Deduplicating archiver with compression and authenticated encryption.

Overview

BorgBackup Basic Usage

More screencasts: installation, advanced usage

What is BorgBackup?

BorgBackup (short: Borg) is a deduplicating backup program. Optionally, it supports compression and authenticated encryption.

The main goal of Borg is to provide an efficient and secure way to backup data. The data deduplication technique used makes Borg suitable for daily backups since only changes are stored. The authenticated encryption technique makes it suitable for backups to not fully trusted targets.

See the installation manual or, if you have already downloaded Borg, docs/installation.rst to get started with Borg. There is also an offline documentation available, in multiple formats.

Main features

Space efficient storage

Deduplication based on content-defined chunking is used to reduce the number of bytes stored: each file is split into a number of variable length chunks and only chunks that have never been seen before are added to the repository.

A chunk is considered duplicate if its id_hash value is identical. A cryptographically strong hash or MAC function is used as id_hash, e.g. (hmac-)sha256.

To deduplicate, all the chunks in the same repository are considered, no matter whether they come from different machines, from previous backups, from the same backup or even from the same single file.

Compared to other deduplication approaches, this method does NOT depend on:

  • file/directory names staying the same: So you can move your stuff around without killing the deduplication, even between machines sharing a repo.
  • complete files or time stamps staying the same: If a big file changes a little, only a few new chunks need to be stored - this is great for VMs or raw disks.
  • The absolute position of a data chunk inside a file: Stuff may get shifted and will still be found by the deduplication algorithm.
Speed
  • performance-critical code (chunking, compression, encryption) is implemented in C/Cython
  • local caching of files/chunks index data
  • quick detection of unmodified files
Data encryption
All data can be protected using 256-bit AES encryption, data integrity and authenticity is verified using HMAC-SHA256. Data is encrypted clientside.
Obfuscation
Optionally, borg can actively obfuscate e.g. the size of files / chunks to make fingerprinting attacks more difficult.
Compression

All data can be optionally compressed:

  • lz4 (super fast, low compression)
  • zstd (wide range from high speed and low compression to high compression and lower speed)
  • zlib (medium speed and compression)
  • lzma (low speed, high compression)
Off-site backups
Borg can store data on any remote host accessible over SSH. If Borg is installed on the remote host, big performance gains can be achieved compared to using a network filesystem (sshfs, nfs, ...).
Backups mountable as filesystems
Backup archives are mountable as userspace filesystems for easy interactive backup examination and restores (e.g. by using a regular file manager).
Easy installation on multiple platforms

We offer single-file binaries that do not require installing anything - you can just run them on these platforms:

  • Linux
  • Mac OS X
  • FreeBSD
  • OpenBSD and NetBSD (no xattrs/ACLs support or binaries yet)
  • Cygwin (experimental, no binaries yet)
  • Linux Subsystem of Windows 10 (experimental)
Free and Open Source Software
  • security and functionality can be audited independently
  • licensed under the BSD (3-clause) license, see License for the complete license

Easy to use

Initialize a new backup repository (see borg init --help for encryption options):

$ borg init -e repokey /path/to/repo

Create a backup archive:

$ borg create /path/to/repo::Saturday1 ~/Documents

Now doing another backup, just to show off the great deduplication:

$ borg create -v --stats /path/to/repo::Saturday2 ~/Documents
-----------------------------------------------------------------------------
Archive name: Saturday2
Archive fingerprint: 622b7c53c...
Time (start): Sat, 2016-02-27 14:48:13
Time (end):   Sat, 2016-02-27 14:48:14
Duration: 0.88 seconds
Number of files: 163
-----------------------------------------------------------------------------
               Original size      Compressed size    Deduplicated size
This archive:        6.85 MB              6.85 MB             30.79 kB  <-- !
All archives:       13.69 MB             13.71 MB              6.88 MB

               Unique chunks         Total chunks
Chunk index:             167                  330
-----------------------------------------------------------------------------

For a graphical frontend refer to our complementary project BorgWeb.

Helping, Donations and Bounties, becoming a Patron

Your help is always welcome!

Spread the word, give feedback, help with documentation, testing or development.

You can also give monetary support to the project, see there for details:

https://www.borgbackup.org/support/fund.html

Links

Compatibility notes

EXPECT THAT WE WILL BREAK COMPATIBILITY REPEATEDLY WHEN MAJOR RELEASE NUMBER CHANGES (like when going from 0.x.y to 1.0.0 or from 1.x.y to 2.0.0).

NOT RELEASED DEVELOPMENT VERSIONS HAVE UNKNOWN COMPATIBILITY PROPERTIES.

THIS IS SOFTWARE IN DEVELOPMENT, DECIDE YOURSELF WHETHER IT FITS YOUR NEEDS.

Security issues should be reported to the Security contact (or see docs/support.rst in the source distribution).

Documentation Build Status (master) Test Coverage Best Practices Score Bounty Source

Comments
Releases(1.2.3)
Owner
BorgBackup
Resistance is futile!
BorgBackup
An MkDocs plugin that simplifies configuring page titles and their order

MkDocs Awesome Pages Plugin An MkDocs plugin that simplifies configuring page titles and their order The awesome-pages plugin allows you to customize

Lukas Geiter 282 Dec 28, 2022
Easy OpenAPI specs and Swagger UI for your Flask API

Flasgger Easy Swagger UI for your Flask API Flasgger is a Flask extension to extract OpenAPI-Specification from all Flask views registered in your API

Flasgger 3.1k Dec 24, 2022
Python Advanced --- numpy, decorators, networking

Python Advanced --- numpy, decorators, networking (and more?) Hello everyone 👋 This is the project repo for the "Python Advanced - ..." introductory

Andreas Poehlmann 2 Nov 05, 2021
Loudchecker - Python script to check files for earrape

loudchecker python script to check files for earrape automatically installs depe

1 Jan 22, 2022
Quick tutorial on orchest.io that shows how to build multiple deep learning models on your data with a single line of code using python

Deep AutoViML Pipeline for orchest.io Quickstart Build Deep Learning models with a single line of code: deep_autoviml Deep AutoViML helps you build te

Ram Seshadri 6 Oct 02, 2022
Explain yourself! Interrogate a codebase for docstring coverage.

interrogate: explain yourself Interrogate a codebase for docstring coverage. Why Do I Need This? interrogate checks your code base for missing docstri

Lynn Root 435 Dec 29, 2022
step by step guide for beginners for getting started with open source

Step-by-Step Guide for beginners for getting started with Open-Source Here The Contribution Begins 💻 If you are a beginner then this repository is fo

Arpit Jain 66 Jan 03, 2023
A fast time mocking alternative to freezegun that wraps libfaketime.

python-libfaketime: fast date/time mocking python-libfaketime is a wrapper of libfaketime for python. Some brief details: Linux and OS X, Pythons 3.5

Simon Weber 68 Jun 10, 2022
A Python package develop for transportation spatio-temporal big data processing, analysis and visualization.

English 中文版 TransBigData Introduction TransBigData is a Python package developed for transportation spatio-temporal big data processing, analysis and

Qing Yu 251 Jan 03, 2023
Fastest Git client for Emacs.

EAF Git Client EAF Git is git client application for the Emacs Application Framework. The advantages of EAF Git are: Large log browse: support 1 milli

Emacs Application Framework 31 Dec 02, 2022
Python Eacc is a minimalist but flexible Lexer/Parser tool in Python.

Python Eacc is a parsing tool it implements a flexible lexer and a straightforward approach to analyze documents.

Iury de oliveira gomes figueiredo 60 Nov 16, 2022
Anomaly Detection via Reverse Distillation from One-Class Embedding

Anomaly Detection via Reverse Distillation from One-Class Embedding Implementation (Official Code ⭐️ ⭐️ ⭐️ ) Environment pytorch == 1.91 torchvision =

73 Dec 19, 2022
Python script to generate Vale linting rules from word usage guidance in the Red Hat Supplementary Style Guide

ssg-vale-rules-gen Python script to generate Vale linting rules from word usage guidance in the Red Hat Supplementary Style Guide. These rules are use

Vale at Red Hat 1 Jan 13, 2022
Crystal Smp plugin for show scoreboards

MCDR-CrystalScoreboards Crystal plugin for show scoreboards | Only 1.12 Usage !!s : Plugin help message !!s hide : Hide scoreboard !!s show : Show Sco

CristhianCd 3 Oct 12, 2021
This tutorial will guide you through the process of self-hosting Polygon

Hosting guide This tutorial will guide you through the process of self-hosting Polygon Before starting Make sure you have the following tools installe

Polygon 2 Jan 31, 2022
Speed up Sphinx builds by selectively removing toctrees from some pages

Remove toctrees from Sphinx pages Improve your Sphinx build time by selectively removing TocTree objects from pages. This is useful if your documentat

Executable Books 8 Jan 04, 2023
Read write method - Read files in various types of formats

一个关于所有格式文件读取的方法 1。 问题描述: 各种各样的文件格式,读写操作非常的麻烦,能够有一种方法,可以整合所有格式的文件,方便用户进行读取和写入。 2

2 Jan 26, 2022
Python code for working with NFL play by play data.

nfl_data_py nfl_data_py is a Python library for interacting with NFL data sourced from nflfastR, nfldata, dynastyprocess, and Draft Scout. Includes im

82 Jan 05, 2023
Xanadu Quantum Codebook is an experimental, exercise-based introduction to quantum computing using PennyLane.

Xanadu Quantum Codebook The Xanadu Quantum Codebook is an experimental, exercise-based introduction to quantum computing using PennyLane. This reposit

Xanadu 43 Dec 09, 2022
✨ Real-life Data Analysis and Model Training Workshop by Global AI Hub.

🎓 Data Analysis and Model Training Course by Global AI Hub Syllabus: Day 1 What is Data? Multimedia Structured and Unstructured Data Data Types Data

Global AI Hub 71 Oct 28, 2022