
Seed Diffusion Preview is an experimental diffusion language model from ByteDance Seed for high-speed code generation.
Seed Diffusion Preview by ByteDance is a cutting-edge text-to-image generation model that leverages diffusion techniques to create high-quality, diverse visuals from textual prompts. The model integrates advanced diffusion algorithms optimized for efficient and creative image synthesis, supporting dynamic, real-time generation use cases.
The model delivers performance on par with autoregressive counterparts across multiple core code generation benchmarks. In particular, on complex code-editing tasks that demand global planning, such as the CanItEdit benchmark, Seed Diffusion Preview leverages the unique advantages of discrete diffusion models to surpass autoregressive systems. This breakthrough opens new avenues for tackling intricate structured inference problems in code generation.

Seed Diffusion Preview is built on a diffusion model backbone with custom ByteDance enhancements for optimized performance and image fidelity. It incorporates adaptive noise scheduling and semantic consistency layers to ensure stable, high-quality outputs.
ByteDance emphasizes ethical AI development principles, focusing on mitigating biases in generated content and preventing misuse. The model respects content guidelines and includes safety features to minimize harmful or inappropriate outputs.
Seed Diffusion Preview by ByteDance is a cutting-edge text-to-image generation model that leverages diffusion techniques to create high-quality, diverse visuals from textual prompts. The model integrates advanced diffusion algorithms optimized for efficient and creative image synthesis, supporting dynamic, real-time generation use cases.
The model delivers performance on par with autoregressive counterparts across multiple core code generation benchmarks. In particular, on complex code-editing tasks that demand global planning, such as the CanItEdit benchmark, Seed Diffusion Preview leverages the unique advantages of discrete diffusion models to surpass autoregressive systems. This breakthrough opens new avenues for tackling intricate structured inference problems in code generation.

Seed Diffusion Preview is built on a diffusion model backbone with custom ByteDance enhancements for optimized performance and image fidelity. It incorporates adaptive noise scheduling and semantic consistency layers to ensure stable, high-quality outputs.
ByteDance emphasizes ethical AI development principles, focusing on mitigating biases in generated content and preventing misuse. The model respects content guidelines and includes safety features to minimize harmful or inappropriate outputs.