想知道AI如何学会“看眼色”举一反三吗?本期,我们将一起揭秘几篇最新论文,看看AI如何像有了“变速箱”一样动态切换快慢刀,又如何通过“智能菜谱”让机器人学会干活。我们还会聊聊如何给AI一张“认知体检表”来衡量它的真实水平,以及它那套偷偷学会的“省钱”妙招。准备好了吗?让我们一探究竟!
AI如何学会“看眼色”,一个关于举一反三的发现
机器人后空翻都会,为什么还不会端茶倒水?
AI的“变速箱”,什么时候该用牛刀?
给AI一张体检表,我们离通用人工智能还有多远?
你的AI,正在偷偷学会“省钱”
本期介绍的几篇论文:
[LG] Fine-Tuning Dynamics of In-Context Factual Recall in Transformers
[Duke University & Princeton University & UC Berkeley]
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[RO] HumanoidMimicGen: Data Generation for Loco-Manipulation via Whole-Body Planning
[NVIDIA]
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[LG] Multi-Mixer Models: Flexible Sequence Modeling with Shared Representations
[CMU & Google Research]
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[AI] Measuring Progress Toward AGI: A Cognitive Framework
[Google DeepMind]
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[LG] Meta-Attention: Bayesian Per-Token Routing for Efficient Transformer Inference
[Knowledge Lab AG]
![[人人能懂AI前沿] 从举一反三、任务分解到动态“省钱”](https://image.xyzcdn.net/FqWpK8fpivLboaqBbRHUe_BCOvxu.png@small)