Multimodal Dataset
Multimodal datasets integrate data from diverse sources, such as text, images, audio, and sensor readings, to improve the performance of machine learning models on complex tasks. Current research focuses on developing and applying these datasets across various domains, including remote sensing, healthcare, and robotics, often employing transformer-based architectures and contrastive learning methods to effectively fuse information from different modalities. The availability of high-quality multimodal datasets is crucial for advancing research in artificial intelligence and enabling the development of more robust and accurate systems for a wide range of applications.
Papers
Multimodal Dataset from Harsh Sub-Terranean Environment with Aerosol Particles for Frontier Exploration
Alexander Kyuroson, Niklas Dahlquist, Nikolaos Stathoulopoulos, Vignesh Kottayam Viswanathan, Anton Koval, George Nikolakopoulos
DataComp: In search of the next generation of multimodal datasets
Samir Yitzhak Gadre, Gabriel Ilharco, Alex Fang, Jonathan Hayase, Georgios Smyrnis, Thao Nguyen, Ryan Marten, Mitchell Wortsman, Dhruba Ghosh, Jieyu Zhang, Eyal Orgad, Rahim Entezari, Giannis Daras, Sarah Pratt, Vivek Ramanujan, Yonatan Bitton, Kalyani Marathe, Stephen Mussmann, Richard Vencu, Mehdi Cherti, Ranjay Krishna, Pang Wei Koh, Olga Saukh, Alexander Ratner, Shuran Song, Hannaneh Hajishirzi, Ali Farhadi, Romain Beaumont, Sewoong Oh, Alex Dimakis, Jenia Jitsev, Yair Carmon, Vaishaal Shankar, Ludwig Schmidt