Randomized Numerical Linear Algebra (RandNLA) is a powerful class of methods, widely used in High Performance Computing (HPC). RandNLA provides approximate solutions to linear algebra functions applied to large signals, at reduced computational costs. However, the randomization step for dimensionality reduction may itself become the computational bottleneck on traditional hardware. Leveraging near constant-time linear random projections delivered by LightOn Optical Processing Units we show that randomization can be significantly accelerated, at negligible precision loss, in a wide range of important RandNLA algorithms, such as RandSVD or trace estimators.
翻译:随机数字线性代数(RandNLA)是一种强大的方法,在高性能计算中广泛使用。 RandNLA以较低的计算成本,为适用于大型信号的线性代数函数提供了近似的解决办法,但是,减少维度的随机化步骤本身可能成为传统硬件的计算瓶颈。 LightOn光学处理机提供的接近恒定时线性随机预测的杠杆作用,我们表明,在诸如RandSVD或跟踪测算仪等一系列重要的RandNLA算法中,随机化可以大大加速,以微不足道的精度损失。