Litcius/Paper detail

Prompting for products: investigating design space exploration strategies for text-to-image generative models

Leah Chong, I-Ping Lo, Jude Rayan, Steven P. Dow, Faez Ahmed, Ioanna Lykourentzou

2025Design Science12 citationsDOIOpen Access PDF

Abstract

Abstract Text-to-image models are enabling efficient design space exploration, rapidly generating images from text prompts. However, many generative AI tools are imperfect for product design applications as they are not built for the goals and requirements of product design. The unclear link between text input and image output further complicates their application. This work empirically investigates design space exploration strategies that can successfully yield product images that are feasible, novel and aesthetic – three common goals in product design. Specifically, users’ actions within the global and local editing modes, including their time spent, prompt length, mono versus multi-criteria prompts, and goal orientation of prompts, are analyzed. Key findings reveal the pivotal role of mono versus multi-criteria and goal orientation of prompts in achieving specific design goals over time and prompt length. The study recommends prioritizing the use of multi-criteria prompts for feasibility and novelty during global editing while favoring mono-criteria prompts for aesthetics during local editing. Overall, this article underscores the nuanced relationship between the AI-driven text-to-image models and their effectiveness in product design, urging designers to carefully structure prompts during different editing modes to better meet the unique demands of product design.

Topics & Concepts

Generative grammarSpace (punctuation)Generative DesignImage (mathematics)Computer scienceGenerative modelArtificial intelligenceNatural language processingEngineeringOperating systemMetric (unit)Operations managementDesign Education and PracticeArchitecture and Computational DesignProduct Development and Customization