An Experimental Study of Prompt Engineering Techniques for Optimizing Large Language Model Inference

Authors

  • Kumar Kasimala Author

Keywords:

prompt-based learning; pretrained language models; few-shot learning; AutoPrompt; PET; LM-BFF; prefix-tuning; prompt tuning

Abstract

Prompt-based learning emerged as a major paradigm shift in natural language processing by enabling pretrained language models to perform downstream tasks through input reformulation rather than full task specific retraining. This review synthesizes influential studies published up to 2021 and evaluates how prompt-based methods improved inference effectiveness, few-shot adaptation, and parameter efficiency. 

Downloads

Published

01-10-2023

How to Cite

An Experimental Study of Prompt Engineering Techniques for Optimizing Large Language Model Inference. (2023). AI Tech International Journal, ISSN: 3079-4749, 1(1), 110-115. https://techaijournal.com/index.php/AIjournal/article/view/35

Similar Articles

11-20 of 20

You may also start an advanced similarity search for this article.