qcri / Arabesque
Scalable Graph Mining
☆61Updated 2 years ago
Alternatives and similar repositories for Arabesque:
Users that are interested in Arabesque are comparing it to the libraries listed below
- Chaos: Scale-out Graph Processing from Secondary Storage☆51Updated 9 years ago
- GraphChi's Java version☆237Updated last year
- Generic driver for LDBC Graphalytics implementation☆82Updated 3 months ago
- *Experimental* GraphChi-DB graph database with computational capabilities☆79Updated 9 years ago
- ☆81Updated 7 years ago
- CuSha is a CUDA-based vertex-centric graph processing framework that uses G-Shards and CW representations.☆52Updated 9 years ago
- Your worst case is our best case.☆138Updated 8 years ago
- Edge-centric Graph Processing System using Streaming Partitions☆82Updated 7 years ago
- Differentiated Computation and Partitioning on Skewed (Natural or Bipartite) Graphs☆65Updated 2 years ago
- Comparison of graph processing systems.☆23Updated 7 years ago
- Large-scale ML & graph analytics on Giraph☆79Updated 9 years ago
- Next generation graph processing platform☆12Updated 8 years ago
- A DSL for efficient Graph Analysis☆101Updated 6 years ago
- GraphMat graph analytics framework☆101Updated 2 years ago
- A framework for scalable graph computing.☆147Updated 6 years ago
- FlashX is a collection of big data analytics tools that perform data analytics in the form of graphs and matrices.☆233Updated 4 years ago
- Out-of-core graph processing on a single machine.☆129Updated 6 years ago
- A Spark Based Scalable Framework for Efficient Hypergraph Processing☆22Updated 9 years ago
- A Distributed Matrix Operations Library Built on Top of Spark☆106Updated 8 years ago
- A NUMA-aware Graph-structured Analytics Framework☆42Updated 6 years ago
- Former GraphX development repository. GraphX has been merged into Apache Spark; please submit pull requests there.☆360Updated 2 years ago
- Graph Challenge☆31Updated 5 years ago
- Distributed Temporal Graph Analytics with Apache Flink☆249Updated last week
- Frog is Asynchronous Graph Processing on GPU with Hybrid Coloring Model. The fundamental idea is based on Pareto principle (or 80-20 rule…☆36Updated 3 years ago
- GPU* or SPARK* branches are used for generating GPU code in Tungsten/concact:@kiszk, MLlib branch is used for CUDA-MLlib project/concact:…☆48Updated 7 years ago
- An experimental Graph Streaming API for Apache Flink☆141Updated 4 years ago
- WebGraph framework with extensions☆23Updated 10 years ago
- Yggdrasil: Faster Decision Trees Using Column Partitioning in Spark☆31Updated 6 years ago
- SociaLite: query language for large-scale graph analysis and data mining☆109Updated 8 years ago
- Lossy Counting and Sticky Sampling implementation for efficient frequency counts on data streams.☆63Updated 8 years ago