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Course Explores Computation as a Core Concept Across Disciplines

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A course titled 'Computation as a Universal and Fundamental Concept' has been published on the Ergo learning platform. The material appears to examine computation not merely as a technical tool but as a foundational idea spanning multiple fields of knowledge. The course has attracted modest early attention on Hacker News, garnering seven points and one comment. It is aimed at those interested in the theoretical and philosophical underpinnings of computational thinking.

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