Virtual Machine Allocation with Lifetime Predictions
- Hugo Barbalho ,
- Patricia Kovaleski ,
- Beibin Li ,
- Luke Marshall ,
- Marco Molinaro ,
- Abhisek Pan ,
- Eli Cortez ,
- Matheus Leao ,
- Harsh Patwari ,
- Zuzu Tang ,
- Tamires Santos ,
- Larissa Rozales Gonçalves ,
- David Dion ,
- Thomas Moscibroda ,
- Ishai Menache
MLSys |
Outstanding Paper Award
Télécharger BibTexThe emergence of machine learning technology has motivated the use of ML-based predictors in computer systems to improve their efficiency and robustness. However, there are still numerous algorithmic and systems challenges in effectively utilizing ML models in large-scale resource management services that require high throughput and response latency of milliseconds. In this paper, we describe the design and implementation of a VM allocation service that uses ML predictions of the VM lifetime to improve packing efficiencies. We design lifetime-aware placement algorithms that are provably robust to prediction errors and demonstrate their merits in extensive real-trace simulations. We significantly upgraded the VM allocation infrastructure of Microsoft Azure to support such algorithms that require ML inference in the critical path. A robust version of our algorithms has been recently deployed in production and obtains efficiency improvements expected from simulations.