GraphGallery is a gallery for benchmarking Graph Neural Networks
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Updated
Aug 14, 2023 - Python
GraphGallery is a gallery for benchmarking Graph Neural Networks
Transform geospatial relations into graph representations designed for spatial analysis and Graph Neural Networks (GNNs).
This is a PyTorch implementation of the GeniePath model in <GeniePath: Graph Neural Networks with Adaptive Receptive Paths> (https://arxiv.org/abs/1802.00910)
PoseModel: An Open-Source Toolkit for Accurate and Robust Automated Behavioral Latent Embedding
An implementation of the Graph Convolution Networks for the Cora, Citeseer, PubMed dataset.
A repo for baseline of graph pooling.
API wrapper for DolarPy
Erreur_404 🚨 est une animation plein écran réalisée avec Pygame 🐍, affichant un “ERREUR 404”
Deep Learning Ecotone Enthusiast
Opto-fmri decoding of locus coeruleus firing patterns using Graph Neural Networks and the BrainGNN framework
Empirical Research over the possible advantages of pretraining a Graph Neural Network for Classification by using Link Prediction. We used GCN, GAT and GraphSAGE with minibatch generation. Done for the Learning From Networks course taught by professor Fabio Vandin at the University of Padova
This repository contains the implementation of some of the popular Graph Neural Networks (GNNs) using PyTorch Geometric to solve node classification tasks.
MetroTwin - Digital Twin for Urban Infrastructure <br/><br/> A graph-based digital twin platform that models city infrastructure and runs simulations to forecast the impact of planning decisions on energy, transport, and environment.
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