We are happy to announce a major advance in DifferentialEquations.jl. With improvements to #juilalang BDF methods, the QNDF method outperforms CVODE on the full SciMLBenchmarks suite and has replaced it in recommendations and defaults. Read more:
https://t.co/tpfxAmlWSr
Shapley values, a method of explainable Machine Learning (ML), are now in GlobalSensitivity.jl #julialang#sciml. Shapley Effects provide a robust methodology for quantifying the influence of input variables on model outputs. Shapley on Neural ODEs: https://t.co/1x4IsbIOum.
Overhauled error messages make it easy to understand incorrect inputs. Major expansions to docstrings, consistent use of style guides, and new #julialang packages for neural operators (DeepONets, Fourier Neural Operators)? See the #sciml ecosystem update!
https://t.co/RSok0i1Pdl
Are you interested in @SciMLCon 2023? Well we are too, and we're interested in finding out what would make it even better than last year! Please take this survey to share your thoughts:
https://t.co/JfS14Whfer
SciML@JuliaCon 2022 Differentiable Earth system models in Julia | JuliaCon 2022 | Ludovic Räss, Boris Kaus, Julien Le Sommer, Nora Loose, Mathieu Morlighem, Chris Hill, Sarah Williamson, Valentin/Billy, Michel/Krishna, Chris Rackauckas
https://t.co/BJiTpoDyBc