Dr.-Ing. Christopher Krauß

Media & Data Science Lead at the Business Unit FAME

Application Areas

  • Interoperable & Adaptive Educational Infrastructures
  • State of the Art Media Delivery for Cross Device Applications
  • Secure Verifiability of Media Production, Modification and Usage Processes

Research Areas

  • Artificial Intelligence & Machine Learning for Media
    • Personalization & Support through Adaptive Systems & Recommender Systems
    • Data Analysis through Pattern Recognition & Predictive Data Mining
    • Supervised, Unsupervised & Reinforcement Learning Approaches based on Deep Learning
  • Sustainable Interoperable Infrastructures
    • Design of Micro-Service Architectures to support the Best-of-Breed Paradigm
    • Analysis and Support of Open Standards & Specifications
    • Translation of Business Requirements into Scientific Technical Solutions
  • Technical Innovations for Societal Challenges
    • Secure Verification of Authenticity and Provenance for Media and Physical Objects
    • Broad Acceptance through Explainable AI & Trustworthy AI
    • User Self-Sovereign Identities and Data Handling


Dr.-Ing. Christopher Krauss is Media & Data Science Lead at the business unit Future Applications and Media of the Fraunhofer Institute for Open Communication Systems (FOKUS). He specializes in the R&D of topics dealing with Machine Learning, Data Science, Technology Enhanced Learning, and Connected TVs and has been involved in multiple public founded national and international projects (e.g. Smart Learning I & II, Digi-Hand, FI-Content I & II, User Centric Networking, Global ITV) and managed many projects for different industry customers (e.g., Red Bull, Deutsche Welle, MediaBroadcast, ImmobilienScout24, Holtzbrinck Publishing Group, Cornelsen, Bertelsmann Arvato, Axel Springer, Rovi, and Deutsche Telekom).

Christopher Krauss received his Master of Science in Media Informatics (very good with distinction) at Beuth University of Applied Sciences and Fraunhofer FOKUS in 2012. From 2015 until 2017, he participated in the BMBF-funded Software Campus program which trains and professionally develops tomorrow’s senior IT executives. In June 2018, Christopher Krauss completed his PhD project (with distinction/ summa cum laude) at the TU Berlin with his dissertation “Time-Dependent Recommender Systems for the Prediction of Appropriate Learning Objects”.

Publications

Jahr
Year
Titel/Autor:in
Title/Author
Publikationstyp
Publication Type
2023 An interoperable license management component for educational content
Nguyen, The-Anh; Krauß, Christopher; An, Truong-Sinh; Heithecker, Boris; Neiss, Patrick; Ziegler, Frank
Konferenzbeitrag
Conference Paper
2023 LOGINEO NRW - Zukunftscheck
Fuhrhop, Christian; Krauß, Christopher; Paul, André
Bericht
Report
2023 Best-of-Breed: Service-Oriented Integration of Artificial Intelligence in Interoperable Educational Ecosystems
Krauß, Christopher; Streicher, Alexander; Poxleitner, Eva; Altun, Daniela; Müller, Joanna; An, Truong-Sinh; Müller, Christoph
Konferenzbeitrag
Conference Paper
2022 Interoperable, dienstorientierte Architekturen für nachhaltige, vernetzte Bildungsökosysteme
Krauß, Christopher
Aufsatz in Buch
Book Article
2022 Wird eine künstliche Intelligenz zukünftig für mich lernen?
Krauß, Christopher
Konferenzbeitrag
Conference Paper
2022 Machine learning for per-title encoding
Silhavy, Daniel; Krauß, Christopher; Chen, Anita; Nguyen, Anh Tu; Müller, Christoph; Arbanowski, Stefan; Steglich, Stephan; Bassbouss, Louay
Zeitschriftenaufsatz
Journal Article
2022 Lessons learned from creating, implementing and evaluating assisted e-learning incorporating adaptivity, recommendations and learning analytics
Altun, Daniela; Krauß, Christopher; Streicher, Alexander; Müller, Christoph; Atorf, Daniel; Rerhaye, Lisa; Kunde, Dietmar
Konferenzbeitrag
Conference Paper
2021 Ansätze für eine Nutzungserfassung von Video-Streaming-Angeboten
Arbanowski, Stefan; Seeliger, Robert; Krauß, Christopher; Lasak, Martin
Bericht
Report
2018 Können typische Lernverhalten, wie sie in MOOCs gefunden wurden, auch in anderen Kursen auftauchen?
An, Truong-Sinh; Merceron, Agathe; Krauß, Christopher
Konferenzbeitrag
Conference Paper
2018 Time-dependent recommender system for the prediction of appropriate learning objects
Krauß, Christopher
Dissertation
Doctoral Thesis
2017 "Smart Learning". Ein digitaler Lernbegleiter für die berufliche Bildung
Krauß, Christopher; Merceron, Agathe; An, Truong-Sinh; Zwicklbauer, Miggi; Dinziol, Martin; Scharp, Michael
Konferenzbeitrag
Conference Paper
2017 Smart Learning - neue Ansätze für individuelles Lernen
Krauß, Christopher; Schlösser, Holger
Zeitschriftenaufsatz
Journal Article
2015 "Smart Learning" für die handwerkliche Weiterbildung
Merceron, Agathe; Kania, Jost; Krauß, Christopher; Scharp, Michael; Zwicklbauer, Miggi
Konferenzbeitrag
Conference Paper
Diese Liste ist ein Auszug aus der Publikationsplattform Fraunhofer-Publica

This list has been generated from the publication platform Fraunhofer-Publica