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Thema: Data Management
- Montag
20.06. - Mittwoch
22.06.
The real magic of AI lays in well managed data to build and train the underlying models. Accordingly, streamlined data management process are essential for success in AI. In this session we are going to discuss data management for AI and ask questions like 'What is data management for AI?', 'Are there difference to well-known approaches from BI & Analytics' and 'Do we need special AI data engineers?'.
TDWI Community Talk is an open format to discuss current topics in the area of data analytics within the TDWI community.
Target Audience: All data entheusiasts
Prerequisites: No prerequisites
Level: Basic
Extended Abstract:
The area of artificial intelligence is currently trending and transforms BIA landscapes in many organizations. There are many new initiatives and promises, however, to build all these fancy applications a well-thought data management is necessary. Nevertheless, the discussion of AI often focuses various models and cool programming languages and the underlying data engineering is often neglected. This is why this session focuses data management for AI and discusses approaches and best practices with the TDWI community.
The goal of this session is:
- Give the audience an overview what 'Data Management for AI' means and what basic terms are.
- Discuss current best practices and challenges with experts and the audience.
- Reflect different views on differences between processes in AI and BI, the role of a data engineer, software tools and many more.
The 'TDWI Data Schnack' is an interactive format that wants to engange the discussion in the TDWI community. It provides a plattform that highlights different aspects of a current topic and inspires discussions between experts and other community members. Therefore, the course of a Data Schnack session contains a short introduction talk that introduces a basic understanding of the topic. Followed by a panel discussion with experts from different fields. Lastly, an open discussion integrates the audience to share knowledge between all participants.
Julian Ereth is a researcher and practicioner in the area of Business Intelligence and Analytics. As a solution architect at Pragmatic Apps he plans and builds analytical landscapes and custom software solutions. He is also enganged with the TDWI and hosts the TDWI StackTalk.
Timo Klerx ist Gründer und Data Scientist von und bei paiqo und hilft Kunden bei der Konzeption und Umsetzung von Projekten im Bereich Artificial Intelligence / Data Science / Machine Learning.
Die ersten Berührungen mit AI hatte Timo in einem Forschungsprojekt zur automatischen Manipulationserkennung von Geldautomaten.
Bevor er sein eigenes Startup gründete, sammelte er Erfahrungen in einem anderen Data Science Startup und fokussierte sich dort auf den Bereich Machine Analytics inkl. Use Cases wie Predictive Maintenance und Predictive Quality.
Weiterhin engagiert sich Timo bei diversen Data Science Meetups in Paderborn, Münster und gesamt NRW.
Malte Lange ist Produktverantwortlicher für Data Analytics bei der Finanz Informatik, dem zentralen Digitalisierungspartner in der Sparkassen-Finanzgruppe.
Die Schaffung von datengetriebenen Banking Lösungen ist seit 2019 sein Themenschwerpunkt. Unter anderem verantwortet er die omni-channelfähige Kundenansprache „Next Best Action“ für die digitale Finanzplattform OSPlus und sorgt für die Weiterentwicklung der zentralen Data Analytics Plattform für analytische Anwendungsfälle im OSPlus. Gemeinsam mit Partnern in der Sparkassen-Finanzgruppe entwickelt er neue datengetriebene Lösungsansätze für Sparkassen, um das Potential vorhandener Daten zu realisieren.
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Petrol is Slovenian company that operates in 8 countries in SEE with 5BEUR annual revenue. As traditional publicly-owned company, Petrol has faced necessity for transformation to stay ahead in highly competitive market. Use of BIA was mainly reactive, but in recent years it has transformed into competitive advantage by using cloud technologies and industry specific analytical models and focusing on the content and creating business value. This value is now being leveraged as competitive advantage through proactive use of data and analytics.
Target Audience: Decision Makers, Data Architects, Project Managers
Prerequisites: None
Level: Basic
Extended Abstract:
Petrol is Slovenian company that operates in 8 countries in SEE with 5BEUR annual revenue. Main business activity is trading in oil derivatives, gas and other energy products in which Petrol generates more than 80 percent of all sales revenue and it also has a leading market share in the Slovenian market. Petrol also trades with consumer goods and services, with which it generates just under 20 percent of the revenue. Use of BIA was mainly reactive, but in recent years it has transformed into competitive advantage by using cloud technologies and industry specific analytical models and focusing on the content and creating business value. This value is now being leveraged as competitive advantage through proactive use of data and analytics. Presentation will cover main business challenges, explain technology architecture and approach and discuss results after three years of system development and use.
Andreja Stirn is Business Intelligence Director with more than 20 years of experience working in the Oil & Energy and Telco industry. Skilled in Data Warehousing, Business Intelligence, Corporate Performance Management, Market Research and People Management.
Dražen Orešcanin is Solution Architect in variety of DWH, BI and Big Data Analytics applications, with more than 25 years of experience in projects in largest companies in Europe, US and Middle East. Main architect of PI industry standard DWH models. Advised Companies include operators from DTAG, A1 Group, Telenor Group, Ooredoo Group, Liberty Global, United Group, Elisa Finland, STC and many companies in other industries such as FMCG and utilities.
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Zum Management einer Bonus Club Karten Lösung mit mehreren Geschäftspartnern musste binnen kürzester Zeit eine BIA Lösung aufgebaut werden.
Im Vortrag wird gezeigt wie die Anbindung der Geschäftspartner über Cloud und OnPrem Komponenten erfolgt und mittlerweile seit Beginn dieses Projektes 16 individuelle Partner DWH Lösungen inkl. einer Unified DWH Lösung aufgebaut wurden.
Die DWH Lösungen selbst wurden On Prem implementiert. Die Reporting Anbindung der Geschäftspartner inkl. der Data Mart Schicht liegt dann wieder in einer Cloud Umgebung. Im Vortrag wird auf die Herausforderungen und Lösungsansätze im Zuge der Umsetzung dieser komplexen hybriden Architektur eingegangen.
Gregor Zeiler ist seit dreißig Jahren in verschiedenen Funktionen in der Business Intelligence-Beratung tätig. Im Zuge seiner beruflichen Tätigkeit konnte er umfangreiche Projekterfahrung in vielen Branchen und auf Basis eines breiten Technologiespektrums sammeln. Zahlreiche Publikationen und Vorträge begleiten seine berufliche Tätigkeit. Als CEO bei biGENIUS AG kommt er seiner Passion die Prozesse in der Entwicklung von Data Analytics Lösungen zu optimieren nach.
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