SpaceX’s valuation needs explosive growth to justify these lofty expectations As the chart below shows, SpaceX appears expensive relative to the wider technology universe, even assuming revenue and ...
Forbes contributors publish independent expert analyses and insights. Dr. Lance B. Eliot is a world-renowned AI scientist and consultant. This voice experience is generated by AI. Learn more. This ...
The companies at the frontier of artificial intelligence should be ready to slow down, one of the fastest-moving among them says. Anthropic, the maker of the Claude chatbot, has claimed AI systems may ...
RSI is also defined as an “AI system capable of fully autonomously designing and developing its own successor,” per Anthropic’s blog post. “We are not there yet, and recursive self-improvement is not ...
Recursive self-improvement: Anthropic shows AI is starting to build AI, and the numbers cut two ways
Anthropic now reports that Claude writes more than 80% of the code it ships. The figures that read as a safety warning also describe a business whose output scales with compute rather than headcount.
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Cruz et al.'s (Mind & Society 2025, peer-reviewed) research on the motivated bias blind spot demonstrates a recursive structure where framing bias as desirable (=featurization) simultaneously causes ...
As drug discovery moves from trial-and-error to digital simulation, choosing between Recursion Pharmaceuticals (NASDAQ:RXRX) and Schrödinger (NASDAQ:SDGR) depends on ...
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Abstract: This article proposes a data-driven model-free inverse Q-learning algorithm for continuous-time linear quadratic regulators (LQRs). Using an agent’s trajectories of states and optimal ...
Abstract: In this paper, an optimization algorithm based on deep reinforcement learning is proposed to optimize complex networks in fixed-time convergence of continuous action iteration dilemmas. The ...
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