PDEBench and le_pde

PDEBench
70
Verified
le_pde
37
Emerging
Maintenance 13/25
Adoption 10/25
Maturity 25/25
Community 22/25
Maintenance 0/25
Adoption 7/25
Maturity 16/25
Community 14/25
Stars: 1,082
Forks: 141
Downloads:
Commits (30d): 1
Language: Python
License:
Stars: 29
Forks: 5
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
No risk flags
Stale 6m No Package No Dependents

About PDEBench

pdebench/PDEBench

PDEBench: An Extensive Benchmark for Scientific Machine Learning

This project provides a comprehensive benchmark for evaluating machine learning models designed to solve Partial Differential Equations (PDEs). It offers a wide range of realistic physical problems, along with ready-to-use datasets containing various initial/boundary conditions and PDE parameters. Scientists, engineers, and researchers working with scientific machine learning can use this to compare and develop methods for simulating complex physical phenomena.

scientific-machine-learning computational-physics numerical-simulation differential-equations model-benchmarking

About le_pde

snap-stanford/le_pde

LE-PDE accelerates PDEs' forward simulation and inverse optimization via latent global evolution, achieving significant speedup with SOTA accuracy

This project helps scientists and engineers quickly simulate complex physical systems and optimize designs. It takes in real-world data about a physical system, like weather patterns or material properties, and outputs rapid predictions for how that system will evolve over time, or suggests optimal configurations. Users include those working in weather forecasting, material science, and engine design who need to run many simulations quickly.

scientific-simulation engineering-design weather-forecasting material-science fluid-dynamics

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