A collection of scripts I developed for personal and working projects.

Overview

A collection of scripts I developed for personal and working projects

v1.0 license Python 3.8 Bash

Table of contents

Introduction

This repository contains some scripts I write for other personal and working projects. I keep them here for two reasons: first, to keep them easily accessible to me in case of the needing to retrieve some parts of code; secondly, to let everybody accessing them freely.

If you want to use one of my scripts please cite them with this template citation file.

All my posted scripts are and will stay free, but if you want to support me with a donation it would be really appreciated!

Buy Me A Coffee

Repository diagram structure

my-scripts/
├── scripts/
│   ├── python/
│   │   ├── data analysis/
│   │   │   ├── impact parameters/
│   │   │   │   ├── compare_plots.py
│   │   │   │   ├── impact_parameters_1D.py
│   │   │   │   ├── impact_parameters_1D.py
│   │   │   ├── WbWb/
│   │   │   │   ├── OverlapSelections.py
│   ├── bash/
│   │   ├── installation/
│   │   │   ├── install.sh
│   │   │   ├── uninstall.sh
│   │   │   ├── update.sh
│   │   ├── debugging/
│   │   │   ├── debug.sh
├── img/
├── README.mc
├── LICENSE/

List of scripts

python

  • impact_parameters_1D.py: script used to produce 1D impact parameters plots, using the pyROOT framework, for some of my master thesis studies (see Appendix A).

  • impact_parameters_2D.py: script used to produce 2D impact parameters plots, using the pyROOT framework, for some of my master thesis studies (see Appendix A).

  • compare_plots.py: script used to compare impact parameters plots produced with impact_parameters_2D.py and impact_parameters_1D.py scripts, using the pyROOT framework.

  • OverlapSelections.py: script used to produce unfolding plots with overlapped b-tagging selections for each systematic. This script is produced with the pyROOT framework and is used in the ATLAS WbWb analysis.

    NOTE on the usage: if this script is used with ./OverlapSelections command it will produce overlapped plots for each selection of the selections dict. If it is used instead with the option -o [selection_name], it will produce a plot with the [selection_name] selection modified (changes are given in the input file) and overlaps it to the real [selection_name].

bash

  • debug.sh: script used to debug C++ code with Valgrind and cppcheck.

    More information about how to use this script can be found here

  • install.sh: script used to install headers and libraries into the system.

  • uninstall.sh: script used to uninstall headers and libraries into the system.

  • update.sh: script used to update a repository.

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Gianluca Bianco
PhD student in particle physics at the University of Bologna and member of the CERN ATLAS experiment. Passionate about coding (C++ in particular)
Gianluca Bianco
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