@FinanceYF5: 《Robotics: Endgame》is a sequel to Jim Fan's speech 《Physical Turing Test》at Sequoia AI Ascent last year. He simply compares the roadmap to solve physical AGI to the success story of LLM.
Summary
Jim Fan released 《Robotics: Endgame》as a sequel to his previous speech 《Physical Turing Test》, proposing a roadmap to solve physical AGI by analogy to the success story of LLM.
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“Robotics: Endgame” is the sequel to Jim Fan’s presentation on “The Physical Turing Test” at last year’s Sequoia AI Ascent event.
He draws a straightforward analogy between the roadmap for achieving physical AGI and the success story of large language models (LLMs). https://t.co/ttb4ccrYwM
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