TROPHY: Trust Region Optimization Using a Precision Hierarchy
International Conference on Computational Science, 2022•Springer
We present an algorithm to perform trust-region-based optimization for nonlinear
unconstrained problems. The method selectively uses function and gradient evaluations at
different floating-point precisions to reduce the overall energy consumption, storage, and
communication costs; these capabilities are increasingly important in the era of exascale
computing. In particular, we are motivated by a desire to improve computational efficiency for
massive climate models. We employ our method on two examples: the CUTEst test set and a …
unconstrained problems. The method selectively uses function and gradient evaluations at
different floating-point precisions to reduce the overall energy consumption, storage, and
communication costs; these capabilities are increasingly important in the era of exascale
computing. In particular, we are motivated by a desire to improve computational efficiency for
massive climate models. We employ our method on two examples: the CUTEst test set and a …
Abstract
We present an algorithm to perform trust-region-based optimization for nonlinear unconstrained problems. The method selectively uses function and gradient evaluations at different floating-point precisions to reduce the overall energy consumption, storage, and communication costs; these capabilities are increasingly important in the era of exascale computing. In particular, we are motivated by a desire to improve computational efficiency for massive climate models. We employ our method on two examples: the CUTEst test set and a large-scale data assimilation problem to recover wind fields from radar returns. Although this paper is primarily a proof of concept, we show that if implemented on appropriate hardware, the use of mixed-precision can significantly reduce the computational load compared with fixed-precision solvers.
Springer
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