Legendre prime counting function: Difference between revisions
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Revision as of 16:49, 3 February 2022
You are encouraged to solve this task according to the task description, using any language you may know.
The prime-counting function π(n) computes the number of primes not greater than n. Legendre was the first mathematician to create a formula to compute π(n) based on the inclusion/exclusion principle.
To calculate:
Define
φ(x, 0) = x φ(x, a) = φ(x, a−1) − φ(⌊x/pa⌋, a−1), where pa is the ath prime number.
then
π(n) = 0 when n < 2 π(n) = φ(n, a) + a - 1, where a = π(√n), n ≥ 2
The Legendre formula still requires the use of a sieve to enumerate primes; however it's only required to sieve up to the √n, and for counting primes, the Legendre method is generally much faster than sieving up to n.
- Task
Calculate π(n) for values up to 1 billion. Show π(n) for n = 1, 10, 100, ... 109.
For this task, you may refer to a prime number sieve (such as the Sieve of Eratosthenes or the extensible sieve) in an external library to enumerate the primes required by the formula. Also note that it will be necessary to memoize the results of φ(x, a) in order to have reasonable performance, since the recurrence relation would otherwise take exponential time.
C++
<lang cpp>#include <cmath>
- include <iostream>
- include <unordered_map>
- include <vector>
std::vector<int> generate_primes(int limit) {
std::vector<bool> sieve(limit >> 1, true); for (int p = 3, s = 9; s < limit; p += 2) { if (sieve[p >> 1]) { for (int q = s; q < limit; q += p << 1) sieve[q >> 1] = false; } s += (p + 1) << 2; } std::vector<int> primes; if (limit > 2) primes.push_back(2); for (int i = 1; i < sieve.size(); ++i) { if (sieve[i]) primes.push_back((i << 1) + 1); } return primes;
}
class legendre_prime_counter { public:
explicit legendre_prime_counter(int limit); int prime_count(int n);
private:
int phi(int x, int a); std::vector<int> primes; std::unordered_map<int, std::unordered_map<int, int>> phi_cache;
};
legendre_prime_counter::legendre_prime_counter(int limit) :
primes(generate_primes(static_cast<int>(std::sqrt(limit)))) {}
int legendre_prime_counter::prime_count(int n) {
if (n < 2) return 0; int a = prime_count(static_cast<int>(std::sqrt(n))); return phi(n, a) + a - 1;
}
int legendre_prime_counter::phi(int x, int a) {
if (a == 0) return x; auto& map = phi_cache[x]; auto i = map.find(a); if (i != map.end()) return i->second; int result = phi(x, a - 1) - phi(x / primes[a - 1], a - 1); map[a] = result; return result;
}
int main() {
legendre_prime_counter counter(1000000000); for (int i = 0, n = 1; i < 10; ++i, n *= 10) std::cout << "10^" << i << "\t" << counter.prime_count(n) << '\n';
}</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
CoffeeScript
<lang CoffeeScript> sorenson = require('sieve').primes # Sorenson's extensible sieve from task: Extensible Prime Generator
- put in outer scope to avoid recomputing the cache
memoPhi = {} primes = []
isqrt = (x) -> Math.floor Math.sqrt x
pi = (n) ->
phi = (x, a) -> y = memoPhix,a return y unless y is undefined
memoPhix,a = if a is 0 then x else p = primes[a - 1] throw "You need to generate at least #{a} primes." if p is undefined phi(x, a - 1) - phi(x // p, a - 1)
if n < 2 0 else a = pi isqrt n phi(n, a) + a - 1
maxPi = 1e9 gen = sorenson() primes = while (p = gen.next().value) < isqrt maxPi then p
n = 1 for i in [0..9]
console.log "10^#{i}\t#{pi(n)}" n *= 10
</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
Erlang
<lang Erlang> -mode(native).
-define(LIMIT, 1000000000).
main(_) ->
put(primes, array:from_list(primality:sieve(floor(math:sqrt(?LIMIT))))), ets:new(memphi, [set, named_table, protected]), output(0, 9).
nthprime(N) -> array:get(N - 1, get(primes)).
output(A, B) -> output(A, B, 1). output(A, B, _) when A > B -> ok; output(A, B, N) ->
io:format("10^~b ~b~n", [A, pi(N)]), output(A + 1, B, N * 10).
pi(N) ->
Primes = get(primes), Last = array:get(array:size(Primes) - 1, Primes), if N =< Last -> small_pi(N); true -> A = pi(floor(math:sqrt(N))), phi(N, A) + A - 1 end.
phi(X, 0) -> X; phi(X, A) ->
case ets:lookup(memphi, {X, A}) of [] -> Phi = phi(X, A-1) - phi(X div nthprime(A), A-1), ets:insert(memphi, {{X, A}, Phi}), Phi;
[{{X, A}, Phi}] -> Phi end.
% Use binary search to count primes that we have already listed. small_pi(N) ->
Primes = get(primes), small_pi(N, Primes, 0, array:size(Primes)).
small_pi(_, _, L, H) when L >= (H - 1) -> L + 1; small_pi(N, Primes, L, H) ->
M = (L + H) div 2, P = array:get(M, Primes), if N > P -> small_pi(N, Primes, M, H); N < P -> small_pi(N, Primes, 0, M); true -> M + 1 end.
</lang>
- Output:
10^0 1 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
Go
This runs in about 2.2 seconds which is surprisingly slow for Go. However, Go has the same problem as Wren in not being able to use lists for map keys. I tried using a 2-element array for the key but this was a second slower than the Cantor function.
The alternative of sieving a billion numbers and then counting them takes about 4.8 seconds using the present library function though this could be cut to 1.2 seconds using a third party library such as primegen. <lang go>package main
import (
"fmt" "log" "math" "rcu"
)
var limit = int(math.Sqrt(1e9)) var primes = rcu.Primes(limit) var memoPhi = make(map[int]int)
func cantorPair(x, y int) int {
if x < 0 || y < 0 { log.Fatal("Arguments must be non-negative integers.") } return (x*x + 3*x + 2*x*y + y + y*y) / 2
}
func phi(x, a int) int {
if a == 0 { return x } key := cantorPair(x, a) if v, ok := memoPhi[key]; ok { return v } pa := primes[a-1] memoPhi[key] = phi(x, a-1) - phi(x/pa, a-1) return memoPhi[key]
}
func pi(n int) int {
if n < 2 { return 0 } a := pi(int(math.Sqrt(float64(n)))) return phi(n, a) + a - 1
}
func main() {
for i, n := 0, 1; i <= 9; i, n = i+1, n*10 { fmt.Printf("10^%d %d\n", i, pi(n)) }
}</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
Java
<lang java>import java.util.*;
public class LegendrePrimeCounter {
public static void main(String[] args) { LegendrePrimeCounter counter = new LegendrePrimeCounter(1000000000); for (int i = 0, n = 1; i < 10; ++i, n *= 10) System.out.printf("10^%d\t%d\n", i, counter.primeCount((n))); }
private List<Integer> primes; private Map<Integer, Map<Integer, Integer>> phiCache = new HashMap<>();
public LegendrePrimeCounter(int limit) { primes = generatePrimes((int)Math.sqrt((double)limit)); }
public int primeCount(int n) { if (n < 2) return 0; int a = primeCount((int)Math.sqrt((double)n)); return phi(n, a) + a - 1; }
private int phi(int x, int a) { if (a == 0) return x; Map<Integer, Integer> map = phiCache.computeIfAbsent(x, k -> new HashMap<>()); Integer value = map.get(a); if (value != null) return value; int result = phi(x, a - 1) - phi(x / primes.get(a - 1), a - 1); map.put(a, result); return result; }
private static List<Integer> generatePrimes(int limit) { boolean[] sieve = new boolean[limit >> 1]; Arrays.fill(sieve, true); for (int p = 3, s = 9; s < limit; p += 2) { if (sieve[p >> 1]) { for (int q = s; q < limit; q += p << 1) sieve[q >> 1] = false; } s += (p + 1) << 2; } List<Integer> primes = new ArrayList<>(); if (limit > 2) primes.add(2); for (int i = 1; i < sieve.length; ++i) { if (sieve[i]) primes.add((i << 1) + 1); } return primes; }
}</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
Haskell
Memoization utilities: <lang haskell>data Memo a = Node a (Memo a) (Memo a)
deriving Functor
memo :: Integral a => Memo p -> a -> p memo (Node a l r) n
| n == 0 = a | odd n = memo l (n `div` 2) | otherwise = memo r (n `div` 2 - 1)
nats :: Integral a => Memo a nats = Node 0 ((+1).(*2) <$> nats) ((*2).(+1) <$> nats)
memoize :: Integral a => (a -> b) -> a -> b memoize f = memo (f <$> nats)
memoize2 :: (Integral a, Integral b) => (a -> b -> c) -> a -> b -> c memoize2 f = memoize (memoize . f)
memoList :: [b] -> Integer -> b memoList = memo . mkList
where mkList (x:xs) = Node x (mkList l) (mkList r) where (l,r) = split xs split [] = ([],[]) split [x] = ([x],[]) split (x:y:xs) = let (l,r) = split xs in (x:l, y:r)</lang>
Computation of Legendre function: <lang haskell>isqrt :: Integer -> Integer isqrt n = go n 0 (q `shiftR` 2)
where q = head $ dropWhile (< n) $ iterate (`shiftL` 2) 1 go z r 0 = r go z r q = let t = z - r - q in if t >= 0 then go t (r `shiftR` 1 + q) (q `shiftR` 2) else go z (r `shiftR` 1) (q `shiftR` 2)
phi = memoize2 phiM
where phiM x 0 = x phiM x a = phi x (a-1) - phi (x `div` p a) (a - 1) p = memoList (undefined : primes)
legendrePi :: Integer -> Integer legendrePi n
| n < 2 = 0 | otherwise = phi n a + a - 1 where a = legendrePi (floor (sqrt (fromInteger n)))
main = mapM_ (\n -> putStrLn $ show n ++ "\t" ++ show (legendrePi (10^n))) [1..7]</lang>
λ> main 1 4 2 25 3 168 4 1229 5 9592 6 78498 7 664579 8 5761455 9 50847534
J
This is "almost a primitive" in J:
<lang J> require'format/printf'
Template:Echo '10^%d: %d' sprintf y;1+p:inv 10^y"0 i.10
10^0: 1 10^1: 5 10^2: 26 10^3: 169 10^4: 1230 10^5: 9593 10^6: 78499 10^7: 664580 10^8: 5761456 10^9: 50847535</lang>
jq
Adapted from Wren
Works with gojq, the Go implementation of jq (*)
The following implementation freely uses the following conveniences of jq syntax:
- the jq expression {$x} is an abbreviation for {"x" : $x}
- the jq expression {x} is an abbreviation for {"x" : .x}
The key-value pairs can be similarly specified in JSON objects with multiple keys.
(*) gojq struggles to get beyond [5,9592] without using huge amounts of memory; jq becomes excessively slow after [7,664579].
Preliminaries <lang jq># For the sake of the accuracy of integer arithmetic when using gojq: def power($b): . as $in | reduce range(0;$b) as $i (1; . * $in);
- Input: $n, which is assumed to be positive integer,
- Output: an array of primes less than or equal to $n (e.g. 10|eratosthenes #=> [2,3,5,7]
def eratosthenes:
# erase(i) sets .[i*j] to false for integral j > 1 def erase(i): if .[i] then reduce range(2; (1 + length) / i) as $j (.; .[i * $j] = false) else . end;
(. + 1) as $n | (($n|sqrt) / 2) as $s | [null, null, range(2; $n)] | reduce (2, 1 + (2 * range(1; $s))) as $i (.; erase($i)) | map(select(.)) ;
</lang> Phi and the Legendre Counting Function <lang jq>def legendre:
(sqrt | floor + 1 | eratosthenes) as $primes
# Input: {x, a} # Output: {phi: phi(x,a), memo} where .memo might have been updated | def phi: . as {x: $x, a: $a, memo: $memo} | if $a == 0 then {phi: $x, $memo} else "\($x),\($a)" as $ix | $memo[ $ix ] as $m | if $m then {phi: $m, $memo} else .a += -1 | phi as {phi: $phi1, memo: $memo} | (($x / $primes[$a - 1])|floor) as $x | ({$x, a, $memo} | phi) as {phi: $phi2, memo: $memo} | ($phi1 - $phi2) as $phi | {$phi, $memo}
| .memo[$ix] = $phi
end end;
def l: . as $n | if . < 2 then 0 else ($n|sqrt|floor|l) as $a | ({x: $n, $a, memo: {}} | phi).phi + $a - 1 end;
l;
def task:
range(0;10) | . as $i | [., (10|power($i)|legendre)] ;
task</lang>
- Output:
[0,0] [1,4] [2,25] [3,168] [4,1229] [5,9592] [6,78498] [7,664579] <terminated>
Julia
Using the Julia Primes library
This would be faster with a custom sieve that only counted instead of making a bitset, instead of the more versatile library function. <lang julia>using Primes
function primepi(N)
delta = round(Int, N^0.8) return sum(i -> count(primesmask(i, min(i + delta - 1, N))), 1:delta:N)
end
@time for power in 0:9
println("10^", rpad(power, 5), primepi(10^power))
end
</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534 1.935556 seconds (1.64 k allocations: 415.526 MiB, 2.15% gc time)
Using the method given in the task
Run twice to show the benefits of precomputing the library prime functions. <lang julia>using Primes
const maxpi = 1_000_000_000 const memoφ = Dict{Vector{Int}, Int}() const pₐ = primes(isqrt(maxpi))
function π(n)
function φ(x, a) if !haskey(memoφ, [x, a]) memoφx, a = a == 0 ? x : φ(x, a - 1) - φ(x ÷ pₐ[a], a - 1) end return memoφx, a end
n < 2 && return 0 a = π(isqrt(n)) return φ(n, a) + a - 1
end
@time for i in 0:9
println("10^", rpad(i, 5), π(10^i))
end
@time for i in 0:9
println("10^", rpad(i, 5), π(10^i))
end
</lang>
- Output:
10^0 1 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534 12.939211 seconds (69.44 M allocations: 3.860 GiB, 27.98% gc time, 1.58% compilation time) 10^0 1 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534 0.003234 seconds (421 allocations: 14.547 KiB)
Mathematica/Wolfram Language
<lang Mathematica>ClearAll[Phi,pi] $RecursionLimit = 10^6; Phi[x_, 0] := x Phi[x_, a_] := Phi[x, a] = Phi[x, a - 1] - Phi[Floor[x/Prime[a]], a - 1] pi[n_] := Module[{a}, If[n < 2, 0, a = pi[Floor[Sqrt[n]]]; Phi[n, a] + a - 1]] Scan[Print[pi[10^#]] &, Range[0,9]]</lang>
- Output:
0 4 25 168 1229 9592 78498 664579 5761455 50847534
Nim
The program runs in 2.2 seconds on our laptop. Using int32 instead of naturals (64 bits on our 64 bits computer) saves 0.3 second. Using an integer rather than a tuple as key (for instance x shl 32 or a
) saves 0.4 second.
<lang Nim>import math, strutils, sugar, tables
const
N = 1_000_000_000 S = sqrt(N.toFloat).int
var composite: array[3..S, bool] for n in countup(3, S, 2):
if n * n > S: break if not composite[n]: for k in countup(n * n, S, 2 * n): composite[k] = true
- Prime list. Add a dummy zero to start at index 1.
let primes = @[0, 2] & collect(newSeq, for n in countup(3, S, 2): (if not composite[n]: n))
var cache: Table[(Natural, Natural), Natural]
proc phi(x, a: Natural): Natural =
if a == 0: return x let pair = (x, a) if pair in cache: return cache[pair] result = phi(x, a - 1) - phi(x div primes[a], a - 1) cache[pair] = result
proc π(n: Natural): Natural =
if n <= 2: return 0 let a = π(sqrt(n.toFloat).Natural) result = phi(n, a) + a - 1
var n = 1 for i in 0..9:
echo "π(10^$1) = $2".format(i, π(n)) n *= 10</lang>
- Output:
π(10^0) = 0 π(10^1) = 4 π(10^2) = 25 π(10^3) = 168 π(10^4) = 1229 π(10^5) = 9592 π(10^6) = 78498 π(10^7) = 664579 π(10^8) = 5761455 π(10^9) = 50847534
Perl
<lang perl>#!/usr/bin/perl
use strict; # https://rosettacode.org/wiki/Legendre_prime_counting_function use warnings; no warnings qw(recursion); use ntheory qw( nth_prime prime_count );
my (%cachephi, %cachepi);
sub phi
{ return $cachephi{"@_"} //= do { my ($x, $aa) = @_; $aa <= 0 ? $x : phi($x, $aa - 1) - phi(int $x / nth_prime($aa), $aa - 1) }; }
sub pi
{ return $cachepi{$_[0]} //= do { my $n = shift; $n < 2 ? 0 : do{ my $aa = pi(int sqrt $n); phi($n, $aa) + $aa - 1 } }; }
print "e n Legendre ntheory\n",
"- - -------- -------\n";
for (1 .. 9)
{ printf "%d %12d %10d %10d\n", $_, 10**$_, pi(10**$_), prime_count(10**$_); }</lang>
- Output:
e n Legendre ntheory - - -------- ------- 1 10 4 4 2 100 25 25 3 1000 168 168 4 10000 1229 1229 5 100000 9592 9592 6 1000000 78498 78498 7 10000000 664579 664579 8 100000000 5761455 5761455 9 1000000000 50847534 50847534
Phix
with javascript_semantics -- -- While a phix dictionary can handle keys of {x,a}, for this -- task performance was dreadful (7,612,479 entries, >3mins), -- so instead memophix maps known x to an index to memophia -- which holds the full [1..a] for each x, dropping to a much -- more respectable (albeit not super-fast) 14s -- constant memophix = new_dict() sequence memophia = {} -- 1..a (max 3401) for each x function phi(integer x, a) if a=0 then return x end if integer adx = getd(x,memophix), res if adx=NULL then memophia = append(memophia,repeat(-1,a)) adx = length(memophia) setd(x,adx,memophix) else object ma = memophia[adx] integer l = length(ma) if a>l then memophia[adx] = 0 -- kill refcount memophia[adx] = ma & repeat(-1,a-l) else res = ma[a] if res>=0 then return res end if end if ma = 0 -- kill refcount end if res = phi(x, a-1) - phi(floor(x/get_prime(a)), a-1) memophia[adx][a] = res return res end function function pi(integer n) if n<2 then return 0 end if integer a = pi(floor(sqrt(n))) return phi(n, a) + a - 1 end function atom t0 = time() for i=0 to iff(platform()=JS?8:9) do printf(1,"10^%d %d\n",{i,pi(power(10,i))}) -- printf(1,"10^%d %d\n",{i,length(get_primes_le(power(10,i)))}) end for ?elapsed(time()-t0)
The commented-out length(get_primes_le()) gives the same results, in about the same time, and in both cases re-running the main loop a second time finishes near-instantly.
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534 "14.0s"
(It is about 4 times slower under pwa/p2js so output is limited to 10^8, unless you like staring at a blank screen for 52s)
Picat
Performance is surprisingly good, considering that the Picat's library SoE is very basic and that I recompute the base primes each time pi() is called. This version takes 23 seconds on my laptop, outperforming the CoffeeScript version which takes 30 seconds. <lang Picat> table(+, +, nt) phi(X, 0, _) = X. phi(X, A, Primes) = phi(X, A - 1, Primes) - phi(X // Primes[A], A - 1, Primes).
pi(N) = Count, N < 2 => Count = 0. pi(N) = Count =>
M = floor(sqrt(N)), A = pi(M), Count = phi(N, A, math.primes(M)) + A - 1.
main =>
N = 1, foreach (K in 0..9) writef("10^%w %w%n", K, pi(N)), N := N * 10.
</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534
Raku
Seems like an awful lot of pointless work. Using prime sieve anyway, why not just use it? <lang perl6>use Math::Primesieve;
my $sieve = Math::Primesieve.new;
say "10^$_\t" ~ $sieve.count: exp($_,10) for ^10;
say (now - INIT now) ~ ' elapsed seconds';</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534 0.071464489 elapsed seconds
Sidef
<lang ruby>func legendre_phi(x, a) is cached {
return x if (a <= 0) __FUNC__(x, a-1) - __FUNC__(idiv(x, a.prime), a-1)
}
func legendre_prime_count(n) is cached {
return 0 if (n < 2) var a = __FUNC__(n.isqrt) legendre_phi(n, a) + a - 1
}
print("e n Legendre builtin\n",
"- - -------- -------\n")
for n in (1 .. 9) {
printf("%d %12d %10d %10d\n", n, 10**n, legendre_prime_count(10**n), prime_count(10**n)) assert_eq(legendre_prime_count(10**n), prime_count(10**n))
}</lang>
- Output:
e n Legendre builtin - - -------- ------- 1 10 4 4 2 100 25 25 3 1000 168 168 4 10000 1229 1229 5 100000 9592 9592 6 1000000 78498 78498 7 10000000 664579 664579
Alternative implementation of the Legendre phi function, by counting k-rough numbers <= n.
<lang ruby>func rough_count (n,k) {
# Count of k-rough numbers <= n.
func (n,p) is cached {
if (p > n.isqrt) { return 1 }
if (p == 2) { return (n >> 1) }
if (p == 3) { var t = idiv(n,3) return (t - (t >> 1)) }
var u = 0 var t = idiv(n,p)
for (var q = 2; q < p; q.next_prime!) {
var v = __FUNC__(t - (t % q), q)
if (v == 1) { u += prime_count(q, p-1) break }
u += v }
t - u }(n*k, k)
}
func legendre_phi(n, a) {
rough_count(n, prime(a+1))
}
func legendre_prime_count(n) is cached {
return 0 if (n < 2) var a = __FUNC__(n.isqrt) legendre_phi(n, a) + a - 1
}
print("e n Legendre builtin\n",
"- - -------- -------\n")
for n in (1 .. 9) {
printf("%d %12d %10d %10d\n", n, 10**n, legendre_prime_count(10**n), prime_count(10**n)) assert_eq(legendre_prime_count(10**n), prime_count(10**n))
}</lang>
Swift
<lang swift>import Foundation
extension Numeric where Self: Strideable {
@inlinable public func power(_ n: Self) -> Self { return stride(from: 0, to: n, by: 1).lazy.map({_ in self }).reduce(1, *) }
}
func eratosthenes(limit: Int) -> [Int] {
guard limit >= 3 else { return limit < 2 ? [] : [2] }
let ndxLimit = (limit - 3) / 2 + 1 let bufSize = ((limit - 3) / 2) / 32 + 1 let sqrtNdxLimit = (Int(Double(limit).squareRoot()) - 3) / 2 + 1 var cmpsts = Array(repeating: 0, count: bufSize)
for ndx in 0..<sqrtNdxLimit where (cmpsts[ndx >> 5] & (1 << (ndx & 31))) == 0 { let p = ndx + ndx + 3 var cullPos = (p * p - 3) / 2
while cullPos < ndxLimit { cmpsts[cullPos >> 5] |= 1 << (cullPos & 31)
cullPos += p } }
return (-1..<ndxLimit).compactMap({i -> Int? in if i < 0 { return 2 } else { if cmpsts[i >> 5] & (1 << (i & 31)) == 0 { return .some(i + i + 3) } else { return nil } } })
}
let primes = eratosthenes(limit: 1_000_000_000)
func φ(_ x: Int, _ a: Int) -> Int {
struct Cache { static var cache = [String: Int]() }
guard a != 0 else { return x }
guard Cache.cache["\(x),\(a)"] == nil else { return Cache.cache["\(x),\(a)"]! }
Cache.cache["\(x),\(a)"] = φ(x, a - 1) - φ(x / primes[a - 1], a - 1)
return Cache.cache["\(x),\(a)"]!
}
func π(n: Int) -> Int {
guard n > 2 else { return 0 }
let a = π(n: Int(Double(n).squareRoot()))
return φ(n, a) + a - 1
}
for i in 0..<10 {
let n = 10.power(i)
print("π(10^\(i)) = \(π(n: n))")
}</lang>
- Output:
π(10^0) = 0 π(10^1) = 4 π(10^2) = 25 π(10^3) = 168 π(10^4) = 1229 π(10^5) = 9592 π(10^6) = 78498 π(10^7) = 664579 π(10^8) = 5761455 π(10^9) = 50847534
Wren
This runs in about 5.7 seconds which is not too bad for the Wren interpreter. As map keys cannot be lists, the Cantor pairing function has been used to represent [x, a] which is considerably faster than using a string based approach for memoization.
To sieve a billion numbers and then count the primes up to 10^k would take about 53 seconds in Wren so, as expected, the Legendre method represents a considerable speed up. <lang ecmascript>import "/math" for Int
var limit = 1e9.sqrt.floor var primes = Int.primeSieve(limit) var memoPhi = {}
var phi // recursive function phi = Fn.new { |x, a|
if (a == 0) return x var key = Int.cantorPair(x, a) if (memoPhi.containsKey(key)) return memoPhi[key] var pa = primes[a-1] return memoPhi[key] = phi.call(x, a-1) - phi.call((x/pa).floor, a-1)
}
var pi // recursive function pi = Fn.new { |n|
if (n < 2) return 0 var a = pi.call(n.sqrt.floor) return phi.call(n, a) + a - 1
}
var n = 1 for (i in 0..9) {
System.print("10^%(i) %(pi.call(n))") n = n * 10
}</lang>
- Output:
10^0 0 10^1 4 10^2 25 10^3 168 10^4 1229 10^5 9592 10^6 78498 10^7 664579 10^8 5761455 10^9 50847534