With automation and CI/CD practices, the entire AI workflow can be run and monitored efficiently, often by a single expert. Still, running AI/ML on GPU instances has its challenges. This tutorial shows you how to meet those challenges using the control and flexibility of CircleCI runners combined with Scaleway, a powerful cloud ecosystem for building, training, and deploying applications at scale.
In a traditional DevOps implementation, you automate the build, test, release, and deploy process by setting up a CI/CD workflow that runs whenever a change is committed to a code repository. This approach is also useful in MLOps: If you make changes to your machine learning logic in your code, it can trigger your workflow. But what about changes that happen outside of your code repository?
If you missed KubeCon North America 2023 in Chicago, or you were there and spent more time in the “hallway tracks,” you may have missed some of the big news that came out of the show. We covered the big happenings in the open source cloud native and observability realm in the latest episode of OpenObservability Talks!
Organizations are constantly looking to grow and expand, which requires establishing strong foundations, especially for the IT infrastructure. The challenge in achieving this is to consistently push the limits of the IT infrastructure to deliver more business excellence. To ensure success, management operations should be fine-tuned, and this often requires improving tool sets, skillsets, and personnel.