Amazon Nova Reel examples

A gallery of videos generated by Amazon Nova Reel, with their input text prompts and images.

Amazon Nova Reel is a diffusion model that transforms text prompts and optional images into dynamic video content. This page showcases Amazon Nova Reel's capabilities, with examples of both text-to-video and image-to-video generation. Each example presents the original input (text prompt and/or image) alongside the corresponding generated video, demonstrating how Amazon Nova Reel interprets textual descriptions and translates static images into fluid motion.

Prompt: "A snowman in a Venetian gondola ride, 4k, high resolution." Made using Amazon Nova Reel.
Prompt: "Noodles falling into a bowl of soup." Made using Amazon Nova Reel.
Prompt: "The camera pans left across a cozy, well-equipped kitchen, with sunlight streaming through large windows and illuminating the gleaming countertops and appliances. A steam-filled pot bubbles on the stovetop, hinting at the culinary creations to come." Made using Amazon Nova Reel.
Prompt: "A teddy bear in a leather jacket, baseball cap, and sunglasses playing guitar in front of a waterfall." Made using Amazon Nova Reel.
Prompt: "The astronaut and his dog watch fireworks, high contrast." Made using Amazon Nova Reel.
Prompt: "A pumpkin exploding, slow motion." Made using Amazon Nova Reel.
Prompt: "A cavern lit by shafts of light revealing hidden underground pools, camera rolls anti-clockwise." Made using Amazon Nova Reel.
Prompt: "Cinematic dolly shot of a juicy cheeseburger with melting cheese, fries, and a condensation-covered cola on a worn diner table. Natural lighting, visible steam and droplets. 4k, photorealistic, shallow depth of field." Made using Amazon Nova Reel.
Prompt: "Arc shot on a salad with dressing, olives and other vegetables; 4k; Cinematic." Made using Amazon Nova Reel.
Prompt: "Closeup of a large seashell in the sand. Gentle waves flow around the shell. Camera zoom in." Made using Amazon Nova Reel.
Prompt: "Clothes hanging on a thread to dry, windy; sunny day; 4k; Cinematic; highest quality." Made using Amazon Nova Reel.
Prompt: "Slow cam of a man middle age; 4k; Cinematic; in a sunny day; peaceful; highest quality; dolly in." Made using Amazon Nova Reel.
Input image example 1
Input image example 1.

Inputs: image example 1 (above); text prompt: "Dolly forward". Made using Amazon Nova Reel.
Input image example 2
Input image example 2.

Inputs: image example 2 (above); text prompt: "Dynamic handheld shot: the dog looks to the left as colored holiday lights on its body blink rhythmically". Made using Amazon Nova Reel.

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