Sale!

Generative AI Mastery Course

Original price was: USD $120.00.Current price is: USD $59.00.

Unlock the future of AI with the Generative AI Mastery Course a comprehensive course designed for innovators, professionals, and tech enthusiasts who want to harness the full potential of AI. Dive deep into the world of generative AI, learning how to create stunning AI-generated content, build intelligent applications, and understand cutting-edge AI models.

Attribute
Details
Format
Online, modular, self-paced with guided labs
Level
Advanced / Professional
Duration
8–10 weeks (40–50 hours total)
Mode
Interactive lectures + hands-on labs
Tools Used
Python, PyTorch, Hugging Face Transformers, Stable Diffusion, Jupyter Notebooks
Hands-On Component
Model training, fine-tuning, RAG system deployment
Target Audience
Researchers, AI engineers, data scientists, advanced students
Domain Relevance
Generative AI, Machine Learning, NLP, Computer Vision

About the Course
This course addresses a critical gap in advanced AI education: understanding the operational mechanics of generative models while developing practical skills to deploy them. Practical modules include fine-tuning large language models with LoRA/QLoRA, building multimodal applications, and responsibly deploying generative AI workflows. By combining theory, experiment, and deployment, the course prepares learners to apply generative AI in research, product development, and AI system engineering.

Why This Topic Matters
Generative AI systems are increasingly integrated into real-world applications from content creation and synthetic data generation to automated code synthesis and multimodal AI solutions.
  • Research Demand: Academic labs are exploring novel architectures for text, image, and multimodal generation.
  • Industry Adoption: Companies require professionals who can fine-tune, evaluate, and deploy models efficiently.
  • Technical Challenge: Building robust generative systems involves understanding latent representations, probabilistic sampling, and model scaling.
  • Cross-Disciplinary Relevance: Applications span NLP, computer vision, robotics, and digital media.

Understanding VAEs, GANs, diffusion models and LLMs is no longer optiona it is a practical requirement for advanced AI research and implementation.

What Participants Will Learn
• How VAEs and GANs generate high-quality data and the differences in their latent spaces
• Mechanisms behind diffusion models and their application in image and audio generation
• Transformer architectures powering modern LLMs and techniques for efficient fine-tuning
• Prompt engineering strategies for text, image, and multimodal systems
• Constructing RAG pipelines for knowledge-grounded AI responses
• Deployment workflows for scalable generative AI systems
• Ethical and responsible practices for generative AI deployment

Course Structure

Module 1 — Foundations of Generative AI
  • Overview of generative model categories
  • Latent space theory and probabilistic modeling
  • Introduction to VAEs and GANs
  • Core mathematical principles for generative modeling

Module 2 — Advanced Model Architectures
  • Deep dive into diffusion models and stochastic sampling
  • Transformer architectures in LLMs
  • Attention mechanisms and scaling strategies
  • Multimodal AI pipelines overview

Module 3 — Practical Training & Fine-Tuning
  • LoRA and QLoRA for efficient model adaptation
  • Dataset preparation and preprocessing
  • Fine-tuning LLMs for domain-specific tasks
  • Evaluating model outputs: metrics and benchmarks

Module 4 — Applied Generative AI Systems
  • Prompt engineering for text, image, and multimodal inputs
  • Building and deploying RAG systems
  • Integrating generative models into production workflows
  • Case studies in NLP, computer vision, and multimodal AI

Tools, Techniques, or Platforms Covered
Python
PyTorch
Hugging Face Transformers
Jupyter Notebooks
Stable Diffusion
LoRA / QLoRA
Vector Databases / RAG (FAISS, Pinecone, Weaviate)

Real-World Applications
  • Research Workflows: Synthetic data generation, simulation augmentation, model evaluation experiments
  • Product Development: AI-powered content, chatbots, image synthesis applications
  • NLP & CV Integration: Knowledge-grounded LLMs, multimodal models, visual question answering
  • Industry Deployment: Scalable generative systems for marketing, media, and AI product teams
  • Academic Projects: Experiments with GANs, diffusion models, and LLMs in research settings

Who Should Attend
  • AI researchers and graduate students exploring generative architectures
  • Data scientists and ML engineers aiming to deploy generative systems
  • Professionals interested in prompt engineering, LLM fine-tuning, or RAG pipelines
  • Faculty or lab leads designing AI experiments or teaching generative AI concepts

Prerequisites: Intermediate Python, basic ML understanding, familiarity with deep learning frameworks. No prior generative AI experience required.

Why This Course Stands Out
Integrates theory and hands-on implementation, not just pre-built demos. Covers multiple generative AI architectures: VAEs, GANs, diffusion models, LLMs. Provides applied RAG system development and deployment workflows. Explains model fine-tuning methods (LoRA, QLoRA) with reproducible examples. Designed for researchers and professionals seeking transferable skills, not casual exposure.

Reviews

There are no reviews yet.

Be the first to review “Generative AI Mastery Course”

Your email address will not be published. Required fields are marked *

Certificate Image

What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

All Live Workshops

AI for Ecosystem Intelligence, Biodiversity Monitoring & Restoration Planning

Feedbacks

I was satisfied with the workshop


Salman Maricar : 09/27/2024 at 6:47 pm

Prediction of Protein Structure Using AlphaFold: An Artificial Intelligence (AI) Program

Nice clear presentation.


Liam Cassidy : 07/01/2024 at 2:47 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

All facilities have explained everything nicely.


Veenu Choudhary : 05/19/2024 at 4:14 pm

Analysis of Drug like Small Molecule using ChemmineR: A Cheminformatics Toolkit for R

Information about different platforms drugs surching can be done in less time. Sir you explained More really well.
Urmi Chouhan : 07/22/2024 at 11:52 am

In Silico Molecular Modeling and Docking in Drug Development

informative lecture


Sheenam Sharma : 04/08/2024 at 9:27 am

CRISPR-Cas Genome Editing: Workflow, Tools and Techniques, CRISPR-Cas Genome Editing: Tools & Techniques

Thankyou so much for such an insightful session and sharing with us the knowldege of the technique More in an easy to understand manner . Looking forward to learn from you.
Ketki Sujeet Kulkarni : 04/16/2025 at 11:46 am

Carbon Fiber Reinforced Plastics (CFRPs)

mentor is highly skillful with indepth knowledge about the subject


LAXMI K : 11/19/2024 at 1:16 pm

Green Synthesis of Nanoparticles and their Biomedical Applications

The course was well communicated and interactive


Elizabeth Makauki : 09/06/2024 at 11:55 pm