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Memory-Efficient and Stabilizing Management System and Parallel Methods for RELION Using CUDA and MPI

机译:使用CUDA和MPI的内存高效稳定的管理系统和双行方法

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In cryo-electron microscopy, RELION has been proven to be a powerful tool for high-resolution reconstruction and has quickly gained its popularity. However, as the data processed in cryoEM is large and the algorithm of RELION is computation-intensive, the refinement procedure of RELION appears quite time-consuming and memory-demanding. These two problems have become major bottlenecks for its usage. Even though there have been efforts on paralleling RELION, the global memory size still may not meet its requirement. Also as by now there is no automatic memory management system on GPU (Graphics Processing Unit), the fragmentation will increase with iteration. Eventually, it would crash the program. In our work, we designed a memory-efficient and stabilizing management system to guarantee the robustness of our program and the efficiency of GPU memory usage. To reduce the memory usage, we developed a novel RELION 2.0 data structure. Also, we proposed a weight calculation parallel algorithm to speedup the calculation. Experiments show that the memory system can avoid memory fragmentation and we can achieve better speedup ratio compared with RELION 2.0.
机译:在冷冻电子显微镜下,已被证明是高分辨率重建的强大工具,并迅速获得了普及。但是,由于在Cryoem中处理的数据很大并且Relion算法是计算密集型的,所以Relion的细化程序看起来非常耗时和记忆力。这两个问题已成为其使用的主要瓶颈。尽管在并行相关方面努力,但全局内存大小仍可能不符合其要求。同样在现在,GPU上没有自动内存管理系统(图形处理单元),碎片会随着迭代而增加。最终,它会崩溃程序。在我们的工作中,我们设计了一个记忆力和稳定的管理系统,以保证我们的计划的稳健性和GPU内存使用的效率。为减少内存使用情况,我们开发了一种新颖的Relion 2.0数据结构。此外,我们提出了一种重量计算并行算法来加速计算。实验表明,存储器系统可以避免内存碎片,并且与RECOR 2.0相比,我们可以实现更好的加速比。

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