The Evolution of Natural Language Processing: How Prompt Optimization and Language Models are Shaping the Future
Summra Saleem, Muhammad Nabeel Asim, Shaista Zulfiqar, Andreas Dengel

TL;DR
This paper offers a comprehensive analysis of prompt optimization strategies in NLP, categorizing them into 11 classes, and evaluates their application across various tasks and models to facilitate future research and development.
Contribution
It provides a detailed categorization and analysis of prompt optimization strategies, filling a critical gap in systematic understanding and comparison in NLP.
Findings
Categorized prompt optimization strategies into 11 classes.
Analyzed their application across multiple NLP tasks and models.
Established a foundation for future comparative and development efforts.
Abstract
Large Language Models (LLMs) have revolutionized the field of Natural Language Processing (NLP) by automating traditional labor-intensive tasks and consequently accelerated the development of computer-aided applications. As researchers continue to advance this field with the introduction of novel language models and more efficient training/finetuning methodologies, the idea of prompt engineering and subsequent optimization strategies with LLMs has emerged as a particularly impactful trend to yield a substantial performance boost across diverse NLP tasks. To best of our knowledge numerous review articles have explored prompt engineering, however, a critical gap exists in comprehensive analyses of prompt optimization strategies. To bridge this gap this paper provides unique and comprehensive insights about the potential of diverse prompt optimization strategies. It analyzes their…
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