Skip to content
/ root Public
forked from root-project/root

The official repository for ROOT: analyzing, storing and visualizing big data, scientifically

License

Notifications You must be signed in to change notification settings

evheniyt/root

Folders and files

NameName
Last commit message
Last commit date

Latest commit

5479ddb · Aug 17, 2020
Apr 8, 2020
May 15, 2020
Aug 17, 2020
Aug 14, 2020
Aug 17, 2020
May 12, 2020
Aug 12, 2020
Aug 14, 2020
Aug 17, 2020
Jun 2, 2015
Jul 1, 2020
Aug 14, 2020
Aug 5, 2014
Jul 9, 2020
Jul 28, 2020
Jun 8, 2020
May 7, 2020
Jun 22, 2020
May 4, 2020
Aug 28, 2015
Jul 8, 2020
Aug 12, 2020
Jul 10, 2020
Oct 18, 2016
May 15, 2020
Jul 2, 2019
Jul 24, 2020
Feb 28, 2020
Apr 6, 2020
May 4, 2020
Jun 23, 2020
Aug 14, 2020
May 19, 2020
Apr 1, 2020
Jun 5, 2020
Aug 12, 2020
Aug 12, 2020
Jun 30, 2020
Apr 23, 2020
Sep 24, 2017
Apr 24, 2017
Feb 5, 2018
Mar 9, 2020
Mar 26, 2019
Apr 2, 2020
Aug 14, 2020
Aug 9, 2017
Dec 13, 2017
Dec 13, 2017
Mar 15, 2020
Feb 6, 2018

Repository files navigation

About

The ROOT system provides a set of OO frameworks with all the functionality needed to handle and analyze large amounts of data in a very efficient way. Having the data defined as a set of objects, specialized storage methods are used to get direct access to the separate attributes of the selected objects, without having to touch the bulk of the data. Included are histograming methods in an arbitrary number of dimensions, curve fitting, function evaluation, minimization, graphics and visualization classes to allow the easy setup of an analysis system that can query and process the data interactively or in batch mode, as well as a general parallel processing framework, PROOF, that can considerably speed up an analysis.

Thanks to the built-in C++ interpreter cling, the command, the scripting and the programming language are all C++. The interpreter allows for fast prototyping of the macros since it removes the time consuming compile/link cycle. It also provides a good environment to learn C++. If more performance is needed the interactively developed macros can be compiled using a C++ compiler via a machine independent transparent compiler interface called ACliC.

The system has been designed in such a way that it can query its databases in parallel on clusters of workstations or many-core machines. ROOT is an open system that can be dynamically extended by linking external libraries. This makes ROOT a premier platform on which to build data acquisition, simulation and data analysis systems.

License: LGPL v2.1+ Test coverage

Build Status

Branch Nightly build status
master Build Status
v6-20-00-patches Build Status
v6-18-00-patches Build Status

Cite

We are DOI

Please cite us as

Rene Brun and Fons Rademakers, ROOT - An Object Oriented Data Analysis Framework,
Proceedings AIHENP'96 Workshop, Lausanne, Sep. 1996,
Nucl. Inst. & Meth. in Phys. Res. A 389 (1997) 81-86.
See also "ROOT" [software], Release vX.YY/ZZ, dd/mm/yyyy,
(Select the right link for your release here: https://zenodo.org/search?page=1&size=20&q=conceptrecid:848818&all_versions&sort=-version).

Live Demo for CERN Users

Screenshots

These screenshots shows some of the plots (produced using ROOT) presented when the Higgs boson discovery was announced at CERN:

CMS Data MC Ratio Plot

Atlas P0 Trends

See more screenshots on our gallery.

Download and Getting Started

See root.cern download page for the latest binary releases.

Getting started with ROOT.

Building

Clone the repo

$ git clone https://github.com/root-project/root.git

Make a directory for building

$ mkdir build
$ cd build

Run cmake and make

$ cmake ../root
$ make -j8

Setup and run ROOT

$ source bin/thisroot.sh
$ root

More information regarding building.

Help and Support

Contribution Guidelines

About

The official repository for ROOT: analyzing, storing and visualizing big data, scientifically

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • C++ 80.2%
  • C 13.6%
  • Python 1.5%
  • JavaScript 1.3%
  • HTML 0.9%
  • CMake 0.7%
  • Other 1.8%