Defense Notices


All students and faculty are welcome to attend the final defense of EECS graduate students completing their M.S. or Ph.D. degrees. Defense notices for M.S./Ph.D. presentations for this year and several previous years are listed below in reverse chronological order.

Students who are nearing the completion of their M.S./Ph.D. research should schedule their final defenses through the EECS graduate office at least THREE WEEKS PRIOR to their presentation date so that there is time to complete the degree requirements check, and post the presentation announcement online.

Upcoming Defense Notices

Aidan Schmelzle

Exploration of Human Design with Genetic Algorithms as Artistic Medium for Color Images

When & Where:


Eaton Hall, Room 2001B

Committee Members:

Arvin Agah, Chair
David Johnson
Jennifer Lohoefener


Abstract

Genetic Algorithms (GAs), a subclass of evolutionary algorithms, seek to apply the concept of natural selection to promote the optimization and furtherance of “something” designated by the user. GAs generate a population of chromosomes represented as value strings, score each chromosome with a “fitness function” on a defined set of criteria, and mutate future generations depending on the scores ascribed to each chromosome. In this project, each chromosome is a bitstring representing one canvased color artwork. Artworks are scored with a variety of design fundamentals and user preference. The artworks are then evolved through thousands of generations and the final piece is computationally drawn for analysis. While the rise of gradient-based optimization has resulted in more limited use-cases of GAs, genetic algorithms still have applications in various settings such as hyperparameter tuning, mathematical optimization, reinforcement learning, and black box scenarios. Neural networks are favored presently in image generation due to their pattern recognition and ability to produce new content; however, in cases where a user is seeking to implement their own vision through careful algorithmic refinement, genetic algorithms still find a place in visual computing.


Zara Safaeipour

Task-Aware Communication Computation Co-Design for Wireless Edge AI Systems

When & Where:


Nichols Hall, Room 246

Committee Members:

Morteza Hashemi, Chair
Van Ly Nguyen
Dongjie Wang


Abstract

Wireless edge systems typically need to complete timely computation and inference tasks under strict power, bandwidth, latency, and processing constraints. As AI models and datasets grow in size and complexity, the traditional model of sending all data to a remote cloud or running full inference on edge device becomes impractical. This creates a need for communication-computation co-design to enable efficient AI task processing at the wireless edge. To address this problem, we investigate task-aware communication-computation optimization for two specific problem settings.

First, we explore semantic communication that transmits only the information essential for the receiver’s computation tasks. We propose a semantic-aware and goal-oriented communication method for object detection. Our proposed approach is built upon the auto-encoders, with the encoder and the decoder are respectively implemented at the transmitter and receiver to extract semantic information for the specific computation goal (e.g., object detection). Numerical results show that transmitting only the necessary semantic features significantly improves the overall system efficiency.

Second, we study collaborative inference in wireless edge networks, where energy-constrained devices aim to complete delay-sensitive inference tasks. The inference computation is split between the device and an edge server, thereby achieving collaborative inference. We formulate a utility maximization problem under energy and delay constraints and propose Bayes-Split-Edge, which uses Bayesian optimization to determine the optimal transmission power and neural network split point. The proposed framework introduces a hybrid acquisition function that balances inference task utility, sample efficiency, and constraint violation penalties. We evaluate our approach using the VGG19 model, the ImageNet-Mini dataset, and real-world mMobile wireless channel datasets.

Overall, this research is aimed at developing efficient edge AI systems by incorporating the underlying wireless communications limitations and challenges into AI tasks processing.


Past Defense Notices

Dates

VINAYKUMAR MURALIDHARAN

A Unified End-to-End Communication Paradigm for Heterogeneous Networks

When & Where:


246 Nichols Hall

Committee Members:

James Sterbenz, Chair
Victor Frost
Alexander Wyglinski


Abstract


MAHMOOD ABDUL HAMEED

Design and Development of Spartan FPGA Based Data Acquisition using PATA Interface

When & Where:


246 Nichols Hall

Committee Members:

Chris Allen, Chair
Carl Leuschen
Fernando Rodriguez-Morales


Abstract


BALACHANDRA KUMARSWAMY

Applications of the PAM Representation of CPM

When & Where:


2001B Eaton Hall

Committee Members:

Erik Perrins, Chair
James Roberts
Alexander Wyglinski


Abstract


JAYANTH VENKATARAMAN

A Programming Model for Precise Computation of Video Pipelines

When & Where:


317 Nichols Hall

Committee Members:

Douglas Niehaus, Chair
Arvin Agah
Prasad Kulkarni


Abstract


KIRAN MARATHE

Dual-Band Multi-Channel Airborne Radar for Mapping the Internal and Basal Layers of Polar Ice Sheets

When & Where:


317 Nichols Hall

Committee Members:

Chris Allen, Chair
Prasad Gogineni
Fernando Rodriguez-Morales


Abstract


Symbol Timing Recovery for SOQPSK

PRASHANTH RENGASWAMY CHANDRAN

When & Where:


246 Nichols Hall

Committee Members:

Erik Perrins, Chair
Shannon Blunt
James Roberts


Abstract


JYOTHEERMAYEE DASS

Designing an Interactive Interface for Chemical Reactor Simulations

When & Where:


2001B Eaton Hall

Committee Members:

James Miller, Chair
David Andrews
Perry Alexander


Abstract


MUTHARASU SIVAKUMAR

A Dual-Resonant Microstrip Antenna for UHF RFID in the Cold Chain Using Corrugated Fiberboard as a Substrate

When & Where:


246 Nichols Hall

Committee Members:

Danial Deavours, Chair
Ken Demarest
James Stiles


Abstract


CHRISTOPHER GIFFORD

Heterogeneous Collaborative Learning for Robotics and Applied Artificial Intelligence

When & Where:


317 Nichols Hall

Committee Members:

Arvin Agah, Chair
Chris Allen
Swapan Chakrabarti
Carl Leuschen
Georgios Tsoflias

Abstract