LGAIOct 8, 2025

TGM: a Modular and Efficient Library for Machine Learning on Temporal Graphs

arXiv:2510.07586v12 citationsh-index: 18Has Code
Originality Incremental advance
AI Analysis

This provides a modular and efficient tool for researchers working on temporal graph ML, enabling new research possibilities, though it is incremental as it builds on existing graph ML frameworks.

The authors tackled the lack of unified infrastructure for machine learning on temporal graphs by introducing TGM, a library that unifies continuous- and discrete-time approaches, achieving an average 7.8x speedup over DyGLib and 175x speedup on graph discretization.

Well-designed open-source software drives progress in Machine Learning (ML) research. While static graph ML enjoys mature frameworks like PyTorch Geometric and DGL, ML for temporal graphs (TG), networks that evolve over time, lacks comparable infrastructure. Existing TG libraries are often tailored to specific architectures, hindering support for diverse models in this rapidly evolving field. Additionally, the divide between continuous- and discrete-time dynamic graph methods (CTDG and DTDG) limits direct comparisons and idea transfer. To address these gaps, we introduce Temporal Graph Modelling (TGM), a research-oriented library for ML on temporal graphs, the first to unify CTDG and DTDG approaches. TGM offers first-class support for dynamic node features, time-granularity conversions, and native handling of link-, node-, and graph-level tasks. Empirically, TGM achieves an average 7.8x speedup across multiple models, datasets, and tasks compared to the widely used DyGLib, and an average 175x speedup on graph discretization relative to available implementations. Beyond efficiency, we show in our experiments how TGM unlocks entirely new research possibilities by enabling dynamic graph property prediction and time-driven training paradigms, opening the door to questions previously impractical to study. TGM is available at https://github.com/tgm-team/tgm

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