TritonSort

Author:

Rasmussen Alexander1,Porter George1,Conley Michael1,Madhyastha Harsha V.2,Mysore Radhika Niranjan1,Pucher Alexander3,Vahdat Amin4

Affiliation:

1. University of California, San Diego

2. University of California, Riverside

3. Vienna University of Technology

4. University of California, San Diego and Google, Inc.

Abstract

We present TritonSort, a highly efficient, scalable sorting system. It is designed to process large datasets, and has been evaluated against as much as 100TB of input data spread across 832 disks in 52 nodes at a rate of 0.938TB/min. When evaluated against the annual Indy GraySort sorting benchmark, TritonSort is 66% better in absolute performance and has over six times the per-node throughput of the previous record holder. When evaluated against the 100TB Indy JouleSort benchmark, TritonSort sorted 9703 records/Joule. In this article, we describe the hardware and software architecture necessary to operate TritonSort at this level of efficiency. Through careful management of system resources to ensure cross-resource balance, we are able to sort data at approximately 80% of the disks’ aggregate sequential write speed. We believe the work holds a number of lessons for balanced system design and for scale-out architectures in general. While many interesting systems are able to scale linearly with additional servers, per-server performance can lag behind per-server capacity by more than an order of magnitude. Bridging the gap between high scalability and high performance would enable either significantly less expensive systems that are able to do the same work or provide the ability to address significantly larger problem sets with the same infrastructure.

Funder

Cisco Systems

National Science Foundation

Division of Computer and Network Systems

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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4. Anon Bitton D. Brown M. Catell R. Ceri S. etal 1985. A measure of transaction processing power. J. Datamation. Anon Bitton D. Brown M. Catell R. Ceri S. et al. 1985. A measure of transaction processing power. J. Datamation .

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