Immersion Day: Machine Learning with Amazon SageMaker

Learn how Amazon SageMaker can help you build, train, and deploy machine learning models easier, faster, and at scale

June 23 | 9 AM PT | 12 PM ET

Machine Learning with Amazon SageMaker is a hands-on workshop designed to provide data scientists and developers with end-to-end understanding of the Amazon SageMaker platform, from handling data and features, to building, training, tuning, and deploying ML models. The workshop consists of theoretical modules and hands-on labs that focus on data quality, feature engineering, SageMaker built-in algorithms, and advanced concepts like model deployment on XGBoost.

Why Attend?

  • Learn how to build, train, tune, and deploy ML models with Amazon SageMaker in production-like scenarios
  • Explore best practices for using Amazon SageMaker’s built-in algorithms in ML production systems
  • Learn AWS services for managing data, features, ML models, and projects through hands-on experience
  • Address your questions about doing ML in the cloud to experts from AWS and Provectus

NOTE: You will need a laptop to participate in lab exercises.

Reserve Your Seat

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Reserve Your Seat

  • Hidden
  • Hidden
  • Hidden
  • Hidden
  • Hidden
  • This field is for validation purposes and should be left unchanged.

See the Provectus privacy policy for details on how we collect, use, and share information about you.

June 23 | 9 AM PT | 12 PM ET

Machine Learning with Amazon SageMaker is a hands-on workshop designed to provide data scientists and developers with end-to-end understanding of the Amazon SageMaker platform, from handling data and features, to building, training, tuning, and deploying ML models. The workshop consists of theoretical modules and hands-on labs that focus on data quality, feature engineering, SageMaker built-in algorithms, and advanced concepts like model deployment on XGBoost.

Why Attend?

  • Learn how to build, train, tune, and deploy ML models with Amazon SageMaker in production-like scenarios
  • Explore best practices for using Amazon SageMaker’s built-in algorithms in ML production systems
  • Learn AWS services for managing data, features, ML models, and projects through hands-on experience
  • Address your questions about doing ML in the cloud to experts from AWS and Provectus

NOTE: You will need a laptop to participate in lab exercises.

Agenda:

9:00 AM - 9:15 AM
Welcome & Introductions
9:15 AM - 10:15 AM
Session: "Introduction to Amazon SageMaker and Data for Machine Learning"
10:15 AM - 11:00 AM
Lab: "Feature Engineering with Amazon SageMaker"
11:00 AM - 11:15 AM
Break
11:15 AM - 12:15 AM
Session: "Create Model, Prediction and Inference with Amazon SageMaker"
12:15 PM - 12:45 PM
Lunch
12:45 PM - 1:15 PM
Lab: "Train, Tune and Deploy Model using Amazon SageMaker Built-in Algorithm"
1:15 PM - 1:30 PM
Wrap-up / Q&A

Who Should Attend

Data Scientists, ML Engineers, MLOps and QA professionals, and developers. Basic familiarity with AWS is recommended.

Ready to explore the features of Amazon SageMaker for Machine Learning? Register now!

Presented by

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Chaitra Mathur

Sr Solutions Architect at AWS

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Rinat Gareev

Solutions Architect at Provectus

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Bulat Lutfullin

ML Engineer at Provectus

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Rinat Akhmetov

Solutions Architect at Provectus