LLM Generation
Large language model (LLM) generation focuses on leveraging LLMs to create various forms of text and structured data, aiming to improve efficiency and quality in tasks like translation, code generation, and question answering. Current research emphasizes enhancing LLM reasoning capabilities through techniques like chain-of-thought prompting and agent-based frameworks, as well as improving evaluation methods by using multiple LLMs as judges and developing metrics for nuanced aspects like attribute intensity control. This field is significant because it addresses limitations in existing LLMs, such as hallucinations and biases, and has the potential to automate complex tasks across diverse domains, including lexicography, software development, and data augmentation.
Papers
Information for Conversation Generation: Proposals Utilising Knowledge Graphs
Alex Clay, Ernesto Jiménez-Ruiz
MagicPIG: LSH Sampling for Efficient LLM Generation
Zhuoming Chen, Ranajoy Sadhukhan, Zihao Ye, Yang Zhou, Jianyu Zhang, Niklas Nolte, Yuandong Tian, Matthijs Douze, Leon Bottou, Zhihao Jia, Beidi Chen