ISC Working Group 'Marshaling and Serialization in R' (anno May 2024)
-
Updated
May 15, 2024
ISC Working Group 'Marshaling and Serialization in R' (anno May 2024)
Kratos Multiphysics (A.K.A Kratos) is a framework for building parallel multi-disciplinary simulation software. Modularity, extensibility and HPC are the main objectives. Kratos has BSD license and is written in C++ with extensive Python interface.
Official git repository of Elmer FEM software
GRASS GIS - free and open-source geospatial processing engine
pySDC is a Python implementation of the spectral deferred correction (SDC) approach and its flavors, esp. the multilevel extension MLSDC and PFASST.
🦖 Evolve your fixed-length data files into Apache Parquet, fully parallelized!
🚀 R package future.mirai: A Future API for Parallel Processing using 'mirai'
Parallel algorithms and data structures for tree-based AMR with arbitrary element shapes.
R package for the analysis of massive SNP arrays.
Slides, exercises and resources for the 2023-2024 course "Advanced High Performance Computing" under the at "Scientific and Data-Intensive Computing" Master Program at University of Trieste
Netgen/NGSolve is a high performance multiphysics finite element software. It is widely used to analyze models from solid mechanics, fluid dynamics and electromagnetics. Due to its flexible Python interface new physical equations and solution algorithms can be implemented easily.
CUDA C++ Core Libraries
Massively parallel FEM code for phase-field for fracture by Dolbow Lab at Duke University
Investigation of kink-antikink scattering using parallel computing in python.
Parallel programming with Python
Lightweight, general, scalable C++ library for finite element methods
A dev-friendly approach to handle background jobs in Magento 2 🔃
Implementation of the Carry look ahead adder algorihtm, and parallizing the algorithm using OpenMP libriries
Official development repository for SUNDIALS - a SUite of Nonlinear and DIfferential/ALgebraic equation Solvers. Pull requests are welcome for bug fixes and minor changes.
Add a description, image, and links to the parallel-computing topic page so that developers can more easily learn about it.
To associate your repository with the parallel-computing topic, visit your repo's landing page and select "manage topics."