targeting accelerators with mlir.jl | james bradbury | juliacon 2019
Published Streamed 5 years ago • 1.5K plays • Length 11:43Download video MP4
Download video MP3
Similar videos
-
33:58
mlj: machine learning in julia | anthony blaom | juliacon 2019
-
25:03
soss.jl: probabilistic metaprogramming in julia | chad scherrer | juliacon 2019
-
24:29
inferopt.jl: combinatorial optimization in ml pipelines | g dalle, l bouvier, l baty | juliacon 2022
-
10:49
a general-purpose toolbox for efficient kronecker-based learning | michiel stock | juliacon 2019
-
21:43
analyzing and updating code with juliainterpreter.jl and revise.jl | tim holy | juliacon 2019
-
3:27:13
mlj: a machine learning toolbox for julia | workshop | juliacon 2020
-
26:47
intelligent tensors in julia | katharine hyatt, matthew fishman | juliacon 2019
-
35:24
the unreasonable effectiveness of multiple dispatch | stefan karpinski | juliacon 2019
-
36:28
mlj - machine learning for julia
-
55:39
ml community & fastai port call | 2020-10-13
-
12:32
loresio.jl: using jump for semi-infinite optimization
-
17:54
bridging ml and optimization with jump
-
24:00
fast forward and reverse-mode differentiation via enzyme.jl | many speakers | juliacon 2022
-
23:13
metaheuristics.jl: towards any optimization | jesús mejía | juliacon 2022
-
40:10
xla.jl: julia on tpus | elliot saba & keno fischer | juliacon 2019
-
8:41
ml-based surrogate modeling of particle accelerators with julia | joshua villarreal | juliacon 2023
-
11:51
tabulars.jl: metaprogramming for accessing many types of data | andy ferris | juliacon 2017
-
10:08
lineardecisionrules.jl
-
25:35
juliacon 2020 | advanced metaprogramming tools | mike innes