines.

So I have machine1 folder that contains perf_log.txt, stress_log.txt and so on. Then I have machine2 folder, that contains the same file names as above. In some cases, I may have logs from one machine but not from the other.

What I did so far, to compare their content, is to parse all the files in one folder, and add the full path to a list, and then do the same with the second folder. Then I would like to compare the correspondent logs (like perf_log.txt), between the 2 machines.

But I end up parsing the first list once, but I have to check every time if the second list contain the entry, and if it does, I have to go and retrieve the index, before I can compare the files. This seems pretty expensive, in the case of many files in a folder

list1 = []
list2 = []

path1 = "~/Desktop/machine1/"
path2 = "~/Desktop/machine2/"

for entry in glob.glob("*.txt"):

for entry in glob.glob("*.txt"):

for logfile in list1:
    if logfile in list2:
        # Retrieve the index of the common file
        item_index = list2.index(logfile)
        # parse files and compare them
        comparefiles(path1 + logfile, path2 + list2[index])

How can I simplify this, and try to get to a O(n) complexity?


Use a dictionary instead of using a list. So instead of list1.append(entry) you can do dict[entry] = entry This will help in the later part of code where you are doing if logfile in list2: which traverses the whole list to find it. Instead you can do if dict.get(logfile,-1) != -1 to check if the file exists in 2nd path in O(1). You can just pass in the path to your comparefiles() method then.

I hope it makes sense.

Here is the code that should work. (I havent tested it though)

dict1 = {}
dict2 = {}

path1 = "~/Desktop/machine1/"
path2 = "~/Desktop/machine2/"

for entry in glob.glob("*.txt"):
    dict1[entry] = entry

for entry in glob.glob("*.txt"):
    dict2[entry] = entry
for key in dict1:
    if dict2.get(key,-1) != -1:

Since order doesn't matter.

list(set(list1) & set(list2))

You are performing an intersection operation between the two lists, which are first made to sets. Now you have a list of entries that are in list1 AND in list2. After you have a common list of entries you can perform comparisons between these two files.

This is not an O(n) solution, probably a O(nlogn) solution. Still better performing than the code given in the question.


I'm not sure if sets provide O(n) complexity but they would certainly make finding the differences between the two lists easier as you can perform subtraction: https://docs.python.org/3/tutorial/datastructures.html#sets

logfiles1 = {}
logfiles2 = {}
in_1_but_not_in_2 = logfiles1 - logfiles2

I'm assuming the file names/paths are unique.


You might be able to get some good improvements if you use numpy and pandas' series.

Before starting, import numpy and pandas.

import numpy as np
import pandas as pd

Now transform your lists into numpy arrays.

list1 = np.array(list1)
list2 = np.array(list2)

Now you can make use of indexing to find out which files from one group are also in the other.

items_in_both = list1[pd.Series(list1).isin(list2)]

Now, items_in_both contains all items that appear in both lists. With this, you can call your comparefiles function once for each element in items_in_both.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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