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LESSON 3.5
Working with Embeddings
LESSON 3.6
Multimodal Embeddings for Retrieval
AI Bootcamp
MODULE 1
Onboarding & Tooling
LESSON 1.1
AI Onboarding & Python Essentials
LESSON 1.2
Course Introduction and Philosophy
LESSON 1.3
Setting Up Accountability and Tools
LESSON 1.4
Python, Google Colab & Jupyter Notebooks for AI
LESSON 1.5
Arrays, Vectors & Tensors in Practice for Foundational Knowledge
LESSON 1.6
Mathematical Foundations for ML
LESSON 1.7
Statistics and Data Preprocessing
LESSON 1.8
Probability and Tensor Basics
MODULE 2
AI Projects and Use Cases
LESSON 2.1
Understanding LLM Projects and Modalities
LESSON 2.2
LLM Use Cases Across Industries
LESSON 2.3
Limitations of LLMs
LESSON 2.4
LLM Inference Basics
LESSON 2.5
Building Your First LLM Application
LESSON 2.6
Introduction to AI-Centric Evaluation
LESSON 2.7
Mini-Project: Synthetic Data Generation with Evaluation
MODULE 3
Prompt Engineering & Embeddings
LESSON 3.1
Foundational Prompt Engineering
LESSON 3.2
Building and Evaluating Prompts
LESSON 3.3
Advanced Prompting with Context Engineering
LESSON 3.4
Text to Tokens to Embeddings
LESSON 3.5
Working with Embeddings
LESSON 3.6
Multimodal Embeddings for Retrieval
MODULE 4
Multimodal + Retrieval-Augmented Systems
LESSON 4.1
Introduction to CLIP and Multimodal Embeddings
LESSON 4.2
Prompt Engineering with Images
LESSON 4.3
Advanced Multimodal Tasks
LESSON 4.4
RAG Pipeline Overview
LESSON 4.5
Vector Databases and Query Optimization
LESSON 4.6
RAG Evaluation & Implementation
LESSON 4.7
Mini-Project: Incremental RAG Evaluation for PDF Lectures
MODULE 5
Classical Language Models
LESSON 5.1
Introduction to N-Gram Models
LESSON 5.2
Building and Sampling N-Gram Models
LESSON 5.3
Evaluating N-Gram Models
LESSON 5.4
Neural N-Gram Models
LESSON 5.5
Biplet Loss for Embeddings
MODULE 6
Attention & Finetuning
LESSON 6.1
Motivation for Attention Mechanisms
LESSON 6.2
Mechanics of Self-Attention
LESSON 6.3
Implementing Self-Attention
LESSON 6.4
Multi-Head Attention & Mixture of Experts (MoE)
LESSON 6.5
Instructional Finetuning & LoRA
LESSON 6.6
Finetuning Case Studies
MODULE 7
Architectures & Multimodal Systems
LESSON 7.1
Feedforward Networks in Transformers
LESSON 7.2
FFN Components & Training
LESSON 7.3
Multimodal Finetuning with CLIP
LESSON 7.4
Advanced Multimodal Applications
LESSON 7.5
Mini-Project: Generating Synthetic Data & Finetuning for Evaluation
MODULE 8
Assembling & Training Transformers
LESSON 8.1
Building a Full Transformer
LESSON 8.2
Debugging & Testing Transformers
LESSON 8.3
Monkeywrenching into LLaMA
LESSON 8.4
Advanced RAG Systems
LESSON 8.5
RAG Evaluation and Optimization
MODULE 9
Specialized Finetuning Projects
LESSON 9.1
CLIP Finetuning for Insurance
LESSON 9.2
Deploying Finetuned CLIP Models
LESSON 9.3
Math Reasoning with SymPy
LESSON 9.4
Tool-Augmented Finetuning
MODULE 10
Advanced RLHF & Engineering Architectures
LESSON 10.1
Preference-Based Finetuning
LESSON 10.2
Evaluating Preference Alignment
LESSON 10.3
Reverse Engineering Vibe Coding Agents
LESSON 10.4
Designing AI Code Agents
MODULE 11
Agents & Multimodal Code Systems
LESSON 11.1
Agent Design Patterns
LESSON 11.2
Agent Architectures and Toolkits
LESSON 11.3
Text-to-SQL Systems
LESSON 11.4
Text-to-Voice Pipelines
MODULE 12
Deep Internals & Production Pipelines
LESSON 12.1
Positional Encoding in Transformers
LESSON 12.2
DeepSeek-V3 Architecture
LESSON 12.3
LLM Production Chain
LESSON 12.4
LLMOps & Scalable Serving
MODULE 13
Enterprise LLMs, Hallucinations & Career Growth
LESSON 13.1
RAG in Enterprise Settings
LESSON 13.2
Evaluating Model Trustworthiness
LESSON 13.3
AI Career Roles and Preparation
LESSON 13.4
Bonus Content
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LESSON 4.1
Introduction to CLIP and Multimodal Embeddings
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Multimodal Embeddings for Retrieval