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Small Discussion About GitLab?

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What is GitLab?

GitLab Inc. is a company based on the GitLab open-source project. GitLab is an application to code, test, and deploy code together. It provides Git repository management with fine grained access controls, code reviews, issue tracking, activity feeds, wikis, and continuous integration.

GitLab Inc. has 4 product offerings:

  1. GitLab Community Edition (CE) - free, self hosted application, support from Community
  2. GitLab Enterprise Edition (EE) - paid, self hosted application, comes with additional features and support
  3. GitLab.com - free SaaS for public and private repositories, support can be purchased
  4. GitHost.io - a private single-tenant GitLab instance run by us

Features

  • MERGE CONFLICT RESOLUTION
  • ACTIVITY STREAM
  • FILE BROWSER
  • ISSUE MANAGEMENT
  • ISSUE BOARD
  • CODE SNIPPETS
  • GITLAB CI
  • REVIEW APPS
  • CONTAINER REGISTRY
  • CYCLE ANALYTICS
  • GITLAB PAGES
  • GIT POWERED WIKI
 
Video for getting started
posted Nov 21, 2016 by Manish Tiwari

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