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Reinforcement Learning from Human Feedback

Large language models (LLMs) are trained on human-generated text, but additional methods are needed to align an LLM with human values and preferences. Reinforcement Learning from Human Feedback (RLHF) is currently the main method for aligning LLMs with human values and preferences. RLHF is also used for further tuning a base LLM to align with values and preferences that are specific to your use case. In this course, you will gain a conceptual understanding of the RLHF training process, and then practice applying RLHF to tune an LLM. You will: 1. Explore the two datasets that are used in RLHF training: the “preference” and “prompt” datasets. 2. Use the open source Google Cloud Pipeline Components Library, to fine-tune the Llama 2 model with RLHF. 3. Assess the tuned LLM against the original base model by comparing loss curves and using the “Side-by-Side (SxS)” method.

Status: Prompt Engineering
Status: Reinforcement Learning
IntermediateProject1 hour

Featured reviews

AA

5.0Reviewed Jun 18, 2025

better to be expanded a bit, but overall, it is super course

ME

4.0Reviewed Jan 11, 2025

Overall worth a shot. Not in depth but good overview

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Showing: 6 of 6

Ahmad Alsharef
5.0
Reviewed Jun 19, 2025
Neil
5.0
Reviewed Aug 17, 2025
sajjad shahali
5.0
Reviewed May 14, 2025
Fady Ashraf Sulaiman
4.0
Reviewed Dec 12, 2024
Manideep Reddy Enugala
4.0
Reviewed Jan 12, 2025
Alessandro Varriale
4.0
Reviewed Aug 28, 2024