更重要的是:提倡大规模语言图像模型中的合成体系结构

IF 1.6 0 ARCHITECTURE
Daniel Koehler
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引用次数: 0

摘要

大规模语言图像(LLI)模型有可能通过建筑研究开辟新的批评实践形式。他们的成功使设计师能够在与建筑环境有着深刻联系但以前没有资源从事空间研究的话语中进行研究。尽管LLI模型不能产生连贯的建筑组合,但它们提供了一种融入人工智能的设计实践的美学体验。本文在体系结构上对扩散模型进行了上下文分析。通过对建筑中扩散模型方法的比较,本文概述了以数据为中心的方法,使建筑师能够使用计算进行批判性设计。文本驱动的潜在空间的设计将类型学设计的历史扩展到合成环境,包括建筑空间中的非建筑数据。建筑师不仅仅是综合各种安排中的量化比率,还通过评估生成作品中新的分类差异来做出贡献。建筑师的创造力可以用一种合成架构来提升LLI模型,而这种架构在模型学习的数据集中是不存在的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
More than anything: Advocating for synthetic architectures within large-scale language-image models
Large-scale language-image (LLI) models have the potential to open new forms of critical practice through architectural research. Their success enables designers to research within discourses that are profoundly connected to the built environment but did not previously have the resources to engage in spatial research. Although LLI models do not generate coherent building ensembles, they offer an esthetic experience of an AI infused design practice. This paper contextualizes diffusion models architecturally. Through a comparison of approaches to diffusion models in architecture, this paper outlines data-centric methods that allow architects to design critically using computation. The design of text-driven latent spaces extends the histories of typological design to synthetic environments including non-building data into an architectural space. More than synthesizing quantic ratios in various arrangements, the architect contributes by assessing new categorical differences into generated work. The architects’ creativity can elevate LLI models with a synthetic architecture, nonexistent in the data sets the models learned from.
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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