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JAX-FLUIDS: A fully-differentiable high-order computational fluid dynamics solver for compressible two-phase flows
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Message Passing Neural PDE Solvers
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Physical Design using Differentiable Learned Simulators
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Learned Coarse Models for Efficient Turbulence Simulation
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Surrogate-data-enriched Physics-Aware Neural Networks
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A Large-Scale Benchmark for the Incompressible Navier-Stokes Equations
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Simulation Intelligence: Towards a New Generation of Scientific Methods
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Composing Partial Differential Equations with Physics-Aware Neural Networks
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Learning Free-Surface Flow with Physics-Informed Neural Networks
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HyperPINN: Learning parameterized differential equations with physics-informed hypernetworks
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Characterizing possible failure modes in physics-informed neural networks
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Neural Operator: Learning Maps Between Function Spaces
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An Extensible Benchmark Suite for Learning to Simulate Physical Systems
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Physics-informed neural networks for solving Reynolds-averaged Navier-Stokes equations
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Learning meaningful controls for fluids
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Brax - A Differentiable Physics Engine for Large Scale Rigid Body Simulation
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Physics-informed machine learning: case studies for weather and climate modelling
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NVIDIA SimNet^{TM}: an AI-accelerated multi-physics simulation framework
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Fourier Neural Operator for Parametric Partial Differential Equations
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When and why PINNs fail to train: A neural tangent kernel perspective
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Variational Autoencoding of PDE Inverse Problems
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PyTorch: An Imperative Style, High-Performance Deep Learning Library
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Towards Physics-informed Deep Learning for Turbulent Flow Prediction
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Data-driven science and engineering: machine learning, dynamical systems, and control
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The Essential Tools of Scientific Machine Learning (Scientific ML)
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SciPy 1.0: fundamental algorithms for scientific computing in Python
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DeepXDE: A Deep Learning Library for Solving Differential Equations
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dolfin-adjoint 2018.1: automated adjoints for FEniCS and Firedrake
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Data-driven reduced order modeling for time-dependent problems
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Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
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Inverse Problems for the Heat Equation Using Conjugate Gradient Methods
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Neural Ordinary Differential Equations
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Deep Neural Networks Motivated by Partial Differential Equations
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Emulation Engines: Choice and Quantification of Uncertainty for Complex Hydrological Models
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Emulation Engines: Choice and Quantification of Uncertainty for Complex Hydrological Models
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PMLB: a large benchmark suite for machine learning evaluation and comparison
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Entropy-Based Experimental Design for Optimal Model Discrimination in the Geosciences
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The FAIR Guiding Principles for scientific data management and stewardship
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U-Net: Convolutional Networks for Biomedical Image Segmentation
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Adam: A Method for Stochastic Optimization
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Practical Bayesian Optimization of Machine Learning Algorithms
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PyClaw: Accessible, Extensible, Scalable Tools for Wave Propagation Problems
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An overview of the HDF5 technology suite and its applications
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Inverse problems: A Bayesian perspective
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Sorption isotherms: A review on physical bases, modeling and measurement
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The Role of Ambipolar Diffusion in the Formation Process of Moderately Magnetized Diffuse Clouds
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Inverse problem theory - and methods for model parameter estimation
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Restoration of the contact surface in the HLL-Riemann solver
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ZEUS-2D: A radiation magnetohydrodynamics code for astrophysical flows in two space dimensions. I - The hydrodynamic algorithms and tests. II - The magnetohydrodynamic algorithms and tests
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Stationary wave solutions of a system of reaction-diffusion equations derived from the Fitzhugh-Nagumo equations
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Towards the ultimate conservative difference scheme V. A second-order sequel to Godunov's method
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Curve Fitting and Optimal Design for Prediction
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On Bayesian Methods for Seeking the Extremum
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The chemical basis of morphogenesis
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Über die partiellen Differenzengleichungen der mathematischen Physik
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Model Inversion for Spatio-temporal Processes using the Fourier Neural Operator
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The M4 Competition: 100,000 time series and 61 forecasting methods
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Phiflow: A differentiable PDE solving framework for deep learning via physical simulations
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Hydra -a framework for elegantly configuring complex applications. Github
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The Finite Volume Method in Computational Fluid 521 Dynamics
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The Dataverse Network®: An Open-Source Application for Sharing, Discovering and Preserving Data
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Lecture 518 Notes in Computer Science
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Feynman lectures on physics - Volume 1
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PDEBench: A diverse and comprehensive benchmark for scientific machine learning
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Did you discuss whether and how consent was obtained from people whose data you’re using/curating?
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c) Did you include any new assets either in the supplemental material or as a URL? [Yes] All the data generation scripts are included in the code repository
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If you used crowdsourcing or conducted research with human subjects
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to correct labeling errors, add new instances, delete instances')? (If so, please describe how often
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Concerning the data size, 1D data have 4 -20 GB, 2D data have 6 -100 GB, 3D data have 60 -80 GB, depending on PDEs and parameters
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Distribution 1. Will the dataset be distributed to third parties outside of the entity (e.g., company, institution, organization) on behalf of which the dataset was created? (If so
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making use of a Python API
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If consent was obtained
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Uses 1. Has the dataset been used for any tasks already? (If so, please provide a description
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ZEUS-2D: A Radiation Magnetohydrodynamics Code for 560
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Are there tasks for which the dataset should not be used? (If so
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Maintenance 1. Who is supporting/hosting/maintaining the dataset? The storage infrastructure, DaRUS, is maintained by the University of Stuttgart and a dedicated team of DaRUS
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Does the dataset relate to people? (If not, you may skip the remaining questions in this section.)
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were individuals in question told that their data would be retained for a fixed period of time and then deleted)? (If so
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please provide a link or other access point.) Currently, no. As errors are encountered, future versions of the dataset may be released
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What (other) tasks could the dataset be used for? The dataset could possibly be used for developing or testing ML models for fitting the out-of-distribution data
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Are relationships between individual instances made explicit
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Motivation 1. For what purpose was the dataset created? Was there a specific task in mind? Was there a specific gap that needed to be filled? Please provide a description
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An example of snipped code for reading data is introduced in subsection 3.5. Information on how to use the baseline and read the dataset is provided in the project home page
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Is there a repository that links to any or all papers or systems that use the dataset? (If so
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How can the owner/curator/manager of the dataset be contacted
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Was the "raw" data saved in addition to the preprocessed/cleaned/labeled data (e.g., to support unanticipated future uses)? (If so
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When will the dataset be distributed? The dataset is distributed as of
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Does the dataset contain data that, if viewed directly, might be offensive, insulting, threatening, or might otherwise cause anxiety? (If so, please describe why.)
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At most we rejected meaningless solutions because of the failure of numerical simulations, such as data with all zeros or Nan values
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Is the software used to preprocess/clean/label the instances available? (If so
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Is it possible to identify individuals (i.e., one or more natural persons), either directly or indirectly (i.e., in combination with other data) from the dataset? (If so, please describe how.)
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Did you collect the data from the individuals in question directly, or obtain it via third parties or other sources
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b) Did you mention the license of the assets? [Yes] Appropriate license notices are included in the affected source code files, and license of new assets is included in
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Any other comments? None