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
AutoNMT: A Framework to Streamline the Research of Seq2Seq Models
Salvador Carrión, Francisco Casacuberta
MRS Modular UAV Hardware Platforms for Supporting Research in Real-World Outdoor and Indoor Environments
Daniel Hert, Tomas Baca, Pavel Petracek, Vit Kratky, Vojtech Spurny, Matej Petrlik, Matous Vrba, David Zaitlik, Pavel Stoudek, Viktor Walter, Petr Stepan, Jiri Horyna, Vaclav Pritzl, Giuseppe Silano, Daniel Bonilla Licea, Petr Stibinger, Robert Penicka, Tiago Nascimento, Martin Saska