Practice and Challenge of Generative Artificial Intelligence in Architectural Creative Design

Authors

  • Lin Yang Beijing Institute of Architectural Design Co., Ltd.

DOI:

https://doi.org/10.70393/6a696574.343130

ARK:

https://n2t.net/ark:/40704/JIET.v1n2a01

Disciplines:

Intelligent Systems

Subjects:

Other

References:

22

Keywords:

Generative Artificial Intelligence, Architectural Creative Design, Practice Mode, Challenge, Coping Strategy

Abstract

Under the background of the rapid development of science and technology, the relationship between generative AI (artificial intelligence) and the field of architectural creative design has become an important topic that has attracted much attention. With the continuous progress of science and technology, generative AI is gradually infiltrating into architectural design. In-depth study on the application of generative AI in this field is of great significance to promote the development of architectural creative design. In this paper, the theoretical basis of generative AI in the field of architectural creative design is deeply analyzed, and the internal logic of its combination with architectural design is explained in detail. At the same time, this paper focuses on the practical mode of generative AI in building concept generation, spatial layout design and shape shaping. Although generative AI has brought new opportunities for architectural creative design, it also faces many challenges in the process of practical application. Based on this, this paper puts forward a series of targeted strategies.

Author Biography

Lin Yang, Beijing Institute of Architectural Design Co., Ltd.

Beijing Institute of Architectural Design Co., Ltd., CN, leo.crystalcg@gmail.com.

References

[1] Saliu, N., & Elezi, K. (2025). The transformative integration of artificial intelligence in architectural practice: from generative design to sustainable building performance. European Chronicle, 10(1), 66-73.

[2] Tsao, J., Liang, C. X., Nogues, C., & Wong, A. (2025). Perceptions and integration of generative artificial intelligence in creative practices and industries: a scoping review and conceptual model. AI & SOCIETY, 1-20.

[3] Luo, M., Zhang, W., Song, T., Li, K., Zhu, H., Du, B., & Wen, H. (2021, January). Rebalancing expanding EV sharing systems with deep reinforcement learning. In Proceedings of the Twenty-Ninth International Conference on International Joint Conferences on Artificial Intelligence (pp. 1338-1344).

[4] Lin, A. (2026). Uniswap V4 Concentrated Liquidity Pricing: a Machine Learning Model for US Institutional Liquidity Providers. Journal of Intelligence and Engineering Technology, 1(1), 19-26.

[5] Yiannoudes, S. (2025). Shaping architecture with generative artificial intelligence: Deep learning models in architectural design workflow. Architecture, 5(4), 94.

[6] Medel-Vera, C., Britton, S., & Gates, W. F. (2025). An exploration of the role of generative AI in fostering creativity in architectural learning environments. Computers and Education: Artificial Intelligence, 100501.

[7] Wang, C. (2025). Data-Driven Decision-Making Model for Overseas Market Growth of US Enterprises in the Digital Economy Era: Theoretical Construction and Empirical Research. Journal of World Economy, 4(6), 58-65.

[8] Hao, Z. (2026). Dynamic Task Prioritization for Edge AI in Smart Cities: Balancing Latency and Energy Efficiency. Journal of Intelligence and Engineering Technology, 1(1), 60-69.

[9] Li, K., Chen, X., Song, T., Zhou, C., Liu, Z., Zhang, Z., ... & Shan, Q. (2025). Solving situation puzzles with large language model and external reformulation. arXiv preprint arXiv:2503.18394.

[10] Hao, Z. (2025). Fault-Tolerant Real-Time Scheduling for Edge AI in US Critical Infrastructure. Engineering Frontiers, 1(4).

[11] Onatayo, D., Onososen, A., Oyediran, A. O., Oyediran, H., Arowoiya, V., & Onatayo, E. (2024). Generative AI applications in architecture, engineering, and construction: trends, implications for practice, education & imperatives for upskilling—a review. Architecture, 4(4), 877-902.

[12] Wang, J., Kudagama, B. J., Perera, U. S., Li, S., & Zhang, X. (2025). Framework for generating high-resolution Hong Kong local climate projections to support building energy simulations. Physics of Fluids, 37(3).

[13] Wang, C. (2025). Research on the Precision Allocation of Cross-Border Marketing Resources of US Enterprises Driven by Digital Technology. Innovation in Science and Technology, 4(11), 7-13.

[14] Han, C. (2025). Can Language Models Follow Multiple Turns of Entangled Instructions?. arXiv preprint arXiv:2503.13222.

[15] Lin, A. (2026). Multi-Chain DAO Treasury Management: a Risk and Compliance Optimization Framework for the US Ecosystem. Journal of Intelligence and Engineering Technology, 1(1), 11-18.

[16] Wu, Y. (2026). Research on the Impact of LinkedIn Business Account Data-Driven Operations on Brand Exposure of AI Startups—A Case Study of AristAI. International Academic Journal of Social Science, 2, 27-37.

[17] Liu, Z., Jin, C., Li, S., Li, W., & Wang, J. (2024). Improvement for modeling the damping of the wake oscillator based on the Van der Pol scheme. Physics of Fluids, 36(7).

[18] Wang, H., Li, Q., & Liu, Y. (2024). Multi-response Regression for Block-missing Multi-modal Data without Imputation. Statistica Sinica, 34(2), 527.

[19] Hao, Z. (2025). Task Affinity-Aware Scheduling for Multi-Core Edge Devices in Autonomous Vehicles. Engineering Frontiers, 1(2).

[20] Salloum, S. A. (2025). The Architecture of Generative AI and Its Role in the Creative Industry. In Generative AI in Creative Industries (pp. 13-29). Cham: Springer Nature Switzerland.

[21] Wu, Y. (2026). Research on Dynamic Prediction Model of Brand Marketing Content ROI Based on Machine Learning. International Journal of Advance in Applied Science Research, 5(2), 31-38.

[22] Peckham, O., Raines, J., Bulsink, E., Goudswaard, M., Gopsill, J., Barton, D., ... & Hicks, B. (2025). Artificial intelligence in generative design: a structured review of trends and opportunities in techniques and applications. Designs, 9(4), 79.

Published

2026-04-10

How to Cite

Yang, L. (2026). Practice and Challenge of Generative Artificial Intelligence in Architectural Creative Design. Journal of Intelligence and Engineering Technology, 1(2), 1–6. https://doi.org/10.70393/6a696574.343130

Issue

Section

Articles

ARK