NASA Logo in the header
Data Science

Alphabetical

By Last Name:

Displaying records 1 to 12 of 12.

Show:

Data/Image

A shift in transitional forests of the North American boreal will persist through 2100

This research developed a machine learning model to predict current and future boreal forest canopy heights across northern regions using satellite data and climate projections. The study combines NASA's ICESat-2 satellite's vegetation height observations with climate and soil data to understand how forest canopy heights might change under different future climate scenarios. (Summarized with AI)

Key Staff
    Diagram of boreal shift
    Center of Excellence

    AI CoE support (AI CoE)

    The Data Science Group co-leads the Goddard AI Center of Excellence by connecting partners, hosting events and training, and consulting on cutting-edge AI models for NASA.

    Key Staff
      AI Center of Excellenge Logo
      Data/Image

      Cutting-edge models for Conservation: Ensemble machine learning advances ecological forecasting and reveals 40 years of changing climatic suitability for an aridland bird

      Using ensemble machine learning and spatial analysis applied to tens of thousands of eBird records together with NASA’s MERRA-2 reanalysis, NASA researchers documented shifts in climatic suitability for Cassin’s Sparrow across the past four decades. These shifts appear to be altering the timing of the species’ breeding cycle, suggesting that seasonal climatic change may be driving both behavioral and evolutionary responses.

      GenCast predictions using GEOS-FP data (GenCast-FP)

      Generate GenCast Predictions with GEOS-FP data

      Key Staff
        GEOS-FP example Weather Map initialized on 01/14/2026
        Computer Models

        GraphCast predictions using ERA5 data (GraphCast - DSG)

        Generate GraphCast predictions using ERA5 data.

        Key Staff
           GraphCast Weather Model visualization
          Data/Image

          MOD44 products (MOD44)

          Science-ready product development from daily MODIS surface reflectance data (MOD09).

          Key Staff
            Representation of Vegetated Continuous Fields
            Data/Image

            Modeling surface reflectance from VHR imagery (SR VHR)

            A model of top-of-atmosphere reflectance (TOAVHR) and Landsat-derived reference (SRreference) provides an high resolution estimate of surface reflectance in VHR imagery (SRVHR). Batch production of these SRVHR estimates help identify the most similar datasets useful for large area analysis.

            Key Staff
              Example of VHR Surface Reflectance Imagery
              Data/Image

              Pangaea for application of Earth Observation Foundation Models (ILab Pangaea Bench)

              ILab's fork of repository with Pangaea Bench and notebooks to apply a variety of Earth Observation Foundation Models (EO FMs) to various tasks.

              Key Staff
                Pangaea Workflow

                Quantitative Evaluation of Foundation Models (QEFM)

                Quantify the performance of Foundation Models (FMs) for weather and climate to guide GSFC scientists in effectively integrating AI into their research.

                Key Staff
                  Example of FM evaluation
                  Computing Center

                  Retrospective Ecological Niche Modeling

                  Automatic variable selection assists analysis of ecological niche changes enables the use of large variable collections and the discovery of viable predictors that may not be apparent using traditional variable selection methods. It employs a Monte Carlo optimization that enables out-of-core variable selection that is "infinitely scalable" in an extensive multicore compute environment. This work is especially valuable to the species conservaion research and management communities Current customers and potential partners include NASA, NMDGF, USFWS, TAMU/NRI.

                  Key Staff
                    Data/Image

                    SatVision-TOA Geospatial Foundation Model (SatVision-TOA)

                    SatVision-TOA demonstrates the untapped potential of leveraging moderate- to coarse-resolution data for deep learning in Earth observation. By training a 3-billion-parameter vision transformer on a 100-million-image MODIS TOA dataset, it establishes a scalable, open-source foundation for advancing atmospheric science, cloud analysis, and Earth system modeling. Its released weights and workflows aim to broaden participation and foster collaboration in remote sensing applications. SatVision-TOA captures diverse atmospheric and surface conditions. Additionally, the model improves performance in 3D cloud retrieval and environmental monitoring, surpassing baseline methods.

                    Key Staff
                      SatVision-TOA workflow
                      Computer Models

                      Weather Model for Mars (MarsCast)

                      Applying Earth Weather Foundation Models to Mars.

                      Key Staff
                        An AI model surrounding Earth now applied to Mars