@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...
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.
Similar Articles
@jietang: Recent thoughts: The Shift to Long-Horizon Tasks The most likely breakthrough this year will be in long-horizon tasks. …
The article discusses the anticipated breakthrough in long-horizon AI tasks and autonomous agents, suggesting a shift from 'one-person' to 'none-person' companies. It highlights technical pillars like memory, continual learning, and self-judging as key to realizing fully self-evolving AI systems that could redefine AGI and operating systems.
@jakevin7: Let me make a prediction: The next phase of the AI era will become "Infra is all you need". AI-generated code is already very powerful, but it's still far from adequate in terms of usability and stability. Recently, OpenAI's subscription system had a huge bug, and the membership system completely broke down. The system…
The author predicts that the next phase of the AI era will shift from model capabilities to infrastructure capabilities, emphasizing infra abilities such as reproducibility, observability, recoverability, and security isolation, believing that stably carrying AI behavior will be the key to competition.
@VincentLogic: If Ilya Is Right, the Three Strongest Consensuses in AI Over the Past Few Years Might All Be Wrong: Scaling Is No Longer the Universal Answer. High Benchmark Scores Don't Equal True Intelligence. RL Might Even Be Making Models 'Dumber'. This Interview, Called 'the Last Interview Before Ilya Disappeared'...
Ilya Sutskever suggested in an in-depth interview that the three core consensuses of the AI industry over the past few years could all be mistaken: Scaling is no longer a silver bullet, high benchmark scores do not equate to real intelligence, and RL is instead making models 'dumber'. He believes the dividends from pre-training and RL are nearly exhausted, AI has re-entered the era of research, and true superintelligence should possess a strong learning capability like a gifted teenager, not a static repository of knowledge.
@ba_niu80557: https://x.com/ba_niu80557/status/2071277244287426980
The article deeply analyzes the internal changes Anthropic faces as AI-generated code becomes extremely efficient: the bottleneck shifts from 'writing' to 'verification', traditional management, long-term planning, and effort measurement become ineffective, attention becomes the new scarce resource, and engineers even feel lonely. These phenomena foreshadow the challenges other companies may face in the future.
@seclink: https://x.com/seclink/status/2056715852914032662
Anthropic founder Dario Amodei predicted on the Lex Fridman podcast that strong AI will reach top human levels in 2026-2027, emphasizing that the core of AI safety lies in preventing power concentration and abuse, rather than model autonomy, and discussed the scaling laws, Claude design logic, and AI Safety Levels (ASL) framework.