AI-ML Decoded: From Fundamentals to Future
Episode 12: An Overview of Model Training We've used the word "training" in every episode. Now, we break down exactly what it means. In this episode, we explore the step-by-step workflow of how a model actually "learns" from data. In this episode, we cover: * The Core Concept: How "learning" is really just adjusting mathematical Weights and Biases to minimize a Loss Function. * Model vs. Algorithm: Why these terms aren't interchangeable (Recipe vs. Meal). * The 3 Paradigms Recap: A quick look at how Supervised, Unsupervised, and Reinforcement learning differ in their goals (Accuracy vs. Pattern Finding vs. Reward Maximization). * The 8-Step Workflow: From Data Collection and Hyper-parameter Selection to Back-propagation and Optimization. * Evaluation: Why we split data into Training, Validation, and Test sets to avoid the twin traps of Overfitting and Underfitting. Next Episode: We look at the tools of the trade in Machine Learning Libraries.
15 episodios
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