Advaced Practical Genai - English Version
Published 9/2025
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: 4h 5m | Size: 1.57 GB
Advanced GenAI Unlocked - Fine-Tune, Deploy, and Scale with Modern LLMs
What you'll learn
Build excellent knowledge of the underlying mechanics of transformers, LLMs
Go through the full training cycle of LLMs
Work with opensource LLMs
Work with privately hosted models
Fine tune pre-trained models with your own data
Requirements
Python
NLP
Transformers
Generative AI Foundations
Description
Disclaimer: The audio narration in this course is AI-generated, based on human-written scripts and human-designed slides. The use of AI narration is to improve clarity for learners, while all instructional content remains instructor-created.This is Part 3 of the Practical GenAI Sequel.The goal of this sequel is to prepare you to become a professional GenAI engineer or developer. We'll start from the foundations of LLMs and GenAI and progress to building fully working, production-ready applications.The sequel follows a hands-on approach. Every concept is taught through code-based examples, with final projects built step by step in Python, Google Colab, and deployed using Streamlit.By the end of the full sequel, you will have built a diverse range of applications, including a ᑕᕼᗩTGᑭT clone, MidJourney-style image generator, Chat with Your Data app, YouTube Assistant, Ask YouTube Video app, Study Mate, Recommender system, Image Description app with GPT-V, Image Generation apps with DALL·E and Stable Diffusion, Video Commentator with Whisper, and more.In this part, you will work with different kinds of LLMs-both open-source and proprietary. You'll get hands-on exposure to:GPT models by OpenAILLaMA models by MetaGemini and Bard by GoogleOrca by MicrosoftMixtral by Mistral AI.and other emerging models.You'll learn how to use pre-trained models, and also how to fine-tune them on your own data.We'll dive into Hugging Face for model fine-tuning, leveraging Parameter-Efficient Fine-Tuning (PEFT) methods. You'll work with Low-Rank Adaptation (LoRA) to train models efficiently.You'll also learn how to deploy models in the cloud, or host them privately when working with sensitive company data.Finally, you'll explore knowledge distillation, where existing pre-trained models act as "teachers" to help you train your own optimized custom models.Disclaimer: The audio narration in this course is AI-generated, based on human-written scripts and human-designed slides. The use of AI narration is to improve clarity for learners, while all instructional content remains instructor-created.
Who this course is for
Entrepreneurs that want to build new ideas with GenAI
GenAI engineers/developers
Developers that integrate AI capabilities in their apps
You do not have permission to view the full content of this post. Log in or register now.