Advanced Generative AI & Agentic by Sajjan Yadav
This comprehensive AI Engineering with Generative AI and Agent Systems Course is an advanced, career-oriented online program designed for learners who want to build strong expertise in Artificial Intelligence, Machine Learning, Deep Learning, and modern Generative AI technologies.
The course follows a structured learning path starting from Python and AI fundamentals, progressing through machine learning, deep learning, computer vision, and ultimately reaching cutting-edge topics such as Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), and autonomous AI agents.
It is ideal for college students, aspiring AI engineers, software developers, and professionals who want to transition into high-demand AI roles. The program emphasizes practical learning through real-world projects, hands-on coding, and deployment training to ensure learners gain job-ready skills.
PHASE 1: AI & Python Foundations (Beginner Level)
Module 1: Python Programming for AI
Python Basics (Variables, Data Types)
Conditions & Loops
Functions
OOPS (Encapsulation, Inheritance, Polymorphism)
NumPy (Arrays & Math Ops)
Pandas (Data Handling)
Data Cleaning
Data Visualization
Basic Statistics for AI
PHASE 2: Machine Learning Foundations
Module 2: Introduction to Machine Learning
What is AI vs ML vs DL
Types of ML (Supervised/Unsupervised)
Dataset Understanding
Train-Test Split
Linear Regression
Logistic Regression
KNN
Naive Bayes
Decision Trees
Model Evaluation (Accuracy, Precision, Recall, F1)
Overfitting & Underfitting
PHASE 3: Advanced ML Engineering (Intermediate)
Module 3: Ensemble & Advanced ML
Random Forest
Bagging vs Boosting
AdaBoost
Gradient Boosting
XGBoost
LightGBM
CatBoost
Feature Engineering
Cross Validation
Hyperparameter Tuning
Handling Imbalanced Data (SMOTE)
ML Pipelines
Model Interpretability (SHAP Intro)
PHASE 4: Deep Learning
Module 4: Neural Networks
Perceptron Concept
Activation Functions
Forward Propagation
Backpropagation
Loss Functions
Optimizers
Module 5: CNN & Sequence Models
CNN Basics
Convolution & Pooling
Image Classification
RNN Basics
LSTM & GRU
Transfer Learning
PHASE 5: Computer Vision with OpenCV
Module 6: OpenCV & Vision Systems
Image Representation
Image Processing
Edge Detection
Contour Detection
Face Detection
Real-time Webcam App
Object Detection Concept (YOLO Intro)
CNN for Image Classification
Vision App Deployment
Projects:
✔ Face Detection App
✔ AI Attendance System
PHASE 6: Generative AI & LLM Engineering
Module 7: Generative AI Basics
What is Generative AI?
Transformers Architecture
Self-Attention
Tokenization
Prompt Engineering
Few-shot & Zero-shot
Module 8: LLM Practical Engineering
Working with LLM APIs
Embeddings
Vector Databases
Fine-Tuning Concepts
LLM Evaluation
Guardrails & Safety
PHASE 7: RAG Systems
Module 9: Retrieval-Augmented Generation
Document Chunking
Embedding Creation
Vector Search
Hybrid Search
Context Optimization
Re-ranking
Hallucination Reduction
Project:
✔ Custom Knowledge AI Assistant
PHASE 8: Agentic AI Engineering
Module 10: AI Agents
What is Agentic AI?
ReAct Framework
Tool Calling
Memory Systems
Multi-step Reasoning
Planning & Reflection
Multi-Agent Systems
Autonomous Workflows
Agent Monitoring
Project:
✔ Autonomous AI Agent
PHASE 9: Deployment & Production
Module 11: AI Deployment
Flask Deployment
Streamlit Apps
REST APIs
Docker Basics
Cloud Deployment (Render / Cloud Intro)
Monitoring & Logging
Production AI Challenges
Project:
✔ ML + GenAI Deployment
PHASE 10: Industry & Career Preparation
AI Ethics
Bias & Fairness
AI Security
Portfolio Building
GitHub Structuring
Resume Optimization
Interview Preparation
System Design Basics
FINAL CAPSTONE TRACK
Students will build:
✔ Spam Detection with Deployment
✔ Vision-based Attendance System
✔ Enterprise RAG System
✔ Autonomous AI Agent
✔ AI SaaS Prototype
Benefits & Outcomes
After completing this course, students will:
Develop strong AI engineering foundations
Gain expertise in modern Generative AI technologies
Build real-world machine learning and AI projects
Learn to deploy AI applications professionally
Create a portfolio for AI career opportunities
Become job-ready for AI and data science roles

