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    <title>Reinforcement Learning on Geopolitics &amp; Economy</title>
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      <title>Sutton, the Father of Reinforcement Learning: Large Language Models Are Not the Path to General Artificial Intelligence</title>
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      <description>In an interview in September 2025, Richard Sutton, a pioneer in reinforcement learning and Turing Award laureate, publicly questioned the direction of large language model development, arguing that their inherent flaws prevent them from reaching the level of human intelligence; true intelligence, he contended, requires interaction with the real physical world and the construction of causal models of that world.</description>
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