“…Though dynamical low-rank approximation (DLRA) [33] offers a significant reduction of computational costs and memory consumption when solving tensor differential equations [26,10,54], the use of DLRA to solve matrix differential equations has sparked immense interest in several communities. Research fields in which DLRA for matrix differential equations has a considerable impact include plasma physics [21,23,16,5,18,12,24,13,20,55], radiation transport [47,14,45,39,46,56,17,3,38], chemical kinetics [29,48,22], wave propagation [28,57], uncertainty quantification [49,2,25,41,42,43,36,30,15,1], and machine learning [52,58,50,51]. These application fields commonly require memory-intensive and computational costly numerical simulations due to the solution's prohibitively large phase space.…”