@_akhaliq: LingBot-Video is out on Hugging Face MoE-based video foundation model built for embodied intelligence 30B params, only …
Summary
LingBot-Video, a 30B parameter MoE-based video foundation model for embodied intelligence, has been released on Hugging Face with only 3B active parameters at inference, augmented with 70K hours of embodied data.
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Cached at: 07/09/26, 05:39 PM
LingBot-Video is out on Hugging Face
MoE-based video foundation model built for embodied intelligence
30B params, only 3B active at inference
Augmented with 70K hours of embodied data on top of large-scale internet video pretraining https://t.co/lnxQMw5gJ6
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