Team Members
The IFML team includes researchers from the University of Texas at Austin, the University of Washington, Wichita State University, and Microsoft Research.
Leadership
-
Adam Klivans
Director, Institute for Foundations of Machine Learning
Professor, Computer Science
University of Texas at AustinAreas of interest: Deep Learning, Graphical Models
-
Alex Dimakis
Co-Director, Institute for Foundations of Machine Learning
Professor, Electrical & Computer Engineering
University of Texas at AustinAreas of interest: Information theory, Coding theory, Unsupervised Machine Learning
-
Brent Winkelman
Managing Director, Institute for Foundations of Machine Learning
Senior Personnel
-
Professor, Computer Science
Areas of interest: Theoretical Computer Science; Capabilities and limits of quantum computers; Computational complexity heory
-
Associate Professor, Computer Science and Engineering
University of WashingtonAreas of interest: Learning with Dynamic Data, Exploiting Structure in Data, Optimizing Real World Objectives
-
Professor, Electrical and Computer Engineering
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Exploiting Structure in Data
-
Sr. Principal Research Manager
Microsoft ResearchAreas of interest: Machine Learning Theory, Optimization, Statistical Machine Learning
-
Professor, Electrical & Computer Engineering
University of Texas at Austin -
Associate Professor, Computer Science,
University of Texas at AustinAreas of interest: Exploiting Structure in Data, Optimizing Real World Objectives, Explainable AI
-
Postdoctoral Fellow, Lead of Deep Proteins group.
Areas of interest: Area of Interest: Machine Learning-guided Protein Engineering and Design
-
Associate Professor, Computer Science
University of Texas at AustinAreas of interest: Static program analysis/verification, Program synthesis, Automated logical reasoning
-
Assistant Professor
University of WashingtonAreas of interest: Advanced Algorithms for Deep Learning, Exploiting Structure in Data, Optimizing Real World Objectives
-
Assistant Professor, Computer Science
University of Texas at Austin
Areas of interest: Deep Learning, Natural Language
-
Professor, School of Information
University of Texas at AustinAreas of interest: AI Ethics, Social Informatics, Value-Sensitive Design
-
Professor, Computer Science
University of Texas at AustinAreas of interest: Deep Learning, Robotics, Vision
-
Senior Researcher
Microsoft Research RedmondAreas of interest: Advanced Algorithms for Deep Learning, Deep Learning, Machine Learning Theory
-
Associate Professor, Statistics
University of WashingtonAreas of interest: Robust statistical machine learning, Learning feature representations of complex data, Computationally-efficient optimization algorithms for learning and inference
-
Postdoc
PhD, Stanford UniversityAreas of interest: Optimization/Sampling, Signal Processing, Statistics
-
Professor, Computer Science and Engineering,
University of WashingtonAreas of interest: Reinforcement learning and controls, Representation Learning, Deep Learning
-
Postdoc
PhD, University of Texas at AustinAreas of interest: Visual Domain Adaptation, Unsupervised Learning, Semi-Supervised Learning
-
Assistant Professor, Computer Science
University of Texas at AustinAreas of interest: Optimizing Real World Objectives, Deep Learning, Vision
-
Associate Professor, Electrical and Computer Engineering, Princeton
Areas of interest: Foundations of AI and Deep Learning, Representation Learning, Foundations of Deep Reinforcement Learning
-
Senior Researcher
Microsoft ResearchAreas of interest: Advanced Algorithms for Deep Learning, Machine Learning Theory, Statistical Machine Learning
-
Assistant Professor, Computer Science
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Exploiting Structure in Data
-
Associate Professor, Computer Science
UCLA Samueli School of Engineering
Areas of interest: Complexity theory, Learning theory, Algorithms, Probability theory
-
Assistant Professor, Electrical and Computer Engineering
University of Texas at AustinAreas of interest: Optimization, Machine Learning, Artificial Intelligence
-
Professor, Santa Fe Institute
Areas of interest: Problems at the interface of physics, computer science, and mathematics, such as phase transitions in statistical inference
-
Assistant Professor, Computer Science and Engineering
University of WashingtonAreas of interest: Learning with Dynamic Data, Active Learning, Machine Learning Theory
-
Scott Niekum
Assistant Professor, Computer Science
University of Texas at AustinAreas of interest: Optimizing Real World Objectives, Active Learning, Deep Learning
-
Associate Professor, Computer Science and Engineering
University of WashingtonAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Exploiting Structure in Data
-
Assistant Professor, Computer Science
University of Texas at Austin -
Jay Reddy
Director, Engineering Analytics
Infrastructure Solutions Group
Dell Technologies -
Alessandro Rinaldo, Professor, Department of Statistics & Data Sciences, University of Texas at Austin
Areas of interest: Theoretical properties of high-dimensional statistical models
-
Associate Professor, Electrical & Computer Engineering
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Active Learning, Deep Learning
-
Assistant Professor, Statistics & Data Sciences
University of Texas at AustinAreas of interest: Large Scale Machine Learning, Machine Learning Theory, Networks
-
Professor
Toyota Research Institute and University of Washington (starting Fall 2021)Areas of interest: Advanced Algorithms for Deep Learning, Deep Learning, Machine Learning Theory
-
Professor, Electrical & Computer Engineering
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Active Learning
-
Associate Professor, Electrical Engineering and Computer Science
Wichita State UniversityAreas of interest: Exploiting Structure in Data, Deep Learning, Knowledge Representation
-
Professor, Computer Science
University of Texas at AustinAreas of interest: Learning with Dynamic Data, Exploiting Structure in Data, Optimizing Real World Objectives
-
Assistant Professor, Electrical & Computer Engineering
University of Texas at AustinAreas of interest: bioECE, Decision, Information, and Communications Engineering (DICE)
-
Ngoc Mai Tran
Assistant Professor, Mathematics
University of Texas at AustinAreas of interest: Tropical Geometry, Probability, Combinatorics, Economics, Neuroscience
-
Assistant Professor, Electrical and Computer Engineering
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Exploiting Structure in Data, Optimizing Real-World Objectives
-
Professor, Mathematics
University of Texas at AustinAreas of interest: Advanced Algorithms for Deep Learning, Learning with Dynamic Data, Exploiting Structure in Data
-
Professor, Computing and Mathematical Sciences, CalTech
Areas of interest: Primarily in machine learning and spanning the entire theory-to-application spectrum from foundational advances all the way to deployment in real systems
-
Amy Zhang
Assistant Professor, Electrical & Computer Engineering, University of Texas at Austin
Areas of interest: Reinforcement Learning, Exploiting Structure in Data, Representation Learning
Advisory Board
-
Pieter Abbeel
Professor, Electrical Engineering and Computer Sciences
University of California, Berkeley -
Piotr Indyk
Thomas D. and Virginia W. Cabot Professor
Department of Electrical Engineering and Computer Science
MIT -
Ravi Kumar
Principal Research Scientist
Google -
Jitendra Malk
Professor, Electrical Engineering and Computer Science
University of California, Berkeley -
Ronitt Rubinfeld
Professor, Electrical Engineering and Computer Science
MIT -
Satinder Singh
Professor, Computer Science and Engineering
University of Michigan -
Alexander Tropsha
Associate Dean for Pharmacoinformatics & Data Science
K.H. Lee Distinguished Professor, Chemical Biology and Medicinal Chemistry, Eshelman School of PharmacyUniversity of North Carolina, Chapel Hill
-
Manuela Veloso
Head of AI Research/Professor, AI Research
JPMorgan Chase/Carnegie Mellon University -
Rebecca Willett
Professor, Statistics and Computer Science
University of Chicago
Partners
-
Colleges
- College of Natural Sciences
- Cockrell School of Engineering
- School of Information
- McCombs School of Business
- College of Liberal Arts
-
Departments
- Department of Computer Science
- Department of Electrical & Computer Engineering
- Department of Information, Risk, and Operations Management
- Department of Linguistics
- Department of Mathematics
- Department of Psychology
- Department of Statistics & Data Science
-
Others
- Office of the Vice President for Research
- Oden Institute
- Texas Advanced Computing Center
- Texas Computing
- Texas Robotics
- Good Systems