Amazon Nova Canvas examples

A gallery of images generated by Amazon Nova Canvas, with their input text prompts.

Amazon Nova Canvas is a diffusion model that takes a text prompt and an optional image as input and generates an image as output, conditioned on the input. This page showcases Amazon Nova Canvas's capabilities. Each example presents the original text prompt alongside the corresponding generated image; together, the examples demonstrate how Amazon Nova Canvas interprets and visualizes diverse textual inputs.

A color photograph of a Librarian, headshot, high-quality.
Prompt: "A color photograph of a Librarian, headshot, high-quality." Made using Amazon Nova Canvas.
Generate a picture of a mythical creature like a dragon or a griffin
Prompt: "Generate a picture of a mythical creature like a dragon or a griffin." Made using Amazon Nova Canvas.
A view of the Earth from the moon
Prompt: "A view of the Earth from the moon." Made using Amazon Nova Canvas.
New York Skyline with 'Diffusion' written with fireworks on the sky.
Prompt: "New York Skyline with 'Diffusion' written with fireworks on the sky." Made using Amazon Nova Canvas.
Five cars on the street.
Prompt: "Five cars on the street." Made using Amazon Nova Canvas.
A TV.
Prompt: "A TV." Made using Amazon Nova Canvas.
A portrait of a smiling young woman with long, flowing hair, standing in natural sunlight.
Prompt: "A portrait of a smiling young woman with long, flowing hair, standing in natural sunlight." Made using Amazon Nova Canvas.
A dinosaur sitting in a tea cup.
Prompt: "A dinosaur sitting in a tea cup." Made using Amazon Nova Canvas.
Realistic editorial photo of female teacher standing at a blackboard with a warm smile.
Prompt: "Realistic editorial photo of female teacher standing at a blackboard with a warm smile." Made using Amazon Nova Canvas.
Whimsical and ethereal soft-shaded story illustration: A woman in a large hat stands at the ship's railing looking out across the ocean
Prompt: "Whimsical and ethereal soft-shaded story illustration: A woman in a large hat stands at the ship's railing looking out across the ocean." Made using Amazon Nova Canvas.
A cool looking stylish man in an orange jacket, dark skin, wearing reflective glasses. Shot from slightly low angle, face and chest in view, aqua blue sleek building shapes in background.
Prompt: "A cool looking stylish man in an orange jacket, dark skin, wearing reflective glasses. Shot from slightly low angle, face and chest in view, aqua blue sleek building shapes in background." Made using Amazon Nova Canvas.
An astronaut riding a horse.
Prompt: "An astronaut riding a horse." Made using Amazon Nova Canvas.
A punk rock frog in a studded leather jacket shouting into a microphone while standing on a stump.
Prompt: "A punk rock frog in a studded leather jacket shouting into a microphone while standing on a stump." Made using Amazon Nova Canvas.
Black hole
Prompt: "Black hole." Made using Amazon Nova Canvas.
A very fancy French restaurant
Prompt: "A very fancy French restaurant." Made using Amazon Nova Canvas.
A confident male model striding down a sleek runway, showcasing an avant-garde designer suit with bold geometric patterns.
Prompt: "A confident male model striding down a sleek runway, showcasing an avant-garde designer suit with bold geometric patterns." Made using Amazon Nova Canvas.
Some bread and pastry and milk on dining table, with a toaster in center, photo-realistic, 4k image
Prompt: "Some bread and pastry and milk on dining table, with a toaster in center, photo-realistic, 4k image." Made using Amazon Nova Canvas.
Black-and-white photo, character study, multi-angle.
Prompt: "Black-and-white photo, character study, multi-angle." Made using Amazon Nova Canvas.
Digital painting of a girl, dreamy and ethereal
Prompt: "Digital painting of a girl, dreamy and ethereal." Made using Amazon Nova Canvas.
Slick graphic art style. A woman farmer stands in her field.
Prompt: "Slick graphic art style. A woman farmer stands in her field." Made using Amazon Nova Canvas.

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