# Speed up bitstring/bit operations in Python?

I wrote a prime number generator using Sieve of Eratosthenes and Python 3.1. The code runs correctly and gracefully at 0.32 seconds on ideone.com to generate prime numbers up to 1,000,000.

# from bitstring import BitString

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
flags = [False, False] + [True] * (limit - 2)
#     flags = BitString(limit)
# Step through all the odd numbers
for i in range(3, limit, 2):
if flags[i] is False:
#        if flags[i] is True:
continue
yield i
# Exclude further multiples of the current prime number
if i <= sub_limit:
for j in range(i*3, limit, i<<1):
flags[j] = False
#                flags[j] = True

The problem is, I run out of memory when I try to generate numbers up to 1,000,000,000.

flags = [False, False] + [True] * (limit - 2)
MemoryError

As you can imagine, allocating 1 billion boolean values (1 byte 4 or 8 bytes (see comment) each in Python) is really not feasible, so I looked into bitstring. I figured, using 1 bit for each flag would be much more memory-efficient. However, the program's performance dropped drastically - 24 seconds runtime, for prime number up to 1,000,000. This is probably due to the internal implementation of bitstring.

You can comment/uncomment the three lines to see what I changed to use BitString, as the code snippet above.

My question is, is there a way to speed up my program, with or without bitstring?

Edit: Please test the code yourself before posting. I can't accept answers that run slower than my existing code, naturally.

Edit again:

I've compiled a list of benchmarks on my machine.

-
Nitpick: you're looking at 4 or 8 bytes per boolean (depending on whether you're on a 32-bit or 64-bit system), rather than 1: internally, the list flags is just a C array of (PyObject *) pointers. –  Mark Dickinson May 24 '10 at 14:03
Thanks for the correction. :] –  Xavier Ho May 24 '10 at 14:13
You could use numpy in Python 2.x rosettacode.org/wiki/Sieve_of_Eratosthenes#Using_numpy It is much faster (~20 times). –  J.F. Sebastian May 24 '10 at 21:32
It takes ~28 seconds to generate upto limit 1e9 using primes_upto2(), primes_upto3() from the above link. C++ version ~14 seconds, C version ~13 seconds. –  J.F. Sebastian May 24 '10 at 21:45
@wallacaloo: In Python 3.x the range is lazy. –  J.F. Sebastian May 28 '10 at 7:27

There are a couple of small optimizations for your version. By reversing the roles of True and False, you can change "if flags[i] is False:" to "if flags[i]:". And the starting value for the second range statement can be i*i instead of i*3. Your original version takes 0.166 seconds on my system. With those changes, the version below takes 0.156 seconds on my system.

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
flags = [True, True] + [False] * (limit - 2)
# Step through all the odd numbers
for i in range(3, limit, 2):
if flags[i]:
continue
yield i
# Exclude further multiples of the current prime number
if i <= sub_limit:
for j in range(i*i, limit, i<<1):
flags[j] = True

Moving into the world of C extensions, I used the development version of gmpy. (Disclaimer: I'm one of the maintainers.) The development version is called gmpy2 and supports mutable integers called xmpz. Using gmpy2 and the following code, I have a running time of 0.140 seconds. Running time for a limit of 1,000,000,000 is 158 seconds.

import gmpy2

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
# Actual number is 2*bit_position + 1.
oddnums = gmpy2.xmpz(1)
current = 0
while True:
current += 1
current = oddnums.bit_scan0(current)
prime = 2 * current + 1
if prime > limit:
break
yield prime
# Exclude further multiples of the current prime number
if prime <= sub_limit:
for j in range(2*current*(current+1), limit>>1, prime):
oddnums.bit_set(j)

Pushing optimizations, and sacrificing clarity, I get running times of 0.107 and 123 seconds with the following code:

import gmpy2

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
# Actual number is 2*bit_position + 1.
oddnums = gmpy2.xmpz(1)
f_set = oddnums.bit_set
f_scan0 = oddnums.bit_scan0
current = 0
while True:
current += 1
current = f_scan0(current)
prime = 2 * current + 1
if prime > limit:
break
yield prime
# Exclude further multiples of the current prime number
if prime <= sub_limit:
list(map(f_set,range(2*current*(current+1), limit>>1, prime)))

Edit: Based on this exercise, I modified gmpy2 to accept xmpz.bit_set(iterator). Using the following code, the run time for all primes less 1,000,000,000 is 56 seconds for Python 2.7 and 74 seconds for Python 3.2. (As noted in the comments, xrange is faster than range.)

import gmpy2

try:
range = xrange
except NameError:
pass

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
oddnums = gmpy2.xmpz(1)
f_scan0 = oddnums.bit_scan0
current = 0
while True:
current += 1
current = f_scan0(current)
prime = 2 * current + 1
if prime > limit:
break
yield prime
if prime <= sub_limit:
oddnums.bit_set(iter(range(2*current*(current+1), limit>>1, prime)))

Edit #2: One more try! I modified gmpy2 to accept xmpz.bit_set(slice). Using the following code, the run time for all primes less 1,000,000,000 is about 40 seconds for both Python 2.7 and Python 3.2.

from __future__ import print_function
import time
import gmpy2

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
flags = gmpy2.xmpz(1)
# pre-allocate the total length
flags.bit_set((limit>>1)+1)
f_scan0 = flags.bit_scan0
current = 0
while True:
current += 1
current = f_scan0(current)
prime = 2 * current + 1
if prime > limit:
break
yield prime
if prime <= sub_limit:
flags.bit_set(slice(2*current*(current+1), limit>>1, prime))

start = time.time()
result = list(prime_numbers(1000000000))
print(time.time() - start)

Edit #3: I've updated gmpy2 to properly support slicing at the bit level of an xmpz. No change in performance but a much nice API. I have done a little tweaking and I've got the time down to about 37 seconds. (See Edit #4 to changes in gmpy2 2.0.0b1.)

from __future__ import print_function
import time
import gmpy2

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
sub_limit = int(limit**0.5)
flags = gmpy2.xmpz(1)
flags[(limit>>1)+1] = True
f_scan0 = flags.bit_scan0
current = 0
prime = 2
while prime <= sub_limit:
yield prime
current += 1
current = f_scan0(current)
prime = 2 * current + 1
flags[2*current*(current+1):limit>>1:prime] = True
while prime <= limit:
yield prime
current += 1
current = f_scan0(current)
prime = 2 * current + 1

start = time.time()
result = list(prime_numbers(1000000000))
print(time.time() - start)

Edit #4: I made some changes in gmpy2 2.0.0b1 that break the previous example. gmpy2 no longer treats True as a special value that provides an infinite source of 1-bits. -1 should be used instead.

from __future__ import print_function
import time
import gmpy2

def prime_numbers(limit=1000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
sub_limit = int(limit**0.5)
flags = gmpy2.xmpz(1)
flags[(limit>>1)+1] = 1
f_scan0 = flags.bit_scan0
current = 0
prime = 2
while prime <= sub_limit:
yield prime
current += 1
current = f_scan0(current)
prime = 2 * current + 1
flags[2*current*(current+1):limit>>1:prime] = -1
while prime <= limit:
yield prime
current += 1
current = f_scan0(current)
prime = 2 * current + 1

start = time.time()
result = list(prime_numbers(1000000000))
print(time.time() - start)

Edit #5: I've made some enhancements to gmpy2 2.0.0b2. You can now iterate over all the bits that are either set or clear. Running time has improved by ~30%.

from __future__ import print_function
import time
import gmpy2

def sieve(limit=1000000):
'''Returns a generator that yields the prime numbers up to limit.'''

# Increment by 1 to account for the fact that slices do not include
# the last index value but we do want to include the last value for
# calculating a list of primes.
sieve_limit = gmpy2.isqrt(limit) + 1
limit += 1

# Mark bit positions 0 and 1 as not prime.
bitmap = gmpy2.xmpz(3)

# Process 2 separately. This allows us to use p+p for the step size
# when sieving the remaining primes.
bitmap[4 : limit : 2] = -1

# Sieve the remaining primes.
for p in bitmap.iter_clear(3, sieve_limit):
bitmap[p*p : limit : p+p] = -1

return bitmap.iter_clear(2, limit)

if __name__ == "__main__":
start = time.time()
result = list(sieve(1000000000))
print(time.time() - start)
print(len(result))
-
What settings have you used to install gmpy. It takes 500 seconds for limit=1e9 on my machine (for comparison, primes_upto2() from rosettacode.org/wiki/Sieve_of_Eratosthenes#Using_numpy takes me 30 seconds). I've just checkouted the code and run python setup.py install –  J.F. Sebastian May 25 '10 at 4:10
@casevh: Thanks for the gmpy code. I'll give it a run after work today - I'm pretty impressed by the 2/3 reduced runtime. –  Xavier Ho May 25 '10 at 4:19
That should be all you need to do to install it. I'm using 64-bit Ubuntu 10.04, 2.2Ghz Core2 Duo, GMP 5.01, and Python 3.1. Using the Ubuntu version of numpy, primes_upto2() takes 50 seconds on my computer so something is strange. –  casevh May 25 '10 at 4:36
@casevh: I've noticed the 2nd variant of prime_numbers() causes my machine to swap. So it might ruin the benchmark. 64-bit Ubuntu 10.04, 2.6GHz i7, GMP 4.3.2 pgmpy 2.0.0a and python 2.6.4. –  J.F. Sebastian May 25 '10 at 4:58
Since you are using Python 2.x, change range to xrange. That should fix the extreme memory usage. You might try compiling GMP 5.01 from source. IIRC, it has improved code for the newer Intel processors. –  casevh May 25 '10 at 5:28

OK, so this is my second answer, but as speed is of the essence I thought that I had to mention the bitarray module - even though it's bitstring's nemesis :). It's ideally suited to this case as not only is it a C extension (and so faster than pure Python has a hope of being), but it also supports slice assignments. It's not yet available for Python 3 though.

I haven't even tried to optimise this, I just rewrote the bitstring version. On my machine I get 0.16 seconds for primes under a million.

For a billion, it runs perfectly well and completes in 2 minutes 31 seconds.

import bitarray

def prime_bitarray(limit=1000000):
yield 2
flags = bitarray.bitarray(limit)
flags.setall(False)
sub_limit = int(limit**0.5)
for i in xrange(3, limit, 2):
if not flags[i]:
yield i
if i <= sub_limit:
flags[3*i:limit:i*2] = True
-
Aww what, bit array! Exactly what I needed? XD. I'll give it a try after work today. –  Xavier Ho May 24 '10 at 22:10
Yes, I've run into the same problem before and was going to suggest bitarray. I hadn't heard of bitstring before, but I'll check it out. I had been using BitVector before I found bitarray (which I found wasn't very optimized), but its good to know of another binary array module to check out. –  Justin Peel May 24 '10 at 23:33
Just thought to let you know that on my machine, it took 0.45 seconds to run for n < 1,000,000, and so it will probably take 450 seconds to do a billion. I haven't tried it yet, but just to give you some idea about my machine speed compared to my 0.21 seconds version. Perhaps I can use bitarray for a generator that requires more than 100 million or something, heh. –  Xavier Ho May 25 '10 at 2:37

Okay, here's a (near complete) comprehensive benchmarking I've done tonight to see which code runs the fastest. Hopefully someone will find this list useful. I omitted anything that takes more than 30 seconds to complete on my machine.

I would like to thank everyone that put in an input. I've gained a lot of insight from your efforts, and I hope you have too.

My machine: AMD ZM-86, 2.40 Ghz Dual-Core, with 4GB of RAM. This is a HP Touchsmart Tx2 laptop. Note that while I may have linked to a pastebin, I benchmarked all of the following on my own machine.

I will add the gmpy2 benchmark once I am able to build it.

All of the benchmarks are tested in Python 2.6 x86

Returning a list of prime numbers n up to 1,000,000: (Using Python generators)

Mark's Sieve + Wheel - 154 ms

Robert's version with slicing - 159 ms

My improved version with slicing - 205 ms

Numpy generator with enumerate - 249 ms @

Mark's Basic Sieve - 317 ms

Bitarray Solution - 414 ms @

Pure Python with bytearray - 1394 ms @

Scott's BitString solution - 6659 ms @

'@' means this method is capable of generating up to n < 1,000,000,000 on my machine setup.

In addition, if you don't need the generator and just want the whole list at once:

numpy solution from RosettaCode - 32 ms @

(The numpy solution is also capable of generating up to 1 billion, which took 61.6259 seconds. I suspect the memory was swapped once, hence the double time.)

-
@Xavier Ho: you numpy version is incorrect: the step should be n, not n*n i.e., isprime[n*n::n]=0. You don't need to call numpy.nonzero() if you'd like a generator version: primes[:2]=0; return (i for i, p in enumerate(primes) if p) –  J.F. Sebastian May 25 '10 at 19:18
Note: numpy generator solution is 3 times slower (100 seconds vs. 30 seconds for 1e9) than the non-generator version. –  J.F. Sebastian May 25 '10 at 19:25
@J.F Sebastian: Nice catch. Thought I had fixed it! Thanks. –  Xavier Ho May 25 '10 at 21:51
@J.F. Sebastian: Interesting. On my machine it's more than 6 times slower. –  Xavier Ho May 26 '10 at 10:15
@Xavier Ho: Here's numpy generator version ideone.com/mxSdH (55 seconds for 1e9 (compared to 30 seconds for numpy non-generator version and to 45 seconds for @casevh's new xmpz.bitset()-based version) –  J.F. Sebastian May 27 '10 at 3:03

Related question.
Fastest way to list all primes below N in python

Hi, i am too looking for a code in python to generate primes up to 10*9 as fast as i can, which is difficult because of the memory problem. up to now i came up with this to generate primes up to 10*6 & 10*7 (0,171s & 1,764s respectively in my old machine), which seems to be slightly faster(at least in my computer) than "My improved version with slicing" from previous post,probably because i use n//i-i +1 (see below)instead of the analogous len(flags[i2::i<<1]) in the other code. please correct me if i am wrong. Any suggestion for improvement are very welcome.

def primes(n):
""" Returns  a list of primes < n """
sieve = [True] * n
for i in xrange(3,int(n**0.5)+1,2):
if sieve[i]:
sieve[i*i::2*i]=[False]*((n-i*i-1)/(2*i)+1)
return [2] + [i for i in xrange(3,n,2) if sieve[i]]

In one of his codes Xavier uses flags[i2::i<<1] and len(flags[i2::i<<1]), i computed the size explicit using the fact that between i*i..n we have (n-i*i)//2*i multiples of 2*i because we want to count i*i also we sum 1 so len(sieve[i*i::2*i]) equal (n-i*i)//(2*i) +1 This make the code faster. A basic generator based on the code above would be:

def primesgen(n):
""" Generates all primes <= n """
sieve = [True] * n
yield 2
for i in xrange(3,int(n**0.5)+1,2):
if sieve[i]:
yield i
sieve[i*i::2*i] = [False]*((n-i*i-1)/(2*i)+1)
for i in xrange(i+2,n,2):
if sieve[i]: yield i

with a bit of modification one can write a slightly slower version of the code above that start with a sieve half of the size sieve = [True] * (n//2) and works for the same n. not sure how that you reflect in the memory issue. As an example of implementation here is the modified version of the numpy rosetta code (maybe faster) starting with a sieve half of the size.

import numpy
def primesfrom3to(n):
""" Returns a array of primes, 3 <= p < n """
sieve = numpy.ones(n/2, dtype=numpy.bool)
for i in xrange(3,int(n**0.5)+1,2):
if sieve[i/2]: sieve[i*i/2::i] = False
return 2*numpy.nonzero(sieve)[0][1::]+1

A Faster & more memory-wise generator would be:

import numpy
def primesgen1(n):
""" Input n>=6, Generates all primes < n """
sieve1 = numpy.ones(n/6+1, dtype=numpy.bool)
sieve5 = numpy.ones(n/6  , dtype=numpy.bool)
sieve1[0] = False
yield 2; yield 3;
for i in xrange(int(n**0.5)/6+1):
if sieve1[i]:
k=6*i+1; yield k;
sieve1[ ((k*k)/6) ::k] = False
sieve5[(k*k+4*k)/6::k] = False
if sieve5[i]:
k=6*i+5; yield k;
sieve1[ ((k*k)/6) ::k] = False
sieve5[(k*k+2*k)/6::k] = False
for i in xrange(i+1,n/6):
if sieve1[i]: yield 6*i+1
if sieve5[i]: yield 6*i+5
if n%6 > 1:
if sieve1[i+1]: yield 6*(i+1)+1

or with a bit more code:

import numpy
def primesgen(n):
""" Input n>=30, Generates all primes < n """
size = n/30 + 1
sieve01 = numpy.ones(size, dtype=numpy.bool)
sieve07 = numpy.ones(size, dtype=numpy.bool)
sieve11 = numpy.ones(size, dtype=numpy.bool)
sieve13 = numpy.ones(size, dtype=numpy.bool)
sieve17 = numpy.ones(size, dtype=numpy.bool)
sieve19 = numpy.ones(size, dtype=numpy.bool)
sieve23 = numpy.ones(size, dtype=numpy.bool)
sieve29 = numpy.ones(size, dtype=numpy.bool)
sieve01[0] = False
yield 2; yield 3; yield 5;
for i in xrange(int(n**0.5)/30+1):
if sieve01[i]:
k=30*i+1; yield k;
sieve01[     (k*k)/30::k] = False
sieve07[(k*k+ 6*k)/30::k] = False
sieve11[(k*k+10*k)/30::k] = False
sieve13[(k*k+12*k)/30::k] = False
sieve17[(k*k+16*k)/30::k] = False
sieve19[(k*k+18*k)/30::k] = False
sieve23[(k*k+22*k)/30::k] = False
sieve29[(k*k+28*k)/30::k] = False
if sieve07[i]:
k=30*i+7; yield k;
sieve01[(k*k+ 6*k)/30::k] = False
sieve07[(k*k+24*k)/30::k] = False
sieve11[(k*k+16*k)/30::k] = False
sieve13[(k*k+12*k)/30::k] = False
sieve17[(k*k+ 4*k)/30::k] = False
sieve19[     (k*k)/30::k] = False
sieve23[(k*k+22*k)/30::k] = False
sieve29[(k*k+10*k)/30::k] = False
if sieve11[i]:
k=30*i+11; yield k;
sieve01[     (k*k)/30::k] = False
sieve07[(k*k+ 6*k)/30::k] = False
sieve11[(k*k+20*k)/30::k] = False
sieve13[(k*k+12*k)/30::k] = False
sieve17[(k*k+26*k)/30::k] = False
sieve19[(k*k+18*k)/30::k] = False
sieve23[(k*k+ 2*k)/30::k] = False
sieve29[(k*k+ 8*k)/30::k] = False
if sieve13[i]:
k=30*i+13; yield k;
sieve01[(k*k+24*k)/30::k] = False
sieve07[(k*k+ 6*k)/30::k] = False
sieve11[(k*k+ 4*k)/30::k] = False
sieve13[(k*k+18*k)/30::k] = False
sieve17[(k*k+16*k)/30::k] = False
sieve19[     (k*k)/30::k] = False
sieve23[(k*k+28*k)/30::k] = False
sieve29[(k*k+10*k)/30::k] = False
if sieve17[i]:
k=30*i+17; yield k;
sieve01[(k*k+ 6*k)/30::k] = False
sieve07[(k*k+24*k)/30::k] = False
sieve11[(k*k+26*k)/30::k] = False
sieve13[(k*k+12*k)/30::k] = False
sieve17[(k*k+14*k)/30::k] = False
sieve19[     (k*k)/30::k] = False
sieve23[(k*k+ 2*k)/30::k] = False
sieve29[(k*k+20*k)/30::k] = False
if sieve19[i]:
k=30*i+19; yield k;
sieve01[     (k*k)/30::k] = False
sieve07[(k*k+24*k)/30::k] = False
sieve11[(k*k+10*k)/30::k] = False
sieve13[(k*k+18*k)/30::k] = False
sieve17[(k*k+ 4*k)/30::k] = False
sieve19[(k*k+12*k)/30::k] = False
sieve23[(k*k+28*k)/30::k] = False
sieve29[(k*k+22*k)/30::k] = False
if sieve23[i]:
k=30*i+23; yield k;
sieve01[(k*k+24*k)/30::k] = False
sieve07[(k*k+ 6*k)/30::k] = False
sieve11[(k*k+14*k)/30::k] = False
sieve13[(k*k+18*k)/30::k] = False
sieve17[(k*k+26*k)/30::k] = False
sieve19[     (k*k)/30::k] = False
sieve23[(k*k+ 8*k)/30::k] = False
sieve29[(k*k+20*k)/30::k] = False
if sieve29[i]:
k=30*i+29; yield k;
sieve01[     (k*k)/30::k] = False
sieve07[(k*k+24*k)/30::k] = False
sieve11[(k*k+20*k)/30::k] = False
sieve13[(k*k+18*k)/30::k] = False
sieve17[(k*k+14*k)/30::k] = False
sieve19[(k*k+12*k)/30::k] = False
sieve23[(k*k+ 8*k)/30::k] = False
sieve29[(k*k+ 2*k)/30::k] = False
for i in xrange(i+1,n/30):
if sieve01[i]: yield 30*i+1
if sieve07[i]: yield 30*i+7
if sieve11[i]: yield 30*i+11
if sieve13[i]: yield 30*i+13
if sieve17[i]: yield 30*i+17
if sieve19[i]: yield 30*i+19
if sieve23[i]: yield 30*i+23
if sieve29[i]: yield 30*i+29
i += 1
mod30 = n%30
if mod30 > 1:
if sieve01[i]: yield 30*i+1
if mod30 > 7:
if sieve07[i]: yield 30*i+7
if mod30 > 11:
if sieve11[i]: yield 30*i+11
if mod30 > 13:
if sieve13[i]: yield 30*i+13
if mod30 > 17:
if sieve17[i]: yield 30*i+17
if mod30 > 19:
if sieve19[i]: yield 30*i+19
if mod30 > 23:
if sieve23[i]: yield 30*i+23

Ps: If you have any suggestions about how to speed up this code, anything from change order of operations to pre-computing anything, please comment.

-
Well, it would be faster because you're using list comprehension and not generator. Nice one, I'll add the benchmark when I get the time. –  Xavier Ho May 25 '10 at 21:54
Just a thought, can you explain how your m = n // i-i is analogous to my flags[i2::i<<1]? Since I ignored iterating through all the multiples of two, I also avoided it in the 'step' in the slicing syntax. The way you're doing it is still iterating over every multiple of itself. –  Xavier Ho May 25 '10 at 22:23
sorry man i am new to programing i don't even know what << means at this point. And i am not sure if my code is faster than yours or exactly why, my guess was you calling len(). Maybe this can help, sorry if off the point. well math tells us the the numbers the the numbers of multiples o i in range(1,n) is equal to n//i (integer division), the number of multiples o i in range (1,ii) is i (1i,2i,3i,...ii) so in [ii::i] we have multiples of i in range(1,n) - multiples of i in range(1,ii) +1 (+one because we want to count ii too) thus the formula len(sieve[i*i::i]) equal n//i-i+1. –  Robert William Hanks May 25 '10 at 23:13
In my code i ignore multiples of two completely and i don't flag than out of my sieve since i rely in the step of the range function being 2 for sieving and forming the primes list.(i only add [2] to the list at the end) –  Robert William Hanks May 25 '10 at 23:23
On a side note one can skip the prime 3 completely too if the initialization of the sieve is made something like this [False,True,True] * ((n+1)//3) see my second example primes2(), its bit faster. Please ensure the the input is one less than a multiple of 3.in my machine the difference is so small that i did not care for a better code. –  Robert William Hanks May 26 '10 at 0:14

Here's a version that I wrote a while back; it might be interesting to compare with yours for speed. It doesn't do anything about the space problems, though (in fact, they're probably worse than with your version).

from math import sqrt

def basicSieve(n):
"""Given a positive integer n, generate the primes < n."""
s = [1]*n
for p in xrange(2, 1+int(sqrt(n-1))):
if s[p]:
a = p*p
s[a::p] = [0] * -((a-n)//p)
for p in xrange(2, n):
if s[p]:
yield p

I have faster versions, using a wheel, but they're much more complicated. Original source is here.

Okay, here's the version using a wheel. wheelSieve is the main entry point.

from math import sqrt
from bisect import bisect_left

def basicSieve(n):
"""Given a positive integer n, generate the primes < n."""
s = [1]*n
for p in xrange(2, 1+int(sqrt(n-1))):
if s[p]:
a = p*p
s[a::p] = [0] * -((a-n)//p)
for p in xrange(2, n):
if s[p]:
yield p

class Wheel(object):
"""Class representing a wheel.

Attributes:
primelimit -> wheel covers primes < primelimit.
For example, given a primelimit of 6
the wheel primes are 2, 3, and 5.
primes -> list of primes less than primelimit
size -> product of the primes in primes;  the modulus of the wheel
units -> list of units modulo size
phi -> number of units

"""
def __init__(self, primelimit):
self.primelimit = primelimit
self.primes = list(basicSieve(primelimit))

# compute the size of the wheel
size = 1
for p in self.primes:
size *= p
self.size = size

# find the units by sieving
units = [1] * self.size
for p in self.primes:
units[::p] = [0]*(self.size//p)
self.units = [i for i in xrange(self.size) if units[i]]

# number of units
self.phi = len(self.units)

def to_index(self, n):
"""Compute alpha(n), where alpha is an order preserving map
from the set of units modulo self.size to the nonnegative integers.

If n is not a unit, the index of the first unit greater than n
is given."""
return bisect_left(self.units, n % self.size) + n // self.size * self.phi

def from_index(self, i):
"""Inverse of to_index."""

return self.units[i % self.phi] + i // self.phi * self.size

def wheelSieveInner(n, wheel):
"""Given a positive integer n and a wheel, find the wheel indices of
all primes that are less than n, and that are units modulo the
wheel modulus.
"""

# renaming to avoid the overhead of attribute lookups
U = wheel.units
wS = wheel.size
# inverse of unit map
UI = dict((u, i) for i, u in enumerate(U))
nU = len(wheel.units)

sqroot = 1+int(sqrt(n-1)) # ceiling of square root of n

# corresponding index (index of next unit up)
sqrti = bisect_left(U, sqroot % wS) + sqroot//wS*nU
upper = bisect_left(U, n % wS) + n//wS*nU
ind2 = bisect_left(U, 2 % wS) + 2//wS*nU

s = [1]*upper
for i in xrange(ind2, sqrti):
if s[i]:
q = i//nU
u = U[i%nU]
p = q*wS+u
u2 = u*u
aq, au = (p+u)*q+u2//wS, u2%wS
wp = p * nU
for v in U:
# eliminate entries corresponding to integers
# congruent to p*v modulo p*wS
uvr = u*v%wS
m = aq + (au > uvr)
bot = (m + (q*v + u*v//wS - m) % p) * nU + UI[uvr]
s[bot::wp] = [0]*-((bot-upper)//wp)
return s

def wheelSieve(n, wheel=Wheel(10)):
"""Given a positive integer n, generate the list of primes <= n."""
n += 1
wS = wheel.size
U = wheel.units
nU = len(wheel.units)
s = wheelSieveInner(n, wheel)
return (wheel.primes[:bisect_left(wheel.primes, n)] +
[p//nU*wS + U[p%nU] for p in xrange(bisect_left(U, 2 % wS)
+ 2//wS*nU, len(s)) if s[p]])

As to what a wheel is: well, you know that (apart from 2), all primes are odd, so most sieves miss out all the even numbers. Similarly, you can go a bit further and notice that all primes (except 2 and 3) are congruent to 1 or 5 modulo 6 (== 2 * 3), so you can get away with only storing entries for those numbers in your sieve. The next step up is to note that all primes (except 2, 3 and 5) are congruent to one of 1, 7, 11, 13, 17, 19, 23, 29 (modulo 30) (here 30 == 2*3*5), and so on.

-
Care to explain the whee? Is it something similar to ... Sieve of Akin? –  Xavier Ho May 24 '10 at 15:00
@Mark: 0.28 seconds! You're our first-up to the finals! =D ideone.com/yIENn –  Xavier Ho May 24 '10 at 15:03
@Mark: And.. naturally, MemoryError @ 1,000,000,000. =/ ideone.com/YeBOR. I'm curious about your faster version now. –  Xavier Ho May 24 '10 at 15:04
Thanks! I'll read over the code and try to understand it. Will report my status later. –  Xavier Ho May 24 '10 at 15:08
No, Sieve of Atkin introduces a fundamentally new idea, which is to use quadratic forms; I think it's only asymptotically faster than a basic sieve of eratosthenes + wheel, and the point at which it becomes faster is likely to be > 1000000 (depending on implementations, of course). The idea of using a wheel has been around a good while. I've added a link to the place I first posted this; there's an implementation using a wheel there. –  Mark Dickinson May 24 '10 at 15:09

One speed improvement you can make using bitstring is to use the 'set' method when you exclude multiples of the current number.

So the vital section becomes

for i in range(3, limit, 2):
if flags[i]:
yield i
if i <= sub_limit:
flags.set(1, range(i*3, limit, i*2))

On my machine this runs about 3 times faster than the original.

My other thought was to use the bitstring to represent only the odd numbers. You could then find the unset bits using flags.findall([0]) which returns a generator. Not sure if that would be much faster (finding bit patterns isn't terribly easy to do efficiently).

[Full disclosure: I wrote the bitstring module, so I've got some pride at stake here!]

As a comparison I've also taken the guts out of the bitstring method so that it's doing it in the same way, but without range checking etc. I think this gives a reasonable lower limit for pure Python that works for a billion elements (without changing the algorithm, which I think is cheating!)

def prime_pure(limit=1000000):
yield 2
flags = bytearray((limit + 7) // 8)
sub_limit = int(limit**0.5)
for i in xrange(3, limit, 2):
byte, bit = divmod(i, 8)
if not flags[byte] & (128 >> bit):
yield i
if i <= sub_limit:
for j in xrange(i*3, limit, i*2):
byte, bit = divmod(j, 8)
flags[byte] |= (128 >> bit)

On my machine this runs in about 0.62 seconds for a million elements, which means it's about a quarter of the speed of the bitarray answer. I think that's quite reasonable for pure Python.

-
@Scott: Ah cool, nice to have the author of bitstring here! I'll try that too, will let you know shortly of the result. And yes, I am using 2.0.0 beta 1, as I only downloaded the library an hour ago. –  Xavier Ho May 24 '10 at 13:57
@Scott: Just did a test. 11.2 seconds with your fix. Still a bit slow. Got any more ideas? –  Xavier Ho May 24 '10 at 13:59
Couple more ideas above. I'm guessing that should bring your time down to about 7 seconds. –  Scott Griffiths May 24 '10 at 14:52
@Scott: Thanks. But my original code runs at 0.32 seconds. See: ideone.com/wCJm5. But thanks for the idea and input! I'll be watching this topic for a while. –  Xavier Ho May 24 '10 at 14:57
I thought the challenge was for the fastest sieve code to produce primes up to a billion, not a million. The bitstring code will work for a billion, whereas your original code doesn't, so I think bitstring is winning so far! As an aside, using Python 2 I get the million case down to 4.5 seconds. –  Scott Griffiths May 24 '10 at 15:29

Python's integer types can be of arbitrary size, so you shouldn't need a clever bitstring library to represent a set of bits, just a single number.

Here's the code. It handles a limit of 1,000,000 with ease, and can even handle 10,000,000 without complaining too much:

def multiples_of(n, step, limit):
bits = 1 << n
old_bits = bits
max = 1 << limit
while old_bits < max:
old_bits = bits
bits += bits << step
step *= 2
return old_bits

def prime_numbers(limit=10000000):
'''Prime number generator. Yields the series
2, 3, 5, 7, 11, 13, 17, 19, 23, 29 ...
using Sieve of Eratosthenes.
'''
yield 2
sub_limit = int(limit**0.5)
flags = ((1 << (limit - 2)) - 1) << 2
# Step through all the odd numbers
for i in xrange(3, limit, 2):
if not (flags & (1 << i)):
continue
yield i
# Exclude further multiples of the current prime number
if i <= sub_limit:
flags &= ~multiples_of(i * 3, i << 1, limit)

The multiples_of function avoids the cost of setting every single multiple individually. It sets the initial bit, shifts it by the initial step (i << 1) and adds the result to itself. It then doubles the step, so that the next shift copies both bits, and so on until it reaches the limit. This sets all the multiples of a number up to the limit in O(log(limit)) time.

-
@Marcelo: Yeah, I'm aware of that. I could also write a few functions that do the bit manipulations and see if it's much faster. It's something I'm working on, at this moment. Edit: The issue is, even performing 2 << 1000000 takes more than 10 seconds. –  Xavier Ho May 24 '10 at 13:46
@Xavier: No it doesn't. It might be that printing the result of that operation takes that long. Try x = 2 << 1000000 instead. –  u0b34a0f6ae May 24 '10 at 13:52
@kaizer.se: Hm, good point. I'll go and see what I can do with that. –  Xavier Ho May 24 '10 at 13:53
This seems unlikely to work well, unless you can find some way of doing a whole bunch of bit-sets together: each bit-operation on a long will generate a whole new long, so is an O(n) operation. –  Mark Dickinson May 24 '10 at 14:06
@Mark: Yes, I just tried it. 1.3 seconds to generate up to 100,000, and when I tried 1,000,000 it takes more than 20 seconds (in fact, it's still not finished as I type this). This is not viable by bit shifting, and I need direct access to change the bits. –  Xavier Ho May 24 '10 at 14:09

One option you may want to look at is just compiling a C/C++ module so you have direct access to the bit-twiddling features. AFAIK you could write something of that nature and only return the results on completion of the calculations performed in C/C++. Now that I'm typing this you may also look at numpy which does store arrays as native C for speed. I don't know if that will be any faster than the bitstring module, though!

-
Thanks, Wayne. You're right that it is an option - just not exactly an easy one. I'll be happy when you write one, of course. ;] –  Xavier Ho May 24 '10 at 14:33
Heh. It's actually not that bad if you already know C/C++ - the biggest pain is figuring out how to tell your scripts the right thing for scons to take care of the build process. Then you just have to deal with ~ 125 MB worth of bits (1 Billion bits/8 bytes == 125 Million Bytes). –  Wayne Werner May 24 '10 at 15:26
True. I know C++, but I know Python is written in C, and I haven't written a Python module in C/C++ myself. So that is a little distant yet. It's okay, though, we're getting some brilliant answers here on SO, as always. :] –  Xavier Ho May 24 '10 at 15:35

Another really stupid option, but that can be of help if you really need a large list of primes number available very fast. Say, if you need them as a tool to answer project Euler's problems (if the problem is just optimizing your code as a mind game it's irrelevant).

Use any slow solution to generate list and save it to a python source file, says primes.py that would just contain:

primes = [ a list of a million primes numbers here ]

Now to use them you just have to do import primes and you get them with minimal memory footprint at the speed of disk IO. Complexity is number of primes :-)

Even if you used a poorly optimized solution to generate this list, it will only be done once and it does not matter much.

You could probably make it even faster using pickle/unpickle, but you get the idea...

-

You could use a segmented Sieve of Eratosthenes. The memory used for each segment is reused for the next segment.

-
By 'segmented' do you mean a memory block for a certain number range, and once it's exhausted, you create the next number range on the same memory block? –  Xavier Ho Feb 2 '12 at 23:00
Yes. Google for 'segmented Sieve of Eratosthenes'. –  user448810 Feb 6 '12 at 21:05