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Abstract
Some enlightenment regarding the project to mechanise reason. The assembly line of machine learning: data, algorithm, model. The training dataset: the social origins of machine intelligence. The history of AI as the automation of perception. The learning algorithm: compressing the world into a statistical model. All models are wrong, but some are useful. World to vector: the society of classification and prediction bots. Faults of a statistical instrument: the undetection of the new. Adversarial intelligence vs. statistical intelligence: labour in the age of AI.
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Details
1 Karlsruhe University of Arts and Design, Media Philosophy Department, Karlsruhe, Germany (GRID:grid.448697.0) (ISNI:0000 0000 8636 9001)
2 University of Novi Sad, New Media Department, Academy of Arts, Novi Sad, Serbia (GRID:grid.10822.39) (ISNI:0000 0001 2149 743X)





