1000x Faster Deep-Learning at Petascale Using Intel Xeon Phi Processors
by staff from High-Performance Computing News Analysis | insideHPC on (#35CTE)
A cumulative effort over several years to scale the training of deep-learning neural networks has resulted in the first demonstration of petascale deep-learning training performance, and further to deliver this performance when solving real science problems. The result reflects the combined efforts of NERSC (National Energy Research Scientific Computing Center), Stanford and Intel to solve real world use cases rather than simply report on performance benchmarks.
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