@0xLogicrw: Zhipu AI founder and chief scientist Tang Jie predicts that the biggest breakthrough in large models this year will be long-horizon tasks, where AI can continuously operate in real environments and solve complex problems. Once long-horizon tasks are achieved, today's 'one-person companies' will rapidly become 'no-employee companies...

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Summary

Zhipu AI founder Tang Jie predicts that the biggest breakthrough in large models this year will be long-horizon tasks, where AI can continuously solve complex problems in real environments, and mentions three technical pillars and Anthropic's progress in autonomous training.

Zhipu AI founder and chief scientist Tang Jie predicts that the biggest breakthrough in large models this year will be long-horizon tasks, where AI can continuously operate in real environments and solve complex problems. Once long-horizon tasks are achieved, today's 'one-person companies' will rapidly become 'no-employee companies' (NPCs) run entirely by agents. But to reach this goal, three technical pillars must first be solved: ultra-long context and RAG to handle memory, extremely fast version iteration to compensate for continuous learning, and self-correction and evaluation capabilities. Tang Jie believes that in the last aspect, Opus 4.7 has already taken initial shape. The endgame of large models will be comprehensive self-evolution. Tang Jie speculates that Claude has very likely already run the closed loop of writing its own code, cleaning data, and training itself. Rumor has it that Claude's 2 million chip cluster next year is likely reserved specifically for 'autonomous training'. (Background: From last year to now, Anthropic has successively secured up to 1 million Google TPUs and over 1 million Amazon Trainium chips. For comparison, the largest chip cluster currently is Musk's Colossus 2, with a total of about 555,000 GPUs, and plans to move toward 1 million.) Future devices will be fully taken over by large model operating systems (LLM OS), with applications generated entirely on demand, directly disrupting traditional computing architecture.
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@seclink: https://x.com/seclink/status/2056715852914032662

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