Optimizing Resource Utilization for Interactive GPU Workloads with Transparent Container Checkpointing
- Track: HPC, Big Data & Data Science
- Room: UB5.132
- Day: Sunday
- Start: 09:00
- End: 09:25
- Video only: ub5132
- Chat: Join the conversation!
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Interactive GPU workloads, such as Jupyter notebooks and generative AI inference are becoming increasingly popular in scientific research and data analysis. However, efficiently allocating expensive GPU resources in multi-tenant environments like Kubernetes clusters is challenging due to the unpredictable usage patterns of these workloads. Container checkpointing was recently introduced as a beta feature in Kubernetes and has been extended to support GPU-accelerated applications. In this talk, we present a novel approach to optimizing resource utilization for interactive GPU workloads using container checkpointing. This approach enables dynamic reallocation of GPU resources based on real-time workload demands, without the need for modifying existing applications. We demonstrate the effectiveness of our approach through experimental evaluations with a variety of interactive GPU workloads and present preliminary results that highlight its potential.
Speakers
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Adrian Reber |
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Radostin Stoyanov |
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Viktória Spišaková |