Introduction to Machine Learning for Non-Programmers
Course 12592 DAY COURSE
Course Outline
This No Code Machine Learning course provides a practical and accessible approach to utilizing no code Machine Learning for data evaluation, prediction, analysis, and optimization. Designed for both non-technical and technical data users, it equips you with foundational knowledge to enhance collaboration between business analysts, data scientists, and data engineers.
Introduction to Machine Learning for Non-Programmers Benefits
-
In this course, you will learn how to:
- Create No Code Machine Learning Models: You'll learn to create common no code Machine Learning models using user-friendly, industry-standard, drag-and-drop tools.
- Prepare and Analyze Data: Understand how to prepare and explore data to be used with Machine Learning models effectively.
- Select Pre-built Pipelines and Algorithms: Discover how to choose pre-built pipelines and algorithms to train your Machine Learning models.
- Explore Ready-to-Use Models: Explore ready-to-use models for tasks like natural language processing and computer vision.
- Clustering and Regression Models: Learn to group items into clusters using a no-code Clustering Model and predict numeric values using a no-code Regression Model.
- Classification Models: Master the art of predicting item categories using a no-code Classification Model.
-
Training Prerequisites
None.
Introduction to Machine Learning Training Outline
Chapter 1: Overview of No Code Machine Learning
- What is Machine Learning?
- What is No Code Machine Learning?
- Why is No Code Machine Learning so important?
- How do No Code Machine Learning Platforms work?
- No Code Machine Learning with Microsoft Azure
- No Code Machine Learning with Amazon AWS
Hands-On Exercise 1.1: Exploring industry-standard, visual, drag-and-drop and point-and-click Machine Learning tools
Chapter 2: Creating Datasets for Training Models
- Overview of datasets for Machine Learning
- Selecting appropriate datasets
- Preparing, exploring, and analyzing data
Hands-On Exercise 2.1: Creating datasets for training models
Chapter 3: Machine Learning models, Pre-built Pipelines, and Algorithms
- What is a Machine Learning model?
- What are ready-to-use Machine Learning models?
- Common ready-to-use Machine Learning models
Hands-On Exercise 3.1: Explore ready-to-use models for natural language processing and computer vision use cases
Chapter 4: No Code Machine Learning Clustering Models
- What is Clustering in Machine Learning?
- Common use cases for Clustering
- Clustering Machine Learning Models
- Creating a No Code Clustering Model
Hands-On Exercise 4.1: Group items into clusters based on features and characteristics using a no-code Clustering Model
Chapter 5: No Code Machine Learning Regression Models
- What is Regression in Machine Learning?
- Common use cases for Regression
- Regression Machine Learning Models
- Creating a Regression Machine Learning Model
Hands-On Exercise 5.1: Train a no code Regression Model to predict numeric values
Chapter 6: No Code Machine Learning Classification Models
- What is Classification in Machine Learning?
- Common Use Cases for Classification
- Classification Machine Learning Models
- Creating a Classification Machine Learning Model
Hands-On Exercise 6.1: Predict which category, or class, an item belongs to using a no-code Classification Model
- choosing a selection results in a full page refresh