Duration
4 Days
24 CPD hours
This course is intended for
This course is designed for data scientists with existing knowledge of Python and machine learning frameworks like Scikit-Learn, PyTorch, and Tensorflow, who want to build and operate machine learning solutions in the cloud.
Overview
Learn how to operate machine learning solutions at cloud scale using Azure Machine Learning. This course teaches you to leverage your existing knowledge of Python and machine learning to manage data ingestion and preparation, model training and deployment, and machine learning solution monitoring in Microsoft Azure.
Learn how to operate machine learning solutions at cloud scale using Azure Machine Learning. This course teaches you to leverage your existing knowledge of Python and machine learning to manage data ingestion and preparation, model training and deployment, and machine learning solution monitoring with Azure Machine Learning and MLflow.
Prerequisites
Creating cloud resources in Microsoft Azure.
Using Python to explore and visualize data.
Training and validating machine learning models using common frameworks like Scikit-Learn, PyTorch, and TensorFlow.
Working with containers
AI-900T00: Microsoft Azure AI Fundamentals is recommended, or the equivalent experience.
1 - Design a data ingestion strategy for machine learning projects
Identify your data source and format
Choose how to serve data to machine learning workflows
Design a data ingestion solution
2 - Design a machine learning model training solution
Identify machine learning tasks
Choose a service to train a machine learning model
Decide between compute options
3 - Design a model deployment solution
Understand how model will be consumed
Decide on real-time or batch deployment
4 - Design a machine learning operations solution
Explore an MLOps architecture
Design for monitoring
Design for retraining
5 - Explore Azure Machine Learning workspace resources and assets
Create an Azure Machine Learning workspace
Identify Azure Machine Learning resources
Identify Azure Machine Learning assets
Train models in the workspace
6 - Explore developer tools for workspace interaction
Explore the studio
Explore the Python SDK
Explore the CLI
7 - Make data available in Azure Machine Learning
Understand URIs
Create a datastore
Create a data asset
8 - Work with compute targets in Azure Machine Learning
Choose the appropriate compute target
Create and use a compute instance
Create and use a compute cluster
9 - Work with environments in Azure Machine Learning
Understand environments
Explore and use curated environments
Create and use custom environments
10 - Find the best classification model with Automated Machine Learning
Preprocess data and configure featurization
Run an Automated Machine Learning experiment
Evaluate and compare models
11 - Track model training in Jupyter notebooks with MLflow
Configure MLflow for model tracking in notebooks
Train and track models in notebooks
12 - Run a training script as a command job in Azure Machine Learning
Convert a notebook to a script
Run a script as a command job
Use parameters in a command job
13 - Track model training with MLflow in jobs
Track metrics with MLflow
View metrics and evaluate models
14 - Perform hyperparameter tuning with Azure Machine Learning
Define a search space
Configure a sampling method
Configure early termination
Use a sweep job for hyperparameter tuning
15 - Run pipelines in Azure Machine Learning
Create components
Create a pipeline
Run a pipeline job
16 - Register an MLflow model in Azure Machine Learning
Log models with MLflow
Understand the MLflow model format
Register an MLflow model
17 - Create and explore the Responsible AI dashboard for a model in Azure Machine Learning
Understand Responsible AI
Create the Responsible AI dashboard
Evaluate the Responsible AI dashboard
18 - Deploy a model to a managed online endpoint
Explore managed online endpoints
Deploy your MLflow model to a managed online endpoint
Deploy a model to a managed online endpoint
Test managed online endpoints
19 - Deploy a model to a batch endpoint
Understand and create batch endpoints
Deploy your MLflow model to a batch endpoint
Deploy a custom model to a batch endpoint
Invoke and troubleshoot batch endpoints