Skip to content

Neubauer-Group/UFOManager

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

DOI

About UFO models

UFO is the abbreviation of Universal FeynRules Output. UFO models are used to digitally store detailed information about the Lagrangian of a quantum field theory, such as names, PDG IDs, and physical properties of elementary particles, relevant parameters (like coupling strengths), and vertices associated with Feynman Diagrams. They are developed as self-sustained Python libraries and can be used by Monte Carlo event generators such as MadGraph to simulate physics processes in a collider experiment. UFO models are widely used in the context of the BSM theories.

Further details about the content and format of UFO models can be found in the article: UFO – The Universal FeynRules Output. Also, you can find examples of different UFO models in this webpage: https://feynrules.irmp.ucl.ac.be/wiki/ModelDatabaseMainPage.

About FAIR principles

FAIR stands for Findable, Accessible, Interoperable, and Reusable. FAIR principles were originally proposed in this paper as domain-agnostic guidelines on preservation and management of scientific data. These principles have also been interpreted in the context of other digital objects like research software, machine learning (ML) models, notebooks etc. These guidelines focus on persistent preservation of such contents so that they are well-preserved, easily found, and reused, with additional emphasis on improving the ability of machines to automatically search and use digital contents and aims to help users better access and reuse those existing data. For more information of FAIR principles, you can visit GO FAIR.

Domain specific interpretation of FAIR principles in the context of different kinds of digital objetcs are being investigated by multiple groups. For instance, the FAIR4HEP group focuses on identifying the best practices to make data and ML models FAIR in high energy physics.

About this repository

Like any other digital content, UFO models have software and platform dependencies, require version controlling, and can benefit from a unified way of preserving and distributing these resources. This FAIR-principle guided repository has been developed as a comprehensive tool to automate the persistent preservation and dispersion of UFO models and their corresponding metadata, creating a reliable and persistent bridgeway between the developers and users of such models. The primary content of this repository is the UFOManager package that consists of two python scripts: UFOUpload.py for uploading UFO models and UFODownlaod.py for downloading UFO modelss. Both scripts can be used as standalone Python scripts or the UFOManager package can be incorporated into user-developed custom facilitaor script.

Dependencies

The functions of the UFOManager/UFOUpload.py script i.e. to validate UFO models, generate their metadata, and upload them to zenodo with DOIs are supported with both Python 2 and 3. Meanwhile, UFOManager/UFODownload.py is only supported with Python 3. The dependencies to successfully use this package are listed in the files requirements_Python2.txt and requirements_Python3.txt. The specific instructions to setup the necessary environments and install these dependencies are given in the following section.

The following list includes some of the dependencies-

  • Particle to validate particle PDG IDs
  • PyGithub to access the Github REST API
  • Requests to send HTTP requests for accessing and validating web addresses
  • zenodo_get to download files from Zenodo records (only used in Python 3 environment)

Setup (the first time only)

This package can be setup by simply downloading it from the git repository and installing the necessary dependencies. To download this package:

$ git clone [email protected]:Neubauer-Group/UFOManager.git

Since some of the older UFO models are only available in Python 2, we have made UFOUpload.py compatible with both versions of Python. However, we strongly recommend using the prescribed setup in requirements_Python2.txt and requirements_Python3.txt while using this package with the desired Python version. The desired setup can be obtained by setting up a conda environment. For Python 2, run-

$ conda create --name ufo2 python=2.7

and for Python 3, run-

$ conda create --name ufo3 python=3.8

After creating the desired environment, run the following command to setup the dependencies-

$ conda activate ufo<N>
$ pip install -r requirements_Python<N>.txt

Here <N> is the Python version. This will setup the necessary dependencies for the corresponding environment. Note: UFODownload.py is not supported with Python 2, so users willing to search and download models should setup the environment in Python 3.

Before Using the Package (every time)

Every time before using the package, one should properly setup the environment and update the PYTHONPATH environment variable.

$ conda activate ufo<N>
$ cd <path-to-UFOManager>
$ export PYTHONPATH=$PYTHONPATH:$PWD

Using UFOUpload: Model Validation, Metadata Generation, and Preservation

Developers can use UFOUpload.py to validate the structure and content as well as publish their models with persistent Digital Object Identifiers (DOIs). When provided with the model files and some basic model inforamtion, the Upload function can examine the validation of model files, generate metadata in the formal of a json file for the model, publish the model to Zenodo, and make the metadata available via another repository UFOMetadata for preservation.

File Preparation

To use the Upload function you need to create a directory Your_Model_Folder that will contain the UFO model as a compressed folder with extensions (.tar, .tar.gz, .tgz, .zip) or as a directory itself. An additional json file called metadata.json is needed to provide basic information about the model.

For compressed folders, tarball and zip are accepted with UFO model python scripts inside the folder.

--Your_Model_Folder
 --metadata.json
 --Your_Model.zip/.tgz/.tar.gz
   --_init_.py
   --object_library.py
    ...

or

--Your_Model_Folder
 --metadata.json
 --Your_Model.zip/.tgz/.tar.gz
   --Your_Model Folder
    --_init_.py
    --object_library.py
    ...

For metadata.json, some basic information is required. You can see the requirements in this example. For author information in metadata.json, affiliation and contact are optional, but at least one contact is needed. It also requires a reference to an associated publication (either an arxiv Id or a DOI) that contains the necessary physics details and validation.

Finally, developers need to prepare a .txt file containing full paths to their models, each path lies in a single line, for example, in the .txt file

path-to-model1
path-to-model2
...

Usage

From the command line, one can run-

$  python -m UFOManager.UFOUpload <command>

where <command> represents one of the 5 choices-

'Validation check' 
'Generate metadata' 
'Upload model' 
'Update new version' 
'Upload metadata to GitHub'

The script runs in an interactive manner, requirung the user to provide the path to the .txt file containing paths to models:

$ Please enter the path to a text file with the list of all UFO models: <path-to-txt-file>

The same functionality can be achieved from an independent facilitator script and including the following lines:

from UFOManager import UFOUpload
UFOUpload.UFOUpload(<command>, <path-to-txt-file>)

Validation check

At this point the script will first check your file preparation, like whether your folder contains only two files required, and whether your metadata.json contains necessary information. After that,your model's validation will be checked. Your model will be checked whether it can be imported as a complete python package, since event generators require model input as a complete python package. It will read through your necessary model dependent files, check the completeness of those files and generate basic model-related information, such as particles defined in your model, number of vertices defined in your model.

Generate metadata

This request will go through the validation check of your model first and generate necessary model-related information. Then, some information is required from developers:

$ Please name your model: <model-name>
$ Please enter your model version: <model-version>

Note that the model will be given a default DOI of 0 in the enriched metadata unless the Model doi field is already present in the initial metadata. If you are using this functionality for a model for which a DOI already exists, you should provide that information in the initial metadata file.

The new enriched metadata json file will be created inside Your_Model_Folder.

--Your_Model_Folder
 --metadata.json
 --Your_Model.zip/.tgz/.tar.gz
 --Your_Model.json

You can see an example enriched metadata file stored in the UFOMetadata repository.

Upload model

At the beginning, your Zenodo personal access token and your GitHub personal access token will be required.

$ Please enter your Zenodo access token: <Zenodo_Access_Token>
$ Please enter you Github access token: <Github_Access_Token> 

For your Zenodo personal access token, deposit:actions and desposit:write should be allowed.

The script will go through the validation check of your model, generate the enriched metadata, and then use the Zenodo API to publish your model to Zenodo and get a DOI for your model.

If everything goes well, you can see a new draft in your Zenodo account. A reserved Zenodo DOI will be created. The new metadata file will be created in Your_Model_Folder. After that, the UFO Models Preservation repository used for metadata preservation will be forked in your Github account, the new metadata will be added.

Note: If you forked UFOMetadata before, make sure that your forked branch is up-to-date with orginal one.

Before finally publishing your model and uploading new enriched metadata to GitHub, you can make some changes to your Zenodo draft. And you can choose whether to continue

$ Do you want to publish your model and send your new enriched metadata file to GitHub repository UFOMetadata? Yes or No: Yes, or No

If you choose Yes, your model will be published to Zenodo, a pull request of your new enriched metadata will be created. A CI-enabled autocheck will run when pull request is made. This check may last for 5 minutes to make sure that model's DOI page is avaliable. If any problem happens, please contact Zijun Wang ([email protected]) or Avik Roy ([email protected]).

If you choose No, you can publish your model by yourself. You can visit the associated Zenodo draft, edit it and publish. Afterwards, you can create the pull request to add your enriched metadata to UFOMetadata by yourself, or send your enriched metadata file to Zijun Wang ([email protected]) or Avik Roy ([email protected]).

Update new version

To allow this functionality, your initial metadata.json needs to add a new key-value pair

"Existing Model Doi": "Zenodo-issued concept-DOI for your model"

The concept-DOI is a unique identifier issued by Zenodo to access all available versions of the model and always resolves to the latest version.

Afterwards, Upload script will work in a way similar to what it would do with 'Upload model'.

Upload metadata to GitHub

If you previously uploaded your model to Zenodo and want to create an enriched metadata for your model, you need to add a key-value pair

"Model Doi": "Zenodo DOI of your model"

in metadata.json. Your GitHub personal access token will be required for this functionality. The script will go through the validation check of your model, the enriched metadata file will be created in Your_Model_Folder. After that, the UFO Models Preservation repository used for metadata preservation will be forked in your Github account, the new metadata will be added, and pull request will be made.

Dealing with errors

You will be given feedback when most errors happen. If an error happens when you are uploading your model to Zenodo or uploading metadata to GitHub, it is recommended to delete the draft in Zenodo and the newly created enriched metadata in your forked branch before re-running the script

Using UFODownload: Search and Download UFO models

Users can use UFODownload.py to search for UFO models using the metadata preserved in UFOMetadata repository and download them from Zenodo. It will require the user to run the commands with Python 3.

Usage

From the command line, one can run-

$  python -m UFOManager.UFODownload <command>

where <command> represents one of the 3 choices-

'Search for model' 
'Search and Download'
'Download model'

The same functionality can be achieved from an independent facilitator script and including the following lines:

from UFOManager import UFODownload
UFODownload.UFODownload(<command>)

Search for model

Currently, the Download.py supports search on four types of information through UFO model metadata files: corresponding paper id of the model, Model's Zenodo DOI, pdg codes or names of particles in the model. You need to interactively make a choice-

$ Please choose your keyword type: Paper_id, Model Doi, pdg code, or name

Then, you can can start your search. For Paper_id and Model Doi, one input value is allowed. But you can input multiple particles' names/pdg codes, separated them with ','.

$ Please enter your needed pdg code: <code1,code2,...>

or

$ Please enter your needed particle name: <name1,name2,...>

Note: Your input particles should not be all elementary particles!!!

Then, you will get a feedback table containing metadata file name, model name, paper_id, and model DOI of UFO models fit your search.

Also, you can restart the search by responding Yes to the following question:

$ Do you still want to search for models? Please type in Yes or No.

Search and Download

It will start with the usual steps of searching for models. Once your ssearch is complete, it will give you a list of metadata file names (with .json extensions). You can download UFO models you need, by typing in their corresponding metadata file full names and separated them with ','.

$ You can choose the metadata you want to download: <meta1.json,meta2.json,...>

After that, you will be asked to create a folder, and all UFO models you need will be downloaded to that folder.

$ Please name your download folder: <Your_Download_Folder>

And the folder is under your current working path.

--Your current working path
 --Download.py
 --Your_Download_Folder

Download model

Then, you can download UFO models you need, by typing in their corresponding metadata file full name (.json is required) and separated them with ','. You can find the full names from your search feedback.

References

This work was done as a part of the IRIS-HEP Fellowship project for Zijun Wang under the mentorship of Avik Roy, Mark S Neubauer, and Matthew Feickert. The presentation is available at this link.

To cite this work, add to your bibliography-

Neubauer, M. S., Roy, A., & Wang, Z. (2022). Making Digital Objects FAIR in High Energy Physics: An Implementation for Universal FeynRules Output (UFO) Models. arXiv preprint arXiv:2209.09752.

or use the following bibtex entry-

@article{neubauer2022making,
  title={Making Digital Objects FAIR in High Energy Physics: An Implementation for Universal FeynRules Output (UFO) Models},
  author={Neubauer, Mark S and Roy, Avik and Wang, Zijun},
  journal={arXiv preprint arXiv:2209.09752},
  year={2022}
}