Fine-Tuning vs Prompt Engineering: A Comparative Guide



Approach Description Advantages Disadvantages
Fine-Tuning
Fine-Tuning is a method where a pre-trained model is further trained on a specific task. The idea is to leverage the knowledge that the model has already learned from the pre-training phase and apply it to the specific task.
  • Can improve model performance on specific tasks.
  • Can be faster and more efficient than training a model from scratch.
  • Allows for customization of the model to specific tasks.
  • Requires a large amount of labeled data for the specific task.
  • Can lead to overfitting if not done properly.
  • May not always lead to improved performance.
Prompt Engineering
Prompt Engineering is a method where the input to the model is carefully crafted to guide the model's output. This can involve adding specific words or phrases to the input that guide the model towards the desired output.
  • Can guide the model towards the desired output without additional training.
  • Can be used to improve the performance of a model on specific tasks.
  • Allows for customization of the model's output.
  • Requires a deep understanding of the model and the task at hand.
  • Can be time-consuming to craft the perfect prompt.
  • May not always lead to the desired output.



Beginner-guide-of-prompt-engi    Chain-of-thoughts    Context-in-prompt-engineering    Customize-ai-with-prompts    Debugging-prompts    Dynamic-prompt-templates    Effective-prompt-design    Ethics-of-prompt-engineering    Few-shot-vs-zero-shot    Fine-tuning-vs-prompt-enginee   

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KreateBots

  • Pre built front end that you can configure
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  • Prompt management UI
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  • Available on - GCP,Azure,AWS.
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  • Premium Hosting - Azure, GCP,AWS
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  • Available on Azure Marketplace too.
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