CuSha is a CUDA-based vertex-centric graph processing framework that uses G-Shards and CW representations.
☆53Nov 17, 2015Updated 10 years ago
Alternatives and similar repositories for CuSha
Users that are interested in CuSha are comparing it to the libraries listed below. We may earn a commission when you buy through links labeled 'Ad' on this page.
Sorting:
- A graph processing engine for hybrid CPU and GPU platforms☆39Feb 7, 2019Updated 7 years ago
- Frog is Asynchronous Graph Processing on GPU with Hybrid Coloring Model. The fundamental idea is based on Pareto principle (or 80-20 rule…☆36May 29, 2021Updated 4 years ago
- Medusa: Building GPU-based Parallel Sparse Graph Applications with Sequential C/C++ Code☆63Oct 17, 2020Updated 5 years ago
- A CUDA-based multi-GPU vertex-centric graph processing framework based on Warp Segmentation and Vertex Refinement techniques.☆12Mar 20, 2017Updated 9 years ago
- Asynchronous Multi-GPU Programming Framework☆50Jun 8, 2021Updated 4 years ago
- Managed hosting for WordPress and PHP on Cloudways • AdManaged hosting for WordPress, Magento, Laravel, or PHP apps, on multiple cloud providers. Deploy in minutes on Cloudways by DigitalOcean.
- This repository contains the cuStinger data structure used for dynamic graph representation.☆20Jan 11, 2019Updated 7 years ago
- Transforming Graphs for Efficient Irregular Graph Processing on GPUs☆50Nov 15, 2022Updated 3 years ago
- Programmable CUDA/C++ GPU Graph Analytics☆1,084Feb 28, 2026Updated 2 months ago
- Multi-threaded Large-Scale RMAT Graph Generator.☆133Sep 23, 2023Updated 2 years ago
- Edge-centric Graph Processing System using Streaming Partitions☆83Jan 16, 2018Updated 8 years ago
- SIMD-X: Programming and Processing of Graph Algorithms on GPUs [USENIX ATC '19]☆23Jun 14, 2020Updated 5 years ago
- A Distributed Multi-GPU System for Fast Graph Processing☆65Oct 25, 2018Updated 7 years ago
- This code base represents "faimGraph: High Performance Management of Fully-dynamic Graphs under tight Memory Constraints on the GPU"☆15Apr 23, 2021Updated 5 years ago
- A Lightweight Graph Processing Framework for Multi-GPUs☆14Apr 15, 2015Updated 11 years ago
- Bare Metal GPUs on DigitalOcean Gradient AI • AdPurpose-built for serious AI teams training foundational models, running large-scale inference, and pushing the boundaries of what's possible.
- High-performance graph processing on hybrid CPU-GPU platforms by using dynamic load-balancing☆12Sep 15, 2016Updated 9 years ago
- ☆15Mar 7, 2018Updated 8 years ago
- Enterprise: Breadth-First Graph Traversal on GPUs. SC'15.☆33May 20, 2017Updated 8 years ago
- LonestarGPU: Irregular algorithms parallelized for GPUs☆38Nov 11, 2019Updated 6 years ago
- A NUMA-aware Graph-structured Analytics Framework☆44Aug 28, 2018Updated 7 years ago
- A Comprehensive Benchmark Suite for Graph Computing☆70Feb 20, 2019Updated 7 years ago
- A vertex-centric CUDA/C++ API for large graph analytics on GPUs using the Gather-Apply-Scatter abstraction☆24May 4, 2014Updated 11 years ago
- GraphMat graph analytics framework☆105Jan 25, 2023Updated 3 years ago
- Hornet data structure for sparse dynamic graphs and matrices☆90Nov 14, 2019Updated 6 years ago
- Deploy on Railway without the complexity - Free Credits Offer • AdConnect your repo and Railway handles the rest with instant previews. Quickly provision container image services, databases, and storage volumes.
- ☆28Feb 14, 2026Updated 2 months ago
- Implementation of breadth first search on GPU with CUDA Driver API.☆55Apr 7, 2021Updated 5 years ago
- ☆12Dec 8, 2022Updated 3 years ago
- A benchmark suite for Graph Machine Learning☆19Oct 8, 2024Updated last year
- ☆24Dec 4, 2020Updated 5 years ago
- GPU Acceleration for Apache Spark☆34Aug 24, 2015Updated 10 years ago
- Out-of-core graph processing on a single machine.☆130May 7, 2018Updated 7 years ago
- Hybrid methods for Parallel Betweenness Centrality on the GPU☆24Dec 20, 2018Updated 7 years ago
- Ligra: A Lightweight Graph Processing Framework for Shared Memory☆494Feb 18, 2024Updated 2 years ago
- GPUs on demand by Runpod - Special Offer Available • AdRun AI, ML, and HPC workloads on powerful cloud GPUs—without limits or wasted spend. Deploy GPUs in under a minute and pay by the second.
- Triangle Counting for the GPU using CUDA.☆14Nov 5, 2015Updated 10 years ago
- ☆81Oct 4, 2017Updated 8 years ago
- A Memory-efficient Graph Store for Interactive Queries☆13Sep 1, 2021Updated 4 years ago
- RisGraph: A Real-Time Streaming System for Evolving Graphs to Support Sub-millisecond Per-update Analysis at Millions Ops/s☆39May 11, 2022Updated 3 years ago
- Algorithms to list k-cliques in real-world graphs☆25Mar 4, 2021Updated 5 years ago
- This repository contains information about graph processing.☆32Aug 5, 2024Updated last year
- GBBS: Graph Based Benchmark Suite☆225Apr 12, 2026Updated 2 weeks ago