This course explores optimization, fine-tuning, and AI alignment. You'll gain hands-on experience with OpenAI's fine-tuning APIs, learning to customize models for specific needs across various domains, from research to business applications. Discover advanced prompt engineering techniques to refine and enhance model outputs, ensuring they align with human expectations and preferences. Through detailed case studies, you'll learn to create powerful recommendation engines using customized embeddings, outperforming standard solutions. Additionally, the course addresses the financial aspects of AI, demonstrating how to achieve superior performance without excessive costs.



Quick Start Guide to Large Language Models (LLMs): Unit 2
This course is part of Quick Start Guide to Large Language Models (LLMs) Specialization

Instructor: Pearson
Access provided by Tan Tao University
Recommended experience
What you'll learn
Master fine-tuning techniques to optimize LLM performance for specific tasks.
Develop advanced prompt engineering skills for nuanced and comprehensive outputs.
Create customized embeddings and model architectures for superior AI solutions.
Understand AI alignment principles to ensure models meet human expectations.
Skills you'll gain
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4 assignments
July 2025
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There is 1 module in this course
This module begins with an exploration of optimization, focusing on what it means to maximize the performance of a large language model (LLM). Through the process of fine-tuning, you will learn the techniques required to customize these powerful models to meet specific needs, whether in research, business, or other domains. The course includes hands-on experience with OpenAI's fine-tuning APIs, bridging the gap between custom data and the capabilities of LLMs. In his module, you also tackles the common concern of cost. You will learn how to achieve superior AI performance without excessive expenditure, striking a delicate balance between efficiency and budget. Building on initial prompt engineering concepts, the course dives into advanced techniques focused on refining, validating, and iterating to improve the interaction between humans and LLMs. Further customization is explored through the creation of personalized embeddings and model architectures. Moving beyond off-the-shelf solutions, you will engage with comprehensive case studies, such as crafting a recommendation engine powered by a tailored, fine-tuned LLM embedding model. The module also introduces the topic of AI alignment, focusing on guiding AI to act in ways that humans generally prefer and expect. This module is designed to equip you with the skills and knowledge to not just use, but to maximize the potential of large language models.
What's included
18 videos4 assignments
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