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Benchmarking Without Borders: How GraphBench Rewrites the Rules of Graph Learning

Benchmarks Are Where Models Stop Being Inspirational Benchmarks are not glamorous. They are where models go after the demo video, after the conference slide, and after the sentence “this generalizes beautifully” has done its little dance in front of investors. Graph learning badly needs that room. For years, graph machine learning has been evaluated on comfortable territory: molecular graphs, citation networks, small academic datasets, and carefully packaged tasks that are useful but narrow. That helped the field grow. It also created a quiet distortion. A model could look impressive while never having to deal with a social network that changes over time, a circuit whose tiny structural error destroys correctness, a SAT instance where solver choice matters, or a weather graph where the planet is inconveniently spherical. ...

December 7, 2025 · 16 min · Zelina