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Exploring Fine-Tuning in LLM Models
The chapter discusses the concept of fine-tuning in large language models, highlighting its relative simplicity compared to other deep learning tasks. It covers when to consider fine-tuning, benefits in customizing pre-existing models for specific tasks, and considerations related to data privacy and ongoing model management. Examples from real-world applications, like text to SQL tasks, are provided to illustrate the effectiveness of fine-tuning in enhancing model capabilities for narrow tasks.