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UID:pretalx-foss4g-europe-2025-TTF3ME@talks.staging.osgeo.org
DTSTART;TZID=CET:20250718T140000
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DESCRIPTION:The amount of data we have to process and publish keeps growing
  every day\, fortunately\, the infrastructure\, technologies\, and methodo
 logies to handle such streams of data keep improving and maturing. GeoServ
 er is an Open Source web service for publishing your geospatial data using
  industry standards for vector\, raster\, and mapping. It powers a number 
 of open source projects like GeoNode and geOrchestra and it is widely used
  throughout the world by organizations to manage and disseminate data at s
 cale. We integrated GeoServer with some well-known big data technologies l
 ike Kafka and Databricks\, and deployed the systems in Azure cloud\, to ha
 ndle use cases that required near-realtime displaying of the latest AIS re
 ceived data on a map as well background batch processing of historical Mar
 itime AIS data. \n\nThis presentation will describe the architecture put i
 n place\, and the challenges that GeoSolutions had to overcome to publish 
 big data through GeoServer OGC services (WMS\, WFS\, and WPS)\, finding th
 e correct balance that maximized ingestion performance and visualization p
 erformance. We had to integrate with a streaming processing platform that 
 took care of most of the processing and storing of the data in an Azure da
 ta lake that allows GeoServer to efficiently query for the latest availabl
 e features\, respecting all the authorization policies that were put in pl
 ace.  A few custom GeoServer extensions were implemented to handle the aut
 horization complexity\, the advanced styling needs\, and big data integrat
 ion needs.
DTSTAMP:20260527T053121Z
LOCATION:SA02
SUMMARY:Processing and publishing Maritime AIS data with GeoServer and Data
 bricks in Azure - Andrea Aime
URL:https://talks.staging.osgeo.org/foss4g-europe-2025/talk/TTF3ME/
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