Back to Generative AI Advance Fine-Tuning for LLMs
IBM

Generative AI Advance Fine-Tuning for LLMs

"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!"

Status: Model Evaluation
Status: Large Language Modeling
IntermediateCourse9 hours

Featured reviews

GP

5.0Reviewed Mar 11, 2025

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

MS

5.0Reviewed Mar 11, 2025

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

SG

5.0Reviewed Aug 21, 2025

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

RN

5.0Reviewed 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.

AV

5.0Reviewed Mar 11, 2025

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

All reviews

Showing: 20 of 23

Rafael Valentin
3.0
Reviewed Jan 6, 2025
Abderrazagh MBODJ
1.0
Reviewed Oct 31, 2024
Bevan Jones
2.0
Reviewed Nov 27, 2024
Conor John Cremin
1.0
Reviewed Aug 11, 2025
Niveditha
5.0
Reviewed Aug 21, 2025
Rao Nikesh NK
5.0
Reviewed Mar 11, 2025
Sowmyaa Gurusamy
5.0
Reviewed Aug 21, 2025
Monika Singh
5.0
Reviewed Mar 11, 2025
Anita verma
5.0
Reviewed Mar 11, 2025
Geetika Pal
5.0
Reviewed Mar 11, 2025
LO WingChong
5.0
Reviewed Nov 22, 2024
Yevhen Solovei
5.0
Reviewed Dec 28, 2024
Santiago Murcia
5.0
Reviewed Aug 7, 2025
Pooja Patel
5.0
Reviewed Mar 11, 2025
Manvi Gupta
5.0
Reviewed Mar 11, 2025
lavanya srivastava
5.0
Reviewed Mar 11, 2025
khushbu verma
5.0
Reviewed Mar 11, 2025
Julian Gonzalez
5.0
Reviewed Oct 5, 2024
Shaniki Smith
5.0
Reviewed Sep 26, 2025
Sathya Priya
5.0
Reviewed Aug 21, 2025