Amazon
Optimization of Image Generation Models for Edge
EdgeDiffuse explores the deployment of Stable Diffusion–based image generation models on resource-constrained edge devices. As generative AI models grow increasingly powerful, their computational demands limit accessibility beyond cloud infrastructure. This project addressed that gap by applying mixed-precision quantization, structured pruning, and knowledge distillation to compress Stable Diffusion for deployment on ARM-based hardware (Orange Pi RK3588), with and without NPU acceleration. The goal was to achieve at least 20–25% model size reduction while maintaining acceptable image quality, enabling real-time, on-device generative AI without cloud dependency.
Students
Faculty Adviser(s)
Radha Poovendran, Electrical & Computer Engineering
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