<p>Eine benutzerdefinierte URL ist eine kurze, einfach zu merkende Webadresse, die direkt zu Ihrem Profil oder Ihrer Seite führt. Beispielsweise kann man die YouTube-Seite auf Google+ bequem über <s
URL patterns use an extremely simple syntax. Every character in a pattern must match the corresponding character in the URL path exactly, with two exceptions. At the end of a pattern, /* matches any sequence of characters from that point forward. The pattern *.extension matches any file name ending with extension. No other wildcards are supported, and an asterisk at any other position in the pattern is not a wildcard.
First, the container prefers an exact path match over a wildcard path match. Second, the container prefers to match the longest pattern. Third, the container prefers path matches over filetype matches. Finally, the pattern <url-pattern>/</url-pattern> always matches any request that no other pattern matches
Tweets often contain URLs or links to a variety of content on the web, including images, videos, news articles and blog posts. SpiderDuck is a service at Twitter that fetches all URLs shared in Twe......
Auf 0cn.de kannst du lange URLs (Links) kürzer machen. Die Kurzlinks sind, dank Malware-Schutz und No-Referer Funktion, sicher. 0cn.de erstellt kürzere URLs als Tinyurl.
YOURLS stands for Your Own URL Shortener. It is a small set of PHP scripts that will allow you to run your own URL shortening service (a la TinyURL or bitly).
YOURLS is a small set of PHP scripts that will allow you to run your own URL shortening service (a la TinyURL). You can make it private or public, you can pick custom keyword URLs, it comes with its own API. You will love it.
social bookmarks manager; allows you to easily add sites you like to your personal collection of links, to categorize those sites with keywords, and to share your collection not only between your own browsers, but also with others.
collects the link structure of a website. Data import/export from/to database and CSV-files. Export to Graphviz DOT, Resource Description Framework (RDF/DC), XML Topic Maps (XTM), Prolog, HTML. Visualization as hierarchy and map.
H. TARIQ, W. YANG, I. HAMEED, B. AHMED, and R. KHAN. IJIRIS:: International Journal of Innovative Research Journal in Information Security, Volume IV (Issue XII):
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