Best in Technology
  • Home
  • Technology
  • Reviews
  • Gadgets
  • World News
  • Tips
  • Gaming
  • Science
  • Entertainment
No Result
View All Result
  • Login
Best in Technology
  • Home
  • Technology
  • Reviews
  • Gadgets
  • World News
  • Tips
  • Gaming
  • Science
  • Entertainment
No Result
View All Result
  • Login
Best in Technology
No Result
View All Result

Instead of fine-tuning an LLM as a first approach, try prompt architecting instead

Best In Technology by Best In Technology
September 18, 2023
0 0
0
38
SHARES
173
VIEWS
Share on FacebookShare on Twitter

Victoria Albrecht
Contributor

Amid the generative AI eruption, innovation directors are bolstering their business’ IT department in pursuit of customized chatbots or LLMs. They want ChatGPT but with domain-specific information underpinning vast functionality, data security and compliance, and improved accuracy and relevance.

The question often arises: Should they build an LLM from scratch, or fine-tune an existing one with their own data? For the majority of companies, both options are impractical. Here’s why.

TL;DR: Given the right sequence of prompts, LLMs are remarkably smart at bending to your will. The LLM itself or its training data need not be modified in order to tailor it to specific data or domain information.

Exhausting efforts in constructing a comprehensive “prompt architecture” is advised before considering more costly alternatives. This approach is designed to maximize the value extracted from a variety of prompts, enhancing API-powered tools.

TL;DR: Given the right sequence of prompts, LLMs are remarkably smart at bending to your will.

If this proves inadequate (a minority of cases), then a fine-tuning process (which is often more costly due to the data prep involved) might be considered. Building one from scratch is almost always out of the question.

The sought-after outcome is finding a way to leverage your existing documents to create tailored solutions that accurately, swiftly, and securely automate the execution of frequent tasks or the answering of frequent queries. Prompt architecture stands out as the most efficient and cost-effective path to achieve this.

What’s the difference between prompt architecting and fine-tuning?

If you are considering prompt architecting, you have likely already explored the concept of fine-tuning. Here is the key distinction between the two:

While fine-tuning involves modifying the underlying foundational LLM, prompt architecting does not.

Fine-tuning is a substantial endeavor that entails retraining a segment of an LLM with a large new dataset — ideally your proprietary dataset. This process imbues the LLM with domain-specific knowledge, attempting to tailor it to your industry and business context.

In contrast, prompt architecting involves leveraging existing LLMs without modifying the model itself or its training data. Instead, it combines a complex and cleverly engineered series of prompts to deliver consistent output.

Fine-tuning is appropriate for companies with the most stringent data privacy requirements (e.g., banks)

Previous Post

Panos Panay, leader of the Surface and Windows teams, is leaving Microsoft

Next Post

Xiaomi 13T series pricing leaks yet again, it’s at least €300 lower than the Xiaomi 13 series

Next Post

Xiaomi 13T series pricing leaks yet again, it's at least €300 lower than the Xiaomi 13 series

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recent Posts

  • How to track your moods in watchOS 10
  • Resident Evil 4: Separate Ways DLC Review
  • Redmi Note 13 and Note 13 Pro also unveiled
  • Communia hopes to build a digital safe space for women
  • Fish adapted to the deep sea 80 million years earlier than we thought

Categories

  • Entertainment
  • Gadgets
  • Gaming
  • Reviews
  • Science
  • Technology
  • Tips
  • trending
  • World News

Copyright© 2022 Best In Technology

  • About
  • Privacy Policy
  • DMCA
  • Disclaimers
  • Editorial Policy
No Result
View All Result
  • Home
  • Technology
  • Reviews
  • Gadgets
  • World News
  • Tips
  • Gaming
  • Science
  • Entertainment

© 2022 All Rights Reserved – Best In Technology

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In