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DoK #61 Perfecting Machine Learning Workloads on Kubernetes // Lars Suanet

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Manage episode 296540611 series 2865115
Content provided by Data on Kubernetes Community. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Data on Kubernetes Community or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Abstract of the talk…

More and more applications are powered by Machine Learning (ML) models. Where the gap between Software Engineers and a Production environment on Kubernetes is already big, the gap between Data Scientists and that same production environment is enormous. In this talk, we will provide you with a framework for translating ML requirements into infrastructural requirements and concrete Kubernetes resources. In the first half of this talk, we will discuss how ML applications are different from most other applications, how ML workloads are structured and how ML requirements translate into Kubernetes resource configurations. In the second half of the talk, we will put this theory into practice. We will do a live demonstration of an ML Deployment on Kubernetes using Istio, Knative and Kubeflow Serving.

Bio…

Lars Suanet is a Software Engineer at Deeploy. With his background in Computer Science and his interest in AI, he tries to bridge the gap between Data Scientists and DevOps. His personal interests are Chinese culture, Distributed systems, Meditation and Plants.

  continue reading

243 episodes

Artwork
iconShare
 
Manage episode 296540611 series 2865115
Content provided by Data on Kubernetes Community. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Data on Kubernetes Community or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Abstract of the talk…

More and more applications are powered by Machine Learning (ML) models. Where the gap between Software Engineers and a Production environment on Kubernetes is already big, the gap between Data Scientists and that same production environment is enormous. In this talk, we will provide you with a framework for translating ML requirements into infrastructural requirements and concrete Kubernetes resources. In the first half of this talk, we will discuss how ML applications are different from most other applications, how ML workloads are structured and how ML requirements translate into Kubernetes resource configurations. In the second half of the talk, we will put this theory into practice. We will do a live demonstration of an ML Deployment on Kubernetes using Istio, Knative and Kubeflow Serving.

Bio…

Lars Suanet is a Software Engineer at Deeploy. With his background in Computer Science and his interest in AI, he tries to bridge the gap between Data Scientists and DevOps. His personal interests are Chinese culture, Distributed systems, Meditation and Plants.

  continue reading

243 episodes

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