- Web Best Practices
- Item Best Practices
- Asset Best Practices
- Catalog & Collection Best Practices
This document makes a number of recommendations for creating real world SpatioTemporal Asset Catalogs. None of them are required to meet the core specification, but following these practices will make life easier for client tooling and for users. They come about from practical experience of implementors and introduce a bit more 'constraint' for those who are creating STAC objects representing their data or creating tools to work with STAC.
While the current goal of the core is to remain quite flexible and simple to meet a wide variety of use cases, in time some of these may evolve to become part of the core specification.
STAC strives to make geospatial information more accessible, by putting it on the web. Fundamental to STAC's vision is that different tools will be able to load and display public-facing STAC data. But the web runs on a Same origin policy, preventing web pages from loading information from other web locations to prevent malicious scripts from accessing sensitive data. This means that by default a web page would only be able to load STAC Item objects from the same server the page is on. Cross-origin resource sharing, also known as 'CORS' is a protocol to enable safe communication across origins. But most web services turn it off by default. This is generally a good thing, but unfortunately if CORS is not enabled then any browser-based STAC tool will not work.
So to enable all the great web tools (like stacindex.org) to work with your STAC implementation it is essential to 'enable CORS'. Most services have good resources on how to do this, like on AWS S3, Google Cloud Storage, or Apache Server. Many more are listed on enable-cors.org. We recommend enabling CORS for all requests ('*'), so that diverse online tools can access your data. If you aren't sure if your server has CORS enabled you can use test-cors.org. Enter the URL of your STAC root Catalog or Collection JSON and make sure it gets a response.
One of the primary goals of STAC is to make spatiotemporal data more accessible on the web. One would have a right to be surprised that there is nothing about HTML in the entire specification. This is because it is difficult to specify what should be on web pages without ending up with very bad looking pages. But the importance of having web-accessible versions of every STAC Item is paramount.
The main recommendation is to have an HTML page for every single STAC Item, Catalog and Collection. They should be visually pleasing, crawlable by search engines and ideally interactive. The current best practice is to use a tool in the STAC ecosystem called STAC Browser. It can crawl most any valid STAC implementation and generate unique web pages for each Item and Catalog (or Collection). While it has a default look and feel, the design can easily be modified to match an existing web presence. And it will automatically turn any Item with a Cloud Optimized GeoTIFF asset into an interactive, zoomable web map (using tiles.rdnt.io to render the tiles on a leaflet map). It also attempts to encapsulate a number of best practices that enable STAC Items to show up in search engines, though that part is still a work in progress - contributions to STAC Browser to help are welcome!
Implementors are welcome to generate their own web pages, and additional tools that automatically transform STAC JSON into html sites are encouraged. In time there will likely emerge a set of best practices from an array of tools, and we may be able to specify in the core standard how to make the right HTML pages. But for now it is useful for STAC implementations to focus on making data available as JSON, and then leverage tools that can evolve at the same time to make the best HTML experience. This enables innovation on the web generation and search engine optimization to evolve independently from the core data.
There is a strong desire to align STAC with the various web standards for data. These include schema.org tags, JSON-LD (particularly for Google's dataset search), DCAT and microformats. STAC aims to work with as many as possible. Thusfar it has not seemed to make sense to include any of them directly in the core STAC standard. They are all more intended to be a part of the HTML pages that search engines crawl, so the logical place to do the integration is by leveraging a tool that generates HTML from STAC like STAC Browser. STAC Browser has implemented a mapping to schema.org fields using JSON-LD, but the exact output is still being refined. It is on the roadmap to add in more mapping and do more testing of search engines crawling the HTML pages.
Most public STAC implementations have a STAC Browser hosted at stacindex.org. Anyone with a public STAC implementation is welcome to have a STAC Browser instance hosted for free, just submit it to stacindex.org. But the stronger recommendation is to host a STAC Browser on your own domain, and to customize its design to look and feel like your main web presence. STAC aims to be decentralized, so each STAC-compliant data catalog should have its own location and just be part of the wider web.
It is very common that large, freely available datasets are set up with a 'requester pays' configuration. This is an option on AWS and on Google Cloud, that enables data providers to make their data available to everyone, while the cloud platform charges access costs (such as per-request and data 'egress') to the user accessing the data. For popular datasets that are large in size the egress costs can be substantial, to the point where much less data would be available if the cost of distribution was always on the data provider.
For data providers using STAC with requester pays buckets, there are two main recommendations:
- Put the STAC JSON in a separate bucket that is public for everyone and not requestor pays. This enables the STAC metadata to be far more crawlable and searchable, but the cost of the egress of STAC files should be miniscule compared to that of the actual data. The STAC community can help you work with cloud providers for potential free hosting if you are doing open data as requestor pays and aren't able to pay the costs of a completely open STAC bucket, as they are most all supportive of STAC (but no guarantees and it may be on an alternate cloud).
- For Asset href values to resources in a requestor pays bucket, use the cloud provider-specific protocol
(e.g.,
s3://
on AWS andgs://
on Google Cloud) instead of anhttps://
url. Most clients do not have special handling forhttps://
links to cloud provider resources that require a requestor pays flag and authentication, so they simply fail. Many clients have special handling fors3://
orgs://
URLs that will add a requestor pays parameter and will apply appropriate authentication to the request. Using cloud-specific protocols will at least give users an option to register a paid account and allow the data provider to properly charge for access. STAC-specific tools in turn can look for the cloud-specific protocols and know to use the requestor pays feature for that specific cloud platform.
When defining one's STAC properties and fields there are many choices to make on how to name various aspects of one's
data. One of the key properties is the ID. The specification is quite flexible on ID's, primarily so that existing
providers can easily use their same ID when they translate their data into STAC - they just need to be sure it is globally
unique, so may need a prefix. But the use of URI or file path reserved characters such as :
or /
is discouraged since this will
result in percented encoded STAC API
endpoints and it prevents the use of IDs as file names as recommended in the catalog layout best practices.
When coming up with values for fields that contain searchable identifiers of some sort, like constellation
or platform
,
it is recommended that the identifiers consist of only lowercase characters, numbers, _
, and -
.
Examples include sentinel-1a
(Sentinel-1), landsat-8
(Landsat-8) and envisat
(Envisat).
This is to provide consistency for search across Collections, so that people can just search for landsat-8
,
instead of thinking through all the ways providers might have chosen to name it.
In general STAC aims to be oriented around search, centered on the core fields that users will want to search on to find imagery. The core is space and time, but there are often other metadata fields that are useful. While the specification is flexible enough that providers can fill it with tens or even hundreds of fields of metadata, that is not recommended. If providers have lots of metadata then that can be linked to in the Asset Object (recommended) or in a Link Object. There is a lot of metadata that is only of relevance to loading and processing data, and while STAC does not prohibit providers from putting those type of fields in their items, it is not recommended. For very large catalogs (hundreds of millions of records), every additional field that is indexed will cost substantial money, so data providers are advised to just put the fields to be searched in STAC and STAC API providers don't have bloated indices that no one actually uses.
The datetime
field in a STAC Item's properties is one of the most important parts of a STAC Item, providing the T (temporal) of
STAC. And it can also be one of the most confusing, especially for data that covers a range of times. For many types of data it
is straightforward - it is the capture or acquisition time. But often data is processed from a range of captures - drones usually
gather a set of images over an hour and put them into a single image, mosaics combine data from several months, and data cubes
represent slices of data over a range of time. For all these cases the recommended path is to use start_datetime
and
end_datetime
fields from common metadata. The specification does allow one to set the
datetime
field to null
, but it is strongly recommended to populate the single datetime
field, as that is what many clients
will search on. If it is at all possible to pick a nominal or representative datetime then that should be used. But sometimes that
is not possible, like a data cube that covers a time range from 1900 to 2000. Setting the datetime as 1950 would lead to it not
being found if you searched 1990 to 2000.
Extensions that describe particular types of data can and should define their datetime
field to be more specific. For example
a MODIS 8 day composite image can define the datetime
to be the nominal date halfway between the two ranges. Another data type
might choose to have datetime
be the start. The key is to put in a date and time that will be useful for search, as that is
the focus of STAC. If datetime
is set to null
then it is strongly recommended to use it in conjunction with an extension
that explains why it should not be set for that type of data.
Though the GeoJSON standard allows null geometries, in STAC we strongly recommend that every item have a geometry, since the general expectation of someone using a SpatioTemporal Catalog is to be able to query all data by space and time. But there are some use cases where it can make sense to create a STAC Item before it gets a geometry. The most common of these is 'level 1' satellite data, where an image is downlinked and cataloged before it has been geospatially located.
The recommendation for data that does not yet have a location is to follow the GeoJSON concept that it is an 'unlocated'
feature. So if the catalog has data that is not located then it can follow
GeoJSON and set the geometry to null. Though normally required, in this case the bbox
field should not be included.
Note that this recommendation is only for cases where data does not yet have a geometry and it cannot be estimated. There are further details on the two most commonly requested desired use cases for setting geometry to null:
Most satellite data is downlinked without information that precisely describes where it is located on Earth. A satellite
imagery processing pipeline will always attempt to locate it, but often that process takes a number of hours, or never
quite completes (like when it is too cloudy). It can be useful to start to populate the Item before it has a geometry.
In this case the recommendation is to use the 'estimated' position from the satellite, to populate at least the bounding box,
and use the same broad bounds for the geometry (or leaving it null) until there is precise ground lock. This estimation is
usually done by onboard equipment, like GPS or star trackers, but can be off by kilometers or more. But it is very useful for
STAC users to be able to at least find approximate area in their searches. A commonly used field for communicating ground lock
is not yet established, but likely should be (an extension proposal would be appreciated). If there is no way to provide an
estimate then the data can be assigned a null geometry and no bbox
, as described above. But the data will likely not
show up in STAC API searches, as most will at least implicitly use a geometry. Though this section is written with
satellite data in mind, one can easily imagine other data types that start with a less precise geometry but have it
refined after processing.
The other case that often comes up is people who love STAC and want to use it to catalog everything they have, even if it is not spatial. This use case is not currently supported by STAC, as we are focused on data that is both temporal and spatial in nature. The OGC API - Records is an emerging standard that likely will be able to handle a wider range of data than STAC. It builds on OGC API - Features just like STAC API does. Using Collection Assets may also provide an option for some use cases.
Many implementors are tempted to try to use STAC for 'everything', using it as a universal catalog of all their 'stuff'.
The main route considered is to use STAC to describe vector layers, putting a shapefile or geopackage
as the asset
. Though there is nothing in the specification that prevents this, it is not really the right level of
abstraction. A shapefile or geopackage corresponds to a Collection, not a single Item. The ideal thing to do with
one of those is to serve it with OGC API - Features standard. This
allows each feature in the shapefile/geopackage to be represented online, and enables querying of the actual data. If
that is not possible then the appropriate way to handle Collection-level search is with the
OGC API - Records standard, which is a 'brother' specification of STAC API.
Both are compliant with OGC API - Features, adding richer search capabilities to enable finding of data.
As described in the Item spec, it is possible to use fields typically found in Item properties at the asset level. This mechanism of overriding or providing Item Properties only in the Assets makes discovery more difficult and should generally be avoided. However, there are some core and extension fields for which providing them at at the Asset level can prove to be very useful for using the data.
datetime
: Provide individual timestamp on an Item, in case the Item has astart_datetime
andend_datetime
, but an Asset is for one specific time.gsd
(Common Metadata): Specify some assets that represent instruments with different spatial resolution than the overall best resolution. Note this should not be used for different spatial resolutions due to specific processing of assets - look into the raster extension for that use case.eo:bands
(EO extension): Provide spectral band information, and order of bands, within an individual asset.proj:epsg
/proj:wkt2
/proj:projjson
(projection extension): Specify different projection for some assets. If the projection is different for all assets it should probably not be provided as an Item property. If most assets are one projection, and there is a single reprojected version (such as a Web Mercator preview image), it is sensible to specify the main projection in the Item and the alternate projection for the affected asset(s).proj:shape
/proj:transform
(projection extension): If assets have different spatial resolutions and slightly different exact bounding boxes, specify these per asset to indicate the size of the asset in pixels and its exact GeoTransform in the native projection.sar:polarizations
(sar extension): Provide the polarization content and ordering of a specific asset, similar toeo:bands
.sar:product_type
(sar extension): If mixing multiple product types within a single Item, this can be used to specify the product_type for each asset.
Media Types are a key element that enables STAC to be a rich source of information for clients. The best practice is to use as specific of a media type as is possible (so if a file is a GeoJSON then don't use a JSON media type), and to use registered IANA types as much as possible. The following table lists types that commonly show up in STAC assets. And the the section past that gives recommendations on what to do if you have a format in your asset that does not have an IANA registered type.
The following table lists a number of commonly used media types in STAC. The first two (GeoTIFF and COG) are not fully standardized yet, but reflect the community consensus direction. There are many IANA registered types that commonly show up in STAC. The following table lists some of the most common ones you may encounter or use.
Media Type | Description |
---|---|
image/tiff; application=geotiff |
GeoTIFF with standardized georeferencing metadata |
image/tiff; application=geotiff; profile=cloud-optimized |
Cloud Optimized GeoTIFF (unofficial). Once there is an official media type it will be added and the custom media type here will be deprecated. |
image/jp2 |
JPEG 2000 |
image/png |
Visual PNGs (e.g. thumbnails) |
image/jpeg |
Visual JPEGs (e.g. thumbnails, oblique) |
text/xml or application/xml |
XML metadata RFC 7303 |
application/json |
A JSON file (often metadata, or labels) |
text/plain |
Plain text (often metadata) |
application/geo+json |
GeoJSON |
application/geopackage+sqlite3 |
GeoPackage |
application/x-hdf5 |
Hierarchical Data Format version 5 |
application/x-hdf |
Hierarchical Data Format versions 4 and earlier. |
Deprecation notice: GeoTiff previously used the media type image/vnd.stac.geotiff
and
Cloud Optimized GeoTiffs used image/vnd.stac.geotiff; profile=cloud-optimized
.
Both can still appear in old STAC implementations, but are deprecated and should be replaced. This will, unfortunately, likely shift in the future as
OGC sorts out the media types.
Ideally every media type used is on the IANA registry. If
you are using a format that is not on that list we recommend you use custom content
type. These typically use the vnd.
prefix, see RFC 6838
section-3.2. Ideally the format provider will actually
register the media type with IANA, so that other STAC clients can find it easily. But if you are only using it internally it is
acceptable to not register
it. It is relatively easy to register a vnd
media type.
Asset roles are used to describe what each asset is used for. They are particular useful
when several assets have the same media type, such as when an Item has a multispectral analytic asset, a 3-band full resolution
visual asset, a down-sampled preview asset, and a cloud mask asset, all stored as Cloud Optimized GeoTIFF (COG) images. It is
recommended to use at least one role for every asset available, and using multiple roles often makes sense. For example you'd use
both data
and reflectance
if your main data asset is processed to reflectance, or metadata
and cloud
for an asset that
is a cloud mask, since a mask is considered a form of metadata (it's information about the data). Or if a single asset represents
several types of 'unusable data' it might include metadata
, cloud
, cloud-shadow
and snow-ice
. If there is not a clear
role in the Asset Role Types or the following list then just pick a sensible name for
the role. And you are encouraged to add it to the list below and/or in an extension if you think the new role will have broader
applicability.
In addition to the thumbnail, data and overview roles listed in the Item spec, there are a number of roles that are emerging in practice, but don't have enough widespread use to justify standardizing them. So if you want to re-use other roles then try to find them on the list below, and also feel free to suggest more to include here.
The 'source' field lists where the role comes from. The ones the say Item Spec are the only 'official' roles that are fully standardized. In time others on this list may migrate to a more 'official' list. Those that say 'best practice' are just from this doc, the listing is the table below. The ones from extensions are mostly just 'best practices' in the extensions, as there are few actual role requirements.
Role Name | Source | Description |
---|---|---|
thumbnail | Item Spec | An asset that represents a thumbnail of the item, typically a true color image (for items with assets in the visible wavelengths), lower-resolution (typically smaller 600x600 pixels), and typically a JPEG or PNG (suitable for display in a web browser). Multiple assets may have this purpose, but it recommended that the type and roles be unique tuples. For example, Sentinel-2 L2A provides thumbnail images in both JPEG and JPEG2000 formats, and would be distinguished by their media types. |
data | Item Spec | The data itself. This is a suggestion for a common role for data files to be used in case data providers don't come up with their own names and semantics. |
metadata | Item Spec | A metadata sidecar file describing the data in this item, for example the Landsat-8 MTL file. |
overview | Best Practice | An asset that represents a possibly larger view than the thumbnail of the Item, for example, a true color composite of multi-band data. |
visual | Best Practice | An asset that is a full resolution version of the data, processed for visual use (RGB only, often sharpened (pan-sharpened and/or using an unsharp mask)). |
date | Best Practice | An asset that provides per-pixel acquisition timestamps, typically serving as metadata to another asset |
graphic | Best Practice | Supporting plot, illustration, or graph associated with the Item |
data-mask | Best Practice | File indicating if corresponding pixels have Valid data and various types of invalid data |
snow-ice | Best Practice | Points to a file that indicates whether a pixel is assessed as being snow/ice or not. |
land-water | Best Practice | Points to a file that indicates whether a pixel is assessed as being land or water. |
water-mask | Best Practice | Points to a file that indicates whether a pixel is assessed as being water (e.g. flooding map). |
iso-19115 | Best Practice | Points to an ISO 19115 metadata file |
reflectance, temperature, saturation, cloud, cloud-shadow | EO Extension | See the table in EO for more information, and the definitive list of roles related to EO. |
incidence-angle, azimuth, sun-azimuth, sun-elevation, terrain-shadow, terrain-occlusion, terrain-illumination | View Extension | See the table in View for more information, and the definitive list of roles related to viewing angles. |
local-incidence-angle, noise-power, amplitude, magnitude, sigma0, beta0, gamma0, date-offset, covmat, prd | SAR Extension | See the table in SAR for more information. , and the definitive list of roles related to SAR. |
Some of the particular asset roles also have some best practices:
Thumbnails are typically used to give quick overview, often embedded in a list of items. So think small with these, as keeping the size down helps it load fast, and the typical display of a thumbnail won't benefit from a large size. Often 256 by 256 pixels is used as a default. Generally they should be no more than 600 by 600 pixels. Some implementors provide different sizes of thumbnails - using something like thumbnail-small and thumbnail-large, with a small one being 100x100 pixels or less, for truly fast rendering in a small image. Be sure to name one just 'thumbnail' though, as that's the default most STAC clients will look for.
Thumbnails should be PNG, JPEG, or WebP, so that they can easily display in browsers, and they should be a true color composite (red, green, and blue bands) if there are multiple bands.
If your data for the Item does not come with a thumbnail already we do recommend generating one, which can be done quite easily. GDAL and Rasterio both make this very easy - if you need help just ask on the STAC Gitter.
An overview is a high-definition browse image of the dataset, giving the user more of a sense of the data than a thumbnail could. It's something that can be easily displayed on a map without tiling, or viewed at full screen resolution (but not zoomed in). Similar to a thumbnail it should be PNG, JPEG or WebP, for easy display in browsers, and should be a true color composite (red, green, and blue bands) if there are multiple bands. The sizes could range from the high end of a thumbnail (600 by 600 pixels) to a few thousand pixels on each side.
A visual asset is a full-resolution version of the data, but one that is optimized for display purposes. It can be in any file format, but Cloud Optimized GeoTIFF's are preferred, since the inner pyramids and tiles enable faster display of the full resolution data. It is typically an composite of red, blue and green bands, often with a nice color curve and sharpening for enhanced display. It should be possible to open up on non-specialist software and display just fine. It can complement assets where one band is per file (like landsat), by providing the key display bands combined, or can complement assets where many non-visible bands are included, by being a lighter weight file that just has the bands needed for display
Note: This section uses the term 'Catalog' (with an uppercase C) to refer to the JSON entity specified in the Catalog spec, and 'catalog' (with a lowercase c) to refer to any full STAC implementation, which can be any mix of Catalogs Collections and Items.
As mentioned in the main overview, there are two main types of catalogs - static and dynamic. This section explains each of them in more depth and shares some best practices on each.
A static catalog is an implementation of the STAC specification that does not respond dynamically to requests. It is simply a set of files on a web server that link to one another in a way that can be crawled, often stored in an cloud storage service like Amazon S3, Azure Storage and Google Cloud Storage. But any http server could expose a static catalog as files. The core JSON documents and link structures are encoded in the file, and work as long as things are structured properly. A static catalog can only really be crawled by search engines and active catalogs; it can not respond to queries. But it is incredibly reliable, as there are no moving parts, no clusters or databases to maintain. The goal of STAC is to expose as much asset metadata online as possible, so the static catalog offers a very low barrier to entry for anyone with geospatial assets to make their data searchable.
Static catalogs tend to make extensive use of sub-catalogs to organize their Items into sensible browsing structures, as they can only have a single representation of their catalog, since the static nature means the structure is baked in. While it is up to the implementor to organize the catalog, it is recommended to arrange it in a way that would make sense for a human to browse a set of STAC Items in an intuitive matter.
Users indicate their intent for a file to be parsed as a Collection or Catalog using the required type
field on
each entity. For Collections, this field must have the value Collection
, while for Catalogs, it must have the
value Catalog
. Additionally, we recommend for static STACs indicate contents using the filenames catalog.json
or collection.json
to distinguish the Catalog from other JSON type files. In order to support multiple catalogs, the recommended practice
is to place the Catalog file in namespaces "directories". For example:
- current/catalog.json
- archive/catalog.json
A dynamic catalog is implemented in software as an HTTP-based API, following the same specified JSON structure for Items, Catalogs and Collections. Its structure and responses are usually generated dynamically, instead of relying on a set of already defined files. But the result is the same, enabling the same discovery from people browsing and search engines crawling. It generally indexes data for efficient responses, and aims to be easy for existing APIs to implement as a more standard interface for clients to consume. A dynamic catalog will sometimes be populated by a static catalog, or at least may have a 'backup' of its fields stored as a cached static catalog.
Dynamic catalogs often also implement the STAC API specification, that responds to search queries (like "give me all imagery in Oahu gathered on January 15, 2017"). But they are not required to. One can have a dynamic service that only implements the core STAC specification, and is crawled by STAC API implementations that provide 'search'. For example a Content Management Service like Drupal or an open data catalog like CKAN could choose to expose its content as linked STAC Items by implementing a dynamic catalog.
One benefit of a dynamic catalog is that it can generate various 'views' of the catalog, exposing the same Items in
different sub-catalog organization structures. For example one catalog could divide sub-catalogs by date and another by
providers, and users could browse down to both. The leaf Items should just be linked to in a single canonical location
(or at least use a rel
link that indicates the location of the canonical one).
Creating a catalog involves a number of decisions as to what folder structure to use to represent sub-catalogs, Items and assets, and how to name them. The specification leaves this totally open, and you can link things as you want. But it is recommended to be thoughtful about the organization of sub-catalogs, putting them into a structure that a person might reasonably browse (since they likely will with STAC on the Web recommendations). For example start with location, like a normal grid (path+row in Landsat) or administrative boundaries (country -> state-level) and then year, month, day. Or do the opposite - date and then location. Making a huge unordered list is technically allowed, but not helpful for discovery of data. Thus it is generally considered a best practice to make use of sub-catalogs to keep the size of each sub-catalog under a megabyte. If your sub-catalog lists tens of thousands of child items then you should consider an additional way to break it up.
We encourage people to explore new structures of linking data, but the following list is what a number of implementors ended up doing. Following these recommendations makes for more legible catalogs, and many tools operate more efficiently if you follow these recommendations.
- Root documents (Catalogs / Collections) should be at the root of a directory tree containing the static catalog.
- Catalogs should be named
catalog.json
and Collections should be namedcollection.json
. - Items should be named
<id>.json
. - Sub-Catalogs or sub-Collections should be stored in subdirectories of their parent
(and only 1 subdirectory deeper than a document's parent, e.g.
.../sample/sub1/catalog.json
). - Items should be stored in subdirectories of their parent Catalog or Collection. This means that each Item and its assets are contained in a unique subdirectory.
- Limit the number of Items in a Catalog or Collection, grouping / partitioning as relevant to the dataset.
- Use structural elements (Catalog and Collection) consistently across each 'level' of your hierarchy. For example, if levels 2 and 4 of the hierarchy only contain Collections, don't add a Catalog at levels 2 and 4.
One further recommendation to help tools is to always include the 'title' field when including a link, especially in the
item
, child
, parent
and root
links, even if it repeats several times. This should be the same as the 'title' in the
link destination. Having this enables clients to display a nice human readable name of the link without having to open the
link destination.
While these recommendations were primarily written for static catalogs, they apply equally well to dynamic catalogs. Subdirectories of course would just be URL paths generated dynamically, but the structure would be the same as is recommended.
One benefit of a dynamic catalog is that it can generate various 'views' of the catalog, exposing the same Items in different sub-catalog organization structures. For example one catalog could divide sub-catalogs by date and another by providers, and users could browse down to both. The leaf Items should just be linked to in a single canonical location (or at least use a rel link that indicates the location of the canonical one). It is recommended that dynamic catalogs provide multiple 'views' to allow users to navigate in a way that makes sense to them, providing multiple 'sub-catalogs' from the root that enable different paths to browse (country/state, date/time, constellation/satellite, etc). But the canonical 'rel' link should be used to designate the primary location of the Item to search engine crawlers.
Although it is allowed to mix STAC versions, it should be used carefully as clients may not support all versions so that the catalog could be of limited use to users. A Catalog or Collection linking to differently versioned Sub-Catalogs or Sub-Collections is a common use case when multiple data source are combined. Client developers should be aware of this use case. Nevertheless, it is strongly recommended that Catalogs don't contain differently versioned Items so that users/clients can at least use and/or download consistent (Sub-)Catalogs containing either all or no data. Collections that are referenced from Items should always use the same STAC version. Otherwise some behaviour of functionality may be unpredictable (e.g. merging common fields into Items or reading summaries).
One of the strongest recommendations for STAC is to always provide summaries in your Collections. The core team decided to not require them, in case there are future situations where providing a summary is too difficult. The idea behind them is not to exhaustively summarize every single field in the Collection, but to provide a bit of a 'curated' view.
Some general thinking on what to summarize is as follows:
-
Any field that is a range of data (like numbers or dates) is a great candidate to summarize, to give people a sense what values the data might be. For example in overhead imagery, a
view:off_nadir
with a range of 0 to 3 would tell people this imagery is all pretty much straight down, while a value of 15 to 40 would tell them that it's oblique imagery, or 0 to 60 that it's a Collection with lots of different look angles. -
Fields that have only one or a handful of values are also great to summarize. Collections with a single satellite may use a single
gsd
field in the summary, and it's quite useful for users to know that all data is going to be the same resolution. Similarly it's useful to know the names of all theplatform
values that are used in the Collection. -
It is less useful to summarize fields that have numerous different discrete values that can't easily be represented in a range. These will mostly be string values, when there aren't just a handful of options. For example if you had a 'location' field that gave 3 levels of administrative region (like 'San Francisco, California, United States') to help people understand more intuitively where a shot was taken. If your Collection has millions of Items, or even hundreds, you don't want to include all the different location string values in a summary.
-
Fields that consist of arrays are more of a judgement call. For example
instruments
is straightforward and recommended, as the elements of the array are a discrete set of options. On the other handproj:transform
makes no sense to summarize, as the union of all the values in the array are meaningless, as each Item is describing its transform, so combining them would just be a bunch of random numbers. So if the values contained in the array are independently meaningful (not interconnected) and there aren't hundreds of potential values then it is likely a good candidate to summarize.
We do highly recommend including an eo:bands
summary if your Items implement eo:bands
,
especially if it represents just one satellite or constellation. This should be a union of all the potential bands that you
have in assets. It is ok to only add the summary at the Collection level without putting an explicit eo:bands
summary at the
properties
level of an Item, since that is optional. This gives users of the Collection a sense of the sensor capabilities without
having to examine specific Items or aggregate across every Item.
Note that the ranges of summaries don't have to be exact. If you are publishing a catalog that is constantly updating with
data from a high agility satellite you can put the view:off_nadir
range to be the expected values, based on the satellite
design, instead of having it only represent the off nadir angles that are Items for assets already captured in the catalog.
We don't want growing catalogs to have to constantly check and recalculate their summaries whenever new data comes in - its
just meant to give users a sense of what types of values they could expect.
The STAC specifications allow both relative and absolute links, and says that self
links are not required, but are
strongly recommended. This is what the spec must say to enable the various use cases, but there is more subtlety for when it
is essential to use different link types. The best practice is to use one of the below catalog types, applying the link
recommendations consistently, instead of just haphazardly applying relative links in some places and absolute ones in other places.
A 'self-contained catalog' is one that is designed for portability. Users may want to download a catalog from online and be able to use it on their local computer, so all links need to be relative. Or a tool that creates catalogs may need to work without knowing the final location that it will live at online, so it isn't possible to set absolute 'self' URL's. These use cases should utilize a catalog that follows the listed principles:
-
Only relative href's in structural
links
: The full catalog structure of links down to sub-catalogs and Items, and their links back to their parents and roots, should be done with relative URL's. The structural rel types includeroot
,parent
,child
,item
, andcollection
. Other links can be absolute, especially if they describe a resource that makes less sense in the catalog, like sci:doi,derived_from
or evenlicense
(it can be nice to include the license in the catalog, but some licenses live at a canonical online location which makes more sense to refer to directly). This enables the full catalog to be downloaded or copied to another location and to still be valid. This also implies noself
link, as that link must be absolute. -
Use Asset
href
links consistently: The links to the actual assets are allowed to be either relative or absolute. There are two types of 'self-contained catalogs'.
These consist of just the STAC metadata (Collection, Catalog and Item files), and uses absolute href links to refer to the online locations of the assets.
These use relative href links for the assets, and includes them in the folder structure. This enables offline use of a catalog, by including all the actual data, referenced locally.
Self-contained catalogs tend to be used more as static catalogs, where they can be easily passed around. But often they will be generated by a more dynamic STAC service, enabling a subset of a catalog or a portion of a search criteria to be downloaded and used in other contexts. That catalog could be used offline, or even published in another location.
Self-contained catalogs are not just for offline use, however - they are designed to be able to be published online and to live
on the cloud in object storage. They just aim to ease the burden of publishing, by not requiring lots of updating of links.
Adding a single self
link at the root is recommended for online catalogs,
turning it into a 'relative published catalog', as detailed below.
This anchors it in an online location and enables provenance tracking.
While STAC is useful as a portable format to move between systems, the goal is really to enable search. While any combination of absolute and relative links is technically allowed by the specification, it is strongly recommended to follow one of the patterns described below when publishing online. Many clients will not properly handle arbitrary mixes of absolute and relative href's.
We refer to a 'published catalog' as one that lives online in a stable location, and uses self
links to establish its location and
enable easy provenance tracking. There are two types of published catalogs:
This is a catalog that uses absolute links for everything, both in the links
objects and in the
asset
hrefs. It includes self
links for every Item. Generally these are implemented by dynamic catalogs, as it is quite
easy for them to generate the proper links dynamically. But a static catalog that knows its published location could easily
implement it.
This is a self-contained catalog as described above, except it includes an absolute self
link at
the root to identify its online location. This is designed so that a self-contained catalog (of either type, with its
assets or just metadata) can be 'published' online
by just adding one field (the self link) to its root (Catalog or Collection). All the other links should remain the same. The resulting catalog
is no longer compliant with the self-contained catalog recommendations, but instead transforms into a 'relative published catalog'.
With this, a client may resolve Item and sub-catalog self links by traversing parent and root links, but requires reading
multiple sources to achieve this.
So if you are writing a STAC client it is recommended to start with just supporting these two types of published catalogs. In turn, if your data is published online publicly or for use on an intranet then following these recommendations will ensure that a wider range of clients will work with it.
Implementors of STAC are highly recommended to be quite liberal with their links
, and to use the rel
field (in conjunction
with the type
field) to communicate the structure and content of related entities. While each STAC spec describes some of the
'custom' relations STAC has set, the ideal is to reuse official IANA Link Relation
Types as much as possible. The following table describes
a number of the common official relations that are used in production STAC implementations.
Type | Description |
---|---|
alternate | It is recommended that STAC Items are also available as HTML, and should use this rel with "type" : "text/html" to tell clients where they can get a version of the Item or Collection to view in a browser. See STAC on the Web in Best Practices for more information. |
canonical | The URL of the canonical version of the Item or Collection. API responses and copies of catalogs should use this to inform users that they are direct copy of another STAC Item, using the canonical rel to refer back to the primary location. |
via | The URL of the source metadata that this STAC Item or Collection is created from. Used similarly to canonical, but refers back to a non-STAC record (Landsat MTL, Sentinel tileInfo.json, etc) |
prev | Indicates that the link's context is a part of a series, and that the previous in the series is the link target. Typically used in STAC by API's, to return smaller groups of Items or Catalogs/Collections. |
next | Indicates that the link's context is a part of a series, and that the next in the series is the link target. Typically used in STAC by API's, to return smaller groups of Items or Catalogs/Collections. |
preview | Refers to a resource that serves as a preview (see RFC 6903, sec. 3), usually a lower resolution thumbnail. In STAC this would usually be the same URL as the thumbnail asset, but adding it as a link in addition enables OGC API clients that can't read assets to make use of it. It also adds support for thumbnails to STAC Catalogs as they can't list assets. |
Being liberal with the links
also means that it's ok to have repeated links with the same href
. For example the
parent
and root
relation types will point at the same file when the child is directly below the root, and it is
recommended to include both.
In the Item and Collection STAC JSON, versions and deprecation can be indicated with the Versioning Indicators Extension.
The Items and Collections API Version Extension provides endpoints and semantics for keeping and accessing previous versions of Collections and Items. The same semantics can be used in static catalogs to preserve previous versions of the documents and link them together.
In order to achieve this, the static catalog must make sure that for every record created, a copy of the record is also created in a separate location and it is named with the version id adopted by the catalog. See here for recommendations on versioning schema.
The main record should also provide a link to the versioned record following the linking patterns described here. For every update to the record, the same cycle is repeated:
- Add link from the updated record to the previous version
- Create a copy of the updated record and name it correctly
When the record my_item.json
is created, a copy of it is also created. my_item.json
includes permalink
to my_item_01.json
.
The version suffix of the file name is taken from the version field of the record when it is available.
root / collections / example_collection / items / my_item / my_item.json
root / collections / example_collection / items / my_item / my_item_01.json
When my_item.json
is updated, the new my_item.json
includes a link to my_item_01.json
and is also copied to my_item_02.json
.
This ensures that my_item_02.json
includes a link to my_item_01.json
root / collections / example_collection / items / my_item / my_item.json
root / collections / example_collection / items / my_item / my_item_01.json
root / collections / example_collection / items / my_item / my_item_02.json
Many implementors are using static catalogs to be the reliable core of their dynamic services, or layering their STAC API on top of any static catalog that is published. These are some recommendations on how to handle this:
Implementors have found that it's best to 'ingest' a static STAC into an internal datastore (often elasticsearch, but a
traditional database could work fine too) and then generate the full STAC API responses from that internal representation.
There are instances that have the API refer directly to the static STAC Items, but this only works well if the static STAC
catalog is an 'absolute published catalog'. So the recommendation is to always use absolute links - either in the static
published catalog, or to create new absolute links for the STAC search/ endpoint
responses, with the API's location at the base url. The /
endpoint with the catalog could either link directly
to the static catalog, or can follow the 'dynamic catalog layout' recommendations above with a new set of URL's.
Ideally each Item would use its links
to provide a reference back to the static location. The location of the static
Item should be treated as the canonical location, as the generated API is more likely to move or be temporarily down. The
spec provides the derived_from
rel field, which fits well enough, but canonical
is likely the more appropriate one
as everything but the links should be the same.
There is a set of emerging practices to use services like Amazon's Simple Queue Service (SQS) and Simple Notification Service (SNS) to keep catalogs in sync. There is a great blog post on the CBERS STAC implementation on AWS. The core idea is that a static catalog should emit a notification whenever it changes. The recommendation for SNS is to use the STAC Item JSON as the message body, with some fields such as a scene’s datetime and geographic bounding box that allows basic geographic filtering from listeners.
The dynamic STAC API would then listen to the notifications and update its internal datastore whenever new data comes into the static catalog. Implementors have had success using AWS Lambda to do a full 'serverless' updating of the elasticsearch database, but it could just as easily be a server-based process.
Any tool that crawls a STAC implementation or encounters a STAC file in the wild needs a clear way to determine if it is an Item,
Collection or Catalog. As of 1.0.0 this is done primarily
with the type
field, and secondarily in Items with stac_version
, or optionally the rel
of the link to it.
if type is 'Collection'
=> Collection
else if type is 'Catalog'
=> Catalog
else if type is 'Feature' and stac_version is defined
=> Item
else
=> Invalid (JSON)
When crawling a STAC implementation, one can also make use of the relation type (rel
field) when following a link. If it is an item
rel type then the file must be a STAC Item. If it is child
, parent
or
root
then it must be a Catalog or a Collection, though the final determination between the two requires looking at the the type
field
in the Catalog or Collection JSON that is linked to. Note that there is also a type
field in STAC Link and Asset objects, but that
is for the Media Type, but there are not specific media types for Catalog and Collection. See the sections on STAC media
types, and Asset media types for more information.
In versions of STAC prior to 1.0 the process was a bit more complicated, as there was no type
field for catalogs and collections.
See this issue comment for a heuristic that works
for older STAC versions.