The
wikid.pedia project is a far too ambitious SEO coup-d-etat on the marvelous Wikipedia. If you know anything about SEO and Web 2.0, then you know that Wikipedia is the paragon, the apex, of SEO excellence and achievement, ranking on Page 1 in the mighty Google for virtually every search phrase imaginable.
We have done extensive SEO study and sophisticated semantic research into why Wikipedia has achieved such record-breaking, unparalleled rankings in the major search engines. Now, we want to go further. We have coined the term
wikid.pedia to describe this next evolution of the monolithic Wikipedia.
Our wikid.pedia is called
m0rpheme II, and we hope to build it into an even more comprehensive, user-generated, user-moderated, user-edited online wikipedia - a wikid.pedia - which will include images, video, news - as well as fact-based, objective articles.
To join the wikid.pedia project visit
http://gapoetry.net
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Semantic web is the future of search. It is a difficult concept to get a handle on, but we all have some experience with it. Universal search, site links, local search & maps - these are all examples of the move toward semantic web. The idea is to deliver a more comprehensive range of search results for a given query. Ideally this would include image, map, social media, etc. which are relevant to the searcher's intentions and give a fuller "answer" to their search question. On a more complicated level, semantic web consists of creating new programming languages - meta or machine languages - which will enable MySQL databases, web applications, software, execution files, etc., all begin to "speak" to one other.
One example of a semantic web application is the FOAF (Friend of a Friend) markup. Coding such as FOAF tries to help database protocols associate your web information with, for example, a friend's web information.
The assumption here is that friends share psychological traits and similar interests. Therefore, if machines can "get into the heads" of your friends, they have a better chance of getting into your head, and delivering search results which are more relevent to you as an individual.