Zero To Generative Ai Application Development Mastery
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.10 GB | Duration: 2h 42m
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.10 GB | Duration: 2h 42m
Master GenAI and Large Language Models from Scratch with Step by Step approach and Practical Hands-on based learning
What you'll learn
Understand the Fundamentals of Generative AI
Set Up and Configure a Generative AI Development Environment
Explore and Utilize Pre-trained Generative Models
Integrate Generative AI Capabilities into Real-world Applications
Understand about Large Language Models
Run Large Language Models locally or on servers
You will get learning materials
You will get the source code
Requirements
Basics of Python Programming Language
Description
Master Generative AI from Zero to Fullstack Generative AI Application Development – Your Ultimate Learning Path!Step into the world of artificial intelligence with our comprehensive course, “Zero to Generative AI Application Development Mastery.” Whether you're a beginner or looking to elevate your skills, this program guides you through every critical stage of building real-world AI applications.We begin with the foundations of AI and Machine Learning—understanding what AI really is, how it connects with machine learning, deep learning, and large language models (LLMs). Learn about supervised, unsupervised, and reinforcement learning and how they form the basis for today’s cutting-edge AI systems.Next, dive into the core concepts of Generative AI and LLMs. You’ll explore what makes models like ChatGPT, Claude, and Gemini tick—from tokens, context windows, and embeddings to chunks and model parameters. Discover how these elements power applications that can generate text, answer questions, and much more.In the hands-on environment setup section, we guide you through installing Python and integrating with GenAI tools such as ChatGPT, DeepSeek, and Grok. Learn different methods to interact with LLMs and gain practical experience through live coding.Then, move on to building custom applications using OpenAI, Google Gemini, and DeepSeek APIs. Learn to connect, query, and retrieve responses from LLMs directly into your apps using powerful SDKs.Explore hosting options and pricing models to deploy your own LLMs in the cloud. You’ll even use cloud-hosted models for text-to-speech, OCR, and computer vision applications.Ready to go local? We show you how to run LLMs on your own computer and call them from your code—no cloud dependency needed.Finally, cap it off with real-world fullstack app development projects that integrate multiple LLMs to solve practical problems.This is not just a course—it's your gateway to becoming a confident and capable Generative AI developer. Are you ready to master the future?
Overview
Section 1: Basics of Artificial Intelligence and Machine Learning
Lecture 1 What is Artificial Intelligence
Lecture 2 What is Machine Learning
Lecture 3 Relationship between AL ML DL LLM
Lecture 4 Supervised and Unsupervised Learning
Lecture 5 Reinforcement learning and LLM
Section 2: Fundamentals of Generative AI and Large Language Models
Lecture 6 What is Generative AI
Lecture 7 What is Large Language Model
Lecture 8 Different types of LLMs
Lecture 9 Parameters , Tokens, Context window in LLMs
Lecture 10 Chunks in LLM
Lecture 11 Embeddings in LLM
Section 3: Environment Setup and Popular GenAI Assitants
Lecture 12 Python local development environment setup
Lecture 13 What is LLM and ChatGPT with Practical Handson
Lecture 14 DeepSeek, Google Gemini, Claude, Grok
Lecture 15 Different ways to Interact with any LLM models
Section 4: Using LLMs from Custom Application via API and SDK
Lecture 16 Exploring OpenAI Platform for API Key and Docs
Lecture 17 Calling OpenAI API via Python Code Practical Handson
Lecture 18 Calling Google Gemini API via Python Code Practical Handson
Lecture 19 Calling DeepSeek API via Python Code Practical Handson
Section 5: Hosted Options for LLMs and their Pricing
Lecture 20 Hosting options for LLM models
Lecture 21 Hosting LLAMA models on Cloud and calling it via Code
Lecture 22 Using cloud hosted LLM Model for text to speech application
Lecture 23 Significance of Temparature parameter in LLM
Lecture 24 Using cloud hosted LLM for OCR and Vision capability
Section 6: Running LLMs on Local Computer
Lecture 25 How to run LLM on Local Computer
Lecture 26 Installing LLM Model on Local CPU based computer
Lecture 27 Calling locally installed LLM models from code
Section 7: Fullstack App Development with multiple LLMs
Lecture 28 Real world fullstack LLM applications
Anyone who wantes to get started with the world of Generative AI and Large Language Models,Anyone who wantes to integrate Generative AI capability in their existing projects and application