A Real-Time Digital Twin for Adaptive Scheduling
By: Yihe Zhang , Yash Kurkure , Yiheng Tao and more
High-performance computing (HPC) workloads are becoming increasingly diverse, exhibiting wide variability in job characteristics, yet cluster scheduling has long relied on static, heuristic-based policies. In this work we present SchedTwin, a real-time digital twin designed to adaptively guide scheduling decisions using predictive simulation. SchedTwin periodically ingests runtime events from the physical scheduler, performs rapid what-if evaluations of multiple policies using a high-fidelity discrete-event simulator, and dynamically selects the one satisfying the administrator configured optimization goal. We implement SchedTwin as an open-source software and integrate it with the production PBS scheduler. Preliminary results show that SchedTwin consistently outperforms widely used static scheduling policies, while maintaining low overhead (a few seconds per scheduling cycle). These results demonstrate that real-time digital twins offer a practical and effective path toward adaptive HPC scheduling.
Similar Papers
HPC Digital Twins for Evaluating Scheduling Policies, Incentive Structures and their Impact on Power and Cooling
Distributed, Parallel, and Cluster Computing
Tests computer jobs before they run.
HPC Digital Twins for Evaluating Scheduling Policies, Incentive Structures and their Impact on Power and Cooling
Distributed, Parallel, and Cluster Computing
Tests computer jobs before they run.
HP2C-DT: High-Precision High-Performance Computer-enabled Digital Twin
Distributed, Parallel, and Cluster Computing
Makes digital twins smarter and faster.