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LearnOSM.org content, Jekyll layouts & issue tracking. This repository is dedicated to helping people learn how to map in OpenStreetMap (OSM) and use many of the software and tools in the OSM community.

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Andygol/learnosm

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LearnOSM

Repository for http://learnosm.org

homepage

Any updates in the gh-pages branch automatically update the site within minutes.

Contributing

For minor edits in English documents, simply locate the post you are interested in via the posts directory, and use the edit feature to fix typos, grammar and other minor items.

Check out CONTRIBUTING.md for more on how to contribute directly to LearnOSM, run the site locally or develop new content.

Important: If you want to translate documents from English or improve one of the existing translations, please check out http://learnosm.org/en/contribute/translator/. We no longer accept translated contents in pull requests but use Transifex in order to manage translations.

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LearnOSM.org content, Jekyll layouts & issue tracking. This repository is dedicated to helping people learn how to map in OpenStreetMap (OSM) and use many of the software and tools in the OSM community.

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License

MIT, Unknown licenses found

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