AI-ENHANCED DESIGN: REVOLUTIONIZING METHODOLOGIES AND WORKFLOWS

Authors

  • Kaushikkumar Patel Director of Data Development, TransUnion, NY, USA. Author
  • Divya Beeram Senior Staff Data Scientist, Intuit, CA, USA Author
  • Prashanthi Ramamurthy Senior Engineering Manager, Adobe Inc, CA, USA Author
  • Prerak Garg Senior Director, Cloud & AI, Microsoft, CA, USA Author
  • Sandeep Kumar Director SAP Enterprise Solutions and Analytics, Farmers Insurance Group, CA, USA Author

Keywords:

AI-Enhanced Design, Design Methodologies, Design Workflows, AI Integration, Design Efficiency, AI-Driven Innovation, Generative Design, AI Tools, Computer-Aided Design (CAD), Ethical Considerations In AI

Abstract

This paper delves into the transformative impact of AI on design methodologies and workflows, illustrating how AI can be integrated into various stages of the design process to enhance efficiency, creativity, and innovation. By examining theoretical frameworks, practical applications, and real-world case studies, the discussion highlights the integration of AI into ideation, development, and execution phases, showcasing techniques that optimize resource allocation and automate repetitive tasks. Furthermore, AI-driven tools enable real-time collaboration and feedback, inspiring new design paradigms and pushing creative boundaries through generative design. The paper also explores the role of AI in Computer-Aided Design (CAD) systems, alongside an overview of AI tools and platforms used in design. Addressing potential challenges such as ethical considerations and data privacy concerns, it identifies opportunities for future innovation and trends in AI-enhanced design. Practical insights and successful case studies underscore the tangible benefits of AI-enhanced design processes, providing a comprehensive understanding of how AI can revolutionize design methodologies and workflows. By offering valuable insights for researchers and practitioners, this paper encourages continued exploration and adoption of AI in the design field, aiming to serve as a key resource in advancing AI-driven design practices.

References

Ghorbani, M. A. (2023). AI Tools to Support Design Activities and Innovation Processes. [Reference Link]

Zhang, G., Raina, A., Cagan, J., & McComb, C. (2021). A cautionary tale about the impact of AI on human design teams. Design Studies, 72, 100990. [Reference Link]

Porter, B., & Grippa, F. (2020). A platform for AI-enabled real-time feedback to promote digital collaboration. Sustainability, 12(24), 10243. [Reference Link]

Aggarwal, C. C. (2018). Neural networks and deep learning (Vol. 10, No. 978, p. 3). Cham: springer. [Reference Link]

Safdar, N. M., Banja, J. D., & Meltzer, C. C. (2020). Ethical considerations in artificial intelligence. European journal of radiology, 122, 108768. [Reference Link]

Yu, L. (2023). AI-Enhanced Digital Creativity Design: Content-Style Alignment for Image Stylization. IEEE Access. [Reference Link]

Bauroth, M., Rath-Manakidis, P., Langholf, V., Wiskott, L., & Glasmachers, T. (2024). tachAId—An interactive tool supporting the design of human-centered AI solutions. Frontiers in Artificial Intelligence, 7, 1354114. [Reference Link]

Stohr, A. (2023). Managing Emerging Technologies-A Socio-Technical Analysis of Opportunities and Tensions for Incumbents (Doctoral dissertation). [Reference Link]

Romero, M., Lameras, P., & Arnab, S. (2024). Affordances for AI-Enhanced Digital Game-Based Learning. In Creative Applications of Artificial Intelligence in Education (pp. 117-128). Cham: Springer Nature Switzerland. [Reference Link]

Mao, Y., Rafner, J., Wang, Y., & Sherson, J. (2023). A hybrid intelligence approach to training generative design assistants: partnership between human experts and AI enhanced co-creative tools. In HHAI 2023: Augmenting Human Intellect (pp. 108-123). IOS Press. [Reference Link]

Yan, K., Ji, Z., Jin, Q., & Wang, Q. G. (2021). Guest editorial: machine learning for ai-enhanced healthcare and medical services: new development and promising solution. IEEE/ACM Transactions on Computational Biology and Bioinformatics, 18(3), 850-851. [Reference Link]

Ng, K. K., Chen, C. H., Lee, C. K., Jiao, J. R., & Yang, Z. X. (2021). A systematic literature review on intelligent automation: Aligning concepts from theory, practice, and future perspectives. Advanced Engineering Informatics, 47, 101246. [Reference Link]

Ghorbani, M. A. (2023). AI Tools to Support Design Activities and Innovation Processes. [Reference Link]

As, I., Pal, S., & Basu, P. (2018). Artificial intelligence in architecture: Generating conceptual design via deep learning. International Journal of Architectural Computing, 16(4), 306-327. [Reference Link]

Heier, J. (2021, July). Design intelligence-taking further steps towards new methods and tools for designing in the age of AI. In International Conference on Human-Computer Interaction (pp. 202-215). Cham: Springer International Publishing. [Reference Link]

Sarker, I. H. (2022). AI-based modeling: techniques, applications and research issues towards automation, intelligent and smart systems. SN Computer Science, 3(2), 158. [Reference Link]

Li, P., Li, B., & Li, Z. (2024). Sketch-to-architecture: Generative ai-aided architectural design. arXiv preprint arXiv:2403.20186. [Reference Link]

Al Naqbi, H., Bahroun, Z., & Ahmed, V. (2024). Enhancing Work Productivity through Generative Artificial Intelligence: A Comprehensive Literature Review. Sustainability, 16(3), 1166. [Reference Link]

Aldoseri, A., Al-Khalifa, K., & Hamouda, A. (2023). A roadmap for integrating automation with process optimization for AI-powered digital transformation. [Reference Link]

Vemuri, N. V. N. (2023). Enhancing Human-Robot Collaboration in Industry 4.0 with AI-driven HRI. Power System Technology, 47(4), 341-358. [Reference Link]

Chaillou, S. (2019). AI & architecture. [Reference Link]

Guo, Z., Zhu, Z., Li, Y., Cao, S., Chen, H., & Wang, G. (2023). AI Assisted Fashion Design: A Review. IEEE Access. [Reference Link]

Du, Y., & Xu, D. (2022). [Retracted] Analysis of Graphic Design Based on AI Interaction Technology. Journal of Environmental and Public Health, 2022(1), 8493528. [Reference Link]

Gedrimiene, E., Celik, I., Kaasila, A., Mäkitalo, K., & Muukkonen, H. (2024). Artificial intelligence (AI)-enhanced learning analytics (LA) for supporting career decisions: Advantages and challenges from user perspective. Education and Information Technologies, 29(1), 297-322. [Reference Link]

Patel, K. (2024). Ethical reflections on data-centric AI: balancing benefits and risks. International Journal of Artificial Intelligence Research and Development, 2(1), 1-17. [Reference Link]

Shaw, J., Rudzicz, F., Jamieson, T., & Goldfarb, A. (2019). Artificial intelligence and the implementation challenge. Journal of medical Internet research, 21(7), e13659. [Reference Link]

Hemmer, P., Westphal, M., Schemmer, M., Vetter, S., Vössing, M., & Satzger, G. (2023, March). Human-AI Collaboration: The Effect of AI Delegation on Human Task Performance and Task Satisfaction. In Proceedings of the 28th International Conference on Intelligent User Interfaces (pp. 453-463). [Reference Link]

Essien, A. (2023). AI-Driven Innovation: Leveraging Big Data Analytics for Innovation. In Innovation Analytics: Tools for Competitive Advantage (pp. 119-137). [Reference Link]

Vesnic-Alujevic, L., Nascimento, S., & Polvora, A. (2020). Societal and ethical impacts of artificial intelligence: Critical notes on European policy frameworks. Telecommunications Policy, 44(6), 101961. [Reference Link]

Downloads

Published

2024-06-19

How to Cite

Kaushikkumar Patel, Divya Beeram, Prashanthi Ramamurthy, Prerak Garg, & Sandeep Kumar. (2024). AI-ENHANCED DESIGN: REVOLUTIONIZING METHODOLOGIES AND WORKFLOWS. INTERNATIONAL JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH AND DEVELOPMENT (IJAIRD), 2(1), 135-157. https://lib-index.com/index.php/IJAIRD/article/view/IJAIRD_02_01_013