GenAI Pinnacle Plus Program

Master Generative AI & AI Agents with 50+ Hands-On Projects

  • Master GenAI & AI Agents: Build expertise with 50+ hands-on, real-world projects.
  • Real-World Projects: Solve diverse challenges, from AI Agents to GenAI solutions.
  • Guided Projects: Follow step-by-step instructions to build & deploy AI Agents.

Become a GenAI and Agentic AI Expert : Start Now

50+ GenAI Projects & AI Agents to Turn Theory into Practice

Master ChatGPT, Build RAG Systems, and Develop AI Agents- These 50+ Projects Drive Innovation

Learning Objective:

  • Train and evaluate LLMs from scratch
  • Learn LLM best practices and setup
  • Implement advanced computing strategies
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Training Large Language Models

Learning Objective:

  • Master building a ChatGPT-like LLM
  • Apply pretraining, finetuning, RLHF
  • Learn dialogue-optimized LLM practices
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ChatGPT Model Building

Learning Objective:

  • Create a RAG-based QA Chatbot
  • Develop apps end-to-end with LangChain and Streamlit
  • Integrate app UI and backend seamlessly
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Building end-to-end RAG Apps

Learning Objective:

  • Construct Conversational Bots with LLMs including ChatGPT
  • Develop AI Instruments and Agents via LangChain
  • Establish and Manage LLM Applications using LangChain
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Build Conversational Apps and Agents

Learning Objective:

  • Enhance search accuracy in RAG systems through reranking
  • Apply RAG system techniques from cutting-edge studies
  • Construct RAG systems for diverse data types including tables, text, and images
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Advanced RAG System Development

Learning Objective:

  • Master prompt engineering techniques
  • Build chatbots using ChatGPT API
  • Implement LLMs on private data
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Prompt-Driven LLM Apps

Learning Objective:

  • Build RAG systems using LlamaIndex
  • Explore advanced LlamaIndex components
  • Fine-tune embeddings and retrieval
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RAG System Development

Learning Objective:

  • Efficient LLM finetuning with PEFT
  • Apply LoRA, QLoRA, soft prompting
  • Build instruction-following LLMs
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LLM PEFT Finetuning

Learning Objective:

  • Fine-tune Stable Diffusion for datasets
  • Apply best practices in customization
  • Understand Stable Diffusion intricacies
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Customized Diffusion Model Tuning

Learning Objective:

  • Build Text to Image models with DreamBooth
  • Implement DreamBooth on personal datasets
  • Create context-specific visual models
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DreamBooth Image Creation

Learning Objective:

  • Fine-tune diffusion models with ControlNets
  • Optimize InstructPix2Pix in diffusion models
  • Tailor models for specific datasets
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Diffusion Model Refinement

GenAI Scholarship Week

100% Scholarship* (Excluding Taxes)

  • Complete the entire program, including the Capstone Project and all upcoming modules, till March 31, 2025 (within 9 months of enrollment).
  • The full fees will be refunded, excluding payment gateway fees (up to 10%).

Enrollment closes in

  • 1

    Day
  • 5

    hr
  • 35

    min
  • 20

    Sec
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