New Research at ICML 2026: Graph Models and Diffusion
4h agoen
From the article
Key works in graph foundation models and diffusion transformer optimization were presented at the ICML 2026 conference. The industry is shifting from specialized GNNs to universal graph foundation models and seeking ways to scale diffusion efficiently.
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