Deep learning at the edge enables real-time streaming ptychographic imaging

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作者
Anakha V. Babu
Tao Zhou
Saugat Kandel
Tekin Bicer
Zhengchun Liu
William Judge
Daniel J. Ching
Yi Jiang
Sinisa Veseli
Steven Henke
Ryan Chard
Yudong Yao
Ekaterina Sirazitdinova
Geetika Gupta
Martin V. Holt
Ian T. Foster
Antonino Miceli
Mathew J. Cherukara
机构
[1] Argonne National Laboratory,Department of Chemistry
[2] University of Illinois,undefined
[3] NVIDIA Corporation,undefined
[4] KLA Corporation,undefined
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Coherent imaging techniques provide an unparalleled multi-scale view of materials across scientific and technological fields, from structural materials to quantum devices, from integrated circuits to biological cells. Driven by the construction of brighter sources and high-rate detectors, coherent imaging methods like ptychography are poised to revolutionize nanoscale materials characterization. However, these advancements are accompanied by significant increase in data and compute needs, which precludes real-time imaging, feedback and decision-making capabilities with conventional approaches. Here, we demonstrate a workflow that leverages artificial intelligence at the edge and high-performance computing to enable real-time inversion on X-ray ptychography data streamed directly from a detector at up to 2 kHz. The proposed AI-enabled workflow eliminates the oversampling constraints, allowing low-dose imaging using orders of magnitude less data than required by traditional methods.
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