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Dana-Fiona Armour wins Sigg Prize for art that integrates AI
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AI-powered art award celebrates innovative exploration of future ecology: The inaugural Sigg Art Prize, focused on integrating artificial intelligence in art, has been awarded to German artist-researcher Dana-Fiona Armour for her thought-provoking work “Alvinella Ophia.”

Prize details and winner’s work: The Sigg Art Foundation, founded by Swiss tech entrepreneur Pierre Sigg, presented the €10,000 award at a ceremony in London.

  • Armour’s winning piece, “Alvinella Ophis,” is a 3D-animated video installation that blends biotechnology, AI, and contemporary art.
  • The work depicts a hybrid serpent creature, combining a snake and a deep-sea Pompeii worm, exploring a dystopian “future desert” devastated by ecological disaster.
  • Heat sensors detect the creature’s movements, triggering AI-generated visual responses within a quadrophonic soundscape.

Foundation’s vision and competition theme: The Sigg Art Foundation views AI as a transformative force in the art world, comparable to the impact of photography during the industrial revolution.

  • The foundation believes AI is reshaping reality representation, memory construction, and language innovation on a global scale.
  • Entrants to the prize were asked to submit work around the theme of “Future Desert.”

Artist background and previous work: Dana-Fiona Armour’s interdisciplinary approach often involves collaboration with scientists to explore species symbiosis.

  • Armour is a member of the Collectif Poush in Paris and has previously worked in residency at a genome-engineering company.
  • Her earlier work, Project MC1R, combined visual art and biotechnology and was exhibited at the Collection Lambert in Avignon in 2022.
  • She has held solo exhibitions with the gallery Andréhn-Schiptjenko in Paris and Stockholm.

Artist’s statement and goals: Armour emphasized the importance of interdisciplinary approaches in addressing ecological issues through art.

  • The artist aims to create dialogue about the connection between humanity and the natural world.
  • Armour hopes to promote a deeper understanding of shared ecological challenges through her work.

Unique jury composition: The Sigg Art Prize jury included a diverse group of experts and an AI component.

  • An AI created by French Canadian artist Grégory Chatonsky, trained on an art-centered language model, was part of the jury.
  • The AI assessed each entry qualitatively and quantitatively, expressing its output in Chatonsky’s voice.
  • Other jury members included curators, philosophers, academics, and digital art collectors.

Broader implications for AI in art: The Sigg Art Prize highlights the growing importance of AI as a tool and medium in contemporary art.

  • The integration of AI in the creative process and as part of the judging panel demonstrates its increasing influence in the art world.
  • This award may encourage more artists to explore the intersection of technology, ecology, and traditional artistic practices.
  • The prize could potentially spark discussions about the role of AI in shaping future artistic expressions and evaluations.
Dana-Fiona Armour wins Sigg Art Prize for work that integrates artificial intelligence

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