Description
✅ What You Will Learn
📌 Module 1 – Core Foundations
-
Introduction to Neural Networks
-
Loss Functions & Activation Functions in Depth
-
Mathematical Foundations & Convolution Operations
📌 Module 2 – Practical Deep Learning
-
Data Preprocessing with Model Code Examples
-
CNNs & Autoencoders
-
Introduction to GANs & Variational Autoencoders (VAEs)
-
Types of Layers & Deep Generative Models
📌 Module 3 – Sequential & Attention-Based Models
-
RNNs & LSTMs
-
Transformer Architecture Deep Dive
📌 Module 4 – Model Optimization & Fine-Tuning
-
Fine-Tuning Techniques for LLMs
-
Fine-Tuning with Unsloth
-
Knowledge Distillation
-
Model Compression
📌 Module 5 – AI Tools & Frameworks
-
LangChain & LangGraph
-
Vector Databases & RAG (Retrieval-Augmented Generation)
-
Streamlit App Development
-
MCP & VAEs in Practice
📌 Module 6 – Modern AI Ecosystem
-
Ollama & DeepSeek Integration
-
Diffusion Models Overview
-
Prompt Engineering Essentials
📌 Module 7 – Capstone Projects
-
End-to-End Generative AI Applications
-
Deploying AI Apps for Real-World Use
👤 Who Is This Course For?
-
Beginners in AI & Machine Learning
-
Developers wanting to transition into AI application building
-
Professionals exploring Generative AI tools & workflows
-
Students preparing for AI-focused career

Reviews
There are no reviews yet.