MeshODE: A Robust and Scalable Framework for Mesh Deformation
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Updated
May 29, 2020 - C++
MeshODE: A Robust and Scalable Framework for Mesh Deformation
Differentiable Reacting Flow Modeling Software
FMIFlux.jl is a free-to-use software library for the Julia programming language, which offers the ability to place FMUs (fmi-standard.org) everywhere inside of your ML topologies and still keep the resulting model trainable with a standard (or custom) FluxML training process.
Attentive Co-Evolving Neural Ordinary Differential Equations
Neural ODEs as Feedback Policies for Nonlinear Optimal Control (IFAC 2023) https://doi.org/10.1016/j.ifacol.2023.10.1248
Introcution to neural ordinary diferential equations
Subspace Inference package for uncertainty analysis in deep neural networks and neural ordinary differential equations using Julia
Benchmarking Surrogates for coupled ODE systems.
Training stiff NODE in data-driven wastewater process modelling
Approximately Bayesian Ensembling for Parameterized Neural ODEs.
Finding parameters (values of coefficients) for a system of differential equations with constant coefficients at known values at a number of points.
Warwick Project
The core idea is to parametrize the right-hand side of an ordinary differential equation (ODE) using a tensor train (TT) decomposition, such that the discretization of the ODE via standard numerical methods, such as the Explicit Euler scheme, implicitly induces a compositional TT structure.
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