Seedance 2.0 Prompt: Netflix Reality Shift Ad

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Shami

Verified AI Creator
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Description

Witness reality shift around a calm character in this Seedance 2.0 prompt. From horror to sci-fi, environments transform with a handheld documentary aesthetic.
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video template
real-life filmed texture, handheld iPhone documentary aesthetic, natural low-light living room at night, TV flicker as the only light source, subtle camera shake, focus breathing, soft sensor noise, cinematic realism. Use Image1 as exact character reference, same face/body/clothes with a pink furry cardigan. One-take sequence: TV glitches and reality rapidly shifts around the calm character — horror dimension with decayed walls and red ambience, futuristic spaceship, medieval throne hall, interrogation room, post-apocalyptic wasteland. Netflix red glow spreads through every scene. Character remains perfectly still while environments transform realistically around them. She raises a remote, presses pause, and the entire world freezes mid-motion in complete silence. She calmly walks through the frozen chaos before sitting back on the couch as the room snaps to normal. On the TV: “Continue Watching?” ultra cinematic, realistic transitions, grounded practical lighting, immersive atmosphere, no stylized CGI, 13-second ad film look.
Result Download

Generations consume standard token rates depending on model specifications.

Prompt Specifications

Model Engine bytedance/seedance-2.0
Output Format 854x480 • 15s

Verified Prompt FAQ

This prompt is used to generate AI video content with a ready-made technical structure, model configuration, and reference image support. It helps creators test visual ideas faster without building every prompt from scratch.

Yes. Upload your reference images inside the Prompt Tester panel on the right, then run the generation test to preview how the prompt performs with your own visual direction.

Yes. This prompt is listed as a Synterial verified showcase prompt and includes its official preview, model engine, output configuration, and testing workflow.