Welcome to the new version of CaltechAUTHORS. Login is currently restricted to library staff. If you notice any issues, please email coda@library.caltech.edu
Published November 2018 | public
Book Section - Chapter

SDN for End-to-End Networked Science at the Exascale (SENSE)

Abstract

The Software-defined network for End-to-end Networked Science at Exascale (SENSE) research project is building smart network services to accelerate scientific discovery in the era of `big data' driven by Exascale, cloud computing, machine learning and AI. The project's architecture, models, and demonstrated prototype define the mechanisms needed to dynamically build end-to-end virtual guaranteed networks across administrative domains, with no manual intervention. In addition, a highly intuitive `intent' based interface, as defined by the project, allows applications to express their high-level service requirements, and an intelligent, scalable model-based software orchestrator converts that intent into appropriate network services, configured across multiple types of devices. The significance of these capabilities is the ability for science applications to manage the network as a first-class schedulable resource akin to instruments, compute, and storage, to enable well defined and highly tuned complex workflows that require close coupling of resources spread across a vast geographic footprint such as those used in science domains like high-energy physics and basic energy sciences.

Additional Information

© 2018 IEEE. We appreciate the contributions to Intent APIs and superfacility use case by Mariam Kiran and NERSC testbed deployment through Damian Hazen and Jason Lee. Work discussed in this paper was supported through multiple projects from Department of Energy and National Science Foundation projects including the following: Caltech: OLiMPS, DOE/ASCR, DOE award #DE-SC0007346; SDN-Next Generation Integrated Architecture (SDN-NGenIA), DOE/ASCR, DE-SC0015527; SDN for End-to-end Networked Science at the Exascale (SENSE), DOE/ASCR, DE-SC0015528; ANSE, NSF award # 1246133; CHOPIN, NSF award # 1341024; US CMS Tier2, NSF award # 1120138. University of Maryland: SDN for End-to-end Networked Science at the Exascale (SENSE), DOE/ASCR, DE-SC0016585; Resource Aware Intelligent Network Services (RAINS), DOE/ASCR, DE-SC0010716. Fermi National Accelerator: SDN for End-to-end Networked Science at the Exascale (SENSE), DOE/ASCR. Argonne National Lab: SDN for End-to-end Networked Science at the Exascale (SENSE), DOE/ASCR. Lawrence Berkeley National Lab/esnet: SDN for End-to-end Networked Science at the Exascale (SENSE), DOE/ASCR, FP00002494.

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023