Biography:Matthias Scheffler

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Short description: German theoretical physicist
Matthias Scheffler
Photo MS Oct 2021.jpg
Born (1951-06-25) June 25, 1951 (age 73)
EducationTechnical University of Berlin
Scientific career
InstitutionsPhysikalisch-Technische Bundesanstalt
Fritz Haber Institute of the Max Planck Society
ThesisWinkelaufgelöste Photoemission von adsorbierten Schichten
Doctoral advisorKyozaburo Kambe[1]
WebsiteWebsite at FHI

Matthias Scheffler (born June 25, 1951, in Berlin) is a German theoretical physicist whose research focuses on condensed matter theory, materials science, and artificial intelligence. He is particularly known for his contributions to density-functional theory and many-electron quantum mechanics and for his development of multiscale approaches. In the latter, he combines electronic-structure theory with thermodynamics and statistical mechanics, and also employs numerical methods from engineering. As summarized by his appeal "Get Real!" he introduced environmental factors (e. g. partial pressures, deposition rates, and temperature) into ab initio calculations.[2] In recent years, he has increasingly focused on data-centric scientific concepts and methods (the 4th paradigm of materials science)[3][4] and on the goal that materials-science data must become "Findable and Artificial Intelligence Ready".

Academic career

Matthias Scheffler studied physics at the Technische Universität (TU) Berlin. He carried out his doctoral work in the field of theoretical solid-state physics at the Fritz Haber Institute of the Max Planck Society (FHI) and received his Ph.D. from the TU Berlin in 1978. He then moved to the Physikalisch-Technische Bundesanstalt in Braunschweig, where he was employed as a research associate from 1978 to 1987. From 1979 to 1980, he was also a visiting scientist at the IBM T.J. Watson Research Center, Yorktown Heights, USA. He received his habilitation in 1984 from the TU Berlin.

In 1988, he was appointed as a scientific member of the Max Planck Society and founding director of the Theory Department of the Fritz Haber Institute of the Max Planck Society in Berlin. The following year he received an honorary professorship at the TU Berlin. This was followed by further honorary professorships at Freie Universität Berlin (2006), Humboldt-Universität zu Berlin (2016), and in Hokkaido, Japan (2016). He is also Distinguished Visiting Professor of Computational Materials Science and Engineering at the University of California, Santa Barbara since 2005. Since 2015, he heads the European Center of Excellence NOMAD (Novel Materials Discovery),[5] since 2020 the NOMAD Laboratory at the FHI,[6] and since 2021, he is Deputy Spokesperson of the FAIRmat project[7] at the Humboldt-Universität zu Berlin .

Research focus

Since the beginning of his career, Matthias Scheffler has been working on fundamental aspects of the chemical and physical properties of surfaces, interfaces, clusters, and nanostructures. Current research activities include studies of heterogeneous catalysis, thermal conductivity, electrical conductivity, thermoelectric materials, defects in semiconductors, inorganic/organic hybrid materials, and biophysics. These are studies that combine quantum mechanics, ab initio calculations of the electron structure and molecular dynamics with methods from thermodynamics, statistical mechanics, and engineering. In this way, the understanding of meso- and macroscopic phenomena can be developed or deepened under realistic conditions (T, p). Scheffler is also working on the development of theoretical models for the calculation of excited states and electron correlations. The software package FHI-aims developed for this purpose by Scheffler, together with Volker Blum and many others, was specifically designed for large-scale calculations on high-performance computers.[8] Matthias Scheffler has investigated many different classes of materials with high application relevance (e.g. compound semiconductors, metals, oxides, two-dimensional materials, organic materials, surfaces), as well as successfully developing a wide range of phenomena with direct practical relevance (e.g. crystal structure and growth, electronic material properties, metastability of impurities in semiconductors, electrical and thermal conductivity, heterogeneous catalysis).

More than 70 of his former employees now hold professorships or alike positions. Scheffler is one of the most highly cited scientists in his field[9]

Data science and development of the NOMAD database

Since 2003, Matthias Scheffler and his group have been developing artificial intelligence methods and are increasingly engaged in scientific data-sharing activities. Worldwide, vast amounts of scientific data are generated on materials, but only a fraction of it is actually used and published. Often, data are not adequately characterized and described, and most data are not considered further because they are not useful for the ongoing, focused research project. However, they may contain valuable information for other topics ("recycle the waste!").[3] For computational materials science, Scheffler, together with Claudia Draxl, designed and set up a database where research data can be stored in a well-documented manner and where the research data are also available to other researchers. These activities, together with international colleagues, resulted in the foundation of the NOMAD Center of Excellence (CoE).[5][10] In the meantime, NOMAD is the world's largest database of results from highly complex quantum mechanical calculations performed on state-of-the-art high-performance computers.[11] Since 2020, the NOMAD CoE is increasingly focusing on software developments for exascale computers.

As of October 2021, the FAIRmat consortium (FAIR Data Infrastructure for Condensed-Matter Physics and the Chemical Physics of Solids), funded by the German government, has been set up.[7] Here, the original NOMAD concepts are advanced to the areas of materials synthesis and experimental research, and a corresponding metadata catalog, ontologies and workflows, as well as a federated infrastructure of data repositories (NOMAD Oasis) are being developed. With the detailed description and availability of data, artificial intelligence methods can be applied and materials with novel and advantageous properties can be identified.[12] The previously often very lengthy value creation process in the development of new materials, from basic research to market-ready product, can thus be significantly shortened.

Awards and honors

Bibliography

References

  1. James, Jeremiah; Steinhauser, Thomas; Hoffmann, Dieter; Friedrich, Bretislav (2011-10-17). One Hundred Years at the Intersection of Chemistry and Physics: The Fritz Haber Institute of the Max Planck Society 1911-2011. De Gruyter. doi:10.1515/9783110239546.183. ISBN 978-3-11-023954-6. https://www.degruyter.com/view/title/121246. 
  2. Freund, Hans-Joachim; Meijer, Gerard; Scheffler, Matthias; Schlögl, Robert; Wolf, Martin (2011-10-17). "CO Oxidation as a Prototypical Reaction for Heterogeneous Processes" (in en). Angewandte Chemie International Edition 50 (43): 10064–10094. doi:10.1002/anie.201101378. PMID 21960461. https://onlinelibrary.wiley.com/doi/10.1002/anie.201101378. 
  3. 3.0 3.1 Draxl, Claudia; Scheffler, Matthias (2020), Andreoni, Wanda; Yip, Sidney, eds., "Big Data-Driven Materials Science and Its FAIR Data Infrastructure" (in en), Handbook of Materials Modeling (Cham: Springer International Publishing): pp. 49–73, doi:10.1007/978-3-319-44677-6_104, ISBN 978-3-319-44676-9, http://link.springer.com/10.1007/978-3-319-44677-6_104, retrieved 2021-10-29 
  4. Hey, Tony; Tansley, Stewart; Tolle, Kristin (2009-10-01) (in en-US). The Fourth Paradigm: Data-Intensive Scientific Discovery. https://www.microsoft.com/en-us/research/publication/fourth-paradigm-data-intensive-scientific-discovery/. 
  5. 5.0 5.1 "Website of the NOMAD Center of Excellence". https://www.nomad-coe.eu/. 
  6. "Website of the NOMAD Laboratory at the Fritz Haber Institute of the Max Planck Society". 2021-10-29. https://th.fhi.mpg.de/site/. 
  7. 7.0 7.1 "Website of FAIRmat". 2021-10-29. https://www.fair-di.eu/fairmat/. 
  8. "Website of FHI-aims". 2021-10-29. https://fhi-aims.org/. 
  9. "Google scholar website of Matthias Scheffler". 2021-10-29. https://scholar.google.com/citations?user=ebybQUsAAAAJ&hl=de. 
  10. Draxl, Claudia; Scheffler, Matthias (September 2018). "NOMAD: The FAIR concept for big data-driven materials science" (in en). MRS Bulletin 43 (9): 676–682. doi:10.1557/mrs.2018.208. ISSN 0883-7694. http://link.springer.com/10.1557/mrs.2018.208. 
  11. "Website of the NOMAD database". 2021-10-29. https://nomad-lab.eu/. 
  12. "Website of the NOMAD Artificial Intelligence Toolkit". 2021-10-29. https://nomad-lab.eu/services/aitoolkit. 
  13. "Mit ausländischen Partnern an die Spitze" (in de-DE). 2001-11-28. https://www.innovations-report.de/sonderthemen/veranstaltungsnachrichten/bericht-61378/. 
  14. "Medard W. Welch Award". 2021-10-29. https://avs.org/awards/professional-awards/medard-w-welch-award/. 
  15. "Max Born Prize and Medal" (in de). 2021-10-29. https://www.dpg-physik.de/auszeichnungen/dpg-preise-mit-anderen-organisationen/max-born-preis-und-medaille/preistraeger. 
  16. "Honorary doctors of Lund University". 2021-10-29. https://www.science.lu.se/research/honorary-doctors. 
  17. "Rudolf-Jaeckel-Preis - DVG-Home" (in de). https://www.physik.uni-kl.de/dvg/index.php/dvgpreise/rudolf-jaeckel-preis. 
  18. "APS Fellow Archive" (in en). http://www.aps.org/programs/honors/fellowships/archive-all.cfm. 
  19. "Matthias Scheffler – Berlin-Brandenburgische Akademie der Wissenschaften". https://www.bbaw.de/die-akademie/bbaw-mitglieder/mitglied-matthias-scheffler. 
  20. "Mitglieder" (in de-DE). https://www.leopoldina.org/mitgliederverzeichnis/mitglieder/member/Member/show/matthias-scheffler/. 

External links