When you enroll through our links, we may earn a small commission—at no extra cost to you. This helps keep our platform free and inspires us to add more value.

Introduction to Machine Learning Models (AI) Testing
From Scratch, Learn testing types and Strategies involved in all the phases of ML Models (AI) with real time examples

This Course Includes
udemy
4.6 (196 reviews )
5 total hours
english
Online - Self Paced
course
Udemy
About Introduction to Machine Learning Models (AI) Testing
This course will introduce you to the World of Machine Learning Models Testing.
As AI continues to revolutionize industries, many companies are developing their own ML models to enhance their business operations. However, testing these models presents unique challenges that differ from traditional software testing. Machine Learning Model testing requires a deeper understanding of both data quality and model behavior, as well as the algorithms that power them.
This Course starts with explaining the fundamentals of the Artificial Intelligence & Machine Learning concepts and gets deep dive into testing concepts & Strategies for Machine Learning models with real time examples.
Below is high level of Agenda of the tutorial:
Introduction to Artificial Intelligence
Overview of Machine Learning Models and their Lifecycle
Shift-Left Testing in the ML Engineering Phase
QA Functional Testing in the ML Validation Phase
API Testing Scope for Machine Learning Models
Responsible AI Testing for ML Models
Post-Deployment Testing Strategies for ML Models
Continuous Tracking and Monitoring Activities for QA in Production
By the end of this course,you will gain expertise in testing Machine Learning Models at every stage of their lifecycle.
Please Note:This course highlights specialized testing types and methodologies unique to Machine Learning Testing, with real-world examples.
No specific programming language or code is involved in this tutorial.
What You Will Learn?
- Introduction to Artificial Intelligence and Machine Learning Models.
- Understanding Lifecycle of Machine Learning Models and their testing Scope.
- Shift-Left Testing in the ML Engineering Phase such as OverFitting & UnderFitting Testing.
- QA Functional Testing in the ML Validation Phase with 25 different Testing types & Strategies.
- API Testing Scope for Machine Learning Models with ChatGPT Model example.
- Responsible AI Testing for Machine Learning Models such as Bias, Fairness, Ethical, Privacy Testing etc.
- Post-Deployment Testing Strategies for ML Models such as DataDrift & Concept Drift testing.
- Continuous Tracking and Monitoring Activities for QA in Production.