Saved in:
Bibliographic Details
Main Authors: Temitope Sunday Adeusi, Onah Louis Kachiside, Rajat Gupta
Format: Recurso digital
Language:English
Published: Zenodo 2024
Subjects:
Online Access:https://doi.org/10.5281/zenodo.15234461
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866902133255700480
author Temitope Sunday Adeusi
Onah Louis Kachiside
Rajat Gupta
author_facet Temitope Sunday Adeusi
Onah Louis Kachiside
Rajat Gupta
contents <div>The intersection of artificial intelligence and architectural design represents a significant technological advancement that fundamentally reshapes spatial creation and design methodologies. This research explores how computational approaches, specifically machine learning and parametric design algorithms, are transforming architectural practice by introducing novel capabilities for spatial exploration, performance optimization, and generative design.</div> <div>Artificial intelligence emerges as a collaborative tool that expands architectural design possibilities. Advanced neural networks and generative design algorithms enable computational systems to analyze extensive datasets, generate complex design iterations, and optimize architectural solutions across multiple dimensions of structural integrity, environmental performance, and contextual responsiveness.</div> <div>Empirical evidence from case studies of sustainable urban housing in Singapore and adaptive architectural systems in Madrid illustrates how computational technologies can produce design solutions that surpass traditional methodologies, addressing critical challenges in environmental sustainability and urban resilience.</div> <div>The research critically examines the technological capabilities and limitations of AI in architectural design. It highlights the potential for algorithmic bias, challenges in capturing phenomenological experiences, and ethical considerations surrounding creative agency. By emphasizing the need for interdisciplinary collaboration and robust ethical frameworks, the study provides a nuanced approach that balances human intuition with technological innovation.</div>
format Recurso digital
id zenodo_https___doi_org_10_5281_zenodo_15234461
institution Zenodo
language eng
publishDate 2024
publisher Zenodo
record_format zenodo
spellingShingle Innovative architectural design practices enabled by AI-powered parametric and computational approaches
Temitope Sunday Adeusi
Onah Louis Kachiside
Rajat Gupta
Parametric Design
Computational Intelligence
Generative Algorithms
Architectural Innovation
Machine Learning
Contextual Responsiveness
<div>The intersection of artificial intelligence and architectural design represents a significant technological advancement that fundamentally reshapes spatial creation and design methodologies. This research explores how computational approaches, specifically machine learning and parametric design algorithms, are transforming architectural practice by introducing novel capabilities for spatial exploration, performance optimization, and generative design.</div> <div>Artificial intelligence emerges as a collaborative tool that expands architectural design possibilities. Advanced neural networks and generative design algorithms enable computational systems to analyze extensive datasets, generate complex design iterations, and optimize architectural solutions across multiple dimensions of structural integrity, environmental performance, and contextual responsiveness.</div> <div>Empirical evidence from case studies of sustainable urban housing in Singapore and adaptive architectural systems in Madrid illustrates how computational technologies can produce design solutions that surpass traditional methodologies, addressing critical challenges in environmental sustainability and urban resilience.</div> <div>The research critically examines the technological capabilities and limitations of AI in architectural design. It highlights the potential for algorithmic bias, challenges in capturing phenomenological experiences, and ethical considerations surrounding creative agency. By emphasizing the need for interdisciplinary collaboration and robust ethical frameworks, the study provides a nuanced approach that balances human intuition with technological innovation.</div>
title Innovative architectural design practices enabled by AI-powered parametric and computational approaches
topic Parametric Design
Computational Intelligence
Generative Algorithms
Architectural Innovation
Machine Learning
Contextual Responsiveness
url https://doi.org/10.5281/zenodo.15234461