July 23rd, 2024

Jordan Peterson Interviews Elon Musk [video]

The YouTube video explores training supercomputer Grock for deep understanding, stressing precise questioning, AI's potential, using Tesla data, Grock 2 training, and upcoming Grock 3 launch for advanced AI development.

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Jordan Peterson Interviews Elon Musk [video]

The YouTube video delves into training the supercomputer Grock to gain a profound understanding of various subjects. Emphasizing the significance of posing precise questions to comprehend the universe, the discussion touches on concerns regarding the alignment problem in education and the vast potential of AI technology. Drawing parallels between Grock and Chat GPT, the speaker highlights the utilization of real-world data from Tesla's self-driving cars to enhance Grock's capabilities. Expressing optimism about the swift advancements in their AI technology, the video also mentions the ongoing training of Grock 2 and the imminent launch of Grock 3, anticipated to be the most potent AI globally.

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