My
research background is in machine
learning and algorithm design with a
recent focus on optimizing human ML
teaming. I study the interactions
between humans and ML and use my
findings to design hybrid ML systems
that augment humans’ abilities rather
than replace them. Most of the questions
that I study are inspired by medical
applications and public health.
I
got my Ph.D. in Computer Science at
Georgia Tech under the supervision of
Prof. Santosh Vempala.
In my leisure time, I do abstract
painting .
For future students: I am a faculty
at the International Max
Planck Research School
(IMPRS-IS) and an
associated faculty at the Max Planck ETH
Center for Learning Systems
(CLS). If you
are interested to work with me as a
Ph.D. student please apply through these
portals. For M.Sc. thesis projects,
internships, and postdoc positions
please email me your application
including your CV and transcripts.
Recent
Publications
Sample Efficient Learning of
Predictors that Complement Humans
Mohammad-Amin Charusaie, Hussein Mozannar, David Sontag, and Samira Samadi
International Conference on Machine Learning [ICML'22] [pdf]
Socially Fair k-Means Clustering
Mehrdad Ghadiri, Samira Samadi, and Santosh Vempala
ACM Conference on Fairness, Accountability, and Transparency [ACM FAccT '21] [pdf][Code]
[Talk at the ELLIS Workshop on Foundations of Algorithmic Fairness][Talk at IDEAL workshop on Algorithms and their Social Impact]
A Human in the Loop is Not Enough: The
Need for Human-Subject Experiments in Facial
Recognition
Forough Poursabzi-Sangdeh, Samira Samadi, Jennifer Wortman Vaughan, and Hanna Wallach
Fair and Responsible AI workshop [CHI’20][pdf][Article by Georgia Tech][Article by biometricupdate.com]
Guarantees for Spectral Clustering
with Fairness Constraints
Matthäus Kleindessner, Samira Samadi, Pranjal Awasthi, and Jamie Morgenstern
International Conference on Machine Learning [ICML'19][pdf][code][poster][press][Talk at UMass CICS]
The Price of Fair PCA: One Extra
Dimension
Samira Samadi, Uthaipon Tantipongpipat, Jamie Morgenstern, Mohit Singh, and Santosh Vempala
Conference on Neural Information Processing Systems [NeurIPS'18][pdf][code][press][Talk at UMass CICS]
Research Team
Teaching
Fairness in Machine Learning Seminar,
Spring 2021
University of Tübingen. With Thomas Grote and Philipp Hennig
Professional
Experience
Microsoft Research NYC, Spring 2019
Intern. Hosts: Jenn Wortman Vaughan and Hanna Wallach
Toyota Technological Institute at
Chicago, Summer 2018
Intern. Host: Avrim Blum
Sentient Technologies, San Francisco,
Summer 2016
Intern. Host: Phil Long
University of Waterloo, 2014-2015
Visiting research associate. Host: Shai Ben-David