fast forward and reverse-mode differentiation via enzyme.jl | many speakers | juliacon 2022
Published 2 years ago • 1.8K plays • Length 24:00Download video MP4
Download video MP3
Similar videos
-
31:13
enzyme.jl: reverse mode diff'n on llvm ir for julia | v. churavy, w. moses | juliacon 2021
-
8:11
automatic differentiation for solid mechanics in julia | andrea vigliotti | juliacon 2022
-
8:07
simple chains: fast cpu neural networks | chris elrod | juliacon 2022
-
32:36
automatic differentiation techniques used in jump | miles lubin | juliacon 2016
-
8:16
chainrules.jl meets unitful.jl: autodiff via unit analysis | sam buercklin | juliacon 2022
-
12:51
simple reverse-mode autodiff in julia - computational chain
-
7:47
protosyn.jl: a package for molecular manipulation and simulation | josé pereira | juliacon 2022
-
8:06
implicitdifferentiation.jl: differentiating implicit functions | m. tarek, g. dalle | juliacon 2022
-
28:32
mixed-mode automatic differentiation in julia | jarrett revels | juliacon 2017
-
9:47
state of juliageo | josh day, maarten pronk | juliacon 2022
-
9:11
automatic differentiation in julia with forwarddiff.jl
-
24:28
automatic differentiation for quantum electron... | m towara, n schmitz, g kemlin | juliacon 2022
-
10:18
finding fast radio bursts, faster | kiran shila | juliacon 2022
-
25:33
[08x06] calculus using julia automatic differentiation | forwarddiff.jl, reversediff.jl and pluto