BAYESIAN INFERENCE WITH PYTHON FOR BEGINNERS : An Introductory, Hands-On Guide to Probabilistic Modeling and Statistical Reasoning Using PyMC and NumPy.
Format:
Kindle
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0.15 kg
Sí
Nuevo
Amazon
USA
- Uncertainty is everywhere—data is noisy, samples are incomplete, and decisions are rarely black and white. Bayesian inference offers a powerful way to reason clearly in uncertain situations, and Python makes it accessible to anyone willing to learn.This beginner-friendly guide introduces Bayesian inference from the ground up, assuming no prior background in statistics or probabilistic modeling. Using clear explanations, step-by-step calculations, and carefully written Python examples, you will learn how Bayesian thinking works and how to apply it in practice using NumPy and PyMC.Unlike theory-heavy texts, this book focuses on understanding first, coding second, ensuring you know not just how to run models, but why they work and how to interpret the results correctly.Inside this book, you will learn how to:Understand probability as a measure of beliefApply Bayes’ theorem using both math and PythonWork with common probability distributionsBuild and run simple Bayesian models in PyMCPerform parameter estimation and basic regressionInterpret posterior distributions and uncertainty correctlyAvoid common beginner mistakes in Bayesian statisticsEvery concept is reinforced with worked numerical examples, clean Python code, and visual explanations, making this book ideal for students, programmers, analysts, and curious learners.If you want a clear, structured, and beginner-safe introduction to Bayesian inference using modern Python tools, this book will guide you step by step—from your first probability calculation to your first Bayesian model.Scroll up and get your copy today.
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