Jupyter Notebook examples related to the datasets in the Amazon Sustainability Data Initiative (ASDI) program.
In particular, these notebooks demonstrate how to query and access data from a [Spatial Temporal Asset Catalog (STAC)] of the open datasets that have been cataloged.
The notebooks are designed to work with AWS SageMaker Studio Lab which you can use for free1, but should also work with other Jupyter Notebook environments. For some datasets an AWS account for requester pays charges may be required. See Advanced Usage below for more details.
Advanced Usage As a reminder these notebooks are for demonstration purposes using an experimental API. For large amounts of data access and analysis we recommend that you use Sagemaker Studio or deploy JupyterHub to an EC2 instance. In both cases you can optimize data access and minimize costs by running your instances in the same region as the data you intend to access.
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Copernicus Digital Elevation Model (DEM) as Cloud Optimized GeoTIFF, Glo-30 (30m) AWS Open Data
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Sentinel 1 GRD as Cloud Optimized GeoTIFF, Sentinel-1 GRD AWS Open Data
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NOAA Sea Surface Temperature - Optimum Interpolation via Zarr accessible Kerchunk index of NetCDF, NOAA OISST AWS Open Data
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Amazonia-1 WFI as Cloud Optimized GeoTIFF, Amazonia EO satellite on AWS
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Amazonia-1 WFI, Cloud Optimized GeoTIFF Visualization via STAC Query, Amazonia EO satellite on AWS
Footnotes
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Free allocation is time limited. ↩