Naruki-Ichihara / feaxLinks
A compact, high-performance finite element analysis engine built on JAX.
☆62Updated 3 weeks ago
Alternatives and similar repositories for feax
Users that are interested in feax are comparing it to the libraries listed below
Sorting:
- JAX-DIPS is a differentiable interfacial PDE solver.☆48Updated last year
- Differentiable interface to FEniCS for JAX☆58Updated 4 years ago
- PINNs-JAX, Physics-informed Neural Networks (PINNs) implemented in JAX.☆58Updated last year
- The algorithmic differentation tool pyadjoint and add-ons.☆115Updated last month
- Python interface for libROM, library for reduced order models☆62Updated 4 months ago
- A differentiable finite element analysis solver for structural optimization based on JAX☆39Updated 2 weeks ago
- Universal, autodiff-native software components for Simulation Intelligence. 📦☆85Updated this week
- Efficient Differentiable n-d PDE solvers in JAX.☆52Updated 2 months ago
- A JAX-based research framework for writing differentiable numerical simulators with arbitrary discretizations☆131Updated last week
- Efficient and Scalable Physics-Informed Deep Learning and Scientific Machine Learning on top of Tensorflow for multi-worker distributed c…☆117Updated 3 years ago
- JAX-SPH: A Differentiable Smoothed Particle Hydrodynamics Framework☆76Updated 2 months ago
- computational adjoint-based shape optimization and optimal control software for python☆60Updated this week
- Example problems in Physics informed neural network in JAX☆82Updated 2 years ago
- An RL-Gym for Challenge Problems in Data-Driven Modeling and Control of Fluid Dynamics.☆90Updated 5 months ago
- Differentiable interface to FEniCS/Firedrake for JAX using dolfin-adjoint/pyadjoint☆107Updated 2 years ago
- Simple GPU rendering of scientific data with Pytorch, Jax, CuPy, and Warp backends.☆29Updated 2 years ago
- XLB: Accelerated Lattice Boltzmann (XLB) for Physics-based ML☆428Updated last month
- PyTorch-FEniCS interface☆103Updated 4 years ago
- ☆59Updated this week
- Efficient forward- and reverse-mode sparse Jacobians using Jax☆68Updated last month
- Intuitive scientific computing with dimension types for Jax, PyTorch, TensorFlow & NumPy☆94Updated last week
- an encyclopedia of finite element definitions☆69Updated last week
- ☆42Updated last month
- ☆32Updated last year
- Introduction to JAX Workshop @ ETH Zurich, 25 June 2024☆39Updated 8 months ago
- ☆17Updated last year
- Links to works on deep learning algorithms for physics problems, TUM-I15 and beyond☆60Updated 5 years ago
- FEniCS on GPU takes advantage of CUDA cores to solve SPARSE matrix using cuPy and SciPy libraries.☆20Updated 4 years ago
- Solve sparse linear systems in JAX using the KLU algorithm☆36Updated 7 months ago
- Auto-differentiable and hardware-accelerated force density method☆95Updated this week