Home: Difference between revisions
No edit summary |
No edit summary |
||
Line 71: | Line 71: | ||
[https://users.cs.duke.edu/~brd/ Bruce Donald] <br><br>'''Primary Area''': Artificial Intelligence <br>'''Research Interests''': Computational biology, chemistry and biophysics, Protein modeling, Optimization, Game theory for pathogen resistance, Statistical mechanics, and Geometric computing | [https://users.cs.duke.edu/~brd/ Bruce Donald] <br><br>'''Primary Area''': Artificial Intelligence <br>'''Research Interests''': Computational biology, chemistry and biophysics, Protein modeling, Optimization, Game theory for pathogen resistance, Statistical mechanics, and Geometric computing | ||
| style="width: 130px;" | [[File:calderbank.jpg | 120px]] | | style="width: 130px;" | | ||
| style="width: 500px;" | [https:// | [[File:calderbank.jpg | 120px]] | ||
| style="width: 500px;" | | |||
[https://scholars.duke.edu/person/xiaobai.sun Xiaobai Sun] <br><br>'''Primary Area''': Numerical Analysis<br>'''Research Interests''': Matrix Theory, High-performance Scientific Computing and Parallel Computing | |||
Line 81: | Line 83: | ||
|- style="vertical-align:top;" | |- style="vertical-align:top;" | ||
| style="width: 130px;" | [[File:ashwin.jpg | 120px]] | | style="width: 130px;" | | ||
| style="width: 500px;" | [https://users.cs.duke.edu/~ashwin/ Ashwin Machanavajjhala] <br><br>'''Primary Area''': Systems <br>'''Research Interests''': Data privacy, Systems for massive data analytics, Statistical methods for information extraction and entity resolution | [[File:ashwin.jpg | 120px]] | ||
| style="width: 500px;" | | |||
[https://users.cs.duke.edu/~ashwin/ Ashwin Machanavajjhala] <br><br>'''Primary Area''': Systems <br>'''Research Interests''': Data privacy, Systems for massive data analytics, Statistical methods for information extraction and entity resolution | |||
| style="width: 130px;" | | |||
[[File:bmm.jpg | 120px]] | |||
| style="width: 500px;" | | |||
[https://users.cs.duke.edu/~bmm/ Bruce Maggs] <br><br>'''Primary Area''': Systems <br>'''Research Interests''': Distributed systems, including content delivery networks, computer networks, and computer and network security. | |||
| [[File:sayan.jpg | 120px]] | | [[File:sayan.jpg | 120px]] | ||
| [https://sayanmuk.github.io/ Sayan Mukherjee] <br><br>'''Primary Area''': Statistical Science <br>'''Reseach Interests''': Randomized algorithms in machine learning, Spectral theory for simplicial complexes, Computational topology | | [https://sayanmuk.github.io/ Sayan Mukherjee] <br><br>'''Primary Area''': Statistical Science <br>'''Reseach Interests''': Randomized algorithms in machine learning, Spectral theory for simplicial complexes, Computational topology | ||
|- | |- | ||
| style="width: 130px;" | [[File:Schmidler.jpg | 120px]] | | style="width: 130px;" | | ||
[[File:Schmidler.jpg | 120px]] | |||
| [http://www2.stat.duke.edu/~scs/ Scott Schmidler] <br><br>'''Primary Area''': Statistical Science <br>'''Research Interests''': Monte Carlo algorithms, Markov chain mixing times, Stochastic modeling, Bioinformatics, Machine learning, and Statistical computing | | [http://www2.stat.duke.edu/~scs/ Scott Schmidler] <br><br>'''Primary Area''': Statistical Science <br>'''Research Interests''': Monte Carlo algorithms, Markov chain mixing times, Stochastic modeling, Bioinformatics, Machine learning, and Statistical computing | ||
| [[File:Fanwei.jpg | 120px]] | | [[File:Fanwei.jpg | 120px]] |
Revision as of 10:58, 22 October 2023
The theory group is engaged in cutting-edge research in a broad span of areas, including geometric computing, approximation and online algorithms, graph algorithms, game theory and mechanism design, stochastic optimization and decision theory, and combinatorial optimization. The group is also engaged in collaborative efforts with researchers in a broad array of application areas and makes leading contributions to nanotechnology systems, computational molecular biology, database management and data analysis, computational economics, internet systems and services, high-performance computing, geographic information systems (GIS), and ecological modeling.
Faculty
Pankaj Agarwal |
Brandon Fain |
Rong Ge |
Kamesh Munagala
| ||||
Debmalya Panigrahi |
John H. Reif |
Benjamin Rossman |
Alex Steiger
| ||||
Robert Calderbank |
Anru Zhang |
Affiliated Faculty
Bruce Donald |
Xiaobai Sun
|
John Harer | |||
Ashwin Machanavajjhala |
Bruce Maggs |
![]() |
Sayan Mukherjee Primary Area: Statistical Science Reseach Interests: Randomized algorithms in machine learning, Spectral theory for simplicial complexes, Computational topology | ||
Scott Schmidler Primary Area: Statistical Science Research Interests: Monte Carlo algorithms, Markov chain mixing times, Stochastic modeling, Bioinformatics, Machine learning, and Statistical computing |
![]() |
Fan Wei Primary Area: Mathematics Research Interests: Extremal combinatorics, probabilistic combinatorics, applications of combinatorics to computer science. |
|
|
Graduate Students
Current PhD Students
- Ruoxu Cen
- Muthu Chidambaram
- Anish Hebbar
- Ben Holmgren
- Ruoming Huang
- Rajiv Nagipogu
- Rahul Raychaudhury
- Govind S. Sankar
- Yiheng Shen
- Lu Wang
- Keegan Yao
- Mo Zhou
Recent Alumni
Postdocs
- Xiao Hu, 2022 (Assistant Professor at UWaterloo)
- Anilesh Krishnaswamy, 2021 (Google)
- Hsien-Chih Chang, 2020 (Assistant Professor at Dartmouth College)
- Yu Cheng, 2019 (Assistant Professor at UIC)
- Kyle Fox, 2017 (Associate Professor at UT Dallas)
- Sungjin Im, 2013 (Associate Professor at UC Merced)
- Thomas Moelhave, 2013 (Scalable Algorithmics)
- Swaminathan Sankaraman, 2013 (Akamai Technologies)
PhDs
- Chenwei Wu, 2023 (Huawei)
- Erin Taylor, 2023 (Geometric Data Analytics)
- Alexander Steiger, 2023 (Assistant Research Professor at Duke University)
- Keerti Anand, 2022 (Goldman Sachs)
- Abraham Frandsen, 2022 (Enveda Biosciences)
- Kevin Sun, 2022 (Teaching Assistant Professor at UNC-Chapel Hill)
- Kangning Wang, 2022 (Postdoc at Stanford)
- Xiang Wang, 2022 (Research Scientist at Meta)
- Aaron Lowe, 2021 (Esri)
- Reza Alijani, 2020 (Google)
- Yuan Deng, 2020 (Google Research)
- Stavros Sintos, 2020 (Assistant Professor at UIC)
- Allen Xiao, 2020 (Robinhood)
- Brandon Fain, 2019 (Assistant Research Professor at Duke University)
- Samuel Haney, 2019 (Tumult Labs)
- Nathaniel Kell, 2018 (Assistant Professor at Denison University)
- Seyed Zahedi, 2018 (Assistant Professor at UWaterloo)
- Abhinandan Nath, 2018 (Mentor Graphics)
- Tianqi Song, 2018 (Postdoc at Caltech)
- Hieu Bui, 2017 (Assistant Professor at The Catholic University of America)
- Sudhanshu Garg, 2016 (LinkedIn)
- Jiangwei Pan, 2016 (Netflix)
- Janardhan Kulkarni, 2015 (Principal Researcher at Microsoft)
- Salman Parsa, 2015 (Assistant Professor at DePaul University)
- You Wu, 2015 (Google Research)
- Xiaoming Xu, 2015 (Google)
- Wuzhou Zhang, 2015 (Apple)
- Albert Yu, 2013 (Amazon)
- Sharath Raghvendra, 2012 (Associate Professor at Virginia Tech)
- Sayan Bhattacharya, 2012 (Associate Professor at University of Warwick)
- Harish Chandran, 2012 (Google)
- Nikhil Gopalkrishnan, 2012 (3EO Health)
- Shashidhara K. Ganjugunte, 2011 (Mentor Graphics)
Undergraduates
- William He, 2022 (PhD student at CMU)
- Ivan-Aleksandar Mavrov, 2023 (PhD student at Stanford)
- Zeyu Shen, 2023 (PhD student at Cornell)
- Charles Lyu, 2020 (PhD student at MIT)
- Xingyu Chen, 2019 (Facebook)
- Haofeng (Fred) Zhang, 2018 (PhD at Harvard -> PhD student at UC Berkeley)
- Arun Ganesh, 2017 (PhD at UC Berkeley -> Google Research)
- Rex Ying, 2016 (PhD at Stanford -> Assistant Professor at Yale)
- William Victor, 2016 (Applied Predictive Technologies)
- Niel Lebeck, 2014 (PhD at UW Seattle -> Google)
- Ben Berg, 2013 (PhD student at CMU -> Assistant Professor at UNC-Chapel Hill)
- Siyang Chen, 2012 (Google)
- Peng Shi, 2010 (PhD student at MIT -> Microsoft Research -> Assistant Professor at USC Marshall School of Business)