Parallel Software to Offset the Cost of Higher Precision

12/11/2020
by   Jan Verschelde, et al.
0

Hardware double precision is often insufficient to solve large scientific problems accurately. Computing in higher precision defined by software causes significant computational overhead. The application of parallel algorithms compensates for this overhead. Newton's method to develop power series expansions of algebraic space curves is the use case for this application.

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