Aug. 29, 2023, 12:06 p.m. | Karol Horosin

Hacker Noon - ai hackernoon.com

The article discusses the practical implementation of fine-tuning OpenAI's GPT-3.5 model using Python. It explains how to achieve better performance, shorter prompts, and cost savings on API calls by fine-tuning the model with synthetic data from GPT-4. The article presents a use case involving JSON output formatting for generating fake identity data. It guides through steps such as preparing synthetic training data, data formatting, fine-tuning the model, and testing the results. It highlights the potential of fine-tuning to achieve specific …

ai api article case chatgpt cost cost savings data example fake fine-tuning future-of-ai gpt gpt-3 gpt-3.5 gpt-4 guides identity identity data implementation json openai performance practical programming prompts python synthetic synthetic data

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