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Course Detail

Course Name Introduction To Generative AI          
Course Code 25ARE471
Program B. Tech. in Automation & Robotics Engineering

Syllabus

Unit I

Introduction to Generative AI Technology

Generative AI – Definition, Traditional AI Vs Generative AI, LLM – LLM Architecture, LLM Operations – Concept of Embedding, Tokenisation, Attention Mechanism. LLM Specifications, Overview of Multimodal Generative Models. Responsible AI principles – Bias, Fairness, and Explainability. Guideline on Generative AI usage.

Unit II

Generative AI Tools & Applications

Generative AI Tools: Prompt Engineering – Role-Task-Output Format, Zero & Few shot learning, Chain of Thoughts, Chunking. Retrieval Augmented Generation (RAG) – Vector Embeddings, Semantic and Similarity Search. Basics of fine-tuning.

Applications: Text Processing – Summarisation, Q&A, Translation, Correction. Code Processing – Code generation in specific programming language or framework, Code migration, Code Inferencing. Image Processing – Image generation, Image analysis, Image inferencing

Unit III

Advances in Generative AI Technology

AI Agents – Agentic Flow, Multi-agent systems. AI based autonomous systems – Self-Operating Computers. AI augmented workflow – Coding assistance. AI Management – Concept of LLMOps & Hyper-scalars, AI as System – Human-AI Interactions (HAX)

Objectives and Outcomes

Course Objectives

  • To understand the basic concepts of generative AI technology
  • To apply the generative AI models for various applications
  • To familiarise the various advanced tools of generative AI

Course Outcomes

At the end of the course, the student will be able to

CO1: Understand the concept of generation AI and its various tools

CO2: Practice AI principles  and ethics that guide individuals towards responsible, fair development and use of AI

CO3: Apply the generative AI tools for different applications related to Automation and Robotics

CO4: Understand  various advanced concepts of generative AI

 

CO-PO Mappings

 

CO/PO PO1 PO2 PO3 PO4 PO5 PO6 PO7 PO8 PO9 PO10 PO11 PO12 PSO1 PSO2 PSO3
CO1 3 1 1    1        1  1  1 1 1    
CO2 2          1   2  1  1  1 1      
CO3 2 2 1   3    2    1  1  1 1   3 3
CO4 2     1 2        1  1  1 1   1  

Evaluation Pattern

Assessment Internal End Semester
CA (Theory) 30  
Mid Semester Examination 30  
End Semester / Project   40

*CA – Can be Quizzes, Assignments, Tutorials, Lab components  and Reports

Text Books / References

Text Books

‘A Beginner’s Guide to Generative AI An Introductory Path to Diffusion Models, ChatGPT, and LLMs’, Deepshikha Bhati, Springer Cham, 2025.

‘ Applied Generative AI for Beginners: Practical Knowledge on Diffusion Models, ChatGPT, and Other LLMs’ Akshay Kulkarni, Adarsha Shivananda, Anoosh Kulkarni, Dilip Gudivada, , Apress Berkeley, CA, Springer, 2023. 

References

‘Introduction to Large Language Models’, Tanmoy Chakraborty, Wiley Wiley (25 December 2024); Wiley India Pvt Ltd. ISBN: 9789363864740, 484 pages

‘Foundations of Large Language Models’, Xiao T, Zhu J., arXiv preprint arXiv:2501.09223. 2025 Jan 16.

‘Introduction to Generative AI’, Dhamani, Numa., United States: Manning, 2024.

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