Aster: Enhancing LSM-structures for Scalable Graph Database
Abstract
There is a proliferation of applications requiring the management of large-scale, evolving graphs under workloads with intensive graph updates and lookups. Driven by this challenge, we introduce Poly-LSM, a high-performance key-value storage engine for graphs with the following novel techniques: (1) Poly-LSM is embedded with a new design of graph-oriented LSM-tree structure that features a hybrid storage model for concisely and effectively storing graph data. (2) Poly-LSM utilizes an adaptive mechanism to handle edge insertions and deletions on graphs with optimized I/O efficiency. (3) Poly-LSM exploits the skewness of graph data to encode the key-value entries. Building upon this foundation, we further implement Aster, a robust and versatile graph database that supports Gremlin query language facilitating various graph applications. In our experiments, we compared Aster against several mainstream real-world graph databases. The results demonstrate that Aster outperforms all baseline graph databases, especially on large-scale graphs. Notably, on the billion-scale Twitter graph dataset, Aster achieves up to 17x throughput improvement compared to the best-performing baseline graph system.
Cite
@article{arxiv.2501.06570,
title = {Aster: Enhancing LSM-structures for Scalable Graph Database},
author = {Dingheng Mo and Junfeng Liu and Fan Wang and Siqiang Luo},
journal= {arXiv preprint arXiv:2501.06570},
year = {2025}
}
Comments
Accepted by SIGMOD 2025