Towards Serverless Processing of Spatiotemporal Big Data Queries
By: Diana Baumann, Tim C. Rese, David Bermbach
Potential Business Impact:
Lets computers quickly find things on maps.
Spatiotemporal data are being produced in continuously growing volumes by a variety of data sources and a variety of application fields rely on rapid analysis of such data. Existing systems such as PostGIS or MobilityDB usually build on relational database systems, thus, inheriting their scale-out characteristics. As a consequence, big spatiotemporal data scenarios still have limited support even though many query types can easily be parallelized. In this paper, we propose our vision of a native serverless data processing approach for spatiotemporal data: We break down queries into small subqueries which then leverage the near-instant scaling of Function-as-a-Service platforms to execute them in parallel. With this, we partially solve the scalability needs of big spatiotemporal data processing.
Similar Papers
Towards an Application-Centric Benchmark Suite for Spatiotemporal Database Systems
Databases
Tests apps that track moving things.
CheetahGIS: Architecting a Scalable and Efficient Streaming Spatial Query Processing System
Databases
Lets computers track many moving things fast.
Mobility Stream Processing on NebulaStream and MEOS
Databases
Lets trains share location data instantly.