Picture of Austin Okray

Welcome!

My name is Austin Okray. I'm currently a Data Scientist at CACI. In December 2021, I graduated with an MS in Data Science from the State University of New York at Buffalo (SUNY Buffalo). In Spring 2020, I graduated with a BS in Computer Science with minors in Statistics and Mathematics at the University of Wyoming (UWyo).

Before graduating from UWyo, I was an undergraduate research assistant working in the Machine Learning Group under the supervision of Dr. Chao Lan, working primarily on the fairness problem in machine learning and multi-view anomaly detection. I maintain a small data page for a previous ML research group from UWyo (now found here okray.ml/data). Previously, I've also developed novel fair kernel methods (paper). Besides fairness, I'm also interested in algorithm design, dimensionality reduction, anomaly detection and learning theory.

I'm a motivated and driven individual who enjoys challenges, learning, and self-teaching. Outside of academia, I enjoy travelling, outdoor and action photography (some photos as a Google Drive link for full resolution), climbing, alpinism, hiking, and strategy games.

Here is my CV, resume, and LinkedIn. You can reach me at arokray@gmail.com


What's New

January 2022: I've started at CACI as a Data Scientist, next stop - Denver, CO!

December 2021: I've graduated with my MS in Data Science from SUNY Buffalo!

September 2021: F4A's demo period is over, thanks for trying it out! If you want to check out the code or contribute, visit the Github repo

July 2021: The Fairness for All (F4A) trial is now live!

May 2020: I've officially graduated from UWyo! See you in Buffalo, NY in September! (COVID Pending)

March 2020: I've been accepted to the MS in Data Science program at SUNY Buffalo!

Sep 2019: I'll be a TA for COSC4550: Introduction to Artificial Intelligence along with Zhen Wang! Come see me in EN4084A if you have questions or are interested in AI/ML!

Aug 2019: Our paper "Fair Kernel Regression via Fair Feature Embeddings in Kernel Space" was accepted for oral presentation at ICTAI'19 - see you in Portland!

Jun 2019: Our manuscript on fair kernel regression is on arXiv!

May 2019: I will serve as a session chair at IJCNN'19. See you in Budapest!


Research Papers

[ICTAI'19] Austin Okray, Hui Hu and Chao Lan. Fair Kernel Regression via Fair Feature Embeddings in Kernel Space. International Conference on Tools with Artificial Intelligence (ICTAI), 2019. https://arxiv.org/abs/1907.02242. Code available here. (Acceptance Rate: 26%)

[IJCNN'19] Zhen Wang, Suresh Muknahallipatna, Maohong Fan, Austin Okray and Chao Lan. Music classification using an improved CRNN with multi-directional spatial dependencies in both time and frequency dimensions. International Joint Conference on Neural Network (IJCNN), 2019.


Some Coursework

University at Buffalo
  • Advanced Machine Learning (CSE674)
  • Statistical Data Mining I & II (EAS506 & EAS507)
  • Deep Learning (CSE676)
  • Measure Theory (MTH534)
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    University of Wyoming
  • Machine Learning (COSC4555)
  • Introduction to Artificial Intelligence (COSC4550)
  • Machine Learning Applied to Cybersecurity (COSC4010: Special Topics)
  • Convex Optimization (EE5490)
  • Matrix Theory (MATH4500)
  • Applied Multivariate Analysis (STAT4300)
  • Math Theory of Probability (MATH4255)
  • Analysis 1: Elementary Real Analysis (MATH3250)
  • History of Moral Philosophy (PHIL3350)
  • *([IP] = In Progress)