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Machine Learning Porn visualises an AI’s pornographic ruminations narrated by an AI generated non-binary voice.

Yahoo trained a neural network* to flag and censor sexual imagery from the internet. It learnt by being fed a dataset of thousands of graphic images, independently working out what they had in common to make them explicit. This neural network was then reverse engineered to create the most pornographic imagery from a computer's perspective.

Morphing between the yonic and the phallic, the images created are not gendered in a binary sense. They flow through the queer spaces between identity, gender, bodies and sexuality.

Previous work Machine Learning Porn (2016) exists as 5 physical editions and has been internationally exhibited.

*Not Suitable for Work (NSFW) classification using deep neural network Caffe models (Yahoo, 2016) and visualisations using Synthesizing the preferred inputs for neurons in neural networks via deep generator networks (Nguyen, 2016). Inspiration from Gabriel Goh, the machine learning researcher who originally discovered the pairing technique.

Jake Elwes looks for poetry and narrative in the success and failures of digital and AI systems, while also investigating and questioning the code and ethics behind them. His work has also been exhibited in museums and galleries internationally, including the ZKM, Gazelli Art House, Today Art Museum and Victoria and Albert Museum.

Verisart Certified: https://verisart.com/works/2872a5e4-907a-4e56-b2c7-9aa27aa4bd86

Crypto_Graphic Collection collection image
Art類別
合約地址0xe49b...7505
代幣 ID1
代幣標準ERC-721
區塊鏈Polygon
創作者收益
0%

Machine Learning Porn

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Machine Learning Porn

visibility
1.6K 檢視次數
  • 價格
    美元價格
    數量
    到期日
  • 價格
    美元價格
    數量
    底價差額
    到期日

Machine Learning Porn visualises an AI’s pornographic ruminations narrated by an AI generated non-binary voice.

Yahoo trained a neural network* to flag and censor sexual imagery from the internet. It learnt by being fed a dataset of thousands of graphic images, independently working out what they had in common to make them explicit. This neural network was then reverse engineered to create the most pornographic imagery from a computer's perspective.

Morphing between the yonic and the phallic, the images created are not gendered in a binary sense. They flow through the queer spaces between identity, gender, bodies and sexuality.

Previous work Machine Learning Porn (2016) exists as 5 physical editions and has been internationally exhibited.

*Not Suitable for Work (NSFW) classification using deep neural network Caffe models (Yahoo, 2016) and visualisations using Synthesizing the preferred inputs for neurons in neural networks via deep generator networks (Nguyen, 2016). Inspiration from Gabriel Goh, the machine learning researcher who originally discovered the pairing technique.

Jake Elwes looks for poetry and narrative in the success and failures of digital and AI systems, while also investigating and questioning the code and ethics behind them. His work has also been exhibited in museums and galleries internationally, including the ZKM, Gazelli Art House, Today Art Museum and Victoria and Albert Museum.

Verisart Certified: https://verisart.com/works/2872a5e4-907a-4e56-b2c7-9aa27aa4bd86

Crypto_Graphic Collection collection image
Art類別
合約地址0xe49b...7505
代幣 ID1
代幣標準ERC-721
區塊鏈Polygon
創作者收益
0%
keyboard_arrow_down
活動
價格
日期