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  1. Home
  2. /Repositories
  3. /JuliaGraphs/GraphNeuralNetworks.jl
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repoGitHubTrust 82 · PrimaryPublished 19h agoLive · 14h ago

JuliaGraphs/GraphNeuralNetworks.jl

Graph Neural Networks in Julia

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Implements

paperGraph Neural Networks Applications Across Domains: All Insights You NeedpaperDynamic Neural Graph Encoding of Inference Processes in Deep Weight SpacepaperAn Additive MLP-GNN Framework for Characterizing Chemical and Structural Contributions to Aqueous Solubility

Covers

newsHamiltonian Neural Networks from a Differential Geometry Perspective [D]

Related across the graph

paperDynamic Neural Graph Encoding of Inference Processes in Deep Weight SpacenewsHamiltonian Neural Networks from a Differential Geometry Perspective [D]paperAn Additive MLP-GNN Framework for Characterizing Chemical and Structural Contributions to Aqueous SolubilitypaperGraph Neural Networks Applications Across Domains: All Insights You Need
Knowledge path·PDynamic Neural Graph Encoding of Inference Processes in Deep Weight Space→NHamiltonian Neural Networks from a Differential Geometry Perspective [D]→PAn Additive MLP-GNN Framework for Characterizing Chemical and Structural Contributions to Aqueous Solubility→RJuliaGraphs/GraphNeuralNetworks.jl

Topics

deep-learninggraph-neural-networksgraphsjuliamachine-learning

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Graph trust82Primary
Graph score302