I need to find whether a number is divisible by 3 without using %, / or *. The hint given was to use atoi() function. Any idea how to do it?
The current answers all focus on decimal digits, when applying the "add all digits and see if that divides by 3". That trick actually works in hex as well; e.g. 0x12 can be divided by 3 because 0x1 + 0x2 = 0x3. And "converting" to hex is a lot easier than converting to decimal.
Pseudo-code:
int reduce(int i) {
if (i > 0x10)
return reduce((i >> 4) + (i & 0x0F)); // Reduces 0x102 to 0x12 to 0x3.
else
return i; // Done.
}
bool isDiv3(int i) {
i = reduce(i);
return i==0 || i==3 || i==6 || i==9 || i==0xC || i == 0xF;
}
[edit]
Inspired by R, a faster version (O log log N):
int reduce(unsigned i) {
if (i >= 6)
return reduce((i >> 2) + (i & 0x03));
else
return i; // Done.
}
bool isDiv3(unsigned i) {
// Do a few big shifts first before recursing.
i = (i >> 16) + (i & 0xFFFF);
i = (i >> 8) + (i & 0xFF);
i = (i >> 4) + (i & 0xF);
// Because of additive overflow, it's possible that i > 0x10 here. No big deal.
i = reduce(i);
return i==0 || i==3;
}
Subtract 3 until you either
a) hit 0 - number was divisible by 3
b) get a number less than 0 - number wasn't divisible
-- edited version to fix noted problems
while n > 0:
n -= 3
while n < 0:
n += 3
return n == 0
Split the number into digits. Add the digits together. Repeat until you have only one digit left. If that digit is 3, 6, or 9, the number is divisible by 3. (And don't forget to handle 0 as a special case).
While the technique of converting to a string and then adding the decimal digits together is elegant, it either requires division or is inefficient in the conversion-to-a-string step. Is there a way to apply the idea directly to a binary number, without first converting to a string of decimal digits?
It turns out, there is:
Given a binary number, the sum of its odd bits minus the sum of its even bits is divisible by 3 iff the original number was divisible by 3.
As an example: take the number 3726, which is divisible by 3. In binary, this is 111010001110. So we take the odd digits, starting from the right and moving left, which are [1, 1, 0, 1, 1, 1]; the sum of these is 5. The even bits are [0, 1, 0, 0, 0, 1]; the sum of these is 2. 5 - 2 = 3, from which we can conclude that the original number is divisible by 3.
A number divisible by 3, iirc has a characteristic that the sum of its digit is divisible by 3. For example,
12 -> 1 + 2 = 3
144 -> 1 + 4 + 4 = 9
The interview question essentially asks you to come up with (or have already known) the divisibility rule shorthand with 3 as the divisor.
One of the divisibility rule for 3 is as follows:
Take any number and add together each digit in the number. Then take that sum and determine if it is divisible by 3 (repeating the same procedure as necessary). If the final number is divisible by 3, then the original number is divisible by 3.
Example:
16,499,205,854,376
=> 1+6+4+9+9+2+0+5+8+5+4+3+7+6 sums to 69
=> 6 + 9 = 15 => 1 + 5 = 6, which is clearly divisible by 3.
See also
Wikipedia/Divisibility rule - has many rules for many divisors
Given a number x.
Convert x to a string. Parse the string character by character. Convert each parsed character to a number (using atoi()) and add up all these numbers into a new number y.
Repeat the process until your final resultant number is one digit long. If that one digit is either 3,6 or 9, the origional number x is divisible by 3.
My solution in Java only works for 32-bit unsigned ints.
static boolean isDivisibleBy3(int n) {
int x = n;
x = (x >>> 16) + (x & 0xffff); // max 0x0001fffe
x = (x >>> 8) + (x & 0x00ff); // max 0x02fd
x = (x >>> 4) + (x & 0x000f); // max 0x003d (for 0x02ef)
x = (x >>> 4) + (x & 0x000f); // max 0x0011 (for 0x002f)
return ((011111111111 >> x) & 1) != 0;
}
It first reduces the number down to a number less than 32. The last step checks for divisibility by shifting the mask the appropriate number of times to the right.
You didn't tag this C, but since you mentioned atoi, I'm going to give a C solution:
int isdiv3(int x)
{
div_t d = div(x, 3);
return !d.rem;
}
bool isDiv3(unsigned int n)
{
unsigned int n_div_3 =
n * (unsigned int) 0xaaaaaaab;
return (n_div_3 < 0x55555556);//<=>n_div_3 <= 0x55555555
/*
because 3 * 0xaaaaaaab == 0x200000001 and
(uint32_t) 0x200000001 == 1
*/
}
bool isDiv5(unsigned int n)
{
unsigned int n_div_5 =
i * (unsigned int) 0xcccccccd;
return (n_div_5 < 0x33333334);//<=>n_div_5 <= 0x33333333
/*
because 5 * 0xcccccccd == 0x4 0000 0001 and
(uint32_t) 0x400000001 == 1
*/
}
Following the same rule, to obtain the result of divisibility test by 'n', we can :
multiply the number by 0x1 0000 0000 - (1/n)*0xFFFFFFFF
compare to (1/n) * 0xFFFFFFFF
The counterpart is that for some values, the test won't be able to return a correct result for all the 32bit numbers you want to test, for example, with divisibility by 7 :
we got 0x100000000- (1/n)*0xFFFFFFFF = 0xDB6DB6DC
and 7 * 0xDB6DB6DC = 0x6 0000 0004,
We will only test one quarter of the values, but we can certainly avoid that with substractions.
Other examples :
11 * 0xE8BA2E8C = A0000 0004, one quarter of the values
17 * 0xF0F0F0F1 = 10 0000 0000 1
comparing to 0xF0F0F0F
Every values !
Etc., we can even test every numbers by combining natural numbers between them.
A number is divisible by 3 if all the digits in the number when added gives a result 3, 6 or 9. For example 3693 is divisible by 3 as 3+6+9+3 = 21 and 2+1=3 and 3 is divisible by 3.
inline bool divisible3(uint32_t x) //inline is not a must, because latest compilers always optimize it as inline.
{
//1431655765 = (2^32 - 1) / 3
//2863311531 = (2^32) - 1431655765
return x * 2863311531u <= 1431655765u;
}
On some compilers this is even faster then regular way: x % 3. Read more here.
well a number is divisible by 3 if all the sum of digits of the number are divisible by 3. so you could get each digit as a substring of the input number and then add them up. you then would repeat this process until there is only a single digit result.
if this is 3, 6 or 9 the number is divisable by 3.
Here is a pseudo-algol i came up with .
Let us follow binary progress of multiples of 3
000 011
000 110
001 001
001 100
001 111
010 010
010 101
011 000
011 011
011 110
100 001
100 100
100 111
101 010
101 101
just have a remark that, for a binary multiple of 3 x=abcdef in following couples abc=(000,011),(001,100),(010,101) cde doest change , hence, my proposed algorithm:
divisible(x):
y = x&7
z = x>>3
if number_of_bits(z)<4
if z=000 or 011 or 110 , return (y==000 or 011 or 110) end
if z=001 or 100 or 111 , return (y==001 or 100 or 111) end
if z=010 or 101 , return (y==010 or 101) end
end
if divisible(z) , return (y==000 or 011 or 110) end
if divisible(z-1) , return (y==001 or 100 or 111) end
if divisible(z-2) , return (y==010 or 101) end
end
C# Solution for checking if a number is divisible by 3
namespace ConsoleApplication1
{
class Program
{
static void Main(string[] args)
{
int num = 33;
bool flag = false;
while (true)
{
num = num - 7;
if (num == 0)
{
flag = true;
break;
}
else if (num < 0)
{
break;
}
else
{
flag = false;
}
}
if (flag)
Console.WriteLine("Divisible by 3");
else
Console.WriteLine("Not Divisible by 3");
Console.ReadLine();
}
}
}
Here is your optimized solution that every one should know.................
Source: http://www.geeksforgeeks.org/archives/511
#include<stdio.h>
int isMultiple(int n)
{
int o_count = 0;
int e_count = 0;
if(n < 0)
n = -n;
if(n == 0)
return 1;
if(n == 1)
return 0;
while(n)
{
if(n & 1)
o_count++;
n = n>>1;
if(n & 1)
e_count++;
n = n>>1;
}
return isMultiple(abs(o_count - e_count));
}
int main()
{
int num = 23;
if (isMultiple(num))
printf("multiple of 3");
else
printf(" not multiple of 3");
return 0;
}
Related
I am creating two methods - one that calculates the sum of the digits in a number recursively, and the other iteratively.
I have created the recursive method, and for the most part I understand the concept of finding the sum of digits, but I am not sure how to correctly put it into an iterative method. My code does not give me the correct output.
public static int iterativeDigitSum(long n) {
if(n < 0){
String err = "n must be positive. n = " + n;
throw new IllegalArgumentException(err);
}
if(n == 0){
return 0;
}
long sum = 0;
long i = 0;
while(n > 0){
i = n % 10;
sum = sum + n;
n = n / 10;
}
int inSum = (int)sum;
return inSum;
}
The number "n" is 10, meaning the expected output is 1. I am getting 11. Could you please explain to me what I am doing wrong, and possibly how to fix it? Thank you so much.
Basically, the algorithm consists of three steps:
Get the rightmost digit of the number. Since each digit in a number has a rank of units, tens, hundreds, thousands etc based on its position the rightmost digit is the remainder of dividing the number by 10:
digit = n % 10
Sum the digit up:
sum += digit
Move all the digits one place to the right by dividing the number by 10. The number becomes 10 times smaller:
n = n / 10
Effectively, this will "provide" the next rightmost digit for step 1.
The above three steps are repeated until the value of number becomes zero.
You can help yourself visualize the above explanation by adding some "debugging" information into your code:
public static int iterativeDigitSum(long n)
{
long sum = 0;
int i = 1;
System.out.println("i\tn\tdigit\tsum");
while(n > 0) {
long digit = n % 10;
sum += digit;
System.out.println(i + "\t" + n + "\t" + digit + "\t" + sum);
n = n / 10;
i++;
}
System.out.println("\t" + n + "\t\t" + sum);
return (int)sum;
}
Please note that the i variable is used to count the loop iterations and the digit variable holds the rightmost digit of the number in each iteration.
Given the number 10, the output to the BlueJ console is:
i n digit sum
1 10 0 0
2 1 1 1
0 1
and for the number 2019:
i n digit sum
1 2019 9 9
2 201 1 10
3 20 0 10
4 2 2 12
0 12
Hope it helps.
Find the nth int with 10 set bits
n is an int in the range 0<= n <= 30 045 014
The 0th int = 1023, the 1st = 1535 and so on
snob() same number of bits,
returns the lowest integer bigger than n with the same number of set bits as n
int snob(int n) {
int a=n&-n, b=a+n;
return b|(n^b)/a>>2;
}
calling snob n times will work
int nth(int n){
int o =1023;
for(int i=0;i<n;i++)o=snob(o);
return o;
}
example
https://ideone.com/ikGNo7
Is there some way to find it faster?
I found one pattern but not sure if it's useful.
using factorial you can find the "indexes" where all 10 set bits are consecutive
1023 << x = the (x+10)! / (x! * 10!) - 1 th integer
1023<<1 is the 10th
1023<<2 is the 65th
1023<<3 the 285th
...
Btw I'm not a student and this is not homework.
EDIT:
Found an alternative to snob()
https://graphics.stanford.edu/~seander/bithacks.html#NextBitPermutation
int lnbp(int v){
int t = (v | (v - 1)) + 1;
return t | ((((t & -t) / (v & -v)) >> 1) - 1);
}
I have built an implementation that should satisfy your needs.
/** A lookup table to see how many combinations preceeded this one */
private static int[][] LOOKUP_TABLE_COMBINATION_POS;
/** The number of possible combinations with i bits */
private static int[] NBR_COMBINATIONS;
static {
LOOKUP_TABLE_COMBINATION_POS = new int[Integer.SIZE][Integer.SIZE];
for (int bit = 0; bit < Integer.SIZE; bit++) {
// Ignore less significant bits, compute how many combinations have to be
// visited to set this bit, i.e.
// (bit = 4, pos = 5), before came 0b1XXX and 0b1XXXX, that's C(3, 3) + C(4, 3)
int nbrBefore = 0;
// The nth-bit can be only encountered after pos n
for (int pos = bit; pos < Integer.SIZE; pos++) {
LOOKUP_TABLE_COMBINATION_POS[bit][pos] = nbrBefore;
nbrBefore += nChooseK(pos, bit);
}
}
NBR_COMBINATIONS = new int[Integer.SIZE + 1];
for (int bits = 0; bits < NBR_COMBINATIONS.length; bits++) {
NBR_COMBINATIONS[bits] = nChooseK(Integer.SIZE, bits);
assert NBR_COMBINATIONS[bits] > 0; // Important for modulo check. Otherwise we must use unsigned arithmetic
}
}
private static int nChooseK(int n, int k) {
assert k >= 0 && k <= n;
if (k > n / 2) {
k = n - k;
}
long nCk = 1; // (N choose 0)
for (int i = 0; i < k; i++) {
// (N choose K+1) = (N choose K) * (n-k) / (k+1);
nCk *= (n - i);
nCk /= (i + 1);
}
return (int) nCk;
}
public static int nextCombination(int w, int n) {
// TODO: maybe for small n just advance naively
// Get the position of the current pattern w
int nbrBits = 0;
int position = 0;
while (w != 0) {
final int currentBit = Integer.lowestOneBit(w); // w & -w;
final int bitPos = Integer.numberOfTrailingZeros(currentBit);
position += LOOKUP_TABLE_COMBINATION_POS[nbrBits][bitPos];
// toggle off bit
w ^= currentBit;
nbrBits++;
}
position += n;
// Wrapping, optional
position %= NBR_COMBINATIONS[nbrBits];
// And reverse lookup
int v = 0;
int m = Integer.SIZE - 1;
while (nbrBits-- > 0) {
final int[] bitPositions = LOOKUP_TABLE_COMBINATION_POS[nbrBits];
// Search for largest bitPos such that position >= bitPositions[bitPos]
while (Integer.compareUnsigned(position, bitPositions[m]) < 0)
m--;
position -= bitPositions[m];
v ^= (0b1 << m--);
}
return v;
}
Now for some explanation. LOOKUP_TABLE_COMBINATION_POS[bit][pos] is the core of the algorithm that makes it as fast as it is. The table is designed so that a bit pattern with k bits at positions p_0 < p_1 < ... < p_{k - 1} has a position of `\sum_{i = 0}^{k - 1}{ LOOKUP_TABLE_COMBINATION_POS[i][p_i] }.
The intuition is that we try to move back the bits one by one until we reach the pattern where are all bits are at the lowest possible positions. Moving the i-th bit from position to k + 1 to k moves back by C(k-1, i-1) positions, provided that all lower bits are at the right-most position (no moving bits into or through each other) since we skip over all possible combinations with the i-1 bits in k-1 slots.
We can thus "decode" a bit pattern to a position, keeping track of the bits encountered. We then advance by n positions (rolling over in case we enumerated all possible positions for k bits) and encode this position again.
To encode a pattern, we reverse the process. For this, we move bits from their starting position forward, as long as the position is smaller than what we're aiming for. We could, instead of a linear search through LOOKUP_TABLE_COMBINATION_POS, employ a binary search for our target index m but it's hardly needed, the size of an int is not big. Nevertheless, we reuse our variant that a smaller bit must also come at a less significant position so that our algorithm is effectively O(n) where n = Integer.SIZE.
I remain with the following assertions to show the resulting algorithm:
nextCombination(0b1111111111, 1) == 0b10111111111;
nextCombination(0b1111111111, 10) == 0b11111111110;
nextCombination(0x00FF , 4) == 0x01EF;
nextCombination(0x7FFFFFFF , 4) == 0xF7FFFFFF;
nextCombination(0x03FF , 10) == 0x07FE;
// Correct wrapping
nextCombination(0b1 , 32) == 0b1;
nextCombination(0x7FFFFFFF , 32) == 0x7FFFFFFF;
nextCombination(0xFFFFFFEF , 5) == 0x7FFFFFFF;
Let us consider the numbers with k=10 bits set.
The trick is to determine the rank of the most significant one, for a given n.
There is a single number of length k: C(k, k)=1. There are k+1 = C(k+1, k) numbers of length k + 1. ... There are C(m, k) numbers of length m.
For k=10, the limit n are 1 + 10 + 55 + 220 + 715 + 2002 + 5005 + 11440 + ...
For a given n, you easily find the corresponding m. Then the problem is reduced to finding the n - C(m, k)-th number with k - 1 bits set. And so on recursively.
With precomputed tables, this can be very fast. 30045015 takes 30 lookups, so that I guess that the worst case is 29 x 30 / 2 = 435 lookups.
(This is based on linear lookups, to favor small values. By means of dichotomic search, you reduce this to less than 29 x lg(30) = 145 lookups at worse.)
Update:
My previous estimates were pessimistic. Indeed, as we are looking for k bits, there are only 10 determinations of m. In the linear case, at worse 245 lookups, in the dichotomic case, less than 50.
(I don't exclude off-by-one errors in the estimates, but clearly this method is very efficient and requires no snob.)
I've been working on this program to count how many twin primes between two values and it's been specified that twin primes come in the (6n-1, 6n+1) format, with the exception of (3, 5). My code seems to work fine, but it keeps giving me the wrong result....1 less couple of twin primes than i should get. Between 1 and 40, we should have 5 twin primes, but I'm always getting 4. é
What am I doing wrong? Am I not taking into account (3, 5)?
Here's my code:
#include <stdio.h>
int prime (int num) {
int div;
if (num == 2) return 1;
if (num % 2 == 0) return 0;
div = 3;
while (div*div <= num && num%div != 0)
div = div + 2;
if (num%div == 0)
return 0;
else
return 1;
}
int main(void) {
int low, high, i, count, n, m;
printf("Please enter the values for the lower and upper limits of the interval\n");
scanf("%d%d", &low, &high);
printf("THIS IS THE LOW %d\n AND THIS IS THE HIGH %d\n", low, high);
i = low;
count = 0;
while (6*i-1>=low && 6*i+1<=high) {
n = 6*i-1;
m = 6*i+1;
if (prime(n) && prime(m)) ++count;
i = i + 1;
}
printf("Number of twin primes is %d\n", count);
return 0;
}
Your program misses (3 5) because 3 is not trapped as a prime number, and because 4 is not a multiple of 6. Rather than the main loop stepping by (effectively) 6, this answer steps by 1.
#include <stdio.h>
int prime (int num) {
int div;
if (num == 1) return 0; // excluded 1
if (num == 2 || num == 3) return 1; // included 3 too
if (num % 2 == 0) return 0;
div = 3;
while (div*div <= num) {
if (num % div == 0) // moved to within loop
return 0;
div += 2;
}
return 1;
}
int main(void) {
int low, high, i, count, n, m;
printf("Please enter the values for the lower and upper limits of the interval\n");
scanf("%d%d", &low, &high);
printf("THIS IS THE LOW %d\n AND THIS IS THE HIGH %d\n", low, high);
count = 0;
for (i=low; i<=high; i++) {
n = i-1;
m = i+1;
if (prime(n) && prime(m)) {
printf ("%2d %2d\n", n, m);
++count;
}
}
printf("Number of twin primes is %d\n", count);
return 0;
}
Program output
1
40
THIS IS THE LOW 1
AND THIS IS THE HIGH 40
3 5
5 7
11 13
17 19
29 31
Number of twin primes is 5
Next run:
3
10
THIS IS THE LOW 3
AND THIS IS THE HIGH 10
3 5
5 7
Number of twin primes is 2
https://primes.utm.edu/lists/small/100ktwins.txt
The five twin primes under forty are (3,5), (5,7), (11,13), (17,19), (29,31) so if you know that your code isn't counting (3,5) then it is working correctly, counting (5,7), (11,13), (17,19), and (29,31).
A possible fix would be to add an if-statement which adds 1 to "count" if the starting number is less than 4. I'm not really that used to reading C syntax so I had trouble getting my head around your formulas, sorry.
edit: since comments don't format code snippets:
i = low;
count = 0;
if (low <= 3 && high >= 3){
count ++; // accounts for (3,5) twin primes if the range includes 3
}
You have a problem in your prime function, this is the output of your prime function for the first ten prime evaluations
for(i=1;i<=10;i++) printf("%d\t%d",i,prime(i));
1 1
2 1
3 0
4 0
5 1
6 0
7 1
8 0
Note the prime() function from Weather Vane, you should include 3 as prime (and exclude 1).
From [1], twin primes are the ones that have a prime gap of two, differing by two from another prime.
Examples are (3,5) , (5,7), (11,13). The format (6n-1,6n+1) is true but for (3,5) as you stated. Your program runs almost ok since it shows the number of twin primes that are in the interval AND follows the rule mentioned above. This doesn't include (3,5). You can make a kind of exception (like if low<=3 add 1 to total count), or use another algorithm to count twin primes (like verify if i is prime, then count distance from i to next prime, if distance=2 then they are twin primes)
[1] http://en.wikipedia.org/wiki/Twin_prime
I'd like to calculate a non-uniformly distributed random number in the range [0, n - 1]. So the min possible value is zero. The maximum possible value is n-1. I'd like the min-value to occur the most often and the max to occur relatively infrequently with an approximately linear curve between (Gaussian is fine too). How can I do this in Objective-C? (possibly using C-based APIs)
A very rough sketch of my current idea is:
// min value w/ p = 0.7
// some intermediate value w/ p = 0.2
// max value w/ p = 0.1
NSUInteger r = arc4random_uniform(10);
if (r <= 6)
result = 0;
else if (r <= 8)
result = (n - 1) / 2;
else
result = n - 1;
I think you're on basically the right track. There are possible precision or range issues but in general if you wanted to randomly pick, say, 3, 2, 1 or 0 and you wanted the probability of picking 3 to be four times as large as the probability of picking 0 then if it were a paper exercise you might right down a grid filled with:
3 3 3 3
2 2 2
1 1
0
Toss something onto it and read the number it lands on.
The number of options there are for your desired linear scale is:
- 1 if number of options, n, = 1
- 1 + 2 if n = 2
- 1 + 2 + 3 if n = 3
- ... etc ...
It's a simple sum of an arithmetic progression. You end up with n(n+1)/2 possible outcomes. E.g. for n = 1 that's 1 * 2 / 2 = 1. For n = 2 that's 2 * 3 /2 = 3. For n = 3 that's 3 * 4 / 2 = 6.
So you would immediately write something like:
NSUInteger random_linear(NSUInteger range)
{
NSUInteger numberOfOptions = (range * (range + 1)) / 2;
NSUInteger uniformRandom = arc4random_uniform(numberOfOptions);
... something ...
}
At that point you just have to decide which bin uniformRandom falls into. The simplest way is with the most obvious loop:
NSUInteger random_linear(NSUInteger range)
{
NSUInteger numberOfOptions = (range * (range + 1)) / 2;
NSUInteger uniformRandom = arc4random_uniform(numberOfOptions);
NSUInteger index = 0;
NSUInteger optionsToDate = 0;
while(1)
{
if(optionsToDate >= uniformRandom) return index;
index++;
optionsToDate += index;
}
}
Given that you can work out optionsToDate without iterating, an immediately obvious faster solution is a binary search.
An even smarter way to look at it is that uniformRandom is the sum of the boxes underneath a line from (0, 0) to (n, n). So it's the area underneath the graph, and the graph is a simple right-angled triangle. So you can work backwards from the area formula.
Specifically, the area underneath the graph from (0, 0) to (n, n) at position x is (x*x)/2. So you're looking for x, where:
(x-1)*(x-1)/2 <= uniformRandom < x*x/2
=> (x-1)*(x-1) <= uniformRandom*2 < x*x
=> x-1 <= sqrt(uniformRandom*2) < x
In that case you want to take x-1 as the result hadn't progressed to the next discrete column of the number grid. So you can get there with a square root operation simple integer truncation.
So, assuming I haven't muddled my exact inequalities along the way, and assuming all precisions fit:
NSUInteger random_linear(NSUInteger range)
{
NSUInteger numberOfOptions = (range * (range + 1)) / 2;
NSUInteger uniformRandom = arc4random_uniform(numberOfOptions);
return (NSUInteger)sqrtf((float)uniformRandom * 2.0f);
}
What if you try squaring the return value of arc4random_uniform() (or multiplying two of them)?
int rand_nonuniform(int max)
{
int r = arc4random_uniform(max) * arc4random_uniform(max + 1);
return r / max;
}
I've quickly written a sample program for testing it and it looks promising:
int main(int argc, char *argv[])
{
int arr[10] = { 0 };
int i;
for (i = 0; i < 10000; i++) {
arr[rand_nonuniform(10)]++;
}
for (i = 0; i < 10; i++) {
printf("%2d. = %2d\n", i, arr[i]);
}
return 0;
}
Result:
0. = 3656
1. = 1925
2. = 1273
3. = 909
4. = 728
5. = 574
6. = 359
7. = 276
8. = 187
9. = 113
So off the top of my head, I can think of a few solutions (focusing on getting random odd numbers for example):
int n;
while (n == 0 || n % 2 == 0) {
n = (arc4random() % 100);
}
eww.. right? Not efficient at all..
int n = arc4random() % 100);
if (n % 2 == 0) n += 1;
But I don't like that it's always going to increase the number if it's not odd.. Maybe that shouldn't matter? Another approach could be to randomize that:
int n = arc4random() % 100);
if (n % 2 == 0) {
if (arc4random() % 2 == 0) {
n += 1;
else {
n -= 1;
}
}
But this feels a little bleah to me.. So I am wondering if there is a better way to do this sort of thing?
Generate a random number and then multiply it by two for even, multiply by two plus 1 for odd.
In general, you want to keep these simple or you run the risk of messing up the distribution of numbers. Take the output of the typical [0...1) random number generator and then use a function to map it to the desired range.
FWIW - It doesn't look like you're skewing the distributions above, except for the third one. Notice that getting 99 is less probable than all the others unless you do your adjustments with a modulus incl. negative numbers. Since..
P(99) = P(first roll = 99) + P(first roll = 100 & second roll = -1) + P(first roll = 98 & second roll = +1)
and P(first roll = 100) = 0
If you want a random set of binary digits followed by a fixed digit, then I'd go with bitwise operations:
odd = arc4random() | 1;
even = arc4random() & ~ 1;