Home Conference Sessions Using Kubernetes...

Using Kubernetes for Machine Learning Frameworks

Arun Gupta | GOTO Amsterdam 2019

You need to be signed in to add a collection

Kubernetes provides isolation, auto-scaling, load balancing, flexibility and GPU support. These features are critical to run computationally and data intensive and hard to parallelize machine learning models. Declarative syntax of Kubernetes deployment descriptors make it easy for non-operationally focused engineers to easily train machine learning models on Kubernetes. This talk will explain why and how Kubernetes is well suited for training and running your machine learning models in production. Specifically it will show how to setup a variety of open source machine learning frameworks such as TensorFlow, Apache MXNet and Pytorch on a Kubernetes cluster. Attendees will learn training, massaging and inference phases of setting up a Machine Learning framework on Kubernetes. Attendees will leave with a GitHub repo of fully working samples. **What will the audience learn from this talk?**<br> * Attendees will learn why Kubernetes is well suited to run machine learning frameworks * They will see how the most popular open source ML frameworks can run on Kubernetes * They will leave with a working sample using GitHub repos **Does it feature code examples and/or live coding?**<br> Yes, the talk will have code examples and live coding. **Prerequisite attendee experience level:** <br> [Level 200](https://gotoams.nl/2019/pages/experience-level)

Share on:
linkedin facebook
Copied!

Transcript

Kubernetes provides isolation, auto-scaling, load balancing, flexibility and GPU support. These features are critical to run computationally and data intensive and hard to parallelize machine learning models. Declarative syntax of Kubernetes deployment descriptors make it easy for non-operationally focused engineers to easily train machine learning models on Kubernetes.

This talk will explain why and how Kubernetes is well suited for training and running your machine learning models in production. Specifically it will show how to setup a variety of open source machine learning frameworks such as TensorFlow, Apache MXNet and Pytorch on a Kubernetes cluster.

Attendees will learn training, massaging and inference phases of setting up a Machine Learning framework on Kubernetes. Attendees will leave with a GitHub repo of fully working samples.

What will the audience learn from this talk?

  • Attendees will learn why Kubernetes is well suited to run machine learning frameworks
  • They will see how the most popular open source ML frameworks can run on Kubernetes
  • They will leave with a working sample using GitHub repos

Does it feature code examples and/or live coding?
Yes, the talk will have code examples and live coding.

Prerequisite attendee experience level:
Level 200

About the speakers

Arun Gupta

Arun Gupta

Principal Open Source Technologist at AWS and CNCF Board Member