The United States 2020 Space Policy directive declares that NASA, in cooperation with private industry, will “extend human economic activity into deep space by establishing a permanent human presence on the Moon”. This goal will require advanced data management, as well as analysis, modeling and representation of lunar information in order to prepare for Artemis human missions, lunar science investigations and exploration. To meet this requirement, we conceptualize and present an implementation strategy for a distributed platform for lunar data retrieval, inferencing and analysis, which will be based on federated learning and the NASA Celestial Mapping System (CMS). In addition to demonstrating the imperative of enabling lunar-borne data to remain in-situ but still accessible, this presentation will also include examples of how third parties could contribute both datasets and new functionality into this platform using an AI-based data import pipeline and a plug-in architecture respectively.


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    Title :

    Distributed Lunar Data Platform with Advanced Machine Learning Capabilities in Support of Lunar Science and Exploration


    Contributors:
    G. Mackintosh (author) / P. Agrawal (author) / A. Zuniga (author) / I. Lopez-francos (author)

    Conference:

    Lunar Surface Science Workshop- Defining a Coordinated Lunar Resource Evaluation Campaign ; 2022 ; Virtual, US


    Type of media :

    Miscellaneous


    Type of material :

    No indication


    Language :

    English





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