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://science.nasa.gov/earth-science/decadal-sbg) **Details on NASA data processing levels can be found at: https://earthdata.nasa.gov/collaborate/open-data-services-and-software/data-information-policy/data-levels
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. Description: Research opportunities exist within the applied Earth sciences and applications of Earth remote sensing to employ data from the upcoming NISAR mission (https://nisar.jpl.nasa.gov/) to develop and
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its primary traceable constituents, water vapor, water-ice and dust, and observing or modeling related surface features. The post-doc will be expected to analyze and synthesize data from Mars orbiters
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increasingly large amount of spacecraft data now available from any Heliophysics Systems Observatory (HSO) mission, such as -- Parker Solar Probe, Solar Orbiter, WIND, MMS, CLUSTER, and THEMIS -- highlights a
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data is used to estimate vegetation 3D structure parameters such as height. The radar data (Interferometric Synthetic Aperture Radar or inSAR) was collected by spaceborne ALOS/PALSAR and airborne UAVSAR
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will utilize in-situ data from Voyager, Galileo, and Juno, in preparation for the upcoming Europa Clipper and JUICE missions. Not only will this work have a significant impact on the ability to model
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. Description: Context: Laboratory Astrophysics is a core capability at NASA Ames Research Center. Laboratory experiments and quantum-chemical computations simulating astrophysical conditions generate data
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. Description: This opportunity is closed to applicants who are Senior Fellows (5-years or more past PhD). The Goddard Earth Observing System (GEOS) global 4D hybrid Ensemble-Variational (EnVar) data assimilation
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. Description: This opportunity is closed to applicants who are Senior Fellows (5-years or more past PhD). The Goddard Earth Observing System (GEOS) global 4D hybrid Ensemble-Variational (EnVar) data assimilation
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of exoplanets - simply discarding other sources of stellar variability as noise. These two missions and others under consideration have one thing in common – very large, very complex data sets replete with