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When ancient numerical demons meet physics-informed machine learning: adjoint-based gradients for implicit differentiable modeling
Research article (Hydrology and earth system sciences, 2024) · cited 28× · AI/ML
When ancient numerical demons meet physics-informed machine learning: adjoint-based gradients for implicit differentiable modeling
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When ancient numerical demons meet physics-informed machine learning: adjoint-based gradients for implicit differentiable modeling is a scholarly article[1].
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When ancient numerical demons meet physics-informed machine learning: adjoint-based gradients for implicit differentiable modeling's instance of is recorded as scholarly article[2].
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APA4ort.xyz Knowledge Graph. (2026). When ancient numerical demons meet physics-informed machine learning: adjoint-based gradients for implicit differentiable modeling. Retrieved May 24, 2026, from https://4ort.xyz/entity/when-ancient-numerical-demons-meet-physics-informed-machine-learning-adjoint-based-gradients-for-implicit-differentiable