1

If I have a text file containing:

 Proto  Local Address          Foreign Address        State           PID
  TCP    0.0.0.0:11             0.0.0.0:0              LISTENING       12   dns.exe
  TCP    0.0.0.0:95             0.0.0.0:0              LISTENING       589  lsass.exe
  TCP    0.0.0.0:111            0.0.0.0:0              LISTENING       888  svchost.exe
  TCP    0.0.0.0:123            0.0.0.0:0              LISTENING       123  lsass.exe
  TCP    0.0.0.0:449            0.0.0.0:0              LISTENING       2    System

Is there a way to extract ONLY the process ID names such as dns.exe, lsass.exe, etc..?

I tried using split() so I could get the info right after the string LISTENING. Then I took whats left (12 dns.exe, 589 lsass.exe, etc... ), and checked the length of each string. So if the len() of 12 dns.exe was between 17 or 20 for example, I would get the substring of that string with specific numbers. I only took into account the length of the PID numbers(which can be anywhere between 1 to 4 digits) but then forgot that the length of each process name varies (there are hundreds). Is there a simpler way to do this or am I out of luck?

3
  • 1
    Are the number of spaces between columns the same in each instance? You might be able to use the csv module. Docs here at python.org
    – cssko
    Mar 30, 2016 at 15:36
  • @cssko Yes, they are always the same.
    – Kevin R.
    Mar 30, 2016 at 15:40
  • 3
    Can't you just take the last element of what split returns? Mar 30, 2016 at 15:42

5 Answers 5

3

split should work just fine so long you ignore the header in your file

processes = []

with open("file.txt", "r") as f:
    lines = f.readlines()

    # Loop through all lines, ignoring header.
    # Add last element to list (i.e. the process name)
    for l in lines[1:]:
        processes.append(l.split()[-1])

print processes

Result:

['dns.exe', 'lsass.exe', 'svchost.exe', 'lsass.exe', 'System']
2

You can use pandas DataFrames to do this without getting into the hassle of split:

parsed_file = pandas.read_csv("filename", header = 0)

will automatically read this into a DataFrame for you. You can then filter by those rows containing dns.exe, etc. You may need to define your own header


Here is a more general replacement for read_csv if you want more control. I've assumed your columns are all tab separated, but you can feel free to change the splitting character however you like:

with open('filename','r') as logs:
    logs.readline() # skip header so you can can define your own.
    columns = ["Proto","Local Address","Foreign Address","State","PID", "Process"]
    formatted_logs = pd.DataFrame([dict(zip(columns,line.split('\t'))) for line in logs])

Then you can just filter the rows by

formatted_logs = formatted_logs[formatted_logs['Process'].isin(['dns.exe','lsass.exe', ...])]

If you want just the process names, it is even simpler. Just do

processes = formatted_logs['Process'] # returns a Series object than can be iterated through
4
  • AFAIK, this format is not CSV. But I do not know if pandas CSV can process it... Mar 30, 2016 at 15:51
  • You don't need CSV - the string split I've used will automatically take care of the column delimiter for you. Most log files are tab separated, hence the \t. Mar 30, 2016 at 15:51
  • Pandas is a huge overkill for this job.
    – MattDMo
    Mar 30, 2016 at 15:51
  • @MattDMo: Perhaps. Better to learn about a chainsaw now than use an axe until it is too late, in my opinion. Besides, much more fluidity and flexibility is offered should OP ever want to do anything more sophisticated - he can just reuse this code then. Mar 30, 2016 at 15:53
1

You could simply use re.split:

import re

rx = re.compile(" +")
l = rx.split("       12   dns.exe") #  => ['', '12', 'dns.exe']
pid = l[1]

it will split the string on a arbitrary number of spaces, and you take second element.

1
with open(txtfile) as txt:
    lines = [line for line in txt]
process_names = [line.split()[-1] for line in lines[1:]]

This opens your input file and reads all the lines into a list. Next, the list is iterated over starting at the second element (because the first is the header row) and each line is split(). The last item in the resulting list is then added to process_names.

1

You could also use simply split and treat the line step by step, one by one like this:

def getAllExecutables(textFile):
    execFiles = []
    with open(textFile) as f:
        fln = f.readline()
        while fln:
            pidname = str.strip(list(filter(None, fln.split(' ')))[-1]) #splitting the line, removing empty entry, stripping unnecessary chars, take last element
            if (pidname[-3:] == 'exe'): #check if the pidname ends with exe
                execFiles.append(pidname) #if it does, adds it
            fln = f.readline() #read the next line
    return  execFiles

exeFiles = getAllExecutables('file.txt')
print(exeFiles)

Some remarks on the code above:

  1. Filter all the unnecessary empty element in the file line by filter
  2. stripping all the unnecessary characters in the file (such as \n) by str.strip
  3. Get the last element of the line after split using l[-1]
  4. Check if the last 3 chars of that element is exe. If it is, adds it to the resulting list.

Results:

['dns.exe', 'lsass.exe', 'svchost.exe', 'lsass.exe']

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.