Practical Guide
Practical guides in various scientific fields are increasingly focusing on bridging the gap between theoretical advancements and real-world applications. Current research emphasizes improving the efficiency and reliability of existing models and algorithms, particularly in areas like multimodal learning, large language model fine-tuning, and optimization techniques for large-scale problems. These guides aim to provide researchers and practitioners with actionable strategies for model development, deployment, and evaluation, ultimately accelerating progress and fostering more robust and ethical AI systems across diverse scientific domains.
Papers
How to DP-fy ML: A Practical Guide to Machine Learning with Differential Privacy
Natalia Ponomareva, Hussein Hazimeh, Alex Kurakin, Zheng Xu, Carson Denison, H. Brendan McMahan, Sergei Vassilvitskii, Steve Chien, Abhradeep Thakurta
Finding the right XAI method -- A Guide for the Evaluation and Ranking of Explainable AI Methods in Climate Science
Philine Bommer, Marlene Kretschmer, Anna Hedström, Dilyara Bareeva, Marina M. -C. Höhne