English

Minuet: A Scalable Distributed Multiversion B-Tree

Databases 2012-05-31 v1

Abstract

Data management systems have traditionally been designed to support either long-running analytics queries or short-lived transactions, but an increasing number of applications need both. For example, online games, socio-mobile apps, and e-commerce sites need to not only maintain operational state, but also analyze that data quickly to make predictions and recommendations that improve user experience. In this paper, we present Minuet, a distributed, main-memory B-tree that supports both transactions and copy-on-write snapshots for in-situ analytics. Minuet uses main-memory storage to enable low-latency transactional operations as well as analytics queries without compromising transaction performance. In addition to supporting read-only analytics queries on snapshots, Minuet supports writable clones, so that users can create branching versions of the data. This feature can be quite useful, e.g. to support complex "what-if" analysis or to facilitate wide-area replication. Our experiments show that Minuet outperforms a commercial main-memory database in many ways. It scales to hundreds of cores and TBs of memory, and can process hundreds of thousands of B-tree operations per second while executing long-running scans.

Keywords

Cite

@article{arxiv.1205.6699,
  title  = {Minuet: A Scalable Distributed Multiversion B-Tree},
  author = {Benjamin Sowell and Wojciech Golab and Mehul A. Shah},
  journal= {arXiv preprint arXiv:1205.6699},
  year   = {2012}
}

Comments

VLDB2012

R2 v1 2026-06-21T21:11:41.603Z