Contents
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I
Mathematical Foundations
01
Linear Algebra
02
Calculus & Differential Equations
03
Optimization Theory
04
Probability Theory
05
Statistics & Statistical Inference
06
Information Theory
07
Bayesian Reasoning
08
Signal Processing
II
Programming & Software Engineering
01
Python for Data Science
02
Scientific Computing
03
Algorithms & Data Structures
04
Software Engineering Principles
05
Databases & SQL
06
Version Control & Collaborative Development
III
Data Engineering & Systems
01
Data Collection & Acquisition
02
Data Storage & Warehousing
03
Data Pipelines & Orchestration
04
Streaming & Real-Time Data
05
Distributed Computing
06
Cloud Platforms & Infrastructure
07
Data Quality, Governance, & Metadata
IV
Classical Machine Learning
01
Supervised Learning: Regression
02
Supervised Learning: Classification
03
Ensemble Methods
04
Unsupervised Learning: Clustering
05
Dimensionality Reduction
06
Probabilistic Graphical Models
07
Kernel Methods & SVMs
08
Feature Engineering & Selection
09
Model Evaluation & Selection
V
Deep Learning Foundations
01
Neural Network Fundamentals
02
Training Deep Networks
03
Regularization & Generalization
04
Convolutional Neural Networks
05
Sequence Models
06
Attention Mechanisms
07
Transfer Learning & Pretraining
VI
NLP & Large Language Models
01
NLP Fundamentals
02
Classical NLP
03
Word Embeddings & Distributional Semantics
04
The Transformer Architecture
05
Pretraining Paradigms
06
LLMs: Scale & Emergent Capabilities
07
Instruction Tuning & Alignment
08
Fine-Tuning & Parameter-Efficient Adaptation
09
Retrieval-Augmented Generation
10
LLM Evaluation
VII
Computer Vision
01
Image Representation & Classical Vision
02
Modern Image Classification & Architectures
03
Object Detection & Instance Segmentation
04
Video Understanding
05
3D Vision & Spatial Understanding
06
Vision-Language Models
VIII
Speech, Audio & Music
01
Audio Signal Processing
02
Automatic Speech Recognition
03
Text-to-Speech & Voice Synthesis
04
Speaker Recognition & Verification
05
Speaker Diarization
06
Audio Classification & Sound Understanding
07
Music Generation & Music AI
IX
Reinforcement Learning
01
RL Fundamentals
02
Tabular RL
03
Deep Q-Networks & Value-Based Methods
04
Policy Gradient & Actor-Critic Methods
05
Model-Based RL & World Models
06
Multi-Agent Reinforcement Learning
07
Offline RL & Imitation Learning
08
Preference Learning & RLHF
X
Generative Models
01
Variational Autoencoders
02
Generative Adversarial Networks
03
Normalizing Flows
04
Diffusion Models
05
Autoregressive Generative Models
06
Image & Video Generation
07
3D & Multimodal Generation
08
Multimodal Foundation Models
XI
AI Agents & Autonomous Systems
01
Agent Fundamentals
02
LLM-Based Agents
03
Planning & Reasoning
04
Memory & Knowledge Management
05
Tool Use & Function Calling
06
Computer Use & GUI Agents
07
Agent Frameworks & Infrastructure
08
Multi-Agent Systems
09
Agent Safety, Control & Oversight
10
Agent Evaluation & Benchmarking
11
Using AI Agents: Getting Started
12
Building AI Agents: A Practitioner's Handbook
XII
Robotics & Embodied AI
01
Robot Perception & Sensing
02
Motion Planning & Control
03
Learning from Demonstration & Imitation
04
Sim-to-Real Transfer
05
Foundation Models for Robotics
06
Autonomous Vehicles
XIII
Specialized ML Methods
01
Time Series Analysis & Forecasting
02
Anomaly Detection
03
Causal Inference
04
Causal Machine Learning
05
Graph Neural Networks
06
Survival Analysis & Event Modeling
07
Bayesian Deep Learning
08
Meta-Learning & Few-Shot Learning
09
Continual & Lifelong Learning
10
Federated Learning & Privacy-Preserving ML
11
Neurosymbolic AI
XIV
Applied Domains
01
Recommender Systems
02
Search & Information Retrieval
03
Intro to Finance & Economics
04
Financial ML & Quantitative Methods
05
Healthcare & Clinical AI
06
Intro to Cybersecurity
07
AI for Cybersecurity
08
AI for Education & Personalization
09
AI for Manufacturing & Operations
10
Human-AI Interaction & UX
XV
AI for Science
01
Scientific Machine Learning
02
Intro to Chemistry
03
Protein Science & AI
04
Biology, Genomics & AI
05
Pharmacology, Drug Discovery & AI
06
Climate, Earth Systems & AI
07
Physics & AI
08
Materials Science & AI
09
Astronomy & Astrophysics & AI
10
AI for Mathematics
XVI
MLOps & Production ML
01
Experiment Tracking & Reproducibility
02
Feature Stores & Data Management for ML
03
Model Deployment & Serving
04
Model Monitoring & Drift Detection
05
CI/CD for Machine Learning
06
A/B Testing & Causal Experimentation
07
Responsible Release & Deployment Practices
XVII
AI Infrastructure & Systems
01
Hardware for ML
02
Distributed Training
03
Model Compression
04
Inference Optimization
05
AI Chips & Custom Silicon
XVIII
AI Safety, Alignment & Governance
01
AI Safety Fundamentals
02
Technical Alignment Methods
03
Robustness & Adversarial ML
04
Mechanistic Interpretability
05
Explainability for Practitioners
06
Fairness, Bias & Equity
07
Privacy in ML
08
AI Governance, Policy & Regulation
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