SmartRedisSmartSim Infrastructure Library Clients.
Stars: ✭ 37 (-80.42%)
faabricMessaging and state layer for distributed serverless applications
Stars: ✭ 39 (-79.37%)
FoxNNSimple neural network
Stars: ✭ 20 (-89.42%)
SmartSimSmartSim Infrastructure Library.
Stars: ✭ 133 (-29.63%)
pyodesys∫ Straightforward numerical integration of systems of ordinary differential equations
Stars: ✭ 85 (-55.03%)
hyperqueueScheduler for sub-node tasks for HPC systems with batch scheduling
Stars: ✭ 48 (-74.6%)
gardeniaGARDENIA: Graph Analytics Repository for Designing Efficient Next-generation Accelerators
Stars: ✭ 22 (-88.36%)
blas-benchmarksTiming results for BLAS (Basic Linear Algebra Subprograms) libraries in R
Stars: ✭ 24 (-87.3%)
raptorGeneral, high performance algebraic multigrid solver
Stars: ✭ 50 (-73.54%)
nanoxNanos++ is a runtime designed to serve as runtime support in parallel environments. It is mainly used to support OmpSs, a extension to OpenMP developed at BSC.
Stars: ✭ 37 (-80.42%)
RamaNetPreforms De novo protein design using machine learning and PyRosetta to generate a novel protein structure
Stars: ✭ 41 (-78.31%)
COBREXA.jlConstraint-Based Reconstruction and EXascale Analysis
Stars: ✭ 21 (-88.89%)
parallelPARALLEL: Stata module for parallel computing
Stars: ✭ 97 (-48.68%)
HPCA collection of various resources, examples, and executables for the general NREL HPC user community's benefit. Use the following website for accessing documentation.
Stars: ✭ 64 (-66.14%)
nautilusNautilus Aerokernel
Stars: ✭ 30 (-84.13%)
ck-envCK repository with components and automation actions to enable portable workflows across diverse platforms including Linux, Windows, MacOS and Android. It includes software detection plugins and meta packages (code, data sets, models, scripts, etc) with the possibility of multiple versions to co-exist in a user or system environment:
Stars: ✭ 67 (-64.55%)
pcluster-managerManage AWS ParallelCluster through an easy to use web interface
Stars: ✭ 67 (-64.55%)
NPB-CPPNAS Parallel Benchmark Kernels in C/C++. The parallel versions are in FastFlow, TBB, and OpenMP.
Stars: ✭ 18 (-90.48%)
h5fortran-mpiHDF5-MPI parallel Fortran object-oriented interface
Stars: ✭ 15 (-92.06%)
dtype-nextA Clojure library designed to aid in the implementation of high performance algorithms and systems.
Stars: ✭ 193 (+2.12%)
cruiseUser space POSIX-like file system in main memory
Stars: ✭ 27 (-85.71%)
LatticeQCD.jlA native Julia code for lattice QCD with dynamical fermions in 4 dimension.
Stars: ✭ 85 (-55.03%)
awesome-aws-researchA curated list of awesome Amazon Web Services (AWS) libraries, open source repos, guides, blogs, and other resources for Academic Researchers new to AWS
Stars: ✭ 41 (-78.31%)
amh-codeComplete implementations from "Algorithms for Modern Hardware"
Stars: ✭ 247 (+30.69%)
conduitSimplified Data Exchange for HPC Simulations
Stars: ✭ 114 (-39.68%)
contechThe Contech analysis framework provides the means for generating and analyzing task graphs that enable computer architects and programmers to gain a deeper understanding of parallel programs.
Stars: ✭ 43 (-77.25%)
pyACCOpenACC for Python
Stars: ✭ 18 (-90.48%)
dislibThe Distributed Computing library for python implemented using PyCOMPSs programming model for HPC.
Stars: ✭ 39 (-79.37%)
HiSpatialClusterClustering spatial points with algorithm of Fast Search, high performace computing implements of CUDA or parallel in CPU, and runnable implements on python standalone or arcgis.
Stars: ✭ 31 (-83.6%)
F2xA versatile, template-based FORTRAN wrapper written in Python.
Stars: ✭ 36 (-80.95%)
ByteSlice"Byteslice: Pushing the envelop of main memory data processing with a new storage layout" (SIGMOD'15)
Stars: ✭ 24 (-87.3%)
software-devCoding Standards for the USC Biostats group
Stars: ✭ 33 (-82.54%)
mloperatorMachine Learning Operator & Controller for Kubernetes
Stars: ✭ 85 (-55.03%)
productionGeneral interest repository for CSCS users
Stars: ✭ 49 (-74.07%)
sympytorchTurning SymPy expressions into PyTorch modules.
Stars: ✭ 69 (-63.49%)
mpiGraphMPI benchmark to generate network bandwidth images
Stars: ✭ 17 (-91.01%)
frameworkThe Arcane Framework for HPC codes
Stars: ✭ 15 (-92.06%)
libmsrWrapper library for model-specific registers. APIs cover RAPL, performance counters, clocks and turbo.
Stars: ✭ 47 (-75.13%)
awflowReproducible research and reusable acyclic workflows in Python. Execute code on HPC systems as if you executed them on your personal computer!
Stars: ✭ 15 (-92.06%)
URTFast Unit Root Tests and OLS regression in C++ with wrappers for R and Python
Stars: ✭ 70 (-62.96%)
FWIRTM
Stars: ✭ 30 (-84.13%)
easybuild-easyblocksCollection of easyblocks that implement support for building and installing software with EasyBuild.
Stars: ✭ 83 (-56.08%)
realcaffe2The repo is obsolete. Use at your own risk.
Stars: ✭ 12 (-93.65%)
mpifxModern Fortran wrappers around MPI routines
Stars: ✭ 25 (-86.77%)
lustre exporterPrometheus exporter for use with the Lustre parallel filesystem
Stars: ✭ 25 (-86.77%)
eventgradEvent-Triggered Communication in Parallel Machine Learning
Stars: ✭ 14 (-92.59%)
nerdYour personal nerd that takes care of running jobs on the Nerdalize cloud
Stars: ✭ 15 (-92.06%)
frovedisFramework of vectorized and distributed data analytics
Stars: ✭ 59 (-68.78%)
PyMFEMPython wrapper for MFEM
Stars: ✭ 91 (-51.85%)
PencilFFTs.jlFast Fourier transforms of MPI-distributed Julia arrays
Stars: ✭ 48 (-74.6%)
SHADScalable High-performance Algorithms and Data-structures
Stars: ✭ 85 (-55.03%)
bsuir-csn-cmsn-helperRepository containing ready-made laboratory works in the specialty of computing machines, systems and networks
Stars: ✭ 43 (-77.25%)
sboxgatesProgram for finding low gate count implementations of S-boxes.
Stars: ✭ 30 (-84.13%)
Google-Summer-of-Code-with-SymPyThis repository showcases my proposal, final report, and the work done during Google Summer of Code 2020 with the SymPy project.
Stars: ✭ 12 (-93.65%)
nbodykitAnalysis kit for large-scale structure datasets, the massively parallel way
Stars: ✭ 93 (-50.79%)
pyparEfficient and scalable parallelism using the message passing interface (MPI) to handle big data and highly computational problems.
Stars: ✭ 66 (-65.08%)