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Matthias Boehm

Matthias Boehm is a full professor for large-scale data engineering at Technische Universität Berlin and the BIFOLD center of excellence for AI research. His research group focuses on high-level, data science-centric abstractions as well as systems and tools to execute these tasks in an efficient and scalable manner. From 2018 through 2022, Matthias was a BMK-endowed professor for data management at Graz University of Technology, Austria, and a research area manager for data management at the co-located Know-Center GmbH. Prior to joining TU Graz in 2018, he was a research staff member at IBM Research - Almaden, CA, USA, with a major focus on compilation and runtime techniques for declarative, large-scale machine learning in Apache SystemML. Matthias received his Ph.D. from Dresden University of Technology, Germany in 2011 with a dissertation on cost-based optimization of integration flows. His previous research also includes systems support for time series forecasting as well as in-memory indexing and query processing.

Current Projects: Apache SystemDS (An open source ML system for the end-to-end data science lifecycle), , and FONDA II (Foundations of Workflows for Large-Scale Scientific Data Analysis; w/ BAM, Charite, FU Berlin, GFZ, HU Berlin, MDC, TU Darmstadt, Uni Potsdam, Zuse-Institut)

Completed Projects: ExDRa (06/2019-08/2022, exploratory data science and federated ML over raw data; w/ Siemens, DFKI, TU Berlin, and TU Graz), ReWaste F (04/2021-08/2022, digital platform for austrian recycling economy; w/ 4 scientific and 14 industrial partners), DAPHNE (12/2020-11/2024, an open and extensible system infrastructure for integrated data analysis pipelines; w/ AVL, DLR, ETH Zurich, HPI Potsdam, ICCS, Infineon, Intel, ITU Copenhagen, KAI, TU Dresden, Uni Maribor, Uni Basel)

Current Additional Roles:

Team

The DAMS Lab (data management for data science laboratory) is a cross-organizational research group uniting the chair for big data engineering at TU Berlin and external members from multiple universities and industry.

Secretary:

Postdocs:

PhD students:

Undergrad research assistants:

PhD Theses (completed):

Master Theses (completed): Svetlana Sagadeeva (2020), Simon Kysela (2021), Florijan Klezin (2022), Florian Lackner (2022), Pooja Veeresh Yeli (2022), Mito Kehayov (2022), Michael Hofer (2023), Vlad-Andrei Dumitru (2023), Christina Dionysio (2023), Philipp Ortner (2023), Damian Dinoiu (2024), Marlon Adam (2024), Moneer Martini (2024), Obeidah Awni Salim Smadi (2024), Linus Bruckner (2024), Pablo Uxo Castillo (2024), Louis Le Page (2024), Ann-Sophie Messerschmid (2024), Lotta Fagel (2024), Sujitkumar Suresh Gavali (2024), Ahmed Boulila (2024), Lachezar Nikolov (2024), Niklas Andres (2024), Niklas Ventker (2025), Jannik Lindemann (2025), Daniel Richter (2025), Niklas Lohmann (2025), Wen Zhang (2025), Dario Klepoch (2025)

Bachelor Theses (completed): Benjamin Rath (2019), Sandro Letter (2020), Valentin Edelsbrunner (2021), Tobias Rieger (2021), Kevin Innerebner (2021), Thomas Krametter (2022), Thomas Wedenig (2022), Jonathan Resch (2022), Olga Ovcharenko (2022), David Weissteiner (2022), Dževad Ćoralić (2022), Lukas Erlbacher (2022), Jonathan Haberl (2023), Gabriel Alexandru Muresan (2023), Emil Winterleitner (2023), Mario Schwaiger (2023), Richard Bendler (2023), Mark Paranskij (2023), Fares Kataf (2023), Danial Alnicola (2023), Elias Strauß (2024), Andreas Kreppold (2024), Kubilay Eren (2024), Kristiyan Blagov (2024), Maltrim Ebipi (2024), Tessa Heidkamp (2024), Marvin Seidel (2024), Eduard Chalovski (2024), Kasem Celebi (2024), Cenk Özdaglar (2024), Thanh Nguyen (2024), Frederic Caspar Zoepffel (2024), Paul Olaf Theodor Pohlitz (2024), Anton Simon Horeis (2024), Marcel Scholand (2024), Yoana Tsoneva (2024), Simon Kraus (2024), Anton Erik Uwe Pötzsch (2025), Anuun Chinbat (2025), Anton Noah Saatz (2025), Mohamed Atabay (2025), Julius Stöber-Olsen (2025), Andre Jansen (2025), Luis Tugend (2025), Laura Knorr (2025)

We're looking for motivated PhD, master, and bachelor students to join our team. Our research focuses on building ML systems and tools for simplifying the data science liefecycle – from data integration over model training to deployment and scoring – via high-level language abstractions and specialized compiler and runtime techniques. If you're interested in working with us, please contact us directly via email to jobs@dams.tu-berlin.de.

New Master/Bachelor Theses:
The DAMS Lab currently receives a large number of requests for supervising master and bachelor theses. In order to make the process of matching topics to students more scalable, while ensuring a high-quality of supervision, as of Jan 2024, we are introducing the following process:

Publications

This publication list covers the time after my PhD and postdoc. For a full list see

DBLP

and

Google Scholar

. My ORCID is

0000-0003-1344-3663

. For additional interactive rankings see

CSRankings

and

Influential DB Papers

.

2026

2025

2024

2023

2022

2021

2020

2019

2018

2017

2016

2015

2014

ServiceReviewing:

This list summarizes PC memberships and review activities, again after my PhD and postdoc.

Professor Hiring Committee Memberships (completed): Artificial Intelligence (TU Graz, 2019), Remote Sensing (TU Graz, 2021), Data Science Processes (TU Berlin, 2023), Information Integration (TU Berlin, 2023), Data Systems (HPI, 2023), Data Systems (ITU Copenhagen, 2023), Big Data Infrastructures (University of St.Gallen, 2023), Systems for Data Analysis (KTH Stockholm, 2023/2024), Computer Science (Aalborg University, 2024), Data Systems (HPI, 2025), Data Science for Complex Systems Research (PIK/TU Berlin, 2025)

PhD Committee Memberships (completed): Andreas Kunft (TU Berlin DIMA, 2019), Joseph Vinish D'Silva (McGill University, 2020), Shaoduo Gan (ETH Zurich, 2021), Gábor Gévay (TU Berlin DIMA, 2022), Clemens Lutz (TU Berlin DIMA, 2022), Alexander Renz-Wieland (TU Berlin DIMA, 2022), Gencer Sümbül (TU Berlin RSiM, 2023), Martino Ciaperoni (Alto University, 2023), Philipp Grulich (TU Berlin DIMA, 2023), Viktor Rosenfeld (TU Berlin DIMA, 2023), Lisa Raithel (TU Berlin QU, 2024), Francesco Tosoni (University of Pisa, 2024), Aikaterini Katsarou (TU Berlin SNET, 2024), Sören Becker (TU Berlin DOS, 2024), Vera Schmitt (TU Berlin QU, 2024), Binger Chen (TU Berlin D2IP, 2024), Felix Neutatz (TU Berlin D2IP, 2024), Thorsten Wittkopp (TU Berlin DOS, 2024), Dennis Treder-Tschechlov (University of Stuttgart, 2024), Arnab Phani (TU Berlin DAMS, 2024), Nils Feldhus (TU Berlin QU, 2025), Philipp Wiesner (TU Berlin DOS, 2025), Sergey Redyuk (TU Berlin DIMA, 2025), Morgan Karl Geldenhuys (TU Berlin DOS, 2025)

Acknowledgements

Our research group is grateful for funding support from


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