The Ultimate Guide For Automated Machine Learning Testing
Published 2/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.08 GB | Duration: 4h 36m
Published 2/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.08 GB | Duration: 4h 36m
Hands-on ML Testing & Automation: Build Reliable Models with Ready-to-Use Scripts & Real-World Testing Frameworks!
What you'll learn
Gain hands-on experience with ready-to-use ML testing scripts and automation frameworks to confidently apply testing techniques in real projects.
Apply ML testing concepts through real-world exercises, coding challenges, and practical scripts designed to accelerate your learning. Learn to automate ML dat
Learn to automate ML data validation, model evaluation, and API testing with industry-relevant tools and hands-on implementation.
Build expertise in ML test automation with step-by-step guidance, covering data quality, model performance, bias detection, and deployment testing.
Requirements
Basic Understanding of Machine Learning – Familiarity with ML concepts like training models, evaluation, and common algorithms is helpful.
Python Programming Skills – Knowledge of Python and basic scripting is required for hands-on exercises.
Familiarity with ML Libraries - like Scikit-learn, TensorFlow, or PyTorch is beneficial.
Basic Understanding of Software Testing – Awareness of testing concepts (unit testing, validation) will be useful but not mandatory And Interest in ML Automation – No prior ML testing experience is needed, but curiosity about automating ML workflows will be helpful.
Description
Automate Machine Learning Testing & Build Reliable, High-Performing ModelsMachine Learning models are only as good as their reliability. Without proper testing, models can fail due to data quality issues, bias, model drift, or incorrect evaluations. This course provides a practical, hands-on approach to Automated Machine Learning Testing, helping you build robust, production-ready models with confidence.This course goes beyond theory by offering real-world test scripts, automation frameworks, and industry best practices to ensure your ML models perform as expected. You will learn how to automate data validation, model evaluation, and deployment testing while integrating these processes into your CI/CD pipelines.What You’ll Learn:Implement automated testing strategies for data quality, model performance, and fairnessSet up automated test pipelines to detect issues before deploymentPerform cross-validation, bias detection, robustness testing, and monitoringUse Scikit-learn, TensorFlow Model Analysis, Fairlearn, Pytest, Prometheus, and moreDevelop practical test scripts to catch model failures earlyEnsure seamless integration of automated ML testing into real-world workflowsBy the end of this course, you will have ready-to-use automation scripts and hands-on experience to build, test, and deploy ML models with confidence. If you want to automate ML testing and improve model reliability, this course is for you.
This course is for anyone who works with Machine Learning and wants to ensure their models are reliable, accurate, and production-ready—without endless manual checks!,ML Engineers & Data Scientists – Automate testing, catch errors early, and build robust models with confidence.,QA Engineers & Testers – Step into the world of ML testing and master automated validation techniques.,Software Engineers & MLOps Professionals – Integrate ML testing into CI/CD pipelines and streamline deployment.,Tech Enthusiasts & Students – Learn hands-on ML testing from scratch and gain practical, job-ready skills.,If you've ever struggled with data quality issues, model drift, or unexpected ML failures, this course gives you the tools and scripts to test smarter, not harder!