This course includes presentations, demonstrations, discussions, labs, and at the end of the course, youll practice building an end-to-end tabular data ML project using SageMaker Studio and the SageMaker Python SDK.Module 1: Amazon SageMaker Setup and Navigation
- 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
Module 2: Data Processing
- 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
Module 3: Model Development
- 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
Module 4: Deployment and Inference
- 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
Module 5: Monitoring
- 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
Module 6: Managing SageMaker Studio Resources and Updates
- 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
Capstone
- The Capstone lab will bring together the various capabilities of SageMaker Studio discussed in this course. You will be given the opportunity to prepare, build, train, and deploy a model using a tabular dataset not seen in earlier labs. You 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
Lerndauer: 3 days
Mit dieser Veranstaltung sind sie flexibel: Diese Veranstaltung wird vollständig online ausgeliefert!
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Eine Übersicht der einzelnen Termine zu den Online-Modulen erhalten Sie nach der Buchung in Ihrer persönlichen Online-Lernumgebung.
Objectives- Accelerating the preparation, building, training, deployment, and monitoring of ML solutions by using Amazon SageMaker Studio
- Using the tools that are part of SageMaker Studio to improve productivity at every step of the ML lifecycle
Traget groupsThis course is intended for the following job roles:
The following course or equivalent knowledge is required: MLOps Engineering on AWS
This course includes presentations, demonstrations, discussions, labs, and at the end of the course, youll practice building an end-to-end tabular data ML project using SageMaker Studio and the SageMak...
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