Try to reduce execution time but fail - c++

Assume there is a set of points and almost every points are inside a quadrilateral. But a few are not. I want to know which points are not inside the quadrilateral.
So the function looks like this.
bool isInside(Point a, Point b, Point c, Point d, Point p) // a,b,c,d are the points consist of the quadrilateral.
{
if(orientation(a, b, p) < 0)
return false;
else if(orientation(b, c, p) < 0)
return false;
else if(orientation(c, d, p) < 0)
return false;
else if(orientation(d, a, p) < 0)
return false;
else
return true;
}
I wanted to reduce the number to call the orientation function and the orientation function looks like.
int orientation(const Point& p, const Point& q, const Point& r)
{
double val = (q.x - p.x) * (r.y - p.y) - (q.y - p.y) * (r.x - p.x);
if (val == 0)
return 0; // colinear
return (val < 0) ? -1 : 1; // right or left
}
So I modified the function isInside like this.
bool isInside(Point a, Point b, Point c, Point d, Point p)
{
int result;
if(p.x <= b.x)
{
result = orientation(a, b, p);
}
else
{
result = orientation(b, c, p);
}
if(result == -1) return false;
if(p.x <= d.x)
{
result = orientation(a, d, p);
}
else
{
result = orientation(d, c, p);
}
return (result == -1) ? true : false;
}
By this, the number of calling the orientation function reduces almost half(if there are more than 100,000 points it is a huge amount of number). However, it seems it does not affect the time taken and sometimes takes more.
I don't know how come this happens even though it reduces a lot of function calls.

Compiler Optimizations
It would be a good idea to check whether or not you are building with optimizations enabled. If you are building your application in debug mode, the compiler may not be optimizing your code. If you are, try running in release mode. It may build your application with optimizations enabled, or a higher level of optimization. This way, you can potentially leave your code as is, with little worrying about optimizing your code (Unless fast performance is absolutely necessary).
Quatitative Results
You could also add test code, that will allow you to get quantitative performance results (Running function x() n times takes m seconds, so each x() call takes m divided by n seconds). Then, you should be able to figure out which block of code is taking the most time.
An example of how you can go about doing the above (Without writing it for you) would look like:
#include <iostream>
#include <chrono>
//Doesn't matter where it is called, just using main as an example
int main(int argc, char *argv[])
{
int numRuns = 1000000; //Or passed in to allow changing # of runs
//without rebuilding: int numRuns = atoi(argv[1]);
//Code to initialize Point a, b, c, d, and p.
high_resolution_clock::time_point orien_start_time = high_resolution_clock::now();
for(int i = 0; i < numRuns; ++i)
{
orientation(a, b, p); //Ignore the return value
}
high_resolution_clock::time_point orien_end_time = high_resolution_clock::now();
high_resolution_clock::time_point orien_start_time = high_resolution_clock::now();
for(int i = 0; i < numRuns; ++i)
{
isInside(a, b, c, d, p); //Ignore the return value
}
high_resolution_clock::time_point orien_end_time = high_resolution_clock::now();
//Format and print/log the results
}
Then, with those time points, you can calculate how long each function takes to run. You can then use these numbers to pinpoint where exactly your application is slowing down. Going this route, you can test your old implementation vs. your new implementation, and see if the new way is infact faster. You could even try different sets of Points, to see if that changes application performance (For example, try both functions with points p1 through p5, then try both again with p6 through p10).
Note: There are a lot of things that can effect application performance outside of the code you write, which is why I used one million for the hard coded numRuns. If you go with a small number of iterations, your execution time per function call can swing pretty drastically depending on what else is running on your system. My recommendation for gathering quantitative results would be to run the test(s) on a freshly rebooted system where your application is the only user process running, that way it doesn't have to share as many resources with other applications.

Related

Eigen Expression Debugging

I'm debugging a function that does some math with the Eigen library and am getting different results on different platforms. I don't see anything obviously wrong but I'm really not that familiar with the library. I've pulled the local variables out into a simple test application. hitRight ends up true on Mac and Windows but not on Linux. While debugging I figured out that putting .eval() at the end of the "auto rightDistance" line resolves the problem but I'd really like to understand why.
#include <stdio.h>
#include "eigen/Eigen/Core"
using namespace Eigen;
int main()
{
Vector2i p = Vector2i(302,12);
int mTabControlWidth = 20;
Vector2i mPos = Vector2i(0,0);
Vector2i mSize = Vector2i(310,24);
auto rightDistance = (p - (mPos + Vector2i(mSize.x() - mTabControlWidth, 0))).array();
bool hitRight = (rightDistance >= 0).all()
&& (rightDistance < Vector2i(mTabControlWidth, mSize.y()).array()).all();
if (hitRight)
printf("Hit Right\n");
printf("Hit none\n");
return 0;
}
Vector2i(mSize.x() - mTabControlWidth, 0) gets destructed at the next ;, while rightDistance still refers to it. That is undefined behavior, i.e., with some luck it works like you expect, but it might do whatever the compiler wants to do (most likely crash or return arbitrary results).
As Avi said, just avoid the auto. In your case, you should also use Array2i instead of Vector2i. This saves you from writing all the .array().
Also, if the auto expression worked, rightDistance would be evaluated twice instead of once (o.t.o.h, compiler are usually good at optimizing that away).
int main()
{
Array2i p(302,12);
int mTabControlWidth = 20;
Array2i mPos(0,0);
Array2i mSize(310,24);
Array2i rightDistance = (p - (mPos + Array2i(mSize.x() - mTabControlWidth, 0)));
bool hitRight = (rightDistance >= 0).all() && (rightDistance < Array2i(mTabControlWidth, mSize.y())).all();
if (hitRight)
printf("Hit Right\n");
printf("Hit none\n");
return 0;
}

How to safely compare two unsigned integer counters?

We have two unsigned counters, and we need to compare them to check for some error conditions:
uint32_t a, b;
// a increased in some conditions
// b increased in some conditions
if (a/2 > b) {
perror("Error happened!");
return -1;
}
The problem is that a and b will overflow some day. If a overflowed, it's still OK. But if b overflowed, it would be a false alarm. How to make this check bulletproof?
I know making a and b uint64_t would delay this false-alarm. but it still could not completely fix this issue.
===============
Let me clarify a little bit: the counters are used to tracking memory allocations, and this problem is found in dmalloc/chunk.c:
#if LOG_PNT_SEEN_COUNT
/*
* We divide by 2 here because realloc which returns the same
* pointer will seen_c += 2. However, it will never be more than
* twice the iteration value. We divide by two to not overflow
* iter_c * 2.
*/
if (slot_p->sa_seen_c / 2 > _dmalloc_iter_c) {
dmalloc_errno = ERROR_SLOT_CORRUPT;
return 0;
}
#endif
I think you misinterpreted the comment in the code:
We divide by two to not overflow iter_c * 2.
No matter where the values are coming from, it is safe to write a/2 but it is not safe to write a*2. Whatever unsigned type you are using, you can always divide a number by two while multiplying may result in overflow.
If the condition would be written like this:
if (slot_p->sa_seen_c > _dmalloc_iter_c * 2) {
then roughly half of the input would cause a wrong condition. That being said, if you worry about counters overflowing, you could wrap them in a class:
class check {
unsigned a = 0;
unsigned b = 0;
bool odd = true;
void normalize() {
auto m = std::min(a,b);
a -= m;
b -= m;
}
public:
void incr_a(){
if (odd) ++a;
odd = !odd;
normalize();
}
void incr_b(){
++b;
normalize();
}
bool check() const { return a > b;}
}
Note that to avoid the overflow completely you have to take additional measures, but if a and b are increased more or less the same amount this might be fine already.
The posted code actually doesn’t seem to use counters that may wrap around.
What the comment in the code is saying is that it is safer to compare a/2 > b instead of a > 2*b because the latter could potentially overflow while the former cannot. This particularly true of the type of a is larger than the type of b.
Note overflows as they occur.
uint32_t a, b;
bool aof = false;
bool bof = false;
if (condition_to_increase_a()) {
a++;
aof = a == 0;
}
if (condition_to_increase_b()) {
b++;
bof = b == 0;
}
if (!bof && a/2 + aof*0x80000000 > b) {
perror("Error happened!");
return -1;
}
Each a, b interdependently have 232 + 1 different states reflecting value and conditional increment. Somehow, more than an uint32_t of information is needed. Could use uint64_t, variant code paths or an auxiliary variable like the bool here.
Normalize the values as soon as they wrap by forcing them both to wrap at the same time. Maintain the difference between the two when they wrap.
Try something like this;
uint32_t a, b;
// a increased in some conditions
// b increased in some conditions
if (a or b is at the maximum value) {
if (a > b)
{
a = a-b; b = 0;
}
else
{
b = b-a; a = 0;
}
}
if (a/2 > b) {
perror("Error happened!");
return -1;
}
If even using 64 bits is not enough, then you need to code your own "var increase" method, instead of overload the ++ operator (which may mess your code if you are not careful).
The method would just reset var to '0' or other some meaningfull value.
If your intention is to ensure that action x happens no more than twice as often as action y, I would suggest doing something like:
uint32_t x_count = 0;
uint32_t scaled_y_count = 0;
void action_x(void)
{
if ((uint32_t)(scaled_y_count - x_count) > 0xFFFF0000u)
fault();
x_count++;
}
void action_y(void)
{
if ((uint32_t)(scaled_y_count - x_count) < 0xFFFF0000u)
scaled_y_count+=2;
}
In many cases, it may be desirable to reduce the constants in the comparison used when incrementing scaled_y_count so as to limit how many action_y operations can be "stored up". The above, however, should work precisely in cases where the operations remain anywhere close to balanced in a 2:1 ratio, even if the number of operations exceeds the range of uint32_t.

More general test for same order of magnitude than comparing floor(log10(abs(n)))

I am implementing an optimization algorithm and have diferent heuristics for cases where no or largely different lower and upper bounds for the solution are known or not.
To check, my first approach would be simply taking
if(abs(floor(log10(abs(LBD))) - floor(log10(abs(UBD)))) < 1 )
{ //(<1 e.g. for 6, 13)
//Bounds are sufficiently close for the serious stuff
}
else {
//We need some more black magic
}
But this requires previous checks to be gerneralized to NAN, ±INFINITY.
Also, in the case where LBD is negative and UBD positive we can't assume that the above check alone assures us that they are anywhere close to being of equal order of magnitude.
Is there a dedicated approach to this or am I stuck with this hackery?
Thanks to geza I realized that thw whole thing can be done without the log10:
A working solution is posted below, and a MWE including the log variant posted on ideone.
template <typename T> double sgn(T val) {
return double((T(0) < val) - (val < T(0)))/(val == val);
}
bool closeEnough(double LBD, double UBD, uint maxOrderDiff = 1, uint cutoffOrder = 1) {
double sgn_LBD = sgn(LBD);
double sgn_UBD = sgn(UBD);
double cutoff = pow(10, cutoffOrder);
double maxDiff = pow(10, maxOrderDiff);
if(sgn_LBD == sgn_UBD) {
if(abs(LBD)<cutoff && abs(UBD)<cutoff) return true;
return LBD<UBD && abs(UBD)<abs(LBD)*maxDiff;
}
else if(sgn_UBD > 0) {
return -LBD<cutoff && UBD<cutoff;
}
// if none of the above matches LBD >= UBD or any of the two is NAN
}
As a bonus it can take cutoffs, so if both bounds lie within [-10^cutoffOrder,+10^cutoffOrder] they are considered to be close enough!
The pow computation might also be unecessary, but at least in my case this check is not in a critical code section.
If it would be, I suppose you could just hard code the cutoff and maxDiff.

Stack versus Integer

I've created a program to solve Cryptarithmetics for a class on Data Structures. The professor recommended that we utilize a stack consisting of linked nodes to keep track of which letters we replaced with which numbers, but I realized an integer could do the same trick. Instead of a stack {A, 1, B, 2, C, 3, D, 4} I could hold the same info in 1234.
My program, though, seems to run much more slowly than the estimation he gave us. Could someone explain why a stack would behave much more efficiently? I had assumed that, since I wouldn't be calling methods over and over again (push, pop, top, etc) and instead just add one to the 'solution' that mine would be faster.
This is not an open ended question, so do not close it. Although you can implement things different ways, I want to know why, at the heart of C++, accessing data via a Stack has performance benefits over storing in ints and extracting by moding.
Although this is homework, I don't actually need help, just very intrigued and curious.
Thanks and can't wait to learn something new!
EDIT (Adding some code)
letterAssignments is an int array of size 26. for a problem like SEND + MORE = MONEY, A isn't used so letterAssignments[0] is set to 11. All chars that are used are initialized to 10.
answerNum is a number with as many digits as there are unique characters (in this case, 8 digits).
int Cryptarithmetic::solve(){
while(!solved()){
for(size_t z = 0; z < 26; z++){
if(letterAssignments[z] != 11) letterAssignments[z] = 10;
}
if(answerNum < 1) return NULL;
size_t curAns = answerNum;
for(int i = 0; i < numDigits; i++){
if(nextUnassigned() != '$') {
size_t nextAssign = curAns % 10;
if(isAssigned(nextAssign)){
answerNum--;
continue;
}
assign(nextUnassigned(), nextAssign);
curAns /= 10;
}
}
answerNum--;
}
return answerNum;
}
Two helper methods in case you'd like to see them:
char Cryptarithmetic::nextUnassigned(){
char nextUnassigned = '$';
for(int i = 0; i < 26; i++) {
if(letterAssignments[i] == 10) return ('A' + i);
}
}
void Cryptarithmetic::assign(char letter, size_t val){
assert('A' <= letter && letter <= 'Z'); // valid letter
assert(letterAssignments[letter-'A'] != 11); // has this letter
assert(!isAssigned(val)); // not already assigned.
letterAssignments[letter-'A'] = val;
}
From the looks of things the way you are doing things here is quite inefficiant.
As a general rule try to have the least amount of for loops possible since each one will slow down your implementation greatly.
for instance if we strip all other code away, your program looks like
while(thing) {
for(z < 26) {
}
for(i < numDigits) {
for(i < 26) {
}
for(i < 26) {
}
}
}
this means that for each while loop you are doing ((26+26)*numDigits)+26 loop operations. Thats assuming isAssigned() does not use a loop.
Idealy you want:
while(thing) {
for(i < numDigits) {
}
}
which i'm sure is possible with changes to your code.
This is why your implementation with the integer array is much slower than an implementation using the stack which does not use the for(i < 26) loops (I assume).
In Answer to your original question however, storing an array of integers will always be faster than any struct you can come up with simply because there are more overheads involved in assigning the memory, calling functions, etc.
But as with everything, implementation is the key difference between a slow program and a fast program.
The problem is that by counting you are considering also repetitions, when may be the problem asks to assign a different number to each different letter so that the numeric equation holds.
For example for four letters you are testing 10*10*10*10=10000 letter->number mappings instead of 10*9*8*7=5040 of them (the bigger is the number of letters and bigger becomes the ratio between the two numbers...).
The div instruction used by the mod function is quite expensive. Using it for your purpose can easily be less efficient than a good stack implementation. Here is an instruction timings table: http://gmplib.org/~tege/x86-timing.pdf
You should also write unit tests for your int-based stack to make sure that it works as intended.
Programming is actually trading memory for time and vice versa.
Here you are packing data into integer. You spare memory but loose time.
Speed of course depends on the implementation of stack. C++ is C with classes. If you are not using classes it's basically C(as fast as C).
const int stack_size = 26;
struct Stack
{
int _data[stack_size];
int _stack_p;
Stack()
:_stack_size(0)
{}
inline void push(int val)
{
assert(_stack_p < stack_size); // this won't be overhead
// unless you compile debug version(-DNDEBUG)
_data[_stack_p] = val;
}
inline int pop()
{
assert(_stack_p > 0); // same thing. assert is very useful for tracing bugs
return _data[--_stack_p]; // good hint for RVO
}
inline int size()
{
return _stack_p;
}
inline int val(int i)
{
assert(i > 0 && i < _stack_p);
return _data[i];
}
}
There is no overhead like vtbp. Also pop() and push() are very simple so they will be inlined, so no overhead of function call. Using int as stack element also good for speed because int is guaranteed to be of best suitable size for processor(no need for alignment etc).

Unusual Speed Difference between Python and C++

I recently wrote a short algorithm to calculate happy numbers in python. The program allows you to pick an upper bound and it will determine all the happy numbers below it. For a speed comparison I decided to make the most direct translation of the algorithm I knew of from python to c++.
Surprisingly, the c++ version runs significantly slower than the python version. Accurate speed tests between the execution times for discovering the first 10,000 happy numbers indicate the python program runs on average in 0.59 seconds and the c++ version runs on average in 8.5 seconds.
I would attribute this speed difference to the fact that I had to write helper functions for parts of the calculations (for example determining if an element is in a list/array/vector) in the c++ version which were already built in to the python language.
Firstly, is this the true reason for such an absurd speed difference, and secondly, how can I change the c++ version to execute more quickly than the python version (the way it should be in my opinion).
The two pieces of code, with speed testing are here: Python Version, C++ Version. Thanks for the help.
#include <iostream>
#include <vector>
#include <string>
#include <ctime>
#include <windows.h>
using namespace std;
bool inVector(int inQuestion, vector<int> known);
int sum(vector<int> given);
int pow(int given, int power);
void calcMain(int upperBound);
int main()
{
while(true)
{
int upperBound;
cout << "Pick an upper bound: ";
cin >> upperBound;
long start, end;
start = GetTickCount();
calcMain(upperBound);
end = GetTickCount();
double seconds = (double)(end-start) / 1000.0;
cout << seconds << " seconds." << endl << endl;
}
return 0;
}
void calcMain(int upperBound)
{
vector<int> known;
for(int i = 0; i <= upperBound; i++)
{
bool next = false;
int current = i;
vector<int> history;
while(!next)
{
char* buffer = new char[10];
itoa(current, buffer, 10);
string digits = buffer;
delete buffer;
vector<int> squares;
for(int j = 0; j < digits.size(); j++)
{
char charDigit = digits[j];
int digit = atoi(&charDigit);
int square = pow(digit, 2);
squares.push_back(square);
}
int squaresum = sum(squares);
current = squaresum;
if(inVector(current, history))
{
next = true;
if(current == 1)
{
known.push_back(i);
//cout << i << "\t";
}
}
history.push_back(current);
}
}
//cout << "\n\n";
}
bool inVector(int inQuestion, vector<int> known)
{
for(vector<int>::iterator it = known.begin(); it != known.end(); it++)
if(*it == inQuestion)
return true;
return false;
}
int sum(vector<int> given)
{
int sum = 0;
for(vector<int>::iterator it = given.begin(); it != given.end(); it++)
sum += *it;
return sum;
}
int pow(int given, int power)
{
int original = given;
int current = given;
for(int i = 0; i < power-1; i++)
current *= original;
return current;
}
#!/usr/bin/env python
import timeit
upperBound = 0
def calcMain():
known = []
for i in range(0,upperBound+1):
next = False
current = i
history = []
while not next:
digits = str(current)
squares = [pow(int(digit), 2) for digit in digits]
squaresum = sum(squares)
current = squaresum
if current in history:
next = True
if current == 1:
known.append(i)
##print i, "\t",
history.append(current)
##print "\nend"
while True:
upperBound = input("Pick an upper bound: ")
result = timeit.Timer(calcMain).timeit(1)
print result, "seconds.\n"
For 100000 elements, the Python code took 6.9 seconds while the C++ originally took above 37 seconds.
I did some basic optimizations on your code and managed to get the C++ code above 100 times faster than the Python implementation. It now does 100000 elements in 0.06 seconds. That is 617 times faster than the original C++ code.
The most important thing is to compile in Release mode, with all optimizations. This code is literally orders of magnitude slower in Debug mode.
Next, I will explain the optimizations I did.
Moved all vector declarations outside of the loop; replaced them by a clear() operation, which is much faster than calling the constructor.
Replaced the call to pow(value, 2) by a multiplication : value * value.
Instead of having a squares vector and calling sum on it, I sum the values in-place using just an integer.
Avoided all string operations, which are very slow compared to integer operations. For instance, it is possible to compute the squares of each digit by repeatedly dividing by 10 and fetching the modulus 10 of the resulting value, instead of converting the value to a string and then each character back to int.
Avoided all vector copies, first by replacing passing by value with passing by reference, and finally by eliminating the helper functions completely.
Eliminated a few temporary variables.
And probably many small details I forgot. Compare your code and mine side-by-side to see exactly what I did.
It may be possible to optimize the code even more by using pre-allocated arrays instead of vectors, but this would be a bit more work and I'll leave it as an exercise to the reader. :P
Here's the optimized code :
#include <iostream>
#include <vector>
#include <string>
#include <ctime>
#include <algorithm>
#include <windows.h>
using namespace std;
void calcMain(int upperBound, vector<int>& known);
int main()
{
while(true)
{
vector<int> results;
int upperBound;
cout << "Pick an upper bound: ";
cin >> upperBound;
long start, end;
start = GetTickCount();
calcMain(upperBound, results);
end = GetTickCount();
for (size_t i = 0; i < results.size(); ++i) {
cout << results[i] << ", ";
}
cout << endl;
double seconds = (double)(end-start) / 1000.0;
cout << seconds << " seconds." << endl << endl;
}
return 0;
}
void calcMain(int upperBound, vector<int>& known)
{
vector<int> history;
for(int i = 0; i <= upperBound; i++)
{
int current = i;
history.clear();
while(true)
{
int temp = current;
int sum = 0;
while (temp > 0) {
sum += (temp % 10) * (temp % 10);
temp /= 10;
}
current = sum;
if(find(history.begin(), history.end(), current) != history.end())
{
if(current == 1)
{
known.push_back(i);
}
break;
}
history.push_back(current);
}
}
}
There's a new, radically faster version as a separate answer, so this answer is deprecated.
I rewrote your algorithm by making it cache whenever it finds the number to be happy or unhappy. I also tried to make it as pythonic as I could, for example by creating separate functions digits() and happy(). Sorry for using Python 3, but I get to show off a couple a useful things from it as well.
This version is much faster. It runs at 1.7s which is 10 times faster than your original program that takes 18s (well, my MacBook is quite old and slow :) )
#!/usr/bin/env python3
from timeit import Timer
from itertools import count
print_numbers = False
upperBound = 10**5 # Default value, can be overidden by user.
def digits(x:'nonnegative number') -> "yields number's digits":
if not (x >= 0): raise ValueError('Number should be nonnegative')
while x:
yield x % 10
x //= 10
def happy(number, known = {1}, happies = {1}) -> 'True/None':
'''This function tells if the number is happy or not, caching results.
It uses two static variables, parameters known and happies; the
first one contains known happy and unhappy numbers; the second
contains only happy ones.
If you want, you can pass your own known and happies arguments. If
you do, you should keep the assumption commented out on the 1 line.
'''
# assert 1 in known and happies <= known # <= is expensive
if number in known:
return number in happies
history = set()
while True:
history.add(number)
number = sum(x**2 for x in digits(number))
if number in known or number in history:
break
known.update(history)
if number in happies:
happies.update(history)
return True
def calcMain():
happies = {x for x in range(upperBound) if happy(x) }
if print_numbers:
print(happies)
if __name__ == '__main__':
upperBound = eval(
input("Pick an upper bound [default {0}]: "
.format(upperBound)).strip()
or repr(upperBound))
result = Timer(calcMain).timeit(1)
print ('This computation took {0} seconds'.format(result))
It looks like you're passing vectors by value to other functions. This will be a significant slowdown because the program will actually make a full copy of your vector before it passes it to your function. To get around this, pass a constant reference to the vector instead of a copy. So instead of:
int sum(vector<int> given)
Use:
int sum(const vector<int>& given)
When you do this, you'll no longer be able to use the vector::iterator because it is not constant. You'll need to replace it with vector::const_iterator.
You can also pass in non-constant references, but in this case, you don't need to modify the parameter at all.
This is my second answer; which caches things like sum of squares for values <= 10**6:
happy_list[sq_list[x%happy_base] + sq_list[x//happy_base]]
That is,
the number is split into 3 digits + 3 digits
the precomputed table is used to get sum of squares for both parts
these two results are added
the precomputed table is consulted to get the happiness of number:
I don't think Python version can be made much faster than that (ok, if you throw away fallback to old version, that is try: overhead, it's 10% faster).
I think this is an excellent question which shows that, indeed,
things that have to be fast should be written in C
however, usually you don't need things to be fast (even if you needed the program to run for a day, it would be less then the combined time of programmers optimizing it)
it's easier and faster to write programs in Python
but for some problems, especially computational ones, a C++ solution, like the ones above, are actually more readable and more beautiful than an attempt to optimize Python program.
Ok, here it goes (2nd version now...):
#!/usr/bin/env python3
'''Provides slower and faster versions of a function to compute happy numbers.
slow_happy() implements the algorithm as in the definition of happy
numbers (but also caches the results).
happy() uses the precomputed lists of sums of squares and happy numbers
to return result in just 3 list lookups and 3 arithmetic operations for
numbers less than 10**6; it falls back to slow_happy() for big numbers.
Utilities: digits() generator, my_timeit() context manager.
'''
from time import time # For my_timeit.
from random import randint # For example with random number.
upperBound = 10**5 # Default value, can be overridden by user.
class my_timeit:
'''Very simple timing context manager.'''
def __init__(self, message):
self.message = message
self.start = time()
def __enter__(self):
return self
def __exit__(self, *data):
print(self.message.format(time() - self.start))
def digits(x:'nonnegative number') -> "yields number's digits":
if not (x >= 0): raise ValueError('Number should be nonnegative')
while x:
yield x % 10
x //= 10
def slow_happy(number, known = {1}, happies = {1}) -> 'True/None':
'''Tell if the number is happy or not, caching results.
It uses two static variables, parameters known and happies; the
first one contains known happy and unhappy numbers; the second
contains only happy ones.
If you want, you can pass your own known and happies arguments. If
you do, you should keep the assumption commented out on the 1 line.
'''
# This is commented out because <= is expensive.
# assert {1} <= happies <= known
if number in known:
return number in happies
history = set()
while True:
history.add(number)
number = sum(x**2 for x in digits(number))
if number in known or number in history:
break
known.update(history)
if number in happies:
happies.update(history)
return True
# This will define new happy() to be much faster ------------------------.
with my_timeit('Preparation time was {0} seconds.\n'):
LogAbsoluteUpperBound = 6 # The maximum possible number is 10**this.
happy_list = [slow_happy(x)
for x in range(81*LogAbsoluteUpperBound + 1)]
happy_base = 10**((LogAbsoluteUpperBound + 1)//2)
sq_list = [sum(d**2 for d in digits(x))
for x in range(happy_base + 1)]
def happy(x):
'''Tell if the number is happy, optimized for smaller numbers.
This function works fast for numbers <= 10**LogAbsoluteUpperBound.
'''
try:
return happy_list[sq_list[x%happy_base] + sq_list[x//happy_base]]
except IndexError:
return slow_happy(x)
# End of happy()'s redefinition -----------------------------------------.
def calcMain(print_numbers, upper_bound):
happies = [x for x in range(upper_bound + 1) if happy(x)]
if print_numbers:
print(happies)
if __name__ == '__main__':
while True:
upperBound = eval(input(
"Pick an upper bound [{0} default, 0 ends, negative number prints]: "
.format(upperBound)).strip() or repr(upperBound))
if not upperBound:
break
with my_timeit('This computation took {0} seconds.'):
calcMain(upperBound < 0, abs(upperBound))
single = 0
while not happy(single):
single = randint(1, 10**12)
print('FYI, {0} is {1}.\n'.format(single,
'happy' if happy(single) else 'unhappy'))
print('Nice to see you, goodbye!')
I can see that you have quite a few heap allocations that are unnecessary
For example:
while(!next)
{
char* buffer = new char[10];
This doesn't look very optimized. So, you probably want to have the array pre-allocated and using it inside your loop. This is a basic optimizing technique which is easy to spot and to do. It might become into a mess too, so be careful with that.
You are also using the atoi() function, which I don't really know if it is really optimized. Maybe doing a modulus 10 and getting the digit might be better (you have to measure thou, I didn't test this).
The fact that you have a linear search (inVector) might be bad. Replacing the vector data structure with a std::set might speed things up. A hash_set could do the trick too.
But I think that the worst problem is the string and this allocation of stuff on the heap inside that loop. That doesn't look good. I would try at those places first.
Well, I also gave it a once-over. I didn't test or even compile, though.
General rules for numerical programs:
Never process numbers as text. That's what makes lesser languages than Python slow, so if you do it in C, the program will be slower than Python.
Don't use data structures if you can avoid them. You were building an array just to add the numbers up. Better keep a running total.
Keep a copy of the STL reference open so you can use it rather than writing your own functions.
void calcMain(int upperBound)
{
vector<int> known;
for(int i = 0; i <= upperBound; i++)
{
int current = i;
vector<int> history;
do
{
squaresum = 0
for ( ; current; current /= 10 )
{
int digit = current % 10;
squaresum += digit * digit;
}
current = squaresum;
history.push_back(current);
} while ( ! count(history.begin(), history.end() - 1, current) );
if(current == 1)
{
known.push_back(i);
//cout << i << "\t";
}
}
//cout << "\n\n";
}
Just to get a little more closure on this issue by seeing how fast I could truely find these numbers, I wrote a multithreaded C++ implementation of Dr_Asik's algorithm. There are two things that are important to realize about the fact that this implementation is multithreaded.
More threads does not necessarily lead to better execution times, there is a happy medium for every situation depending on the volume of numbers you want to calculate.
If you compare the times between this version running with one thread and the original version, the only factors that could cause a difference in time are the overhead from starting the thread and variable system performance issues. Otherwise, the algorithm is the same.
The code for this implementation (all credit for the algorithm goes to Dr_Asik) is here. Also, I wrote some speed tests with a double check for each test to help back up those 3 points.
Calculation of the first 100,000,000 happy numbers:
Original - 39.061 / 39.000 (Dr_Asik's original implementation)
1 Thread - 39.000 / 39.079
2 Threads - 19.750 / 19.890
10 Threads - 11.872 / 11.888
30 Threads - 10.764 / 10.827
50 Threads - 10.624 / 10.561 <--
100 Threads - 11.060 / 11.216
500 Threads - 13.385 / 12.527
From these results it looks like our happy medium is about 50 threads, plus or minus ten or so.
Other optimizations: by using arrays and direct access using the loop index rather than searching in a vector, and by caching prior sums, the following code (inspired by Dr Asik's answer but probably not optimized at all) runs 2445 times faster than the original C++ code, about 400 times faster than the Python code.
#include <iostream>
#include <windows.h>
#include <vector>
void calcMain(int upperBound, std::vector<int>& known)
{
int tempDigitCounter = upperBound;
int numDigits = 0;
while (tempDigitCounter > 0)
{
numDigits++;
tempDigitCounter /= 10;
}
int maxSlots = numDigits * 9 * 9;
int* history = new int[maxSlots + 1];
int* cache = new int[upperBound+1];
for (int jj = 0; jj <= upperBound; jj++)
{
cache[jj] = 0;
}
int current, sum, temp;
for(int i = 0; i <= upperBound; i++)
{
current = i;
while(true)
{
sum = 0;
temp = current;
bool inRange = temp <= upperBound;
if (inRange)
{
int cached = cache[temp];
if (cached)
{
sum = cached;
}
}
if (sum == 0)
{
while (temp > 0)
{
int tempMod = temp % 10;
sum += tempMod * tempMod;
temp /= 10;
}
if (inRange)
{
cache[current] = sum;
}
}
current = sum;
if(history[current] == i)
{
if(current == 1)
{
known.push_back(i);
}
break;
}
history[current] = i;
}
}
}
int main()
{
while(true)
{
int upperBound;
std::vector<int> known;
std::cout << "Pick an upper bound: ";
std::cin >> upperBound;
long start, end;
start = GetTickCount();
calcMain(upperBound, known);
end = GetTickCount();
for (size_t i = 0; i < known.size(); ++i) {
std::cout << known[i] << ", ";
}
double seconds = (double)(end-start) / 1000.0;
std::cout << std::endl << seconds << " seconds." << std::endl << std::endl;
}
return 0;
}
Stumbled over this page whilst bored and thought I'd golf it in js. The algorithm is my own, and I haven't checked it thoroughly against anything other than my own calculations (so it could be wrong). It calculates the first 1e7 happy numbers and stores them in h. If you want to change it, change both the 7s.
m=1e7,C=7*81,h=[1],t=true,U=[,,,,t],n=w=2;
while(n<m){
z=w,s=0;while(z)y=z%10,s+=y*y,z=0|z/10;w=s;
if(U[w]){if(n<C)U[n]=t;w=++n;}else if(w<n)h.push(n),w=++n;}
This will print the first 1000 items for you in console or a browser:
o=h.slice(0,m>1e3?1e3:m);
(!this.document?print(o):document.load=document.write(o.join('\n')));
155 characters for the functional part and it appears to be as fast* as Dr. Asik's offering on firefox or v8 (350-400 times as fast as the original python program on my system when running time d8 happygolf.js or js -a -j -p happygolf.js in spidermonkey).
I shall be in awe of the analytic skills anyone who can figure out why this algorithm is doing so well without referencing the longer, commented, fortran version.
I was intrigued by how fast it was, so I learned fortran to get a comparison of the same algorithm, be kind if there are any glaring newbie mistakes, it's my first fortran program. http://pastebin.com/q9WFaP5C
It's static memory wise, so to be fair to the others, it's in a self-compiling shell script, if you don't have gcc/bash/etc strip out the preprocessor and bash stuff at the top, set the macros manually and compile it as fortran95.
Even if you include compilation time it beats most of the others here. If you don't, it's about ~3000-3500 times as fast as the original python version (and by extension >40,000 times as fast as the C++*, although I didn't run any of the C++ programs).
Surprisingly many of the optimizations I tried in the fortran version (incl some like loop unrolling which I left out of the pasted version due to small effect and readability) were detrimental to the js version. This exercise shows that modern trace compilers are extremely good (within a factor of 7-10 of carefully optimized, static memory fortran) if you get out of their way and don't try any tricky stuff.
get out of their way, and trying to do tricky stuff
Finally, here's a much nicer, more recursive js version.
// to s, then integer divides x by 10.
// Repeats until x is 0.
function sumsq(x) {
var y,s=0;
while(x) {
y = x % 10;
s += y * y;
x = 0| x / 10;
}
return s;
}
// A boolean cache for happy().
// The terminating happy number and an unhappy number in
// the terminating sequence.
var H=[];
H[1] = true;
H[4] = false;
// Test if a number is happy.
// First check the cache, if that's empty
// Perform one round of sumsq, then check the cache
// For that. If that's empty, recurse.
function happy(x) {
// If it already exists.
if(H[x] !== undefined) {
// Return whatever is already in cache.
return H[x];
} else {
// Else calc sumsq, set and return cached val, or if undefined, recurse.
var w = sumsq(x);
return (H[x] = H[w] !== undefined? H[w]: happy(w));
}
}
//Main program loop.
var i, hN = [];
for(i = 1; i < 1e7; i++) {
if(happy(i)) { hN.push(i); }
}
Surprisingly, even though it is rather high level, it did almost exactly as well as the imperative algorithm in spidermonkey (with optimizations on), and close (1.2 times as long) in v8.
Moral of the story I guess, spend a bit of time thinking about your algorithm if it's important. Also high level languages already have a lot of overhead (and sometimes have tricks of their own to reduce it) so sometimes doing something more straightforwared or utilizing their high level features is just as fast. Also micro-optimization doesn't always help.
*Unless my python installation is unusually slow, direct times are somewhat meaningless as this is a first generation eee.
Times are:
12s for fortran version, no output, 1e8 happy numbers.
40s for fortran version, pipe output through gzip to disk.
8-12s for both js versions. 1e7 happy numbers, no output with full optimization
10-100s for both js versions 1e7 with less/no optimization (depending on definition of no optimization, the 100s was with eval()) no output
I'd be interested to see times for these programs on a real computer.
I am not an expert at C++ optimization, but I believe the speed difference may be due to the fact that Python lists have preallocated more space at the beginning while your C++ vectors must reallocate and possibly copy every time it grows.
As for GMan's comment about find, I believe that the Python "in" operator is also a linear search and is the same speed.
Edit
Also I just noticed that you rolled your own pow function. There is no need to do that and the stdlib is likely faster.
Here is another way that relies on memorising all the numbers already explored.
I obtain a factor x4-5, which is oddly stable against DrAsik's code for 1000 and 1000000, I expected the cache to be more efficient the more numbers we were exploring. Otherwise, the same kind of classic optimizations have been applied. BTW, if the compiler accepts NRVO (/RNVO ? I never remember the exact term) or rvalue references, we wouldn't need to pass the vector as an out parameter.
NB: micro-optimizations are still possible IMHO, and moreover the caching is naive as it allocates much more memory than really needed.
enum Status {
never_seen,
being_explored,
happy,
unhappy
};
char const* toString[] = { "never_seen", "being_explored", "happy", "unhappy" };
inline size_t sum_squares(size_t i) {
size_t s = 0;
while (i) {
const size_t digit = i%10;
s += digit * digit;
i /= 10;
}
return s ;
}
struct Cache {
Cache(size_t dim) : m_cache(dim, never_seen) {}
void set(size_t n, Status status) {
if (m_cache.size() <= n) {
m_cache.resize(n+1, never_seen);
}
m_cache[n] = status;
// std::cout << "(c[" << n << "]<-"<<toString[status] << ")";
}
Status operator[](size_t n) const {
if (m_cache.size() <= n) {
return never_seen;
} else {
return m_cache[n];
}
}
private:
std::vector<Status> m_cache;
};
void search_happy_lh(size_t upper_bound, std::vector<size_t> & happy_numbers)
{
happy_numbers.clear();
happy_numbers.reserve(upper_bound); // it doesn't improve much the performances
Cache cache(upper_bound+1);
std::vector<size_t> current_stack;
cache.set(1,happy);
happy_numbers.push_back(1);
for (size_t i = 2; i<=upper_bound ; ++i) {
// std::cout << "\r" << i << std::flush;
current_stack.clear();
size_t s= i;
while ( s != 1 && cache[s]==never_seen)
{
current_stack.push_back(s);
cache.set(s, being_explored);
s = sum_squares(s);
// std::cout << " - " << s << std::flush;
}
const Status update_with = (cache[s]==being_explored ||cache[s]==unhappy) ? unhappy : happy;
// std::cout << " => " << s << ":" << toString[update_with] << std::endl;
for (size_t j=0; j!=current_stack.size(); ++j) {
cache.set(current_stack[j], update_with);
}
if (cache[i] == happy) {
happy_numbers.push_back(i);
}
}
}
Here's a C# version:
using System;
using System.Collections.Generic;
using System.Text;
namespace CSharp
{
class Program
{
static void Main (string [] args)
{
while (true)
{
Console.Write ("Pick an upper bound: ");
String
input = Console.ReadLine ();
uint
upper_bound;
if (uint.TryParse (input, out upper_bound))
{
DateTime
start = DateTime.Now;
CalcHappyNumbers (upper_bound);
DateTime
end = DateTime.Now;
TimeSpan
span = end - start;
Console.WriteLine ("Time taken = " + span.TotalSeconds + " seconds.");
}
else
{
Console.WriteLine ("Error in input, unable to parse '" + input + "'.");
}
}
}
enum State
{
Happy,
Sad,
Unknown
}
static void CalcHappyNumbers (uint upper_bound)
{
SortedDictionary<uint, State>
happy = new SortedDictionary<uint, State> ();
SortedDictionary<uint, bool>
happy_numbers = new SortedDictionary<uint, bool> ();
happy [1] = State.Happy;
happy_numbers [1] = true;
for (uint current = 2 ; current < upper_bound ; ++current)
{
FindState (ref happy, ref happy_numbers, current);
}
//foreach (KeyValuePair<uint, bool> pair in happy_numbers)
//{
// Console.Write (pair.Key.ToString () + ", ");
//}
//Console.WriteLine ("");
}
static State FindState (ref SortedDictionary<uint, State> happy, ref SortedDictionary<uint,bool> happy_numbers, uint value)
{
State
current_state;
if (happy.TryGetValue (value, out current_state))
{
if (current_state == State.Unknown)
{
happy [value] = State.Sad;
}
}
else
{
happy [value] = current_state = State.Unknown;
uint
new_value = 0;
for (uint i = value ; i != 0 ; i /= 10)
{
uint
lsd = i % 10;
new_value += lsd * lsd;
}
if (new_value == 1)
{
current_state = State.Happy;
}
else
{
current_state = FindState (ref happy, ref happy_numbers, new_value);
}
if (current_state == State.Happy)
{
happy_numbers [value] = true;
}
happy [value] = current_state;
}
return current_state;
}
}
}
I compared it against Dr_Asik's C++ code. For an upper bound of 100000 the C++ version ran in about 2.9 seconds and the C# version in 0.35 seconds. Both were compiled using Dev Studio 2005 using default release build options and both were executed from a command prompt.
Here's some food for thought: If given the choice of running a 1979 algorithm for finding prime numbers in a 2009 computer or a 2009 algorithm on a 1979 computer, which would you choose?
The new algorithm on ancient hardware would be the better choice by a huge margin. Have a look at your "helper" functions.
There are quite a few optimizations possible:
(1) Use const references
bool inVector(int inQuestion, const vector<int>& known)
{
for(vector<int>::const_iterator it = known.begin(); it != known.end(); ++it)
if(*it == inQuestion)
return true;
return false;
}
int sum(const vector<int>& given)
{
int sum = 0;
for(vector<int>::const_iterator it = given.begin(); it != given.end(); ++it)
sum += *it;
return sum;
}
(2) Use counting down loops
int pow(int given, int power)
{
int current = 1;
while(power--)
current *= given;
return current;
}
Or, as others have said, use the standard library code.
(3) Don't allocate buffers where not required
vector<int> squares;
for (int temp = current; temp != 0; temp /= 10)
{
squares.push_back(pow(temp % 10, 2));
}
With similar optimizations as PotatoSwatter I got time for 10000 numbers down from 1.063 seconds to 0.062 seconds (except I replaced itoa with standard sprintf in the original).
With all the memory optimizations (don't pass containers by value - in C++ you have to explicitly decide whether you want a copy or a reference; move operations that allocate memory out of inner loops; if you already have the number in a char buffer, what's the point of copying it to std::string etc) I got it down to 0.532.
The rest of the time came from using %10 to access digits, rather than converting numbers to string.
I suppose there might be another algorithmic level optimization (numbers that you have encountered while finding a happy number are themselves also happy numbers?) but I don't know how much that gains (there is not that many happy numbers in the first place) and this optimization is not in the Python version either.
By the way, by not using string conversion and a list to square digits, I got the Python version from 0.825 seconds down to 0.33 too.
#!/usr/bin/env python
import timeit
upperBound = 0
def calcMain():
known = set()
for i in xrange(0,upperBound+1):
next = False
current = i
history = set()
while not next:
squaresum=0
while current > 0:
current, digit = divmod(current, 10)
squaresum += digit * digit
current = squaresum
if current in history:
next = True
if current == 1:
known.add(i)
history.add(current)
while True:
upperBound = input("Pick an upper bound: ")
result = timeit.Timer(calcMain).timeit(1)
print result, "seconds.\n"
I made a couple of minor changes to your original python code example that make a better than 16x improvement to the performance of the code.
The changes I made took the 100,000 case from about 9.64 seconds to about 3.38 seconds.
The major change was to make the mod 10 and accumulator changes to run in a while loop. I made a couple of other changes that improved execution time in only fractions of hundredths of seconds. The first minor change was changing the main for loop from a range list comprehension to an xrange iterator. The second minor change was substituting the set class for the list class for both the known and history variables.
I also experimented with iterator comprehensions and precalculating the squares but they both had negative effects on the efficiency.
I seem to be running a slower version of python or on a slower processor than some of the other contributers. I would be interest in the results of someone else's timing comparison of my python code against one of the optimized C++ versions of the same algorithm.
I also tried using the python -O and -OO optimizations but they had the reverse of the intended effect.
Why is everyone using a vector in the c++ version? Lookup time is O(N).
Even though it's not as efficient as the python set, use std::set. Lookup time is O(log(N)).