Finding “Lookmarks” for Extreme-Scale Simulation and Scientific Data
نویسندگان
چکیده
Next Generation Data Mining-NGDM 07 2 Introduction • Petascale simulations may require significant time to debug / understand. • Interesting regions in the simulation are generally a small part of the whole. • " Lookmarks " that point designers and users to interesting or anomalous regions greatly increase productivity.
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