מה צריך לדעת לפני
שתתחיל

מתחיל 13 June 2026 16:33

נגמר 13 June 2026

00 ימים
00 שעות
00 דקות
00 שניות
course image

Fundamentals of Generative AI and Large Language Models: Theory and Practice

Explore the theory and practice of Generative AI, covering VAEs, GANs, Diffusion Models, Transformers, and LLMs with mathematical foundations and hands-on implementation skills.
NPTEL via Swayam

NPTEL

154 קורסים


Not Specified

שדרוג אופציונלי זמין

מתקדם

התקדמות בקצב שלך

Free Online Course

שדרוג אופציונלי זמין

סקירה כללית

ABOUT THE COURSE:

This course provides a rigorous exploration of modern generative AI, covering latent-variable models such as Autoencoders, VAEs, GANs, and Diffusion Models that form the backbone of contemporary generative systems.Learners will develop a deep understanding of probabilistic modeling, adversarial training dynamics, denoising diffusion processes, and latent space manipulation for high-fidelity data generation.The sequence modeling module bridges classical NLP with modern architectures, introducing RNNs, LSTMs, and culminating in the Transformer framework that powers today’s Large Language Models.Emphasis is placed on mathematical foundations, architectural intuition, and practical implementation using widely adopted deep learning libraries.By the end of the course, learners will be equipped to analyze, design, and implement state-of-the-art generative models and LLM-based systems across diverse application domains.INTENDED AUDIENCE:

UG and PG students of all the AICTE affiliated institutionsPREREQUISITES:

Students must have completed introductory courses in Programming and Machine Learning/Deep Learning.Knowledge of Python and basic mathematical concepts is necessary to follow the hands-on exercises.INDUSTRY SUPPORT:

Generative AI and Large Language Models are now core technologies adopted across global and Indian industries, including software, healthcare, finance, retail, manufacturing, and creative design. Companies such as Google, Microsoft, Meta, Amazon, NVIDIA, IBM, OpenAI, and leading Indian organizations like TCS, Infosys, Wipro, LTIMindtree, Tech Mahindra, and Cognizant actively recruit professionals skilled in generative modeling and LLMs.

AI-driven startups such as HuggingFace, Stability AI, Rephrase.ai, Sarvam AI, and Qure.ai also value these competencies for developing foundation models, multimodal AI systems, and domain-specific generative applications. This course equips learners with the theoretical and practical expertise highly recognized and sought after across these industries.

סילבוס

  • Introduction to Generative AI
  • Overview of Generative Models
    Applications in Industry
  • Latent-Variable Models
  • Autoencoders
    Variational Autoencoders (VAEs)
    Generative Adversarial Networks (GANs)
    Basics of Probabilistic Modeling
  • Advanced Generative Models
  • Diffusion Models
    Denoising Diffusion Processes
    Latent Space Manipulation
  • Sequence Modeling and Natural Language Processing
  • Classical NLP: RNNs and LSTMs
    Introduction to Transformers
    Large Language Models (LLMs)
  • Mathematical Foundations
  • Probability and Statistics for Machine Learning
    Linear Algebra and Calculus for Deep Learning
  • Deep Learning Architecture and Intuition
  • Understanding Neural Network Architectures
    Adversarial Training Dynamics
  • Practical Implementation
  • Hands-on with Autoencoders and VAEs using PyTorch/TensorFlow
    Building GANs using Deep Learning Libraries
    Implementing Diffusion Models and Basic Transformers
  • Contemporary Applications and Case Studies
  • High-fidelity Data Generation
    Multimodal AI Systems
    Domain-specific Generative AI Applications
  • Course Project
  • Designing and Implementing a Generative Model
    Real-world Application Development
  • Conclusion and Future Trends in Generative AI
  • Evolving Architectures and Techniques
    Ethical Considerations and Best Practices
  • Evaluation
  • Quizzes and Assignments
    Final Project Presentation and Report

נלמד על ידי

Prof. Sriram Ganapathy, Prof. Ashwini Kodipalli, Prof. Baishali Garai


נושאים

Artificial Intelligence