๐ Cloud-Native Automation Summary
Cloud-native automation refers to the use of automated tools and processes that are specifically designed to work within cloud computing environments. It enables organisations to manage, scale, and deploy applications efficiently without manual intervention. This approach improves reliability, speeds up delivery, and reduces errors by using features built into cloud platforms.
๐๐ปโโ๏ธ Explain Cloud-Native Automation Simply
Think of cloud-native automation like a smart home system that automatically adjusts the lights, heating, or locks based on your routines. Instead of doing everything by hand, the system takes care of tasks for you, making life easier and more efficient.
๐ How Can it be used?
A team could use cloud-native automation to automatically deploy and update their website every time new code is added.
๐บ๏ธ Real World Examples
An online retailer uses cloud-native automation to automatically scale its servers up during busy shopping periods and back down when traffic drops. This ensures customers always have a fast shopping experience without the company needing to manually adjust server capacity.
A software development company sets up automated testing and deployment pipelines in the cloud. Whenever a developer submits new code, the system tests it and, if successful, deploys it to the live application without human intervention.
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