

Sd4j
Overview :
sd4j is a Stable Diffusion inference Java implementation using ONNX Runtime, optimized and ported from a C# implementation. It features a graphical user interface for generating images repeatedly and supports negative text input.
Its purpose is to demonstrate how to use ONNX Runtime in Java and provide best practices for achieving good performance with ONNX Runtime. We will keep it synchronized with the latest ONNX Runtime version and update it appropriately as performance-related ONNX Runtime features become available through the ONNX Runtime Java API. All code is subject to change as this is a code example, and no APIs should be considered stable.
Target Users :
Used for quickly testing and demonstrating the use of Stable Diffusion in Java.
Use Cases
Astronaut riding a horse in a desert scene captured by a wildlife photographer
News photo of an America's Cup sailing vessel sailing across Mars dunes
Apollo 11 lunar module field professional photo
Features
Supports txt2img generation
Features a graphical user interface for generating images repeatedly
Supports negative text input
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