Unlock the full potential of machine learning in your enterprise by mastering Amazon SageMaker Studio—a comprehensive toolkit for experienced data scientists to enhance model building, deployment, and monitoring processes effortlessly.
EnrollLeverage Amazon SageMaker Studio to optimize the ML lifecycle.
Implement data processing techniques using SageMaker tools.
Develop and fine-tune ML models with SageMaker's built-in capabilities.
Deploy and monitor ML models ensuring high performance and reliability.
Amazon SageMaker Studio helps data scientists prepare, build, train, deploy, and monitor machine learning (ML) models quickly by bringing together a broad set of capabilities purpose-built for ML. This course prepares experienced data scientists to use the tools that are part of SageMaker Studio to improve productivity at every step of the ML lifecycle.
Launch SageMaker Studio from the AWS Service Catalog.
Navigate the SageMaker Studio UI.
Demo 1: SageMaker UI Walkthrough
Lab 1: Launch SageMaker Studio from AWS Service Catalog
Use Amazon SageMaker Studio to collect, clean, visualize, analyze, and transform data.
Set up a repeatable process for data processing.
Use SageMaker to validate that collected data is ML ready.
Detect bias in collected data and estimate baseline model accuracy.
Lab 2: Analyze and Prepare Data Using SageMaker Data Wrangler
Lab 3: Analyze and Prepare Data at Scale Using Amazon EMR
Lab 4: Data Processing Using SageMaker Processing and the SageMaker Python SDK
Lab 5: Feature Engineering Using SageMaker Feature Store
Use Amazon SageMaker Studio to develop, tune, and evaluate an ML model against business objectives and fairness and explainability best practices.
Fine-tune ML models using automatic hyperparameter optimization capability.
Use SageMaker Debugger to surface issues during model development.
Demo 2: Autopilot
Lab 6: Track Iterations of Training and Tuning Models Using SageMaker Experiments
Lab 7: Analyze, Detect, and Set Alerts Using SageMaker Debugger
Lab 8: Identify Bias Using SageMaker Clarify
Use Model Registry to create a model group; register, view, and manage model versions; modify model approval status; and deploy a model.
Design and implement a deployment solution that meets inference use case requirements.
Create, automate, and manage end-to-end ML workflows using Amazon SageMaker Pipelines.
Lab 9: Inferencing with SageMaker Studio
Lab 10: Using SageMaker Pipelines and the SageMaker Model Registry with SageMaker Studio
Configure a SageMaker Model Monitor solution to detect issues and initiate alerts for changes in data quality, model quality, bias drift, and feature attribution (explainability) drift.
Create a monitoring schedule with a predefined interval.
Demo 3: Model Monitoring
List resources that accrue charges.
Recall when to shut down instances.
Explain how to shut down instances, notebooks, terminals, and kernels.
Understand the process to update SageMaker Studio.
The Capstone lab will bring together the various capabilities of SageMaker Studio discussed in this course. Students will be given the opportunity to prepare, build, train, and deploy a model using a tabular dataset not seen in earlier labs. Students can choose among basic, intermediate, and advanced versions of the instructions.
Capstone Lab: Build an End-to-End Tabular Data ML Project Using SageMaker Studio and the SageMaker Python SDK
Your team deserves training as unique as they are.
Let us tailor the course to your needs at no extra cost.
Trusted by Engineers at:
and more...
Aaron Steele
Casey Pense
Chris Tsantiris
Javier Martin
Justin Gilley
Kathy Le
Kelson Smith
Oussama Azzam
Pascal Rodmacq
Randall Granier
Aaron Steele
Casey Pense
Chris Tsantiris
Javier Martin
Justin Gilley
Kathy Le
Kelson Smith
Oussama Azzam
Pascal Rodmacq
Randall Granier