Advanced Generative AI - 6-Month Professional Training Program

πŸ“Œ Duration: 6 Months (24 Weeks)
πŸ“Œ Mode: Instructor-Led Training (Classroom/Online)
πŸ“Œ Prerequisites: Basic Python & Machine Learning Knowledge
πŸ“Œ Certification: Industry-Recognized Certificate on Completion

Course Structure & Learning Objectives

This course will cover theoretical foundations, practical implementation, and advanced applications of Generative AI models. By the end of the course, participants will:
βœ… Develop and deploy Generative AI models for text, image, audio, and video generation.
βœ… Gain hands-on experience with GANs, Transformers (GPT-4, LLaMA), and Diffusion Models (Stable Diffusion, DALLΒ·E).
βœ… Learn Model Optimization, Fine-tuning LLMs, and Ethical Considerations in Generative AI.
βœ… Work on Live Projects & Real-World Case Studies in various domains.

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πŸ“– Course Syllabus

πŸ“Œ Module 1: Fundamentals of AI & Machine Learning (Weeks 1-4)

1.1 Introduction to AI & Generative AI

  • Evolution of AI: Machine Learning, Deep Learning & Generative AI
  • Applications of Generative AI in Text, Images, Audio & Video
  • Ethical Considerations & AI Safety

1.2 Mathematical & Statistical Foundations

  • Linear Algebra (Vectors, Matrices, Eigenvalues)
  • Probability & Statistics for AI (Bayes Theorem, Random Variables)
  • Optimization Algorithms (Gradient Descent, Backpropagation)

1.3 Introduction to AI Development Tools

  • Python for AI: NumPy, Pandas, Matplotlib
  • Deep Learning Frameworks: TensorFlow & PyTorch
  • Working with Jupyter Notebook & Google Colab

πŸ”Ή Hands-on Lab: Train a simple Deep Learning model using TensorFlow.
πŸ”Ή Mini Project: Build a Sentiment Analysis Model using NLP.

πŸ“Œ Module 2: Deep Learning & Autoencoders (Weeks 5-8)

2.1 Deep Learning Foundations

  • Neural Networks: Perceptrons, Activation Functions
  • Convolutional Neural Networks (CNNs) for Image Processing
  • Recurrent Neural Networks (RNNs) & Long Short-Term Memory (LSTM)

2.2 Autoencoders & Feature Learning

  • Introduction to Autoencoders & Variational Autoencoders (VAEs)
  • Sparse, Denoising & Contractive Autoencoders
  • Feature Representation & Embeddings

πŸ”Ή Hands-on Lab: Implement CNNs & LSTMs for Image and Text Data.
πŸ”Ή Mini Project: Build an AI model to remove noise from images.

πŸ“Œ Module 3: Generative Adversarial Networks (GANs) (Weeks 9-12)

3.1 Introduction to GANs

  • Generator vs Discriminator Architecture
  • Training GANs & Challenges (Mode Collapse, Vanishing Gradients)

3.2 Advanced GAN Architectures

  • Deep Convolutional GANs (DCGANs)
  • Conditional GANs (cGANs) for Controlled Image Generation
  • StyleGAN, CycleGAN & Pix2Pix for Image Manipulation

πŸ”Ή Hands-on Lab: Train a DCGAN for Image Generation.
πŸ”Ή Mini Project: Develop AI-generated human faces using StyleGAN.

πŸ“Œ Module 4: Transformer-Based Models & LLMs (Weeks 13-16)

4.1 Understanding Transformers

  • Self-Attention & Multi-Head Attention Mechanism
  • Encoder-Decoder Models & Language Modeling

4.2 Large Language Models (LLMs) & Fine-Tuning

  • Pretrained Models: GPT-3, GPT-4, LLaMA, Falcon
  • Fine-Tuning LLMs for Custom NLP Applications

4.3 Text-to-Image & AI Creativity

  • Introduction to Diffusion Models (Stable Diffusion, DALLΒ·E, Midjourney)
  • Training Custom AI Models for Text-to-Image Generation

πŸ”Ή Hands-on Lab: Fine-tune GPT models for text generation.
πŸ”Ή Mini Project: Build a custom AI-powered chatbot using OpenAI API.

πŸ“Œ Module 5: Generative AI for Real-World Applications (Weeks 17-20)

5.1 Generative AI for Text & Content Creation

  • AI-Powered Content Writing (ChatGPT, Bard, Claude)
  • AI Summarization & Sentiment Analysis

5.2 Generative AI for Images & Videos

  • Deepfake Technology & Ethical Concerns
  • AI-Powered Image Editing (FaceSwap, Super-Resolution)

5.3 Generative AI for Audio & Music

  • AI Voice Synthesis & Speech Cloning
  • AI-Powered Music Generation

πŸ”Ή Hands-on Lab: Create AI-generated music & voice models.
πŸ”Ή Mini Project: AI-based video editing using Stable Diffusion.

πŸ“Œ Module 6: Advanced Topics, Model Deployment & Capstone Project (Weeks 21-24)

6.1 Model Optimization & Deployment

  • Model Pruning, Quantization & Acceleration Techniques
  • Deploying AI Models using Flask, FastAPI & Docker

6.2 AI Ethics, Bias & Future Trends

  • Ethical AI & Regulatory Challenges
  • AI in Business, Healthcare, and Finance

6.3 Capstone Project (Final 3 Weeks)

  • Develop a real-world Generative AI application
  • Live project presentation & peer review

πŸ”Ή Final Assessment & Certification: Live project evaluation by industry experts.

πŸ›  Tools & Technologies Covered

βœ” Python, TensorFlow, PyTorch, OpenAI API, Google Colab
βœ” Hugging Face Transformers, Stable Diffusion, DALLΒ·E
βœ” Flask, FastAPI, Docker for AI Model Deployment

πŸ“œ Certification & Career Support

βœ… Certificate of Completion from [Your Institute Name]
βœ… Industry-Recognized Project Portfolio
βœ… Placement Assistance & Career Mentorship
βœ… Internship Opportunities with AI Companies

Why Enroll in This Course?

πŸ”Ή Industry-Oriented Curriculum: Covers the latest AI trends & technologies.
πŸ”Ή Hands-On Learning: Live coding sessions, labs, and projects.
πŸ”Ή Expert Mentorship: Taught by AI professionals & industry experts.
πŸ”Ή Career Support: Resume building, mock interviews, and job assistance.

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