Generative AI for Beginners
This course provides a comprehensive introduction to Generative AI, breaking down complex concepts into easy-to-understand modules.
You will explore the differences between AI and Generative AI, the fundamentals of machine learning and deep learning, and the critical role of neural networks in AI development.
The course delves into Generative Adversarial Networks (GANs), explaining their working mechanisms and different types such as DCGAN, CycleGAN, and StyleGAN. You will also gain hands-on experience in implementing GANs using Python.
For those interested in AI-generated images, this course provides an introduction to diffusion models and their role in image synthesis. You will learn about tools like Stable Diffusion and DALL·E and apply text-to-image generation techniques in practical implementations.
You will explore beginner-friendly no-code and low-code AI tools and gain insights into deploying AI models using APIs and cloud integration.
The course concludes with a real-world project where you will build your own Generative AI model, preparing you to apply your knowledge in real-life scenarios and stay ahead in the evolving field of AI.
📚 Course Overview
⦿ Introduction to Generative AI
⦿ Understanding AI vs. Generative AI
⦿ Fundamentals of Machine Learning and Deep Learning
⦿ Neural Networks and Their Role in AI
⦿ Introduction to Generative Models
⦿ Supervised vs. Unsupervised vs. Self-Supervised Learning
⦿ Understanding Autoencoders and Variationally Autoencoders (VAE)
⦿ Generative Adversarial Networks (GANs) - Basics
⦿ How GANs Work: Generator vs. Discriminator
⦿ Types of GANs (DCGAN, CycleGAN, StyleGAN, etc.)
⦿ Practical Implementation of GANs in Python
⦿ Introduction to Transformer Models
⦿ Understanding Self-Attention and Multi-Head Attention
⦿ BERT vs. GPT: Key Differences
⦿ Building Text Generation Models with GPT
⦿ Fine-Tuning Large Language Models (LLMs)
⦿ Diffusion Models and How They Generate Images
⦿ Introduction to Stable Diffusion and DALL·E
⦿ Text-to-Image Generation: Practical Implementation
⦿ AI-Powered Video and Audio Generation
⦿ Understanding AI in Music and Voice Synthesis
⦿ Practical Hands-On with OpenAI’s Whisper and TTS Models
⦿ Ethical Considerations in Generative AI
⦿ Limitations and Risks of AI-Generated Content
⦿ Exploring No-Code and Low-Code AI Tools for Beginners
⦿ Deploying AI Models: Basics of API and Cloud Integration
⦿ Building a Simple AI-Powered App with Python
⦿ Real-World Applications of Generative AI
⦿ Future Trends in AI and Emerging Technologies
⦿ Final Project: Building Your Own Generative AI Model
📲 Unlock the Future of AI – Download Now and Start Creating with Generative AI!