Equivariant geometry and Calabi-Yau manifolds - Daniel Halpern-Leistner
Workshop on Homological Mirror Symmetry: Emerging Developments and Applications
Topic: Equivariant geometry and Calabi-Yau manifolds
Speaker: Daniel Halpern-Leistner
Affiliation: Columbia
Date: March 16, 2017
For more video, visit http://video.ias.edu
Видео Equivariant geometry and Calabi-Yau manifolds - Daniel Halpern-Leistner канала Institute for Advanced Study
Topic: Equivariant geometry and Calabi-Yau manifolds
Speaker: Daniel Halpern-Leistner
Affiliation: Columbia
Date: March 16, 2017
For more video, visit http://video.ias.edu
Видео Equivariant geometry and Calabi-Yau manifolds - Daniel Halpern-Leistner канала Institute for Advanced Study
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