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🎮 We release VisGym: Diverse, Customizable, Scalable Environments for Multimodal Agents (w/ Junyi Zhang @aomaru_21490) 🌐 With 17 environments across multiple domains, we show systematically the brittleness of VLMs in visual interaction, and what training leads to. 🧵[1/8]

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