cs.AI updates on arXiv.org 07月24日 13:31
PyG 2.0: Scalable Learning on Real World Graphs
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本文介绍PyG 2.0及其后续版本,重点更新了框架的扩展性和实际应用能力,包括异构图、时序图支持,以及大规模图学习问题的优化,广泛应用于各种应用领域,深入探讨关系深度学习和大型语言模型。

arXiv:2507.16991v1 Announce Type: cross Abstract: PyG (PyTorch Geometric) has evolved significantly since its initial release, establishing itself as a leading framework for Graph Neural Networks. In this paper, we present Pyg 2.0 (and its subsequent minor versions), a comprehensive update that introduces substantial improvements in scalability and real-world application capabilities. We detail the framework's enhanced architecture, including support for heterogeneous and temporal graphs, scalable feature/graph stores, and various optimizations, enabling researchers and practitioners to tackle large-scale graph learning problems efficiently. Over the recent years, PyG has been supporting graph learning in a large variety of application areas, which we will summarize, while providing a deep dive into the important areas of relational deep learning and large language modeling.

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PyG 2.0 图神经网络 图学习 深度学习 应用领域
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