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How Data “INFERS” | Sampling & Evidence in Machine Learning (Intuitive Guide to ML Mathematics – M2) In real Machine Learning projects, we almost never have access to the entire population of data. Instead, models learn from samples. But this raises a crucial question: Can we trust conclusions drawn from limited data? In this lecture of the Intuitive Guide to ML Mathematics series, we explore how data helps us make reliable inferences — the statistical reasoning that powers experimentation, model evaluation, and decision-making in Machine Learning and Data Science. Instead of diving into complex formulas, this lecture focuses on intuitive understanding through practical scenarios used in real ML systems. In this lecture you will learn: • The difference between population and sample • Why sampling bias can mislead models • The intuition behind the Central Limit Theorem • What confidence intervals actually mean • How hypothesis testing helps validate results • What a p-value really represents • The difference between comparing averages and comparing proportions Using examples like A/B testing in product experiments, we explain how ML engineers determine whether improvements in models or systems are real — or just random chance. By the end of this lecture, you will understand how data INFERS conclusions from samples, which is essential for validating experiments, comparing models, and building trustworthy AI systems. This lecture is part of the Intuitive Guide to ML Mathematics Masterclass, designed to remove the fear of math and help learners develop strong intuition for Machine Learning and Data Science. Next Lecture: M3 — How Data “LIVES” in Space | Geometry of Machine Learning #MachineLearning, #ArtificialIntelligence, #DataScience, #MLMathematics, #StatisticalInference, #SamplingTheory, #HypothesisTesting, #PValue, #ABTesting, #MLBasics, #AIForBeginners, #MachineLearningFundamentals, #DataScienceEducation, #MLConcepts, #AIConcepts, #StatisticsForML, #MLMasterclass, #60SecondsAcademyAI, #60SecondsAcademyAIML, #60SecondsAcademy