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Weaver: End-to-End Agentic System Training for Video Interleaved Reasoning

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Video reasoning constitutes a comprehensive assessment of a model's capabilities, as it demands robust perceptual and interpretive skills, thereby serving as a means to explore the boundaries of model performance. While recent research has leveraged text-centric Chain-of-Thought reasoning to augment these capabilities, such approaches frequently suffer from representational mismatch and restricted by limited perceptual acuity. To address these limitations, we propose Weaver, a novel, end-to-end trainable multimodal reasoning agentic system. Weaver empowers its policy model to dynamically invoke diverse tools throughout the reasoning process, enabling progressive acquisition of crucial visual cues and construction of authentic multimodal reasoning trajectories. Furthermore, we integrate a reinforcement learning algorithm to allow the system to freely explore strategies for employing and combining these tools with trajectory-free data. Extensive experiments demonstrate that our system, Weaver, enhances performance on several complex video reasoning benchmarks, particularly those involving long videos.

Yudi Shi, Shangzhe Di, Qirui Chen, Qinian Wang, Jiayin Cai, Xiaolong Jiang, Yao Hu, Weidi Xie• 2026

Related benchmarks

TaskDatasetResultRank
Video Question AnsweringVideoMME
Accuracy65.3
99
Video Question AnsweringMVBench
Accuracy67.7
90
Video Question AnsweringMLVU
Accuracy54.5
53
Video Question AnsweringVideoMMMU
Accuracy51.3
52
Video Question AnsweringLVBench
Accuracy43
50
Video Question AnsweringLVReason
Accuracy75.4
9
Video Question AnsweringVSIBench
Accuracy40.3
8
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