Petascale XCT: 3D Image Reconstruction with Hierarchical Communications on Multi-GPU Nodes

SC20: International Conference for High Performance Computing, Networking, Storage and Analysis(2020)

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摘要
X-ray computed tomography is a commonly used technique for noninvasive imaging at synchrotron facilities. Iterative tomographic reconstruction algorithms are often preferred for recovering high quality 3D volumetric images from 2D X-ray images, however, their use has been limited to small/medium datasets due to their computational requirements. In this paper, we propose a high-performance iterative reconstruction system for terabyte(s)-scale 3D volumes. Our design involves three novel optimizations: (1) optimization of (back)projection operators by extending the 2D memory-centric approach to 3D;(2) performing hierarchical communications by exploiting “fat-node” architecture with many GPUs; 3) utilization of mixed-precision types while preserving convergence rate and quality. We extensively evaluate the proposed optimizations and scaling on the Summit supercomputer. Our largest reconstruction is a mouse brain volume with 9×11K×11K voxels, where the total reconstruction time is under three minutes using 24,576 GPUs, reaching 65 PFLOPS: 34% of Summit's peak performance.
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关键词
2D memory-centric approach,hierarchical communications,convergence rate,mouse brain volume,total reconstruction time,petascale XCT,3D image reconstruction,multiGPU nodes,X-ray computed tomography,noninvasive imaging,synchrotron facilities,iterative tomographic reconstruction algorithms,high quality 3D volumetric images,2D X-ray images,computational requirements,high-performance iterative reconstruction system,Summit peak performance,computer speed 65.0 PFLOPS
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