3Blue1Brown Visual MathematicsΒΆ

Interactive notebooks inspired by the 3Blue1Brown video series. Use these alongside the foundational notebooks for visual intuition.

SeriesΒΆ

Calculus (12 notebooks)ΒΆ

Essence of Calculus series

#

Notebook

Topics

01

Essence of Calculus

Geometric intuition for derivatives

02

Paradox of the Derivative

Instantaneous rate of change

03

Derivative Formulas

Power rule, sum rule, product rule

04

Chain & Product Rules

Composition of functions

05

Exponential Derivatives

e^x and natural logarithm

06

Implicit Differentiation

Differentiating implicit equations

07

Limits & L’Hopital

Formal definition, L’Hopital’s rule

08

Integration

Fundamental theorem of calculus

09

Area and Slope

Connection between integration and differentiation

10

Higher-Order Derivatives

Second derivatives, concavity

11

Taylor Series

Polynomial approximation of functions

12

What Makes e Special

Why e is the natural base

Linear Algebra (13 notebooks)ΒΆ

Essence of Linear Algebra series

#

Notebook

Topics

01

Vectors & Linear Combinations

Span, basis vectors

02

Linear Transformations & Matrices

Matrices as transformations

03

Matrix Multiplication

Composition of transformations

04

Determinants

Area/volume scaling factor

05

Eigenvalues & Eigenvectors

Invariant directions under transformation

06

Inverse Matrices & Systems

Solving Ax=b, invertibility

07

Dot Products & Duality

Geometric interpretation

08

Cross Products

3D perpendicular vectors

09

Change of Basis

Coordinate transformations

10

3D Transformations

Extending to three dimensions

12

Cramer’s Rule

Solving systems via determinants

13

Quick Eigenvalue Trick

Fast 2x2 eigenvalue computation

16

Abstract Vector Spaces

Functions as vectors

Differential Equations (8 notebooks)ΒΆ

#

Notebook

Topics

01

Introduction

What are differential equations

02

Heat Equation

Partial differential equations

03

Solving Heat Equation

Separation of variables

04

Fourier Series

Decomposing periodic functions

05

Laplace Transforms

Algebraic approach to ODEs

06

Understanding Laplace

Intuition for the transform

07

Resonance

Driven oscillators

08

Matrix Exponents

e^(At) and systems of ODEs

Neural Networks (9 notebooks)ΒΆ

#

Notebook

Topics

01

What is a Neural Network

Neurons, layers, activations

02

Gradient Descent

Learning by minimizing loss

03

Backpropagation

Chain rule through a network

04

Backprop Calculus

Formal derivation

05

GPT and LLMs

How large language models work

06

Attention & Transformers

Self-attention mechanism

07

Attention Deep Dive

Multi-head attention, QKV

08

How GPT Stores Facts

Knowledge in transformer weights

09

Diffusion Models

Denoising score matching

How to UseΒΆ

These notebooks complement the foundational/ course. When a concept feels abstract, find the matching 3Blue1Brown notebook for visual intuition:

  • Struggling with derivatives? β†’ calculus/01-07

  • Matrices feel mechanical? β†’ linear-algebra/01-05

  • Backprop unclear? β†’ neural-networks/03-04

PrerequisitesΒΆ

  • Python 3.8+, NumPy, Matplotlib

  • No prior math prerequisites (these build intuition from scratch)