Basic Math Concepts – Deep Learning with Neural Networks
Math
Topic | Why |
Algebra | Weight updates, vector operations |
Linear Equations | Forward pass through layers |
Functions | Activation functions like sigmoid, ReLU |
Derivatives | Backpropagation using chain rule |
Matrix Multiplication | Layer connections in actual frameworks |
Statistics
Topic | Why |
Mean Squared Error (MSE) | Loss calculation |
Gradient Descent | Optimization |
Probability | Understanding uncertainty and sigmoid |
Normalization | Data preprocessing (feature scaling) |
Deep Learning with Neural Networks – Summary