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#AltDevBlog » Parallel Implementations
John Carmack describes this code-evolution approach to adding new code:
The last two times I did this, I got the software rendering code running on the new platform first, so everything could be tested out at low frame rates, then implemented the hardware accelerated version in parallel, setting things up so you could instantly switch between the two at any time.  For a mobile OpenGL ES application being developed on a windows simulator, I opened a completely separate window for the accelerated view, letting me see it simultaneously with the original software implementation.  This was a very significant development win.

If the task you are working on can be expressed as a pure function that simply processes input parameters into a return structure, it is easy to switch it out for different implementations.  If it is a system that maintains internal state or has multiple entry points, you have to be a bit more careful about switching it in and out.  If it is a gnarly mess with lots of internal callouts to other systems to maintain parallel state changes, then you have some cleanup to do before trying a parallel implementation.

There are two general classes of parallel implementations I work with:  The reference implementation, which is much smaller and simpler, but will be maintained continuously, and the experimental implementation, where you expect one version to “win” and consign the other implementation to source control in a couple weeks after you have some confidence that it is both fully functional and a real improvement.

It is completely reasonable to violate some generally good coding rules while building an experimental implementation – copy, paste, and find-replace rename is actually a good way to start.  Code fearlessly on the copy, while the original remains fully functional and unmolested.  It is often tempting to shortcut this by passing in some kind of option flag to existing code, rather than enabling a full parallel implementation.  It is a  grey area, but I have been tending to find the extra path complexity with the flag approach often leads to messing up both versions as you work, and you usually compromise both implementations to some degree.

(via Marc)
via:marc  coding  john-carmack  parallel  development  evolution  lifecycle  project-management 
june 2014 by jm
Using genetic algorithms to find Starcraft 2 build orders
discovered a previously-unknown optimal build strategy for the Zerg race -- how cool is that
zerg-rush  starcraft  ga  genetic-algorithms  evolution  gaming  coding  from delicious
november 2010 by jm

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