TL;DR
PasCa introduces a systematic approach and an auto-search system for designing scalable GNN architectures, effectively balancing accuracy and efficiency across diverse datasets.
Contribution
It proposes a novel paradigm and a large design space for scalable GNNs, enabling automated discovery of high-performance models with improved scalability.
Findings
PasCa-discovered models outperform baselines in accuracy.
Models achieve up to 28.3x training speedups.
System demonstrates effectiveness on ten benchmark datasets.
Abstract
Graph neural networks (GNNs) have achieved state-of-the-art performance in various graph-based tasks. However, as mainstream GNNs are designed based on the neural message passing mechanism, they do not scale well to data size and message passing steps. Although there has been an emerging interest in the design of scalable GNNs, current researches focus on specific GNN design, rather than the general design space, limiting the discovery of potential scalable GNN models. This paper proposes PasCa, a new paradigm and system that offers a principled approach to systemically construct and explore the design space for scalable GNNs, rather than studying individual designs. Through deconstructing the message passing mechanism, PasCa presents a novel Scalable Graph Neural Architecture Paradigm (SGAP), together with a general architecture design space consisting of 150k different designs.…
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