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Prompt Engineering With Enterprise Information for LLMs and GenAI

 9 months ago
source link: https://www.gartner.com/en/documents/4520799
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Published: 12 July 2023

Summary

Training and fine-tuning custom large language models for generative artificial intelligence is beyond the capabilities of most organizations. Technical professionals can use prompt engineering and in-context learning to meet the needs of most generative AI scenarios.

Included in Full Research

Key Findings
  • Training and fine-tuning custom large language models (LLMs) is impractical for most organizations. The technical and computational requirements call for very mature data management practices and significant data science expertise.

  • Most enterprise use cases can be accomplished with a combination of prompt engineering and in-context learning to ground LLM responses in enterprise information and constraints. Several approaches to prompt creation are available to support generative AI (GenAI) applications.

  • Retrieval augmented generation is a practical approach to prompt engineering that incorporates private and proprietary enterprise information into GenAI applications without requiring the underlying model to be modified in any way.

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Technical professionals

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Analysts:

Darin Stewart


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