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Learner Reviews & Feedback for Generative AI Advance Fine-Tuning for LLMs by IBM

4.3
stars
76 ratings

About the Course

"Fine-tuning large language models (LLMs) is essential for aligning them with specific business needs, improving accuracy, and optimizing performance. In today’s AI-driven world, organizations rely on fine-tuned models to generate precise, actionable insights that drive innovation and efficiency. This course equips aspiring generative AI engineers with the in-demand skills employers are actively seeking. You’ll explore advanced fine-tuning techniques for causal LLMs, including instruction tuning, reward modeling, and direct preference optimization. Learn how LLMs act as probabilistic policies for generating responses and how to align them with human preferences using tools such as Hugging Face. You’ll dive into reward calculation, reinforcement learning from human feedback (RLHF), proximal policy optimization (PPO), the PPO trainer, and optimal strategies for direct preference optimization (DPO). The hands-on labs in the course will provide real-world experience with instruction tuning, reward modeling, PPO, and DPO, giving you the tools to confidently fine-tune LLMs for high-impact applications. Build job-ready generative AI skills in just two weeks! Enroll today and advance your career in AI!"...

Top reviews

RN

Mar 10, 2025

This course is a great resource for learners, providing deep insights and practical skills in fine-tuning large language models for advanced AI applications.

SG

Mar 10, 2025

An excellent course with a wealth of high-quality material, featuring highly informative lessons such as DPO and PPO.

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1 - 18 of 18 Reviews for Generative AI Advance Fine-Tuning for LLMs

By Rafael V

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Jan 5, 2025

There were many typos and issues with the code in the labs that needed to be troubleshooted independently to get them to run properly.

By Bevan J

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Nov 26, 2024

The videos lacked a consistent storyline, and the mathematics was poorly presented -> Showing steps is better than abusing Manim to make nice animations.

By Abderrazagh M

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Oct 30, 2024

Sharing hugging face web page without any other content might be more interesting than the provided content: brief notion without clear and concise explantion or intuition, a lot formula without clear demonstrations, etc. ...

By Niveditha

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Mar 10, 2025

Generative AI: Advanced Fine-Tuning for LLMs is an outstanding course that dives deep into the intricacies of customizing large language models. With a strong focus on practical implementation, it covers advanced fine-tuning techniques, optimization strategies, and real-world applications. Ideal for AI practitioners looking to enhance model performance, this course balances theory with hands-on labs, making complex concepts accessible and actionable

By Rao N N

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Mar 11, 2025

This course is a great resource for learners, providing deep insights and practical skills in fine-tuning large language models for advanced AI applications.

By Sowmyaa G

•

Mar 11, 2025

An excellent course with a wealth of high-quality material, featuring highly informative lessons such as DPO and PPO.

By Monika S

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Mar 11, 2025

The course gave me a good understanding of fine-tuning LLMs. It made complex topics easy to learn.

By Anita v

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Mar 11, 2025

Very Informative – Covers advanced fine-tuning techniques in a clear and structured way

By Geetika P

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Mar 10, 2025

Great course, love the deep-rooted content. All my concepts are so clear now. Kudos!!

By LO W

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Nov 21, 2024

Latest fine tuning techniques are presented in an easy-to-understand way

By Yevhen S

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Dec 28, 2024

Greate for the people, who wants to build an actual AI

By Pooja P

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Mar 10, 2025

Great course, very helpful

By Manvi G

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Mar 11, 2025

Amazing content!!

By lavanya s

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Mar 11, 2025

Excellent course

By khushbu v

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Mar 11, 2025

Great course!!

By Julian G

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Oct 4, 2024

Great course

By Sathya P

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Mar 10, 2025

Good course

By raul v r

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Oct 21, 2024

Good content. Improvable documentation.