Relate, Relate, Relate: In the Age of Machine Learning

Item

Title
Relate, Relate, Relate: In the Age of Machine Learning
Description
Recognizing the impact of image-generating machine learning models on architectural discourse, this thesis offers a fresh perspective on the role of machine learning in conceptual relationships within architecture. The thesis explores ML's capacity to interrelate architecture beyond tradition lineage framework or categorization framework. Structured into three chapters, the first correlates projects from the "five on five" lecture series with large language and image-based models, forming a cloud of relationships. The second chapter delves into machine learning-aided design by relating projects and generating conceptual text. The final chapter investigates the challenge posed to museum design as the traditional architectural history framework is also challenged, proposing a museum embedded within a material reuse center. Through these explorations, the thesis uncovers ML's potential to contextualize and interconnect architecture, highlighting its significance beyond its prowess in generating realistic images and text.
Creator
Chung, Chun Tak
Subject
AI
Architecture
Artificial Intelligence
History
Machine Learning
ML
Architecture
Contributor
Witt, Andrew
Date
2024-09-26T12:08:35Z
2024
2024-05-21
2024
2024-09-26T12:08:35Z
Type
Thesis or Dissertation
text
Format
application/pdf
application/pdf
application/octet-stream
application/octet-stream
application/octet-stream
Identifier
Chung, Chun Tak. 2024. Relate, Relate, Relate: In the Age of Machine Learning. Master's thesis, Harvard Graduate School of Design.
31300103
https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37379530
Language
en