WINTER SALE: Get 10% OFF | Min Order Rs.999/-
Master Generative AI with Projects Hands-On
This course is designed to teach generative AI from foundational concepts to advanced
applications through a series of hands-on projects.
Meet Your Instructor

Mr. Saurabh Singh
Technical Trainer | Expertise in AI, ML & Data Science
What will I learn here?
Our course is designed to teach generative AI from foundational concepts to advanced applications through a series of hands-on projects. By the end of this course, students will be proficient in working with large language models, implementing effective prompt engineering techniques, optimizing model performance, and building end-to-end generative AI applications.
Course Objectives:
● Understand the architecture and capabilities of transformer-based language models
● Master prompt engineering techniques for various use cases
● Implement token and cost optimization strategies
● Build applications by integrating with LLM APIs
● Develop RAG systems for knowledge-intensive applications
● Use LangChain for building complex AI applications
● Apply fine-tuning and quantization techniques to LLMs
● Evaluate and benchmark LLM performance
● Design and implement agentic AI workflows
● Understand the architecture and capabilities of transformer-based language models
● Master prompt engineering techniques for various use cases
● Implement token and cost optimization strategies
● Build applications by integrating with LLM APIs
● Develop RAG systems for knowledge-intensive applications
● Use LangChain for building complex AI applications
● Apply fine-tuning and quantization techniques to LLMs
● Evaluate and benchmark LLM performance
● Design and implement agentic AI workflows
Module 1: Foundations of Generative AI
Evolution of Natural Language Processing
Introduction to Neural Language Models
Generative vs. Discriminative Models
Types of Generative AI Models
Introduction to Python Libraries for GenAI (Hugging Face Transformers, OpenAI, etc.)
Ethical Considerations in Generative AI
Module 2: Transformers and Attention Mechanism
Attention is All You Need: The Transformer Architecture
Self-Attention and Multi-Head Attention
Encoder-Decoder Architecture
Positional Encoding
Pre-training and Fine-tuning Paradigm
Modern Transformer Architectures (GPT, BERT, T5, etc.)
Module 3: Prompt Engineering Techniques
Introduction to Prompt Engineering
Zero-shot, One-shot, and Few-shot Learning
Chain-of-Thought Prompting
Role Prompting and System Messages
Temperature and Sampling Strategies
Structured Output Generation
Handling Biases and Limitations
Module 4: Token and Cost Optimization
Understanding Tokenization
Token Counting and Estimation
Context Window Management
Input Chunking Strategies
Cost Analysis for Different LLM Providers
Strategies for Reducing API Costs
Module 5: API Integration with LLMs
Overview of LLM API Providers
Authentication and API Keys Management
Making API Calls with Python
Handling API Responses and Errors
Streaming Responses
Rate Limiting and Concurrent Requests
Project: Creating a Chatbot with OpenAI API
Module 6: Retrieval Augmented Generation (RAG)
Introduction to RAG Architecture
Document Processing and Chunking
Vector Databases and Similarity Search
Embedding Models for Text Representation
Query Processing and Reformulation
Context Augmentation Techniques
Hybrid Search Approaches
Project: Building a Question-Answering System with RAG
Module 7: LangChain Framework
Introduction to LangChain
Chains and Sequential Processing
Prompt Templates and Output Parsers
Memory Types for Conversation Management
Tools and Agents in LangChain
Document Loaders and Text Splitters
Integrating External APIs and Tools
Project: Building a Multi-Tool Assistant with LangChain
Module 8: PEFT: Fine-tuning & Quantization of LLMs
Introduction to Parameter-Efficient Fine-Tuning
LoRA, QLoRA, and Adapter-based Methods
Dataset Preparation for Fine-tuning
Model Quantization Techniques
Deployment Considerations for Fine-tuned Models
Project: Fine-tuning an LLM for a Specialized Domain
Module 9: Evaluation of LLM Models
Evaluation Metrics for Generative AI
Human Evaluation vs. Automatic Metrics
Benchmark Datasets and Leaderboards
Evaluating Hallucinations and Factuality
Building Evaluation Pipelines
Project: Creating an Evaluation Framework for LLM Outputs
Module 10: Agentic Workflow
Introduction to AI Agents
Planning and Reasoning in Agents
Tool and API Usage by Agents
ReAct Framework and Chain-of-Thought Reasoning
Multi-Agent Systems and Collaboration
Memory and State Management
Feedback Loops and Self-Improvement
Project: Building a Task-Oriented Agent
Module 11: Capstone Project - End-to-End Generative AI Application
Problem Definition and Requirements Analysis
Architecture Design and Component Selection
Implementation of Core Functionalities
User Interface Development (using streamlit or gradio)
Performance Optimization
Testing and Evaluation
Deployment and Documentation
Projects Covered:
Creating a Chatbot with OpenAI API
Building a Question-Answering System with RAG
Building a Multi-Tool Assistant with LangChain
Fine-tuning an LLM for a Specialized Domain
Creating an Evaluation Framework for LLM Outputs
Building a Task-Oriented Agent
End-to-End Generative AI Application (Capstone)
Live Training Benefits

Doubt sessions
Live Q&A sessions to clarify all your queries instantly

Hands on Projects
Practical learning through real world project implementation

Course Completion
Practical learning through real world project implementation

Recorded Sessions
Practical learning through real world project implementation

1:1 Mentor
Practical learning through real world project implementation

Structured Curriculum
Practical learning through real world project implementation
Bonus Learning Perks

Github Profile

LinkedIn Profile

Resume Writing

Soft Skills

Mock Interview
TESTIMONIALS
See what our Learners have to say

Ashwini Ranade
Data Science
Nice and well-organized course. - Ashwini Ranade

Priyanshu mishra
Iot
I am thankfull to hole nation innovation team, iam learning on the best faculty about iot and I completed at well , so I am to much happy to doing training here..

Anonymous
Project support using Matlab
This group demonstrates a high level of professionalism and expertise. I appreciate your excellent assistance during my academic project in image recognition using Matlab.





.png)
