Using Sagemaker Pipelines get ML models approved and deploy



Using Sagemaker Pipelines get ML models approved and deploy

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What you'll learn
  • How to get models approved for Production
  • ML workflows
  • CI/CD
  • Sagemaker Pipelines
  • XGBoost
  • Default Model Monitor
  • Registering a model
  • Deployment of a Model on AWS
  • Sagemaker Studio
  • Hyperparameter Tuning Job
  • MLOps
  • Processing Job
  • Detect Data Drift
  • Evaluate Models
  • Make predictions of Deployed Models
  • Machine Learning Parameters of various XGBoost Models

Description

In this course there are 4 exercises of 3 different types of …

Duration 0 Hours 58 Minutes
Paid

Self paced

Intermediate Level

English (US)

1

Rating 0 out of 5 (0 ratings in Udemy)

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