Linear Compression
Linear compression techniques aim to reduce the size of data or models while minimizing information loss, crucial for efficient storage, transmission, and processing, especially with the rise of large language models and high-resolution data. Current research focuses on adapting and developing compression methods for various model architectures, including transformers and neural radiance fields, employing techniques like low-rank approximation, quantization, pruning, and hierarchical clustering. These advancements are significant for improving the efficiency and scalability of machine learning applications across diverse domains, from natural language processing and image compression to federated learning and earth observation.
Papers
June 19, 2022
June 16, 2022
June 12, 2022
June 11, 2022
June 2, 2022
May 17, 2022
May 16, 2022
May 12, 2022
May 8, 2022
May 1, 2022
April 25, 2022
April 10, 2022
April 4, 2022
March 21, 2022
March 17, 2022
February 2, 2022