What if an AI could become smarter without being taught anything? In this episode, we dive into Absolute Zero, a groundbreaking framework where an AI model trains itself to reason—without any curated data, labeled examples, or human guidance. Developed by researchers from Tsinghua, BIGAI, and Penn State, this radical approach replaces traditional training with a bold form of self-play, where the model invents its own tasks and learns by solving them.The result? Absolute Zero Reasoner (AZR) surpasses existing models that depend on tens of thousands of human-labeled examples, achieving state-of-the-art performance in math and code reasoning tasks. This paper doesn’t just raise the bar—it tears it down and rebuilds it.Get ready to explore a future where models don’t just answer questions—they ask them too.Original research by Andrew Zhao, Yiran Wu, Yang Yue, and colleagues. Content powered by Google’s NotebookLM.Read the full paper: https://arxiv.org/abs/2505.03335
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