Description

This session introduces learners to the key differences between foundational and fine-tuned large language models (LLMs). It explains how foundational models serve as broad, general-purpose AI systems trained on massive multimodal datasets, while fine-tuned models are specialized derivatives optimized for specific domains and tasks. Learners will explore each model’s training process—from large-scale pretraining to supervised fine-tuning and reinforcement learning with human feedback (RLHF). The module includes real-world examples such as GPT, BERT, Claude, and Med-PaLM, illustrating their diverse applications in industry. Participants will also learn how to evaluate strengths, limitations, and appropriate model selection strategies across enterprise contexts.

Curriculum


  Introduction and Overview
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  Module-1
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  Module- 2
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  Quiz
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  Module-3
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  Module-4
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  Quiz
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