Technical Challenge
Research into technical challenges across diverse AI applications reveals a common thread: improving model robustness, fairness, and explainability while addressing limitations in data availability and computational efficiency. Current efforts focus on developing and adapting model architectures (e.g., LLMs, YOLO variants, diffusion models) for specific tasks, refining evaluation metrics, and designing robust training and deployment strategies (e.g., federated learning). These advancements are crucial for ensuring the responsible and effective deployment of AI in various sectors, from healthcare and finance to manufacturing and environmental monitoring.
Papers
On the Challenges of Using Black-Box APIs for Toxicity Evaluation in Research
Luiza Pozzobon, Beyza Ermis, Patrick Lewis, Sara Hooker
Benchmarking ChatGPT-4 on ACR Radiation Oncology In-Training (TXIT) Exam and Red Journal Gray Zone Cases: Potentials and Challenges for AI-Assisted Medical Education and Decision Making in Radiation Oncology
Yixing Huang, Ahmed Gomaa, Sabine Semrau, Marlen Haderlein, Sebastian Lettmaier, Thomas Weissmann, Johanna Grigo, Hassen Ben Tkhayat, Benjamin Frey, Udo S. Gaipl, Luitpold V. Distel, Andreas Maier, Rainer Fietkau, Christoph Bert, Florian Putz
The Seven Worlds and Experiences of the Wireless Metaverse: Challenges and Opportunities
Omar Hashash, Christina Chaccour, Walid Saad, Tao Yu, Kei Sakaguchi, Merouane Debbah
Focus on the Challenges: Analysis of a User-friendly Data Search Approach with CLIP in the Automotive Domain
Philipp Rigoll, Patrick Petersen, Hanno Stage, Lennart Ries, Eric Sax
On the Opportunities and Challenges of Foundation Models for Geospatial Artificial Intelligence
Gengchen Mai, Weiming Huang, Jin Sun, Suhang Song, Deepak Mishra, Ninghao Liu, Song Gao, Tianming Liu, Gao Cong, Yingjie Hu, Chris Cundy, Ziyuan Li, Rui Zhu, Ni Lao
Communications-Aware Robotics: Challenges and Opportunities
Daniel Bonilla Licea, Giuseppe Silano, Mounir Ghogho, Martin Saska