Open3dOpen3D: A Modern Library for 3D Data Processing
Stars: ✭ 5,860 (+3632.48%)
Qualia2.0Qualia is a deep learning framework deeply integrated with automatic differentiation and dynamic graphing with CUDA acceleration. Qualia was built from scratch.
Stars: ✭ 41 (-73.89%)
SpeedtorchLibrary for faster pinned CPU <-> GPU transfer in Pytorch
Stars: ✭ 615 (+291.72%)
ForwardA library for high performance deep learning inference on NVIDIA GPUs.
Stars: ✭ 136 (-13.38%)
CudasiftA CUDA implementation of SIFT for NVidia GPUs (1.2 ms on a GTX 1060)
Stars: ✭ 555 (+253.5%)
NeanderthalFast Clojure Matrix Library
Stars: ✭ 927 (+490.45%)
GraphviteGraphVite: A General and High-performance Graph Embedding System
Stars: ✭ 865 (+450.96%)
Deeppipe2Deep Learning library using GPU(CUDA/cuBLAS)
Stars: ✭ 90 (-42.68%)
Cudart.jlJulia wrapper for CUDA runtime API
Stars: ✭ 75 (-52.23%)
NumerNumeric Erlang - vector and matrix operations with CUDA. Heavily inspired by Pteracuda - https://github.com/kevsmith/pteracuda
Stars: ✭ 91 (-42.04%)
CaerHigh-performance Vision library in Python. Scale your research, not boilerplate.
Stars: ✭ 452 (+187.9%)
BitcrackerBitCracker is the first open source password cracking tool for memory units encrypted with BitLocker
Stars: ✭ 463 (+194.9%)
CupyNumPy & SciPy for GPU
Stars: ✭ 5,625 (+3482.8%)
PyopenclOpenCL integration for Python, plus shiny features
Stars: ✭ 790 (+403.18%)
Scikit CudaPython interface to GPU-powered libraries
Stars: ✭ 803 (+411.46%)
Nvidia libs testTests and benchmarks for cudnn (and in the future, other nvidia libraries)
Stars: ✭ 36 (-77.07%)
ChainerA flexible framework of neural networks for deep learning
Stars: ✭ 5,656 (+3502.55%)
GgnnGGNN: State of the Art Graph-based GPU Nearest Neighbor Search
Stars: ✭ 63 (-59.87%)
ArboretumGradient Boosting powered by GPU(NVIDIA CUDA)
Stars: ✭ 64 (-59.24%)
ThundersvmThunderSVM: A Fast SVM Library on GPUs and CPUs
Stars: ✭ 1,282 (+716.56%)
Cuda Design PatternsSome CUDA design patterns and a bit of template magic for CUDA
Stars: ✭ 78 (-50.32%)
PygraphistryPyGraphistry is a Python library to quickly load, shape, embed, and explore big graphs with the GPU-accelerated Graphistry visual graph analyzer
Stars: ✭ 1,365 (+769.43%)
SigpyPython package for signal processing, with emphasis on iterative methods
Stars: ✭ 132 (-15.92%)
Futhark💥💻💥 A data-parallel functional programming language
Stars: ✭ 1,641 (+945.22%)
OnemkloneAPI Math Kernel Library (oneMKL) Interfaces
Stars: ✭ 122 (-22.29%)
H2o4gpuH2Oai GPU Edition
Stars: ✭ 416 (+164.97%)
RustacudaRusty wrapper for the CUDA Driver API
Stars: ✭ 511 (+225.48%)
CudfcuDF - GPU DataFrame Library
Stars: ✭ 4,370 (+2683.44%)
Lighthouse2Lighthouse 2 framework for real-time ray tracing
Stars: ✭ 542 (+245.22%)
Stdgpustdgpu: Efficient STL-like Data Structures on the GPU
Stars: ✭ 531 (+238.22%)
ThundergbmThunderGBM: Fast GBDTs and Random Forests on GPUs
Stars: ✭ 586 (+273.25%)
HipsyclImplementation of SYCL for CPUs, AMD GPUs, NVIDIA GPUs
Stars: ✭ 377 (+140.13%)
MarianFast Neural Machine Translation in C++
Stars: ✭ 777 (+394.9%)
KintinuousReal-time large scale dense visual SLAM system
Stars: ✭ 740 (+371.34%)
WheelsPerformance-optimized wheels for TensorFlow (SSE, AVX, FMA, XLA, MPI)
Stars: ✭ 891 (+467.52%)
GunrockHigh-Performance Graph Primitives on GPUs
Stars: ✭ 718 (+357.32%)
CudaExperiments with CUDA and Rust
Stars: ✭ 31 (-80.25%)
CubCooperative primitives for CUDA C++.
Stars: ✭ 883 (+462.42%)
Cumf alsCUDA Matrix Factorization Library with Alternating Least Square (ALS)
Stars: ✭ 154 (-1.91%)
IlgpuILGPU JIT Compiler for high-performance .Net GPU programs
Stars: ✭ 374 (+138.22%)
Tsne CudaGPU Accelerated t-SNE for CUDA with Python bindings
Stars: ✭ 1,120 (+613.38%)
PycudaCUDA integration for Python, plus shiny features
Stars: ✭ 1,112 (+608.28%)
ParenchymaAn extensible HPC framework for CUDA, OpenCL and native CPU.
Stars: ✭ 71 (-54.78%)
MprReference implementation for "Massively Parallel Rendering of Complex Closed-Form Implicit Surfaces" (SIGGRAPH 2020)
Stars: ✭ 84 (-46.5%)
ElasticfusionReal-time dense visual SLAM system
Stars: ✭ 1,298 (+726.75%)
HeteroflowConcurrent CPU-GPU Programming using Task Models
Stars: ✭ 57 (-63.69%)
LibcudacxxThe C++ Standard Library for your entire system.
Stars: ✭ 1,861 (+1085.35%)
RemoterySingle C file, Realtime CPU/GPU Profiler with Remote Web Viewer
Stars: ✭ 1,908 (+1115.29%)
MixbenchA GPU benchmark tool for evaluating GPUs on mixed operational intensity kernels (CUDA, OpenCL, HIP, SYCL)
Stars: ✭ 130 (-17.2%)
DeepnetDeep.Net machine learning framework for F#
Stars: ✭ 99 (-36.94%)
Cuda Api WrappersThin C++-flavored wrappers for the CUDA Runtime API
Stars: ✭ 362 (+130.57%)
Cuda.jlCUDA programming in Julia.
Stars: ✭ 370 (+135.67%)
Carlsim3CARLsim is an efficient, easy-to-use, GPU-accelerated software framework for simulating large-scale spiking neural network (SNN) models with a high degree of biological detail.
Stars: ✭ 52 (-66.88%)
PynvvlA Python wrapper of NVIDIA Video Loader (NVVL) with CuPy for fast video loading with Python
Stars: ✭ 95 (-39.49%)
Tensorflow Object Detection TutorialThe purpose of this tutorial is to learn how to install and prepare TensorFlow framework to train your own convolutional neural network object detection classifier for multiple objects, starting from scratch
Stars: ✭ 113 (-28.03%)
Hoomd BlueMolecular dynamics and Monte Carlo soft matter simulation on GPUs.
Stars: ✭ 143 (-8.92%)