AlexandrosChrtn/llama-fine-tune-guide
Fine-tune the newly released Llama-3.2 lightweight models.
This guide helps AI developers customize Llama-3.2 models for specific tasks. You provide your own dataset, and the guide walks you through adapting the model's responses to better suit your unique data and domain. The output is a fine-tuned Llama-3.2 model that understands and generates text relevant to your specific needs.
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Use this if you are an AI developer looking to adapt a Llama-3.2 model to perform better on a niche text-based task with your own data.
Not ideal if you are a non-technical user without experience in machine learning model training or Python scripting.
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Language
Python
License
MIT
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Last pushed
Oct 24, 2024
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