Fast Algorithm

Fast algorithms research focuses on developing computationally efficient methods for solving complex problems across diverse fields, aiming to reduce runtime and resource consumption. Current research emphasizes improving existing algorithms like coordinate descent and gradient methods, exploring novel approaches such as spectral techniques and bi-level optimization, and adapting algorithms to specific problem structures (e.g., low-rank matrices, sparse data). These advancements have significant implications for various applications, including machine learning, signal processing, and network analysis, enabling the efficient handling of increasingly large and complex datasets.

Papers