VersaGNN: a Versatile accelerator for Graph neural networks
\textit{Graph Neural Network} (GNN) is a promising approach for analyzing graph-structured data that tactfully captures their dependency information via node-level message passing. It has achieved state-of-the-art performances in many tasks, such as node classification, graph matching, clustering, a...
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Zusammenfassung: | \textit{Graph Neural Network} (GNN) is a promising approach for analyzing
graph-structured data that tactfully captures their dependency information via
node-level message passing. It has achieved state-of-the-art performances in
many tasks, such as node classification, graph matching, clustering, and graph
generation. As GNNs operate on non-Euclidean data, their irregular data access
patterns cause considerable computational costs and overhead on conventional
architectures, such as GPU and CPU. Our analysis shows that GNN adopts a hybrid
computing model. The \textit{Aggregation} (or \textit{Message Passing}) phase
performs vector additions where vectors are fetched with irregular strides. The
\textit{Transformation} (or \textit{Node Embedding}) phase can be either dense
or sparse-dense matrix multiplication. In this work, We propose
\textit{VersaGNN}, an ultra-efficient, systolic-array-based versatile hardware
accelerator that unifies dense and sparse matrix multiplication. By applying
this single optimized systolic array to both aggregation and transformation
phases, we have significantly reduced chip sizes and energy consumption. We
then divide the computing engine into blocked systolic arrays to support the
\textit{Strassen}'s algorithm for dense matrix multiplication, dramatically
scaling down the number of multiplications and enabling high-throughput
computation of GNNs. To balance the workload of sparse-dense matrix
multiplication, we also introduced a greedy algorithm to combine sparse
sub-matrices of compressed format into condensed ones to reduce computational
cycles. Compared with current state-of-the-art GNN software frameworks,
\textit{VersaGNN} achieves on average 3712$\times$ speedup with 1301.25$\times$
energy reduction on CPU, and 35.4$\times$ speedup with 17.66$\times$ energy
reduction on GPU. |
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DOI: | 10.48550/arxiv.2105.01280 |