Seagull: ML Infrastructure for Load Prediction and Optimized Resource Allocation, VLDB 2021
- Olga Poppe | Microsoft
- Microsoft at VLDB 2021
Microsoft Azure is dedicated to guarantee high quality of service to its customers, in particular, during periods of high customer activity, while controlling cost. We employ a Data Science (DS) driven solution to predict user load and leverage these predictions to optimize resource allocation. To this end, we built the Seagull infrastructure that processes per-server telemetry, validates the data, trains and deploys ML models. The models are used to predict customer load per server (24h into the future), and optimize service operations. Seagull continually re-evaluates accuracy of predictions, fallback to previously known good models and triggers alerts as appropriate. We deployed this infrastructure in production for PostgreSQL and MySQL servers across all Azure regions, and applied it to the problem of scheduling server backups during low-load time. This minimizes interference with user-induced load and improves customer experience.
-
-
Olga Poppe
Principal Engineering Manager
-
-
Watch Next
-
-
-
Episode 1: Tackling complex healthcare challenges
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 2: A multi-disciplinary approach
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 3: Collaborating faster
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 4: A distribution channel for AI innovation
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 5: Breakthroughs in AI
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 6: Healthcare Agent Orchestrator
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Episode 7: The road ahead
- Jonathan M. Carlson,
- Will Guyman,
- Matthew Lungren
-
Using Optimization and LLMs to Enhance Cloud Supply Chain Operations
- Beibin Li,
- Konstantina Mellou,
- Ishai Menache