Integer Arithmetic

Integer arithmetic is experiencing renewed interest in scientific computing, driven by the need for efficient and interpretable algorithms in areas like machine learning and optimization. Current research focuses on developing novel methods for integer-based computation within neural networks, including quantization techniques that minimize accuracy loss at low bit-widths and the exploration of integer representations for improved model interpretability and hardware efficiency. These advancements are significant because they promise to improve the speed, energy efficiency, and accessibility of complex algorithms across diverse applications, from large language models to edge computing devices.

Papers