Articles

Welcome to the third blog post in our “Kubeflow Fundamentals” series specifically designed for folks brand new to the Kubelfow project. The aim of the series is to walk you through a detailed introduction of Kubeflow, a deep-dive into the various components, and how they all come together to deliver a complete MLOps platform.

If you missed the previous installments in the “Kubeflow Fundamentals” series, you can find them here:

Source de l’article sur DZONE

Introduction

Teams that work with Machine Learning (ML) workloads in production know that added complexity can bring projects for a grinding halt. While deploying simple ML workloads might seem like an easy task, the process becomes a lot more involved when you begin to scale and distribute these loads and implement tools like Kubernetes. Although Kubernetes allows teams to rapidly scale their organization’s infrastructure, it also adds a layer of complexity that can become a major burden without the right tools. 

Today I’m going to introduce you to an OSS project known as Kubeflow that seeks to assist engineering teams with deploying ML workloads into production in Kubernetes. The Kubeflow project is dedicated to making deployments of machine learning (ML) workflows on Kubernetes simple, portable and scalable.

Source de l’article sur DZONE