Automated Metadata Service: Manage metadata from different sources.
Project description
ames
Automated Metadata Service
Manage metadata from different sources. The examples in the package are specific to Caltech repositories, but could be generalized. This package is currently in development and will have additional sources and matchers added over time.
Install:
Requires Python 3.7 (Recommended via Anaconda)
If you just need functions (like codemeta_to_datacite) type pip install ames
If you want to run operations, download the
latest release, extract the
zip, navigate to the extracted folder and type python setup.py install
.
Harvesting requires Dataset.
CaltechDATA integration requires caltechdata_api
Organization
Harvesters
- crossref_refs - Harvest references in datacite metadata from crossref event data
- caltechdata - Harvest metadata from CaltechDATA
- cd_github - Harvest GitHub repos and codemeta files from CaltechDATA
- matomo - Harvest web statistics from matomo
- caltechfeeds - Harvest Caltech Library metadata from feeds.library.caltech.edu
Matchers
- caltechdata - Match content in CaltechDATA
- update_datacite - Match content in DataCite
Example Operations
The run scripts show examples of using ames to perform a specific update operation.
CodeMeta management
In the test directory these is an example of using the codemeta_to_datacite function to convert a codemeta file to DataCite standard metdata
CodeMeta Updating
Collect GitHub records in CaltechDATA, search for a codemeta.json file, and update CaltechDATA with new metadata.
Setup
You need to set an environmental variable with your token to access
CaltechDATA export TINDTOK=
Usage
Type python run_codemeta.py
.
CaltechDATA Citation Alerts
Harvest citation data from the Crossref Event Data API, records in CaltechDATA, match records, update metadata in CaltechDATA, and send email to user.
Setup
You need to set environmental variables with your token to access
CaltechDATA export TINDTOK=
and Mailgun export MAILTOK=
.
Usage
Type python run_event_data.py
. You'll be prompted for confirmation if any
new citations are found.
Media Updates
Update media records in DataCite that indicate the files associated with a DOI.
Setup
You need to set an environmental variable with your password for your DataCite
account using export DATACITE=
Usage
Type python run_media_update.py
.
CaltechDATA metadata checks
This will run checks on the quality of metadata in CaltechDATA. Currently this
verifies whether redundent links are present in the related identifier section.
It also can update metadata with DataCite.
Setup
You need to set environmental variables with your token to access
CaltechDATA export TINDTOK=
Usage
Type python run_caltechdata_checks.py
.
CaltechDATA metadata updates
This will improve the quality of metadata in CaltechDATA. This option is broken up into updates that should run frequently (currently every 10 minutes) and daily. Frequent updates include adding a recommended citation to the descriptions, and daily updates include adding CaltechTHESIS DOIs to CaltechDATA.
Setup
You need to set environmental variables with your token to access
CaltechDATA export TINDTOK=
Usage
Type python run_caltechdata_updates.py
or python run_caltechdata_daily.py
.
Matomo downloads
This will harvest download information from matomo. Very experimental.
Setup
You need to set environmental variables with your token to access
Matomo export MATTOK=
Usage
Type python run_downloads.py
.
CODA Reports
Runs reports on Caltech Library repositories. Current reports:
- doi_report: Records (optionally filtered by year) and their DOIs.
- creator_report: Finds records where an Eprints Creator ID has an ORCID but it is not included on all records. Also lists cases where an author has two ORCIDS.
- file_report: Records that have potential problems with the attached files
- status_report: Reports on any records with an incorrect status in feeds
- license_report: Report out the license types in CaltechDATA
Usage
Type something like python run_coda_report.py doi_report thesis report.tsv -year 1977-1978
- The first option is the report type
- Next is the repository (thesis or authors)
- Next is the output file name (include .csv or .tsv extension, will show up in current directory)
Options
- Some reports include a -year option to return just the records from a specific year (1977) or a range (1977-1978)
- Some reports include a -group option to return just the records with a specific group name. Surround long names with quotes (e.g. "Keck Institute for Space Studies")
- Some reports include a -item option to return just records with a
specific item type. Supported types include:
- CaltechDATA item types (Dataset, Software, ...)
- CaltechAUTHORS item types (article, monograph, ...)
- CaltechAUTHORS monograph sub-types
- discussion_paper
- documentation
- manual
- other
- project_report
- report
- technical_report
- white_paper
- working_paper
There are some additional technical arguments if you want to change the default behavior.
- Adding
-source eprints
will pull report data from Eprints instead of feeds. This is very slow. You may need to add -username and -password to provide login credentials - Adding
-sample XXX
allows you to select a number of randomly selected records. This makes it more reasonable to pull data directly from Eprints.
You can combine multiple options to build more complex queries, such as this request for reports from a group:
python run_coda_report.py doi_report authors keck_tech_reports.csv -group "Keck Institute for Space Studies" -item technical_report project_report discussion_paper
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