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- <h4 align="center">
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- <a href="./README_ZH.md">简体中文</a> |
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- <b>English</b>
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- </h4>
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  Additionally, the <a href="./Docs/Yuan3.0_Ultra Paper.pdf">**technical report**</a> for Yuan3.0 Ultra has been released, which provides more detailed technical specifications and evaluation results.
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- <div align=center> <img src=https://github.com/Yuan-lab-LLM/Yuan3.0-Ultra/blob/main/Docs/Yuan3.0-Ultra-architecture.png width=80% />
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  Fig.1: Yuan3.0 Ultra Multimodal Architecture
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  Yuan3.0 Ultra delivers outstanding performance on retrieval-augmented generation, multimodal document understanding, tabular data analysis, content summarization, and tool invocation tasks, providing core capability support for enterprises building document-driven and data-driven Agent applications. Detailed evaluation results are presented in Section 5.
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- <div align=center> <img src=https://github.com/Yuan-lab-LLM/Yuan3.0-Ultra/blob/main/Docs/Yuan3.0-Ultra-benchmarks.png width=80% />
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  Fig.2: Benchmark Evaluation Results of Yuan3.0 Ultra
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  Additionally, the <a href="./Docs/Yuan3.0_Ultra Paper.pdf">**technical report**</a> for Yuan3.0 Ultra has been released, which provides more detailed technical specifications and evaluation results.
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+ <div align=center> <img src="https://huggingface.co/YuanLabAI/Yuan3.0-Ultra/resolve/main/docs/Yuan3.0-Ultra-architecture.png" width="80%" />
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  Fig.1: Yuan3.0 Ultra Multimodal Architecture
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  Yuan3.0 Ultra delivers outstanding performance on retrieval-augmented generation, multimodal document understanding, tabular data analysis, content summarization, and tool invocation tasks, providing core capability support for enterprises building document-driven and data-driven Agent applications. Detailed evaluation results are presented in Section 5.
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+ <div align=center> <img src="https://huggingface.co/YuanLabAI/Yuan3.0-Ultra/resolve/main/docs/Yuan3.0-Ultra-benchmarks.png" width="80%" />
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  Fig.2: Benchmark Evaluation Results of Yuan3.0 Ultra
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