Course Outline


Overview of Azure Machine Learning (AML) Features and Architecture

Overview of an End-to-End Workflow in AML (Azure Machine Learning Pipelines)

Provisioning Virtual Machines in the Cloud

Scaling Considerations (CPUs, GPUs, and FPGAs)

Navigating Azure Machine Learning Studio

Preparing Data

Building a Model

Training and Testing a Model

Registering a Trained Model

Building a Model Image

Deploying a Model

Monitoring a Model in Production


Summary and Conclusion


  • An understanding of machine learning concepts.
  • Knowledge of cloud computing concepts.
  • A general understanding of containers (Docker) and orchestration (Kubernetes).
  • Python or R programming experience is helpful.
  • Experience working with a command line.


  • Data science engineers
  • DevOps engineers interested in machine learning model deployment
  • Infrastructure engineers interesting in machine learning model deployment
  • Software engineers wishing to automate the integration and deployment of machine learning features with their application
 21 Hours

Number of participants

Price per participant

Testimonials (2)

Related Courses

Building Microservices with Microsoft Azure Service Fabric (ASF)

21 Hours

H2O AutoML

14 Hours

AutoML with Auto-sklearn

14 Hours

AutoML with Auto-Keras

14 Hours

Advanced Stable Diffusion: Deep Learning for Text-to-Image Generation

21 Hours

Introduction to Stable Diffusion for Text-to-Image Generation

21 Hours


7 Hours

TensorFlow Lite for Embedded Linux

21 Hours

TensorFlow Lite for Android

21 Hours

TensorFlow Lite for iOS

21 Hours

Tensorflow Lite for Microcontrollers

21 Hours

Deep Learning Neural Networks with Chainer

14 Hours

Distributed Deep Learning with Horovod

7 Hours

Accelerating Deep Learning with FPGA and OpenVINO

35 Hours

Building Deep Learning Models with Apache MXNet

21 Hours

Related Categories