ISSN: 2319-7293
+44-77-2385-9429
Adedotun Ademowo
The affordable housing crisis in the United States disproportionately affects low-income families, with millions facing severe housing cost burdens and limited access to adequate housing. This article explores the potential of generative artificial intelligence (AI) to address this housing gap by providing innovative, data-driven solutions that optimize housing development, design, and construction processes. By leveraging AI for predictive analysis, automated design, and construction optimization, stakeholders can significantly reduce costs, increase efficiency, and create sustainable housing that meets the needs of low-income populations. The article examines how AI can accurately predict future housing demand, generate efficient building designs, and streamline construction processes, while also addressing challenges such as equity, bias in AI models, and technical and financial barriers to implementation. Additionally, recommendations are provided for policymakers, developers, and community organizations to ensure that AI-driven housing solutions are deployed equitably and effectively. This paper concludes that while AI is not a standalone solution to the housing crisis, it has the potential to complement existing strategies and significantly improve access to affordable housing for low-income families across the U.S.
Published Date: 2024-12-03; Received Date: 2024-10-30