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Neural Network Math Made Simple: A Visual Step-by-Step Workbook for Weights, Biases, Activations, Loss Functions, Backpropagation, and Gradient Descent

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Management number 231977586 Release Date 2026/06/18 List Price US$3.44 Model Number 231977586
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Neural Network Math Made Simple is a visual, step by step workbook for self taught learners, bootcamp students, and anyone who wants to genuinely understand how neural networks learn — without getting lost in dense theory or heavy notation.Most beginners hit the same wall. The math behind deep learning feels abstract until someone shows you how every piece connects. This workbook bridges that gap by walking you through the full neural network training process using clear visuals, guided examples, fill in the blank exercises, and graded practice problems. Every chapter focuses on one core idea and builds your understanding before moving to the next.Starting from the basics of inputs, weights, and biases, the workbook builds step by step through activation functions, loss functions, derivatives, the chain rule, backpropagation, and gradient descent. You will learn how to compute a forward pass by hand, trace gradients backward through a network, update weights using the gradient descent rule, and read training curves to understand what the model is actually doing. Later chapters cover matrix math for neural networks, mini batch training, multi layer networks, softmax and cross entropy for classification, and the mathematical foundations behind modern deep learning systems.Every concept is practiced, not just explained. Each of the 18 chapters includes concept explanations with visual roadmaps, three solved examples at beginner, intermediate, and applied ML levels, four guided fill in the blank exercises, nine practice problems with full workspace, a complete answer key, and a one page visual cheat sheet.This workbook is ideal for:Self taught programmers and data science learners building their AI math foundation.Bootcamp students who want to understand backpropagation and gradient descent from scratch.Anyone who has used deep learning frameworks but wants to know what the math is actually doing.Readers who learn best through practice, visuals, and structured step by step working. Read more

ASIN B0H2FWZWLG
XRay Not Enabled
Format Print Replica
Language English
File size 38.7 MB
Page Flip Not Enabled
Word Wise Not Enabled
Print length 469 pages
Accessibility Learn more
Publication date May 20, 2026
Enhanced typesetting Not Enabled

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