Skip to content

zen is a Python library that provides a simple and intuitive way to interact with Zenodo. With zen, you can automate and streamline various tasks related to creating, managing, and exploring Zenodo depositions, all within your Python environment.

License

Notifications You must be signed in to change notification settings

rolfsimoes/zen

 
 

Repository files navigation

zen - A Python Library for Interacting with Zenodo

zen icon

Overview

zen is a Python library that provides a simple and intuitive way to interact with Zenodo, a popular research data repository. With zen, you can automate and streamline various tasks related to creating, managing, and exploring Zenodo depositions, all within your Python environment.

Features

  • Deposition Management: Easily create, retrieve, update, and delete Zenodo depositions from your Python code.

  • Local File Management: Handle local files and datasets, with built-in support for templating.

  • File Handling: Upload, download, and manage files associated with your Zenodo depositions.

  • Deposition Listings: Retrieve a list of depositions from your Zenodo account with various filtering options.

  • Integrity Checking: Automatically calculate checksums for files within your depositions for integrity checking.

  • Interactivity with Zenodo API: Communicate with the Zenodo API seamlessly to access and manipulate your deposition data.

Installation

You can install zen using pip:

pip install -e 'git+https://github.com/Open-Earth-Monitor/zen#egg=zen'

Getting Started

Using zen in your Python project is straightforward. Here's a quick example of how to create a new Zenodo deposition:

from zen import Zenodo

# Initialize Zenodo with your API token
zen = Zenodo(url=Zenodo.sandbox_url, token="your_api_token")

# Create a deposition
dep = zen.depositions.create()

# Uploading a file
dep.files.create('examples/file1.csv')

# Print the deposition ID
print(f"Deposition ID: {dep.id}")

Managing local files

To associate a set of files to a Zenodo deposition, you can set up a local dataset. With a local dataset, users can easily track local changes and manage big datasets uploading. If the local files are stored in a remote machine, zen will download them temporarily just before the uploading.

from zen import LocalFiles, Zenodo

# Create a dataset
ds = LocalFiles(['examples/file1.csv', 'examples/file2.csv'], dataset_path='examples/dataset.json')

# Initialize Zenodo with your API token
zen = Zenodo(url=Zenodo.sandbox_url, token="your_api_token")

# Create a deposition if there is no one already defined
ds.set_deposition(api=zen, create_if_not_exists=True)

# Save and Load a saved dataset
ds.save()
ds = LocalFiles.from_file('examples/dataset.json')

# Retrieve the deposition
ds.set_deposition(api=zen)

# Upload files to Zenodo
ds.upload()

# Add more files to local dataset
ds.add(['examples/file3.csv'])
ds.save()

# Just upload modified or new files to Zenodo
ds.upload()

Managing metadata

Metadata management is easy with zen. The package provides helper classes to fill metadata information and document all Zenodo metadata tags. zen also supports basic templating that enables users to automate and personalize dataset descriptions using templated metadata.

# Create a metadata for a dataset
dep.metadata.title = 'My title'
dep.metadata.description = 'My description of files from {index_min} to {index_max}.'

# Add a creator
dep.metadata.creators.clear()
dep.metadata.creators.add('My Name')

# Update metadata on Zenodo
# Create replacement value for the metadata placeholders
replacements = {'index_min': 1, 'index_max': 3}
dep.update(replacements=replacements)

The replacements dictionary used to render the metadata could get that information from the local dataset itself. One way to do this is to extract that information from the filenames. Users can do this in two different ways, (1) by providing a filename template that will be used to parse filenames and information will be stored in file properties; or (2) by generating the filenames using that template filename.

  1. Providing a filename template

In this example, file properties will be extracted from filenames using the placeholder as a pattern.

# Create a template with 'index' placeholder
filename_template = 'file{index}.csv'
ds = LocalFiles(['examples/file1.csv', 'examples/file2.csv', 'examples/file3.csv'], 
                 template=filename_template, dataset_path='examples/dataset.json')

print(ds.summary())
#... {'index_min': '1', 'index_max': '3'}

# Get the previous metadata template and render a metadata
replacements = ds.summary()
dep.update(replacements=replacements)
  1. Generating local files' filenames

In this example, file properties will be generated along with filenames by calling expand() method. Multiple calls on this method will generate filenames by combining all occurrences in a cartesian product.

# Create a template with 'index' placeholder
filename_template = 'file{index}.csv'
ds = LocalFiles.from_template(filename_template)

# Expand the index placeholder
ds.expand(index=[1,2,3])
ds.modify_url(prefix='examples/')

print([f.url for f in ds])
#... ['examples/file1.csv', 'examples/file2.csv', 'examples/file3.csv']

# Get the previous metadata template and render a metadata
replacements = ds.summary()
dep.update(replacements=replacements)

Documentation

For detailed usage and additional examples, please refer to the zen documentation.

Contributing

We welcome contributions! If you would like to contribute to the zen library, please see our Contributing Guide for more information.

License

© OpenGeoHub Foundation, 2023-2024. Licensed under the MIT License.

Acknowledgements & Funding

This work is supported by OpenGeoHub Foundation and has received funding from the European Commission (EC) through the projects:

About

zen is a Python library that provides a simple and intuitive way to interact with Zenodo. With zen, you can automate and streamline various tasks related to creating, managing, and exploring Zenodo depositions, all within your Python environment.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 66.8%
  • Python 33.1%
  • Other 0.1%