Gabriel Peyré
Gabriel Peyré | |
---|---|
Nationality | French |
Awards | Blaise Pascal Prize (2017) of the Académie des sciences Enrico Magenes Prize (2019) of the Unione Matematica Italiana |
Scientific career | |
Fields | Applied mathematics |
Institutions | ENS and CNRS |
Gabriel Peyré (born 1979)[1] is a French mathematician. Most of his work lies in the field of transportation theory. He is a CNRS senior researcher and a Professor in the mathematics and applications department of the École normale supérieure in Paris.[2] He was awarded the CNRS Silver Medal in 2021.[3]
Life and work
[edit]His work mainly focuses on applied mathematics, in particular on the imaging sciences and machine learning applications of optimal transport.[4]
Gabriel Peyré is also the deputy director of the 3IA Paris Artificial Intelligence Research Institute[5] as well as a member of the scientific committee of the ENS center for data science.[6] He is also the creator of the Numerical tour of data science,[7] a popular online repository of Python/Matlab/Julia/R resources to teach mathematical data sciences. He is a frequent collaborator of the INRIA team Mokaplan.[8]
Awards and distinctions
[edit]Gabriel Peyré was awarded the Blaise Pascal Prize in 2017 from the Académie des sciences[9] as well as the Enrico Magenes Prize (2019) from the Unione Matematica Italiana.[10] He also was an invited speaker at the European Congress of Mathematics in 2020.[11] His research was supported by an ERC starting grant in 2012 and by an ERC consolidator grant in 2017.[12] In 2021, he was awarded the CNRS Silver Medal.[3]
Major publications
[edit]- Benamou, J.-D., Carlier, G., Cuturi, M., Nenna, L., & Peyré, G. (2015). Iterative bregman projections for regularized transportation problems [Publisher: Society for Industrial and Applied Mathematics]. SIAM Journalon Scientific Computing, 37(2), A1111–A1138.[13]
- Peyré, G., Bougleux, S., & Cohen, L. (2008). Non-local regularization of inverse problems. In D. Forsyth, P. Torr, & A. Zisserman (Eds.), Computer vision – ECCV 2008 (pp. 57–68). Springer.[14]
- Peyré, G., & Cuturi, M. (2019). Computational optimal transport: With applications to data science [Publisher: Now Publishers, Inc.]. Foundations and Trends in Machine Learning, 11(5), 355–607.[15]
- Rabin, J., Peyré, G., Delon, J., & Bernot, M. (2012). Wasserstein barycenter and its application to texture mixing. In A. M. Bruckstein, B. M. ter Haar Romeny, A. M. Bronstein, & M. M. Bronstein (Eds.), Scale spaceand variational methods in computer vision (pp. 435–446). Springer.[16]
- Solomon, J., de Goes, F., Peyré, G., Cuturi, M., Butscher, A., Nguyen, A., Du, T., & Guibas, L. (2015). Convolutional wasserstein distances: Efficient optimal transportation on geometric domains. ACM Transactions on Graphics, 34(4), 66:1–66:11.[17]
References
[edit]- ^ "Peyré, Gabriel (1979-....)". idref.fr. Retrieved 19 July 2021.
- ^ "Contact - Homepage of Gabriel Peyré". www.gpeyre.com. Retrieved 24 March 2021.
- ^ a b "Gabriel Peyré | CNRS". www.cnrs.fr (in French). 11 March 2021. Retrieved 17 January 2022.
- ^ "[Webinar] Gabriel Peyré ran a Seminar@SystemX on June 17, 2020 | IRT SystemX". Retrieved 4 March 2021.
- ^ "Governance | Prairie". 26 September 2019. Retrieved 24 March 2021.
- ^ "Data @ ENS - ENS-CFM Data Science Chair". data-ens.github.io. Retrieved 24 March 2021.
- ^ "Numerical Tours - A Numerical Tour of Data Science". www.numerical-tours.com. Retrieved 24 March 2021.
- ^ "Mokaplan". Inria. 21 July 2011. Retrieved 25 May 2021.
- ^ "Les prix de l'Académie des sciences 2017". www.academie-sciences.fr. Retrieved 24 March 2021.
- ^ "Premio "Enrico Magenes" – Sito dell'Unione Matematica Italiana" (in Italian). Retrieved 24 March 2021.
- ^ "8th European Congress of Mathematics". 8th European Congress of Mathematics. Retrieved 24 March 2021.
- ^ "NORIA - Homepage of Gabriel Peyré". www.gpeyre.com. Retrieved 24 March 2021.
- ^ Benamou, Jean-David; Carlier, Guillaume; Cuturi, Marco; Nenna, Luca; Peyré, Gabriel (2015). "Iterative Bregman Projections for Regularized Transportation Problems". SIAM Journal on Scientific Computing. 37 (2): A1111–A1138. arXiv:1412.5154. doi:10.1137/141000439. S2CID 12631372. Retrieved 9 April 2021.
- ^ Peyré, Gabriel; Bougleux, Sébastien; Cohen, Laurent (2008). "Non-local regularization of inverse problems". Computer Vision – ECCV 2008. Lecture Notes in Computer Science. Vol. 5304. pp. 57–68. doi:10.1007/978-3-540-88690-7_5. ISBN 978-3-540-88689-1. S2CID 1044368. Retrieved 9 April 2021.
- ^ Cuturi, Marco; Peyré, Gabriel (2019). "Computational optimal transport: With applications to data science". Foundations and Trends in Machine Learning. 11 (5–6): 355–607. doi:10.1561/2200000073. Retrieved 9 April 2021.
- ^ Rabin, Julien; Peyré, Gabriel; Delon, Julie; Bernot, Marc (2012). "Wasserstein barycenter and its application to texture mixing" (PDF). Scale Space and Variational Methods in Computer Vision. Lecture Notes in Computer Science. Vol. 6667. pp. 435–446. doi:10.1007/978-3-642-24785-9_37. ISBN 978-3-642-24784-2. S2CID 3571438.
- ^ Solomon, Justin; De Goes, Fernando; Peyré, Gabriel; Cuturi, Marco; Butscher, Adrian; Nguyen, Andy; Du, Tao; Guibas, Leonidas (27 July 2015). "Convolutional wasserstein distances: Efficient optimal transportation on geometric domains". ACM Transactions on Graphics. 34 (4): 66:1–66:11. doi:10.1145/2766963. S2CID 54500200.
External links
[edit]- Gabriel Peyré publications indexed by Google Scholar