LLM Based
Large language model (LLM)-based systems are rapidly advancing, aiming to improve efficiency and accuracy across diverse applications. Current research focuses on optimizing LLM performance through techniques like multi-agent systems, adaptive reward model selection (e.g., using multi-armed bandits), and integrating LLMs with symbolic methods for enhanced reasoning and planning capabilities. This work is significant because it addresses limitations of existing LLMs, such as inconsistency, hallucination, and computational cost, leading to more robust and reliable AI systems for various domains including healthcare, robotics, and software engineering.
Papers
Cross-Data Knowledge Graph Construction for LLM-enabled Educational Question-Answering System: A Case Study at HCMUT
Tuan Bui, Oanh Tran, Phuong Nguyen, Bao Ho, Long Nguyen, Thang Bui, Tho Quan
A Survey on Integration of Large Language Models with Intelligent Robots
Yeseung Kim, Dohyun Kim, Jieun Choi, Jisang Park, Nayoung Oh, Daehyung Park