Generative AI Course
I. GenAI Basics
1. What is GenAI?
2. Evolution of AI
3. Foundation Models
4. Gen vs Disc
5. Key Concepts
6. GenAI Pipeline
7. Train vs Infer
8. Safety & Bias
9. Compute Infra
10. Applications
11. Word Embeddings
12. Sentence Embeddings
13. Document Embeddings
14. OpenAI Embeddings
15. Similarity Search
II. Generative Models
16. Vector DBs
17. ChromaDB
18. Pinecone
19. Autoencoders
20. VAE
21. GAN Basics
22. DCGAN
23. CycleGAN
24. Diffusion
25. Denoising
26. Latent Space
27. Image Generation
28. Eval Metrics
29. Transformers
30. Self-Attention
III. Transformers & LLMs
31. Positional Encode
32. Enc-Dec
33. Decoder-Only
34. BERT
35. GPT
36. Tokenization
37. Train LLMs
38. Instruction FT
39. RLHF
40. LoRA
41. Quantization
42. Function Calling
43. Multimodal Models
44. RAG Intro
45. RAG Architecture
IV. RAG + Real-World Applications