Enable javascript in your browser for better experience. Need to know to enable it? Go here.

Rush to fine-tune LLMs

Published : Apr 03, 2024
NOT ON THE CURRENT EDITION
This blip is not on the current edition of the Radar. If it was on one of the last few editions, it is likely that it is still relevant. If the blip is older, it might no longer be relevant and our assessment might be different today. Unfortunately, we simply don't have the bandwidth to continuously review blips from previous editions of the Radar. Understand more
Apr 2024
Hold ?

As organizations are looking for ways to make large language models (LLMs) work in the context of their product, domain or organizational knowledge, we're seeing a rush to fine-tune LLMs. While fine-tuning an LLM can be a powerful tool to gain more task-specificity for a use case, in many cases it’s not needed. One of the most common cases of a misguided rush to fine-tuning is about making an LLM-backed application aware of specific knowledge and facts or an organization's codebases. In the vast majority of these cases, using a form of retrieval-augmented generation (RAG) offers a better solution and a better cost-benefit ratio. Fine-tuning requires considerable computational resources and expertise and introduces even more challenges around sensitive and proprietary data than RAG. There is also a risk of underfitting, when you don't have enough data available for fine-tuning, or, less frequently, overfitting, when you have too much data and are therefore not hitting the right balance of task specificity that you need. Look closely at these trade-offs and consider the alternatives before you rush to fine-tune an LLM for your use case.

Download the PDF

 

 

 

English | Español | Português | 中文

Sign up for the Technology Radar newsletter

 

Subscribe now

Visit our archive to read previous volumes