Predictive Analytics for IoT Solutions (edX)

Predictive Analytics for IoT Solutions (edX)
Course Auditing
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Certification
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Students should understand the following: IoT terminology and business goals.How to use modern software development tools.Basic principles of Python programming. Basic data analytics techniques. General machine learning concepts
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Predictive Analytics for IoT Solutions (edX)
Learn how to apply machine learning to your IoT data and gain a valuable advantage over your business competition. This course provides hands-on experience developing predictive maintenance and other ML solutions for IoT scenarios.

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Are you ready to start using machine learning to develop a deeper understanding of your IoT data?

This course uses hands-on lab activities to guide students through a series of machine learning implementations that are common for IoT scenarios, such as predictive maintenance. After completing this course, students will be able to implement predictive analytics using their IoT data.




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

This course is part of the IoT Analysis Professional Certificate.

The course is divided into four modules that cover the following topic areas:

- Machine learning for IoT

- Data preparation techniques

- Predictive maintenance modeling

- Fault prediction modeling


What you'll learn

- Describe machine learning scenarios and algorithms commonly pertinent to IoT

- Explain how to use the IoT solution Accelerator for Predictive Maintenance

- Prepare data for machine learning operations and analysis

- Apply feature engineering within the analysis process

- Choose the appropriate machine learning algorithms for given business scenarios

- Identify target variables based on the type of machine learning algorithm

- Train, evaluate, and apply various regression models

- Evaluate the effectiveness of regression models

- Apply deep learning to a predictive maintenance scenario


Syllabus


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: Introduction to Machine Learning for IoT

Lab 1: Examining Machine Learning for IoT

Lab 2: Getting Started with Azure Machine Learning

Lab 3: Exploring Code-First Machine Learning with Python


Module 2: Data Preparation for Predictive Maintenance Modeling

Lab 1: Exploring IoT Data with Python

Lab 2: Cleaning and Standardizing IoT Data

Lab 3: Applying Advanced Data Exploration Techniques


Module 3: Feature Engineering for Predictive Maintenance Modeling

Lab 1: Exploring Feature Engineering

Lab 2: Applying Feature Selection Techniques


Module 4: Fault Prediction

Lab 1: Training a Predictive Model

Lab 2: Analyzing Model Performance



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Course Auditing
99.00 EUR
Students should understand the following: IoT terminology and business goals.How to use modern software development tools.Basic principles of Python programming. Basic data analytics techniques. General machine learning concepts