No. 2 / No. 60,000 (yellow, orange, red)
By Jonas Lund
Francesca Gavin is a prolific arts writer and curator. Based between Berlin and London as Visual Arts Editor of Dazed & Confused and Art Editor of Twin, Gavin is also the curator of the Soho House art collection. Internationally recognised, she possesses a global outlook, having put together permanent displays of art previously in Berlin, Miami, New York, New York and London. She has also written five books including “The Book of Hearts”, “100 New Artists” and “Hell Bound: New Gothic Art”.
- 60 x 80 cm
- No of editions
- 30 (27 left)
We ship in 48 hours and if you are unhappy with your purchase, returns are free. (more info)
Our frames are off the wall
German crafted professional grade frames in black and white individually crafted for Absolut Art and chosen by the curators and artists to best fit the artworks.
The frames are magnetic so they are super easy to use - you can switch out your prints in a matter of minutes.
- 6 millimeter aluminum frames
- UV proof plexiglass
- Magnetic open / close
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About Jonas Lund
Jonas’ work is a mirror to the art world
“Berlin offers everything a modern man needs.”
Born in 1984 in Linköping, Sweden, Jonas Lund creates artworks that are self-reflective. His pieces reflect and examine trends in the art industry. For example, his recent solo exhibition entitled “Strings Attached” highlights the many legal restrictions buyers face when purchasing artwork. In this case, the exhibition showed how gallerists try to fuel market momentum whilst shielding themselves from the damaging effects of quick-profit speculation. ‘The Anatomy of the Selection Procedure’ traces the backstory of how he became invited to participate in Absolut Art. The ’No.2 / No.60,000 (yellow, orange, red)' is a pseudo painting facsimile created through the use of an artificially intelligent neural network.