# Optimizing Conway's 'Game of Life'

To experiment, I've (long ago) implemented Conway's Game of Life (and I'm aware of this related question!).

My implementation worked by keeping 2 arrays of booleans, representing the 'last state', and the 'state being updated' (the 2 arrays being swapped at each iteration). While this is reasonably fast, I've often wondered about how to optimize this.

One idea, for example, would be to precompute at iteration N the zones that could be modified at iteration (N+1) (so that if a cell does not belong to such a zone, it won't even be considered for modification at iteration (N+1)). I'm aware that this is very vague, and I never took time to go into the details...

Do you have any ideas (or experience!) of how to go about optimizing (for speed) Game of Life iterations?

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I am going to quote my answer from the other question, because the chapters I mention have some very interesting and fine-tuned solutions. Some of the implementation details are in c and/or assembly, yes, but for the most part the algorithms can work in any language:

Chapters 17 and 18 of Michael Abrash's Graphics Programmer's Black Book are one of the most interesting reads I have ever had. It is a lesson in thinking outside the box. The whole book is great really, but the final optimized solutions to the Game of Life are incredible bits of programming.

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That's definitively a must-read book! –  ComSubVie Oct 1 '08 at 17:46
@Chris: Links to byte.com are now dead :( I fixed the links to point to gamedev.net. –  Juha Syrjälä Jul 4 '11 at 16:34
@Juha: Thanks for updating. –  Chris Marasti-Georg Jul 5 '11 at 16:47

There are some super-fast implementations that (from memory) represent cells of 8 or more adjacent squares as bit patterns and use that as an index into a large array of precalculated values to determine in a single machine instruction if a cell is live or dead.

Check out here:

http://dotat.at/prog/life/life.html

Also XLife:

http://linux.maruhn.com/sec/xlife.html

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You should look into Hashlife, the ultimate optimization. It uses the quadtree approach that skinp mentioned.

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The algorithm itself is inherently parallelizable. Using the same double-buffered method in an unoptimized CUDA kernel, I'm getting around 25ms per generation in a 4096x4096 wrapped world.

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There are table-driven solutions for this that resolve multiple cells in each table lookup. A google query should give you some examples.

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Don't exactly know how this can be done, but I remember some of my friends had to represent this game's grid with a Quadtree for a assignment. I'm guess it's real good for optimizing the space of the grid since you basically only represent the occupied cells. I don't know about execution speed though.

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It's a two dimensional automaton, so you can probably look up optimization techniques. Your notion seems to be about compressing the number of cells you need to check at each step. Since you only ever need to check cells that are occupied or adjacent to an occupied cell, perhaps you could keep a buffer of all such cells, updating it at each step as you process each cell.

If your field is initially empty, this will be much faster. You probably can find some balance point at which maintaining the buffer is more costly than processing all the cells.

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As mentioned in Arbash's Black Book, one of the most simple and straight forward ways to get a huge speedup is to keep a change list.

Instead of iterating through the entire cell grid each time, keep a copy of all the cells that you change.

This will narrow down the work you have to do on each iteration.

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Two ideas:

(1) Many configurations are mostly empty space. Keep a linked list (not necessarily in order, that would take more time) of the live cells, and during an update, only update around the live cells (this is similar to your vague suggestion, OysterD :)

(2) Keep an extra array which stores the # of live cells in each row of 3 positions (left-center-right). Now when you compute the new dead/live value of a cell, you need only 4 read operations (top/bottom rows and the center-side positions), and 4 write operations (update the 3 affected row summary values, and the dead/live value of the new cell). This is a slight improvement from 8 reads and 1 write, assuming writes are no slower than reads. I'm guessing you might be able to be more clever with such configurations and arrive at an even better improvement along these lines.

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