RHAPSODY: Execution of Hybrid AI-HPC Workflows at Scale
By: Aymen Alsaadi , Mason Hooten , Mariya Goliyad and more
Hybrid AI-HPC workflows combine large-scale simulation, training, high-throughput inference, and tightly coupled, agent-driven control within a single execution campaign. These workflows impose heterogeneous and often conflicting requirements on runtime systems, spanning MPI executables, persistent AI services, fine-grained tasks, and low-latency AI-HPC coupling. Existing systems typically address only subsets of these requirements, limiting their ability to support emerging AI-HPC applications at scale. We present RHAPSODY, a multi-runtime middleware that enables concurrent execution of heterogeneous AI-HPC workloads through uniform abstractions for tasks, services, resources, and execution policies. Rather than replacing existing runtimes, RHAPSODY composes and coordinates them, allowing simulation codes, inference services, and agentic workflows to coexist within a single job allocation on leadership-class HPC platforms. We evaluate RHAPSODY with Dragon and vLLM on multiple HPC systems using representative heterogeneous, inference-at-scale, and tightly coupled AI-HPC workflows. Our results show that RHAPSODY introduces minimal runtime overhead, sustains increasing heterogeneity at scale, achieves near-linear scaling for high-throughput inference workloads, and data- and control-efficient coupling between AI and HPC tasks in agentic workflows.
Similar Papers
Scalable Runtime Architecture for Data-driven, Hybrid HPC and ML Workflow Applications
Distributed, Parallel, and Cluster Computing
Lets computers learn from science data faster.
Automated Dynamic AI Inference Scaling on HPC-Infrastructure: Integrating Kubernetes, Slurm and vLLM
Distributed, Parallel, and Cluster Computing
Makes supercomputers run AI faster for many people.
Efficient and Scalable Agentic AI with Heterogeneous Systems
Machine Learning (CS)
Makes AI agents run faster and cheaper.