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Manuel DeLanda: Nature Space Society Play
Olafur Eliasson Erosion 1997
Olafur Eliasson Erosion 1997
© the artist
Date: 5 March 2004
Duration: 3 hours

The keynote speaker for the first of the three sessions is Manuel DeLanda - a New York based philosopher and science writer with an exceptionally cross-disciplinary body of work. Often drawing on the work of Gilles Deleuze, he has written on nonlinear dynamics, theories of self-organization, artificial life and intelligence, chaos theory as well as architecture, and the history of science. DeLanda is currently a professor at the Graduate School of Architecture, Columbia University. His publications include War in the Age of Intelligent Machines, One Thousand Years of Non-Linear History and Intensive Science and Virtual Philosophy. DeLanda will be joined by Olafur Eliasson, Doreen Massey and Dominic Willsdon.


Return to the Online Discussion Forum: Nature Space Society
This talk is part of a discussion series consisting of three sessions on the relationships between society, space and nature, and how they are currently being transformed both theoretically and by technological and environmental changes in the world. Follow the Online Forum link above for a more detailed overview.

Each of the three live talks will be webcast in conjunction with an online forum for the duration of the season. Register on the forum pages to join the online discussion!

Venue: Tate Modern

A collaboration with the Department of Geography at the Open University.
The Unilever Series: an annual art commission sponsored by Unilever

Please note the date and time, above, at which the live webcast will be available to online audiences. An archive of the webcast is generally made available within one week from the live event. If you have any problems viewing a live webcast refer to our Help pages for assistance.
 
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