Native API
The Dataverse Software exposes most of its GUI functionality via a REST-based API. This section describes that functionality. Most API endpoints require an API token that can be passed as the X-Dataverse-key
HTTP header or in the URL as the key
query parameter.
Note
CORS Some API endpoint allow CORS (cross-origin resource sharing), which makes them usable from scripts running in web browsers. These endpoints are marked with a CORS badge.
Note
Bash environment variables shown below. The idea is that you can “export” these environment variables before copying and pasting the commands that use them. For example, you can set $SERVER_URL
by running export SERVER_URL="https://demo.dataverse.org"
in your Bash shell. To check if the environment variable was set properly, you can “echo” it (e.g. echo $SERVER_URL
). See also curl Examples and Environment Variables.
Warning
The Dataverse Software’s API is versioned at the URI - all API calls may include the version number like so: http://server-address/api/v1/...
. Omitting the v1
part would default to the latest API version (currently 1). When writing scripts/applications that will be used for a long time, make sure to specify the API version, so they don’t break when the API is upgraded.
Contents:
-
List Metadata Block Facets Configured for a Dataverse Collection
Configure a Dataverse Collection to Inherit Its Metadata Block Facets from Its Parent
Assign Default Role to User Creating a Dataset in a Dataverse Collection
Determine if a Dataverse Collection Inherits Its Metadata Blocks from Its Parent
Configure a Dataverse Collection to Inherit Its Metadata Blocks from Its Parent
Import a Dataset into a Dataverse Installation with a DDI file
-
-
Dataverse Collections
Create a Dataverse Collection
A Dataverse collection is a container for datasets and other Dataverse collections as explained in the Dataverse Collection Management section of the User Guide.
The steps for creating a Dataverse collection are:
Prepare a JSON file containing the name, description, etc, of the Dataverse collection you’d like to create.
Figure out the alias or database id of the “parent” Dataverse collection into which you will be creating your new Dataverse collection.
Execute a curl command or equivalent.
Download dataverse-complete.json
file and modify it to suit your needs. The fields name
, alias
, and dataverseContacts
are required. The controlled vocabulary for dataverseType
is the following:
DEPARTMENT
JOURNALS
LABORATORY
ORGANIZATIONS_INSTITUTIONS
RESEARCHERS
RESEARCH_GROUP
RESEARCH_PROJECTS
TEACHING_COURSES
UNCATEGORIZED
{
"name": "Scientific Research",
"alias": "science",
"dataverseContacts": [
{
"contactEmail": "pi@example.edu"
},
{
"contactEmail": "student@example.edu"
}
],
"affiliation": "Scientific Research University",
"description": "We do all the science.",
"dataverseType": "LABORATORY"
}
The curl command below assumes you have kept the name “dataverse-complete.json” and that this file is in your current working directory.
Next you need to figure out the alias or database id of the “parent” Dataverse collection into which you will be creating your new Dataverse collection. Out of the box the top level Dataverse collection has an alias of “root” and a database id of “1” but your installation may vary. The easiest way to determine the alias of your root Dataverse collection is to click “Advanced Search” and look at the URL. You may also choose a parent under the root.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PARENT=root
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$PARENT --upload-file dataverse-complete.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/dataverses/root --upload-file dataverse-complete.json
You should expect an HTTP 200 response and JSON beginning with “status”:”OK” followed by a representation of the newly-created Dataverse collection.
View a Dataverse Collection
CORS
View a JSON representation of the Dataverse collection identified by $id
. $id
can be the database ID of the Dataverse collection, its alias, or the special value :root
for the root Dataverse collection.
To view a published Dataverse collection:
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl $SERVER_URL/api/dataverses/$ID
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/dataverses/root
To view an unpublished Dataverse collection:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root
Delete a Dataverse Collection
Before you may delete a Dataverse collection you must first delete or move all of its contents elsewhere.
Deletes the Dataverse collection whose database ID or alias is given:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X DELETE $SERVER_URL/api/dataverses/$ID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X DELETE https://demo.dataverse.org/api/dataverses/root
Show Contents of a Dataverse Collection
CORS Lists all the Dataverse collections and datasets directly under a Dataverse collection (direct children only, not recursive) specified by database id or alias. If you pass your API token and have access, unpublished Dataverse collections and datasets will be included in the response. The list will be ordered by database id within type of object. That is, all Dataverse collections will be listed first and ordered by database id, then all datasets will be listed ordered by database id.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/contents
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/contents
Report the data (file) size of a Dataverse Collection
Shows the combined size in bytes of all the files uploaded into the Dataverse collection id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/storagesize
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/storagesize
The size of published and unpublished files will be summed both in the Dataverse collection specified and beneath all its sub-collections, recursively.
By default, only the archival files are counted - i.e., the files uploaded by users (plus the tab-delimited versions generated for tabular data files on ingest). If the optional argument includeCached=true
is specified, the API will also add the sizes of all the extra files generated and cached by the Dataverse installation - the resized thumbnail versions for image files, the metadata exports for published datasets, etc.
List Roles Defined in a Dataverse Collection
All the roles defined directly in the Dataverse collection identified by id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/roles
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/roles
List Facets Configured for a Dataverse Collection
CORS
List all the facets for a given Dataverse collection id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/facets
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/facets
Set Facets for a Dataverse Collection
Assign search facets for a given Dataverse collection identified by id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/dataverses/$ID/facets --upload-file dataverse-facets.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/dataverses/root/facets --upload-file dataverse-facets.json
Where dataverse-facets.json
contains a JSON encoded list of metadata keys (e.g. ["authorName","authorAffiliation"]
).
List Metadata Block Facets Configured for a Dataverse Collection
CORS
List the metadata block facet configuration with all the metadata block configured for a given Dataverse collection id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/metadatablockfacets
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/metadatablockfacets
Set Metadata Block Facets for a Dataverse Collection
Sets the metadata blocks that will appear in the Dataset Features
facet category for a given Dataverse collection identified by id
.
In order to set or clear the metadata blocks for a collection, you must first set the metadata block facet root to true.
To clear the metadata blocks set by a parent collection, submit an empty array (e.g. []
):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN" -X POST -H "Content-type:application/json" $SERVER_URL/api/dataverses/$ID/metadatablockfacets --upload-file metadata-block-facets.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-type:application/json" https://demo.dataverse.org/api/dataverses/root/metadatablockfacets --upload-file metadata-block-facets.json
Where metadata-block-facets.json
contains a JSON encoded list of metadata block names (e.g. ["socialscience","geospatial"]
). This endpoint supports an empty list (e.g. []
)
Configure a Dataverse Collection to Inherit Its Metadata Block Facets from Its Parent
Set whether the Dataverse collection is a metadata block facet root, or does it uses its parent metadata block facets. Possible values are true
and false
(both are valid JSON expressions).
When updating the root to false, it will clear any metadata block facets from the collection. When updating to true, it will copy the metadata block facets from the parent collection:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST -H "Content-type:application/json" $SERVER_URL/api/dataverses/$ID/metadatablockfacets/isRoot -d 'true'
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-type:application/json" https://demo.dataverse.org/api/dataverses/root/metadatablockfacets/isRoot -d 'true'
Create a New Role in a Dataverse Collection
Creates a new role under Dataverse collection id
. Needs a json file with the role description:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$ID/roles --upload-file roles.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-type:application/json" https://demo.dataverse.org/api/dataverses/root/roles --upload-file roles.json
Where roles.json
looks like this:
{
"alias": "sys1",
"name": “Restricted System Role”,
"description": “A person who may only add datasets.”,
"permissions": [
"AddDataset"
]
}
Note
Only a Dataverse installation account with superuser permissions is allowed to create roles in a Dataverse Collection.
List Role Assignments in a Dataverse Collection
List all the role assignments at the given Dataverse collection:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/assignments
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/assignments
Assign Default Role to User Creating a Dataset in a Dataverse Collection
Assign a default role to a user creating a dataset in a Dataverse collection id
where roleAlias
is the database alias of the role to be assigned:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
export ROLE_ALIAS=curator
curl -H X-Dataverse-key:$API_TOKEN -X PUT $SERVER_URL/api/dataverses/$ID/defaultContributorRole/$ROLE_ALIAS
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X PUT https://demo.dataverse.org/api/dataverses/root/defaultContributorRole/curator
Note: You may use “none” as the ROLE_ALIAS
. This will prevent a user who creates a dataset from having any role on that dataset. It is not recommended for Dataverse collections with human contributors.
Assign a New Role on a Dataverse Collection
Assigns a new role, based on the POSTed JSON:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST -H "Content-Type: application/json" $SERVER_URL/api/dataverses/$ID/assignments --upload-file role.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-Type: application/json" https://demo.dataverse.org/api/dataverses/root/assignments --upload-file role.json
POSTed JSON example (the content of role.json
file):
{
"assignee": "@uma",
"role": "curator"
}
Delete Role Assignment from a Dataverse Collection
Delete the assignment whose id is $id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
export ASSIGNMENT_ID=6
curl -H X-Dataverse-key:$API_TOKEN -X DELETE $SERVER_URL/api/dataverses/$ID/assignments/$ASSIGNMENT_ID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X DELETE https://demo.dataverse.org/api/dataverses/root/assignments/6
List Metadata Blocks Defined on a Dataverse Collection
CORS Get the metadata blocks defined on a Dataverse collection which determine which field are available to authors when they create and edit datasets within that Dataverse collection. This feature is described in General Information section of Dataverse Collection Management of the User Guide.
Please note that an API token is only required if the Dataverse collection has not been published.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/metadatablocks
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/metadatablocks
Define Metadata Blocks for a Dataverse Collection
You can define the metadata blocks available to authors within a Dataverse collection.
The metadata blocks that are available with a default Dataverse installation are in define-metadatablocks.json
(also shown below) and you should download this file and edit it to meet your needs. Please note that the “citation” metadata block is required. You must have “EditDataverse” permission on the Dataverse collection.
[
"citation",
"geospatial",
"socialscience",
"astrophysics",
"biomedical",
"journal"
]
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$ID/metadatablocks -H \"Content-type:application/json\" --upload-file define-metadatablocks.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-type:application/json" --upload-file define-metadatablocks.json https://demo.dataverse.org/api/dataverses/root/metadatablocks
Determine if a Dataverse Collection Inherits Its Metadata Blocks from Its Parent
Get whether the Dataverse collection is a metadata block root, or does it uses its parent blocks:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/metadatablocks/isRoot
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/metadatablocks/isRoot
Configure a Dataverse Collection to Inherit Its Metadata Blocks from Its Parent
Set whether the Dataverse collection is a metadata block root, or does it uses its parent blocks. Possible
values are true
and false
(both are valid JSON expressions):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X PUT $SERVER_URL/api/dataverses/$ID/metadatablocks/isRoot
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X PUT https://demo.dataverse.org/api/dataverses/root/metadatablocks/isRoot
Note
Previous endpoints $SERVER/api/dataverses/$id/metadatablocks/:isRoot
and POST http://$SERVER/api/dataverses/$id/metadatablocks/:isRoot?key=$apiKey
are deprecated, but supported.
Create a Dataset in a Dataverse Collection
A dataset is a container for files as explained in the Dataset + File Management section of the User Guide.
To create a dataset, you must supply a JSON file that contains at least the following required metadata fields:
Title
Author Name
Point of Contact Email
Description Text
Subject
As a starting point, you can download dataset-finch1.json
and modify it to meet your needs. (dataset-finch1_fr.json
is a variant of this file that includes setting the metadata language (see :MetadataLanguages) to French (fr). In addition to this minimal example, you can download dataset-create-new-all-default-fields.json
which populates all of the metadata fields that ship with a Dataverse installation.)
The curl command below assumes you have kept the name “dataset-finch1.json” and that this file is in your current working directory.
Next you need to figure out the alias or database id of the “parent” Dataverse collection into which you will be creating your new dataset. Out of the box the top level Dataverse collection has an alias of “root” and a database id of “1” but your installation may vary. The easiest way to determine the alias of your root Dataverse collection is to click “Advanced Search” and look at the URL. You may also choose a parent Dataverse collection under the root Dataverse collection.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export PARENT=root
export SERVER_URL=https://demo.dataverse.org
curl -H X-Dataverse-key:$API_TOKEN -X POST "$SERVER_URL/api/dataverses/$PARENT/datasets" --upload-file dataset-finch1.json -H 'Content-type:application/json'
The fully expanded example above (without the environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/dataverses/root/datasets" --upload-file "dataset-finch1.json" -H 'Content-type:application/json'
You should expect an HTTP 200 (“OK”) response and JSON indicating the database ID and Persistent ID (PID such as DOI or Handle) that has been assigned to your newly created dataset.
Note
Only a Dataverse installation account with superuser permissions is allowed to include files when creating a dataset via this API. Adding files this way only adds their file metadata to the database, you will need to manually add the physical files to the file system.
Import a Dataset into a Dataverse Collection
Note
This action requires a Dataverse installation account with super-user permissions.
To import a dataset with an existing persistent identifier (PID), the dataset’s metadata should be prepared in Dataverse installation’s native JSON format. The PID is provided as a parameter at the URL. The following line imports a dataset with the PID PERSISTENT_IDENTIFIER
to the Dataverse installation, and then releases it:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export DATAVERSE_ID=root
export PERSISTENT_IDENTIFIER=doi:ZZ7/MOSEISLEYDB94
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$DATAVERSE_ID/datasets/:import?pid=$PERSISTENT_IDENTIFIER&release=yes --upload-file dataset.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/dataverses/root/datasets/:import?pid=doi:ZZ7/MOSEISLEYDB94&release=yes --upload-file dataset.json
The pid
parameter holds a persistent identifier (such as a DOI or Handle). The import will fail if no PID is provided, or if the provided PID fails validation.
The optional release
parameter tells the Dataverse installation to immediately publish the dataset. If the parameter is changed to no
, the imported dataset will remain in DRAFT
status.
The JSON format is the same as that supported by the native API’s create dataset command, although it also allows packages. For example:
{
"datasetVersion": {
"license": {
"name": "CC0 1.0",
"uri": "http://creativecommons.org/publicdomain/zero/1.0"
},
"protocol":"doi",
"authority":"10.502",
"identifier":"ZZ7/MOSEISLEYDB94",
"metadataBlocks": {
"citation": {
"fields": [
{
"typeName": "title",
"multiple": false,
"value": "Imported dataset with package files No. 3",
"typeClass": "primitive"
},
{
"typeName": "productionDate",
"multiple": false,
"value": "2011-02-23",
"typeClass": "primitive"
},
{
"typeName": "dsDescription",
"multiple": true,
"value": [
{
"dsDescriptionValue": {
"typeName": "dsDescriptionValue",
"multiple": false,
"value": "Native Dataset",
"typeClass": "primitive"
}
}
],
"typeClass": "compound"
},
{
"typeName": "subject",
"multiple": true,
"value": [
"Medicine, Health and Life Sciences"
],
"typeClass": "controlledVocabulary"
},
{
"typeName": "author",
"multiple": true,
"value": [
{
"authorAffiliation": {
"typeName": "authorAffiliation",
"multiple": false,
"value": "LibraScholar Medical School",
"typeClass": "primitive"
},
"authorName": {
"typeName": "authorName",
"multiple": false,
"value": "Doc, Bob",
"typeClass": "primitive"
}
},
{
"authorAffiliation": {
"typeName": "authorAffiliation",
"multiple": false,
"value": "LibraScholar Medical School",
"typeClass": "primitive"
},
"authorName": {
"typeName": "authorName",
"multiple": false,
"value": "Prof, Arthur",
"typeClass": "primitive"
}
}
],
"typeClass": "compound"
},
{
"typeName": "depositor",
"multiple": false,
"value": "Prof, Arthur",
"typeClass": "primitive"
},
{
"typeName": "datasetContact",
"multiple": true,
"value": [
{
"datasetContactEmail": {
"typeName": "datasetContactEmail",
"multiple": false,
"value": "aprof@mailinator.com",
"typeClass": "primitive"
}
}
],
"typeClass": "compound"
}
],
"displayName": "Citation Metadata"
}
},
"files": [
{
"description": "",
"label": "pub",
"restricted": false,
"version": 1,
"datasetVersionId": 1,
"dataFile": {
"id": 4,
"filename": "pub",
"contentType": "application/vnd.dataverse.file-package",
"filesize": 1698795873,
"description": "",
"storageIdentifier": "162017e5ad5-ee2a2b17fee9",
"originalFormatLabel": "UNKNOWN",
"rootDataFileId": -1,
"checksum": {
"type": "SHA-1",
"value": "54bc7ddb096a490474bd8cc90cbed1c96730f350"
}
}
}
]
}
}
Before calling the API, make sure the data files referenced by the POST
ed JSON are placed in the dataset directory with filenames matching their specified storage identifiers. In installations using POSIX storage, these files must be made readable by the app server user.
Tip
If possible, it’s best to avoid spaces and special characters in the storage identifier in order to avoid potential portability problems. The storage identifier corresponds with the filesystem name (or bucket identifier) of the data file, so these characters may cause unpredictability with filesystem tools.
Warning
This API does not cover staging files (with correct contents, checksums, sizes, etc.) in the corresponding places in the Dataverse installation’s filestore.
This API endpoint does not support importing files’ persistent identifiers.
A Dataverse installation can import datasets with a valid PID that uses a different protocol or authority than said server is configured for. However, the server will not update the PID metadata on subsequent update and publish actions.
Import a Dataset into a Dataverse Installation with a DDI file
Note
This action requires a Dataverse installation account with super-user permissions.
To import a dataset with an existing persistent identifier (PID), you have to provide the PID as a parameter at the URL. The following line imports a dataset with the PID PERSISTENT_IDENTIFIER
to the Dataverse installation, and then releases it:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export DATAVERSE_ID=root
export PERSISTENT_IDENTIFIER=doi:ZZ7/MOSEISLEYDB94
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$DATAVERSE_ID/datasets/:importddi?pid=$PERSISTENT_IDENTIFIER&release=yes --upload-file ddi_dataset.xml
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/dataverses/root/datasets/:importddi?pid=doi:ZZ7/MOSEISLEYDB94&release=yes --upload-file ddi_dataset.xml
The optional pid
parameter holds a persistent identifier (such as a DOI or Handle). The import will fail if the provided PID fails validation.
The optional release
parameter tells the Dataverse installation to immediately publish the dataset. If the parameter is changed to no
, the imported dataset will remain in DRAFT
status.
The file is a DDI XML file. A sample DDI XML file may be downloaded here: ddi_dataset.xml
Note that DDI XML does not have a field that corresponds to the “Subject” field in Dataverse. Therefore the “Import DDI” API endpoint populates the “Subject” field with N/A
. To update the “Subject” field one will need to call the Edit Dataset Metadata API with a JSON file that contains an update to “Subject” such as subject-update-metadata.json
. Alternatively, the web interface can be used to add a subject.
Warning
This API does not handle files related to the DDI file.
A Dataverse installation can import datasets with a valid PID that uses a different protocol or authority than said server is configured for. However, the server will not update the PID metadata on subsequent update and publish actions.
Publish a Dataverse Collection
In order to publish a Dataverse collection, you must know either its “alias” (which the GUI calls an “identifier”) or its database ID.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/dataverses/$ID/actions/:publish
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/dataverses/root/actions/:publish
You should expect a 200 (“OK”) response and JSON output.
Retrieve Guestbook Responses for a Dataverse Collection
For more about guestbooks, see Dataset Guestbooks in the User Guide.
In order to retrieve the Guestbook Responses for a Dataverse collection, you must know either its “alias” (which the GUI calls an “identifier”) or its database ID. If the Dataverse collection has more than one guestbook you may provide the id of a single guestbook as an optional parameter. If no guestbook id is provided the results returned will be the same as pressing the “Download All Responses” button on the Manage Dataset Guestbook page. If the guestbook id is provided then only those responses from that guestbook will be included. The FILENAME parameter is optional, and if it is not included, the responses will be displayed in the console.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
export GUESTBOOK_ID=1
export FILENAME=myResponses.csv
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/dataverses/$ID/guestbookResponses?guestbookId=$GUESTBOOK_ID -o $FILENAME
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/dataverses/root/guestbookResponses?guestbookId=1 -o myResponses.csv
Datasets
Note Creation of new datasets is done with a POST
onto a Dataverse collection. See the Dataverse Collections section above.
Note In all commands below, dataset versions can be referred to as:
:draft
the draft version, if any:latest
either a draft (if exists) or the latest published version.:latest-published
the latest published versionx.y
a specific version, wherex
is the major version number andy
is the minor version number.x
same asx.0
Get JSON Representation of a Dataset
Note
Datasets can be accessed using persistent identifiers. This is done by passing the constant :persistentId
where the numeric id of the dataset is expected, and then passing the actual persistent id as a query parameter with the name persistentId
.
Example: Getting the dataset whose DOI is 10.5072/FK2/J8SJZB:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/datasets/:persistentId/?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:$API_TOKEN" https://demo.dataverse.org/api/datasets/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB
Getting its draft version:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
curl -H "X-Dataverse-key:$API_TOKEN" http://$SERVER/api/datasets/:persistentId/versions/:draft?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:$API_TOKEN" https://demo.dataverse.org/api/datasets/:persistentId/versions/:draft?persistentId=doi:10.5072/FK2/J8SJZB
CORS Show the dataset whose database id is passed:
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl $SERVER_URL/api/datasets/$ID
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24
The dataset id can be extracted from the response retrieved from the API which uses the persistent identifier (/api/datasets/:persistentId/?persistentId=$PERSISTENT_IDENTIFIER
).
List Versions of a Dataset
CORS List versions of the dataset:
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl $SERVER_URL/api/datasets/$ID/versions
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/versions
It returns a list of versions with their metadata, and file list:
{
"status": "OK",
"data": [
{
"id": 7,
"datasetId": 24,
"datasetPersistentId": "doi:10.5072/FK2/U6AEZM",
"storageIdentifier": "file://10.5072/FK2/U6AEZM",
"versionNumber": 2,
"versionMinorNumber": 0,
"versionState": "RELEASED",
"lastUpdateTime": "2015-04-20T09:58:35Z",
"releaseTime": "2015-04-20T09:58:35Z",
"createTime": "2015-04-20T09:57:32Z",
"license": {
"name": "CC0 1.0",
"uri": "http://creativecommons.org/publicdomain/zero/1.0"
},
"termsOfAccess": "You need to request for access.",
"fileAccessRequest": true,
"metadataBlocks": {...},
"files": [...]
},
{
"id": 6,
"datasetId": 24,
"datasetPersistentId": "doi:10.5072/FK2/U6AEZM",
"storageIdentifier": "file://10.5072/FK2/U6AEZM",
"versionNumber": 1,
"versionMinorNumber": 0,
"versionState": "RELEASED",
"UNF": "UNF:6:y4dtFxWhBaPM9K/jlPPuqg==",
"lastUpdateTime": "2015-04-20T09:56:34Z",
"releaseTime": "2015-04-20T09:56:34Z",
"createTime": "2015-04-20T09:43:45Z",
"license": {
"name": "CC0 1.0",
"uri": "http://creativecommons.org/publicdomain/zero/1.0"
},
"termsOfAccess": "You need to request for access.",
"fileAccessRequest": true,
"metadataBlocks": {...},
"files": [...]
}
]
}
Get Version of a Dataset
CORS Show a version of the dataset. The output includes any metadata blocks the dataset might have:
export SERVER_URL=https://demo.dataverse.org
export ID=24
export VERSION=1.0
curl $SERVER_URL/api/datasets/$ID/versions/$VERSION
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/versions/1.0
Export Metadata of a Dataset in Various Formats
CORS Export the metadata of the current published version of a dataset in various formats.
See also Batch Exports Through the API and the note below:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
export METADATA_FORMAT=ddi
curl $SERVER_URL/api/datasets/export?exporter=$METADATA_FORMAT&persistentId=PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/export?exporter=ddi&persistentId=doi:10.5072/FK2/J8SJZB
Note
Supported exporters (export formats) are ddi
, oai_ddi
, dcterms
, oai_dc
, schema.org
, OAI_ORE
, Datacite
, oai_datacite
and dataverse_json
. Descriptive names can be found under Supported Metadata Export Formats in the User Guide.
Schema.org JSON-LD
Please note that the schema.org
format has changed in backwards-incompatible ways after Dataverse Software version 4.9.4:
“description” was a single string and now it is an array of strings.
“citation” was an array of strings and now it is an array of objects.
Both forms are valid according to Google’s Structured Data Testing Tool at https://search.google.com/structured-data/testing-tool . (This tool will report “The property affiliation is not recognized by Google for an object of type Thing” and this known issue is being tracked at https://github.com/IQSS/dataverse/issues/5029 .) Schema.org JSON-LD is an evolving standard that permits a great deal of flexibility. For example, https://schema.org/docs/gs.html#schemaorg_expected indicates that even when objects are expected, it’s ok to just use text. As with all metadata export formats, we will try to keep the Schema.org JSON-LD format your Dataverse installation emits backward-compatible to made integrations more stable, despite the flexibility that’s afforded by the standard.
List Files in a Dataset
CORS Lists all the file metadata, for the given dataset and version:
export SERVER_URL=https://demo.dataverse.org
export ID=24
export VERSION=1.0
curl $SERVER_URL/api/datasets/$ID/versions/$VERSION/files
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/versions/1.0/files
View Dataset Files and Folders as a Directory Index
CORS Provides a crawlable view of files and folders within the given dataset and version:
curl $SERVER_URL/api/datasets/${ID}/dirindex/
# or
curl ${SERVER_URL}/api/datasets/:persistentId/dirindex?persistentId=doi:${PERSISTENT_ID}
Optional parameters:
folder
- A subfolder within the dataset (default: top-level view of the dataset)version
- Specifies the version (default: latest published version)original=true
- Download original versions of ingested tabular files.
This API outputs a simple html listing, based on the standard Apache directory index, with Access API download links for individual files, and recursive calls to the API above for sub-folders.
Using this API, wget --recursive
(or a similar crawling client) can
be used to download all the files in a dataset, preserving the file
names and folder structure; without having to use the download-as-zip
API. In addition to being faster (zipping is a relatively
resource-intensive operation on the server side), this process can be
restarted if interrupted (with wget --continue
or equivalent) -
unlike zipped multi-file downloads that always have to start from the
beginning.
On a system that uses S3 with download redirects, the individual file downloads will be handled by S3 directly, without having to be proxied through the Dataverse application.
For example, if you have a dataset version with 2 files, one with the folder named “subfolder”:
or, as viewed as a tree on the dataset page:
The output of the API for the top-level folder (/api/datasets/{dataset}/dirindex/
) will be as follows:
with the underlying html source:
<!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 3.2 Final//EN">
<html><head><title>Index of folder /</title></head>
<body><h1>Index of folder / in dataset doi:XXX/YY/ZZZZ (v. MM)</h1>
<table>
<tr><th>Name</th><th>Last Modified</th><th>Size</th><th>Description</th></tr>
<tr><th colspan="4"><hr></th></tr>
<tr><td><a href="/api/datasets/NNNN/dirindex/?folder=subfolder">subfolder/</a></td><td align="right"> - </td><td align="right"> - </td><td align="right"> </td></tr>
<tr><td><a href="/api/access/datafile/KKKK">testfile.txt</a></td><td align="right">13-January-2021 22:35</td><td align="right">19 B</td><td align="right"> </td></tr>
</table></body></html>
The /dirindex/?folder=subfolder
link above will produce the following view:
with the html source as follows:
<!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 3.2 Final//EN">
<html><head><title>Index of folder /subfolder</title></head>
<body><h1>Index of folder /subfolder in dataset doi:XXX/YY/ZZZZ (v. MM)</h1>
<table>
<tr><th>Name</th><th>Last Modified</th><th>Size</th><th>Description</th></tr>
<tr><th colspan="4"><hr></th></tr>
<tr><td><a href="/api/access/datafile/subfolder/LLLL">50by1000.tab</a></td><td align="right">11-January-2021 09:31</td><td align="right">102.5 KB</td><td align="right"> </td></tr>
</table></body></html>
An example of a wget
command line for crawling (“recursive downloading”) of the files and folders in a dataset:
wget -r -e robots=off -nH --cut-dirs=3 --content-disposition https://demo.dataverse.org/api/datasets/${ID}/dirindex/
# or
wget -r -e robots=off -nH --cut-dirs=3 --content-disposition https://demo.dataverse.org/api/datasets/:persistentId/dirindex?persistentId=doi:${PERSISTENT_ID}
Note
In addition to the files and folders in the dataset, the command line above will also save the directory index of each folder, in a separate folder “dirindex”.
List All Metadata Blocks for a Dataset
CORS Lists all the metadata blocks and their content, for the given dataset and version:
export SERVER_URL=https://demo.dataverse.org
export ID=24
export VERSION=1.0
curl $SERVER_URL/api/datasets/$ID/versions/$VERSION/metadata
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/versions/1.0/metadata
List Single Metadata Block for a Dataset
CORS Lists the metadata block named METADATA_BLOCK, for the given dataset and version:
export SERVER_URL=https://demo.dataverse.org
export ID=24
export VERSION=1.0
export METADATA_BLOCK=citation
curl $SERVER_URL/api/datasets/$ID/versions/$VERSION/metadata/$METADATA_BLOCK
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/versions/1.0/metadata/citation
Update Metadata For a Dataset
Updates the metadata for a dataset. If a draft of the dataset already exists, the metadata of that draft is overwritten; otherwise, a new draft is created with this metadata.
You must download a JSON representation of the dataset, edit the JSON you download, and then send the updated JSON to the Dataverse installation.
For example, after making your edits, your JSON file might look like dataset-update-metadata.json
which you would send to the Dataverse installation like this:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/BCCP9Z
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/:persistentId/versions/:draft?persistentId=$PERSISTENT_IDENTIFIER --upload-file dataset-update-metadata.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/:persistentId/versions/:draft?persistentId=doi:10.5072/FK2/BCCP9Z --upload-file dataset-update-metadata.json
Note that in the example JSON file above, there is a single JSON object with metadataBlocks
as a key. When you download a representation of your dataset in JSON format, the metadataBlocks
object you need is nested inside another object called datasetVersion
. To extract just the metadataBlocks
key when downloading a JSON representation, you can use a tool such as jq
like this:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/BCCP9Z
curl -H "X-Dataverse-key: $API_TOKEN" $SERVER_URL/api/datasets/:persistentId/versions/:latest?persistentId=$PERSISTENT_IDENTIFIER | jq '.data | {metadataBlocks: .metadataBlocks}' > dataset-update-metadata.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/datasets/:persistentId/versions/:latest?persistentId=doi:10.5072/FK2/BCCP9Z | jq '.data | {metadataBlocks: .metadataBlocks}' > dataset-update-metadata.json
Now that the resulting JSON file only contains the metadataBlocks
key, you can edit the JSON such as with vi
in the example below:
vi dataset-update-metadata.json
Now that you’ve made edits to the metadata in your JSON file, you can send it to a Dataverse installation as described above.
Edit Dataset Metadata
Alternatively to replacing an entire dataset version with its JSON representation you may add data to dataset fields that are blank or accept multiple values with the following:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/BCCP9Z
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/:persistentId/editMetadata/?persistentId=$PERSISTENT_IDENTIFIER --upload-file dataset-add-metadata.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/:persistentId/editMetadata/?persistentId=doi:10.5072/FK2/BCCP9Z --upload-file dataset-add-metadata.json
You may also replace existing metadata in dataset fields with the following (adding the parameter replace=true):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/BCCP9Z
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/:persistentId/editMetadata?persistentId=$PERSISTENT_IDENTIFIER&replace=true --upload-file dataset-update-metadata.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/:persistentId/editMetadata/?persistentId=doi:10.5072/FK2/BCCP9Z&replace=true --upload-file dataset-update-metadata.json
For these edits your JSON file need only include those dataset fields which you would like to edit. A sample JSON file may be downloaded here: dataset-edit-metadata-sample.json
Delete Dataset Metadata
You may delete some of the metadata of a dataset version by supplying a file with a JSON representation of dataset fields that you would like to delete with the following:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/BCCP9Z
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/:persistentId/deleteMetadata/?persistentId=$PERSISTENT_IDENTIFIER --upload-file dataset-delete-author-metadata.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/:persistentId/deleteMetadata/?persistentId=doi:10.5072/FK2/BCCP9Z --upload-file dataset-delete-author-metadata.json
For these deletes your JSON file must include an exact match of those dataset fields which you would like to delete. A sample JSON file may be downloaded here: dataset-delete-author-metadata.json
Publish a Dataset
When publishing a dataset it’s good to be aware of the Dataverse Software’s versioning system, which is described in the Dataset + File Management section of the User Guide.
If this is the first version of the dataset, its version number will be set to 1.0
. Otherwise, the new dataset version number is determined by the most recent version number and the type
parameter. Passing type=minor
increases the minor version number (2.3 is updated to 2.4). Passing type=major
increases the major version number (2.3 is updated to 3.0). (Superusers can pass type=updatecurrent
to update metadata without changing the version number.)
This call also supports an optional boolean query parameter: assureIsIndexed
. If true, the call will fail with a 409 (“CONFLICT”) response if the dataset is awaiting re-indexing. If indexing occurs during publishing it could cause the publish request to fail, after a 202 response has been received. Using this parameter allows the caller to wait for indexing to occur and avoid this possibility. It is most useful in situations where edits are made immediately before publication.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
export MAJOR_OR_MINOR=major
curl -H "X-Dataverse-key: $API_TOKEN" -X POST "$SERVER_URL/api/datasets/:persistentId/actions/:publish?persistentId=$PERSISTENT_ID&type=$MAJOR_OR_MINOR"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/datasets/:persistentId/actions/:publish?persistentId=doi:10.5072/FK2/J8SJZB&type=major"
The quotes around the URL are required because there is more than one query parameter separated by an ampersand (&
), which has special meaning to Unix shells such as Bash. Putting the &
in quotes ensures that “type” is interpreted as one of the query parameters.
You should expect JSON output and a 200 (“OK”) response in most cases. If you receive a 202 (“ACCEPTED”) response, this is normal for installations that have workflows configured. Workflows are described in the Workflows section of the Developer Guide. A 409 (“CONFLICT”) response is also possible if you set assureIsIndexed=true
. (In this case, one could then repeat the call until a 200/202 response is sent.)
Note
POST should be used to publish a dataset. GET is supported for backward compatibility but is deprecated and may be removed: https://github.com/IQSS/dataverse/issues/2431
Delete Dataset Draft
Deletes the draft version of dataset $ID
. Only the draft version can be deleted:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID/versions/:draft
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24/versions/:draft
Set Citation Date Field Type for a Dataset
Sets the dataset citation date field type for a given dataset. :publicationDate
is the default.
Note that the dataset citation date field type must be a date field.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
export DATASET_FIELD_TYPE_NAME=dateOfDeposit
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/:persistentId/citationdate?persistentId=$PERSISTENT_IDENTIFIER --data "$DATASET_FIELD_TYPE_NAME"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/:persistentId/citationdate?persistentId=doi:10.5072/FK2/J8SJZB --data "dateOfDeposit"
Revert Citation Date Field Type to Default for Dataset
Restores the default citation date field type, :publicationDate
, for a given dataset.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/:persistentId/citationdate?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/:persistentId/citationdate?persistentId=doi:10.5072/FK2/J8SJZB
List Role Assignments in a Dataset
Lists all role assignments on a given dataset:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=2347
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/datasets/$ID/assignments
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/datasets/2347/assignments
Assign a New Role on a Dataset
Assigns a new role, based on the POSTed JSON:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=2347
curl -H X-Dataverse-key:$API_TOKEN -X POST -H "Content-Type: application/json" $SERVER_URL/api/datasets/$ID/assignments --upload-file role.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-Type: application/json" https://demo.dataverse.org/api/datasets/2347/assignments --upload-file role.json
POSTed JSON example (the content of role.json
file):
{
"assignee": "@uma",
"role": "curator"
}
Delete Role Assignment from a Dataset
Delete the assignment whose id is $id
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=2347
export ASSIGNMENT_ID=6
curl -H X-Dataverse-key:$API_TOKEN -X DELETE $SERVER_URL/api/datasets/$ID/assignments/$ASSIGNMENT_ID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X DELETE https://demo.dataverse.org/api/datasets/2347/assignments/6
Create a Private URL for a Dataset
Create a Private URL (must be able to manage dataset permissions):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X POST $SERVER_URL/api/datasets/$ID/privateUrl
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/datasets/24/privateUrl
If Anonymized Access has been enabled on a Dataverse installation (see the :AnonymizedFieldTypeNames setting), an optional ‘anonymizedAccess’ query parameter is allowed. Setting anonymizedAccess=true in your call will create a PrivateURL that only allows an anonymized view of the Dataset (see Private URL to Review Unpublished Dataset).
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/datasets/24/privateUrl?anonymizedAccess=true
Get the Private URL for a Dataset
Get a Private URL from a dataset (if available):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" $SERVER_URL/api/datasets/$ID/privateUrl
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/datasets/24/privateUrl
Delete the Private URL from a Dataset
Delete a Private URL from a dataset (if it exists):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID/privateUrl
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24/privateUrl
Add a File to a Dataset
When adding a file to a dataset, you can optionally specify the following:
A description of the file.
The “File Path” of the file, indicating which folder the file should be uploaded to within the dataset.
Whether or not the file is restricted.
Whether or not the file skips tabular ingest. If the
tabIngest
parameter is not specified, it defaults totrue
.
Note that when a Dataverse installation is configured to use S3 storage with direct upload enabled, there is API support to send a file directly to S3. This is more complex and is described in the Direct DataFile Upload/Replace API guide.
In the curl example below, all of the above are specified but they are optional.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export FILENAME='data.tsv'
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl -H X-Dataverse-key:$API_TOKEN -X POST -F "file=@$FILENAME" -F 'jsonData={"description":"My description.","directoryLabel":"data/subdir1","categories":["Data"], "restrict":"false", "tabIngest":"false"}' "$SERVER_URL/api/datasets/:persistentId/add?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -F file=@data.tsv -F 'jsonData={"description":"My description.","directoryLabel":"data/subdir1","categories":["Data"], "restrict":"false", "tabIngest":"false"}' "https://demo.dataverse.org/api/datasets/:persistentId/add?persistentId=doi:10.5072/FK2/J8SJZB"
You should expect a 201 (“CREATED”) response and JSON indicating the database id that has been assigned to your newly uploaded file.
Please note that it’s possible to “trick” a Dataverse installation into giving a file a content type (MIME type) of your choosing. For example, you can make a text file be treated like a video file with -F 'file=@README.txt;type=video/mpeg4'
, for example. If the Dataverse installation does not properly detect a file type, specifying the content type via API like this a potential workaround.
The curl syntax above to upload a file is tricky and a Python version is provided below. (Please note that it depends on libraries such as “requests” that you may need to install but this task is out of scope for this guide.) Here are some parameters you can set in the script:
dataverse_server
- e.g. https://demo.dataverse.orgapi_key
- See the top of this document for a descriptionpersistentId
- Example:doi:10.5072/FK2/6XACVA
dataset_id
- Database id of the dataset
In practice, you only need one the dataset_id
or the persistentId
. The example below shows both uses.
from datetime import datetime
import json
import requests # http://docs.python-requests.org/en/master/
# --------------------------------------------------
# Update the 4 params below to run this code
# --------------------------------------------------
dataverse_server = 'https://your dataverse installation' # no trailing slash
api_key = 'api key'
dataset_id = 1 # database id of the dataset
persistentId = 'doi:10.5072/FK2/6XACVA' # doi or hdl of the dataset
# --------------------------------------------------
# Prepare "file"
# --------------------------------------------------
file_content = 'content: %s' % datetime.now()
files = {'file': ('sample_file.txt', file_content)}
# --------------------------------------------------
# Using a "jsonData" parameter, add optional description + file tags
# --------------------------------------------------
params = dict(description='Blue skies!',
categories=['Lily', 'Rosemary', 'Jack of Hearts'])
params_as_json_string = json.dumps(params)
payload = dict(jsonData=params_as_json_string)
# --------------------------------------------------
# Add file using the Dataset's id
# --------------------------------------------------
url_dataset_id = '%s/api/datasets/%s/add?key=%s' % (dataverse_server, dataset_id, api_key)
# -------------------
# Make the request
# -------------------
print '-' * 40
print 'making request: %s' % url_dataset_id
r = requests.post(url_dataset_id, data=payload, files=files)
# -------------------
# Print the response
# -------------------
print '-' * 40
print r.json()
print r.status_code
# --------------------------------------------------
# Add file using the Dataset's persistentId (e.g. doi, hdl, etc)
# --------------------------------------------------
url_persistent_id = '%s/api/datasets/:persistentId/add?persistentId=%s&key=%s' % (dataverse_server, persistentId, api_key)
# -------------------
# Update the file content to avoid a duplicate file error
# -------------------
file_content = 'content2: %s' % datetime.now()
files = {'file': ('sample_file2.txt', file_content)}
# -------------------
# Make the request
# -------------------
print '-' * 40
print 'making request: %s' % url_persistent_id
r = requests.post(url_persistent_id, data=payload, files=files)
# -------------------
# Print the response
# -------------------
print '-' * 40
print r.json()
print r.status_code
Add a Remote File to a Dataset
If your Dataverse installation has been configured to support Trusted Remote Storage you can add files from remote URLs to datasets. These remote files appear in your Dataverse installation as if they were ordinary files but are stored remotely.
The location of the remote file is specified in the storageIdentifier
field in JSON you supply.
The base URL of the file is contained in the “store” (e.g. “trsa” in the example below) and is followed by the
path to the file (e.g. “themes/custom…”).
In the JSON example below, all fields are required except for description
. Other optional fields are shown under Add a File to a Dataset.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
export JSON_DATA='{"description":"A remote image.","storageIdentifier":"trsa://themes/custom/qdr/images/CoreTrustSeal-logo-transparent.png","checksumType":"MD5","md5Hash":"509ef88afa907eaf2c17c1c8d8fde77e","label":"testlogo.png","fileName":"testlogo.png","mimeType":"image/png"}'
curl -H "X-Dataverse-key: $API_TOKEN" -X POST "$SERVER_URL/api/datasets/:persistentId/add?persistentId=$PERSISTENT_ID" -F "jsonData=$JSON_DATA"
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/datasets/:persistentId/add?persistentId=doi:10.5072/FK2/J8SJZB -F 'jsonData={"description":"A remote image.","storageIdentifier":"trsa://themes/custom/qdr/images/CoreTrustSeal-logo-transparent.png","checksumType":"MD5","md5Hash":"509ef88afa907eaf2c17c1c8d8fde77e","label":"testlogo.png","fileName":"testlogo.png","mimeType":"image/png"}'
Cleanup storage of a Dataset
This is an experimental feature and should be tested on your system before using it in production.
Also, make sure that your backups are up-to-date before using this on production servers.
It is advised to first call this method with the dryrun
parameter set to true
before actually deleting the files.
This will allow you to manually inspect the files that would be deleted if that parameter is set to false
or is omitted (a list of the files that would be deleted is provided in the response).
If your Dataverse installation has been configured to support direct uploads, or in some other situations, you could end up with some files in the storage of a dataset that are not linked to that dataset directly. Most commonly, this could happen when an upload fails in the middle of a transfer, i.e. if a user does a UI direct upload and leaves the page without hitting cancel or save, Dataverse doesn’t know and doesn’t clean up the files. Similarly in the direct upload API, if the final /addFiles call isn’t done, the files are abandoned.
All the files stored in the Dataset storage location that are not in the file list of that Dataset (and follow the naming pattern of the dataset files) can be removed, as shown in the example below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
export DRYRUN=true
curl -H "X-Dataverse-key: $API_TOKEN" -X GET "$SERVER_URL/api/datasets/:persistentId/cleanStorage?persistentId=$PERSISTENT_ID&dryrun=$DRYRUN"
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X GET https://demo.dataverse.org/api/datasets/:persistentId/cleanStorage?persistentId=doi:10.5072/FK2/J8SJZB&dryrun=true
Adding Files To a Dataset via Other Tools
In some circumstances, it may be useful to move or copy files into Dataverse’s storage manually or via external tools and then add then to a dataset (i.e. without involving Dataverse in the file transfer itself). Two API calls are available for this use case to add files to a dataset or to replace files that were already in the dataset. These calls were developed as part of Dataverse’s direct upload mechanism and are detailed in Direct DataFile Upload/Replace API.
Report the data (file) size of a Dataset
Shows the combined size in bytes of all the files uploaded into the dataset id
.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/datasets/$ID/storagesize
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/datasets/24/storagesize
The size of published and unpublished files will be summed in the dataset specified.
By default, only the archival files are counted - i.e., the files uploaded by users (plus the tab-delimited versions generated for tabular data files on ingest). If the optional argument includeCached=true
is specified, the API will also add the sizes of all the extra files generated and cached by the Dataverse installation - the resized thumbnail versions for image files, the metadata exports for published datasets, etc. Because this deals with unpublished files the token supplied must have permission to view unpublished drafts.
Get the size of Downloading all the files of a Dataset Version
Shows the combined size in bytes of all the files available for download from version versionId
of dataset id
.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
export VERSIONID=1.0
curl -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/datasets/$ID/versions/$VERSIONID/downloadsize
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/datasets/24/versions/1.0/downloadsize
The size of all files available for download will be returned. If :draft is passed as versionId the token supplied must have permission to view unpublished drafts. A token is not required for published datasets. Also restricted files will be included in this total regardless of whether the user has access to download the restricted file(s).
Submit a Dataset for Review
When dataset authors do not have permission to publish directly, they can click the “Submit for Review” button in the web interface (see Dataset + File Management), or perform the equivalent operation via API:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl -H "X-Dataverse-key: $API_TOKEN" -X POST "$SERVER_URL/api/datasets/:persistentId/submitForReview?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/datasets/:persistentId/submitForReview?persistentId=doi:10.5072/FK2/J8SJZB"
The people who need to review the dataset (often curators or journal editors) can check their notifications periodically via API to see if any new datasets have been submitted for review and need their attention. See the Notifications section for details. Alternatively, these curators can simply check their email or notifications to know when datasets have been submitted (or resubmitted) for review.
Return a Dataset to Author
After the curators or journal editors have reviewed a dataset that has been submitted for review (see “Submit for Review”, above) they can either choose to publish the dataset (see the :publish
“action” above) or return the dataset to its authors. In the web interface there is a “Return to Author” button (see Dataset + File Management), but the interface does not provide a way to explain why the dataset is being returned. There is a way to do this outside of this interface, however. Instead of clicking the “Return to Author” button in the UI, a curator can write a “reason for return” into the database via API.
Here’s how curators can send a “reason for return” to the dataset authors. First, the curator creates a JSON file that contains the reason for return:
{
"reasonForReturn": "You forgot to upload any files."
}
In the example below, the curator has saved the JSON file as reason-for-return.json
in their current working directory. Then, the curator sends this JSON file to the returnToAuthor
API endpoint like this:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl -H "X-Dataverse-key: $API_TOKEN" -X POST "$SERVER_URL/api/datasets/:persistentId/returnToAuthor?persistentId=$PERSISTENT_ID" -H "Content-type: application/json" -d @reason-for-return.json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/datasets/:persistentId/returnToAuthor?persistentId=doi:10.5072/FK2/J8SJZB" -H "Content-type: application/json" -d @reason-for-return.json
The review process can sometimes resemble a tennis match, with the authors submitting and resubmitting the dataset over and over until the curators are satisfied. Each time the curators send a “reason for return” via API, that reason is persisted into the database, stored at the dataset version level.
Link a Dataset
Creates a link between a dataset and a Dataverse collection (see Dataset Linking section of Dataverse Collection Management in the User Guide for more information):
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export DATASET_ID=24
export DATAVERSE_ID=test
curl -H "X-Dataverse-key: $API_TOKEN" -X PUT $SERVER_URL/api/datasets/$DATASET_ID/link/$DATAVERSE_ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/datasets/24/link/test
Dataset Locks
Manage Locks on a Specific Dataset
To check if a dataset is locked:
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl $SERVER_URL/api/datasets/$ID/locks
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/datasets/24/locks
Optionally, you can check if there’s a lock of a specific type on the dataset:
export SERVER_URL=https://demo.dataverse.org
export ID=24
export LOCK_TYPE=Ingest
curl "$SERVER_URL/api/datasets/$ID/locks?type=$LOCK_TYPE"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/24/locks?type=Ingest"
Currently implemented lock types are Ingest
, Workflow
, InReview
, DcmUpload
, finalizePublication
, EditInProgress
and FileValidationFailed
.
The API will output the list of locks, for example:
{"status":"OK","data":
[
{
"lockType":"Ingest",
"date":"Fri Aug 17 15:05:51 EDT 2018",
"user":"dataverseAdmin",
"dataset":"doi:12.34567/FK2/ABCDEF"
},
{
"lockType":"Workflow",
"date":"Fri Aug 17 15:02:00 EDT 2018",
"user":"dataverseAdmin",
"dataset":"doi:12.34567/FK2/ABCDEF"
}
]
}
If the dataset is not locked (or if there is no lock of the requested type), the API will return an empty list.
The following API end point will lock a Dataset with a lock of specified type. Note that this requires “superuser” credentials:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
export LOCK_TYPE=Ingest
curl -H "X-Dataverse-key: $API_TOKEN" -X POST $SERVER_URL/api/datasets/$ID/lock/$LOCK_TYPE
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/datasets/24/lock/Ingest
Use the following API to unlock the dataset, by deleting all the locks currently on the dataset. Note that this requires “superuser” credentials:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID/locks
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24/locks
Or, to delete a lock of the type specified only. Note that this requires “superuser” credentials:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
export LOCK_TYPE=finalizePublication
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID/locks?type=$LOCK_TYPE
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24/locks?type=finalizePublication
If the dataset is not locked (or if there is no lock of the specified type), the API will exit with a warning message.
(Note that the API calls above all support both the database id and persistent identifier notation for referencing the dataset)
List Locks Across All Datasets
Note that this API requires “superuser” credentials. You must supply the X-Dataverse-key
header with the api token of an admin user (as in the example below).
The output of this API is formatted identically to the API that lists the locks for a specific dataset, as in one of the examples above.
Use the following API to list ALL the locks on all the datasets in your installation:
/api/datasets/locks
The listing can be filtered by specific lock type and/or user, using the following optional query parameters:
userIdentifier
- To list the locks owned by a specific usertype
- To list the locks of the type specified. If the supplied value does not match a known lock type, the API will return an error and a list of valid lock types. As of writing this, the implemented lock types areIngest
,Workflow
,InReview
,DcmUpload
,finalizePublication
,EditInProgress
andFileValidationFailed
.
For example:
curl -H "X-Dataverse-key: xxx" "http://localhost:8080/api/datasets/locks?type=Ingest&userIdentifier=davis4ever"
Dataset Metrics
Please note that these dataset level metrics are only available if support for Make Data Count has been enabled in your Dataverse installation. See the Dataset Metrics in the Dataset + File Management section of the User Guide and the Make Data Count section of the Admin Guide for details.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export
below.
export SERVER_URL=https://demo.dataverse.org
To confirm that the environment variable was set properly, you can use echo
like this:
echo $SERVER_URL
Please note that for each of these endpoints except the “citations” endpoint, you can optionally pass the query parameter “country” with a two letter code (e.g. “country=us”) and you can specify a particular month by adding it in yyyy-mm format after the requested metric (e.g. “viewsTotal/2019-02”).
Retrieving Total Views for a Dataset
Please note that “viewsTotal” is a combination of “viewsTotalRegular” and “viewsTotalMachine” which can be requested separately.
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/datasets/:persistentId/makeDataCount/viewsTotal?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/:persistentId/makeDataCount/viewsTotal?persistentId=10.5072/FK2/J8SJZB"
Retrieving Unique Views for a Dataset
Please note that “viewsUnique” is a combination of “viewsUniqueRegular” and “viewsUniqueMachine” which can be requested separately.
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/datasets/:persistentId/makeDataCount/viewsUnique?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/:persistentId/makeDataCount/viewsUnique?persistentId=10.5072/FK2/J8SJZB"
Retrieving Total Downloads for a Dataset
Please note that “downloadsTotal” is a combination of “downloadsTotalRegular” and “downloadsTotalMachine” which can be requested separately.
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/datasets/:persistentId/makeDataCount/downloadsTotal?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/:persistentId/makeDataCount/downloadsTotal?persistentId=10.5072/FK2/J8SJZB"
Retrieving Unique Downloads for a Dataset
Please note that “downloadsUnique” is a combination of “downloadsUniqueRegular” and “downloadsUniqueMachine” which can be requested separately.
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/datasets/:persistentId/makeDataCount/downloadsUnique?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/:persistentId/makeDataCount/downloadsUnique?persistentId=10.5072/FK2/J8SJZB"
Retrieving Citations for a Dataset
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/datasets/:persistentId/makeDataCount/citations?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/datasets/:persistentId/makeDataCount/citations?persistentId=10.5072/FK2/J8SJZB"
Delete Unpublished Dataset
Delete the dataset whose id is passed:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24
Delete Published Dataset
Normally published datasets should not be deleted, but there exists a “destroy” API endpoint for superusers which will act on a dataset given a persistent ID or dataset database ID:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/:persistentId/destroy/?persistentId=$PERSISTENT_ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/:persistentId/destroy/?persistentId=doi:10.5072/FK2/AAA000
Delete with dataset identifier:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE $SERVER_URL/api/datasets/$ID/destroy
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key: xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/datasets/24/destroy
Calling the destroy endpoint is permanent and irreversible. It will remove the dataset and its datafiles, then re-index the parent Dataverse collection in Solr. This endpoint requires the API token of a superuser.
Configure a Dataset to Use a Specific File Store
/api/datasets/$dataset-id/storageDriver
can be used to check, configure or reset the designated file store (storage driver) for a dataset. Please see the Managing Datasets and Dataverse Collections section of the guide for more information on this API.
View the Timestamps on a Dataset
/api/datasets/$dataset-id/timestamps
can be used to view timestamps associated with various events in the dataset’s lifecycle. For published datasets, this API call provides the createTime
, publicationTime
, lastMetadataExportTime
and lastMajorVersionReleaseTime
, as well as two booleans - hasStaleIndex
and hasStalePermissionIndex
- which, if false, indicate the Dataverse displays for the dataset are up-to-date. The response is application/json
with the timestamps included in the returned data
object.
When called by a user who can view the draft version of the dataset, additional timestamps are reported: lastUpdateTime
, lastIndexTime
, lastPermissionUpdateTime
, and globalIdCreateTime
.
One use case where this API call could be useful is in allowing an external application to poll and wait for changes being made by the Dataverse software or other external tool to complete prior to continuing its own processing.
Set an Embargo on Files in a Dataset
/api/datasets/$dataset-id/files/actions/:set-embargo
can be used to set an embargo on one or more files in a dataset. Embargoes can be set on files that are only in a draft dataset version (and are not in any previously published version) by anyone who can edit the dataset. The same API call can be used by a superuser to add an embargo to files that have already been released as part of a previously published dataset version.
The API call requires a Json body that includes the embargo’s end date (dateAvailable), a short reason (optional), and a list of the fileIds that the embargo should be set on. The dateAvailable must be after the current date and the duration (dateAvailable - today’s date) must be less than the value specified by the :MaxEmbargoDurationInMonths setting. All files listed must be in the specified dataset. For example:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export JSON='{"dateAvailable":"2021-10-20", "reason":"Standard project embargo", "fileIds":[300,301,302]}'
curl -H "X-Dataverse-key: $API_TOKEN" -H "Content-Type:application/json" "$SERVER_URL/api/datasets/:persistentId/files/actions/:set-embargo?persistentId=$PERSISTENT_IDENTIFIER" -d "$JSON"
Remove an Embargo on Files in a Dataset
/api/datasets/$dataset-id/files/actions/:unset-embargo
can be used to remove an embargo on one or more files in a dataset. Embargoes can be removed from files that are only in a draft dataset version (and are not in any previously published version) by anyone who can edit the dataset. The same API call can be used by a superuser to remove embargos from files that have already been released as part of a previously published dataset version.
The API call requires a Json body that includes the list of the fileIds that the embargo should be removed from. All files listed must be in the specified dataset. For example:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export JSON='{"fileIds":[300,301]}'
curl -H "X-Dataverse-key: $API_TOKEN" -H "Content-Type:application/json" "$SERVER_URL/api/datasets/:persistentId/files/actions/:unset-embargo?persistentId=$PERSISTENT_IDENTIFIER" -d "$JSON"
Get the Archival Status of a Dataset By Version
Archiving is an optional feature that may be configured for a Dataverse installation. When that is enabled, this API call be used to retrieve the status. Note that this requires “superuser” credentials.
GET /api/datasets/$dataset-id/$version/archivalStatus
returns the archival status of the specified dataset version.
The response is a JSON object that will contain a “status” which may be “success”, “pending”, or “failure” and a “message” which is archive system specific. For “success” the message should provide an identifier or link to the archival copy. For example:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export VERSION=1.0
curl -H "X-Dataverse-key: $API_TOKEN" -H "Accept:application/json" "$SERVER_URL/api/datasets/:persistentId/$VERSION/archivalStatus?persistentId=$PERSISTENT_IDENTIFIER"
Set the Archival Status of a Dataset By Version
Archiving is an optional feature that may be configured for a Dataverse installation. When that is enabled, this API call be used to set the status. Note that this is intended to be used by the archival system and requires “superuser” credentials.
PUT /api/datasets/$dataset-id/$version/archivalStatus
sets the archival status of the specified dataset version.
The body is a JSON object that must contain a “status” which may be “success”, “pending”, or “failure” and a “message” which is archive system specific. For “success” the message should provide an identifier or link to the archival copy. For example:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export VERSION=1.0
export JSON='{"status":"failure","message":"Something went wrong"}'
curl -H "X-Dataverse-key: $API_TOKEN" -H "Content-Type:application/json" -X PUT "$SERVER_URL/api/datasets/:persistentId/$VERSION/archivalStatus?persistentId=$PERSISTENT_IDENTIFIER" -d "$JSON"
Note that if the configured archiver only supports archiving a single version, the call may return 409 CONFLICT if/when another version already has a non-null status.
Delete the Archival Status of a Dataset By Version
Archiving is an optional feature that may be configured for a Dataverse installation. When that is enabled, this API call be used to delete the status. Note that this is intended to be used by the archival system and requires “superuser” credentials.
DELETE /api/datasets/$dataset-id/$version/archivalStatus
deletes the archival status of the specified dataset version.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export VERSION=1.0
curl -H "X-Dataverse-key: $API_TOKEN" -X DELETE "$SERVER_URL/api/datasets/:persistentId/$VERSION/archivalStatus?persistentId=$PERSISTENT_IDENTIFIER"
Get External Tool Parameters
This API call is intended as a callback that can be used by External Tools to retrieve signed Urls necessary for their interaction with Dataverse. It can be called directly as well.
The response is a JSON object described in the Building External Tools section of the API guide.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/7U7YBV
export VERSION=1.0
export TOOL_ID=1
curl -H "X-Dataverse-key: $API_TOKEN" -H "Accept:application/json" "$SERVER_URL/api/datasets/:persistentId/versions/$VERSION/toolparams/$TOOL_ID?persistentId=$PERSISTENT_IDENTIFIER"
Files
Get JSON Representation of a File
Note
Files can be accessed using persistent identifiers. This is done by passing the constant :persistentId
where the numeric id of the file is expected, and then passing the actual persistent id as a query parameter with the name persistentId
.
Example: Getting the file whose DOI is 10.5072/FK2/J8SJZB:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/files/:persistentId/?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB
You may get its draft version of an unpublished file if you pass an api token with view draft permissions:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER/api/files/:persistentId/?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB
CORS Show the file whose id is passed:
export SERVER_URL=https://demo.dataverse.org
export ID=408730
curl $SERVER_URL/api/file/$ID
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/files/408730
You may get its draft version of an published file if you pass an api token with view draft permissions and use the draft path parameter:
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_IDENTIFIER=doi:10.5072/FK2/J8SJZB
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER/api/files/:persistentId/draft/?persistentId=$PERSISTENT_IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/:persistentId/draft/?persistentId=doi:10.5072/FK2/J8SJZB
The file id can be extracted from the response retrieved from the API which uses the persistent identifier (/api/datasets/:persistentId/?persistentId=$PERSISTENT_IDENTIFIER
).
Adding Files
Note
Files can be added via the native API but the operation is performed on the parent object, which is a dataset. Please see the Datasets endpoint above for more information.
Accessing (downloading) files
Note
Access API has its own section in the Guide: Data Access API
Note Data Access API calls can now be made using persistent identifiers (in addition to database ids). This is done by passing the constant :persistentId
where the numeric id of the file is expected, and then passing the actual persistent id as a query parameter with the name persistentId
.
Example: Getting the file whose DOI is 10.5072/FK2/J8SJZB
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/J8SJZB
curl "$SERVER_URL/api/access/datafile/:persistentId/?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/access/datafile/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB"
Note: you can use the combination of cURL’s -J
(--remote-header-name
) and -O
(--remote-name
) options to save the file in its original file name, such as
curl -J -O "https://demo.dataverse.org/api/access/datafile/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB"
Restrict Files
Restrict or unrestrict an existing file where id
is the database id of the file or pid
is the persistent id (DOI or Handle) of the file to restrict. Note that some Dataverse installations do not allow the ability to restrict files.
A curl example using an id
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X PUT -d true $SERVER_URL/api/files/$ID/restrict
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT -d true https://demo.dataverse.org/api/files/24/restrict
A curl example using a pid
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X PUT -d true $SERVER_URL/api/files/:persistentId/restrict?persistentId=$PERSISTENT_ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT -d true "https://demo.dataverse.org/api/files/:persistentId/restrict?persistentId=doi:10.5072/FK2/AAA000"
Uningest a File
Reverse the tabular data ingest process performed on a file where ID
is the database id or PERSISTENT_ID
is the persistent id (DOI or Handle) of the file to process. Note that this requires “superuser” credentials.
A curl example using an ID
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/files/$ID/uningest
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/files/24/uningest
A curl example using a PERSISTENT_ID
:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/:persistentId/uningest?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/:persistentId/uningest?persistentId=doi:10.5072/FK2/AAA000"
Reingest a File
Attempt to ingest an existing datafile as tabular data. This API can be used on a file that was not ingested as tabular back when it was uploaded. For example, a Stata v.14 file that was uploaded before ingest support for Stata 14 was added (in Dataverse Software v.4.9). It can also be used on a file that failed to ingest due to a bug in the ingest plugin that has since been fixed (hence the name “reingest”).
Note that this requires “superuser” credentials.
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/files/$ID/reingest
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/files/24/reingest
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/files/:persistentId/reingest?persistentId=$PERSISTENT_ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/:persistentId/reingest?persistentId=doi:10.5072/FK2/AAA000"
Note: at present, the API cannot be used on a file that’s already successfully ingested as tabular.
Redetect File Type
The Dataverse Software uses a variety of methods for determining file types (MIME types or content types) and these methods (listed below) are updated periodically. If you have files that have an unknown file type, you can have the Dataverse Software attempt to redetect the file type.
When using the curl command below, you can pass dryRun=true
if you don’t want any changes to be saved to the database. Change this to dryRun=false
(or omit it) to save the change.
A curl example using an id
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/$ID/redetect?dryRun=true"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/24/redetect?dryRun=true"
A curl example using a pid
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/:persistentId/redetect?persistentId=$PERSISTENT_ID&dryRun=true"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/:persistentId/redetect?persistentId=doi:10.5072/FK2/AAA000&dryRun=true"
Currently the following methods are used to detect file types:
The file type detected by the browser (or sent via API).
The file extension (e.g. “.ipybn”) is used, defined in a file called
MimeTypeDetectionByFileExtension.properties
.The file name (e.g. “Dockerfile”) is used, defined in a file called
MimeTypeDetectionByFileName.properties
.
Extract NcML
As explained in the NetCDF and HDF5 section of the User Guide, when those file types are uploaded, an attempt is made to extract an NcML file from them and store it as an auxiliary file.
This happens automatically but superusers can also manually trigger this NcML extraction process with the API endpoint below.
Note that “true” will be returned if an NcML file was created. “false” will be returned if there was an error or if the NcML file already exists (check server.log for details).
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/$ID/extractNcml"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/24/extractNcml
A curl example using a PID:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/:persistentId/extractNcml?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/:persistentId/extractNcml?persistentId=doi:10.5072/FK2/AAA000"
Replacing Files
Replace an existing file where ID
is the database id of the file to replace or PERSISTENT_ID
is the persistent id (DOI or Handle) of the file. Requires the file
to be passed as well as a jsonString
expressing the new metadata. Note that metadata such as description, directoryLabel (File Path) and tags are not carried over from the file being replaced.
Note that when a Dataverse installation is configured to use S3 storage with direct upload enabled, there is API support to send a replacement file directly to S3. This is more complex and is described in the Direct DataFile Upload/Replace API guide.
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST -F 'file=@file.extension' -F 'jsonData={json}' $SERVER_URL/api/files/$ID/replace
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST -F 'file=@data.tsv' \
-F 'jsonData={"description":"My description.","categories":["Data"],"forceReplace":false}' \
https://demo.dataverse.org/api/files/24/replace
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST -F 'file=@file.extension' -F 'jsonData={json}' \
"$SERVER_URL/api/files/:persistentId/replace?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST -F 'file=@data.tsv' \
-F 'jsonData={"description":"My description.","categories":["Data"],"forceReplace":false}' \
"https://demo.dataverse.org/api/files/:persistentId/replace?persistentId=doi:10.5072/FK2/AAA000"
Getting File Metadata
Provides a json representation of the file metadata for an existing file where ID
is the database id of the file to get metadata from or PERSISTENT_ID
is the persistent id (DOI or Handle) of the file.
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl $SERVER_URL/api/files/$ID/metadata
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/files/24/metadata
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl "$SERVER_URL/api/files/:persistentId/metadata?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl "https://demo.dataverse.org/api/files/:persistentId/metadata?persistentId=doi:10.5072/FK2/AAA000"
The current draft can also be viewed if you have permissions and pass your API token
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/files/$ID/metadata/draft
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/24/metadata/draft
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" "$SERVER_URL/api/files/:persistentId/metadata/draft?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" "https://demo.dataverse.org/api/files/:persistentId/metadata/draft?persistentId=doi:10.5072/FK2/AAA000"
Note: The id
returned in the json response is the id of the file metadata version.
Updating File Metadata
Updates the file metadata for an existing file where ID
is the database id of the file to update or PERSISTENT_ID
is the persistent id (DOI or Handle) of the file. Requires a jsonString
expressing the new metadata. No metadata from the previous version of this file will be persisted, so if you want to update a specific field first get the json with the above command and alter the fields you want.
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X POST \
-F 'jsonData={"description":"My description bbb.","provFreeform":"Test prov freeform","categories":["Data"],"restrict":false}' \
$SERVER_URL/api/files/$ID/metadata
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST \
-F 'jsonData={"description":"My description bbb.","provFreeform":"Test prov freeform","categories":["Data"],"restrict":false}' \
http://demo.dataverse.org/api/files/24/metadata
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X POST \
-F 'jsonData={"description":"My description bbb.","provFreeform":"Test prov freeform","categories":["Data"],"restrict":false}' \
"$SERVER_URL/api/files/:persistentId/metadata?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST \
-F 'jsonData={"description":"My description bbb.","provFreeform":"Test prov freeform","categories":["Data"],"restrict":false}' \
"https://demo.dataverse.org/api/files/:persistentId/metadata?persistentId=doi:10.5072/FK2/AAA000"
Also note that dataFileTags are not versioned and changes to these will update the published version of the file.
Editing Variable Level Metadata
Updates variable level metadata using ddi xml FILE
, where ID
is file id.
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
export FILE=dct.xml
curl -H "X-Dataverse-key:$API_TOKEN" -X PUT $SERVER_URL/api/edit/$ID --upload-file $FILE
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT https://demo.dataverse.org/api/edit/24 --upload-file dct.xml
You can download dct.xml
from the example above to see what the XML looks like.
Provenance
Get Provenance JSON for an uploaded file
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/files/$ID/prov-json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/24/prov-json
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" "$SERVER_URL/api/files/:persistentId/prov-json?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" "https://demo.dataverse.org/api/files/:persistentId/prov-json?persistentId=doi:10.5072/FK2/AAA000"
Get Provenance Description for an uploaded file
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/files/$ID/prov-freeform
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/files/24/prov-freeform
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" "$SERVER_URL/api/files/:persistentId/prov-freeform?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" "https://demo.dataverse.org/api/files/:persistentId/prov-freeform?persistentId=doi:10.5072/FK2/AAA000"
Create/Update Provenance Description for an uploaded file
Requires a JSON file with the description connected to a key named “text”
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
export FILE_PATH=provenance.json
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/files/$ID/prov-freeform -H "Content-type:application/json" --upload-file $FILE_PATH
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST https://demo.dataverse.org/api/files/24/prov-freeform -H "Content-type:application/json" --upload-file provenance.json
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
export FILE_PATH=provenance.json
curl -H "X-Dataverse-key:$API_TOKEN" -X POST "$SERVER_URL/api/files/:persistentId/prov-freeform?persistentId=$PERSISTENT_ID" -H "Content-type:application/json" --upload-file $FILE_PATH
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/files/:persistentId/prov-freeform?persistentId=doi:10.5072/FK2/AAA000" -H "Content-type:application/json" --upload-file provenance.json
See a sample JSON file file-provenance.json
from https://openprovenance.org (c.f. Huynh, Trung Dong and Moreau, Luc (2014) ProvStore: a public provenance repository. At 5th International Provenance and Annotation Workshop (IPAW’14), Cologne, Germany, 09-13 Jun 2014. pp. 275-277).
Delete Provenance JSON for an uploaded file
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE $SERVER_URL/api/files/$ID/prov-json
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/files/24/prov-json
A curl example using a PERSISTENT_ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PERSISTENT_ID=doi:10.5072/FK2/AAA000
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE "$SERVER_URL/api/files/:persistentId/prov-json?persistentId=$PERSISTENT_ID"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE "https://demo.dataverse.org/api/files/:persistentId/prov-json?persistentId=doi:10.5072/FK2/AAA000"
Datafile Integrity
Starting with the release 4.10 the size of the saved original file (for an ingested tabular datafile) is stored in the database. The following API will retrieve and permanently store the sizes for any already existing saved originals:
export SERVER_URL=https://localhost
curl $SERVER_URL/api/admin/datafiles/integrity/fixmissingoriginalsizes
with limit parameter:
export SERVER_URL=https://localhost
export LIMIT=10
curl "$SERVER_URL/api/admin/datafiles/integrity/fixmissingoriginalsizes?limit=$LIMIT"
The fully expanded example above (without environment variables) looks like this:
curl https://localhost/api/admin/datafiles/integrity/fixmissingoriginalsizes"
with limit parameter:
curl https://localhost/api/admin/datafiles/integrity/fixmissingoriginalsizes?limit=10"
Note the optional “limit” parameter. Without it, the API will attempt to populate the sizes for all the saved originals that don’t have them in the database yet. Otherwise it will do so for the first N such datafiles.
By default, the admin API calls are blocked and can only be called from localhost. See more details in :BlockedApiEndpoints and :BlockedApiPolicy settings in Configuration.
Get External Tool Parameters
This API call is intended as a callback that can be used by External Tools to retrieve signed Urls necessary for their interaction with Dataverse. It can be called directly as well. (Note that the required FILEMETADATA_ID is the “id” returned in the JSON response from the /api/files/$FILE_ID/metadata call.)
The response is a JSON object described in the Building External Tools section of the API guide.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export FILE_ID=3
export FILEMETADATA_ID=1
export TOOL_ID=1
curl -H "X-Dataverse-key: $API_TOKEN" -H "Accept:application/json" "$SERVER_URL/api/files/$FILE_ID/metadata/$FILEMETADATA_ID/toolparams/$TOOL_ID
Users Token Management
The following endpoints will allow users to manage their API tokens.
Find a Token’s Expiration Date
In order to obtain the expiration date of a token use:
curl -H X-Dataverse-key:$API_TOKEN -X GET $SERVER_URL/api/users/token
Recreate a Token
In order to obtain a new token use:
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/users/token/recreate
Delete a Token
In order to delete a token use:
curl -H X-Dataverse-key:$API_TOKEN -X DELETE $SERVER_URL/api/users/token
Builtin Users
Builtin users are known as “Username/Email and Password” users in the Account Creation + Management of the User Guide. The Dataverse installation stores a password (encrypted, of course) for these users, which differs from “remote” users such as Shibboleth or OAuth users where the password is stored elsewhere. See also Auth Modes: Local vs. Remote vs. Both section of Configuration in the Installation Guide. It’s a valid configuration of a Dataverse installation to not use builtin users at all.
Create a Builtin User
For security reasons, builtin users cannot be created via API unless the team who runs the Dataverse installation has populated a database setting called BuiltinUsers.KEY
, which is described under Securing Your Installation and Database Settings sections of Configuration in the Installation Guide. You will need to know the value of BuiltinUsers.KEY
before you can proceed.
To create a builtin user via API, you must first construct a JSON document. You can download user-add.json
or copy the text below as a starting point and edit as necessary.
{
"firstName": "Lisa",
"lastName": "Simpson",
"userName": "lsimpson",
"affiliation": "Springfield",
"position": "Student",
"email": "lsimpson@mailinator.com"
}
Place this user-add.json
file in your current directory and run the following curl command, substituting variables as necessary. Note that both the password of the new user and the value of BuiltinUsers.KEY
are passed as query parameters:
curl -d @user-add.json -H "Content-type:application/json" "$SERVER_URL/api/builtin-users?password=$NEWUSER_PASSWORD&key=$BUILTIN_USERS_KEY"
Optionally, you may use a third query parameter “sendEmailNotification=false” to explicitly disable sending an email notification to the new user.
Roles
Create a New Role in a Dataverse Collection
Creates a new role under Dataverse collection id
. Needs a json file with the role description:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=root
curl -H X-Dataverse-key:$API_TOKEN -X POST -H "Content-type:application/json" $SERVER_URL/api/dataverses/$ID/roles --upload-file roles.json
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST -H "Content-type:application/json" https://demo.dataverse.org/api/dataverses/root/roles --upload-file roles.json
Where roles.json
looks like this:
{
"alias": "sys1",
"name": “Restricted System Role”,
"description": “A person who may only add datasets.”,
"permissions": [
"AddDataset"
]
}
Note
Only a Dataverse installation account with superuser permissions is allowed to create roles in a Dataverse Collection.
Delete Role
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE $SERVER_URL/api/roles/$ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/roles/24
A curl example using a Role alias ALIAS
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ALIAS=roleAlias
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE "$SERVER_URL/api/roles/:alias?alias=$ALIAS"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/roles/:alias?alias=roleAlias
Explicit Groups
Create New Explicit Group
Explicit groups list their members explicitly. These groups are defined in Dataverse collections, which is why their API endpoint is under api/dataverses/$id/
, where $id
is the id of the Dataverse collection.
Create a new explicit group under Dataverse collection $id
:
POST http://$server/api/dataverses/$id/groups
Data being POSTed is json-formatted description of the group:
{
"description":"Describe the group here",
"displayName":"Close Collaborators",
"aliasInOwner":"ccs"
}
List Explicit Groups in a Dataverse Collection
List explicit groups under Dataverse collection $id
:
GET http://$server/api/dataverses/$id/groups
Show Single Group in a Dataverse Collection
Show group $groupAlias
under dataverse $dv
:
GET http://$server/api/dataverses/$dv/groups/$groupAlias
Update Group in a Dataverse Collection
Update group $groupAlias
under Dataverse collection $dv
. The request body is the same as the create group one, except that the group alias cannot be changed. Thus, the field aliasInOwner
is ignored.
PUT http://$server/api/dataverses/$dv/groups/$groupAlias
Delete Group from a Dataverse Collection
Delete group $groupAlias
under Dataverse collection $dv
:
DELETE http://$server/api/dataverses/$dv/groups/$groupAlias
Add Multiple Role Assignees to an Explicit Group
Bulk add role assignees to an explicit group. The request body is a JSON array of role assignee identifiers, such as @admin
, &ip/localhosts
or :authenticated-users
:
POST http://$server/api/dataverses/$dv/groups/$groupAlias/roleAssignees
Add a Role Assignee to an Explicit Group
Add a single role assignee to a group. Request body is ignored:
PUT http://$server/api/dataverses/$dv/groups/$groupAlias/roleAssignees/$roleAssigneeIdentifier
Remove a Role Assignee from an Explicit Group
Remove a single role assignee from an explicit group:
DELETE http://$server/api/dataverses/$dv/groups/$groupAlias/roleAssignees/$roleAssigneeIdentifier
Shibboleth Groups
Management of Shibboleth groups via API is documented in the Shibboleth section of the Installation Guide.
Info
Show Dataverse Software Version and Build Number
CORS Get the Dataverse installation version. The response contains the version and build numbers:
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/info/version
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/info/version
Show Dataverse Installation Server Name
Get the server name. This is useful when a Dataverse installation is composed of multiple app servers behind a load balancer:
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/info/server
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/info/server
Show Custom Popup Text for Publishing Datasets
For now, only the value for the :DatasetPublishPopupCustomText setting from the Configuration section of the Installation Guide is exposed:
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/info/settings/:DatasetPublishPopupCustomText
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/info/settings/:DatasetPublishPopupCustomText
Get API Terms of Use URL
Get API Terms of Use. The response contains the text value inserted as API Terms of use which uses the database setting :ApiTermsOfUse
:
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/info/apiTermsOfUse
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/info/apiTermsOfUse
Metadata Blocks
See also Exploring Metadata Blocks.
Show Info About All Metadata Blocks
CORS Lists brief info about all metadata blocks registered in the system.
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/metadatablocks
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/metadatablocks
Show Info About Single Metadata Block
CORS
Return data about the block whose identifier
is passed, including allowed controlled vocabulary values. identifier
can either be the block’s database id, or its name (i.e. “citation”).
export SERVER_URL=https://demo.dataverse.org
export IDENTIFIER=citation
curl $SERVER_URL/api/metadatablocks/$IDENTIFIER
The fully expanded example above (without environment variables) looks like this:
curl https://demo.dataverse.org/api/metadatablocks/citation
Notifications
See Notifications in the User Guide for an overview. For a list of all the notification types mentioned below (e.g. ASSIGNROLE), see Letting Users Manage Notifications in the Admin Guide.
Get All Notifications by User
Each user can get a dump of their notifications by passing in their API token:
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/notifications/all
Delete Notification by User
Each user can delete notifications by passing in their API token and specifying notification ID (e.g., 555):
export NOTIFICATION_ID=555
curl -H X-Dataverse-key:$API_TOKEN -X DELETE "$SERVER_URL/api/notifications/$NOTIFICATION_ID"
Get All Muted In-app Notifications by User
Each user can get a list of their muted in-app notification types by passing in their API token:
curl -H X-Dataverse-key:$API_TOKEN -X GET "$SERVER_URL/api/notifications/mutedNotifications"
Mute In-app Notification by User
Each user can mute in-app notifications by passing in their API token and specifying notification type to be muted (e.g., ASSIGNROLE):
export NOTIFICATION_TYPE=ASSIGNROLE
curl -H X-Dataverse-key:$API_TOKEN -X PUT "$SERVER_URL/api/notifications/mutedNotifications/$NOTIFICATION_TYPE"
Unmute In-app Notification by User
Each user can unmute in-app notifications by passing in their API token and specifying notification type to be unmuted (e.g., ASSIGNROLE):
export NOTIFICATION_TYPE=ASSIGNROLE
curl -H X-Dataverse-key:$API_TOKEN -X DELETE "$SERVER_URL/api/notifications/mutedNotifications/$NOTIFICATION_TYPE"
Get All Muted Email Notifications by User
Each user can get a list of their muted email notification types by passing in their API token:
curl -H X-Dataverse-key:$API_TOKEN -X GET "$SERVER_URL/api/notifications/mutedEmails"
Mute Email Notification by User
Each user can mute email notifications by passing in their API token and specifying notification type to be muted (e.g., ASSIGNROLE):
export NOTIFICATION_TYPE=ASSIGNROLE
curl -H X-Dataverse-key:$API_TOKEN -X PUT "$SERVER_URL/api/notifications/mutedEmails/$NOTIFICATION_TYPE"
Unmute Email Notification by User
Each user can unmute email notifications by passing in their API token and specifying notification type to be unmuted (e.g., ASSIGNROLE):
export NOTIFICATION_TYPE=ASSIGNROLE
curl -H X-Dataverse-key:$API_TOKEN -X DELETE "$SERVER_URL/api/notifications/mutedEmails/$NOTIFICATION_TYPE"
User Information
Get User Information in JSON Format
Each user can get a dump of their basic information in JSON format by passing in their API token:
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/users/:me
Managing Harvesting Server and Sets
This API can be used to manage the Harvesting sets that your installation makes available over OAI-PMH. For more information, see the Managing Harvesting Server and Sets section of the Admin Guide.
List All Harvesting Sets
Shows all Harvesting Sets defined in the installation:
GET http://$SERVER/api/harvest/server/oaisets/
List A Specific Harvesting Set
Shows a Harvesting Set with a defined specname:
GET http://$SERVER/api/harvest/server/oaisets/$specname
Create a Harvesting Set
To create a harvesting set you must supply a JSON file that contains the following fields:
Name: Alpha-numeric may also contain -, _, or %, but no spaces. Must also be unique in the installation.
Definition: A search query to select the datasets to be harvested. For example, a query containing authorName:YYY would include all datasets where ‘YYY’ is the authorName.
Description: Text that describes the harvesting set. The description appears in the Manage Harvesting Sets dashboard and in API responses. This field is optional.
An example JSON file would look like this:
{
"name":"ffAuthor",
"definition":"authorName:Finch, Fiona",
"description":"Fiona Finch’s Datasets"
}
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
curl -H X-Dataverse-key:$API_TOKEN -X POST "$SERVER_URL/api/harvest/server/oaisets/add" --upload-file harvestset-finch.json
The fully expanded example above (without the environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST "https://demo.dataverse.org/api/harvest/server/oaisets/add" --upload-file "harvestset-finch.json"
Only users with superuser permissions may create harvesting sets.
Modify an Existing Harvesting Set
To modify a harvesting set, you must supply a JSON file that contains one or both of the following fields:
Definition: A search query to select the datasets to be harvested. For example, a query containing authorName:YYY would include all datasets where ‘YYY’ is the authorName.
Description: Text that describes the harvesting set. The description appears in the Manage Harvesting Sets dashboard and in API responses. This field is optional.
Note that you may not modify the name of an existing harvesting set.
An example JSON file would look like this:
{
"definition":"authorName:Finch, Fiona AND subject:trees",
"description":"Fiona Finch’s Datasets with subject of trees"
}
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export SPECNAME=ffAuthor
curl -H X-Dataverse-key:$API_TOKEN -X PUT "$SERVER_URL/api/harvest/server/oaisets/$SPECNAME" --upload-file modify-harvestset-finch.json
The fully expanded example above (without the environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X PUT "https://demo.dataverse.org/api/harvest/server/oaisets/ffAuthor" --upload-file "modify-harvestset-finch.json"
Only users with superuser permissions may modify harvesting sets.
Delete an Existing Harvesting Set
To delete a harvesting set, use the set’s database name. For example, to delete an existing harvesting set whose database name is “ffAuthor”:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export SPECNAME=ffAuthor
curl -H X-Dataverse-key:$API_TOKEN -X DELETE "$SERVER_URL/api/harvest/server/oaisets/$SPECNAME"
The fully expanded example above (without the environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE "https://demo.dataverse.org/api/harvest/server/oaisets/ffAuthor"
Only users with superuser permissions may delete harvesting sets.
Managing Harvesting Clients
The following API can be used to create and manage “Harvesting Clients”. A Harvesting Client is a configuration entry that allows your Dataverse installation to harvest and index metadata from a specific remote location, either regularly, on a configured schedule, or on a one-off basis. For more information, see the Managing Harvesting Clients section of the Admin Guide.
List All Configured Harvesting Clients
Shows all the Harvesting Clients configured:
GET http://$SERVER/api/harvest/clients/
Show a Specific Harvesting Client
Shows a Harvesting Client with a defined nickname:
GET http://$SERVER/api/harvest/clients/$nickname
curl "http://localhost:8080/api/harvest/clients/myclient"
{
"status":"OK",
{
"data": {
"lastDatasetsFailed": "22",
"lastDatasetsDeleted": "0",
"metadataFormat": "oai_dc",
"archiveDescription": "This Dataset is harvested from our partners. Clicking the link will take you directly to the archival source of the data.",
"archiveUrl": "https://dataverse.foo.edu",
"harvestUrl": "https://dataverse.foo.edu/oai",
"style": "dataverse",
"type": "oai",
"dataverseAlias": "fooData",
"nickName": "myClient",
"set": "fooSet",
"schedule": "none",
"status": "inActive",
"lastHarvest": "Thu Oct 13 14:48:57 EDT 2022",
"lastResult": "SUCCESS",
"lastSuccessful": "Thu Oct 13 14:48:57 EDT 2022",
"lastNonEmpty": "Thu Oct 13 14:48:57 EDT 2022",
"lastDatasetsHarvested": "137"
}
}
Create a Harvesting Client
To create a new harvesting client:
POST http://$SERVER/api/harvest/clients/$nickname
nickName
is the name identifying the new client. It should be alpha-numeric and may also contain -, _, or %, but no spaces. Must also be unique in the installation.
You must supply a JSON file that describes the configuration, similarly to the output of the GET API above. The following fields are mandatory:
dataverseAlias: The alias of an existing collection where harvested datasets will be deposited
harvestUrl: The URL of the remote OAI archive
archiveUrl: The URL of the remote archive that will be used in the redirect links pointing back to the archival locations of the harvested records. It may or may not be on the same server as the harvestUrl above. If this OAI archive is another Dataverse installation, it will be the same URL as harvestUrl minus the “/oai”. For example: https://demo.dataverse.org/ vs. https://demo.dataverse.org/oai
metadataFormat: A supported metadata format. As of writing this the supported formats are “oai_dc”, “oai_ddi” and “dataverse_json”.
The following optional fields are supported:
archiveDescription: What the name suggests. If not supplied, will default to “This Dataset is harvested from our partners. Clicking the link will take you directly to the archival source of the data.”
set: The OAI set on the remote server. If not supplied, will default to none, i.e., “harvest everything”.
style: Defaults to “default” - a generic OAI archive. (Make sure to use “dataverse” when configuring harvesting from another Dataverse installation).
customHeaders: This can be used to configure this client with a specific HTTP header that will be added to every OAI request. This is to accommodate a use case where the remote server requires this header to supply some form of a token in order to offer some content not available to other clients. See the example below. Multiple headers can be supplied separated by \n - actual “backslash” and “n” characters, not a single “new line” character.
Generally, the API will accept the output of the GET version of the API for an existing client as valid input, but some fields will be ignored. For example, as of writing this there is no way to configure a harvesting schedule via this API.
An example JSON file would look like this:
{
"nickName": "zenodo",
"dataverseAlias": "zenodoHarvested",
"harvestUrl": "https://zenodo.org/oai2d",
"archiveUrl": "https://zenodo.org",
"archiveDescription": "Moissonné depuis la collection LMOPS de l'entrepôt Zenodo. En cliquant sur ce jeu de données, vous serez redirigé vers Zenodo.",
"metadataFormat": "oai_dc",
"customHeaders": "x-oai-api-key: xxxyyyzzz",
"set": "user-lmops"
}
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=http://localhost:8080
curl -H X-Dataverse-key:$API_TOKEN -X POST -H "Content-Type: application/json" "$SERVER_URL/api/harvest/clients/zenodo" --upload-file client.json
The fully expanded example above (without the environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X POST -H "Content-Type: application/json" "http://localhost:8080/api/harvest/clients/zenodo" --upload-file "client.json"
{
"status": "OK",
"data": {
"metadataFormat": "oai_dc",
"archiveDescription": "Moissonné depuis la collection LMOPS de l'entrepôt Zenodo. En cliquant sur ce jeu de données, vous serez redirigé vers Zenodo.",
"archiveUrl": "https://zenodo.org",
"harvestUrl": "https://zenodo.org/oai2d",
"style": "default",
"type": "oai",
"dataverseAlias": "zenodoHarvested",
"nickName": "zenodo",
"set": "user-lmops",
"schedule": "none",
"status": "inActive",
"lastHarvest": "N/A",
"lastSuccessful": "N/A",
"lastNonEmpty": "N/A",
"lastDatasetsHarvested": "N/A",
"lastDatasetsDeleted": "N/A"
}
}
Only users with superuser permissions may create or configure harvesting clients.
Modify a Harvesting Client
Similar to the API above, using the same JSON format, but run on an existing client and using the PUT method instead of POST.
Delete a Harvesting Client
Self-explanatory:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE "http://localhost:8080/api/harvest/clients/$nickName"
Only users with superuser permissions may delete harvesting clients.
PIDs
PIDs is short for Persistent IDentifiers. Examples include DOI or Handle. There are some additional PID operations listed in the Managing Datasets and Dataverse Collections section of the Admin Guide.
Get Info on a PID
Get information on a PID, especially its “state” such as “draft” or “findable”. Currently, this API only works on DataCite DOIs. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PID=doi:10.70122/FK2/9BXT5O
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/pids?persistentId=$PID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/pids?persistentId=doi:10.70122/FK2/9BXT5O
List Unreserved PIDs
Get a list of PIDs that have not been reserved on the PID provider side. This can happen, for example, if a dataset is created while the PID provider is down. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/pids/unreserved
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx https://demo.dataverse.org/api/pids/unreserved
Reserve a PID
Reserved a PID for a dataset. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PID=doi:10.70122/FK2/9BXT5O
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/pids/:persistentId/reserve?persistentId=$PID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST https://demo.dataverse.org/api/pids/:persistentId/reserve?persistentId=doi:10.70122/FK2/9BXT5O
Delete a PID
Delete PID (this is only possible for PIDs that are in the “draft” state) and within a Dataverse installation, set globalidcreatetime
to null and identifierregistered
to false. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export PID=doi:10.70122/FK2/9BXT5O
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE $SERVER_URL/api/pids/:persistentId/delete?persistentId=$PID
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X DELETE https://demo.dataverse.org/api/pids/:persistentId/delete?persistentId=doi:10.70122/FK2/9BXT5O
Admin
This is the administrative part of the API. For security reasons, it is absolutely essential that you block it before allowing public access to a Dataverse installation. Blocking can be done using settings. See the post-install-api-block.sh
script in the scripts/api
folder for details. See Blocking API Endpoints in Securing Your Installation section of the Configuration page of the Installation Guide.
Configure Database Setting
Sets setting name
to the body of the request:
PUT http://$SERVER/api/admin/settings/$name
Delete Database Setting
Delete the setting under name
:
DELETE http://$SERVER/api/admin/settings/$name
Manage Banner Messages
Communications to users can be handled via banner messages that are displayed at the top of all pages within your Dataverse installation. Two types of banners can be configured:
A banner message where dismissibleByUser is set to false will be displayed to anyone viewing the application. These messages will be dismissible for a given session but will be displayed in any subsequent session until they are deleted by the Admin. This type of banner message is useful for situations such as upcoming maintenance windows and other downtime.
A banner message where dismissibleByUser is set to true is intended to be used in situations where the Admin wants to make sure that all logged in users see a certain notification. These banner messages will only be displayed to users when they are logged in and can be dismissed by the logged in user. Once they have been dismissed by a user, that user will not see the message again. This type of banner message is useful for situations where a message needs to communicated once, such as a minor terms of use update or an update about a new workflow in your Dataverse installation.
Note that HTML can be included in banner messages.
Add a Banner Message:
curl -H "Content-type:application/json" -X POST http://$SERVER/api/admin/bannerMessage --upload-file messages.json
Where messages.json
looks like this:
{
"dismissibleByUser": "true",
"messageTexts": [
{
"lang": "en",
"message": "Dismissible Banner Message added via API"
},
{
"lang": "fr",
"message": "Message de bannière ajouté via l'API"
}
]
}
Get a list of active Banner Messages:
curl -X GET http://$SERVER/api/admin/bannerMessage
Delete a Banner Message by its id:
curl -X DELETE http://$SERVER/api/admin/bannerMessage/$id
Deactivate a Banner Message by its id (allows you to hide a message while retaining information about which users have dismissed the banner):
curl -X PUT http://$SERVER/api/admin/bannerMessage/$id/deactivate
List Authentication Provider Factories
List the authentication provider factories. The alias field of these is used while configuring the providers themselves.
GET http://$SERVER/api/admin/authenticationProviderFactories
List Authentication Providers
List all the authentication providers in the system (both enabled and disabled):
GET http://$SERVER/api/admin/authenticationProviders
Add Authentication Provider
Add new authentication provider. The POST data is in JSON format, similar to the JSON retrieved from this command’s GET
counterpart.
POST http://$SERVER/api/admin/authenticationProviders
Show Authentication Provider
Show data about an authentication provider:
GET http://$SERVER/api/admin/authenticationProviders/$id
Enable or Disable an Authentication Provider
Enable or disable an authentication provider (denoted by id
):
PUT http://$SERVER/api/admin/authenticationProviders/$id/enabled
Note
The former endpoint, ending with :enabled
(that is, with a colon), is still supported, but deprecated.
Check If an Authentication Provider is Enabled
Check whether an authentication proider is enabled:
GET http://$SERVER/api/admin/authenticationProviders/$id/enabled
The body of the request should be either true
or false
. Content type has to be application/json
, like so:
curl -H "Content-type: application/json" -X POST -d"false" http://localhost:8080/api/admin/authenticationProviders/echo-dignified/:enabled
Delete an Authentication Provider
Deletes an authentication provider from the system. The command succeeds even if there is no such provider, as the postcondition holds: there is no provider by that id after the command returns.
DELETE http://$SERVER/api/admin/authenticationProviders/$id/
Create Global Role
Creates a global role in the Dataverse installation. The data POSTed are assumed to be a role JSON.
POST http://$SERVER/api/admin/roles
Delete Global Role
A curl example using an ID
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE $SERVER_URL/api/admin/roles/$ID
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/admin/roles/24
A curl example using a Role alias ALIAS
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ALIAS=roleAlias
curl -H "X-Dataverse-key:$API_TOKEN" -X DELETE "$SERVER_URL/api/admin/roles/:alias?alias=$ALIAS"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" -X DELETE https://demo.dataverse.org/api/admin/roles/:alias?alias=roleAlias
List Users
List users with the options to search and “page” through results. Only accessible to superusers. Optional parameters:
searchTerm
A string that matches the beginning of a user identifier, first name, last name or email address.itemsPerPage
The number of detailed results to return. The default is 25. This number has no limit. e.g. You could set it to 1000 to return 1,000 resultsselectedPage
The page of results to return. The default is 1.sortKey
A string that represents a field that is used for sorting the results. Possible values are “id”, “useridentifier” (username), “lastname” (last name), “firstname” (first name), “email” (email address), “affiliation” (affiliation), “superuser” (flag that denotes if the user is an administrator of the site), “position”, “createdtime” (created time), “lastlogintime” (last login time), “lastapiusetime” (last API use time), “authproviderid” (the authentication provider ID). To sort in reverse order you can add ” desc” e.g. “id desc”. The default value is “useridentifier”.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -H "X-Dataverse-key:$API_TOKEN" $SERVER_URL/api/admin/list-users
# sort by createdtime (the creation time of the account)
curl -H "X-Dataverse-key:$API_TOKEN" "$SERVER_URL/api/admin/list-users?sortKey=createdtime"
The fully expanded example above (without environment variables) looks like this:
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" https://demo.dataverse.org/api/admin/list-users
# sort by createdtime (the creation time of the account)
curl -H "X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx" "https://demo.dataverse.org/api/admin/list-users?sortKey=createdtime"
Sample output appears below.
When multiple pages of results exist, the
selectedPage
parameters may be specified.Note, the resulting
pagination
section includespageCount
,previousPageNumber
,nextPageNumber
, and other variables that may be used to re-create the UI.
{
"status":"OK",
"data":{
"userCount":27,
"selectedPage":1,
"pagination":{
"isNecessary":true,
"numResults":27,
"numResultsString":"27",
"docsPerPage":25,
"selectedPageNumber":1,
"pageCount":2,
"hasPreviousPageNumber":false,
"previousPageNumber":1,
"hasNextPageNumber":true,
"nextPageNumber":2,
"startResultNumber":1,
"endResultNumber":25,
"startResultNumberString":"1",
"endResultNumberString":"25",
"remainingResults":2,
"numberNextResults":2,
"pageNumberList":[
1,
2
]
},
"bundleStrings":{
"userId":"ID",
"userIdentifier":"Username",
"lastName":"Last Name ",
"firstName":"First Name ",
"email":"Email",
"affiliation":"Affiliation",
"position":"Position",
"isSuperuser":"Superuser",
"authenticationProvider":"Authentication",
"roles":"Roles",
"createdTime":"Created Time",
"lastLoginTime":"Last Login Time",
"lastApiUseTime":"Last API Use Time"
},
"users":[
{
"id":8,
"userIdentifier":"created1",
"lastName":"created1",
"firstName":"created1",
"email":"created1@g.com",
"affiliation":"hello",
"isSuperuser":false,
"authenticationProvider":"BuiltinAuthenticationProvider",
"roles":"Curator",
"createdTime":"2017-06-28 10:36:29.444"
},
{
"id":9,
"userIdentifier":"created8",
"lastName":"created8",
"firstName":"created8",
"email":"created8@g.com",
"isSuperuser":false,
"authenticationProvider":"BuiltinAuthenticationProvider",
"roles":"Curator",
"createdTime":"2000-01-01 00:00:00.0"
},
{
"id":1,
"userIdentifier":"dataverseAdmin",
"lastName":"Admin",
"firstName":"Dataverse",
"email":"dataverse@mailinator2.com",
"affiliation":"Dataverse.org",
"position":"Admin",
"isSuperuser":true,
"authenticationProvider":"BuiltinAuthenticationProvider",
"roles":"Admin, Contributor",
"createdTime":"2000-01-01 00:00:00.0",
"lastLoginTime":"2017-07-03 12:22:35.926",
"lastApiUseTime":"2017-07-03 12:55:57.186"
}
// ... 22 more user documents ...
]
}
}
Note
“List all users” GET http://$SERVER/api/admin/authenticatedUsers
is deprecated, but supported.
List Single User
List user whose identifier
(without the @
sign) is passed:
GET http://$SERVER/api/admin/authenticatedUsers/$identifier
Sample output using “dataverseAdmin” as the identifier
:
{
"authenticationProviderId": "builtin",
"persistentUserId": "dataverseAdmin",
"position": "Admin",
"id": 1,
"identifier": "@dataverseAdmin",
"displayName": "Dataverse Admin",
"firstName": "Dataverse",
"lastName": "Admin",
"email": "dataverse@mailinator.com",
"superuser": true,
"affiliation": "Dataverse.org"
}
Create an Authenticated User
Create an authenticatedUser:
POST http://$SERVER/api/admin/authenticatedUsers
POSTed JSON example:
{
"authenticationProviderId": "orcid",
"persistentUserId": "0000-0002-3283-0661",
"identifier": "@pete",
"firstName": "Pete K.",
"lastName": "Dataversky",
"email": "pete@mailinator.com"
}
Merge User Accounts
If a user has created multiple accounts and has been performed actions under both accounts that need to be preserved, these accounts can be combined. One account can be merged into another account and all data associated with both accounts will be combined in the surviving account. Only accessible to superusers.:
POST https://$SERVER/api/users/$toMergeIdentifier/mergeIntoUser/$continuingIdentifier
Example: curl -H "X-Dataverse-key: $API_TOKEN" -X POST http://demo.dataverse.org/api/users/jsmith2/mergeIntoUser/jsmith
This action moves account data from jsmith2 into the account jsmith and deletes the account of jsmith2.
Note: User accounts can only be merged if they are either both active or both deactivated. See deactivate a user.
Change User Identifier
Changes identifier for user in AuthenticatedUser
, BuiltinUser
, AuthenticatedUserLookup
& RoleAssignment
. Allows them to log in with the new identifier. Only accessible to superusers.:
POST http://$SERVER/api/users/$oldIdentifier/changeIdentifier/$newIdentifier
Example: curl -H "X-Dataverse-key: $API_TOKEN" -X POST https://demo.dataverse.org/api/users/johnsmith/changeIdentifier/jsmith
This action changes the identifier of user johnsmith to jsmith.
Make User a SuperUser
Toggles superuser mode on the AuthenticatedUser
whose identifier
(without the @
sign) is passed.
POST http://$SERVER/api/admin/superuser/$identifier
Delete a User
Deletes an AuthenticatedUser
whose identifier
(without the @
sign) is passed.
DELETE http://$SERVER/api/admin/authenticatedUsers/$identifier
Deletes an AuthenticatedUser
whose id
is passed.
DELETE http://$SERVER/api/admin/authenticatedUsers/id/$id
Note: If the user has performed certain actions such as creating or contributing to a Dataset or downloading a file they cannot be deleted. To see where in the database these actions are stored you can use the Show User Traces API. If a user cannot be deleted for this reason, you can choose to deactivate a user.
Deactivate a User
Deactivates a user. A superuser API token is not required but the command will operate using the first superuser it finds.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export SERVER_URL=http://localhost:8080
export USERNAME=jdoe
curl -X POST $SERVER_URL/api/admin/authenticatedUsers/$USERNAME/deactivate
The fully expanded example above (without environment variables) looks like this:
curl -X POST http://localhost:8080/api/admin/authenticatedUsers/jdoe/deactivate
The database ID of the user can be passed instead of the username.
export SERVER_URL=http://localhost:8080
export USERID=42
curl -X POST $SERVER_URL/api/admin/authenticatedUsers/id/$USERID/deactivate
Note: A primary purpose of most Dataverse installations is to serve an archive. In the archival space, there are best practices around the tracking of data access and the tracking of modifications to data and metadata. In support of these key workflows, a simple mechanism to delete users that have performed edit or access actions in the system is not provided. Providing a Deactivate User endpoint for users who have taken certain actions in the system alongside a Delete User endpoint to remove users that haven’t taken certain actions in the system is by design.
This is an irreversible action. There is no option to undeactivate a user.
Deactivating a user with this endpoint will:
Deactivate the user’s ability to log in to the Dataverse installation. A message will be shown, stating that the account has been deactivated. The user will not able to create a new account with the same email address, ORCID, Shibboleth, or other login type.
Deactivate the user’s ability to use the API
Remove the user’s access from all Dataverse collections, datasets and files
Prevent a user from being assigned any roles
Cancel any pending file access requests generated by the user
Remove the user from all groups
No longer have notifications generated or sent by the Dataverse installation
Prevent the account from being converted into an OAuth or Shibboleth account.
Prevent the user from becoming a superuser.
Deactivating a user with this endpoint will keep:
The user’s contributions to datasets, including dataset creation, file uploads, and publishing.
The user’s access history to datafiles in the Dataverse installation, including guestbook records.
The user’s account information (specifically name, email, affiliation, and position)
Show User Traces
Show the traces that the user has left in the system, such as datasets created, guestbooks filled out, etc. This can be useful for understanding why a user cannot be deleted. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export USERNAME=jdoe
curl -H "X-Dataverse-key:$API_TOKEN" -X GET $SERVER_URL/api/users/$USERNAME/traces
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X GET https://demo.dataverse.org/api/users/jdoe/traces
Remove All Roles from a User
Removes all roles from the user. This is equivalent of clicking the “Remove All Roles” button in the superuser dashboard. Note that you can preview the roles that will be removed with the Show User Traces API. A superuser API token is required.
Note
See curl Examples and Environment Variables if you are unfamiliar with the use of export below.
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export SERVER_URL=https://demo.dataverse.org
export USERNAME=jdoe
curl -H "X-Dataverse-key:$API_TOKEN" -X POST $SERVER_URL/api/users/$USERNAME/removeRoles
The fully expanded example above (without environment variables) looks like this:
curl -H X-Dataverse-key:xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -X POST http://localhost:8080/api/users/jdoe/removeRoles
List Role Assignments of a Role Assignee
List all role assignments of a role assignee (i.e. a user or a group):
GET http://$SERVER/api/admin/assignments/assignees/$identifier
Note that identifier
can contain slashes (e.g. &ip/localhost-users
).
List Permissions a User Has on a Dataverse Collection or Dataset
List permissions a user (based on API Token used) has on a Dataverse collection or dataset:
GET http://$SERVER/api/admin/permissions/$identifier
The $identifier
can be a Dataverse collection alias or database id or a dataset persistent ID or database id.
Show Role Assignee
List a role assignee (i.e. a user or a group):
GET http://$SERVER/api/admin/assignee/$identifier
The $identifier
should start with an @
if it’s a user. Groups start with &
. “Built in” users and groups start with :
. Private URL users start with #
.
Saved Search
The Saved Search, Linked Dataverses, and Linked Datasets features shipped with Dataverse 4.0, but as a “superuser-only” because they are experimental (see #1364, #1813, #1840, #1890, #1939, #2167, #2186, #2053, and #2543). The following API endpoints were added to help people with access to the “admin” API make use of these features in their current form. There is a known issue (#1364) that once a link to a Dataverse collection or dataset is created, it cannot be removed (apart from database manipulation and reindexing) which is why a DELETE
endpoint for saved searches is neither documented nor functional. The Linked Dataverse collections feature is powered by Saved Search and therefore requires that the “makelinks” endpoint be executed on a periodic basis as well.
List all saved searches.
GET http://$SERVER/api/admin/savedsearches/list
List a saved search by database id.
GET http://$SERVER/api/admin/savedsearches/$id
Execute a saved search by database id and make links to Dataverse collections and datasets that are found. The JSON response indicates which Dataverse collections and datasets were newly linked versus already linked. The debug=true
query parameter adds to the JSON response extra information about the saved search being executed (which you could also get by listing the saved search).
PUT http://$SERVER/api/admin/savedsearches/makelinks/$id?debug=true
Execute all saved searches and make links to Dataverse collections and datasets that are found. debug
works as described above. This happens automatically with a timer. For details, see Saved Searches Links Timer in the Admin Guide.
PUT http://$SERVER/api/admin/savedsearches/makelinks/all?debug=true
Dataset Integrity
Recalculate the UNF value of a dataset version, if it’s missing, by supplying the dataset version database id:
POST http://$SERVER/api/admin/datasets/integrity/{datasetVersionId}/fixmissingunf
Datafile Integrity
Recalculate the check sum value value of a datafile, by supplying the file’s database id and an algorithm (Valid values for $ALGORITHM include MD5, SHA-1, SHA-256, and SHA-512):
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/admin/computeDataFileHashValue/{fileId}/algorithm/$ALGORITHM
Validate an existing check sum value against one newly calculated from the saved file:
curl -H X-Dataverse-key:$API_TOKEN -X POST $SERVER_URL/api/admin/validateDataFileHashValue/{fileId}
Physical Files Validation in a Dataset
The following validates all the physical files in the dataset specified, by recalculating the checksums and comparing them against the values saved in the database:
$SERVER_URL/api/admin/validate/dataset/files/{datasetId}
It will report the specific files that have failed the validation. For example:
curl http://localhost:8080/api/admin/validate/dataset/files/:persistentId/?persistentId=doi:10.5072/FK2/XXXXX
{"dataFiles": [
{"datafileId":2658,"storageIdentifier":"file://123-aaa","status":"valid"},
{"datafileId":2659,"storageIdentifier":"file://123-bbb","status":"invalid","errorMessage":"Checksum mismatch for datafile id 2669"},
{"datafileId":2659,"storageIdentifier":"file://123-ccc","status":"valid"}
]
}
These are only available to super users.
Dataset Validation
Validate the dataset and its components (DatasetVersion, FileMetadatas, etc.) for constraint violations:
curl $SERVER_URL/api/admin/validate/dataset/{datasetId}
if validation fails, will report the specific database entity and the offending value. For example:
{"status":"OK","data":{"entityClassDatabaseTableRowId":"[DatasetVersion id:73]","field":"archiveNote","invalidValue":"random text, not a url"}}
If the optional argument variables=true
is specified, the API will also validate the metadata associated with any tabular data files found in the dataset specified. (For example: an invalid or empty variable name).
Validate all the datasets in the Dataverse installation, report any constraint violations found:
curl $SERVER_URL/api/admin/validate/datasets
If the optional argument variables=true
is specified, the API will also validate the metadata associated with any tabular data files. (For example: an invalid or empty variable name). Note that validating all the tabular metadata may significantly increase the run time of the full validation pass.
This API streams its output in real time, i.e. it will start producing the output immediately and will be reporting on the progress as it validates one dataset at a time. For example:
{"datasets": [
{"datasetId":27,"status":"valid"},
{"datasetId":29,"status":"valid"},
{"datasetId":31,"status":"valid"},
{"datasetId":33,"status":"valid"},
{"datasetId":35,"status":"valid"},
{"datasetId":41,"status":"invalid","entityClassDatabaseTableRowId":"[DatasetVersion id:73]","field":"archiveNote","invalidValue":"random text, not a url"},
{"datasetId":57,"status":"valid"}
]
}
Note that if you are attempting to validate a very large number of datasets in your Dataverse installation, this API may time out - subject to the timeout limit set in your app server configuration. If this is a production Dataverse installation serving large amounts of data, you most likely have that timeout set to some high value already. But if you need to increase it, it can be done with the asadmin command. For example:
asadmin set server-config.network-config.protocols.protocol.http-listener-1.http.request-timeout-seconds=3600
Workflows
List all available workflows in the system:
GET http://$SERVER/api/admin/workflows
Get details of a workflow with a given id:
GET http://$SERVER/api/admin/workflows/$id
Add a new workflow. Request body specifies the workflow properties and steps in JSON format.
Sample json
files are available at scripts/api/data/workflows/
:
POST http://$SERVER/api/admin/workflows
Delete a workflow with a specific id:
DELETE http://$SERVER/api/admin/workflows/$id
Warning
If the workflow designated by $id
is a default workflow, a 403 FORBIDDEN response will be returned, and the deletion will be canceled.
List the default workflow for each trigger type:
GET http://$SERVER/api/admin/workflows/default/
Set the default workflow for a given trigger. This workflow is run when a dataset is published. The body of the PUT request is the id of the workflow. Trigger types are PrePublishDataset, PostPublishDataset
:
PUT http://$SERVER/api/admin/workflows/default/$triggerType
Get the default workflow for triggerType
. Returns a JSON representation of the workflow, if present, or 404 NOT FOUND.
GET http://$SERVER/api/admin/workflows/default/$triggerType
Unset the default workflow for triggerType
. After this call, dataset releases are done with no workflow.
DELETE http://$SERVER/api/admin/workflows/default/$triggerType
Set the whitelist of IP addresses separated by a semicolon (;
) allowed to resume workflows. Request body is a list of IP addresses allowed to send “resume workflow” messages to this Dataverse installation:
PUT http://$SERVER/api/admin/workflows/ip-whitelist
Get the whitelist of IP addresses allowed to resume workflows:
GET http://$SERVER/api/admin/workflows/ip-whitelist
Restore the whitelist of IP addresses allowed to resume workflows to default (localhost only):
DELETE http://$SERVER/api/admin/workflows/ip-whitelist
Metrics
Clear all cached metric results:
DELETE http://$SERVER/api/admin/clearMetricsCache
Clear a specific metric cache. Currently this must match the name of the row in the table, which is named metricName*_*metricYYYYMM (or just metricName if there is no date range for the metric). For example dataversesToMonth_2018-05:
DELETE http://$SERVER/api/admin/clearMetricsCache/$metricDbName
Inherit Dataverse Collection Role Assignments
Recursively applies the role assignments of the specified Dataverse collection, for the roles specified by the :InheritParentRoleAssignments
setting, to all Dataverse collections contained within it:
GET http://$SERVER/api/admin/dataverse/{dataverse alias}/addRoleAssignmentsToChildren
Note: setting :InheritParentRoleAssignments
will automatically trigger inheritance of the parent Dataverse collection’s role assignments for a newly created Dataverse collection. Hence this API call is intended as a way to update existing child Dataverse collections or to update children after a change in role assignments has been made on a parent Dataverse collection.
Manage Available Standard License Terms
For more context about configuring licenses, see Configuring Licenses in the Installation Guide.
View the list of standard license terms that can be selected for a dataset:
export SERVER_URL=https://demo.dataverse.org
curl $SERVER_URL/api/licenses
View the details of the standard license with the database ID specified in $ID
:
export ID=1
curl $SERVER_URL/api/licenses/$ID
Superusers can add a new license by posting a JSON file adapted from this example add-license.json
. The name
and uri
of the new license must be unique. Sort order field is mandatory. If you are interested in adding a Creative Commons license, you are encouarged to use the JSON files under Adding Creative Common Licenses:
export API_TOKEN=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
curl -X POST -H 'Content-Type: application/json' -H X-Dataverse-key:$API_TOKEN --data-binary @add-license.json $SERVER_URL/api/licenses
Superusers can change whether an existing license is active (usable for new dataset versions) or inactive (only allowed on already-published versions) specified by the license $ID
:
export STATE=true
curl -X PUT -H 'Content-Type: application/json' -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/licenses/$ID/:active/$STATE
Superusers may change the default license by specifying the license $ID
:
curl -X PUT -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/licenses/default/$ID
Superusers can delete a license, provided it is not in use, by the license $ID
:
curl -X DELETE -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/licenses/$ID
Superusers can change the sorting order of a license specified by the license $ID
:
export SORT_ORDER=100
curl -X PUT -H 'Content-Type: application/json' -H X-Dataverse-key:$API_TOKEN $SERVER_URL/api/licenses/$ID/:sortOrder/$SORT_ORDER
List Dataset Templates
List all templates in the system.
GET http://$SERVER/api/admin/templates
List templates in a given dataverse by the dataverse’s alias or id.
GET http://$SERVER/api/admin/templates/{alias or id}
Delete Dataset Template
A curl example using an ID
export SERVER_URL=https://demo.dataverse.org
export ID=24
curl -X DELETE $SERVER_URL/api/admin/template/$ID
The fully expanded example above (without environment variables) looks like this:
curl -X DELETE https://demo.dataverse.org/api/admin/template/24
Request Signed URL
Dataverse has the ability to create signed URLs for it’s API calls. A signature, which is valid only for the specific API call and only for a specified duration, allows the call to proceed with the authentication of the specified user. It is intended as an alternative to the use of an API key (which is valid for a long time period and can be used with any API call). Signed URLs were developed to support External Tools but may be useful in other scenarios where Dataverse or a third-party tool needs to delegate limited access to another user or tool. This API call allows a Dataverse superUser to generate a signed URL for such scenarios. The JSON input parameter required is an object with the following keys:
url
- the exact URL to sign, including api version number and all query parameterstimeOut
- how long in minutes the signature should be valid for, default is 10 minuteshttpMethod
- which HTTP method is required, default is GETuser
- the user identifier for the account associated with this signature, the default is the superuser making the call. The API call will succeed/fail based on whether the specified user has the required permissions.
A curl example using allowing access to a dataset’s metadata
export SERVER_URL=https://demo.dataverse.org
export API_KEY=xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx
export JSON='{"url":"https://demo.dataverse.org/api/v1/datasets/:persistentId/?persistentId=doi:10.5072/FK2/J8SJZB","timeOut":5,"user":"alberteinstein"}'
curl -H "X-Dataverse-key:$API_KEY" -H 'Content-Type:application/json' -d "$JSON" $SERVER_URL/api/admin/requestSignedUrl
Please see dataverse.api.signature-secret for the configuration option to add a shared secret, enabling extra security.