DH Research
DH research, encompassing diverse applications of data-driven methods, primarily aims to improve prediction accuracy and efficiency across various domains. Current research focuses heavily on leveraging machine learning algorithms, including convolutional neural networks, recurrent neural networks (like LSTMs), and large language models (like GPT-4), often combined with techniques like knowledge graph embedding and attention mechanisms, to analyze complex datasets and improve model performance. This work holds significant implications for numerous fields, from enhancing financial risk management and improving healthcare diagnostics to optimizing autonomous systems and advancing water resource management.
Papers
pfl-research: simulation framework for accelerating research in Private Federated Learning
Filip Granqvist, Congzheng Song, Áine Cahill, Rogier van Dalen, Martin Pelikan, Yi Sheng Chan, Xiaojun Feng, Natarajan Krishnaswami, Vojta Jina, Mona Chitnis
Apprentices to Research Assistants: Advancing Research with Large Language Models
M. Namvarpour, A. Razi