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
Challenges and Applications of Large Language Models
Jean Kaddour, Joshua Harris, Maximilian Mozes, Herbie Bradley, Roberta Raileanu, Robert McHardy
PyTAG: Challenges and Opportunities for Reinforcement Learning in Tabletop Games
Martin Balla, George E. M. Long, Dominik Jeurissen, James Goodman, Raluca D. Gaina, Diego Perez-Liebana
`It is currently hodgepodge'': Examining AI/ML Practitioners' Challenges during Co-production of Responsible AI Values
Rama Adithya Varanasi, Nitesh Goyal
Challenge Results Are Not Reproducible
Annika Reinke, Georg Grab, Lena Maier-Hein
Ethics in the Age of AI: An Analysis of AI Practitioners' Awareness and Challenges
Aastha Pant, Rashina Hoda, Simone V. Spiegler, Chakkrit Tantithamthavorn, Burak Turhan
Adversarial Learning in Real-World Fraud Detection: Challenges and Perspectives
Danele Lunghi, Alkis Simitsis, Olivier Caelen, Gianluca Bontempi
Some challenges of calibrating differentiable agent-based models
Arnau Quera-Bofarull, Joel Dyer, Anisoara Calinescu, Michael Wooldridge
Challenges in Domain-Specific Abstractive Summarization and How to Overcome them
Anum Afzal, Juraj Vladika, Daniel Braun, Florian Matthes