arangoml / fastgraphml
Given an input graph (ArangoDB or PyG) it generates graph embeddings using Low-Code framework built on top of PyG.
☆68Updated 5 months ago
Related projects ⓘ
Alternatives and complementary repositories for fastgraphml
- Code for the CIKM 2019 Paper "Fast and Accurate Network Embeddings via Very Sparse Random Projection"☆55Updated 5 years ago
- (Personalized) Page-Rank computation using PyTorch☆87Updated last year
- 🏅 KG Inductive Link Prediction Challenge (ILPC) 2022☆83Updated 2 years ago
- A performant, powerful query framework to search for network motifs☆81Updated 3 months ago
- A collection of resources on the topic of Complex Logical Query Answering☆168Updated last year
- GraphAny: A foundation model for node classification on any graph.☆113Updated 5 months ago
- PyG re-implementation of Neural Bellman-Ford Networks (NeurIPS 2021)☆61Updated 2 years ago
- 🏘️ Hubness reduced nearest neighbor search for entity alignment with knowledge graph embeddings☆24Updated 6 months ago
- OntoMerger is an ontology alignment library for deduplicating knowledge graph nodes that represent the same domain.☆92Updated 10 months ago
- Scalable and fast non-redundant rule application for link prediction☆44Updated 2 months ago
- Compositional and Parameter-Efficient Representations for Large Knowledge Graphs (ICLR'22)☆140Updated 2 years ago
- Temporal Graph Benchmark project repo☆185Updated this week
- A Modular Framework for Learning on Multimodal Biomedical Knowledge Graphs☆12Updated 10 months ago
- ☆162Updated last year
- Hardware-agnostic Framework for Large-scale Knowledge Graph Embeddings☆50Updated this week
- The SEMB library is an easy-to-use tool for getting and evaluating structural node embeddings in graphs.☆16Updated last year
- Code for the paper "Query Embedding on Hyper-relational Knowledge Graphs"☆30Updated 6 months ago
- Official implementation of Inductive Logical Query Answering in Knowledge Graphs (NeurIPS 2022)☆47Updated 2 years ago
- TGB baselines for dynamic link property prediction☆18Updated 2 weeks ago
- Course titled Practical Machine Learning on Graphs☆42Updated 4 years ago
- ☆92Updated last year
- ☆24Updated 4 months ago
- 🍇 Ensmallen is the Rust/Python high-performance graph processing submodule of the GRAPE library.☆38Updated 3 months ago
- A tiny library for large graphs☆111Updated last month
- Official implementation of A* Networks☆134Updated last year
- IntelliGraphs is a collection of graph datasets for benchmarking generative models for knowledge graphs.☆9Updated last month
- Official implementation of Graph Neural Network Query Executor (ICML 2022)☆88Updated last year
- ☆32Updated 6 months ago
- Node Embeddings in Dynamic Graphs☆54Updated 2 years ago
- ☆23Updated 2 years ago