A scalable graph learning toolkit for extremely large graph datasets. (WWW'22, 🏆 Best Student Paper Award)
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Updated
May 10, 2024 - Python
A scalable graph learning toolkit for extremely large graph datasets. (WWW'22, 🏆 Best Student Paper Award)
[VLDB'23] SUREL+ is a novel set-based computation framework for scalable subgraph-based graph representation learning.
SubGAcc is a C/OpenMP-based library for accelerating subgraph operations in Python.
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