Visionary ProSpect
Visionary ProSpect encompasses a broad range of research exploring the application and advancement of AI across diverse fields. Current efforts focus on improving AI model efficiency (e.g., through data-driven pixel control and optimized quantum circuit synthesis), enhancing data privacy and security (particularly in generative AI and quantum machine learning), and developing more robust and reliable AI evaluation methods. This research is significant for its potential to improve various applications, from autonomous driving and industrial automation to personalized education and financial modeling, while simultaneously addressing critical ethical and practical challenges.
Papers
Deterministic Computing Power Networking: Architecture, Technologies and Prospects
Qingmin Jia, Yujiao Hu, Xiaomao Zhou, Qianpiao Ma, Kai Guo, Huayu Zhang, Renchao Xie, Tao Huang, Yunjie Liu
Fine-Grained Zero-Shot Learning: Advances, Challenges, and Prospects
Jingcai Guo, Zhijie Rao, Zhi Chen, Jingren Zhou, Dacheng Tao