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I spend the whole day waiting for a loop to exit without hope!. I know that python is not so efficient when it comes to performance as such I would really appreciate any speed-up suggestions to my problem.

I have captured a large number of packets (around 500,000) using wireshark and saved them to .pcap file. After that I read the packets from the saved file by using Scapy rdpcap() function and then I accessed each packet in a loop to extract the source IP Address. My code is as follows:

from scaly.all import *

srcList =[]
Packets = rdpcap("pcapfile")

for pkt in Packets:
    src = Packets[Packets.index(pkt)][1].src
    srcList.append(src)

Note: I have done some digging and I found that Cython is used to speed-up nested loop, but honestly I have no idea how to use that in my case. any insight would be great

share|improve this question
    
Cython will only be faster if your bottleneck resides on your processor. It appears that your bottleneck is IO related. In that case, it doesn't matter how fast your native processor handles the code, your speed will not increase. –  Joel Cornett Jan 22 '13 at 10:42
    
Well, you're looping over a list of packets, getting the second packet with equivalent to your current packet, and appending it's src to the list. Are you sure you want to be doing this? –  Snakes and Coffee Jan 22 '13 at 10:42
    
Your assumption is wrong: Python is well suited to write software with excellent performance. Usually it's the algorithms that cause software to run slow(ly). Processing 500k packets definitely is nothing that should take all day. –  Ber Jan 22 '13 at 10:42
3  
I suspect the issue is on the line src = Packets[Packets.index(pkt)][1].src Since looping is O(n) and list searching is O(n) making it O(n**2). –  Snakes and Coffee Jan 22 '13 at 10:45
    
@JoelCornett Noted with thanks –  OiaSam Jan 22 '13 at 10:53

2 Answers 2

up vote 6 down vote accepted

If I am not misunderstanding your intention, you can simplify your code, that should also speed it up:

from scaly.all import *

Packets = rdpcap("pcapfile")
srcList = [pkt[1].src for pkt in Packets]

The difference between this solution and yours can be illustrated with a simple example. As you can see, the second function is more than 10 times faster.

In [1]: lst = range(100)

In [2]: def f1(lst):
   ...:     out = []
   ...:     for item in lst:
   ...:         out.append(lst[lst.index(item)])
   ...:     return out

In [3]: def f2(lst):
   ...:     return [item for item in lst]

In [4]: %timeit f1(lst)
1000 loops, best of 3: 221 us per loop

In [5]: %timeit f2(lst)
100000 loops, best of 3: 9.61 us per loop
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1  
You should note that the implied loops in list comprehensions do the same thing that a Cython implementation would: push the loop execution into C. –  Joel Cornett Jan 22 '13 at 11:00
    
Thanks for your solution and elaboration –  OiaSam Jan 22 '13 at 11:09
    
@JoelCornett -- I don't know much about the internals, but isn't the speed difference caused by not having to call append and of the usage of LIST_APPEND instead? -- if you look at dis.dis –  root Jan 22 '13 at 11:31
    
The speed difference comes from O(n**2) v. O(n) in the algorithm. It does not matter much who you write the loop. –  Ber Jan 22 '13 at 11:55
    
@Ber -- You are right. The increase in difference is only seen compared to really small list (removed that example). So it seems to be a setup thing -- still not sure why exactly though. –  root Jan 22 '13 at 12:32

I suspect the issue is on the line src = Packets[Packets.index(pkt)][1].src Since looping is O(n) and list searching is O(n) making it O(n**2).

Perhaps the following would work too:

from scaly.all import *

srcList =[]
Packets = rdpcap("pcapfile")

for pkt in Packets:
    src = pkt[1].src
    srcList.append(src)

or

from scaly.all import *

Packets = rdpcap("pcapfile")
srcList = [pkt[1].src for pkt in Packets]
share|improve this answer
    
Thanks, it works faster now!.. appreciate the help –  OiaSam Jan 22 '13 at 11:15

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