The speaker discusses the creation of the open Orca data set, which was a reproduction of a proprietary data set. They explain how they validated the answers generated by GPT-4 using OpenChat, and then filtered the data set accordingly. This process resulted in a retrained model with the same performance as the original model, using 30% less data. The speaker emphasizes the importance of putting thought into data sets and suggests that understanding the quantity of data and resources required for fine-tuning models would be helpful for people.

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