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You can see the process with instructions for creating the model in the notebook: Aligning_DPO_phi3.ipynb

To create it, we started with the Phi-3-Mini-4K-Instruct model and applied DPO alignment using the distilabel-capybara-dpo-7k-binarized dataset.

Phi-3 is a state-of-the-art model with 3.8 billion parameters that has outperformed other models with 7 billion parameters. The DPO alignment process has produced good results, modifying the model's responses and making them more similar to those in the capybara dataset.

Row in the Dataset:

{'prompt': '<|user|>\nAssist me in calculating 9319357631 plus 595. Numbers and symbols only, please.<|end|>\n<|assistant|>\n', 'chosen': 'The sum of 9319357631 and 595 is 9319358226.<|end|>\n', 'rejected': 'The result of adding 9319357631 and 595 is 9319363626.<|end|>\n'}

Prompt: 3713841893836/4? Limit your response to mathematical expressions and symbols.

Response from the Base model:

To find the result of the division, we can simply divide the given number by 4: $$ \frac{3713841893836}{4} = 928460473459

Response from the fine-tuned model:

3713841893836 ÷ 4 = 928460473459

If you want to see how the model was created, you can check out the repository where the book's notebooks are kept up-to-date.

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Dataset used to train oopere/martra-phi-3-mini-dpo