Build auto-adaptive machine learning models with Kubernetes

Presented by

Yochay Ettun

About this talk

This webinar will instruct data scientists and machine learning engineers on how to build manage and deploy auto-adaptive machine learning models in production. Data is ever-changing, leaving your models outdated and built on old data. This can lead to underperforming models and a lot of manual work to fix it. By allowing your models to continually learn you’ll ensure that they run at peak performance. Using state of the art Kubernetes infrastructure, we’ll show you how to automatically track and manage your auto-adaptive machine learning models while in production. By building auto-adaptive machine learning models, data engineers can bridge the gap between research and production. After this webinar, you’ll be able to build and deploy machine learning pipelines that automatically adapt and retrain based on any validation trigger you choose. Key webinar takeaways: - How to build auto-adaptive machine learning pipelines - How to use Kubernetes to manage and scale models in production - How to automatically monitor for peak performance - How to set up continuous deployment of ML pipeline

Related topics:

More from this channel

Upcoming talks (0)
On-demand talks (13)
Subscribers (599)
Learn from various data science and engineering experts about key topics for successful machine learning. will provide you with hands-on tutorials and workshops about the top methods in data science team management, and MLOps getting you from research to production. Stay ahead with the latest developments in auto-adaptive machine learning and CI/CD for machine learning. Learn the latest methods for machine learning model management and deployment with open source tools. Find answers on how to enhance team collaboration in your data science department, and smoothly bridge science to engineering.