ExamGecko
Question list
Search
Search

Question 33 - D-GAI-F-01 discussion

Report
Export

A company wants to develop a language model but has limited resources.

What is the main advantage of using pretrained LLMs in this scenario?

A.
They save time and resources
Answers
A.
They save time and resources
B.
They require less data
Answers
B.
They require less data
C.
They are cheaper to develop
Answers
C.
They are cheaper to develop
D.
They are more accurate
Answers
D.
They are more accurate
Suggested answer: A

Explanation:

Pretrained Large Language Models (LLMs) like GPT-3 are advantageous for a company with limited resources because they have already been trained on vast amounts of data. This pretraining process involves significant computational resources over an extended period, which is often beyond the capacity of smaller companies or those with limited resources.

Advantages of using pretrained LLMs:

Cost-Effective: Developing a language model from scratch requires substantial financial investment in computing power and data storage. Pretrained models, being readily available, eliminate these initial costs.

Time-Saving: Training a language model can take weeks or even months. Using a pretrained model allows companies to bypass this lengthy process.

Less Data Required: Pretrained models have been trained on diverse datasets, so they require less additional data to fine-tune for specific tasks.

Immediate Deployment: Pretrained models can be deployed quickly for production, allowing companies to focus on application-specific improvements.

In summary, the main advantage is that pretrained LLMs save time and resources for companies, especially those with limited resources, by providing a foundation that has already learned a wide range of language patterns and knowledge. This allows for quicker deployment and cost savings, as the need for extensive data collection and computational training is significantly reduced.

asked 16/09/2024
Elvis WANDJI NGASSA
43 questions
User
Your answer:
0 comments
Sorted by

Leave a comment first