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We congratulate Jay Ashworth for the successful defense of his Masters thesis. Jay is a member of the Global Computing Lab and has done terrific work as a researcher and M.S. student. We are proud to have him as part of the team! Advisor: Dr. Michela Taufer Committee Members: Dr. Jack Marquez and Dr. Sai Swaminthan Thesis Title: "Bridging HPC Data Gaps: Novel Tools for GPU Resource Monitoring and Scheduler Emulation" Abstract: The evolution of High-Performance Computing (HPC) systems is introducing ever greater complexity in resource management and performance monitoring, creating critical gaps in data availability. With their expanding significance in AI and data-intensive applications, GPUs now serve as pivotal components of HPC workloads. Simultaneously, the push toward exascale computing necessitates increasingly efficient and scalable scheduling policies. This thesis presents two novel tools designed to address the data availability challenges introduced by these ongoing shifts in modern HPC environments. The first tool bridges a crucial gap in per-job GPU resource monitoring for SLURM-managed clusters, which lack this support natively. By enabling detailed post-job analysis of GPU utilization metrics, it allows researchers to identify underutilization issues—ranging from configuration errors to algorithmic inefficiencies—while helping administrators accurately assess resource usage in planning future upgrades. The second tool, the Flux Emulator, builds upon a preliminary prototype and extends the capabilities of the Flux Framework, a cutting-edge resource management and scheduling system tailored for exascale HPC. Through the simulation of historical job workloads, the emulator enables the evaluation of various scheduling policies and strategies without the need for physical cluster resources. By illuminating the effects of different scheduler configurations on performance metrics such as job makespan, it empowers system software developers to refine algorithms and policies for more efficient utilization of emerging exascale systems. By providing detailed GPU resource monitoring within established scheduling systems and offering a scalable emulator for evaluating multiple scheduling policies, this thesis lays the groundwork for a more data-driven approach to HPC resource utilization and optimization. Together, these tools directly address the critical gaps in data availability and performance insight that arise as HPC environments continue to grow in complexity. Student Biography: Walter Jay Ashworth, an alumnus of The University of Tennessee, completed his Bachelor's degree in Computer Science in May 2023, and he chose to delve deeper into academia at his alma mater by pursuing a Master's degree. He is currently contributing his talents as a Graduate Research Assistant at the esteemed Global Computing Lab, benefiting from the mentorship of the renowned Dr. Michela Taufer. Here, he primarily develops software tools for performance data collection and analytics such as the Flux Framework Emulator in collaboration with Lawrence Livermore National Laboratory. Jay’s research interests include HPC schedulers, performance analysis, and visualization.