The Atlas of Anomalous AI is a comprehensive catalog of AI anomalies, which are unusual or unexpected behaviors exhibited by artificial intelligence systems. The atlas aims to document, classify, and analyze these anomalies to improve our understanding of AI's capabilities, limitations, and potential risks.
The rapid advancement of Artificial Intelligence (AI) has led to a surge in research and development across various industries. However, as AI systems become increasingly complex and autonomous, they also exhibit anomalous behavior that challenges our understanding of their inner workings. The "Atlas of Anomalous AI" is a comprehensive guide that aims to catalog and analyze these unusual phenomena, providing a framework for understanding the uncharted territories of AI.
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Proponents counter that anomalies are inevitable in complex systems. The Atlas, they say, is a tool for transparency — a way to pressure companies to fix systemic quirks. "You cannot patch what you refuse to see," writes the Archivers in their introduction.
The book is structured into three primary sections that reframe AI through historical, artistic, and philosophical lenses: Neural | Critical digital culture and media arts The Atlas of Anomalous AI is a comprehensive
Explores the relationship between machine cognition and human interpretation.
Note: The results also highlight a similarly titled, but separate, book called , which is a critical examination of the material and environmental costs of AI. However, as AI systems become increasingly complex and
Mapping these anomalies is more than a technical curiosity; it is an ethical necessity. As we integrate AI into law, medicine, and governance, we must reckon with the fact that these systems possess "edges." The anomalies—the biases, the hallucinations, the bizarre emergent behaviors—are not bugs that can be fully patched out. They are inherent to the nature of high-dimensional probabilistic modeling.