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14:37
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Highlights
graph
Graph Neural Network Library for PyTorch
convert rdf format data into the format which nebula-importer reads
Representation learning on large graphs using stochastic graph convolutions.
Python package for utilizing TigerGraph Databases
RDFLib is a Python library for working with RDF, a simple yet powerful language for representing information.
Proof of concept app using LangChain and LLMs to retrieve information from graphs, built with the IMDB dataset
Integrating Neo4j database into langchain ecosystem
Graph Algorithms Repository for Coding Minutes Course.
GraphnomiQL is an Interactive Visualizer for GraphQL API
Lightning fast, spec-compatible, streaming RDF for JavaScript
Graph4nlp is the library for the easy use of Graph Neural Networks for NLP. Welcome to visit our DLG4NLP website (https://dlg4nlp.github.io/index.html) for various learning resources!
PromptKG Family: a Gallery of Prompt Learning & KG-related research works, toolkits, and paper-list.
ONgDB is an independent fork of Neo4j® Enterprise Edition version 3.4.0.rc02 licensed under AGPLv3 and/or Community Edition licensed under GPLv3
A tutorial and implement of disease centered Medical knowledge graph and qa system based on it。知识图谱构建,自动问答,基于kg的自动问答。以疾病为中心的一定规模医药领域知识图谱,并以该知识图谱完成自动问答与分析服务。
Implementation of the Knowledge Transferable Graph Neural Network (KTGNN), published on WWW2023
A unifying framework for biomedical research knowledge graphs
TuGraph: A High Performance Graph Database.
Experiments making SHACL based graph data quality constraints for Neo4j more palatable for non-RDF people :)
CogDL: A Comprehensive Library for Graph Deep Learning (WWW 2023)
Java 8 network/graph framework with emphasis on social network analysis
ChinesePersonRelationGraph, person relationship extraction based on nlp methods.中文人物关系知识图谱项目,内容包括中文人物关系图谱构建,基于知识库的数据回标,基于远程监督与bootstrapping方法的人物关系抽取,基于知识图谱的知识问答等应用。
Graph+Semantics: Import/Export RDF from Neo4j. SHACL Validation, Model mapping and more.... If you like it, please ★ ⇧