Lars Arge

Lars Allan Arge is a Danish computer scientist, the head of the Center for Massive Data Algorithmics (MADALGO) at Aarhus University, where he is also a professor of computer science.[1] His research involves the study of algorithms and data structures for handling massive data, especially in graph algorithms and computational geometry.

Education and career

Arge earned his Ph.D. in 1996 from Aarhus University, under the supervision of Erik Meineche Schmidt.[2] He was a professor at Duke University before returning to Aarhus as a professor in 2004, and he continues to hold an adjunct professorship at Duke.[3]

Awards and honors

Arge is a member of the Royal Danish Academy of Sciences and Letters; he was elected to the presidium of the academy in 2015,[4] and became secretary-general of the academy in 2016.[5] In 2012, he was elected as a Fellow of the Association for Computing Machinery "for contributions to massive data algorithmics", becoming only the second ACM Fellow in Denmark.[6][7] He also belongs to the Danish Academy of Technical Sciences.[3]

In 2015 he became a Knight First Class in the Order of the Dannebrog.[8]

References

  1. MADALGO, retrieved 2015-06-10.
  2. Lars Arge at the Mathematics Genealogy Project
  3. Faculty home page, Aarhus University, retrieved 2015-06-10.
  4. Rasmussen, Katrine Ă˜sterlund, Professor Lars Arge elected member of the presidium of the Royal Danish Academy of Science and Letters, MADALGO, archived from the original on 2015-06-14, retrieved 2015-06-10.
  5. Holmgaard Jensen, Trine Ji (November 3, 2016), Professor Lars Arge is new Secretary General of the Royal Danish Academy of Science and Letters, Aarhus University, retrieved 2017-07-07
  6. ACM Fellow award citation, retrieved 2015-06-10.
  7. Professor Lars Arge named ACM Fellow, Aarhus University, December 13, 2012, retrieved 2015-06-10.
  8. Trine Ji Holmgaard Jensen, Lars Arge rewarded Order of the Dannebrog, MADALGO, August 25, 2015, retrieved 2017-09-15
This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.