August 19, 2021
The new HPC system at the Graubünden University of Applied Sciences is now occupied with complex research tasks – but for the past few months, it’s had its Read more…
September 17, 2013
David Brown, the director of the Computational Research Division at Lawrence Berkeley National Laboratory, explores the deep connection between mathematics and modern computer science. Read more…
August 19, 2013
When we think about progress in HPC, most of us use hardware speed, as reported in listings like the Top500, as our yardstick. But, is that the whole story – or even its most important component? Read more…
April 20, 2011
US-Australia research team solves "impossible" mathematical calculation. Read more…
February 23, 2010
IBM is tapping mathematical models to optimize business practices. Read more…
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