Got myself a few months ago into the optimization rabbit hole as I had a slow quant finance library to take care of, and for now my most successful optimizations are using local memory allocators (see my C++ post, I also played with mimalloc which helped but custom local memory allocators are even better) and rethinking class layouts in a more “data-oriented” way (mostly going from array-of-structs to struct-of-arrays layouts whenever it’s more advantageous to do so, see for example this talk).

What are some of your preferred optimizations that yielded sizeable gains in speed and/or memory usage? I realize that many optimizations aren’t necessarily specific to any given language so I’m asking in !programming@programming.dev.

  • Die4Ever@programming.dev
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    1 year ago

    ok maybe not my biggest or cleanest optimization, but an interesting one

    I made the WCS Predictor for StarCraft 2 eSports, which would simulate the whole year of tournaments to figure out the chances for each player qualifying for the world championship (the top 16 players by WCS Points), and it would also show the events that would help/hurt the players. It was a big monte carlo simulation that would run millions of iterations. (My memory is fuzzy here because this was 2013 to 2014)

    Originally I did a data-based approach where each Tournament object had a vector of Round objects (like round of 32, or semifinals, etc) which had a vector of Match objects (like Soulkey vs Innovation, or a 4 player group). The Round class had a property for best_of (best of 3, best of 5, etc). This was really inflexible cause I couldn’t properly simulate complex tournament formats that didn’t fit my data, and it required a lot of if statements that could cause branch prediction misses.

    A tournament definition looked something like this:

    older code example
    		Round ro32("ro32");
    		ro32.best_of=3;
    		ro32.points_for_3rd=150+25;
    		ro32.points_for_4th=100+25;
    		Match ro32GroupA;
    
    		ro32.matches.push_back(ro32GroupA);
    		ro32.matches.push_back(ro32GroupB);
    		ro32.matches.push_back(ro32GroupC);
    		ro32.matches.push_back(ro32GroupD);
    		ro32.matches.push_back(ro32GroupE);
    		ro32.matches.push_back(ro32GroupF);
    		ro32.matches.push_back(ro32GroupG);
    		ro32.matches.push_back(ro32GroupH);
    
    		GSL.rounds.push_back( ro32 );
    

    When I rewrote it for the following year, I ditched the data-driven approach to try to get more efficiency and flexibility, but I definitely didn’t want virtual functions either, so I decided to use templates instead and a custom class for each tournament. Now creating a tournament looked like this:

    newer code example
    
    template
    class Round : public RoundBase
    {
    public:
    	MatchType matches[num_matches];
    // ... more stuff ...
    };
    
    class CodeSBase : public TournamentBase
    {
    public:
    	Round<32, SwissGroup, 8, RandomAdvancement<16, 16>, true > ro32;
    	Round<16, SwissGroup, 4, A1vsB2<8, 8>, true > ro16;
    	Round<8, SingleMatch, 4, StraightAdvancement<4, 4>, true > quarterfinals;
    	Round<4, SingleMatch, 2, StraightAdvancement<2, 2>, true > semifinals;
    	Round<2, SingleMatch, 1, StraightAdvancement<1, 1>, true > finals;
    
    	void init(vector &prev_matches, vector &upcoming_matches)
    	{
    		quarterfinals.best_of = 5;
    		semifinals.best_of = 7;
    		finals.best_of = 7;
    		ro32.points_for_placing[3] = 100;
    		ro32.points_for_placing[2] = 150;
    		ro16.points_for_placing[3] = 300;
    		ro16.points_for_placing[2] = 400;
    		quarterfinals.points_for_placing[1] = 600;
    		semifinals.points_for_placing[1] = 900;
    		finals.points_for_placing[1] = 1250;
    		finals.points_for_placing[0] = 2000;
    		finals.match_placing_to_tournament_placing[0] = 1;
    	}
    
    
    	void predict(Simulation &sim, array &top8, array &bottom24, array &finalists, Rand64 &rng)
    	{
    		RandomAdvancement<16, 16> Ro32toRo16;
    		A1vsB2<8, 8> Ro16toRo8;
    		StraightAdvancement<4, 4> Ro8toRo4;
    		StraightAdvancement<2, 2> Ro4toRo2;
    		StraightAdvancement<1, 1> finalsadv;
    
    		ro32.predict(sim, t_id, Ro32toRo16, rng);
    		ro16.AcceptAdvancements(Ro32toRo16.advancing_players);
    		ro16.predict(sim, t_id, Ro16toRo8, rng);
    		quarterfinals.AcceptAdvancements(Ro16toRo8.advancing_players);
    		quarterfinals.predict(sim, t_id, Ro8toRo4, rng);
    		semifinals.AcceptAdvancements(Ro8toRo4.advancing_players);
    		semifinals.predict(sim, t_id, Ro4toRo2, rng);
    		finals.AcceptAdvancements(Ro4toRo2.advancing_players);
    		finals.predict(sim, t_id, finalsadv, rng);
    
    		top8 = Ro16toRo8.advancing_players;
    		for (uint i = 0; i<8; i++) {
    			bottom24[i] = Ro32toRo16.falling_players[i * 2];
    			bottom24[i + 8] = Ro32toRo16.falling_players[i * 2 + 1];
    			bottom24[i + 16] = Ro16toRo8.falling_players[i];
    		}
    		finalists[0] = finalsadv.advancing_players[0];
    		finalists[1] = finalsadv.falling_players[0];
    	}
    

    All data had very good locality using arrays instead of vectors, everything could be inlined and branch predicted and prefecthed, complex tournament formats could be built even properly handling high placements from one tournament granting you seeding into a different tournament. I think I gained like 3x to 5x speedboost from this alone, I also made it multithreaded and work in batches which improved performance further, which allowed me to get updated results more quickly and with a higher number of samples. I also made it so it could output the results and then keep processing more batches of samples to refine the numbers from there. I wouldn’t normally suggest these kinds of optimizations but it’s a very unusual program to have such a wide hotloop

    The website is gone, but here’s a working archive of it (which I didn’t know existed until writing this post, I thought there were only broken archives)

    archive links, me reminiscing on old times, get ready for stats and graphs overload

    home page: https://web.archive.org/web/20150822091605/http://sc2.4ever.tv:80/

    a tournament page: https://web.archive.org/web/20160323082041/http://sc2.4ever.tv/?page=tournament&tid=27

    a player’s page: https://web.archive.org/web/20161129233856/http://sc2.4ever.tv/?pid=73

    a general checkup page: https://web.archive.org/web/20161130055346/http://sc2.4ever.tv/?page=checkup

    a page for players who must win tournaments to qualify: https://web.archive.org/web/20161129235740/http://sc2.4ever.tv/?page=must_wins

    page showing the simulations history: https://web.archive.org/web/20161130055230/http://sc2.4ever.tv/?page=simulations

    FAQ page: https://web.archive.org/web/20160323073344/http://sc2.4ever.tv/?page=faq

    the fantasy league WCS Wars: https://web.archive.org/web/20161130055233/http://sc2.4ever.tv/?page=gamehome

    my WCS Wars user page https://web.archive.org/web/20160704040152/http://sc2.4ever.tv/?page=user&uid=1