ElasTraS

Author:

Das Sudipto1,Agrawal Divyakant2,El Abbadi Amr2

Affiliation:

1. University of California Santa Barbara

2. University of California Santa Barbara, Santa Barbara, CA

Abstract

A database management system (DBMS) serving a cloud platform must handle large numbers of application databases (or tenants ) that are characterized by diverse schemas, varying footprints, and unpredictable load patterns. Scaling out using clusters of commodity servers and sharing resources among tenants (i.e., multitenancy ) are important features of such systems. Moreover, when deployed on a pay-per-use infrastructure, minimizing the system's operating cost while ensuring good performance is also an important goal. Traditional DBMSs were not designed for such scenarios and hence do not possess the mentioned features critical for DBMSs in the cloud. We present ElasTraS, which combines three design principles to build an elastically-scalable multitenant DBMS for transaction processing workloads. These design principles are gleaned from a careful analysis of the years of research in building scalable key-value stores and decades of research in high performance transaction processing systems. ElasTraS scales to thousands of tenants, effectively consolidates tenants with small footprints while scaling-out large tenants across multiple servers in a cluster. ElasTraS also supports low-latency multistep ACID transactions , is fault-tolerant, self-managing, and highly available to support mission critical applications. ElasTraS leverages Albatross, a low overhead on-demand live database migration technique, for elastic load balancing by adding more servers during high load and consolidating to fewer servers during usage troughs. This elastic scaling minimizes the operating cost and ensures good performance even in the presence of unpredictable changes to the workload. We elucidate the design principles, explain the architecture, describe a prototype implementation, present the detailed design and implementation of Albatross, and experimentally evaluate the implementation using a variety of transaction processing workloads. On a cluster of 20 commodity servers, our prototype serves thousands of tenants and serves more than 1 billion transactions per day while migrating tenant databases with minimal overhead to allow lightweight elastic scaling. Using a cluster of 30 commodity servers, ElasTraS can scale-out a terabyte TPC-C database serving an aggregate throughput of approximately one quarter of a million TPC-C transactions per minute.

Funder

NEC Foundation of America

Amazon AWS in Education

Division of Computer and Network Systems

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems

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