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Manu: A Cloud Native Vector Database Management System

Authors :
Rentong Guo
Xiaofan Luan
Long Xiang
Xiao Yan
Xiaomeng Yi
Jigao Luo
Qianya Cheng
Weizhi Xu
Jiarui Luo
Frank Liu
Zhenshan Cao
Yanliang Qiao
Ting Wang
Bo Tang
Charles Xie
Publication Year :
2022
Publisher :
arXiv, 2022.

Abstract

With the development of learning-based embedding models, embedding vectors are widely used for analyzing and searching unstructured data. As vector collections exceed billion-scale, fully managed and horizontally scalable vector databases are necessary. In the past three years, through interaction with our 1200+ industry users, we have sketched a vision for the features that next-generation vector databases should have, which include long-term evolvability, tunable consistency, good elasticity, and high performance. We present Manu, a cloud native vector database that implements these features. It is difficult to integrate all these features if we follow traditional DBMS design rules. As most vector data applications do not require complex data models and strong data consistency, our design philosophy is to relax the data model and consistency constraints in exchange for the aforementioned features. Specifically, Manu firstly exposes the write-ahead log (WAL) and binlog as backbone services. Secondly, write components are designed as log publishers while all read-only analytic and search components are designed as independent subscribers to the log services. Finally, we utilize multi-version concurrency control (MVCC) and a delta consistency model to simplify the communication and cooperation among the system components. These designs achieve a low coupling among the system components, which is essential for elasticity and evolution. We also extensively optimize Manu for performance and usability with hardware-aware implementations and support for complex search semantics.<br />Comment: 14 pages, 13 figures

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....51b6860e4f380b9d03cf4a4c355bff1e
Full Text :
https://doi.org/10.48550/arxiv.2206.13843