Towards an Application-Centric Benchmark Suite for Spatiotemporal Database Systems
By: Tim C. Rese, David Bermbach
Potential Business Impact:
Tests apps that track moving things.
Spatiotemporal data play a key role for mobility-based applications and are their produced volume is growing continuously, among others, due to the increased availability of IoT devices. When working with spatiotemporal data, developers rely on spatiotemporal database systems such as PostGIS or MobilityDB. For better understanding their quality of service behavior and then choosing the best system, benchmarking is the go-to approach. Unfortunately, existing work in this field studies only small isolated aspects and a comprehensive application-centric benchmark suite is still missing. In this paper, we argue that an application-centric benchmark suite for spatiotemporal database systems is urgently needed. We identify requirements for such a benchmark suite, discuss domain-specific challenges, and sketch-out the architecture of a modular benchmarking suite.
Similar Papers
Towards Serverless Processing of Spatiotemporal Big Data Queries
Databases
Lets computers quickly find things on maps.
Mobility Stream Processing on NebulaStream and MEOS
Databases
Lets trains share location data instantly.
MobilityDuck: Mobility Data Management with DuckDB
Databases
Makes analyzing moving things super fast.