July 12, 2023, 5:13 p.m. | RamiI ZaynuIIin

Hacker Noon - ai hackernoon.com

Big Data processing, BI analysis and AI involve heavy usage of ML, including neural networks. This requires tremendous computational power: hundreds of gigabytes of RAM, tens of CPU cores, as well as graphics cards and/or special chips to speed up calculations. Kubernetes is the most well-known cluster orchestration system. How and where to scale?

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