The two alternatives to the monasterisation of the World wide web

Saint Michael’s Abbey, in the Susa Valley, Piedmont. Source: Wikipedia.

In Medieval Europe, information was physically concentrated in very few secluded libraries and archives. Powerful institutions managed them and regulated who could access what. The library of the fictional abbey that is described in Umberto Eco’s The Name of the Rose is located in a fortified tower and only the librarian knows how to navigate its mysteries. Monasteries played an essential role in preserving written information and creating new intelligence from that knowledge. But being written information a scarce resource, with the keys to libraries came also authority and power. Similarly, Internet companies are amassing information within their fortified walls. In so doing, they provide services that we now see as essential but they also contravene the two core principles of the Internet: openness and decentralisation.


Monday, 7 May 2018


Twitter: frbailo




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