XLB
Lattice Boltzmann solver
A library that accelerates the solution of fluid dynamics problems using a massively parallel lattice Boltzmann method.
XLB: Accelerated Lattice Boltzmann (XLB) for Physics-based ML
229 stars
11 watching
24 forks
Language: Python
last commit: 17 days ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
rlee32/lbm_matlab | A MATLAB implementation of various Lattice Boltzmann Method (LBM) codes for simulating fluid dynamics and turbulence | 88 |
siramirsaman/lbm | A Matlab implementation of the Lattice Boltzmann Method for simulating fluid flow around curved boundaries. | 64 |
quarkslab/nfllib | An NTT-based library for fast lattice computations. | 167 |
lollcat/fab-torch | An implementation of the Flow Annealed Importance Sampling Bootstrap algorithm in Python. | 51 |
l0garithmic/fastcolabcopy | Fast and parallel file transfer tool | 29 |
nickabattista/ib2d | An implementation of the immersed boundary method for 2D simulations | 167 |
clementfarabet/lbfgs | An interface to a library providing a quasi-newton method for optimization problems | 2 |
tomz/liblinear-ruby-swig | A Ruby interface to a high-performance machine learning library for large-scale text classification and other linear classifications | 83 |
lge-arc-advancedai/auptimizer | Automates model building and deployment process by optimizing hyperparameters and compressing models for edge computing. | 200 |
beastbyteai/falcon | Automates machine learning model training using pre-set configurations and modular design. | 159 |
prbonn/lidar-mos | This repository provides code and benchmarking tools for learning-based 3D LiDAR object segmentation using sequential data. | 602 |
bimk/platemo | An evolutionary multi-objective optimization platform providing a suite of algorithms and benchmark problems | 1,629 |
acerbilab/bads | An optimization algorithm designed to fit computational models in the absence of gradient information or noisy objective functions. | 246 |
thumnlab/autogl | An autoML framework for machine learning on graphs, enabling researchers and developers to automate the process of building and training neural networks on graph data. | 1,088 |
dustinstansbury/medal | A Matlab environment for building and training deep neural networks with various architectures. | 109 |