AIXD: AI-eXtended Design Toolbox for data-driven and inverse design


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Date

2025-12

Publication Type

Journal Article

ETH Bibliography

yes

Citations

Scopus:
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Abstract

Design processes, in many disciplines like architecture, civil engineering or mechanical engineering, involve navigating large, high-dimensional and heterogeneous data. While AI-driven approaches like inverse design and surrogate modeling can enhance design exploration, their adoption is hindered by complex workflows and the need for coding and machine learning expertise. To address this, we introduce AI-eXtended Design (AIXD): a low-code, open-source toolbox that integrates AI into computational design. AIXD simplifies handling of mixed data types, as well as the analysis, training, and deployment of machine learning models for inverse design, surrogate modeling, and sensitivity analysis, enabling domain experts to rapidly explore diverse solutions with minimal coding. In this paper, we show the functionalities of the toolbox, and we demonstrate AIXD’s capabilities in architectural and engineering design applications, showing how it accelerates performance evaluation, generates high-performing alternatives, and improves design understanding by delivering new insights. By bridging AI and design practice, AIXD lowers the entry barrier to data-driven methods, making AI-extended design more accessible and efficient.

Publication status

published

Editor

Book title

Volume

189

Pages / Article No.

103945

Publisher

Elsevier

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

Artificial intelligence; Generative design; Parametric modeling; Architecture; Civil engineering; Computer-aided design

Organisational unit

03708 - Gramazio, Fabio / Gramazio, Fabio check_circle
03709 - Kohler, Matthias / Kohler, Matthias
02286 - Swiss Data Science Center (SDSC) / Swiss Data Science Center (SDSC)

Notes

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