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Home //About us //AI Professorships //Scalable Software Architectures for Data Analytics

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Prof. Dr.-Ing. Michael Färber

Chair of Scalable Software Architectures for Data Analytics

TUD Dresden University of Technology

Scalable Software Architectures for Data Analytics

Photo. Prof. Dr.-Ing. Michael Färber.

Chair:Prof. Dr.-Ing. Michael Färber
E-Mail: michael.faerber@tu-dresden.de
Office: Strehlener Str. 12-14, Room 733, 01069 Dresden (Google Maps)
Secretary:Thomas Bruderrek
Phone: +49 (0)351 463 40900 (Secretary)

Interested in my current courses?

Have a look at the Summer 2026 AI Courses!

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Call for Postdoc Positions

Join Our Group!

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Recent News

  • 09/2025:Four papers accepted: three at EMNLP 2025 and one at CIKM 2025. See you in Suzhou, China and Seoul, South Korea!
  • 08/2025: I gave a keynote on “LLMs and Knowledge Graphs for Science: From Papers to Insights” at Semantics 2025.
  • 05/2025: Three papers accepted:PathToCausality/KGSubgraphAsPrompt (KDD’25 Research Track),Explainable-GraphNeuralVortexDetection (KDD’25 Applied Data Science Track), andCoDy (ICML’25). See you in Canada!
  • 06/2024:Ember has been accepted to EMNLP 2024 as a main conference paper! Additionally, 2 Papers (AutoRDF2GML +KGPrompt) accepted at ISWC’24. See you in Baltimore!
  • 05/2024: PaperGNNavi accepted at Findings of ACL’24. See you in Bangkok!
  • 04/2024: Starting as full professor (W3) at ScaDS.AI Dresden/Leipzig / TU Dresden.
  • 11/2023: Best Paper Award (1000 USD) for SemOpenAlex at ISWC’23.

Our Group

We conduct research in artificial intelligence (AI) that prioritizes trust and alignment with human values. Our work is positioned at the intersection of natural language processing, notably large language models (LLMs), graph-structured machine learning techniques, and formal knowledge representation frameworks such as knowledge graphs. Combining symbolic reasoning with neural models, we aim to improve nuanced language understanding and enable scalable analysis of structured data from real-world sources.

In addition to core AI research, we actively explore applications in scientific domains, such as large-scale information extraction, knowledge curation, and AI-assisted scientific discovery.

Professional Profile

  • Since April 2024,W3 Full Professorand head of the research group “Scalable Software Architectures for Data Analytics” at the AI Center ScaDS.AI Dresden/Leipzig at TUD Dresden University of Technology (appointed at age 36).
  • From 2020 to 2024,Deputy Full Professor (“W3-Vertretungsprofessor”) forWeb Science at the Institute AIFB of the Karlsruhe Institute of Technology (KIT, Germany), leading a team of 7 PhD students, 1 KIT junior research group leader, and 1 postdoc.
  • 100+ publications at highly-ranked conferences (e.g., ACL, EMNLP, KDD, CIKM, ISWC, ECIR, ICML, NAACL) and journals (e.g., SWJ, IJDL, Scientometrics) with international researchers as co-authors.
  • Principal Investigator (PI)in many projects and multi-million third-party funding.
  • Many years ofteaching experience: Lectures with up to 600 students, receiving Faculty award.
  • Understanding of interdisciplinary research topics based on parallel studies inphilosophy (B.A.).

Introduction and Research Spotlight

Online Demo Systems

  • SQuAI: Scientific Question Answering with Multi-Agent RAG.
  • Klartext: SimplifyMyText: KI-basierte Übersetzung von Webseiten in einfache Sprache.
  • RefBee: Tracks publications across bibliographic databases.
  • C-Rex: Recommends citations for texts.
  • PaperHunter: Searches citation contexts in papers.
  • ScholarSight: Explores scientific concept trends.
  • Linked Crunchbase: Queries startup and innovation data in RDF format.

Data Sets

  • SemOpenAlex: A massive knowledge graph about publications, authors, etc.
  • LPWC: Linked Papers With Code is an RDF KG that models nearly 400,000 machine learning papers, capturing tasks, datasets, methods, evaluations, and results.
  • DSKG: A knowledge graph of datasets.
  • unarXive: Contains annotated full texts from arXive.org.
  • Microsoft Academic Knowledge Graph: Metadata of publications across disciplines.
  • FAIRnets: Metadata about neural networks.

Projects

Open Student Positions and Theses

… please ask. See complete listhere

andhere.

Prof. Dr.-Ing. Michael Färber has supervised over 50 Bachelor and Master theses and encourages both English and German-speaking students to apply. Many thesis topics are available for study abroad through partner institutions and DAAD funding, all with the goal of co-authoring a scientific paper based on the thesis.

Online Presence

funded by:
Gefördert vom Bundesministerium für Bildung und Forschung.
Gefördert vom Freistaat Sachsen.
ScaDS.AI Dresden/Leipzig (Center for Scalable Data Analytics and Artificial Intelligence) is a center for Data Science, Artificial Intelligence and Big Data with locations in Dresden and Leipzig.
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Dresden

Visitor addressTechnische Universität Dresden
ScaDS.AI Dresden/Leipzig
Bürogebäude Strehlener Straße
Strehlener Straße 12, 14
01069 Dresden
Postal addressTechnische Universität Dresden
Zentrum für Informationsdienste und Hochleistungsrechnen
ScaDS.AI Dresden/Leipzig
01062 Dresden

Leipzig

Visitor addressScaDS.AI Dresden/Leipzig
Löhrs Carré
Humboldtstraße 25, Uferstr. 11
04105 Leipzig
Postal addressUniversität Leipzig
Data Science Zentrum
Internes Postfach: 212104
04081 Leipzig

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