IoT Data Analytics and Storage (edX)

IoT Data Analytics and Storage (edX)
Course Auditing
Students should understand the following: How IoT is used to achieve business goals How to establish 2-way communication between devices (either real or simulated) and the IoT Hub.
IoT Data Analytics and Storage (edX)
Gain valuable insights from your IoT data to help your business succeed. Are you ready to help your business begin realizing the business benefits promised by the Internet of Things revolution? Do you want to discover the hidden insights waiting in your business data?

Class Deals by MOOC List - Click here and see edX's Active Discounts, Deals, and Promo Codes.

In this course, you will learn how to make the most of your live-stream and historical telemetry data that is being produced by the IoT devices and sensors that support your business.

This course is part of the Microsoft Professional Program Certificate in IoT.

What you'll learn

After completing this course, students will be able to:

- Describe typical telemetry data produced by Azure IoT devices

- Explain various strategies for analyzing IoT data

- Explain the differences between warm and cold storage and how each technology is best used

- Describe how Azure Data Lake can be used for cold storage

- Explain the process for processing IoT data with IoT Hub, Data Lake Analytics, and Data Lake Storage

- Understand strategies for querying and analyzing Azure Data Lake data sets

- Identify the benefits of warm storage

- Identify operational vs. archive data sets from IoT

- Provision and configure Azure Cosmos DB

- Integrate Azure Cosmos DB with Azure Stream Analytics

- Write IoT data into Cosmos DB as Warm Storage

- Query Cosmos DB for IoT data

- Explain the role of IoT Edge devices in analyzing and acting on telemetry data

- Describe use cases for running analytics on edge devices

- Modify web-based stream analytics jobs for edge deployment

- Deploy analytics jobs onto edge devices

- Deploy other analytics code onto edge devices

- Combine streaming data with reference data in queries

- Write queries with different types of time windows

- Chain together streaming analytics jobs, to allow more sophisticated inputs and outputs

- Combine warm and cold storage strategies with edge analytics and strategies to quickly react to telemetry data

- Describe options for performing device management tasks, based on real-time data


This course is completely lab-based. There are no lectures or required reading sections. All of the learning content that you will need is embedded directly into the labs, right where and when you need it. Introductions to tools and technologies, references to additional content, video demonstrations, and code explanations are all built into the labs.

Some assessment questions will be presented during the labs. These questions will help you to prepare for the final assessment.

The course includes four modules, each of which contains two or more lab activities. The lab outline is provided below.

Module 1: IoT Analytics and Cold Storage

Lab 1: Configuring the Wind Farm Simulator

Lab 2: Getting Started with Data Lake Storage and Analytics

Module 2: Warm Storage

Lab 1: Getting Started with Warm Storage

Lab 2: Implementing Business System Integration

Module 3: Analytics on the Edge

Lab 1: Getting Started with IoT Edge

Lab 2: Implementing Analytics on the Edge

Lab 3: Deploying an Azure Function to the IoT Edge

Module 4: Advanced Analytics

Lab 1: Constructing Analytics Queries

Lab 2: Managing Analytics Topologies

Lab 3: Device Management and Analytics

No votes yet
Course Auditing
99.00 EUR
Students should understand the following: How IoT is used to achieve business goals How to establish 2-way communication between devices (either real or simulated) and the IoT Hub.