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Build status Docker images Documentation status Package version License DOI

Note

This project is currently under development.

  • Version 1.0.0 will support Python ≥3.7 and is developed in the release_prep branch.
  • There will be a legacy branch with Python 2.7 and ≤3.6 support that, however, won't receive any new features.
  • The release is targetted for spring 2024.

Use law to build complex and large-scale task workflows. It is build on top of luigi and adds abstractions for run locations, storage locations and software environments. Law strictly disentangles these building blocks and ensures they remain interchangeable and resource-opportunistic.

Key features:

  • CLI with auto-completion and interactive status and dependency inspection.
  • Remote targets with automatic retries and local caching
    • WebDAV, HTTP, Dropbox, SFTP, all WLCG protocols (srm, xrootd, dcap, gsiftp, webdav, ...)
  • Automatic submission to batch systems from within tasks
    • HTCondor, LSF, gLite, ARC, Slurm, CMS-CRAB
  • Environment sandboxing, configurable on task level
    • Docker, Singularity, Sub-Shells, Virutal envs

Contents

First steps

Installation and dependencies

Install via pip

pip install law

or conda / (micro)mamba

conda install -c conda-forge law

If you plan to use remote targets, the (default) implementation also requires gfal2 and gfal2-python (optional) to be installed, either via pip or conda / (micro)mamba.

conda install -c conda-forge gfal2 gfal2-util

Usage at CERN

See the wiki.

Overcomplete example config

See law.cfg.example.

Projects using law

  • CMS Di-Higgs Inference Tools:
    • Basis for statistical analysis for all Di-Higgs searches in CMS, starting at datacard-level
    • repo, docs
  • columnflow (+ all analyses using it):
    • Python based, fully automated, columnar framework, including job submission, resolution of systematics and ML pipelines, starting at NanoAOD-level with an optimized multi-threaded column reader
    • repo, docs, task structure
  • CMS B-Tag SF Measurement:
    • Automated workflow for deriving shape-calibrating b-tag scale factors, starting at MiniAOD-level
    • repo
  • CMS Tau POG ML Tools:
    • Preprocessing pipeline for ML trainings in the TAU group
    • repo
  • CMS HLT Config Parser:
    • Collects information from various databases (HLT, bril, etc.) and shows menus, triggers paths, filter names for configurable MC datasets or data runs
    • repo
  • RWTH-CMS Analysis Framework:
    • Basis for multiple CMS analyses ranging from Di-Higgs, to single Higgs and b-tag SF measurements, starting at NanoAOD-level and based on coffea processors
    • repo
  • CIEMAT-CMS Analysis Framework:
    • Python and RDataFrame based framework starting from NanoAOD and targetting multiple CMS analyses
    • repo
  • CMS 3D Z+jet 13TeV analysis
    • Analysis workflow management from NTuple production to final plots and fits
    • repo
  • NP-correction derivation tool
    • MC generation with Herwig and analysis of generated events with Rivet
    • repo
  • CMS SUSY Searches at DESY
    • Analysis framework for CMS SUSY searches going from custom NanoAODs -> NTuple production -> DNN-based inference -> final plots and fits
    • repo
  • Kingmaker (CMS Ntuple Production with CROWN)
    • Ntuple conversion from CMS nanoAOD to analysis Ntuples using the CROWN framework. Also includes the training of an event classifier on those ntuples.
    • repo, CROWN

If your project uses law but is not yet listed here, feel free to open a pull request or mention your project details in a new issue and it will be added.

Examples

All examples can be run either in a Jupyter notebook or a dedicated docker container. For the latter, do

docker run -ti riga/law:example <example_name>

Further topics

Auto completion on the command-line

bash

source "$( law completion )"

zsh

zsh is able to load and evaluate bash completion scripts via bashcompinit. In order for bashcompinit to work, you should run compinstall to enable completion scripts:

autoload -Uz compinstall && compinstall

After following the instructions, these lines should be present in your ~/.zshrc:

# The following lines were added by compinstall
zstyle :compinstall filename '~/.zshrc'

autoload -Uz +X compinit && compinit
autoload -Uz +X bashcompinit && bashcompinit
# End of lines added by compinstall

If this is the case, just source the law completion script (which internally enables bashcompinit) and you're good to go:

source "$( law completion )"

Development

Tests

To run and test law, there are various docker riga/law images available on the DockerHub, corresponding to different OS and Python versions (based on micromamba). Start them via

docker run -ti riga/law:<the_tag>
OS Python Tags
AlmaLinux 9 3.11 a9-py311, a9-py3, a9, py311, py3, latest
AlmaLinux 9 3.10 a9-py310, py310
AlmaLinux 9 3.9 a9-py39, py39
AlmaLinux 9 3.8 a9-py38, py38
AlmaLinux 9 3.7 a9-py37, py37
CentOS 8 3.11 c8-py311, c8-py3, c8
CentOS 8 3.10 c8-py310
CentOS 8 3.9 c8-py39
CentOS 8 3.8 c8-py38
CentOS 8 3.7 c8-py37

Contributors

Marcel Rieger
Marcel Rieger

💻 👀 🚧 📖
Peter Fackeldey
Peter Fackeldey

💻
Yannik Rath
Yannik Rath

💻
Jaime Leon Holgado
Jaime Leon Holgado

💻
Louis Moureaux
Louis Moureaux

💻
Lukas Geiger
Lukas Geiger

💻
Valentin Iovene
Valentin Iovene

💻

This project follows the all-contributors specification.