Complex Prompt
Complex prompt engineering focuses on optimizing the input instructions given to large language models (LLMs) to elicit desired outputs, improving performance and control over these powerful tools. Current research explores various prompting techniques, including multi-step prompting, prefix-tuning, and reinforcement learning-based optimization, often applied to models like GPT and Llama series, to enhance LLM capabilities in diverse tasks such as text generation, image creation, and question answering. This field is significant because effective prompt engineering is crucial for unlocking the full potential of LLMs and mitigating their limitations, impacting various applications from software development to scientific research and beyond.
Papers
Learning to Compress Prompt in Natural Language Formats
Yu-Neng Chuang, Tianwei Xing, Chia-Yuan Chang, Zirui Liu, Xun Chen, Xia Hu
Chaining text-to-image and large language model: A novel approach for generating personalized e-commerce banners
Shanu Vashishtha, Abhinav Prakash, Lalitesh Morishetti, Kaushiki Nag, Yokila Arora, Sushant Kumar, Kannan Achan
UniVS: Unified and Universal Video Segmentation with Prompts as Queries
Minghan Li, Shuai Li, Xindong Zhang, Lei Zhang