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Is there a library function that can enumerate the prime numbers (in sequence) in Python?

I found this question Fastest way to list all primes below N but I'd rather use someone else's reliable library than roll my own. I'd be happy to do import math; for n in math.primes:

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The question you link to has a link to the numpy library that has a primes function... –  Hunter McMillen Nov 10 '12 at 22:31
What is it please? import numpy then what? –  Colonel Panic Nov 10 '12 at 22:35
you are always going to have to put some upper limit N ... and for big N value it may take a long time ... –  Joran Beasley Nov 10 '12 at 22:39
this may be what your are looking for… ... see first answer (which actually links to ) –  Joran Beasley Nov 10 '12 at 22:50

2 Answers 2

up vote 4 down vote accepted

The gmpy2 library has a next_prime() function. This simple function will create a generator that will provide an infinite supply of primes:

import gmpy2

def primes():
    n = 2
    while True:
        yield n
        n = gmpy2.next_prime(n)

If you will be searching through primes repeatedly, creating and reusing a table of all primes below a reasonable limit (say 1,000,000) will be faster. Here is another example using gmpy2 and the Sieve of Eratosthenes to create a table of primes. primes2() returns primes from the table first and then uses next_prime().

import gmpy2

def primes2(table=None):

    def sieve(limit):
        sieve_limit = gmpy2.isqrt(limit) + 1
        limit += 1
        bitmap = gmpy2.xmpz(3)
        bitmap[4 : limit : 2] = -1
        for p in bitmap.iter_clear(3, sieve_limit):
            bitmap[p*p : limit : p+p] = -1
        return bitmap

    if table is None:
        table = sieve(table_limit)

    for n in table.iter_clear(2, table_limit):
        yield n

    n = table_limit
    while True:
        n = gmpy2.next_prime(n)
        yield n

You can adjust table_limit to suit your needs. Larger values will require more memory and increase the startup time for the first invocation of primes() but it will be faster for repeated calls.

Note: I am the maintainer of gmpy2.

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Thanks. Nice docs, too! –  Colonel Panic Nov 14 '12 at 21:56

There is no constant time algorithm to generate the next prime number; this is why most libraries require an upper bound. This is actually a huge problem that needed to be solved for digital cryptography. RSA chooses sufficiently large primes by selecting a random number and testing for primality until it finds a prime.

Given an arbitrary integer N, the only way to find the next prime after N is to iterate through N+1 to the unknown prime P testing for primality.

Testing for primality is very cheap, and there are python libraries that do so: AKS Primes algorithm in Python

Given a function test_prime, than an infinite primes iterator will look something like:

class IterPrimes(object):
    def __init__(self,n=1):

    def __iter__(self):
        return self

    def next(self):
        n = self.n
        while not test_prime(n):
            n += 1
        self.n = n+1
        return n

There are a lot of heuristics you could use to speed up the process. For instance, skip even numbers, or numbers divisible by 2,3,5,7,11,13,etc..

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