ome-projects/ome
GitHub で見る[ENHANCEMENT] Integrate KEDA operator to enable advanced autoscaling in OME
Open
#155 opened on 2025年7月9日
featurehelp wanted
Repository metrics
- Stars
- (463 stars)
- PR merge metrics
- (PR metrics pending)
説明
What would you like to be added?
Support for integrating the KEDA operator to enable advanced, custom metrics-based autoscaling for OME-managed LLM workloads.
Why is this needed?
Current OME lacks native support for autoscaling based on custom or external metrics. Integrating KEDA will allow OME to:
- Dynamically scale model-serving workloads in response to real-time demand.
- Optimize GPU and compute resource costs by scaling pods up and down automatically.
- Support a wider range of scaling triggers beyond standard CPU/memory metrics (e.g., Prometheus queries, external event sources).
- Improve latency and reliability for LLM inference during traffic spikes. This enhancement would provide greater flexibility and operational efficiency for enterprise users deploying LLMs at scale.
Completion requirements
- Design doc (if significant feature)
- API change
- Docs update
- Tests
Can you help us implement this enhancement?
- Yes, I can contribute
- No, but I'm available for testing
- No