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Capacity Recommendation Engine: Throughput and Utilization Based Predictive Scaling
Jan. 19, 2022, 5:43 p.m. | Shu-Ming Peng
AI – Uber Engineering Blog www.uber.com
Capacity is a key component of reliability. Uber’s services require enough resources in order to handle daily peak traffic and to support our different kinds of business units. These services are deployed across different cloud platforms and data centers …
The post Capacity Recommendation Engine: Throughput and Utilization Based Predictive Scaling appeared first on Uber Engineering Blog.
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