Back to Search Start Over

Image Gradient Decomposition for Parallel and Memory-Efficient Ptychographic Reconstruction

Authors :
Xiao Wang
Aristeidis Tsaris
Debangshu Mukherjee
Mohamed Wahib
Peng Chen
Mark Oxley
Olga Ovchinnikova
Jacob Hinkle
Publication Year :
2022

Abstract

Ptychography is a popular microscopic imaging modality for many scientific discoveries and sets the record for highest image resolution. Unfortunately, the high image resolution for ptychographic reconstruction requires significant amount of memory and computations, forcing many applications to compromise their image resolution in exchange for a smaller memory footprint and a shorter reconstruction time. In this paper, we propose a novel image gradient decomposition method that significantly reduces the memory footprint for ptychographic reconstruction by tessellating image gradients and diffraction measurements into tiles. In addition, we propose a parallel image gradient decomposition method that enables asynchronous point-to-point communications and parallel pipelining with minimal overhead on a large number of GPUs. Our experiments on a Titanate material dataset (PbTiO3) with 16632 probe locations show that our Gradient Decomposition algorithm reduces memory footprint by 51 times. In addition, it achieves time-to-solution within 2.2 minutes by scaling to 4158 GPUs with a super-linear strong scaling efficiency at 364% compared to runtimes at 6 GPUs. This performance is 2.7 times more memory efficient, 9 times more scalable and 86 times faster than the state-of-the-art algorithm.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....932b7d1ae5460a299c0bef2eecab66e2