Summit Supercomputer Breaks Exaop Barrier on Neural Net Trained to Recognize Extreme Weather Patterns
by staff from High-Performance Computing News Analysis | insideHPC on (#409A7)
"Using a climate dataset from Berkeley Lab on the Summit supercomputer at Oak Ridge, they trained a deep neural network to identify extreme weather patterns from high-resolution climate simulations. By tapping into the specialized NVIDIA Tensor Cores built into the GPUs at scale, the researchers achieved a peak performance of 1.13 exaops and a sustained performance of 0.999 - the fastest deep learning algorithm reported to date and an achievement that earned them a spot on this year's list of finalists for the Gordon Bell Prize."
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