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Machine learning for ultrafast X-ray diffraction patterns on large-scale GPU clusters

机译:机器学习可在大型GPU集群上实现超快速X射线衍射图

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The classical method of determining the atomic structure of complex molecules by analyzing diffraction patterns is currently undergoing drastic developments. Modern techniques for producing extremely bright and coherent X-ray lasers allow a beam of streaming particles to be intercepted and hit by an ultrashort high-energy X-ray beam. Through machine learning methods the data thus collected can be transformed into a three-dimensional volumetric intensity map of the particle itself. The computational complexity associated with this problem is very high such that clusters of data parallel accelerators are required. We have implemented a distributed and highly efficient algorithm for the inversion of large collections of diffraction patterns targeting clusters of hundreds of GPUs. With the expected enormous amount of diffraction data to be produced in the foreseeable future, this is the required scale to approach real-time processing of data at the beam site. Using both real and synthetic data we look at the scaling properties of the application and discuss the overall computational viability of this exciting and novel imaging technique.
机译:通过分析衍射图确定复杂分子的原子结构的经典方法目前正在急剧发展。产生极亮且相干的X射线激光的现代技术允许一束流动的粒子束被超短高能X射线束拦截并击中。通过机器学习方法,可以将由此收集的数据转换为粒子本身的三维体积强度图。与该问题相关的计算复杂度非常高,因此需要数据并行加速器的群集。我们已经实现了一种分布式高效算法,用于反演针对数百个GPU集群的大量衍射图样。由于在可预见的将来将产生大量的衍射数据,因此这是在光束位置进行实时数据处理所需的标度。使用真实数据和合成数据,我们都会查看应用程序的缩放属性,并讨论这种令人兴奋和新颖的成像技术的整体计算可行性。

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