DiffeqML
@diffeq_ml
Research group for the intersection of deep learning and dynamical systems.
Developers of *torchdyn*
Repo: github.com/DiffEqML/torch…
ID: 1241679327026003969
https://join.slack.com/t/diffeqml/shared_invite/zt-trwgahq8-zgDqFmwS2gHYX6hsRvwDvg 22-03-2020 10:54:13
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We finally got around to open-sourcing more Neural ODE variants in the "torchdyn" library github.com/DiffEqML/torch…, including our latest "stacked neural ODEs" aka continuous-depth models with piece-wise constant parameters. Michael Poli
[1/5] *torchdyn* goes generative! This new release adds continuous normalizing flows Ricky T. Q. Chen will grathwohl David Duvenaud , energy-based Neural DEs Miles Cranmer Sam Greydanus, and extends existing support for higher-order variants. All powered by Lightning! @_willfalcon
We just open-sourced differentiable SDE solvers in PyTorch: github.com/google-researc… Now you can put stochastic differential equations in your deep learning models, and neural nets in your SDEs! Credit to Xuechen Li.
A new paper from DiffEqML research group! We speed up Neural ODE inference by learning how to solve them efficiently through *hypersolvers* Stefano Massaroli Michael Poli The code will be released soon in torchdyn
“Dissecting Neural ODEs” (#neurips2020 _oral_ paper) unveils the dynamical systems anatomy of continuous-depth learning from back-propagation to depth-varying parameters or state augmentation, while introducing several new models (e.g. data-control, adaptive depth) Michael Poli
[1/6] Announcing **torchdyn version 1.0**: github.com/DiffEqML/torch…! Michael Poli Stefano Massaroli. We roughly doubled the number of tutorials (optimal control, parallel-in-time solvers, hybrid systems), added new models and developed a numerics suite for diff eqs and root finding
Two papers accepted at #NeurIPS2021: Differentiable Multiple Shooting Layers arxiv.org/abs/2106.03885 Neural Hybrid Automata arxiv.org/abs/2106.04165 Michael Poli Taiji Suzuki Animesh Garg