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How do i prevent this python from generating private addresses?

def gen_ip():
    b1 = random.randrange(0, 255, 1)
    b2 = random.randrange(0, 255, 1)
    b3 = random.randrange(0, 255, 1)
    b4 = random.randrange(0, 255, 1)
    ip = str(b1)+"."+str(b2)+"."+str(b2)+"."+str(b4)
    ip = ip[::-1]
    return ip
share|improve this question
Don't invoke it. –  Asad Jun 10 '13 at 23:51
This might help: en.wikipedia.org/wiki/… –  Jason Sperske Jun 11 '13 at 0:02
Side notes: You probably don't want to include b2 twice and leave b3 out. And you probably don't want to generate valid addresses and then reverse them into usually-invalid addresses. Also, randrange(0, 255, 1) can't return 255; if that's not what you want, either use 256 or use randint. (And you can just write randrange(255) if you want the default start of 0 and step of 1.) –  abarnert Jun 11 '13 at 0:27
Do you really want to avoid private IPs, or do you only want to include public ips? (IOW, do you also want to exclude 127/8 and 100.64/10?) –  kojiro Jun 11 '13 at 1:16

3 Answers 3

def isPrivateIp (ip):
    # fill this
    return True or False

ip = gen_ip()
while isPrivateIp(ip):
    ip = gen_ip()
share|improve this answer
What would be the most inexpensive way to exclude 17891328 addresses –  Ricky Wilson Jun 11 '13 at 3:02
Well, there are 4294967296 total addresses. Those 17891328 are just 0.4% of the available addresses. So just regenerating a new IP if you get a private one will be very efficient. You can improve quite a lot though, if you move the private IP check into the generator. For example the whole range is private, so if you generate b1 (btw. I wouldn’t reverse the generated IP, to make it easier), and get a 10, you could just run that again, without having to run b2-b4. –  poke Jun 11 '13 at 10:13
Excluding 10. that way is easy, but excluding the other two blocks without breaking the uniform distribution is less so. (You have to make 192 and 176 appropriately less likely than the other numbers if you don't want to come up more often than Doing what this answer does is by far simpler, and probably more efficient as well. –  abarnert Jun 11 '13 at 18:53
You can get a decent speedup—and simpler code to boot—by doing the isPrivateIp check on the four bits while they're still integers, and only converting to string once you've got one that passed. But really, is reducing a 10.1us operation to 9.4us (from a quick timeit test) really going to make a difference in your code? If not, why worry about "most inexpensive" at all? –  abarnert Jun 11 '13 at 19:11

I think poke's answer is great. But if you're going to be generating and consuming these in a loop, I'd just create an infinite iterator and filter it:

# Same as your function, but without the bugs
def gen_ip():
    return '.'.join(str(random.randrange(256)) for _ in range(4))

# Obviously not the real logic; that's left as an exercise to the reader of
# https://en.wikipedia.org/wiki/Private_network#Private_IPv4_address_spaces
def is_private_ip(ip):
    return not ip.startswith('2')

# Now this is an infinite iterator of non-private IP addresses.
ips = ifilterfalse(repeatfunc(gen_ip), is_private_ip)

Now you can get 10 IPs like this:

>>> take(10, ips)

I've used take and repeatfunc from the recipes in the itertools docs, and ifilterfalse from itertools itself.

share|improve this answer

More efficient solution is to create a list of all possible addresses (or parts of address), generate index in this array and select element by this index. Something like this:

bs = [0, 1, 2, 3, ..., 191, 193, ..., 255]
idx = random.randrange(0, len(ips), 1) 
b = bs[idx]
# or simpler: b = random.choice(bs)
share|improve this answer
First, this is wrong—it will skip, e.g., even though only 192.168/16 is private. It also skips all 0 components. Finally, I'm not sure whether you mean "efficient" in the usual "minimal CPU time" sense, or in some other sense, but I doubt this is true. For example, random.choice(bs) will always be faster than bs[random.randrange(len(bs))]. –  abarnert Jun 11 '13 at 0:32
@abarnert: to filter all real private ips the entire function is to be rewritten with regard to Wikipedia article you pointed to. So I just showed the way of efficient generation of a number from non continuous range. It is efficient in algorithmic sense: with a filter/loop you never know how many iterations you will need. Imagine that randrange generates 192, then 10, then 172, then 192 again... Picking up value from finite set (no matter with randrange and index or choice) will always give you next allowed number from the very first time. The only claim I agree with is about 0 in IP. –  ffriend Jun 11 '13 at 1:12
First, how are you going to adjust this solution to actually be correct? However you do it, it will no longer be just picking values out of a list, so any of your claims for efficiency about this incorrect answer are irrelevant. Second, the expected amortized cost of filtering out about 1% of all possible values is about 1%; the expected amortized cost of doing twice as much work as necessary to pick a number out of a range is about 100%. Unless you're doing hard real-time, you're focusing on the wrong place (as always true when someone posts an answer that starts "most efficient"). –  abarnert Jun 11 '13 at 1:26
@abarnert: please, do not say that the answer is incorrect if you don't understand it. And, please, do not reason about CPU efficiency without knowing the entire stack. Picking up random number from array doesn't introduce 100% overhead - random number is generated exactly once. At the same time ifs (loops/filters) introduce real challenge for CPU. You also haven't provided implementation of is_private_ip(), which may include multiple conditions. You don't know Python implementation, subclass of Random and operating system in use. So the only enhancement you can introduce is algorithmic. –  ffriend Jun 11 '13 at 2:00
For evidence that it's not more efficient, see pastebin.com/Qj5zESkW, where I implemented the fastest version of your algorithm I could come up with (which isn't actually correct), and timed it against the fastest version of poke's algorithm (which is). In CPython 2.7, his ran in 86% the time of yours; in 3.3, 98%; in PyPy, 101%. Meanwhile, the cost of implementing choice yourself instead of using the right function doubles the time. So, you've put your effort into the wrong place—aiming at a 1-14% improvement instead of a 50% improvement—and you didn't even succeed at that effort. –  abarnert Jun 11 '13 at 19:09

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