streamlining nonlinear programming on gpus | michel schanen, françois pacaud | juliacon 2022
Published 2 years ago • 673 plays • Length 23:48Download video MP4
Download video MP3
Similar videos
-
24:20
juliacon 2020 | optimization algorithms in julia for gpus | michel schanen
-
10:20
differentiable point cloud rasterisation | feldmeier | juliacon 2024
-
8:03
hpc sparse linear algebra in julia with... | f verdugo, af martin huertas | juliacon 2022
-
29:16
joint chance constraints for successful microgrid islanding | nesrine ouanes | juliacon 2023
-
7:38
automating the composition of ml interatomic potentials in julia | emmanuel lujan | juliacon 2023
-
25:56
real time odes for sound synthesis and parameter exploration | camilo eguia | juliacon 2024
-
14:52
modeling in julia at exascale for power grids | michel schanen | juliacon 2019
-
8:08
julia for hpc. welcome and overview | carsten bauer, samuel omlin | juliacon 2023
-
8:05
manopt.jl: optimisation on riemannian manifolds | ronny bergmann | juliacon 2022
-
29:44
improving nonlinear programming support in jump | oscar dowson | juliacon 2023
-
6:34
build, test, sleep, repeat: modernizing julia's ci pipeline | e. saba, d. aluthge | juliacon 2022
-
8:07
solving transient pdes in julia with gridap.jl | oriol colomes | juliacon 2022
-
2:36
rangeenclosures.jl: a flexible api to bound function ranges | luca ferranti | juliacon 2022
-
3:07
feasible nonlinear optimization with lfp-sqp | kevin silmore | juliacon2021