SustainDiffusion: Optimising the Social and Environmental Sustainability of Stable Diffusion Models
Giordano d'Aloisio, Tosin Fadahunsi, Jay Choy, Rebecca Moussa, Federica Sarro

TL;DR
SustainDiffusion is a search-based method that optimizes hyperparameters and prompts to reduce bias and energy use in Stable Diffusion models while maintaining image quality.
Contribution
It introduces a novel approach to improve social and environmental sustainability of SD models without altering their architecture.
Findings
Reduces gender bias in SD3 by 68%
Lowers ethnic bias by 59%
Cuts energy consumption by 48%
Abstract
Background: Text-to-image generation models are widely used across numerous domains. Among these models, Stable Diffusion (SD) - an open-source text-to-image generation model - has become the most popular, producing over 12 billion images annually. However, the widespread use of these models raises concerns regarding their social and environmental sustainability. Aims: To reduce the harm that SD models may have on society and the environment, we introduce SustainDiffusion, a search-based approach designed to enhance the social and environmental sustainability of SD models. Method: SustainDiffusion searches the optimal combination of hyperparameters and prompt structures that can reduce gender and ethnic bias in generated images while also lowering the energy consumption required for image generation. Importantly, SustainDiffusion maintains image quality comparable to that of the…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Digital Humanities and Scholarship · Multimodal Machine Learning Applications
