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New instrumentation for cryo electron microscopy (cryoEM) has significantly increased data collection rate as well as data quality, creating bottlenecks at the image processing level. Current image processing model of moving the acquired images from the data source (electron microscope) to desktops or local clusters for processing is encountering many practical limitations. However, computing may also take place in distributed and decentralized environments. In this way, cloud is a new form of accessing computing and storage resources on demand. Here, we evaluate on how this new computational paradigm can be effectively used by extending our current integrative framework for image processing, creating ScipionCloud. This new development has resulted in a full installation of Scipion both in public and private clouds, accessible as public "images", with all the required preinstalled cryoEM software, just requiring a Web browser to access all Graphical User Interfaces. We have profiled the performance of different configurations on Amazon Web Services and the European Federated Cloud, always on architectures incorporating GPU's, and compared them with a local facility. We have also analyzed the economical convenience of different scenarios, so cryoEM scientists have a clearer picture of the setup that is best suited for their needs and budgets.
Cryoelectron Microscopy, Image Processing, Computer-Assisted, Cloud computing, Information Storage and Retrieval, Cryo-electron microscopy, Cryo-electron microscopy (cryo-EM), Distributed computing, Software
Cryoelectron Microscopy, Image Processing, Computer-Assisted, Cloud computing, Information Storage and Retrieval, Cryo-electron microscopy, Cryo-electron microscopy (cryo-EM), Distributed computing, Software
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