Skip to content Skip to sidebar Skip to footer

Machine Learning experiments and engineering with DVC

Machine Learning experiments and engineering with DVC

Machine Learning experiments and engineering with DVC Automate machine learning experiments, pipelines and CI/CD with Data Version Control (DVC)

New

What you'll learn

  • What is Data Version Control (DVC) tool and how to use it
  • How to build reproducible Machine Learning experiments
  • How to automate pipelines execution with DVC
  • How to manage data and model versioning
  • How to organize code in Machine Learning projects
  • Basics of CI/CD for Machine Learning projects
  • How to start to use DVC in your projects (step by step)

Requirements

  • Python
  • Basic knowledge in CLI and Git is a plus
  • Linux / Mac OS

Description

Online video course to teach basics for Machine Learning experiment management, pipelines automation and CI/CD to deliver ML solution into production. During these lessons you’ll discover base features of Data Version Control (DVC), how it works and how it may benefit your Machine Learning and Data Science projects.

During this course listeners learn engineering approaches in ML around a few practical examples. Screencast videos, repositories with examples and templates to put your hands dirty and make it easier apply best features in your own projects.

After this course you will be able to

  • Use DVC for data and artifacts version control
  • Build reproducible machine learning pipelines
  • Manage Machine Learning experiments
  • Automate pipelines  configuration
  • Organize code in Machine Learning projects
  • Setup CI/CD pipelines with GitLab / GitHub and DVC

Online Course CoupoNED
Online Course CoupoNED I am very happy that there are bloggers who can help my business

Post a Comment for "Machine Learning experiments and engineering with DVC"

Subscribe via Email