This software is a DataLad extension that equips DataLad with an alternative command suite for metadata handling (extraction, aggregation, filtering, and reporting).
-
meta-extract
-- run an extractor on a file or dataset and emit the resulting metadata (stdout). -
meta-filter
-- run an filter over existing metadata and return the resulting metadata (stdout). -
meta-add
-- add a metadata record or a list of metadata records (possibly received on stdin) to a metadata store, usually to the git-repo of the dataset. -
meta-aggregate
-- aggregate metadata from multiple local or remote metadata-stores into a local metadata store. -
meta-dump
-- reporting metadata from local or remote metadata stores. Allows to select metadata by file- or dataset-path matching patterns including dataset versions and dataset IDs. -
meta conduct
-- execute processing pipelines that consist of a provider which emits objects that should be processed, e.g. files or metadata, and a pipeline of processors, that perform operations on the provided objects, such as metadata-extraction and metadata-adding.Processors are usually executed in parallel. A few pipeline definitions are provided with the release.
-
meta-export
-- write a flat representation of metadata to a file-system. For now you can export your metadata to a JSON-lines file namedmetadata-dump.jsonl
:datalad meta-dump -d <dataset-path> -r >metadata-dump.jsonl
-
meta-import
-- import a flat representation of metadata from a file-system. For now you can import metadata from a JSON-lines file, e.g.metadata-dump.jsonl
like this:datalad meta-add -d <dataset-path> --json-lines -i metadata-dump.jsonl
-
meta-ingest-previous
-- ingest metadata frommetalad<=0.2.1
.
-
Compatible with the previous families of extractors provided by datalad and by metalad, i.e.
metalad_core
,metalad_annex
,metalad_custom
,metalad_runprov
-
New metadata extractor paradigm that distinguishes between file- and dataset-level extractors. Included are two example extractors,
metalad_example_dataset
, andmetalad_example_file
-
metalad_external_dataset
andmetalad_external_file
, a dataset- and a file-extractors that execute external processes to generate metadata allow processing of the externally created metadata in datalad. -
metalad_studyminimeta
-- a dataset-level extractor that reads studyminimeta yaml files and produces metadata that contains a JSON-LD compatible description of the data in the input file
-
Provides indexers for the new datalad indexer-plugin interface. These indexers convert metadata in proprietary formats into a set of key-value pairs that can be used by
datalad search
to search for content. -
indexer_studyminimeta
-- converts studyminimeta JSON-LD description into key-value pairs fordatalad search
. -
indexer_jsonld
-- a generic JSON-LD indexer that aims at converting any JSON-LD descriptions into a set of key-value pairs that reflect the content of the JSON-LD description.
Before you install this package, please make sure that you install a recent
version of git-annex. Afterwards,
install the latest version of datalad-metalad
from
PyPi. It is recommended to use
a dedicated virtualenv:
# create and enter a new virtual environment (strongly recommended)
virtualenv --system-site-packages --python=python3 ~/env/datalad
. ~/env/datalad/bin/activate
# install from github
pip install datalad-metalad
For general information on how to use or contribute to DataLad (and this extension), please see the DataLad website or the main GitHub project page. The documentation is found here: http://docs.datalad.org/projects/metalad
All bugs, concerns and enhancement requests for this software can be submitted here: https://github.com/datalad/datalad-metalad/issues
If you have a problem or would like to ask a question about how to use DataLad,
please submit a question to
NeuroStars.org with a datalad
tag.
NeuroStars.org is a platform similar to StackOverflow but dedicated to
neuroinformatics.
All previous DataLad questions are available here: http://neurostars.org/tags/datalad/
This DataLad extension was developed with support from the German Federal Ministry of Education and Research (BMBF 01GQ1905), and the US National Science Foundation (NSF 1912266).