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TRIPODS
Transdisciplinary Research in Principles of Data Science — Improving our understanding of complex models for data science

About TRIPODS

In 2019, the University of Texas at Austin established a new institute on the foundations of data science with funding from the NSF TRIPODS program. The institute will coordinate foundational research in AI and data science across several university departments, launch a large-scale workshop and signature seminar series, and provide seed funding for a number of graduate and post-doctoral fellowships in artificial intelligence and machine learning.

TRIPODS unites researchers in computer science, electrical engineering, mathematics and statistics towards advancing our understanding of foundational issues in data science and machine learning. The institute will build a next-generation suite of mathematical tools for analyzing core algorithms, models, and applications.

Research activities center around three main research thrusts, all of which were developed to maximize impact and foster collaboration across campus. The institute serves as a center of gravity for theoretical aspects of data science on campus and will develop online curriculum for foundational coursework in machine learning.

Research Thrusts

Algorithmic Theory of Machine Learning
  • Learning Neural Networks
  • Hyperparameter Optimization
  • Deep Confidence Intervals
Making Machine Learning Robust
  • Robust Regression
  • Deep Generative Models
  • Adversarial Examples
Graph-Based Applications
  • Subgraph Counting
  • Graph Stats for Biological Networks
  • Map Synchronization
Researchers

Team Members

Principal Investigator & Associate Professor
Electrical & Computer Engineering
Researchers

TRIPODS Researchers

Professor
Electrical & Computer Engineering
Professor
Electrical & Computer Engineering
Assistant Professor
Computer Science
Professor
Computer Science
Assistant Professor
Computer Science
Assistant Professor
Statistics & Data Sciences
Professor
Mathematics