signal-collect
Graph processor
A framework for parallelizing and distributing graph computations to scale large-scale algorithms
A framework for scalable graph computing.
148 stars
29 watching
32 forks
Language: Scala
last commit: over 6 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
uzh/signal-collect-torque | Supports deployment of Signal/Collect Torque, a tool for analyzing signal processing data | 1 |
uzh/triplerush | A distributed in-memory graph store that supports SPARQL select queries. | 31 |
microsoft/graphengine | A distributed in-memory data processing engine with a general-purpose computation engine and a graph query language. | 2,204 |
xslogic/phoebus | A framework for large-scale graph processing using Erlang. | 384 |
joaomilho/zen-signals | An observable library that simplifies the creation and manipulation of signals in data streams. | 53 |
singaxiong/signalgraph | A Matlab-based toolkit for building and training neural networks on signal processing data | 151 |
xnuohz/graph-kernel | A Python framework for graph similarity analysis using kernel methods. | 0 |
epfl-lts2/gspbox | Graph Signal Processing Toolbox for efficient computation and analysis of graph signals in various domains | 136 |
twitter/cassovary | A big graph processing library for the JVM written in Scala | 1,045 |
benedekrozemberczki/pdn | An implementation of a neural network architecture designed to process graph-structured data | 57 |
uzh/sushi | An agile data analysis framework that enables collaborative, reproducible research and provides tools for integrating Next Generation Sequencing bioinformatics | 24 |
apache/tinkerpop | Provides a framework for graph computing and processing | 1,975 |
shawntabrizi/substrate-graph-benchmarks | Graphs benchmark output of Substrate Pallets to visualize performance and usage metrics. | 11 |
hongyanggao/lgcn | An implementation of learnable graph convolutional networks for efficient graph processing | 46 |
lqhl/powerwalk | A system for efficiently computing personalized page rank vectors on large graphs using distributed indexing and online querying | 15 |