Papers
arxiv:2601.18759

UI Remix: Supporting UI Design Through Interactive Example Retrieval and Remixing

Published on Jan 26
· Submitted by
taesiri
on Jan 27
Authors:
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Abstract

UI Remix is an interactive system that supports mobile UI design through example-driven workflows using a multimodal retrieval-augmented generation model, enabling iterative design adaptation with source transparency cues.

AI-generated summary

Designing user interfaces (UIs) is a critical step when launching products, building portfolios, or personalizing projects, yet end users without design expertise often struggle to articulate their intent and to trust design choices. Existing example-based tools either promote broad exploration, which can cause overwhelm and design drift, or require adapting a single example, risking design fixation. We present UI Remix, an interactive system that supports mobile UI design through an example-driven design workflow. Powered by a multimodal retrieval-augmented generation (MMRAG) model, UI Remix enables iterative search, selection, and adaptation of examples at both the global (whole interface) and local (component) level. To foster trust, it presents source transparency cues such as ratings, download counts, and developer information. In an empirical study with 24 end users, UI Remix significantly improved participants' ability to achieve their design goals, facilitated effective iteration, and encouraged exploration of alternative designs. Participants also reported that source transparency cues enhanced their confidence in adapting examples. Our findings suggest new directions for AI-assisted, example-driven systems that empower end users to design with greater control, trust, and openness to exploration.

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UI Remix enables interactive, example-driven design for mobile interfaces using multimodal retrieval-augmented generation to search, adapt, and remix interface components with source transparency.

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