“…In general, there is no need for the compression error to be much smaller than the discretization or truncation errors of the computation. Lossy compression schemes that have been proposed for scientific floating point data in different contexts include ISABELA 3 (In-situ Sort-And-B-spline Error-bounded Lossy Abatement) [13], SQE [14], zfp 4 [15][16][17], SZ 5 1.1 [18] and 1.4 [19,20], multilevel transform coding on unstructured grids (TCUG) [21,22], adaptive thinning (AT) [23,24] and adaptive coarsening (AC) [25,26], TuckerMPI [27,28], TTHRESH [29], MGARD [30], HexaShrink [31], and hybrids of different methods [32].…”