Abstract
We present Wan-Streamer v0.3, which reframes our native-streaming interaction model under a single organizing view: a video is a world plus an event stream. The world is the persistent context in which a video unfolds, including the environment, scene, subjects, ambient acoustic conditions, voice characteristics, and other relatively stable conditions. The event stream is everything that changes over time within that world, including scene or environmental changes, subject behavior, speech, and other sounds. This yields a general-purpose pretraining task over large amounts of real video: given a world and incoming input, predict how the world moves, changes, and responds in real time. The resulting competence can be specialized to a broad family of real-time downstream tasks. We instantiate it on real-time full-duplex audio-visual interaction, where the event stream is the agent's speech together with free-form behavior. Functionally, the model's multimodal understanding process is vision-language-action-like: it maps multimodal user input to language-form speech and behavior actions. Wan-Streamer v0.3 preserves the v0.2 operating point: 640x368 video at 25 FPS, a 160 ms streaming unit, approximately 200 ms model-side response latency, and approximately 550 ms total interaction latency under a 350 ms bidirectional network budget.
Community
Wan Streamer v0.3 learns a persistent world and the events unfolding within it. This general video pretraining brings free-form behavior to real-time full-duplex audio-visual interaction — still 640×368 at 25 fps, with the same ~200 ms model-side latency.
Project page: https://wan-streamer.com/v0.3/
World-event video pretraining demos: Muted, offline results from the original, undistilled video pretrained model. These selected examples highlight action control across general scenes rather than real-time interaction.
v0.3 focuses on real-time full-duplex conversation. Extending generic action control to broader interactive scenarios is left for future work.
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