Optimize ML Models: Hyperparameter Tuning

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Optimize ML Models: Hyperparameter Tuning

Coursera · Intermediate ·📐 ML Fundamentals ·3mo ago

Key Takeaways

Optimizes ML models using hyperparameter tuning with GridSearchCV

Original Description

Optimize ML Models: Hyperparameter Tuning gives you the practical skills to move from “good enough” models to models that perform reliably at scale. You’ll learn how default hyperparameters shape model behavior, how computational complexity affects training cost, and why structured tuning methods outperform guesswork. Through short videos, hands-on practice, and a guided GridSearchCV project, you’ll build a complete workflow for selecting, evaluating, and explaining tuned model configurations. By the end of the course, you’ll know how to design effective search spaces, run systematic tuning experiments, interpret cross-validated results, and save tuned parameters for real ML pipelines—all essential skills for modern machine learning and AI roles.
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