ReVisIT achieves near-SOTA performance on open multimodal tasks by retrieving and reasoning over labeled images as visual exemplars in a train-free scaffold, closing the open-vs-closed gap for models like Qwen3-VL-30B.
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Retrieved Images as Visual Thought: Training-Free Multimodal In-Context Learning for the Open-vs-Closed Gap
ReVisIT achieves near-SOTA performance on open multimodal tasks by retrieving and reasoning over labeled images as visual exemplars in a train-free scaffold, closing the open-vs-closed gap for models like Qwen3-VL-30B.