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Seed2.0 Model Card: Towards Intelligence Frontier for Real-World Complexity

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NOW LET US Article – Seed2.0 Model Card: Towards Intelligence Frontier for Real-World Complexity

The newly introduced Seed2.0 model series represents a significant step forward in solving complex, real-world tasks by addressing long-tail knowledge and complex instruction following. It delivers world-leading reasoning, visual understanding, and search capabilities to enhance reliability in intricate, long-horizon scenarios.

Computer Science > Artificial Intelligence

Title:Seed2.0 Model Card: Towards Intelligence Frontier for Real-World Complexity

View PDFAbstract:We present Seed2.0, a model series that takes a meaningful step toward solving complex, real-world tasks. Our approach begins with identifying users' genuine needs and constructing a reliable, forward-looking evaluation system by selecting and abstracting benchmarks grounded in these needs and in realistic, complex scenarios. Guided by this evaluation system, Seed2.0 targets two persistent challenges, long-tail knowledge and complex instruction following, substantially improving the model's reliability on intricate, long-horizon tasks. Beyond these, Seed2.0 delivers world-leading reasoning intelligence, visual understanding, and search capabilities that address the most common needs of a broad user base. Through extensive real-world use cases documented in this model card, we demonstrate that Seed2.0 begins to exhibit the ability to handle initial complex real-world tasks, delivering greater value to hundreds of millions of users.

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Source: arXiv cs.AI Recent

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