Open Challenge
Open challenges in various scientific fields highlight persistent limitations in existing methodologies and datasets, driving research towards more robust and efficient solutions. Current efforts focus on improving model performance through techniques like Bayesian optimization, ensemble methods, and advanced neural network architectures (e.g., LSTMs, large language models), often coupled with data augmentation and improved data collection strategies. Addressing these challenges is crucial for advancing fields ranging from healthcare and cybersecurity to robotics and natural language processing, ultimately leading to more reliable and impactful applications. The open challenge approach itself, using public benchmarks and datasets, fosters collaboration and accelerates progress.
Papers
Cyber Deception: State of the art, Trends and Open challenges
Pedro Beltrán López, Manuel Gil Pérez, Pantaleone Nespoli
Applying Multi-Fidelity Bayesian Optimization in Chemistry: Open Challenges and Major Considerations
Edmund Judge, Mohammed Azzouzi, Austin M. Mroz, Antonio del Rio Chanona, Kim E. Jelfs