no code implementations • 19 Oct 2023 • Jiaming Ji, Borong Zhang, Jiayi Zhou, Xuehai Pan, Weidong Huang, Ruiyang Sun, Yiran Geng, Yifan Zhong, Juntao Dai, Yaodong Yang
By introducing this benchmark, we aim to facilitate the evaluation and comparison of safety performance, thus fostering the development of reinforcement learning for safer, more reliable, and responsible real-world applications.
1 code implementation • 14 Jul 2023 • Weidong Huang, Jiaming Ji, Chunhe Xia, Borong Zhang, Yaodong Yang
Existing Safe Reinforcement Learning (SafeRL) methods, which rely on cost functions to enforce safety, often fail to achieve zero-cost performance in complex scenarios, especially vision-only tasks.
1 code implementation • 16 May 2023 • Jiaming Ji, Jiayi Zhou, Borong Zhang, Juntao Dai, Xuehai Pan, Ruiyang Sun, Weidong Huang, Yiran Geng, Mickel Liu, Yaodong Yang
AI systems empowered by reinforcement learning (RL) algorithms harbor the immense potential to catalyze societal advancement, yet their deployment is often impeded by significant safety concerns.
no code implementations • 15 Apr 2021 • Jianlong Zhou, Weidong Huang, Fang Chen
The dependence of ML models with dynamic number of features is encoded into the structure of visualisation, where ML models and their dependent features are directly revealed from related line connections.
no code implementations • 18 Apr 2020 • Weidong Huang
The theory and method of life table described in this paper are simple and easy to understand.
no code implementations • ICML 2018 • Jiaxiang Wu, Weidong Huang, Junzhou Huang, Tong Zhang
Large-scale distributed optimization is of great importance in various applications.