Jiagu addresses challenges in resource utilization by decoupling prediction and decision-making, implementing dual-staged scaling, and utilizing concurrency-aware scheduling. The system aims to improve deployment density and reduce scheduling costs while minimizing cold start overheads.
Jiagu's approach involves predicting instances' performance in advance, adjusting routing to release resources before eviction, and migrating idle instances to other nodes. By combining these strategies, Jiagu aims to optimize resource utilization effectively.
The system is evaluated against baseline systems like Kubernetes, Gsight, and Owl using real-world traces and workloads. Results show improved function density and reduced QoS violations compared to traditional schedulers.
На другой язык
из исходного контента
arxiv.org
Дополнительные вопросы