MDN Celebrates 20 Years as a Leading Web Development Resource
By
soheilpro
Not artisan, but a perfectly fine bagel. Hits the spot.
Summary
MDN is celebrating its 20th anniversary as a community-driven wiki that has evolved to provide extensive documentation on web standards. It has grown to nearly 14,000 pages of documentation and over 33,000 localized articles.
Key quotes
· 3 pulledTwenty years ago, the web was growing into a complex, interactive platform that was getting easier to access, but more challenging to build for.
MDN started as a community-driven wiki, helping developers navigate that rapidly-evolving web with an emphasis on web standards.
Today, there's nearly 14,000 pages of documentation, more than 33,000 localized articles, and compatibility dat
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