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Reading Paths

Structured sequences through the material. Each path has a clear starting point, ordered topics, and estimated time. These are curated reading spines, not adaptive schedules.

Start Here~8 hours6 topics

ML Theory Core

The classical spine: ERM, uniform convergence, VC dimension, Rademacher complexity. Start here if you want to understand why learning from data works.

Essential~10 hours7 topics

Concentration Inequalities

From Markov to Matrix Bernstein. The inequality toolkit that every generalization bound, random matrix argument, and stability proof depends on.

Foundation~14 hours8 topics

Master Linear Algebra

Linear maps, matrix operations, norms, eigenspaces, SVD, PCA, Jacobians, and matrix calculus. The algebra spine behind ML theory and neural networks.

Foundation~10 hours10 topics

Basic Neural Network From Scratch

Build a tiny MLP before jumping to transformers: linear layers, activations, losses, gradient descent, backprop, softmax, cross-entropy, and generalization checks.

Applied~12 hours7 topics

Build an LLM from Scratch

A two-stage decoder-only path: next-token prediction, causal masking, embeddings, transformer blocks, then KV cache, FlashAttention, and modern inference.

Systems~18 hours6 topics

Deep Learning Systems From Scratch

A shape-and-memory rebuild track: linear layers, manual backprop, attention ledgers, transformer forward passes, KV cache, roofline reasoning, and accelerator constraints.

Infrastructure~15 hours7 topics

Mathematical Maturity

Measure theory, Radon-Nikodym, convex duality, martingales, information theory. The serious math infrastructure that separates surface-level from real understanding.

Frontier~10 hours7 topics

Modern Generalization

Where classical theory fails and what replaces it. Implicit bias, double descent, NTK, benign overfitting, scaling laws. The frontier of understanding why deep learning works.

New~12 hours10 topics

Frontier ML (2025-2026)

Post-training, test-time compute, agents, MoE, Mamba, diffusion, context engineering. The topics that dominate current research and systems work.