AI Made Simple
Every machine learning system starts with data. In this episode of AI Made Simple, we kick off a 5-part series on the machine learning lifecycle by breaking down training data—the foundation of every AI system. We cover what training data actually is, how models learn from real-world behavior, and why data quality often matters more than model complexity in practice. You’ll also learn how issues like bias, sampling bias, distribution shift, and data leakage can quietly break an ML system, along with how real-world training data pipelines are built. Using simple examples, this episode helps you understand how data shapes everything that comes after in an AI system. This is Part 1 of the series. In the upcoming episodes, we will cover: * Feature Engineering Explained — How raw data is transformed into meaningful signals that models can use * Modeling & Training Explained — How machine learning models learn patterns and make predictions * Experimentation Explained — How companies test, evaluate, and improve models in real-world systems * Serving & Retrieval Explained — How AI systems operate in production, including real-time inference and retrieval By the end of this series, you will move beyond simply using AI tools to understanding how modern AI systems are actually built and deployed end to end.
37 episodios
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