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A memory-efficient neural ODE framework based on high-level adjoint
  differentiation
v1v2v3 (latest)

A memory-efficient neural ODE framework based on high-level adjoint differentiation

IEEE Transactions on Artificial Intelligence (IEEE TAI), 2022
2 June 2022
Hong Zhang
Wenjun Zhao
ArXiv (abs)PDFHTML

Papers citing "A memory-efficient neural ODE framework based on high-level adjoint differentiation"

2 / 2 papers shown
Title
OS-net: Orbitally Stable Neural Networks
OS-net: Orbitally Stable Neural Networks
M. Ngom
Carlo Graziani
97
0
0
26 Sep 2023
Generalized Neural Closure Models with Interpretability
Generalized Neural Closure Models with InterpretabilityScientific Reports (Sci Rep), 2023
Abhinava Gupta
Pierre FJ Lermusiaux
AI4CE
163
14
0
15 Jan 2023
1