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Author's profile photo Mathias Kemeter

#SAPTechEd Sessions for Spatial Enthusiasts!

 

This year, SAP TechEd is virtual and free of charge. Get an overview of what if offers!

  • 48-hour non-stop experience, featuring live, simulive and on-demand sessions.
  • Keynotes, training, education, hands-on workshops and more opportunities to get SAP insights on technology, development, and future trends
  • Hear from SAP experts, customers, and partners on tech best practices
  • Get the big picture about the value of an integrated intelligent enterprise for your organization
  • Sign up now and you will have exclusive access to SAP Learning Hub and the SAP Community for additional collaboration and learning opportunities

As someone, who is interested in multi-model data processing and handling (geo-)spatial data in particular, you may be interested to know about the sessions, that incorporate Spatial Intelligence.

Here is my curated and 100% biased overview:

 

PT102
Elevating the Power of Spatial Data

by Tom Turchioe & Bill Gough 

To help enable our joint customers’ journey to the cloud, Esri now supports the SAP HANA Cloud data platform as an enterprise geodatabase. SAP HANA Cloud provides a single gateway to all data within and outside an enterprise. Watch a demo and examine architecture showing seamless connectivity between Esri ArcGIS Enterprise and SAP S/4HANA in support of SAP HANA Cloud. Learn about core data services (CDS) views for ABAP that allow live connectivity to SAP S/4HANA data.

DAT108
Translytical Data Processing with SAP HANA Cloud

by Witalij Rudnicki

By now you likely know that SAP HANA includes advanced analytics capabilities, placing it as a leader in Forrester’s Translytical Data Platforms (see https://news.sap.com/2019/10/sap-leader-translytical-data-platforms/). Join this session to find what “translytical” and “advanced analytics” really mean – in a down-to-earth and entertaining way – for the SAP HANA Cloud data platform and SAP HANA on premise.

DAT201
Embedded Location Analytics and the Power of Geospatial Data with Partners

by Thomas Hammer & Mathias Kemeter

Location intelligence and spatial data can boost enterprise systems. Find out how the spatial capabilities of SAP HANA Cloud can integrate and analyze location data and work with integration capabilities of commercial and open-source GIS software. Also, we demystify SAP HANA spatial services, which can augment spatial data residing in SAP HANA with location-based services. We showcase how SAP business applications can benefit from an open-partner ecosystem and intelligent spatial services.

DAT202
Performing Data Science with SAP HANA Cloud

by Christoph Morgen 

This lecture overviews how embedded machine learning, spatial, and other advanced processing capabilities in SAP HANA can be leveraged by data scientists from Python. Beginning with data exploration, visualization, and analysis with for example, predictive analysis library (PAL) functions, we pivot into how to pass on such analysis scenarios to applications or developers for operationalization in the SAP HANA Cloud data platform.

DAT260
Multi-model Data Processing with SAP HANA Cloud

by Markus Fath & Mathias Kemeter 

Look at combining the power of spatial data analysis and graph processing in the SAP HANA Cloud data platform. See highlights of processing capabilities integrated in a multi-model engine. Incorporate spatial dimensions into advanced analytics and machine-learning models, and improve the value of insights derived from data, including location intelligence.

 

Have fun at #SAPTechEd!

I am looking forward virtually seeing you at the event!

 

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      Author's profile photo Mathias Kemeter
      Mathias Kemeter
      Blog Post Author

      All the content is now available on demand! You should be able to revisit the sessions by clicking the "register" link in the blog.

      You can also find sessions on Youtube:

      And the workshop exercises including thorough description can be found on GitHub: