@dair_ai: Great paper on self-improving agents:
Summary
A prominent AI paper from the week addresses whether self-improving agents are truly discovering new knowledge or merely remixing existing information.
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Cached at: 06/08/26, 09:23 AM
Great paper on self-improving agents:
elvis (@omarsar0): This was one of the standout AI papers of the week.
(bookmark it)
It tackles a question most self-improving AI agents ignore: is the agent actually discovering anything, or just remixing what it already knows?
How can you tell whether the agent is doing real discovery or just
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