[Dec 2021] "IncShrink: Architecting Efficient Outsourced Databases using Incremental MPC and Differential Privacy" with Cehnghong Wang, Johes Bater and Kartik Nayak accepted with shepherding to SIGMOD 2022
[Dec 2021] "R2T: Instance-optimal Truncation for Differentially Private Query Evaluation with Foreign Keys
" with Yuchao Tao, Ke Yi, Wei Dong and Juanru Fang, accepted to SIGMOD 2022
[May 2021] Our SIGMOD 2011 paper titled "No Free Lunch in Differential Privacy" awarded the ACM SIGMOD 2021 Test of Time award
Bio:
Ashwin Machanavajjhala is an Associate Professor in the Department of Computer Science, Duke University, and co-founder of Tumult Labs. His primary research interests lie in algorithms for privacy preserving data analytics with a focus on differential privacy. He is an ACM Distinguished Member, a recipient of the ACM SIGMOD 2021 Test of Time and IEEE ICDE 2017 Influential Paper awards, and the NSF Faculty Early CAREER award in 2013. In collaboration with the US Census Bureau, he is credited with developing the first real world deployment of differential privacy. Ashwin graduated with a Ph.D. from the Department of Computer Science, Cornell University and a B.Tech in Computer Science and Engineering from the Indian Institute of Technology, Madras.
Kiron Lebeck
(BS) (→ PhD candidate at U Washington)
Bharat Chelapalli (MS) (→ Amazon)
Prospective Students:
I am interested in research into privacy preserving data analysis, especially differential privacy, and algortihmic fairness. Please read these representative papers before contacting me:
"Practical Security and Privacy for Database Systems", (with Xi He, Jennie Rogers, Johes Bater, Chenghong Wang, Xiao Wang), SIGMOD 2021
"Differential Privacy in the Wild: A
tutorial on current practices & open challenges", (with Xi He,
Michael Hay), VLDB/SIGMOD 2017, Part 1 (slides,
video),
Part 2 (slides,
video)