Real World
Research on "real-world" applications focuses on bridging the gap between simulated and real-world environments, particularly for complex tasks like robotics, autonomous driving, and natural language processing. Current efforts utilize various model architectures, including large language models (LLMs), diffusion models, reinforcement learning (RL), and graph neural networks, to improve robustness, generalization, and efficiency in diverse real-world scenarios. This research is crucial for advancing AI capabilities beyond controlled settings and enabling practical applications in areas such as healthcare, manufacturing, and transportation, while also addressing challenges like data scarcity, safety, and bias.
Papers
Bayesian Physics-Informed Neural Networks for real-world nonlinear dynamical systems
Kevin Linka, Amelie Schafer, Xuhui Meng, Zongren Zou, George Em Karniadakis, Ellen Kuhl
Infrared Invisible Clothing:Hiding from Infrared Detectors at Multiple Angles in Real World
Xiaopei Zhu, Zhanhao Hu, Siyuan Huang, Jianmin Li, Xiaolin Hu
Bridging the Gap between Reality and Ideality of Entity Matching: A Revisiting and Benchmark Re-Construction
Tianshu Wang, Hongyu Lin, Cheng Fu, Xianpei Han, Le Sun, Feiyu Xiong, Hui Chen, Minlong Lu, Xiuwen Zhu
Blocks Assemble! Learning to Assemble with Large-Scale Structured Reinforcement Learning
Seyed Kamyar Seyed Ghasemipour, Daniel Freeman, Byron David, Shixiang Shane Gu, Satoshi Kataoka, Igor Mordatch
Multi-View Dreaming: Multi-View World Model with Contrastive Learning
Akira Kinose, Masashi Okada, Ryo Okumura, Tadahiro Taniguchi