curso
MLOps Deployment and Life Cycling
Avanzado
Updated 12/2024Comienza el curso gratis
Incluido de forma gratuitaPremium or Teams
TheoryMachine Learning4 horas16 vídeos54 ejercicios3,650 XP5,678Declaración de cumplimiento
Crea Tu Cuenta Gratuita
o
Al continuar, acepta nuestros Términos de uso, nuestra Política de privacidad y que sus datos se almacenan en los EE. UU.¿Entrenar a 2 o más personas?
Probar DataCamp for BusinessPreferido por estudiantes en miles de empresas
Descripción del curso
MLOps Deployment and LifeCycling
Explore the modern MLOps framework, including the lifecycle and deployment of machine learning models. In this course, you’ll learn to write ML code that minimizes technical debt, discover the tools you’ll need to deploy and monitor your models, and examine the different types of environments and analytics you’ll encounter.Learn About the MLOps Lifecycle
After you’ve collected, prepared, and labeled your data, run numerous experiments on different models, and proven your concept with a champion model, it’s time for the next steps. Build. Deploy. Monitor. Maintain. That is the life cycle of your model once it's destined for production. That is the Ops part of MLOps. This course will show you how to navigate the second chapter of your model's journey to value delivery, setting the benchmark for many more to come. You’ll start by exploring the MLOps lifecycle, discovering the importance of MLOps and the key functional components for model development, deployment, monitoring, and maintenance.Develop ML Code for Deployment
Next, you’ll learn how to develop models for deployment and how to write effective ML code, leverage tools, and train ML pipelines. As you progress, you’ll cover how to deploy your models, exploring different deployment environments and when to use them. You’ll also develop strategies for replacing existing production models and examine APIs.Learn How to Monitor Your Models
As you complete the course, you’ll discover the crucial performance metrics behind monitoring and maintaining your ML models. You’ll learn about drift monitoring in production, as well as model feedback, updates, and governance. By the time you’re finished, you’ll understand how you can use MLOps lifecycle to deploy your own models in production.Prerrequisitos
MLOps Concepts1
MLOps in a Nutshell
2
Develop for Deployment
3
Deploy and Run
4
Monitor and Maintain
MLOps Deployment and Life Cycling
Curso Completo
Obtener Declaración de Logro
Añade esta credencial a tu perfil, currículum vitae o CV de LinkedInCompártelo en las redes sociales y en tu evaluación de desempeño
Incluido conPremium or Teams
Inscríbete ahoraÚnete a más 15 millones de estudiantes y empezar MLOps Deployment and Life Cycling ¡Hoy!
Crea Tu Cuenta Gratuita
o
Al continuar, acepta nuestros Términos de uso, nuestra Política de privacidad y que sus datos se almacenan en los EE. UU.