What is the computational bottleneck algorithm for medical imaging applications? We are trying to figure out if there is a benefit to run these algorithms on regular cloud server instances or GPU accelerated server instances.
migrated from serverfault.com Dec 27 '11 at 21:49
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Unless the software has been specifically designed with GPU processing power in mind, GPU accelerated instances will be about the same performance as regular commodity server instances, only at a higher price.
I'm willing to gamble and say that the bottleneck of any algorithm, medical or not, imaging or not is the rate at which you can throw data at the CPU, and the number of cores, and the clock rate.
Get some fast CPUs, Insanely fast RAM, blindingly fast striped/mirrored storage, and do it that way.
I suspect that you'll probably find that running on "the cloud" is actually counter-intuitive, or at least counterproductive, as many cloud service providers don't tune their storage backends to cater for high performance computing, but more to providing a little bit of IO to the masses.
I think you'd be better off with owned dedicated hardware, that way, you can spend more time and money in efficiently tuning the hardware stack to match your software stack. Any cloud service provider (including Amazon) will give you some trade offs and compromises.
Oh, and don't forget about not putting all your eggs in one basket. What happens when Amazon goes offline, and nobody can examine any X-Rays, or the poor schmuck who put a heart monitoring application on Amazon Cloud instances, and Amazon went offline in a massive outage.
Aside from the compromises of cloud hosting, the problems of being redundant and resilient to provider outages, not putting critical infrastructure on the cloud, there's other questions surrounding the architecture of your application itself.. Will it scale linearly?
I bet it won't.