Deep Learning Framework
Deep learning frameworks are computational tools designed to build and train artificial neural networks for diverse applications. Current research emphasizes developing frameworks tailored to specific data types (e.g., tabular, temporal, image, audio) and tasks (e.g., classification, regression, anomaly detection), often incorporating architectures like convolutional neural networks, recurrent neural networks, transformers, and graph neural networks. These frameworks are significantly impacting various fields, from improving medical image analysis and accelerating scientific simulations to optimizing industrial processes and enhancing personalized advertising strategies.
Papers
fVDB: A Deep-Learning Framework for Sparse, Large-Scale, and High-Performance Spatial Intelligence
Francis Williams, Jiahui Huang, Jonathan Swartz, Gergely Klár, Vijay Thakkar, Matthew Cong, Xuanchi Ren, Ruilong Li, Clement Fuji-Tsang, Sanja Fidler, Eftychios Sifakis, Ken Museth
DistML.js: Installation-free Distributed Deep Learning Framework for Web Browsers
Masatoshi Hidaka, Tomohiro Hashimoto, Yuto Nishizawa, Tatsuya Harada