Alexander M Katrompas, PhD

Computer Science,
Texas State University

Professor, Computer Science,
Austin Community College

About Me


My educational background includes business (dual bachelors, finance and economics), and computer science (masters, PhD). I earned a Master of Science degree in computer science from Kent State University, specializing in artificial intelligence / machine learning. Following the masters, for over two decades, I was a software engineering professional holding positions as software engineer, intelligent systems engineer, principal engineer, software architect, development manager, director, and vice president.

In 2018 I left industry, changing careers from industry to academics, starting at Austin Community College as an Associate Professor of Computer Science. In 2019 I was accepted into the PhD program in computer science at Texas State University. In December 2023, I graduated with a PhD in computer science, specializing in deep neural networks, recurrence and attention mechanisms, and complex time-series modeling. In addition to academic endeavors, I am a partner and senior machine learning scientist with Iqumuls, LLC, consulting in the areas of software engineering, data science, machine learning, and artificial intelligence.


There's something that doesn't make sense. Let's go and poke it with a stick.
- The Doctor

Research


Past

My masters level research focused on topics in machine learning including deep learning, neural network chaining, and hybrid symbolic-connectionist models. I have applied these techniques successfully in industry in process control and time-series prediction, and academically in natural language processing and navigation and collision avoidance.

My master's thesis, Sequential decision making using a two stage hybrid connectionist model explored the concept of using multiple neural network models simultaneously to both speed learning and acquire knowledge in real time (as applied to navigation).

Post graduation I continued research in the area of hybrid symbolic-connectionist models, combining symbolic models (expert systems) to constrain and guide connectionist models (neural networks). In the course of this work I was principal investigator and technical author of the patent Method and apparatus for optimizing operation of a power generating plant using artificial intelligence techniques, which directly led to a $3M US DOE research grant. Following the award, I was lead architect and intelligent systems engineer, designing and building a process control system for coal-fired power plant optimization based on the same patent. This system was successfully installed in multiple power plants, reducing pollution and fuel costs while holding or increasing power output.

Current and Future

Adviser: Professor Vangelis Metsis, PhD

My research interests are in supervised machine learning as applied to complex time-series data and temporal classification (e.g. biometrics, physiometrics, process control, temporal event prediction. etc.). I also have strong interests in the use of machine learning on the Web, high performance computing, and software engineering.


After three days without programming, life becomes meaningless.
- The Tao of Programming

Publications


Just For Fun

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