Augmented Computational Design: Methodical Application of Artificial
Intelligence in Generative Design
- URL: http://arxiv.org/abs/2310.09243v1
- Date: Fri, 13 Oct 2023 16:47:35 GMT
- Title: Augmented Computational Design: Methodical Application of Artificial
Intelligence in Generative Design
- Authors: Pirouz Nourian, Shervin Azadi, Roy Uijtendaal, Nan Bai
- Abstract summary: This chapter presents methodological reflections on the necessity and utility of artificial intelligence in generative design.
The core of the performance-based generative design paradigm is about making statistical or simulation-driven associations between these choices and consequences.
- Score: 0.1638581561083717
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This chapter presents methodological reflections on the necessity and utility
of artificial intelligence in generative design. Specifically, the chapter
discusses how generative design processes can be augmented by AI to deliver in
terms of a few outcomes of interest or performance indicators while dealing
with hundreds or thousands of small decisions. The core of the
performance-based generative design paradigm is about making statistical or
simulation-driven associations between these choices and consequences for
mapping and navigating such a complex decision space. This chapter will discuss
promising directions in Artificial Intelligence for augmenting decision-making
processes in architectural design for mapping and navigating complex design
spaces.
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